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. 2024 Oct 22;13:RP96988. doi: 10.7554/eLife.96988

LncRNA Snhg3 aggravates hepatic steatosis via PPARγ signaling

Xianghong Xie 1, Mingyue Gao 1, Wei Zhao 1, Chunmei Li 1, Weihong Zhang 2, Jiahui Yang 2, Yinliang Zhang 1, Enhui Chen 3, Yanfang Guo 1, Zeyu Guo 1, Minglong Zhang 3, Ebenezeri Erasto Ngowi 4,5, Heping Wang 1, Xiaoman Wang 1, Yinghan Zhu 3, Yiting Wang 1, Xiaolu Li 1, Hong Yao 2, Li Yan 3, Fude Fang 1, Meixia Li 6,, Aijun Qiao 4,5,, Xiaojun Liu 1,
Editors: Peter Tontonoz7, David E James8
PMCID: PMC11495842  PMID: 39436790

Abstract

LncRNAs are involved in modulating the individual risk and the severity of progression in metabolic dysfunction-associated fatty liver disease (MASLD), but their precise roles remain largely unknown. This study aimed to investigate the role of lncRNA Snhg3 in the development and progression of MASLD, along with the underlying mechanisms. The result showed that Snhg3 was significantly downregulated in the liver of high-fat diet-induced obesity (DIO) mice. Notably, palmitic acid promoted the expression of Snhg3 and overexpression of Snhg3 increased lipid accumulation in primary hepatocytes. Furthermore, hepatocyte-specific Snhg3 deficiency decreased body and liver weight, alleviated hepatic steatosis and promoted hepatic fatty acid metabolism in DIO mice, whereas overexpression induced the opposite effect. Mechanistically, Snhg3 promoted the expression, stability and nuclear localization of SND1 protein via interacting with SND1, thereby inducing K63-linked ubiquitination modification of SND1. Moreover, Snhg3 decreased the H3K27me3 level and induced SND1-mediated chromatin loose remodeling, thus reducing H3K27me3 enrichment at the Pparg promoter and enhancing PPARγ expression. The administration of PPARγ antagonist T0070907 improved Snhg3-aggravated hepatic steatosis. Our study revealed a new signaling pathway, Snhg3/SND1/H3K27me3/PPARγ, responsible for mice MASLD and indicates that lncRNA-mediated epigenetic modification has a crucial role in the pathology of MASLD.

Research organism: Mouse

Introduction

Non-alcohol fatty liver disease (NAFLD) is characterized by excess liver fat in the absence of significant alcohol consumption. It can progress from simple steatosis to nonalcoholic steatohepatitis (NASH) and fibrosis and eventually to chronic progressive diseases such as cirrhosis, end-stage liver failure, and hepatocellular carcinoma (Loomba et al., 2021). In 2020, an international panel of experts led a consensus-driven process to develop a more appropriate term for the disease utilizing a two-stage Delphi consensus, that is, ‘metabolic dysfunction-associated fatty liver disease (MASLD)’ related to systemic metabolic dysregulation (Gofton et al., 2023; Rinella et al., 2023). The pathogenesis of MASLD has not been entirely elucidated. Multifarious factors such as genetic and epigenetic factors, nutritional factors, insulin resistance, lipotoxicity, microbiome, fibrogenesis and hormones secreted from the adipose tissue, are recognized to be involved in the development and progression of MASLD (Buzzetti et al., 2016; Friedman et al., 2018; Lee et al., 2017; Rada et al., 2020; Sakurai et al., 2021). Free fatty acids (FFAs), which are central to the pathogenesis of MASLD, originate from the periphery, mainly via lipolysis of triglyceride in the adipose tissue, or from increased hepatic de novo lipogenesis (DNL). Fatty acids in hepatocytes undergo mitochondrial β-oxidation and re-esterification to form triglyceride (TG), which are then exported into the blood as very low-density lipoproteins or stored in lipid droplets. Hepatic lipotoxicity occurs when the disposal of fatty acids through β-oxidation or the formation of TG is overwhelmed, which leads to endoplasmic reticulum (ER) stress, oxidative stress and inflammasome activation (Friedman et al., 2018). A cluster of differentiation 36/fatty acid translocase (CD36) and cell death-inducing DFF45-like effector proteins A/C (CIDEA/C) are critical for MASLD progression (Koonen et al., 2007; Matsusue et al., 2008; Sans et al., 2019). CD36 can increase FFAs uptake in the liver and drive hepatosteatosis onset. Overexpression of CD36 in hepatocytes increased FFAs uptake and TG storage; conversely, its deletion ameliorated hepatic steatosis and insulin resistance in DIO mice (Rada et al., 2020). Additionally, CIDEA/C can also regulate various aspects of lipid homeostasis, including lipid storage, lipolysis, and lipid secretion (Xu et al., 2024). As a transcription regulator of Cd36 and Cidea/c, peroxisome proliferator-activated receptor gamma (PPARγ) plays a crucial role in MASLD progression (Lee et al., 2023b; Lee et al., 2021; Lee et al., 2018; Matsusue et al., 2008; Puri et al., 2008; Skat-Rørdam et al., 2019).

Epigenetics, an inheritable phenomenon occurring without altering the DNA sequence, can regulate gene expression through different forms, including DNA methylation, histone modifications, chromatin remodeling, transcriptional control, and non-coding RNAs (Mann, 2014). Histone modifications, including acetylation, methylation, phosphorylation, ubiquitination, ribosylation, and ubiquitin-like protein modification (SUMO), are important epigenetic determinants of chromatin tightness and accessibility (Chen and Pikaard, 1997). Histone methylation is associated with chromatin-specific transcriptional activity states; for example, methylation of lysine 4 of histone H3 (H3K4), H3K36 and H3K79 are linked with a transcriptional activation state, and H3K9, H3K27, and H4K20 with transcriptional repression state (Pirola and Sookoian, 2022). Previous studies have illustrated that epigenetics factors including histone modification play key role in lipid metabolism (Bayoumi et al., 2020; Byun et al., 2020; Jun et al., 2012).

Long non-coding RNAs (lncRNAs) are non-coding RNAs with more than 200 bases in length, can be transcribed by RNA polymerase II, and are comparable to mRNA but lack the crucial open reading framework required for translation (Ng et al., 2013; Ulitsky and Bartel, 2013). LncRNAs are involved in epigenetic regulation of gene expression at different levels and through different molecular mechanisms such as chromatin remodeling, transcriptional regulation and post-transcriptional processing. Previous studies have indicated that lncRNAs are involved in the pathological progress of MASLD (Bayoumi et al., 2020; Sommerauer and Kutter, 2022). Although histone modification and lncRNAs influence the susceptibility to MASLD, their roles in MASLD remain largely unknown.

Small nucleolar RNA host genes (SNHG) family, a type of lncRNA, serve as host genes for producing intronic small nucleolar RNAs (snoRNAs) and are mainly related to tumor pathophysiology by regulating proliferation, apoptosis, invasion, and migration (Sen et al., 2020; Zimta et al., 2020). The family of mouse Snhg genes has 19 members including Snhg1-18, Snhg20 and Snhg7os. Here, we found that the expression of hepatic Snhg3 was decreased in high-fat diet (HFD)-induced obesity (DIO) mice. Experiments conducted using in vivo and in vitro models indicated that Snhg3 was involved in fatty acid metabolism and hepatic steatosis. Mechanistically, Snhg3 interacted with staphylococcal nuclease and Tudor domain containing 1 (SND1), a well-understood Tudor protein that participates in lipid metabolism and tumoral behavior by modulating cholesterol and glycerophospholipid metabolism and acylglyceride storage in lipid droplets (Navarro-Imaz et al., 2020). Furthermore, Snhg3 increased the expression of SND1 by promoting the stability of SND1 mediated by K63-linked ubiquitination and induced nuclear localization of SND1 protein, thereby reducing tri-methylation at H3K27 (H3K27me3) enrichment and boosting chromatin loose remodeling at Pparg promoter, eventually enhancing Pparg, Cd36 and Cidea/c expressions. Our result indicated that SND1/H3K27me3/PPARγ is partially responsible for Sngh3-induced hepatic steatosis.

Results

LncRNA-Snhg3 is downregulated in DIO mice

Firstly, we analyzed the lncRNAs expression profiles in the livers of DIO mice and normal chow-fed mice (control) by RNA-Seq, and found 18072 hepatic lncRNAs, including 338 differentially expressed lncRNAs (q-value ≤0.05, Figure 1A). Of all Snhgs, Snhg3 had the most prominent expression and exhibited more noticeable downregulation in the liver of the DIO mice compared to the control mice (Figure 1B), thus, it was selected for further study. The downregulation of Snhg3 was confirmed by RT-qPCR (Figure 1C). Additionally, the Coding Potential Calculator indicated that Snhg3 has a coding probability of 0.020757, classifying it as a noncoding sequence (Kang et al., 2017). Localization of Snhg3 was primarily observed in nuclei with a probability score of 0.451138, as predicted using software prediction (http://lin-group.cn/server/iLoc-LncRNA/predictor.php). The exact nuclear localization of Snhg3 was further confirmed by nuclear/cytoplasmic fractionation (Figure 1D). Interestingly, the expression of Snhg3 was induced by palmitic acid (PA) in primary hepatocytes (Figure 1E). Furthermore, overexpression of Snhg3 increased lipid accumulation in primary hepatocytes with PA treatment (Figure 1F and G).

Figure 1. The expression of hepatic lncRNA-Snhg3 is downregulated in DIO mice.

Figure 1.

(A) Differentially expressed lncRNAs in livers of 6~8-week-old littermate male mice that were fed an HFD and control diet for 27weeks (n=3mice/group). (B) Heat map of Snhgs in livers of mice as indicated in (A) (n=3mice/group). (C) Expression levels of Snhg3 in the liver of 6~8-week-old littermate male mice that were fed an HFD and control diet for indicated time period 11, 27, and 40weeks. (D) Relative Snhg3 expression levels in nuclear and cytosolic fractions of mouse primary hepatocytes. Nuclear controls: Neat1 and Xist; Cytosolic control: Gapdh. (E) PA promotes the expression of Snhg3 in primary hepatocytes. (F and G) Overexpression of Snhg3 (F) induces lipid accumulation (G) left, Oil red O staining; right, quantitative analysis) in primary hepatocytes with PA treatment. Data are represented as mean ± SEM. *p<0.05, **p<0.01and ***p<0.001 by Student’s t test.

Figure 1—source data 1. The lncRNAs expression profiles in the livers of high-fat diet-induced obesity mice and normal chow-fed mice were determined using RNA-Seq for Figure 1A.

Hepatocyte-specific Snhg3 knock-out alleviates hepatic steatosis in DIO mice

Given Snhg3 was associated with hepatic nutrition change, the role of Snhg3 was further confirmed by constructing hepatocyte-specific Snhg3 knock-out (Snhg3-HKO) mice that were then induced obesity with a high-fat diet (Figure 2A and Figure 2—figure supplement 1A, B). The result indicated that body weight was mildly decreased in Snhg3-HKO mice compared with the control Snhg3flox/flox (Snhg3-Flox) mice (Figure 2B). The energy consumption is mainly reflected as the sum of energy utilization during internal heat production using comprehensive laboratory animal monitoring system (CLAMS). Heat production showed an increasing trend but was not statistically significant in Snhg3-HKO mice (Figure 2—figure supplement 1C). Moreover, there were no obvious differences in total oxygen consumption, carbon dioxide production or respiratory exchange ratio (RER) between Snhg3-HKO and control mice (Figure 2—figure supplement 1C). Furthermore, insulin sensitivity, not glucose tolerance, was improved in Snhg3-HKO mice (Figure 2C). The Snhg3-HKO mice had a decrease in liver weight and the ratio of liver weight/body weight, and improved hepatic steatosis, including decreasing lipid accumulations and the ballooning degeneration of liver cells (Figure 2D–F). However, the hepatic fibrosis phenotype showed no difference (Figure 2—figure supplement 1D). Serum alanine transaminase (ALT) and aspartate transaminase (AST) levels were significantly decreased in Snhg3-HKO mice (Figure 2G). Moreover, serum FFAs, TG and TC were also reduced in Snhg3-HKO mice (Figure 2H). The Snhg3-HKO mice exhibited a decrease in inguinal white adipose tissue (iWAT) weight and weight/body weight ratio, while brown adipose (BAT) weight and weight/body weight ratio remained unaltered (Figure 2—figure supplement 1E). Additionally, there was no difference in serum insulin between Snhg3-HKO mice and control mice (Figure 2—figure supplement 1F). These results suggested that hepatic knockout of Snhg3 improves hepatic steatosis in mice.

Figure 2. Hepatocyte-specific Snhg3 knockout alleviates hepatic steatosis in DIO mice.

(A) The expression of Snhg3 was downregulated in the liver of Snhg3-HKO mice. Snhg3-Flox (n=6) and Snhg3-HKO (n=5). (B) Body weights of Snhg3-Flox (n=6) and Snhg3-HKO (n=5) mice fed HFD for indicated time period. (C) ITT (n=5/group) and GTT (n=6/group) of Snhg3-Flox and Snhg3-HKO mice fed HFD for 18weeks were analyzed, (AUC, Area Under Curve). (D) Liver weight (left) and ratio (right) of liver weight/body weight of Snhg3-Flox (n=6) and Snhg3-HKO (n=5) mice fed HFD for 21weeks. (E) H&E and oil red O staining (left) and NASH score (right) of liver of Snhg3-Flox and Snhg3-HKO mice as indicated in (D). Scale bars, 50μm. (F) Hepatic TG and TC contents of mice as indicated in (D). (G) Serum ALT and AST concentrations of mice as indicated in (D). (H) Serum FFAs, TG and TC concentrations of mice as indicated in (D). Data are represented as mean ± SEM. *p<0.05and **p<0.01 by two-way ANOVA (B and C) and by Student’s t test (the others).

Figure 2.

Figure 2—figure supplement 1. Hepatocyte-specific Snhg3 knockout alleviates hepatic steatosis in DIO mice.

Figure 2—figure supplement 1.

(A) The genome mapping of mouse Snhg3 (https://www.ncbi.nlm.nih.gov/gene/). (B) Schematic diagram for the creation of hepatocyte-specific Snhg3 knock-out (Snhg3-HKO) mice. (C) Heat production, total oxygen consumption and carbon dioxide production, and RER of Snhg3-Flox (n=6) and Snhg3-HKO (n=6) mice fed HFD for 16weeks were measured by CLAMS. (D) Liver fibrosis Snhg3-Flox and Snhg3-HKO mice fed HFD for 16weeks was visualized using Picro Sirius Red Stain. Scale bars, 50μm. (E) iWAT weight (left) and ratio (right) of iWAT weight/body weight of mice as indicated in Snhg3-Flox (n=6) and Snhg3-HKO (n=5) mice fed HFD. (F) Serum insulin concentration of mice as indicated in Snhg3-Flox (n=6) and Snhg3-HKO (n=5) mice fed HFD. Data are represented as mean ± SEM. ***p<0.001 by Student’s t test (the others).

Hepatocyte-specific Snhg3 knock-in aggravates hepatic steatosis in DIO mice

Furthermore, the hepatocyte-specific Snhg3 knock-in (Snhg3-HKI) mice were also constructed and subsequently induced obesity with a high-fat diet to detect the function of Snhg3 in the liver (Figure 3A and Figure 3—figure supplement 1A). The Snhg3-HKI mice showed greater weight gains than the control wild type (WT) mice (Figure 3B). Insulin sensitivity was also impaired in Snhg3-HKI mice (Figure 3C). The liver weight and the ratio of liver weight/body weight of Snhg3-HKI mice were markedly increased (Figure 3D). Also, Snhg3-HKI mice exhibited severe hepatic steatosis (Figure 3E and F) and higher serum ALT and AST levels (Figure 3G). Both serum TC and iWAT weight were increased in Snhg3-HKI mice (Figure 3H and Figure 3—figure supplement 1B). Similar to Snhg3-HKO mice, there was also no differences in heat production, total oxygen consumption, carbon dioxide production, RER, hepatic fibrosis phenotype, and serum insulin between Snhg3-HKI mice and WT mice (Figure 3—figure supplement 1C–E). These findings indicated that upregulation of Snhg3 could promote hepatic steatosis.

