Abstract
The clinical outcomes of pancreatic ductal adenocarcinoma (PDAC) remain dismal, with an estimated five-year survival rate less than 5%. Early detection and prognostic approaches, including robust biomarkers for PDAC are critical for improving patient survival. Our goal was to explore the biomarker potential of 5-hydroxymethylcytosines (5hmC), an emerging epigenetic marker with a distinct role in cancer pathobiology, yet under-investigated due largely to technical constraints, for PDAC. We used the TAB-Array assay, a state-of-the-art technology to directly profile 5hmC at single base resolution with the Illumina EPIC array (~850,000 cytosine modification sites) in 17 pairs of tumor/adjacent tissue samples from US patients collected at the University of Chicago Medical Center. The TAB-Array data were analyzed to explore the genomic distribution of 5hmC and evaluate whether 5hmC markers were differentially modified between tumors and adjacent tissues. We demonstrated distinctive distribution patterns of 5hmC in tissue samples from PDAC patients relative to gene regulatory elements (e.g., histone modification marks for enhancers), indicating their potential gene regulatory relevance. Substantial differences in 5hmC-modified CpG sites, involving those genes related to cancer pathobiology, were detected between tumors and adjacent tissues. The detected 5hmC-contaning marker genes also showed prognostic value for patient survival in the US patients with PDAC from the Cancer Genome Atlas Project. This study demonstrated the technical feasibility of the TAB-Array approach in cancer biomarker discovery and the biomarker potential of 5hmC for PDAC. Future studies using tissues and/or liquid biopsies may include 5hmC as potential epigenetic biomarker targets for PDAC.
Keywords: pancreatic ductal adenocarcinoma, epigenetics, biomarker, 5-hydroxymethylcytosine
1. Introduction
Pancreatic ductal adenocarcinoma (PDAC) ranks the fourth in the United States and eighth worldwide for cancer mortality, with an estimated five-year survival rate of only 5%, in part because it is usually detected when it is no longer surgically resectable [1]. Reliable early detection and prevention is the only viable option for increased chances of survival but is currently unavailable for PDAC [2]. Due to the low incidence of PDAC in the population, most positive screening tests are likely false positives. In addition, current cancer biomarkers available clinically for PDAC, such as carbohydrate antigen (CA) 19–9, do not show satisfactory sensitivity and specificity for clinical utility [3]. Therefore, it remains a grand challenge to identify more effective biomarker targets for early detection, diagnosis, prognosis, and precise management of this fatal disease.
Though the rapid advancement of high-throughput sequencing technologies has allowed the characterization of tumor-related mutations, the low mutation frequency and lack of information on tissue of origin hampers detection sensitivity and specificity based on mutations alone. Recent studies demonstrated aberrant cytosine modifications in tumors, suggesting potential applications of these epigenetic markers in cancer early detection and diagnosis [4,5]. In particular, 5-hydroxymethylcytosines (5hmC), which are epigenetic marks that can be generated by oxidation of the more common 5-methylcytosines (5mC) through the TET (ten-eleven translocation) family of enzymes, have emerged as a stable type of modified cytosines in the human genome, covering ~0.1–1% of all CpG dinucleotides, with a distinct gene regulatory role and genomic distribution from 5mC [6–8]. The global reduction of 5hmC has been observed in both solid tumors and hematological malignancies, indicating its implications in cancer pathobiology [9–13]. Given their prevalence in the human genome, gene regulation relevance, and biochemical stability, the 5hmC markers have been exploited to be a novel class of epigenetic biomarkers for cancer diagnosis and prognosis [10,12–15].
Despite the remarkable potential of 5hmC as cancer biomarkers, their uses in clinical samples have been limited due mainly to the lack of enabling technologies that can distinguish 5hmC from other modified cytosines. For example, although the Illumina Infinium array has become a widely used epigenomic profiling platform, its conventional bisulfite-conversion protocol cannot distinguish 5hmC from 5mC. In the current study, we used the TET-assisted bisulfite (TAB)-Array [16], a state-of-the-art technique that is integrated with the Illumina EPIC array (covering ~850,000 CpG modification sites to map and profile 5hmC modifications directly in a set of 17 paired tumor and adjacent tissue samples collected from US patients with primary PDAC [16,17]. This affordable yet high-throughput technique provided improved coverage of regulatory elements, thereby permitting more comprehensive detection of 5hmC-enriched regulatory elements [16]. Our aim was to demonstrate the technical feasibility of the TAB-Array in cancer biomarker discovery and the potential of 5hmC as novel epigenetic biomarkers for PDAC, thus laying the foundation for future development of clinically convenient assays for early detection of PDAC, for example using emerging technologies in liquid biopsies [13,18].
2. Results
2.1. Genomic distributions of 5hmC
Using the TAB-Array assay, we profiled 5hmC modification levels in 17 pairs of tumor and adjacent tissue samples. Consistent with previous epigenetic studies using the Infinium arrays [14,16], the detected 5mC in PDAC tissues showed a two-mode distribution with peaks at both lower and upper end of modification levels (<0.20 and >0.80 in terms of β-value). In contrast, the 5hmC modification sites showed a unimodal distribution enriched at the lower end of modification levels (Fig.1A). Notably, the 5hmC and 5mC levels were inversely correlated for the majority of the CpGs, while only ~ 20% of the CpGs demonstrated weak positive correlations (Fig.1B), indicating distinct roles of 5hmC from 5mC in tissue biology. Further separation of the modification sites into various genomic features showed enrichment of high 5mC modification levels within CpG islands (Fig.1C), in contrast to the enrichment of 5hmC observed in gene bodies, indicating distinct genomic distributions for these two types of cytosine modifications (Fig.1D).