Figure 3. Hepatocyte-specific Snhg3 overexpression aggravates hepatic steatosis in DIO mice.

(A) The expression of Snhg3 was upregulated in the liver of Snhg3-HKI mice. WT (n=6) and Snhg3-HKI (n=7). (B) Body weights of WT mice (n=6) and Snhg3-HKI mice (n=7) fed HFD for indicated times. (C) ITT and GTT of WT (n=6) and Snhg3-HKI (n=7) mice fed HFD for 11weeks were analyzed. (D) Liver weight (left) and ratio (right) of liver weight/body weight of WT (n=6) and Snhg3-HKI (n=7) mice fed HFD for 13weeks. (E) Liver H&E and oil red O staining (left) and NASH score (right) of WT and Snhg3-HKI mice as indicated in (D). Scale bars, 50μm. (F) Hepatic TG and TC contents of mice as indicated in (D). (G) Serum ALT and AST concentrations of mice as indicated in (D). (H) Serum FFAs, TG and TG concentrations of mice as indicated in (D). Data are represented as mean ± SEM. *p<0.05, **p<0.01and ***p<0.001 by two-way ANOVA (B and C) and by Student’s t test (the others).

Figure 3.

Figure 3—figure supplement 1. Hepatocyte-specific Snhg3 overexpression aggravates hepatic steatosis in DIO mice.

Figure 3—figure supplement 1.

(A) Schematic diagram for the creation of hepatocyte-specific Snhg3 knock-in (Snhg3-HKI) mice. (B) iWAT weight (left) and ratio (right) of iWAT weight/body weight of mice as indicated in WT (n=6) and Snhg3-HKI (n=7) mice fed HFD for 9weeks. (C) Heat production, total oxygen consumption and carbon dioxide production, and RER of WT (n=4) and Snhg3-HKI (n=4) mice fed HFD for 9weeks were measured by CLAMS. (D) Liver fibrosis in WT and Snhg3-HKI mice fed HFD for 9weeks was visualized using Picro Sirius Red Stain. Scale bars, 50μm. (E) Serum insulin concentration of mice as indicated in WT (n=6) and Snhg3-HKI (n=7) mice fed HFD for 9weeks. Data are represented as mean ± SEM. ***p<0.001 by Student’s t test.

Snhg3 promotes hepatic steatosis by regulating chromatin remodeling

To clarify the molecular mechanism of Snhg3 in hepatic steatosis, we investigated the hepatic differentially expressed genes (DEGs) using RNA-Seq. There were 1393 DEGs between the Snhg3-HKI and control WT mice, with 1028 genes being upregulated and 365 genes downregulated (log2FC ≥1, q-value <0.001) in the liver of Snhg3-HKI mice (Figure 4A). A gene set enrichment analysis (GSEA) of DEGs revealed that Snhg3 exerts a global effect on the expression of genes involved in fatty acid metabolism and the PPAR signaling pathway (Figure 4B). RT-qPCR analysis confirmed that the hepatic expression levels of some genes involved in fatty acid metabolism, including Cd36, Cidea/c, and stearoyl-CoA desaturase (Scd1/2), the key enzymes involved in the biosynthesis of unsaturated fatty acids (Ntambi and Miyazaki, 2003), were upregulated in Snhg3-HKO mice and were downregulated in Snhg3-HKI mice compared to the controls (Figure 4C). Additionally, deficiency and overexpression of Snhg3 respectively decreased and increased the expression of profibrotic genes, such as collagen type I alpha 1/2 (Col1a1 and Col1a2), but had no effects on the pro-inflammatory factors, including transforming growth factor β1 (Tgfb1), tumor necrosis factor a (Tnfa), interleukin 6 and 1b (Il6 and Il1b; Figure 4—figure supplement 1A, B). LncRNAs in the nucleus can affect gene expression in multiple ways, such as chromatin remodeling, transcriptional regulation, and post-transcriptional processing (Morey and Avner, 2004; Thomson and Dinger, 2016). Since Snhg3 was mainly localized in the nuclei of hepatocytes, we next checked the genome-wide chromatin accessibility (log2FC >2, p-value <0.001) in the liver of Snhg3-HKI and WT mice using ATAC-Seq. We discovered that in all 6810 differentially accessible regions (DARs), 4305 (>63.2%) were more accessible in Snhg3-HKI mice and only 2505 (>36.8%) of peaks were more accessible in control mice, indicating that the chromatin states were ‘hyper-accessible’ in the liver of Snhg3-HKI mice. Moreover, DARs were with relatively few promoter-proximal (Up2k) and exon regions in both the control and Snhg3-HKI groups (Figure 4D), supporting the idea that gene activation depends on multiple regulatory regions, is not limited to its promoter and exon regions (Ackermann et al., 2016). Furthermore, 3966 genes were associated specifically with the accessible regions in the Snhg3-HKI group and only 2451 genes in the WT group (log2FC >2, p-value <0.001). Additionally, PPARg was identified as a potential transcription factor associated with hyper-accessible regions in the liver of the Snhg3-HKI group by HOMER and CREMA (Figure 4E and F).

Figure 4. Snhg3 promotes hepatic steatosis through regulating chromatin remodeling.

(A) Differentially expressed genes in livers of Snhg3-HKI and WT mice (n=3mice/group). (B) GSEA showing the enrichment of PPAR signaling pathway (up) and fatty acid metabolism (down) (KEGG pathway database) in livers of Snhg3-HKI and WT mice (n=3mice/group). (C) Relative hepatic mRNA levels of fatty acid metabolism were measured in Snhg3-HKO (up) mice and Snhg3-HKI mice (down) compared to the controls. (D) Genome distribution ratio of the differentially accessible regions in the liver between WT and Snhg3-HKI mice by ATAC-Seq. (E and F) The transcription factors analysis in the accessible regions of the liver of Snhg3-HKI mice by HOMER (E) and CREMA (F). (G) Integrated ATAC-Seq data with RNA-Seq data. (H) Chromatin accessibility at Cd36 and Cidea/c genes. Data are represented as mean ± SD. *p<0.05and **p<0.01 by Student’s t test.

Figure 4—source data 1. The hepatic differentially expressed genes between DIO Snhg3-HKI and control WT mice were determined using RNA-Seq for Figure 4A.
Figure 4—source data 2. The genome-wide chromatin accessibility in the liver of DIO Snhg3-HKI and WT mice was determined using ATAC-Seq, related to Figure 4D.
Figure 4—source data 3. The genes were associated specifically with the differentially accessible regions in genome in the liver between DIO Snhg3-HKI and WT mice, related to Figure 4D.
Figure 4—source data 4. The hepatic differentially expressed genes between DIO Snhg3-HKI and WT mice were correlated with open chromatin regions by integrated analyzing ATAC-Seq data with RNA-Seq data for Figure 4G.

Figure 4.

Figure 4—figure supplement 1. Snhg3 influences the expression of profibrotic genes, not pro-inflammatory factors.

Figure 4—figure supplement 1.

The mRNA levels of liver fibrosis and inflammation in DIO Snhg3-HKO mice (A) and Snhg3-HKI mice (B), compared to the controls. Data are represented as mean ± SEM.*p<0.05 and **p<0.01 by Student’s t test.

To determine whether open chromatin regions were correlated with gene expression, we integrated ATAC-Seq data (genes associated with DARs, log2FC >2, p-value <0.001) with RNA-Seq data (DEGs in DIO Snhg3-HKI and control mice, log2FC >1, q-value <0.001). Overall, 233 upregulated genes shown in quadrant 2, including Cd36 and Cidea/c, had at least one associated open chromatin region, which accounted for >22.67% (total 1028) of DEGs mapped to ATAC-Seq peaks in the liver of Snhg3-HKI mice (Figure 4G and H). Meanwhile, at least one open chromatin region was associated with 65 downregulated genes in the quadrant 3, which accounted for >17.81% (total 365) of DEGs mapped to ATAC-Seq peaks in the liver of WT mice (Figure 4G).

Snhg3 induces SND1 expression by interacting with SND1 and enhancing the stability of SND1 protein

To further elucidate the molecular mechanism of Snhg3 in hepatic steatosis, an RNA pull-down followed by mass spectrometry (MS) assay was performed in primary hepatocytes. The result identified 234 specific Snhg3-associated proteins, involved in multiple signaling pathways, including PPAR, NAFLD and fatty acid degradation pathways (Figure 5A and B). Of these proteins, a well-understood Tudor protein SND1 was also predicted to interact with three fragments of Snhg3 by bioinformatic method (RBPsuite; Figure 5C and D). Snhg3 coprecipitation with SND1 was confirmed by RNA pull-down coupled with western blotting (Figure 5E), which was consistent with the RNA immunoprecipitation (RIP) assay results (Figure 5F). Meanwhile, Snhg3 regulated the protein, not mRNA, expression of SND1 in vivo and in vitro by mildly promoting the stability of SND1 protein (Figure 5G–J). Furthermore, we tested the effect of Snhg3 on the ubiquitin-modification of SND1 and found that Snhg3 enhanced SND1 ubiquitination in vivo and in vitro (Figure 5K and L). Previous studies indicated that K48-linked polyubiquitination aids in proteasome-mediated recognition and degradation and that K63-linked polyubiquitination participates in signaling assemblies and protein stability (Sun et al., 2020). As predicted, Snhg3 overexpression increased K63-linked ubiquitination modification in endogenous and exogenous SND1 protein, not K48- or K33-linked (Figure 5M and N). Additionally, Snhg3 overexpression enhanced the nuclear localization of SND1 in Hepa1-6 cells with PA treatment (Figure 5O). Collectively, these results suggested that Snhg3 promoted the K63-linked ubiquitination and stability of SND1 protein through interacting with SND1, thus resulting in SND1 protein increase and nuclear localization.

Figure 5. Snhg3 induces SND1 expression and enhances the stability of SND1 protein through physiologically interacting with SND1.

Figure 5.

(A) Venn diagram of data from RNA pull-down and MS. (B) KEGG analysis of genes in specific Snhg3-binding proteins from RNA pull-down and MS. (C) Venn diagram of data from RNA pull-down and MS and bioinformatics predicted by RBPsuite. (D) SND1 interacts with different fragments of Snhg3 predicted by bioinformatics using RBPsuite. (E) RNA pull-down and western blotting confirms Snhg3 interacting with SND1. (F) RIP confirms SND1 interacting with Snhg3. (G and H) Relative protein (G, up, western blotting; down, quantitative result) and RNA (H) levels of Snd1 were measured in the liver. (I) Snhg3 enhanced the protein level of SND1 in Hepa1-6 cells (up, western blotting; down, quantitative result). (J) Snhg3 promoted the stability of SND1 protein in Hepa1-6 cells (up, western blotting; down, quantitative result). (K and L) Snhg3 promoted the ubiquitination of endogenous (K) and exogenous (L) SND1 protein in Hepa1-6 cells. (M and N) Snhg3 increased the K63-linked, not K48-linked and K33-linked, ubiquitination modification of endogenous (M) and exogenous (N) SND1 protein. (O) Snhg3 induced the nuclear localization of SND1 in Hepa1-6 cells (up, western blotting; down, quantitative result). Data are represented as mean ± SEM. *p<0.05and ***p<0.001 by two-way ANOVA (J) or Student’s t test (the others).

Figure 5—source data 1. Snhg3-bound proteins were identified in mouse primary hepatocytes by RNA-Pulldown-Mass spectrometry for Figure 5A.
Figure 5—source data 2. Snhg3-bound proteins were predicted by bioinformatic method (RBPsuite) for Figure 5C.
Figure 5—source data 3. PDF file containing original western blots for Figure 5E, indicating the relevant bands and treatments.
Figure 5—source data 4. Original files for western blot analysis displayed in Figure 5E.
Figure 5—source data 5. PDF file containing original western blots for Figure 5G, indicating the relevant bands and treatments.
Figure 5—source data 6. Original files for western blot analysis displayed in Figure 5G.
Figure 5—source data 7. PDF file containing original western blots for Figure 5I, indicating the relevant bands and treatments.
Figure 5—source data 8. Original files for western blot analysis displayed in Figure 5I.
Figure 5—source data 9. PDF file containing original western blots for Figure 5J, indicating the relevant bands and treatments.
Figure 5—source data 10. Original files for western blot analysis displayed in Figure 5J.
Figure 5—source data 11. PDF file containing original western blots for Figure 5K, indicating the relevant bands and treatments.
Figure 5—source data 12. Original files for western blot analysis displayed in Figure 5K.
Figure 5—source data 13. PDF file containing original western blots for Figure 5L, indicating the relevant bands and treatments.
Figure 5—source data 14. Original files for western blot analysis displayed in Figure 5L.
Figure 5—source data 15. PDF file containing original western blots for Figure 5M, indicating the relevant bands and treatments.
Figure 5—source data 16. Original files for western blot analysis displayed in Figure 5M.
Figure 5—source data 17. PDF file containing original western blots for Figure 5N, indicating the relevant bands and treatments.
Figure 5—source data 18. Original files for western blot analysis displayed in Figure 5N.
Figure 5—source data 19. PDF file containing original western blots for Figure 5O, indicating the relevant bands and treatments.
Figure 5—source data 20. Original files for western blot analysis displayed in Figure 5O.

Snhg3 promotes PPARγ expression by decreasing H3K27me3 enrichment at the Pparg promoter

SND1, initially named as p100, is a highly conserved and ubiquitously expressed multifunctional Tudor domain-containing protein that participates in pivotal biological processes like double-stranded RNA editing, pre-mRNA splicing, microRNA-mediating gene silencing and piRNA biogenesis in germlines (Ying and Chen, 2012). Previous studies indicated that Tudor proteins participate in epigenetic regulation by binding to methyl-arginine⁄lysine residues (Ying and Chen, 2012). However, whether SND1 influences histone modification remains unclear. It is well known that histone modification dynamically regulates specific gene expression by altering the organization and function of chromatin and is involved in the pathophysiology of some diseases, such as histone H3 methylation modification, which may contribute to MASLD pathogenesis (Byun et al., 2020; Jun et al., 2012; Tessarz and Kouzarides, 2014). Considering that H3K27me3, a repressive chromatin mark, plays a role in autophagy-mediated lipid degradation (Byun et al., 2020), we tested the effect of SND1 on H3K27me3. The results revealed that both SND1 and Snhg3 overexpression reduced the H3K27me3 level (Figure 6A). Furthermore, disrupting SND1 expression increased the H3K27me3 level and reversed the Snhg3-induced H3K27me3 decrease (Figure 6B and C). Moreover, the hepatic H3K27me3 level was upregulated in Snhg3-HKO mice but downregulated in Snhg3-HKI mice (Figure 6D). The results indicated that Snhg3 negatively regulated the H3K27me3 level through SND1.

Figure 6. Snhg3 increases PPARγ expression through reducing H3K27me3 enrichment at Pparg promoter.

Figure 6.

(A) Overexpression of Snhg3 or SND1 reduced the H3K27me3 level in Hepa1-6 cells with PA treatment (up, western blotting; down, quantitative result). (B) The expression of SND1 was disrupted with siRNA (up, western blotting; down, quantitative result). (C) Disruption SND1 expression reversed the Snhg3-induced decrease in H3K27me3 in primary hepatocytes (up, western blotting; down, quantitative result). (D) The H3K27me3 levels were measured in the liver of Snhg3-HKO and Snhg3-HKI mice (up, western blotting; down, quantitative result). (E) Genome distribution ratio of H3K27me3 enrichment genetic sequence in the liver of Snhg3-HKO mice. (F and G) ChIP result showed that Snhg3 affected H3K27me3 enrichment at Pparg promoter in vivo (F) and in vitro. (G) Data are represented as mean ± SEM. *p<0.05, **p<0.01and ***p<0.001 by one-way ANOVA (C) or by Student’s t test (the others).

Figure 6—source data 1. PDF file containing original western blots for Figure 6A, indicating the relevant bands and treatments.
Figure 6—source data 2. Original files for western blot analysis displayed in Figure 6A.
Figure 6—source data 3. PDF file containing original western blots for Figure 6B, indicating the relevant bands and treatments.
Figure 6—source data 4. Original files for western blot analysis displayed in Figure 6B.
Figure 6—source data 5. PDF file containing original western blots for Figure 6C, indicating the relevant bands and treatments.
Figure 6—source data 6. Original files for western blot analysis displayed in Figure 6C.
Figure 6—source data 7. PDF file containing original western blots for Figure 6D, indicating the relevant bands and treatments.
Figure 6—source data 8. Original files for western blot analysis displayed in Figure 6D.
Figure 6—source data 9. The H3K27me3 enrichment in the genome in the liver of DIO Snhg3-HKO mice were determined using the CUT&Tag-Seq, related to Figure 6E.

To further clarify whether Snhg3-induced H3K27me3 decrease is involved in hepatic steatosis, we examined the H3K27me3 enrichment in the liver of Snhg3-HKO mice using the CUT&Tag assay and detected 10915 peaks. The genomic locations of these peaks were divided into eight categories, and the H3K27me3 signals were predominantly enriched (about 54%) at the 2 kb promoter, 5’-untranslated region (5’-UTR), and exon categories. Meanwhile, very few signals (about 14%) were enriched in the 2 kb downstream and intergenic categories in the liver of Snhg3-HKO mice (Figure 6E). Moreover, the exon, upstream 2 k, 5’-UTR and intron regions of Pparg were enriched with the H3K27me3 mark (fold_enrichment = 4.15697) in the liver of Snhg3-HKO mice. Subsequently, ChIP assay revealed that hepatic H3K27me3 enrichment at the Pparg promoter was increased in Snhg3-HKO mice but decreased in Snhg3-HKI mice (Figure 6F). Snhg3-overexpression in Hepa1-6 cells yielded similar results (Figure 6G).

SND1 mediates Snhg3-induced PPARγ upregulation

PPARγ has been reported to influence MASLD progression by regulating target genes such as Cd36 and Cidea/c (Lee et al., 2023b; Lee et al., 2021; Lee et al., 2018; Matsusue et al., 2008; Skat-Rørdam et al., 2019). In this study, the mRNA and protein expression levels of hepatic PPARγ were decreased in Snhg3-HKO mice and increased in Snhg3-HKI mice (Figure 7A–C). Additionally, CD36 protein level was decreased in Snhg3-HKO mice and increased in Snhg3-HKI mice (Figure 7B and C). The upregulation of Snhg3 and SND1 also increased the expression of Pparg and Cd36 in vitro (Figure 7D–F). Meanwhile, disruption of SND1 expression alleviated Snhg3-induced PPARγ increase and lipid accumulation (Figure 7G–I). Collectively, these results demonstrated that SND1 mediated Snhg3-induced PPARγ and CD36 expression.

Figure 7. SND1 mediates Snhg3-induced PPARγ upregulation.

(A) The mRNA level of Pparg was measured in the liver of Snhg3-HKO (left) and Snhg3-HKI mice (right). (B) The protein level of PPARγ was measured in the liver of Snhg3-Flox and Snhg3-HKO mice (up, western blotting; down, quantitative result). (C) The protein level of PPARγ were measured in the liver of WT and Snhg3-HKI mice (up, western blotting; down, quantitative result). (D and E) Overexpression of Snhg3 (D) and SND1 (E) promoted the mRNA expression of Pparg and Cd36 in primary hepatocytes. (F) Overexpression of Snhg3 and SND1 increased the protein expression of PPARγ in Hepa1-6 cells (up, western blotting; down, quantitative result). (G) Disruption SND1 expression alleviated Snhg3-induced increase in the protein level of PPARγ in Hepa1-6 cells (left) and mouse primary hepatocytes (MPH, right) with PA treatment (up, western blotting; down, quantitative result). (H) Disruption SND1 expression alleviated Snhg3-induced increase in the mRNA levels of Pparg and Cd36 in Hepa1-6 cells with PA treatment. (I) Disruption SND1 expression alleviated Snhg3-induced increase in lipid accumulation (left, oil red O staining; right, quantitative result) in MPH with PA treatment. Data are represented as mean ± SEM. *p<0.05, **p<0.01and ***p<0.001 by one-way ANOVA (G–I) or by Student’s t test (the others).

Figure 7—source data 1. PDF file containing original western blots for Figure 7B, indicating the relevant bands and treatments.
Figure 7—source data 2. Original files for western blot analysis displayed in Figure 7B.
Figure 7—source data 3. PDF file containing original western blots for Figure 7C, indicating the relevant bands and treatments.
Figure 7—source data 4. Original files for western blot analysis displayed in Figure 7C.
Figure 7—source data 5. PDF file containing original western blots for Figure 7F, indicating the relevant bands and treatments.
Figure 7—source data 6. Original files for western blot analysis displayed in Figure 7F.
Figure 7—source data 7. PDF file containing original western blots for Figure 7G, indicating the relevant bands and treatments.
Figure 7—source data 8. Original files for western blot analysis displayed in Figure 7G.

Figure 7.

Figure 7—figure supplement 1. Sngh3-induced changes in PPARγ and SND1 are independent on U17 snoRNA.

Figure 7—figure supplement 1.

(A) Hepatic U17 snoRNA expression in DIO Snhg3-HKO mice and Snhg3-HKI mice compared to the controls. (B and C) Overexpression U17 snoRNA has no effect on the mRNA (B) and protein (C) levels of PPARγ and SND1 (left, western blotting; right, quantitative result). Data are represented as mean ± SEM. *p<0.05and ***p<0.001 by Student’s t test.
Figure 7—figure supplement 1—source data 1. PDF file containing original western blots for Figure 7—figure supplement 1C, indicating the relevant bands and treatments.
Figure 7—figure supplement 1—source data 2. Original files for western blot analysis displayed in Figure 7—figure supplement 1C.

In addition, Snhg3 serves as host gene for producing intronic U17 snoRNAs, the H/ACA snoRNA. A previous study found that cholesterol trafficking phenotype was not due to reduced Snhg3 expression, but rather to haploinsufficiency of U17 snoRNA. Upregulation of hypoxia-upregulated mitochondrial movement regulator (HUMMR) in U17 snoRNA-deficient cells promoted the formation of ER-mitochondrial contacts, resulting in decreasing cholesterol esterification and facilitating cholesterol trafficking to mitochondria (Jinn et al., 2015). Additionally, disruption of U17 snoRNA caused resistance to lipid-induced cell death and general oxidative stress in cultured cells. Furthermore, knockdown of U17 snoRNA in vivo protected against hepatic steatosis and lipid-induced oxidative stress and inflammation (Sletten et al., 2021). In this study, the expression of U17 snoRNA decreased in the liver of Snhg3-HKO mice and unchanged in the liver of Snhg3-HKI mice, but overexpression of U17 snoRNA had no effect on the expression of SND1 and PPARγ (Figure 7—figure supplement 1A–C), indicating that Sngh3 induced hepatic steatosis was independent on U17 snoRNA.

PPARγ mediates Snhg3-induced hepatic steatosis

Hepatocyte-specific depletion of PPARγ is known to protect mice against NASH and boost the therapeutic efficacy of rosiglitazone, a synthetic PPARγ agonist, in the liver (Lee et al., 2021). Furthermore, PPARγ is an inducer of adipocyte differentiation and a reservoir for excess FFAs, thereby potentially preventing lipotoxicity in other tissues and organs (Medina-Gomez et al., 2007). To this end, we tested the effect of T0070907, a selective PPARγ antagonist, on Snhg3-induced hepatic steatosis in mice. The result showed that T0070907 treatment for 8 weeks had no effects on body weight, liver and iWAT weight, and serum FFAs, TG and TC in Snhg3-HKI mice, but improved Snhg3-induced hepatic steatosis in Snhg3-HKI mice (Figure 8A–D and Figure 8—figure supplement 1). Moreover, T0070907 mitigated the hepatic Cd36 and Cidea/c increase in Snhg3-HKI mice (Figure 8E). Additionally, Snhg3- and SND1-induced Cd36 increase also were abolished by T0070907 in hepa1-6 cells (Figure 8F). Collectively, these results suggested that PPARγ-mediated Snhg3-induced hepatic steatosis.

Figure 8. PPARγ mediates Snhg3-induced hepatic steatosis.

(A and B) Body weight (A) and liver weight (B) of Snhg3-HKI mice without (n=6) or with (n=7) T0070907 treatment for 8weeks. (C) Serum FFAs, TG and TG concentrations of mice as indicated in (A). (D) Hepatic H&E and oil red O staining (left) and NASH score (right) of mice as indicated in A. Scale bars, 100μm. (E) T0070907 mitigated the hepatic Cd36 and Cidea/c increase in Snhg3-HKI mice. (F) T0070907 disrupted Snhg3- and SND1-induced Cd36 increase in Hepa1-6 cells. (G) Model of how Snhg3 and SND1 interacting and influencing chromatin remodeling via H3K27me3, and promoting PPARγ expression thereby resulting in hepatic steatosis. Data are represented as mean ± SEM. *p<0.05and ***p<0.001 by two-way ANOVA (A) or by Student’s t test for the others.

Figure 8.

Figure 8—figure supplement 1. Fat weight of Snhg3-HKI mice without (n=6) or with (n=7) T0070907 treatment for 8weeks.

Figure 8—figure supplement 1.

Data are represented as mean ± SEM and are analyzed by Student’s t test.

Discussion

Liver steatosis is common in various metabolic diseases and related disorders, including MASLD. Although lncRNAs are implicated in regulating numerous mechanisms related to liver steatosis and MASLD, their exact function remains to be determined. In this study, lncRNA-Snhg3 is downregulated in DIO mice and hepatocyte-specific Snhg3 deficiency improved hepatic steatosis and insulin resistance, while overexpression aggravated hepatic steatosis and insulin resistance in mice. Our results showed that the expression of Snhg3 was decreased in DIO mice which led us to speculate that the downregulation of Snhg3 might be a stress protective reaction to high nutritional state, but the specific details need to be clarified. This is probably similar to fibroblast growth factor 21 (FGF21) and growth differentiation factor 15 (GDF15), whose endogenous expression and circulating levels are elevated in obese humans and mice despite their beneficial effects on obesity and related metabolic complications (Keipert and Ost, 2021). Although FGF21 can be induced by oxidative stress and be activated in obese mice and in NASH patients, elevated FGF21 paradoxically protects against oxidative stress and reduces hepatic steatosis (Tillman and Rolph, 2020).

Excessive hepatic lipid deposition owing to increased FFAs uptake and hepatic DNL impairs autophagy and promotes ER stress and oxidative stress, insulin resistance, inflammation, and liver tissue damage, ultimately aggravating MASLD progression (Rada et al., 2020). In this study, Snhg3 induced the expression of fatty acid metabolism related genes such as Cd36, Cidea/c and Scd1/2. Under physiological conditions, CD36 expression in hepatocytes was found to be minimal; however, lipid overload or activation of nuclear receptors including PPARα/γ and liver X receptor (LXR), could significantly increase it (Rada et al., 2020). As a transcription regulator of Cd36 and Cidea/c, it is well known that PPARγ plays major adipogenic and lipogenic roles in adipose tissue. Although the expression of PPARγ in the liver is very low under healthy conditions, induced expression of PPARγ in both hepatocytes and non-parenchymal cells (Kupffer cells, immune cells, and hepatic stellate cells [HSCs]) in the liver has a crucial role in the pathophysiology of MASLD (Chen et al., 2023; Gross et al., 2017; Lee et al., 2023b). The activation of PPARγ in the liver induces the adipogenic program to store fatty acids in lipid droplets as observed in adipocytes (Lee et al., 2018). Moreover, the inactivation of liver PPARγ abolished rosiglitazone-induced an increase in hepatic TG and improved hepatic steatosis in lipoatrophic AZIP mice (Gavrilova et al., 2003). Furthermore, there is a strong correlation between the onset of hepatic steatosis and hepatocyte-specific PPARγ expression. Clinical trials have also indicated that increased insulin resistance and hepatic PPARγ expressions were associated with NASH scores in some obese patients (Lee et al., 2023a; Mukherjee et al., 2022). Even though PPARγ’s primary function is in adipose tissue, patients with MASLD have much higher hepatic expression levels of PPARγ, reflecting the fact that PPARγ plays different roles in different tissues and cell types (Mukherjee et al., 2022). As these studies mentioned above, our result also hinted at the importance of PPARγ in the pathophysiology of MASLD. Snhg3 deficiency or overexpression respectively induced the decrease or increase in hepatic PPARγ. Moreover, administration of PPARγ antagonist T0070907 mitigated the hepatic Cd36 and Cidea/c increase and improved Snhg3-induced hepatic steatosis. However, conflicting findings suggest that the expression of hepatic PPARγ is not increased as steatosis develops in humans and in clinical studies and that PPARγ agonists administration did not aggravate liver steatosis (Gross et al., 2017). Thus, understanding how the hepatic PPARγ expression is regulated may provide a new avenue to prevent and treat the MASLD (Lee et al., 2018).

Hepatotoxicity accelerates the development of progressive inflammation, oxidative stress, and fibrosis (Roehlen et al., 2020). Chronic liver injury including MASLD can progress to liver fibrosis with the formation of a fibrous scar. Injured hepatocytes can secrete fibrogenic factors or exosomes containing miRNAs that activate HSCs, the major source of the fibrous scar in liver fibrosis (Kisseleva and Brenner, 2021). Apart from promoting lipogenesis, PPARγ has also a crucial function in improving inflammation and fibrosis (Chen et al., 2023). In this study, no hepatic fibrosis phenotype was seen in Snhg3-HKO and Snhg3-HKI mice. Moreover, the expression levels of profibrotic genes including Col1a1 and Col1a2 were decreased in Snhg3-HKO mice and increased in Snhg3-HKI mice, but the pro-inflammatory factors including Tgfb1, Tnfa, Il6, and Il1b had no changes. Inflammation is an absolute requirement for fibrosis because factors from injured hepatocytes alone are not sufficient to directly activate HSCs and lead to fibrosis (Kisseleva and Brenner, 2021). Additionally, previous studies indicated that exposure to HFD for more 24 weeks causes less severe fibrosis (Alshawsh et al., 2022). In future, the effect of Snhg3 on hepatic fibrosis in mice need to be elucidated by prolonged high-fat diet feeding or adopting methionine- and choline deficient diet (MCD) feeding.

Epigenetics plays a crucial role in many physiological and pathological situations (Peixoto et al., 2020). Epigenetic regulation induces phenotypic changes that may respond to environmental cues through DNA methylation and histone modification, chromatin remodeling, and noncoding RNAs (Mann, 2014). Epigenetic changes interact with inherited risk factors to modulate the individual risk of MASLD development and the severity of progression. Epigenetic modifications, including DNA methylation, miRNAs, and histone modifications, have been associated with MASLD (Baffy, 2015; Eslam et al., 2018; Jonas and Schürmann, 2021). To date, there is no approved pharmacologic therapy for MASLD, and the mainstay of management remains lifestyle changes with exercise and dietary modifications (Bayoumi et al., 2020). Therefore, understanding the epigenetic modifications in MASLD pathogenesis might prove a rational strategy to prevent the disease and develop novel therapeutic interventions (Sodum et al., 2021).

LncRNAs, being abundant in the genome participate in regulating the expression of coding genes through various molecular mechanisms, including: (1) transcriptional regulation at the promoter of target genes; (2) inhibiting RNA polymerase II or mediating chromatin remodeling and histone modification; (3) interfering with the splicing and processing of mRNA or producing endogenous siRNA; (4) regulating the activity or cellular localization of the target protein; (5) acting as competitive endogenous RNAs; and (6) riboregulation by forming nucleic acid-protein complex as structural component (Morey and Avner, 2004; Sommerauer and Kutter, 2022; Thomson and Dinger, 2016). However, compared to the large number of lncRNAs, only few have been functionally well-characterized. Collective literature has shown that lncRNAs play a crucial role in MASLD (Sommerauer and Kutter, 2022). This study demonstrated that lncRNA-Snhg3 participated in the pathology of MASLD by epigenetic modification; that is, Snhg3 inhibited the H3K27me3 level, and promoted chromatin relaxation at the Pparg promoter and eventually increased PPARγ expression. The results from Ruan et al. demonstrated that more than a third of dynamically expressed lncRNAs were deregulated in a human MASLD cohort and the lncRNA human lncRNA metabolic regulator 1 (hLMR1) positively regulated transcription of genes involved in cholesterol metabolism (Ruan et al., 2021). Previous studies have also demonstrated that several lncRNAs, including FLRL2/3/6/7/8, H19, and MALAT-1, were associated with lipogenesis via proteins in the PPAR signaling pathway (Mukherjee et al., 2022). Recently, a murine long noncoding single-cell transcriptome analysis elucidated liver lncRNA cell-type specificities, spatial zonation patterns, associated regulatory networks, and temporal patterns of dysregulation during hepatic disease progression. Moreover, a subset of the liver disease-associated regulatory lncRNAs identified have human orthologs (Karri and Waxman, 2023). Based on the aforementioned information, lncRNAs emerge as promising candidates for biomarkers and therapeutic targets for MASLD.

Tudor proteins play vital roles in normal cell viability and growth by diverse epigenetic functions, including methylation dependent chromatin-remodeling, histone-binding, pre-RNA-processing, RNA-silencing, and transposon silencing in ligands (Ying and Chen, 2012). Tudor proteins are divided into four groups: Group1 Tudor proteins bind to methyl-lysine⁄arginine of histone tails, including Tdrd3, PHF1, PHF20, the Jumonji domain-containing protein (JMJD) family and TP53BP1; Group 2 Tudor proteins bind to methyl-arginine of ligands and representative members include SMN and SMNDC1; Group 3 is represented by SND1; and Group 4, contains many Tudor proteins, including Tdrd1-9 and Tdrd11, that have been identified in methylation-dependent association with PIWI proteins Ago3, Aub, and Piwi. In this study, Snhg3 induced the protein level of SND1 by promoting K63-linked ubiquitination of SND1 and increasing its protein stability. Additionally, Snhg3-induced SND1 protein stability seemed subtle, indicating there may be other way for Snhg3 promotion SND1, such as riboregulation. Some studies suggested that SND1 plays important roles in cancer by interacting with other transcription factors, including PPARγ, signal transducer and activator of transcription 5/6 (STAT6/5) and myeloblastosis oncogene (c-Myb) (Duan et al., 2014; Navarro-Imaz et al., 2020). SND1 could induce adipogenesis and promote the formation of lipid droplets in adipocytes through working as a co-activator of PPARγ and regulating H3 acetylation (Duan et al., 2014). Our study showed that both Snhg3 and SND1 decreased the H3K27me3 level and promoted the expression of PPARγ. SND1 could interact with Snhg3 and mediate the Snhg3-induced decrease in H3K27me3 and increase in PPARγ expression. Furthermore, inhibition of PPARγ with T0070907 alleviated Snhg3- and SND1-induced Cd36 and Cidea/c increase and improved Snhg3-aggravated hepatic steatosis. In lncRNA riboregulation, the actions of noncoding RNAs mostly rely on interactions with proteins, including canonical or noncanonical RNA-binding proteins (RBPs). Canonical RBPs, such as heterogeneous nuclear ribonucleoproteins (hnRNPs), polypyrimidine tract binding protein 1 (PTBP1) and human antigen R (HUR), are often involved in posttranscriptional regulation, including pre-mRNA processing, RNA stability, RNA decay, or nuclear export (Briata and Gherzi, 2020). Previous studies have demonstrated that some lncRNAs, for example LINC01018, MEG3, APOA4-AS, hLMR1, Blnc1, and LncARSR interact with canonical RBPs to govern the progression of MASLD (Sommerauer and Kutter, 2022).

In summary, our study demonstrates that lncRNA-Snhg3 influenced fatty acid metabolism and aggravated hepatic steatosis under DIO status. Furthermore, Snhg3 increased the expression, stability, and nuclear localization of SND1 protein by interacting with SND1, thus enhancing the expression of PPARγ via reducing H3K27me3 enrichment and boosting chromatin loose remodeling at the Pparg promoter, indicating that SND1/H3K27me3/PPARγ is partially responsible for Snhg3-induced hepatic steatosis. This study reveals a new signaling pathway, Snhg3/SND1/H3K27me3/PPARγ, responsible for hepatic steatosis and provides evidence of lncRNA-mediated epigenetics in the pathophysiology of MASLD (Figure 8G).

However, there are still some limitations to this study that require further investigation. Notably, the expression change of H3K27me3, a global repressive histone mark, may affect multiple downstream target genes, including Pparg; therefore, more target genes involved in MASLD need to be elucidated. Moreover, the precise mechanism by which SND1 regulates H3K27me3 is still unclear and hence requires further investigation. It is crucial to ascertain whether SND1 itself functions as a new demethylase or if it influences other demethylases, such as JMJD3, enhancer of zeste homolog 2 (EZH2), and ubiquitously transcribed tetratricopeptide repeat on chromosome X (UTX). SND1 has multiple roles through associating with different types of RNA molecules, including mRNA, miRNA, circRNA, dsRNA, and lncRNA. SND1 could bind negative-sense SARS-CoV-2 RNA and to promote viral RNA synthesis (Schmidt et al., 2023). SND1 is also involved in hypoxia by negatively regulating hypoxia‐related miRNAs (Saarikettu et al., 2023). Furthermore, a recent study revealed that lncRNA SNAI3-AS1 can competitively bind to SND1 and perturb the m6A-dependent recognition of Nrf2 mRNA 3'UTR by SND1, thereby reducing the mRNA stability of Nrf2 (Zheng et al., 2023). Huang et al. also reported that circMETTL9 can directly bind to and increase the expression of SND1 in astrocytes, leading to enhanced neuroinflammation (Huang et al., 2023). However, whether there is an independent-histone methylation role of SND1/lncRNA-Snhg3 involved in lipid metabolism in the liver needs to be further investigated.

Materials and methods

Animals and treatments

C57BL/6 Snhg3flox/flox (Snhg3-Flox) mice and hepatocyte-specific Snhg3 knock-in (Snhg3-HKI) mice were created using the CRISPR-Cas9 system at Cyagen Biosciences. To engineer the targeting vector for Snhg3-Flox mice, the exon 3 of Snhg3 was selected as the conditional knockout region, and homology arms and the cKO region were generated by PCR using BAC clone as a template. Cas9 and gRNA were co-injected into fertilized eggs with a targeting vector for mice production. The obtained mice were identified by PCR followed by sequence analysis. Hepatocyte-specific Snhg3 knock-out (Snhg3-HKO) mice were generated by crossing Snhg3-Flox mice with C57BL/6-Alb-Cre mice. For Snhg3-HKI mice, the ‘Alb promoter-mouse Snhg3 cDNA-polyA’ cassette was inserted into an H11 locus (~0.7 kb 5' of the Eif4enif1 gene and ~4.5 kb 3' of the Drg1 gene), and homology arms were generated by PCR using BAC clone as template to engineer the targeting vector. Cas9 and gRNA were co-injected into fertilized eggs with targeting vector for mice production. The obtained mice were identified by PCR followed by sequence analysis. All mice were housed in the pathogen-free conditions (SPF) facility and maintained on a 12 hr light-dark cycle and a regular unrestricted diet. All mice were fed either a normal chow diet (9% fat; Lab Diet) or HFD (60% fat, Research Diets) for inducing obesity and libitum with free access to water. Unless otherwise noted, 6~8-week-old male mice were used for all experiments. 8-week-old mice fed on HFD were injected intraperitoneally (i.p.) with 1 mg/kg of T0070907 dissolved in DMSO for 5 days per week for 2 months. Liver tissue samples were analyzed by the High Fatty Sample Total Cholesterol (TC) Content Assay Kit (APPLYGEN, Cat#E1025-105) and the High Fatty Sample Triglyceride (TG) Content Assay Kit (APPLYGEN, Cat#E1026-105), respectively. Serum concentrations of ALT, AST, FFAs, TG and TC were determined using an automated Monarch device (Peking Union Medical College Hospital, Beijing, China). Serum insulin was detected using a mouse insulin ELISA kit (JM-02862M1, Beijing BioDee Biotechnology Co., Ltd.). All animal experiments were conducted under protocols approved by the Animal Research Committee of the Institute of Laboratory Animals, Institute of Basic Medical Sciences Chinese Academy of Medical Sciences & School of Basic Medicine Peking Union Medical College (ACUC-A01-2022-010).

Cell culture

Primary mouse hepatocytes were isolated from 8-week-old male C57BL/6 J mice and cultured in RPMI 1640 medium with 10% FBS as previously described (Matsumoto et al., 2002). Hepa1-6 cells (ATCC, Cat#CRL-1830) were cultured at 37 °C, 5% CO2 in DMEM (Gibco, Carlsbad, USA) supplemented with 10% FBS, and 1% penicillin-streptomycin. The species origin of Hepa1-6 cell was confirmed with PCR and the identity of Hepa1-6 cell was authenticated with STR profiling. Hepa1-6 cell line was checked negative for mycoplasma by PCR. After attachment, the cells were transfected with indicated plasmids or siSnd1 by Lipofectamine 3000 Transfection Kit (Invitrogen). Cells were treated with and without 0.25 mM PA for 12h - 24h before collection. The sequences of siSnd1 were seen key resources table.

Plasmid construction

Snhg3 was amplified from liver cDNA and was then constructed into pcDNA3.1 using Kpn I and EcoR I. The primers were seen key resources table.

Real-time quantitative PCR (RT-qPCR)

Total RNA was extracted from mouse tissues using a Trizol-based method. Approximately 2 μg of total RNA was reverse-transcribed into a first-strand cDNA pool using reverse transcriptase and random primers, according to the manufacturer’s instructions. RT-qPCR was performed using SYBR Green PCR Master Mix (A6002, Promega) with the gene-specific primers (key resources table). All gene expression data were normalized to β-Actin expression levels.

Western blotting

Protein was extracted from frozen tissue samples in cell lysis buffer. In total, protein was loaded onto a 10% SDS-polyacrylamide gel, and separated proteins were transferred to PVDF membranes. Western blot assays were performed using indicated specific antibodies (key resources table). The proteins were quantified by ImageJ software.

Coding potential prediction

The coding potential of Snhg3 was evaluated by the Coding Potential Calculator at CPC2@CBI,PKU(gao-lab.org) (Kang et al., 2017).

Histopathologic analysis

Liver tissue sections were fixed in 4% paraformaldehyde, then embedded in paraffin and stained with H&E to visualize the general morphological and structural characteristics of tissues. Lipid droplet accumulation in the liver was visualized using Oil red O staining of frozen liver sections that were prepared in optimum cutting temperature (O.C.T.) compound. Liver fibrosis was visualized using Picro Sirius Red Stain.

Subcellular fractionation

A Cytoplasmic & Nuclear fraction Kit (Beyotime Biotechnology, China) was used to detect Snhg3 expression in cytoplasmic and nuclear fractions. RNA was extracted from the cytoplasmic and nuclear fractions using a Trizol-based method and subjected to qPCR. Gapdh was used as a cytoplasmic marker, and Neat1 and Xist were used as a nuclear marker. The percentage of the transcript abundance was calculated using the following formula, Nucleus %=2^Ct(Nucleus)/(2^Ct(Cytoplasm)+2^Ct(Nucleus)), Cytoplasm %=1- Nucleus %.

Mouse calorimetry

Male mice were housed individually in metabolic chambers of an Oxymax system (Columbus Instruments). The first readings were taken after a 24 hr acclimation period. Heat production, total carbon dioxide production and oxygen consumption, and RER were determined by Comprehensive laboratory animal monitoring system (CLAMS). The data were analyzed with CalR (Mina et al., 2018).

Insulin tolerance test (ITT) and glucose tolerance test (GTT)

For ITT, male mice fasted for 6 hr and received an intraperitoneal injection of human insulin (0.75 IU/kg). For GTT, male mice fasted for 6 hr or 16 hr received an intraperitoneal injection of glucose (1 g/kg). A series of blood glucose concentrations were measured from tail blood at the indicated times using a One-Touch Ultra glucometer (LifeScan Inc, Milpitas, CA).

Chromatin Immunoprecipitation (ChIP)

The ChIP assay was performed using Sonication ChIP Kit (Abclonal, Cat#RK20258). Briefly, the liver tissues or primary hepatocytes were collected and cross-linking fixed. Cross-linked chromatin fragments were precipitated with Rabbit control IgG (Abclonal, Cat#AC005) or anti-H3K27me3 antibody (Abclonal, Cat# A16199) for subsequent PCR analysis using the amplification primers for mouse Pparg promoter (+101 ~+ 420 bp; key resources table).

RNA immunoprecipitation (RIP)

The RIP assay was performed using RIP Assay Kit (BersinBio, Cat#Bes5101). Briefly, Hepa1-6 cells were transfected by indicated plasmids, respectively. The cells were collected, cross-linking fixed and precipitated with Mouse Control IgG (Abclonal, Cat#AC011) or anti-FLAG antibody (Abclonal, Cat#AE005) for subsequent RT-qPCR analysis using the amplification primers for Snhg3.

RNA sequencing (RNA-Seq)

The RNA-Seq was performed according to the manufacturer’s protocol (BGI-Shenzhen, https://www.yuque.com/yangyulan-ayaeq/oupzan/fuoao4). Briefly, total RNA was extracted from liver of three male DIO (27 weeks) mice and three male control mice for RNA-Seq to screen the differentially expressed lncRNAs using Trizol (Invitrogen, Carlsbad, CA, USA) according to manual instruction. rRNA in total RNA removed using RNase H kit, was subsequently to construct library and perform sequencing analysis. The data were mapped to mouse genome (GRCm39) by using Bowtie2. The data for the differentially expressed lncRNAs had been deposited to National Genomics Data Center, China National Center for Bioinformation (NGDC-CNCB) (https://ngdc.cncb.ac.cn/) with the dataset identifier CRA009822. Additionally, total RNA was extracted from livers of three male DIO Snhg3-HKI mice and three male DIO WT mice for RNA-Seq to screen the differentially expressed mRNAs using Trizol. Total RNA was enriched by oligo (dT)-attached magnetic beads, followed by library construction and sequencing analysis. The data were mapped to mouse genome (GRCm39) by using Bowtie2. The data for the differentially expressed mRNAs have been deposited to the Sequence Read Archive (SRA) (submit.ncbi.nlm.nih.gov) with the dataset identifier SRR22368163, SRR22368164, SRR22368165, SRR22368166, SRR22368167, and SRR22368168.

Assay for transposase-accessible chromatin with high-throughput sequencing (ATAC-Seq)

The ATAC-seq was performed according to manufacturer’s protocols (BGI_Shenzhen, https://www.yuque.com/yangyulan-ayaeq/oupzan/lllmzg). Briefly, fresh liver tissue samples from three male DIO Snhg3-HKI mice and three male DIO control mice were flash frozen by liquid nitrogen and then ground completely. The transposition reactions were initiated by adding transposase. The PCR reaction system was configured to initiate PCR amplification of the transposition products. The corresponding library quality control protocol would be selected depending on product requirements. Single-stranded PCR products were produced via denaturation. The reaction system and program for circularization were subsequently configured and set up. Single-stranded cyclized products were produced, while uncyclized linear DNA molecules were digested. Single-stranded circle DNA molecules were replicated via rolling cycle amplification, and a DNA nanoball (DNB) which contain multiple copies of DNA was generated. Sufficient quality DNBs were then loaded into patterned nanoarrays using high-intensity DNA nanochip technique and sequenced through combinatorial Probe-Anchor Synthesis (cPAS). Data were filtered by removing adaptor sequences, contamination and low-quality reads from raw reads. Bowtie2 was used to do genome alignment after evaluating its performance.

Peak Calling was performed by MACS (Model-based Analysis for ChIP-Seq). The candidate Peak region was extended to be long enough for modeling. Dynamic Possion Distribution was used to calculate the p-value of the specific region based on the unique mapped reads. The region would be defined as a Peak when the p-value <1e-05. MACS works well for the identification of the sharp peaks of most sequence-specific transcription factors.

Peak Distribution on Gene Elements. Peaks were classified based on the location (UCSC annotation data) and showed in the following genome regions: promoter (≤1 kb), promoter (1–2 kb), promoter (2–3 kb), 5'-UTR, 3'-UTR, intergenic, introns, and exons.

Differential Peaks were identified using MAnorm. First, the true intensities of the most common peaks were assumed to be the same between two ATAC-Seq samples. Second, the observed differences in sequence read density in common peaks were presumed to reflect the scaling relationship of ATAC-Seq signals between two samples, which could thus be applied to all peaks. Based on these hypotheses, the log2 ratio of read density between two samples M was plotted against the average log2 read density A for all peaks, and robust linear regression was applied to fit the global dependence between the M-A values of common peaks. Then the derived linear model was used as a reference for normalization and extrapolated to all peaks. Finally, the p-value for each Peak was calculated based on the Bayesian model, the significant regions were picked up if |M=log2FC|>2 and p-value <0.001. To identify DARs, the count matrix was input into MAnorm with the cutoff of abs(log2FC)>2 and p-value <0.001. Genomic features of DARs were annotated by R package ChIPseeker (v1.30.3).

Differential motifs analysis. After extracting the corresponding peak sequence, Hypergeometric Optimization of Motif EnRichment (HOMER, (ucsd.edu)) and Cis-Regulatory Element Motif Activities (CREMA (unibas.ch)) were used for motif analysis. Genomic regions with differential ATAC peaks were shown using IGV software.

The data of ATAC-seq has been deposited to National Genomics Data Center, China National Center for Bioinformation (NGDC-CNCB) (https://ngdc.cncb.ac.cn/) with the dataset identifier CRA009511.

Integrated analysis ATAC-Seq data with RNA-Seq data

The common number and unique number of genes associated with DARs and DEGs were counted using Wayne comparative analysis. The values of each quadrant satisfying the log2FC condition were selected from DARs-associated genes and DEGs to draw a nine-quadrant plot, respectively. Pearson correlation was calculated for both sets of data and p-value was calculated using the Z-test.

Cleavage Under Targets and Tagmentation sequencing (CUT&Tag-Seq)

CUT&Tag was performed according to the Hyperactive Universal CUT&Tag Assay Kit for Illumina (Vazyme, Nanjing, Cat#TD903-01). Briefly, the mixed liver tissues from three DIO Snhg3-HKO mice were used for the CUT&Tag experiment. pA-Tn5 transposase was used to cut the genome and add a special adaptor sequence to build a library. The single-stranded PCR products were sequenced on illumina/DNBSEQ-T7 platform PE150 (Annoroad Gene Technology Co.Itd). The data were mapped to mouse genome (GRCm38) by using Bowtie2. Genomic features of DARs were annotated by R package ChIPseeker (v1.30.3). The data of CUT&Tag has been deposited to National Genomics Data Center, China National Center for Bioinformation (NGDC-CNCB) (https://ngdc.cncb.ac.cn/) with the dataset identifier CRA009582.

Biotin-RNA pull-down and mass spectrometry assay

Biotin-RNA pull-down assay was performed as described in a previous study (Guo et al., 2018). Briefly, Snhg3 DNA was amplified from mouse liver cDNA using the primers listed in the key resources table and lacZ DNA fragment were constructed into pGEM-T easy vector. The pGEM-T-Snhg3 and pGEM-T-lacZ vectors were linearized by restriction enzyme digestion, then transcribed to Snhg3 and lacZ fragments. Biotinylated RNAs were transcribed in vitro with Biotin-RNA Labeling Mix (Roche, Indianapolis, IN) and purified with quick spin RNA columns (Roche, Indianapolis, IN). Biotin-labeled RNA or unbiotinylated RNAs was dissolved in RNA structure buffer (10  mM Tris, pH 7.0, 0.1  M KCl, 10  mM MgCl2) to allow formation of the secondary structure. Primary hepatocytes lysates were added to biotin-labeled RNA or unbiotinylated RNA. Streptavidin agarose beads (GE Healthcare, Little Chalfont, UK) were mixed with a pull-down reaction and then rotated constantly. RNA affinity captures were subjected to 12% SDS-PAGE followed by coomassie blue staining or Western blotting. The various bands that were visualized by coomassie blue staining were excised and subjected to mass spectrometry analyses (LC-MS/MS, A TripleTOF , ABsciex, Concord, ON). The data of RNA pull-down for Snhg3, control or lacZ were deposited to the iProX (https://www.iprox.cn/) with the dataset identifier PXD039526.

Ubiquitination assays

For endogenous ubiquitination assays, Hepa1-6 cells were transfected with the indicated combinations of plasmids, including HA-ubiquitin and Snhg3 plasmids. For exogenous ubiquitination assays, Hepa1-6 cells were transfected with the indicated combinations of plasmids, including HA-ubiquitin, HA-K33-ubiquitin, HA-K63-ubiquitin, HA-K48-ubiquitin, Flag-SND1 and Snhg3 plasmids. Cells were treated with 20 µM MG132 proteasome inhibitor (M1902, AbMole) for 6 hr prior to lyse in lysis buffer 200 mM NaCl, 20 mM Tris-HCl (pH 7.4), 2.5 mM MgCl2, 0.5% Triton X-100, 1 mM PMSF, and protease inhibitor cocktail and then were sonicated. After centrifugation at 14,000 × g, the cleared lysates were subjected to immunoprecipitation with anti-SND1 antibody (sc-166676, Santa Cruz) for endogenous ubiquitination assays or with anti-DDDDK-tag magnetic beads (M185-10R, MBL) for exogenous ubiquitination assays. The immunocomplexes were collected and subjected to estern blotting with the indicated antibodies.

Statistical analysis

Data analyses were performed with SPSS (Version 17.0, SPSS, Inc). The curves of body weight and ITT were analyzed using a repeated measure two-way ANOVA. For the other statistical analysis, the Kolmogorov-Smirnov test was firstly used for normality test. For the data conforming to the normal distribution, experiments were analyzed using Independent-Samples T-test or one-way ANOVA. All data were presented as the mean ± SD or the mean ± SEM. * p<0.05 was considered statistically significant.

Acknowledgements

This work was supported by Chinese Academy of Medical Sciences Innovation Fund for Medical Sciences (CIFMS2021-I2M-1–016 to XL), National Key R&D Program of China (2022YFC2504002 to LY, 2022YFC2504003 to XL), Beijing Natural Science Foundation (7242094 to XL), the National Natural Science Foundation of China (82270925 to AQ), High-level New R&D Institute of Department of Science and Technology of Guangdong Province (2019B090904008 to AQ), and High-level Innovative Research Institute of Department of Science and Technology of Guangdong Province (2021B0909050003 to AQ). We thank Dr. Yi Li (Cancer Hospital, Chinese Academy of Medical Sciences and Peking Union Medical College) for providing the plasmid of HA-Ub, HA-Ub-K63 and HA-Ub-K48. We thank Cyagen Biosciences for the collaborative efforts in the creation of Snhg3-loxP and liver-specific knock-in Snhg3 mice. We thank BGI-Shenzhen for the collaborative efforts in RNA-Seq and ATAC-Seq technology. We thank Anoroad gene technology (Beijing) for the collaborative efforts in CUT&Tag-Seq and Jingjie PTM BioLab (Hangzhou) Co. Ltd for the collaborative efforts in mass spectrometry technology resources.

Appendix 1

Appendix 1—key resources table.

Reagent type (species) or resource Designation Source or reference Identifiers Additional information
Gene (M. musculus) LncRNA Snhg3 GenBank NR_003270.2
Gene (M. musculus) Snd1 GenBank NM_019776.2
Strain, strain background (Escherichia coli) Trans5α TransGen Biotech Cat#CD201
Strain, strain background (M. musculus) Snhg3flox/flox mice This paper Snhg3flox/flox mice were created using the
CRISPR-Cas9 system at Cyagen Biosciences.
Strain, strain background (M. musculus) Hepatocyte-specific knock-in Snhg3 (Snhg3-HKI) mice This paper Snhg3-HKI mice were created using the
CRISPR-Cas9 system at Cyagen Biosciences.
Strain, strain background (M. musculus) Alb-Cre transgenic mice Cyagen Cat#C001006
Strain, strain background (M. musculus) C57BL/6 (Wild type) HFK BIOSCIENCE male
Genetic reagent (Homo-sapiens) Ad-SND1 (adenovirus) WZ Biosciences Cat#VH832073 Adenovirus infect cells to express SND1 (human)
Genetic reagent (M. musculus) Ad-Snhg3 (adenovirus) This paper N/A Adenovirus infect cells to express Snhg3 (mouse)
Cell line (M. musculus) Hepa 1–6 ATCC Cat#CRL-1830
Biological sample (M. musculus) Primary hepatocytes This paper Freshly isolated from C57BL/6
Antibody anti-GAPDH (Rabbit polyclonal) CWBio Cat#CW0100M; RRID: AB_2801390 WB (1:1000)
Antibody anti-β-Actin (Rabbit polyclonal) Abclonal Cat#AC026; RRID: AB_2768234 WB (1:50000)
Antibody anti-H3 (Rabbit polyclonal) Abclonal Cat#A17562; RRID: AB_2770395 WB (1:1000)
Antibody anti-H3K27me3 (Rabbit polyclonal) Abclonal Cat# A16199; RRID: AB_2763651 WB (1:1000)
IP (1:100)
Antibody anti-SND1 (Rabbit polyclonal) Abclonal Cat#A5874; RRID: AB_2766623 WB (1:1000)
Antibody anti-SND1 (Mouse monoclonal) Santa Cruz biotechnology Cat#sc-166676; RRID: AB_2270808 WB (1:500)
IP (1:50)
Antibody anti-PPARγ (Rabbit polyclonal) Abclonal Cat#A11183; RRID: AB_2758449 WB (1:500)
Antibody anti-CD36 (Rabbit polyclonal) Abclonal Cat#A14714; RRID: AB_2761590 WB (1:1000)
Antibody anti DDDDK-Tag (Mouse monoclonal) Abclonal Cat#AE005; RRID: AB_2770401 WB (1:1000)
IP (1:100)
Antibody anti HA-Tag (Rabbit polyclonal) Abclonal Cat#AE036; RRID: AB_2771924 WB (1:1000)
Antibody anti-Ub (Rabbit polyclonal) Abclonal Cat#A19686; RRID: AB_2862735 WB (1:1000)
Antibody anti-Ub (K33) (Rabbit polyclonal) Abclonal Cat# A18199; RRID: AB_2861976 WB (1:1000)
Antibody anti-Ub (K48) (Rabbit polyclonal) Abclonal Cat#A18163; RRID: AB_2861948 WB (1:1000)
Antibody anti-Ub (K63) (Rabbit polyclonal) Abclonal Cat# A18164; RRID: AB_2861949 WB (1:1000)
Antibody Mouse Control IgG (Rabbit polyclonal) Abclonal Cat#AC011; RRID: AB_2770414 WB (1:1000)
IP (1:100)
Antibody Rabbit Control IgG (Rabbit polyclonal) Abclonal Cat#AC005; RRID: AB_2771930 WB (1:1000)
IP (1:100)
Antibody Goat anti-mouse IgG (H+L) (Rabbit polyclonal) ZSGB-Bio Cat#ZB-2305; RRID: AB_2747415 WB (1:10000)
Antibody Goat anti-rabbit IgG (H+L) (Rabbit polyclonal) ZSGB-Bio Cat#ZB-2306; RRID: AB_2868454 WB (1:10000)
Recombinant DNA reagent pcDNA3.1-mSnhg3 (Plasmid) This paper Plasmid construct to transfect and
express the Snhg3
Recombinant DNA reagent PGEM-Teasy-mSnhg3 (Plasmid) This paper Plasmid construct to cloning and
amplification the Snhg3
Recombinant DNA reagent pCMV3-Flag-mSND1 (Plasmid) Sino Biological Cat#MG52839-NF Plasmid construct to transfect and
express the SND1
Recombinant DNA reagent HA-Ub (Plasmid) This paper Plasmid construct to transfect and
express the HA-UB
Recombinant DNA reagent HA-Ub (K48O) (Plasmid) This paper Plasmid construct to transfect and
express the HA-UB (K48O)
Recombinant DNA reagent HA-Ub (K63O) (Plasmid) This paper Plasmid construct to transfect and
express the HA-UB (K63O)
Sequence-based reagent Snhg3-F This paper verexpressing and adenoviral plasmid construction ATATCGGGTACCGACTTCCGGGCGTTAC
Sequence-based reagent Snhg3-R This paper verexpressing and adenoviral plasmid construction ATGATCGAATTCAGACATTCAAATGCT
Sequence-based reagent Snhg3-HKO-F This paper sgRNA target sequences for knockout mice construction GTCGAATGGATGAGTTATGTGGG
Sequence-based reagent Snhg3-HKO-R This paper sgRNA target sequences for knockout mice construction GATATCCACGTTGGAATGTCTGG
Sequence-based reagent Snhg3-HKO (mouse)-F This paper Primers for genotyping the transgenic mice TCTGGAGTGTGAGATAGGAAACTG
Sequence-based reagent Snhg3-HKO (mouse)-R This paper Primers for genotyping the transgenic mice TCACTGAGGGTCTTAACTTTTCCAT
Sequence-based reagent Snhg3-HKI (mouse)-F1 This paper Primers for genotyping the transgenic mice CTCTACTGGAGGAGGACAAACTG
Sequence-based reagent Snhg3-HKI (mouse)-F2 This paper Primers for genotyping the transgenic mice GCATCTGACTTCTGGCTAATAAAG
Sequence-based reagent Snhg3-HKI (mouse)-R This paper Primers for genotyping the transgenic mice GTCTTCCACCTTTCTTCAGTTAGC
Sequence-based reagent Alb-cre (mouse)-F1 This paper Primers for genotyping the transgenic mice TGCAAACATCACATGCACAC
Sequence-based reagent Alb-cre (mouse)-F2 This paper Primers for genotyping the transgenic mice GAAGCAGAAGCTTAGGAAGATGG
Sequence-based reagent Alb-cre (mouse)-R This paper Primers for genotyping the transgenic mice TTGGCCCCTTACCATAACTG
Sequence-based reagent siSnd1#1F This paper siRNA target sequences for knockdown cells construction GAGAACAUGCGCAAUGACATT
Sequence-based reagent siSnd1#1R This paper siRNA target sequences for knockdown cells construction UGUCAUUGCGCAUGUUCUCTT
Sequence-based reagent siSnd1#2F This paper siRNA target sequences for knockdown cells construction GCAUGUCUUCUACAUCGACTT
Sequence-based reagent siSnd1#2R This paper siRNA target sequences for knockdown cells construction GUCGAUGUAGAAGACAUGCTT
Sequence-based reagent siSnd1#3F This paper siRNA target sequences for knockdown cells construction GUAUUGCCAGCUCAAGCCA
CAGAGUAUTT
Sequence-based reagent siSnd1#3R This paper siRNA target sequences for knockdown cells construction AUACUCUGUGGCUUGAGCU
GGCAAUACTT
Sequence-based reagent siControl-F This paper siRNA target sequences for knockdown cells construction UUCUCCGAACGUGUCACGUTT
Sequence-based reagent siControl-R This paper siRNA target sequences for knockdown cells construction ACGUGACACGUUCGGAGAATT
Sequence-based reagent promoter region (+101 ~+ 420bp)-F This paper Primers of Pparγ promoter segment for ChIP-qPCR assay TATTGGGTCGCGCGCAGCC
Sequence-based reagent promoter region (+101 ~+ 420bp)-R This paper Primers of Pparγ promoter segment for ChIP-qPCR assay ACACAGTCCTGTCAGAACG
Sequence-based reagent Mouse β-Actin-F This paper Primers for qPCR CCAGCCTTCCTTCTTGGGTAT
Sequence-based reagent Mouse β-Actin-R This paper Primers for qPCR TGCTGGAAGGTGGACAGTGAG
Sequence-based reagent Mouse Gapdh-F This paper Primers for qPCR GGAGAGTGTTTCCTCGTCCC
Sequence-based reagent Mouse Gapdh-R This paper Primers for qPCR ATGAAGGGGTCGTTGATGGC
Sequence-based reagent Mouse Xist-F This paper Primers for qPCR AGACTACAGGATGAATTTGGAGTC
Sequence-based reagent Mouse Xist-R This paper Primers for qPCR ATTGTTTGTCCCTTTGGGCTC
Sequence-based reagent Mouse Neat1-F This paper Primers for qPCR AGGAGTTAGTGACAAGGAGG
Sequence-based reagent Mouse Neat1-R This paper Primers for qPCR TGCCTTCCACACGTCCACTG
Sequence-based reagent Mouse Snhg3-F This paper Primers for qPCR CTCTCTAGGCGTCGCTCTCT
Sequence-based reagent Mouse Snhg3-R This paper Primers for qPCR CTTCTAATGGCCGAGGCTGT
Sequence-based reagent Mouse Snd1-F This paper Primers for qPCR CACCCTGACACTTCCAGTCC
Sequence-based reagent Mouse Snd1-R This paper Primers for qPCR ACAATTATGGCGCACCCAGA
Sequence-based reagent Mouse Pparγ-F This paper Primers for qPCR TCAGCTCTGTGGACCTCTCC
Sequence-based reagent Mouse Pparγ-R This paper Primers for qPCR ACCCCTTGCATCCTTCACAAG
Sequence-based reagent Mouse Cd36-F This paper Primers for qPCR GGAGCAACTGGTGGATGGTT
Sequence-based reagent Mouse Cd36-R This paper Primers for qPCR CTACGTGGCCCGGTTCTAAT
Sequence-based reagent Mouse Cidea-F This paper Primers for qPCR AGGCCGTGTTAAGGAATCTG
Sequence-based reagent Mouse Cidea-R This paper Primers for qPCR AACCAGCCTTTGGTGCTAGG
Sequence-based reagent Mouse Cidec-F This paper Primers for qPCR GTGTCCACTTGTGCCGTCTT
Sequence-based reagent Mouse Cidec-R This paper Primers for qPCR CTCGCTTGGTTGTCTTGATT
Sequence-based reagent Mouse Scd1-F This paper Primers for qPCR AGCTCTACACCTGCCTCTTCG
Sequence-based reagent Mouse Scd1-R This paper Primers for qPCR AGCCGTGCCTTGTAAGTTCTG
Sequence-based reagent Mouse Scd2-F This paper Primers for qPCR TACGGATATCGCCCCTACGA
Sequence-based reagent Mouse Scd2-R This paper Primers for qPCR GGAACTGCAAGACCCCACAC
Sequence-based reagent Mouse Col1a1-F This paper Primers for qPCR TTCAGCTTTGTGGACCTCCG
Sequence-based reagent Mouse Col1a1-R This paper Primers for qPCR GGACCCTTAGGCCATTGTGT
Sequence-based reagent Mouse Il-1β-F This paper Primers for qPCR ACAACTGCACTACAGGCTCC
Sequence-based reagent Mouse Il-1β-R This paper Primers for qPCR TGGGTGTGCCGTCTTTCATT
Sequence-based reagent Mouse Tnf-α-F This paper Primers for qPCR CGTCAGCCGATTTGCTATCT
Sequence-based reagent Mouse Tnf-α-R This paper Primers for qPCR CGGACTCCGCAAAGTCTAAG
Sequence-based reagent Mouse Tgf-β1-F This paper Primers for qPCR CCTCGAGACAGGCCATTTGT
Sequence-based reagent Mouse Tgf-β1-R This paper Primers for qPCR AAGGCCAGCTGACTGCTTT
Sequence-based reagent Mouse Il-6-F This paper Primers for qPCR AGTTGCCTTCTTGGGACTGA
Sequence-based reagent Mouse Il-6-R This paper Primers for qPCR TCCACGATTTCCCAGAGAAC
Sequence-based reagent Mouse SnoRNA U17-F This paper Primers for qPCR GTCCCTTTCCACAACGTTG
Sequence-based reagent Mouse SnoRNA U17-R This paper Primers for qPCR TTTCCTGCATGGTTTGTCTCC
Commercial assay or kit BCA protein assay kit LABLEAD Cat#B5000
Commercial assay or kit Lipofectamine 3000 Transfection Kit Invitrogen Cat#L3000-015
Commercial assay or kit Seamless Assembly Cloning Kit Abclonal Cat#RM20523
Commercial assay or kit High-Capacity cDNA Reverse Transcription Kit Applied Biosystems Cat#4368813
Commercial assay or kit TIANprep Mini Plasmid Kit TIANGEN Cat#DP103-03
Commercial assay or kit Endofree Maxi Plasmid Kit TIANGEN Cat#DP117
Commercial assay or kit HiPure Gel Pure DNA Mini Kit Magen Cat#D2111-02
Commercial assay or kit Equalbit 1x dsDNA HS Assay Kit Vazyme Cat#EQ121-01
Commercial assay or kit Hyperactive Universal CUT&Tag Assay Kit for Illumina Vazyme Cat# TD903-01
Commercial assay or kit TruePrep Index Kit V2 for Illumina Vazyme Cat#TD202
Commercial assay or kit Sonication ChIP Kit Abclonal Cat#RK20258
Commercial assay or kit RNA Immunoprecipitation(RIP) Kit BersinBio Cat#Bes5101
Commercial assay or kit High Fatty Sample Total Cholesterol (TC) Content Assay Kit APPLYGEN Cat#E1026-105
Commercial assay or kit High Fatty Sample Triglyceride(TG) Content Assay Kit APPLYGEN Cat#E1025-105
Commercial assay or kit Mouse Insulin ELISA Kit JINGMEI BIOTECHNOLOGY JM-02862M1
Chemical compound, drug Complete Tablets EDTA-free, EASYpack Roche Cat#4693132001
Chemical compound, drug PMSF Beyotime Biotechnology Cat#ST506 (1mM)
Chemical compound, drug Palmitic acid (PA) Sigma-Aldrich Cat#P5585 (1mM)
Chemical compound, drug BSA (Fatty Acid & IgG Free, BioPremium) Beyotime Biotechnology Cat#ST025
Chemical compound, drug Trizol Invitrogen Cat#15596018
Chemical compound, drug Insulin Sigma-Aldrich Cat#I-5500
Chemical compound, drug MG132 AbMole Cat#M1902 (10μM)
Chemical compound, drug Direct PCR Lysis Reagent (Tail) Viagen Biotech Cat#102T
Chemical compound, drug Collagenase II Sigma-Aldrich Cat#C6885-1G (>100CDU/mL)
Chemical compound, drug Oil Red O Sigma-Aldrich Cat#O0625
Chemical compound, drug Biotin RNA Labelling Mix (Biotin-U) Roche Cat#11685597910
Chemical compound, drug Yeast tRNA Invitrogen Cat#15401–011 (100μg/mL)
Chemical compound, drug Ribonucleoside Vanadyl Complexes (RVC) Beyotime Biotechnology Cat#R0107 (400μM)
Chemical compound, drug Recombinant RNase Inhibitor (RRI) Takara Cat#2313A (100U/mL)
Chemical compound, drug CA-630 (NP40) Sigma-Aldrich Cat#I3021 (0.5%)
Chemical compound, drug PPARγ antagonist (T0070907) AbMole Cat#M3044 Primary hepatocytes were treated with T0070907 (15µM)
mice injected intraperitoneally with T0070907 (1mg/kg)
for 5days per week for 2months
Software, algorithm SPSS statistics v17.0 IBM Corporation http://www.spss.com.hk/software/statistics/
Software, algorithm ImageJ ImageJ https://imagej.nih.gov/ij/
Software, algorithm GraphPad Prism 8 GraphPad Software https://www.graphpad.com/
Other Mouse high fat diet Research Diet Cat#D12492 Contain 60% fat for inducing obesity mice
Other Disposable Iv indwelling needle BD Cat#381312 For mouse liver perfusion vector

Funding Statement

The funders had no role in study design, data collection and interpretation, or the decision to submit the work for publication.

Contributor Information

Meixia Li, Email: limeixia@ibp.ac.cn.

Aijun Qiao, Email: qiaoaijun@simm.ac.cn.

Xiaojun Liu, Email: xiaojunliu@ibms.pumc.edu.cn.

Peter Tontonoz, University of California, Los Angeles, United States.

David E James, University of Sydney, Australia.

Funding Information

This paper was supported by the following grants:

  • Chinese Academy of Medical Sciences Innovation Fund for Medical Sciences CIFMS2021-I2M-1-016 to Xiaojun Liu.

  • Beijing Natural Science Foundation 7242094 to Xiaojun Liu.

  • National Key R&D Program of China 2022YFC2504002 to Li Yan.

  • National Key R&D Program of China 2022YFC2504003 to Xiaojun Liu.

  • the National Natural Science Foundation of China 82270925 to Aijun Qiao.

  • High-level New R&D Institute of Department of Science and Technology of Guangdong Province 2019B090904008 to Aijun Qiao.

  • High-level Innovative Research Institute of Department of Science and Technology of Guangdong Province 2021B0909050003 to Aijun Qiao.

Additional information

Competing interests

No competing interests declared.

Author contributions

Data curation, Formal analysis, Investigation, Writing - original draft.

Investigation.

Investigation.

Investigation.

Investigation.

Investigation.

Investigation.

Investigation.

Investigation.

Investigation.

Investigation.

Writing – review and editing.

Formal analysis.

Formal analysis.

Investigation.

Investigation.

Methodology.

Resources, Writing – review and editing.

Resources, Funding acquisition, Writing – review and editing.

Resources, Writing – review and editing.

Supervision, Project administration, Writing – review and editing.

Supervision, Funding acquisition, Project administration, Writing – review and editing.

Supervision, Funding acquisition, Project administration, Writing – review and editing.

Ethics

All animal experiments were conducted under protocols approved by the Animal Research Committee of the Institute of Laboratory Animals, Institute of Basic Medical Sciences Chinese Academy of Medical Sciences & School of Basic Medicine Peking Union Medical College (ACUC-A01-2022-010).

Additional files

MDAR checklist

Data availability

The lncRNA-Seq data had been deposited to National Genomics Data Center, China National Center for Bioinformation (NGDC-CNCB) (https://ngdc.cncb.ac.cn/) with the dataset identifier CRA009822. The data of RNA pull-down for Snhg3, control or lacZ have been deposited to the iProX (https://www.iprox.cn/) with the dataset identifier IPX0005781000 (ProteomeXchange identifier: PXD039526). The data of RNA-seq have been deposited to the Sequence Read Archive (SRA) with the dataset identifier SRR22368163, SRR22368164, SRR22368165, SRR22368166, SRR22368167 and SRR22368168. The data of ATAC-seq and Cut&Tag have been deposited to National Genomics Data Center, China National Center for Bioinformation (NGDC-CNCB) (https://ngdc.cncb.ac.cn/) with the dataset identifier CRA009511 and CRA009582, respectively.

The following datasets were generated:

Xie X, Gao M, Wang H, Zhang M, Zhao W, Li C, Zhang W, Yang J, Zhang Y, Chen E, Guo Y, Guo Z, Ngowi EE, Wang X, Zhu Y, Wang Y, Li X, Yao H, Yan L, Fang F, Li M, Qiao A, Liu X. 2024. The lncRNA-seq of mice liver. Genome Sequence Archive. CRA009822

Xie X, Gao M, Wang H, Zhang M, Zhao W, Li C, Zhang W, Yang J, Zhang Y, Chen E, Guo Y, Guo Z, Ngowi EE, Wang X, Zhu Y, Wang Y, Li X, Yao H, Yan L, Fang F, Li M, Qiao A, Liu X. 2024. RNA-Pull down and MS for Snhg3. Integrated Proteome Resources. IPX0005781000

Xie X, Gao M, Wang H, Zhang M, Zhao W, Li C, Zhang W, Yang J, Zhang Y, Chen E, Guo Y, Guo Z, Ngowi EE, Wang X, Zhu Y, Wang Y, Li X, Yao H, Yan L, Fang F, Li M, Qiao A, Liu X. 2024. The ATAC-seq of diet induced obesity Snhg3-LKI mice liver. Genome Sequence Archive. CRA009511

Xie X, Gao M, Wang H, Zhang M, Zhao W, Li C, Zhang W, Yang J, Zhang Y, Chen E, Guo Y, Guo Z, Ngowi EE, Wang X, Zhu Y, Wang Y, Li X, Yao H, Yan L, Fang F, Li M, Qiao A, Liu X. 2024. The CUT&TAG-seq of Snhg3-LKI mice liver. Genome Sequence Archive. CRA009582

Xie X, Gao M, Wang H, Zhang M, Zhao W, Li C, Zhang W, Yang J, Zhang Y, Chen E, Guo Y, Guo Z, Ngowi EE, Wang X, Zhu Y, Wang Y, Li X, Yao H, Yan L, Fang F, Li M, Qiao A, Liu X. 2024. lncRNA_Snhg3 regulates hepatic lipid metabolism. NCBI Sequence Read Archive. SRR22368163

Xie X, Gao M, Wang H, Zhang M, Zhao W, Li C, Zhang W, Yang J, Zhang Y, Chen E, Guo Y, Guo Z, Ngowi EE, Wang X, Zhu Y, Wang Y, Li X, Yao H, Yan L, Fang F, Li M, Qiao A, Liu X. 2024. lncRNA_Snhg3 regulates hepatic lipid metabolism. NCBI Sequence Read Archive. SRR22368164

Xie X, Gao M, Wang H, Zhang M, Zhao W, Li C, Zhang W, Yang J, Zhang Y, Chen E, Guo Y, Guo Z, Ngowi EE, Wang X, Zhu Y, Wang Y, Li X, Yao H, Yan L, Fang F, Li M, Qiao A, Liu X. 2024. lncRNA_Snhg3 regulates hepatic lipid metabolism. NCBI Sequence Read Archive. SRR22368165

Xie X, Gao M, Wang H, Zhang M, Zhao W, Li C, Zhang W, Yang J, Zhang Y, Chen E, Guo Y, Guo Z, Ngowi EE, Wang X, Zhu Y, Wang Y, Li X, Yao H, Yan L, Fang F, Li M, Qiao A, Liu X. 2024. lncRNA_Snhg3 regulates hepatic lipid metabolism. NCBI Sequence Read Archive. SRR22368166

Xie X, Gao M, Wang H, Zhang M, Zhao W, Li C, Zhang W, Yang J, Zhang Y, Chen E, Guo Y, Guo Z, Ngowi EE, Wang X, Zhu Y, Wang Y, Li X, Yao H, Yan L, Fang F, Li M, Qiao A, Liu X. 2024. lncRNA_Snhg3 regulates hepatic lipid metabolism. NCBI Sequence Read Archive. SRR22368167

Xie X, Gao M, Wang H, Zhang M, Zhao W, Li C, Zhang W, Yang J, Zhang Y, Chen E, Guo Y, Guo Z, Ngowi EE, Wang X, Zhu Y, Wang Y, Li X, Yao H, Yan L, Fang F, Li M, Qiao A, Liu X. 2024. lncRNA_Snhg3 regulates hepatic lipid metabolism. NCBI Sequence Read Archive. SRR22368168

Xie X, Gao M, Wang H, Zhang M, Zhao W, Li C, Zhang W, Yang J, Zhang Y, Chen E, Guo Y, Guo Z, Ngowi EE, Wang X, Zhu Y, Wang Y, Li X, Yao H, Yan L, Fang F, Li M, Qiao A, Liu X. 2024. RNA-Pull down and MS for Snhg3. ProteomeXchange. PXD039526

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eLife assessment

Peter Tontonoz 1

This study provides useful evidence substantiating a role for long noncoding RNAs in liver metabolism and organismal physiology. Using murine knockout and knock-in models, the authors invoke a previously unidentified role for the lncRNA Snhg3 in fatty liver. The revised manuscript has improved and most studies are backed by solid evidence but the study was found to be incomplete and will require future studies to substantiate some of the claims.

Reviewer #1 (Public Review):

Anonymous

Summary:

In this manuscript the authors investigate the contributions of the long noncoding RNA snhg3 in liver metabolism and MAFLD. The authors conclude that liver-specific loss or overexpression of Snhg3 impacts hepatic lipid content and obesity through epigenetic mechanisms. More specifically, the authors invoke that nuclear activity of Snhg3 aggravates hepatic steatosis by altering the balance of activating and repressive chromatin marks at the Pparg gene locus. This regulatory circuit is dependent on a transcriptional regulator SNG1.

Strengths:

The authors developed a tissue specific lncRNA knockout and KI models. This effort is certainly appreciated as few lncRNA knockouts have been generated in the context of metabolism. Furthermore, lncRNA effects can be compensated in a whole organism or show subtle effects in acute versus chronic perturbation, rendering the focus on in vivo function important and highly relevant. In addition, Snhg3 was identified through a screening strategy and as a general rule the authors the authors attempt to follow unbiased approaches to decipher the mechanisms of Snhg3.

Reviewer #2 (Public Review):

Anonymous

Through RNA analysis, Xie et al found LncRNA Snhg3 was one of the most down-regulated Snhgs by high fat diet (HFD) in mouse liver. Consequently, the authors sought to examine the mechanism through which Snhg3 is involved in the progression of metabolic dysfunction-associated fatty liver diseases (MASLD) in HFD-induced obese (DIO) mice. Interestingly, liver-specific Sngh3 knockout reduced, while Sngh3 over-expression potentiated fatty liver in mice on a HFD. Using the RNA pull-down approach, the authors identified SND1 as a potential Sngh3 interacting protein. SND1 is a component of the RNA-induced silencing complex (RISC). The authors found that Sngh3 increased SND1 ubiquitination to enhance SND1 protein stability, which then reduced the level of repressive chromatin H3K27me3 on PPARg promoter. The upregulation of PPARg, a lipogenic transcription factor, thus contributed to hepatic fat accumulation.

The authors propose a signaling cascade that explains how LncRNA sngh3 may promote hepatic steatosis. Multiple molecular approaches have been employed to identify molecular targets of the proposed mechanism, which is a strength of the study.

eLife. 2024 Oct 22;13:RP96988. doi: 10.7554/eLife.96988.4.sa3

Author response

Xianghong Xie 1, Mingyue Gao 2, Wei Zhao 3, Chunmei Li 4, Weihong Zhang 5, Jiahui Yang 6, Yinliang Zhang 7, Enhui Chen 8, Yanfang Guo 9, Zeyu Guo 10, Minglong Zhang 11, Ebenezeri Erasto Ngowi 12, Heping Wang 13, Xiaoman Wang 14, Yinghan Zhu 15, Yiting Wang 16, Xiaolu Li 17, Hong Yao 18, Li Yan 19, Fude Fang 20, Meixia Li 21, Aijun Qiao 22, Xiaojun Liu 23

The following is the authors’ response to the previous reviews.

Public Reviews:

Reviewer #1 (Public Review):

Summary:

In this manuscript the authors investigate the contributions of the long noncoding RNA snhg3 in liver metabolism and MAFLD. The authors conclude that liver-specific loss or overexpression of Snhg3 impacts hepatic lipid content and obesity through epigenetic mechanisms. More specifically, the authors invoke that nuclear activity of Snhg3 aggravates hepatic steatosis by altering the balance of activating and repressive chromatin marks at the Pparg gene locus. This regulatory circuit is dependent on a transcriptional regulator SNG1.

Strengths:

The authors developed a tissue specific lncRNA knockout and KI models. This effort is certainly appreciated as few lncRNA knockouts have been generated in the context of metabolism. Furthermore, lncRNA effects can be compensated in a whole organism or show subtle effects in acute versus chronic perturbation, rendering the focus on in vivo function important and highly relevant. In addition, Snhg3 was identified through a screening strategy and as a general rule the authors the authors attempt to follow unbiased approaches to decipher the mechanisms of Snhg3.

Weaknesses:

Despite efforts at generating a liver-specific knockout, the phenotypic characterization is not focused on the key readouts. Notably missing are rigorous lipid flux studies and targeted gene expression/protein measurement that would underpin why loss of Snhg3 protects from lipid accumulation. Along those lines, claims linking the Snhg3 to MAFLD would be better supported with careful interrogation of markers of fibrosis and advanced liver disease. In other areas, significance is limited since the presented data is either not clear or rigorous enough. Finally, there is an important conceptual limitation to the work since PPARG is not established to play a major role in the liver.

We thank the reviewer for the nice comment. As the reviewer comment, the manuscript still exists some shortcomings, we added partial shortcomings in the section of Discussion, please check them in the third paragraph on p17 and the first paragraph on p18.

We agree the reviewer comment, there are still conflicting conclusions about the role of PPARγ in MASLD. We had discussed it in the section of Discussion, please check them in the first paragraph on p13.

Reviewer #2 (Public Review):

Through RNA analysis, Xie et al found LncRNA Snhg3 was one of the most down-regulated Snhgs by high fat diet (HFD) in mouse liver. Consequently, the authors sought to examine the mechanism through which Snhg3 is involved in the progression of metabolic dysfunction-associated fatty liver diseases (MASLD) in HFD-induced obese (DIO) mice. Interestingly, liver-specific Sngh3 knockout reduced, while Sngh3 over-expression potentiated fatty liver in mice on a HFD. Using the RNA pull-down approach, the authors identified SND1 as a potential Sngh3 interacting protein. SND1 is a component of the RNA-induced silencing complex (RISC). The authors found that Sngh3 increased SND1 ubiquitination to enhance SND1 protein stability, which then reduced the level of repressive chromatin H3K27me3 on PPARg promoter. The upregulation of PPARg, a lipogenic transcription factor, thus contributed to hepatic fat accumulation.

The authors propose a signaling cascade that explains how LncRNA sngh3 may promote hepatic steatosis. Multiple molecular approaches have been employed to identify molecular targets of the proposed mechanism, which is a strength of the study. There are, however, several potential issues to consider before jumping to the conclusion.

(1) First of all, it's important to ensure the robustness and rigor of each study. The manuscript was not carefully put together. The image qualities for several figures were poor, making it difficult for the readers to evaluate the results with confidence. The biological replicates and numbers of experimental repeats for cell-based assays were not described. When possible, the entire immunoblot imaging used for quantification should be presented (rather than showing n=1 representative). There were multiple mis-labels in figure panels or figure legends (e.g., Fig. 2I, Fig. 2K and Fig. 3K). The b-actin immunoblot image was reused in Fig. 4J, Fig. 5G and Fig. 7B with different exposure times. These might be from the same cohort of mice. If the immunoblots were run at different times, the loading control should be included on the same blot as well.

We thank the reviewer for the detailed comment. We have provided the clear figures in revised manuscript, please check them.

The biological replicates and numbers of experimental repeats for cell-based assays had been updated and please check them in the manuscript.

The entire immunoblot imaging used for quantification had been provided in the primary data. Please check them.

The original Figure 2I, Figure 2K, Figure 3K have been revised and replaced with new Figure 2F, 2H, 3H, and their corresponding figure legends has also been corrected in revised manuscript.

The protein levels of CD36, PPARγ and β-ACTIN were examined at the same time and we had revised the manuscript, please check them in revised Figure 7B and C.

(2) The authors can do a better job in explaining the logic for how they came up with the potential function of each component of the signaling cascade. Sngh3 is down-regulated by HFD. However, the evidence presented indicates its involvement in promoting steatosis. In Fig. 1C, one would expect PPARg expression to be up-regulated (when Sngh3 was down-regulated). If so, the physiological observation conflicts with the proposed mechanism. In addition, SND1 is known to regulate RNA/miRNA processing. How do the authors rule out this potential mechanism? How about the hosting snoRNA, Snord17? Does it involve in the progression of NASLD?

We thank the reviewer for the detailed comment. In this study, although the expression of Snhg3 was decreased in DIO mice, Snhg3 deficiency decreased the expression of hepatic PPARγ and alleviated hepatic steatosis in DIO mice, and Snhg3 overexpression induced the opposite effect, which led us to speculate that the downregulation of Snhg3 in DIO mice might be a stress protective reaction to high nutritional state, but the specific details need to be clarified. This is probably similar to FGF21 and GDF15, whose endogenous expression and circulating levels are elevated in obese humans and mice despite their beneficial effects on obesity and related metabolic complications (Keipert and Ost, 2021). We had added the content in the Discussion section, please check it in the second paragraph on p12.

SND1 has multiple roles through associating with different types of RNA molecules, including mRNA, miRNA, circRNA, dsRNA and lncRNA. We agree with the reviewer good suggestion, the potential mechanism of SND1/lncRNA-Snhg3 involved in hepatic lipid metabolism needs to be further investigated. We also discussed the limitation in the manuscript and please refer the section of Discussion in the third paragraph on p17.

Snhg3 serves as host gene for producing intronic U17 snoRNAs, the H/ACA snoRNA. A previous study found that cholesterol trafficking phenotype was not due to reduced Snhg3 expression, but rather to haploinsufficiency of U17 snoRNA (Jinn et al., 2015). Additionally, knockdown of U17 snoRNA in vivo protected against hepatic steatosis and lipid-induced oxidative stress and inflammation (Sletten et al., 2021). In this study, the expression of U17 snoRNA decreased in the liver of DIO Snhg3-HKO mice and remain unchanged in the liver of DIO Snhg3-HKI mice, but overexpression of U17 snoRNA had no effect on the expression of SND1 and PPARγ (figure supplement 5A-C), indicating that Sngh3 induced hepatic steatosis was independent on U17 snoRNA. We had discussed it in revised manuscript, please refer to p15 of the Discussion section.

References

JINN, S., BRANDIS, K. A., REN, A., CHACKO, A., DUDLEY-RUCKER, N., GALE, S. E., SIDHU, R., FUJIWARA, H., JIANG, H., OLSEN, B. N., SCHAFFER, J. E. & ORY, D. S. 2015. snoRNA U17 regulates cellular cholesterol trafficking. Cell Metab, 21, 855-67. DIO:10.1016/j.cmet.2015.04.010, PMID:25980348

KEIPERT, S. & OST, M. 2021. Stress-induced FGF21 and GDF15 in obesity and obesity resistance. Trends Endocrinol Metab, 32, 904-915. DIO:10.1016/j.tem.2021.08.008, PMID:34526227

SLETTEN, A. C., DAVIDSON, J. W., YAGABASAN, B., MOORES, S., SCHWAIGER-HABER, M., FUJIWARA, H., GALE, S., JIANG, X., SIDHU, R., GELMAN, S. J., ZHAO, S., PATTI, G. J., ORY, D. S. & SCHAFFER, J. E. 2021. Loss of SNORA73 reprograms cellular metabolism and protects against steatohepatitis. Nat Commun, 12, 5214. DIO:10.1038/s41467-021-25457-y, PMID:34471131

(3) The role of PPARg in fatty liver diseases might be a rodent-specific phenomenon. PPARg agonist treatment in humans may actually reduce ectopic fat deposition by increasing fat storage in adipose tissues. The relevance of the finding to human diseases should be discussed.

We thank the reviewer for the detailed comment. We agree the reviewer comment, there are still conflicting conclusions about the role of PPARγ in MASLD. We had discussed it in the section of Discussion, please check them in the first paragraph on p13.

Recommendations for the authors:

Reviewer #1 (Recommendations For The Authors):

I do not have further recommendations beyond what I mentioned in the original review. The authors have not adequately addressed all the issues but the manuscript has improved and the overall strength of evidence is now solid from incomplete.

We appreciate positive feedback from the reviewer. While we acknowledge that the updated manuscript has significantly improved, we recognize that it remains incomplete and additional details regarding Snhg3 will be warranted in our future studies. Moreover, we have discussed those potential weakness in the section of Discussion (please refer in the third paragraph on p17 and the first paragraph on p18).

Reviewer #2 (Recommendations For The Authors):

The authors have provided explanations and some new data to clarify the comments from the first submission. They have also included the original immunoblots for all the experimental repeats. The CHX protein stability results shown in Fig. 5J were not consistent between experiments, perhaps because the difference was subtle. The results on PPARg protein expression were not clearcut. The inclusion of a PPARg knockdown control would be helpful to validate the specificity of the antibody. Of note, the immunoblots used for Fig. 5I (PA treated) repeats 2, 4 and 1 were identical to those of Fig. 7F repeats 3, 1 and 5. The authors should provide an explanation for the potential issue.

We thank the further comments and suggestions from the reviewer. We agree with the reviewer comment about Snhg3-mediated SND1 protein stability. In this study, Snhg3 promoted the protein, not mRNA, level of SND1, but Snhg3 subtly increased the SND1 protein stability. We revised the description in the manuscript, “Meanwhile, Snhg3 regulated the protein, not mRNA, expression of SND1 in vivo and in vitro by mildly promoting the stability of SND1 protein (Figures 5G-I).” This revision can be found in the second paragraph on p9. While our findings indicated that Snhg3 can influence SND1 expression at the protein level, we acknowledge the possibility of additional mechanisms contributing to this complex regulatory network. Therefore, further investigation is necessary to clarify whether Snhg3 regulates SND1 protein expression through other potential mechanisms. In light of this, we have added it in the Discussion section. Please refer to the second paragraph on p16.

In this study, the protein level of PPARγ (molecular weight ~57 kDa) was detected using anti-PPARγ antibody (Abclonal, Cat. A11183), which has been used to determine PPARγ protein expression in 13 published papers as showed in the ABclonal Technology Co., Ltd. (https://abclonal.com.cn/catalog/A11183). And the specificity of this antibody has been validated in Zhang’s study by PPARγ knockdown (Zhang et al., 2019). In our study, hepatic PPARγ protein sometimes showed two bands (~ 57kDa and > 75kDa) using this antibody. It is well established that the PPARγ gene encodes two protein isoforms (PPARγ1, a 477 amino acid protein, and PPARγ2, a 505 amino acid protein) via differential promoter usage and alternative splicing (Gene: Pparg (ENSMUSG00000000440) - Transcript comparison - Mus_musculus - Ensembl genome browser 112) (Hernandez-Quiles et al., 2021). The molecular weight difference between PPARγ1 and PPARγ2 is about 3kd. Therefore, we consider that the band shown larger than 75kd in our study is likely nonspecific. In line with the reviewer’s suggestion, the antibody’s specificity could be further validated by knockdown or knockout of PPARγ in the future.

We thank the reviewer for the detailed comment. In this study, we tested the effect of Snhg3 overexpression on SND1 protein level and the effect of Snhg3 or Snd1 overexpression on PPARγ protein level in Hepa1-6 cells by transfecting with Snhg3, SND1 and the control, respectively. The results indicated that overexpression of Snhg3 promoted the protein levels of SND1 and PPARγ, and overexpression of SND1 also induced the protein level of PPARγ. Considering scholarly and professional thinking and writing, we firstly showed that overexpression of Snhg3 promoted the protein level of SND1 in Figure 5I, followed by demonstrating that the overexpression of Snhg3 or SND1 elicited PPARγ expression in Figures 7F. However, we acknowledge that this order of presentation may cause confusion. In fact, these experiments were repeatedly performed by multiple times, and we have provided the new original western blot data and analysis for Figure 5I (PA treatment) for further clarification. Please check them.

References

HERNANDEZ-QUILES, M., BROEKEMA, M. F. & KALKHOVEN, E. 2021. PPARgamma in Metabolism, Immunity, and Cancer: Unified and Diverse Mechanisms of Action. Front Endocrinol (Lausanne), 12, 624112. DIO:10.3389/fendo.2021.624112, PMID:33716977

ZHANG, Z., ZHAO, G., LIU, L., HE, J., DARWAZEH, R., LIU, H., CHEN, H., ZHOU, C., GUO, Z. & SUN, X. 2019. Bexarotene Exerts Protective Effects Through Modulation of the Cerebral Vascular Smooth Muscle Cell Phenotypic Transformation by Regulating PPARgamma/FLAP/LTB(4) After Subarachnoid Hemorrhage in Rats. Cell Transplant, 28, 1161-1172. DIO:10.1177/0963689719842161, PMID:31010302

Associated Data

    This section collects any data citations, data availability statements, or supplementary materials included in this article.

    Data Citations

    1. Xie X, Gao M, Wang H, Zhang M, Zhao W, Li C, Zhang W, Yang J, Zhang Y, Chen E, Guo Y, Guo Z, Ngowi EE, Wang X, Zhu Y, Wang Y, Li X, Yao H, Yan L, Fang F, Li M, Qiao A, Liu X. 2024. The lncRNA-seq of mice liver. Genome Sequence Archive. CRA009822
    2. Xie X, Gao M, Wang H, Zhang M, Zhao W, Li C, Zhang W, Yang J, Zhang Y, Chen E, Guo Y, Guo Z, Ngowi EE, Wang X, Zhu Y, Wang Y, Li X, Yao H, Yan L, Fang F, Li M, Qiao A, Liu X. 2024. RNA-Pull down and MS for Snhg3. Integrated Proteome Resources. IPX0005781000
    3. Xie X, Gao M, Wang H, Zhang M, Zhao W, Li C, Zhang W, Yang J, Zhang Y, Chen E, Guo Y, Guo Z, Ngowi EE, Wang X, Zhu Y, Wang Y, Li X, Yao H, Yan L, Fang F, Li M, Qiao A, Liu X. 2024. The ATAC-seq of diet induced obesity Snhg3-LKI mice liver. Genome Sequence Archive. CRA009511
    4. Xie X, Gao M, Wang H, Zhang M, Zhao W, Li C, Zhang W, Yang J, Zhang Y, Chen E, Guo Y, Guo Z, Ngowi EE, Wang X, Zhu Y, Wang Y, Li X, Yao H, Yan L, Fang F, Li M, Qiao A, Liu X. 2024. The CUT&TAG-seq of Snhg3-LKI mice liver. Genome Sequence Archive. CRA009582
    5. Xie X, Gao M, Wang H, Zhang M, Zhao W, Li C, Zhang W, Yang J, Zhang Y, Chen E, Guo Y, Guo Z, Ngowi EE, Wang X, Zhu Y, Wang Y, Li X, Yao H, Yan L, Fang F, Li M, Qiao A, Liu X. 2024. lncRNA_Snhg3 regulates hepatic lipid metabolism. NCBI Sequence Read Archive. SRR22368163
    6. Xie X, Gao M, Wang H, Zhang M, Zhao W, Li C, Zhang W, Yang J, Zhang Y, Chen E, Guo Y, Guo Z, Ngowi EE, Wang X, Zhu Y, Wang Y, Li X, Yao H, Yan L, Fang F, Li M, Qiao A, Liu X. 2024. lncRNA_Snhg3 regulates hepatic lipid metabolism. NCBI Sequence Read Archive. SRR22368164
    7. Xie X, Gao M, Wang H, Zhang M, Zhao W, Li C, Zhang W, Yang J, Zhang Y, Chen E, Guo Y, Guo Z, Ngowi EE, Wang X, Zhu Y, Wang Y, Li X, Yao H, Yan L, Fang F, Li M, Qiao A, Liu X. 2024. lncRNA_Snhg3 regulates hepatic lipid metabolism. NCBI Sequence Read Archive. SRR22368165
    8. Xie X, Gao M, Wang H, Zhang M, Zhao W, Li C, Zhang W, Yang J, Zhang Y, Chen E, Guo Y, Guo Z, Ngowi EE, Wang X, Zhu Y, Wang Y, Li X, Yao H, Yan L, Fang F, Li M, Qiao A, Liu X. 2024. lncRNA_Snhg3 regulates hepatic lipid metabolism. NCBI Sequence Read Archive. SRR22368166
    9. Xie X, Gao M, Wang H, Zhang M, Zhao W, Li C, Zhang W, Yang J, Zhang Y, Chen E, Guo Y, Guo Z, Ngowi EE, Wang X, Zhu Y, Wang Y, Li X, Yao H, Yan L, Fang F, Li M, Qiao A, Liu X. 2024. lncRNA_Snhg3 regulates hepatic lipid metabolism. NCBI Sequence Read Archive. SRR22368167
    10. Xie X, Gao M, Wang H, Zhang M, Zhao W, Li C, Zhang W, Yang J, Zhang Y, Chen E, Guo Y, Guo Z, Ngowi EE, Wang X, Zhu Y, Wang Y, Li X, Yao H, Yan L, Fang F, Li M, Qiao A, Liu X. 2024. lncRNA_Snhg3 regulates hepatic lipid metabolism. NCBI Sequence Read Archive. SRR22368168
    11. Xie X, Gao M, Wang H, Zhang M, Zhao W, Li C, Zhang W, Yang J, Zhang Y, Chen E, Guo Y, Guo Z, Ngowi EE, Wang X, Zhu Y, Wang Y, Li X, Yao H, Yan L, Fang F, Li M, Qiao A, Liu X. 2024. RNA-Pull down and MS for Snhg3. ProteomeXchange. PXD039526

    Supplementary Materials

    Figure 1—source data 1. The lncRNAs expression profiles in the livers of high-fat diet-induced obesity mice and normal chow-fed mice were determined using RNA-Seq for Figure 1A.
    Figure 4—source data 1. The hepatic differentially expressed genes between DIO Snhg3-HKI and control WT mice were determined using RNA-Seq for Figure 4A.
    Figure 4—source data 2. The genome-wide chromatin accessibility in the liver of DIO Snhg3-HKI and WT mice was determined using ATAC-Seq, related to Figure 4D.
    Figure 4—source data 3. The genes were associated specifically with the differentially accessible regions in genome in the liver between DIO Snhg3-HKI and WT mice, related to Figure 4D.
    Figure 4—source data 4. The hepatic differentially expressed genes between DIO Snhg3-HKI and WT mice were correlated with open chromatin regions by integrated analyzing ATAC-Seq data with RNA-Seq data for Figure 4G.
    Figure 5—source data 1. Snhg3-bound proteins were identified in mouse primary hepatocytes by RNA-Pulldown-Mass spectrometry for Figure 5A.
    Figure 5—source data 2. Snhg3-bound proteins were predicted by bioinformatic method (RBPsuite) for Figure 5C.
    Figure 5—source data 3. PDF file containing original western blots for Figure 5E, indicating the relevant bands and treatments.
    Figure 5—source data 4. Original files for western blot analysis displayed in Figure 5E.
    Figure 5—source data 5. PDF file containing original western blots for Figure 5G, indicating the relevant bands and treatments.
    Figure 5—source data 6. Original files for western blot analysis displayed in Figure 5G.
    Figure 5—source data 7. PDF file containing original western blots for Figure 5I, indicating the relevant bands and treatments.
    Figure 5—source data 8. Original files for western blot analysis displayed in Figure 5I.
    Figure 5—source data 9. PDF file containing original western blots for Figure 5J, indicating the relevant bands and treatments.
    Figure 5—source data 10. Original files for western blot analysis displayed in Figure 5J.
    Figure 5—source data 11. PDF file containing original western blots for Figure 5K, indicating the relevant bands and treatments.
    Figure 5—source data 12. Original files for western blot analysis displayed in Figure 5K.
    Figure 5—source data 13. PDF file containing original western blots for Figure 5L, indicating the relevant bands and treatments.
    Figure 5—source data 14. Original files for western blot analysis displayed in Figure 5L.
    Figure 5—source data 15. PDF file containing original western blots for Figure 5M, indicating the relevant bands and treatments.
    Figure 5—source data 16. Original files for western blot analysis displayed in Figure 5M.
    Figure 5—source data 17. PDF file containing original western blots for Figure 5N, indicating the relevant bands and treatments.
    Figure 5—source data 18. Original files for western blot analysis displayed in Figure 5N.
    Figure 5—source data 19. PDF file containing original western blots for Figure 5O, indicating the relevant bands and treatments.
    Figure 5—source data 20. Original files for western blot analysis displayed in Figure 5O.
    Figure 6—source data 1. PDF file containing original western blots for Figure 6A, indicating the relevant bands and treatments.
    Figure 6—source data 2. Original files for western blot analysis displayed in Figure 6A.
    Figure 6—source data 3. PDF file containing original western blots for Figure 6B, indicating the relevant bands and treatments.
    Figure 6—source data 4. Original files for western blot analysis displayed in Figure 6B.
    Figure 6—source data 5. PDF file containing original western blots for Figure 6C, indicating the relevant bands and treatments.
    Figure 6—source data 6. Original files for western blot analysis displayed in Figure 6C.
    Figure 6—source data 7. PDF file containing original western blots for Figure 6D, indicating the relevant bands and treatments.
    Figure 6—source data 8. Original files for western blot analysis displayed in Figure 6D.
    Figure 6—source data 9. The H3K27me3 enrichment in the genome in the liver of DIO Snhg3-HKO mice were determined using the CUT&Tag-Seq, related to Figure 6E.
    Figure 7—source data 1. PDF file containing original western blots for Figure 7B, indicating the relevant bands and treatments.
    Figure 7—source data 2. Original files for western blot analysis displayed in Figure 7B.
    Figure 7—source data 3. PDF file containing original western blots for Figure 7C, indicating the relevant bands and treatments.
    Figure 7—source data 4. Original files for western blot analysis displayed in Figure 7C.
    Figure 7—source data 5. PDF file containing original western blots for Figure 7F, indicating the relevant bands and treatments.
    Figure 7—source data 6. Original files for western blot analysis displayed in Figure 7F.
    Figure 7—source data 7. PDF file containing original western blots for Figure 7G, indicating the relevant bands and treatments.
    Figure 7—source data 8. Original files for western blot analysis displayed in Figure 7G.
    Figure 7—figure supplement 1—source data 1. PDF file containing original western blots for Figure 7—figure supplement 1C, indicating the relevant bands and treatments.
    Figure 7—figure supplement 1—source data 2. Original files for western blot analysis displayed in Figure 7—figure supplement 1C.
    MDAR checklist

    Data Availability Statement

    The lncRNA-Seq data had been deposited to National Genomics Data Center, China National Center for Bioinformation (NGDC-CNCB) (https://ngdc.cncb.ac.cn/) with the dataset identifier CRA009822. The data of RNA pull-down for Snhg3, control or lacZ have been deposited to the iProX (https://www.iprox.cn/) with the dataset identifier IPX0005781000 (ProteomeXchange identifier: PXD039526). The data of RNA-seq have been deposited to the Sequence Read Archive (SRA) with the dataset identifier SRR22368163, SRR22368164, SRR22368165, SRR22368166, SRR22368167 and SRR22368168. The data of ATAC-seq and Cut&Tag have been deposited to National Genomics Data Center, China National Center for Bioinformation (NGDC-CNCB) (https://ngdc.cncb.ac.cn/) with the dataset identifier CRA009511 and CRA009582, respectively.

    The following datasets were generated:

    Xie X, Gao M, Wang H, Zhang M, Zhao W, Li C, Zhang W, Yang J, Zhang Y, Chen E, Guo Y, Guo Z, Ngowi EE, Wang X, Zhu Y, Wang Y, Li X, Yao H, Yan L, Fang F, Li M, Qiao A, Liu X. 2024. The lncRNA-seq of mice liver. Genome Sequence Archive. CRA009822

    Xie X, Gao M, Wang H, Zhang M, Zhao W, Li C, Zhang W, Yang J, Zhang Y, Chen E, Guo Y, Guo Z, Ngowi EE, Wang X, Zhu Y, Wang Y, Li X, Yao H, Yan L, Fang F, Li M, Qiao A, Liu X. 2024. RNA-Pull down and MS for Snhg3. Integrated Proteome Resources. IPX0005781000

    Xie X, Gao M, Wang H, Zhang M, Zhao W, Li C, Zhang W, Yang J, Zhang Y, Chen E, Guo Y, Guo Z, Ngowi EE, Wang X, Zhu Y, Wang Y, Li X, Yao H, Yan L, Fang F, Li M, Qiao A, Liu X. 2024. The ATAC-seq of diet induced obesity Snhg3-LKI mice liver. Genome Sequence Archive. CRA009511

    Xie X, Gao M, Wang H, Zhang M, Zhao W, Li C, Zhang W, Yang J, Zhang Y, Chen E, Guo Y, Guo Z, Ngowi EE, Wang X, Zhu Y, Wang Y, Li X, Yao H, Yan L, Fang F, Li M, Qiao A, Liu X. 2024. The CUT&TAG-seq of Snhg3-LKI mice liver. Genome Sequence Archive. CRA009582

    Xie X, Gao M, Wang H, Zhang M, Zhao W, Li C, Zhang W, Yang J, Zhang Y, Chen E, Guo Y, Guo Z, Ngowi EE, Wang X, Zhu Y, Wang Y, Li X, Yao H, Yan L, Fang F, Li M, Qiao A, Liu X. 2024. lncRNA_Snhg3 regulates hepatic lipid metabolism. NCBI Sequence Read Archive. SRR22368163

    Xie X, Gao M, Wang H, Zhang M, Zhao W, Li C, Zhang W, Yang J, Zhang Y, Chen E, Guo Y, Guo Z, Ngowi EE, Wang X, Zhu Y, Wang Y, Li X, Yao H, Yan L, Fang F, Li M, Qiao A, Liu X. 2024. lncRNA_Snhg3 regulates hepatic lipid metabolism. NCBI Sequence Read Archive. SRR22368164

    Xie X, Gao M, Wang H, Zhang M, Zhao W, Li C, Zhang W, Yang J, Zhang Y, Chen E, Guo Y, Guo Z, Ngowi EE, Wang X, Zhu Y, Wang Y, Li X, Yao H, Yan L, Fang F, Li M, Qiao A, Liu X. 2024. lncRNA_Snhg3 regulates hepatic lipid metabolism. NCBI Sequence Read Archive. SRR22368165

    Xie X, Gao M, Wang H, Zhang M, Zhao W, Li C, Zhang W, Yang J, Zhang Y, Chen E, Guo Y, Guo Z, Ngowi EE, Wang X, Zhu Y, Wang Y, Li X, Yao H, Yan L, Fang F, Li M, Qiao A, Liu X. 2024. lncRNA_Snhg3 regulates hepatic lipid metabolism. NCBI Sequence Read Archive. SRR22368166

    Xie X, Gao M, Wang H, Zhang M, Zhao W, Li C, Zhang W, Yang J, Zhang Y, Chen E, Guo Y, Guo Z, Ngowi EE, Wang X, Zhu Y, Wang Y, Li X, Yao H, Yan L, Fang F, Li M, Qiao A, Liu X. 2024. lncRNA_Snhg3 regulates hepatic lipid metabolism. NCBI Sequence Read Archive. SRR22368167

    Xie X, Gao M, Wang H, Zhang M, Zhao W, Li C, Zhang W, Yang J, Zhang Y, Chen E, Guo Y, Guo Z, Ngowi EE, Wang X, Zhu Y, Wang Y, Li X, Yao H, Yan L, Fang F, Li M, Qiao A, Liu X. 2024. lncRNA_Snhg3 regulates hepatic lipid metabolism. NCBI Sequence Read Archive. SRR22368168

    Xie X, Gao M, Wang H, Zhang M, Zhao W, Li C, Zhang W, Yang J, Zhang Y, Chen E, Guo Y, Guo Z, Ngowi EE, Wang X, Zhu Y, Wang Y, Li X, Yao H, Yan L, Fang F, Li M, Qiao A, Liu X. 2024. RNA-Pull down and MS for Snhg3. ProteomeXchange. PXD039526


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