2.2. PDAC-associated 5hmC Loci
We identified 1,118 differentially modified 5hmC loci among the 17 pairs of tumor and adjacent tissue samples with the Bonferroni-corrected p-value < 0.05 (Fig.2A, Supplemental Table 1). Examining the genomic distribution patterns of these PDAC-associated 5hmC loci suggested an over-representation in the genic regions, particularly gene bodies (Fig.2B). Enrichment analysis showed that the differentially modified 5hmC CpGs were more likely to reside in intronic regions while less likely to reside in promoter regions and exons. Based on the pancreas-derived data from the Roadmap Epigenomics Project [19], we further demonstrated that the detected PDAC-associated 5hmC loci were enriched with histone modification marks for enhancers and active gene expression regulation (Fig.2B). Specifically, we observed significant enrichment in enhancers (marked by H3K4me1), regions with active transcription (marked by H3K27ac), gene bodies (marked by H3K36me3), but depletion in promoters (marked by H3K4me3), regions with polycomb repression (H3K27me3), and formation of heterochromatin (H3K9me3) (Fig.2B).
2.3. Exploring Functional Relevance, Prognostic Value and Cancer Specificity
We searched the Kyoto Encyclopedia of Genes and Genomes (KEGG) database and Gene Ontology (GO) to explore functional relevance of the detected PDAC-associated 5hmC loci using the NIH/DAVID tool [20–22]. We found that those genes containing differentially modified 5hmC loci were enriched in several canonical pathways relevant to cancer pathobiology (Supplemental Table 2) (p-value < 0.01, gene count > 5), such as PI3K-Akt signaling pathway (e.g., FGF9, PDGFA, and TCL1B), Rap1 signaling pathway (e.g., MRAS, IGF1R, and ADCY9), and Ras signaling pathway (e.g., KSR2, EGF, and CALM2); as well as GO biological processes, such as positive regulation of GTPase activity (e.g., SMAP2, GIT2, and RSU1) and fatty acid biosynthetic process (e.g., PRKAG1,ELOVL7, and SCD5) (Fig.3A) [23–25]. Specifically, 1,048 out of 1,118 PDAC-associated 5hmC loci have lower 5hmC modification levels in tumor tissues and genes containing these differentially modified 5hmC loci were enriched in PI3K-Akt signaling pathway, focal adhesion, Rap1 signaling pathway. In contrast, genes co-localized with 5hmC loci that have higher modification levels in tumors were enriched in cholinergic synapse (GNAO1, GNG4, GNG7).
We further explored the potential prognostic value and pancreatic cancer specificity of those genes containing differentially modified 5hmC sites between PDAC tumors and adjacent tissues, utilizing the transcriptomic data of 176 PDAC patients from the Cancer Genome Atlas (TCGA), as maintained by the Human Pathology Atlas (HPA) database [26,27]. Based on the five-year survival data, in total, 50 differentially modified 5hmC loci were located in those genes associated with patient survival (log-rank p-value< 0.001) in the HPA database (Supplemental Table 1). A permutation test (N = 100,000) on the 822,760 CpGs sites interrogated by the EPIC array as background suggested that CpG sites with lower 5hmC modification levels in tumor samples were enriched in genes with “unfavorable” prognostic values for the TCGA PDAC samples (empirical p-value = 0.012) (Fig.3B). Based on the pan-cancer analysis from the HPA database, 194 genes were reported to have elevated mRNA levels as compared to those in the other 16 cancer tissues [27]. A similar permutation test (N = 100,000) on the 822,760 CpGs sites suggested these PDAC-associated 5hmC loci were also enriched with these expression signatures (the abovementioned 194 genes) of the TCGA PDAC samples (empirical p-value = 0.004) (Fig.3C).
3. Discussion
Despite great efforts to improve its clinical outcomes, PDAC is expected to become the second leading cause of cancer death in the United States by 2030 [1]. To date, clinically available biomarkers, such as CA19–9, though useful, do not demonstrate satisfactory sensitivity and specificity yet. Effective biomarkers, therefore, are urgently needed for PDAC early detection, diagnosis, prognosis, and disease surveillance to improve survival. Epigenetic regulators including cytosine modifications are particularly promising biomarkers for early detection of PDAC, considering their tissue specificity, quantitative nature, availability of high-throughput technologies. In the current report, using the TAB-Array, a recently developed innovative technique, we profiled directly 5hmC, the currently under-studied cytosine modification type but with demonstrated cancer relevance, in paired tumor and adjacent tissue samples from patients with PDAC. Our data showed a distinct genome-wide distribution pattern and modification landscape for 5hmC (Fig.1), consistent with previous studies [28]. Notably, we found that the detected 5hmC are in general inversely correlated with 5mC modifications, consistent with their putatively different gene regulatory roles. Notably, most of previous epigenetic studies either focused on 5mC or interpreted all modified cytosines as 5mC, our findings support the importance of distinguishing 5hmC from 5mC in future epigenetic biomarker discovery for PDAC. A more precise understanding of the epigenetics of PDAC and epigenetic biomarker discovery would not be possible without taking into consideration of the distinct distributions and roles of these two different types of cytosine modifications.
Specifically, by comparing the 5hmC profiles between tumor and adjacent tissue samples, we showed a substantial number of 5hmC loci that were differentially modified at a stringent cutoff (Bonferroni-corrected p-value < 0.05) (Fig.2). Consistent with their putative gene regulatory roles and tissue specificity, these differential 5hmC modifications were significantly over-represented in pancreas-derived histone modification marks, particularly for enhancer markers and active gene expression such as H3K4me1 and H3K27ac (Fig.2B). Moreover, cancer related pathways such as Ras signaling pathway, PI3K-Akt signaling pathway, were enriched in the PDAC-associated 5hmC sites (Supplemental Table 2). Further examination of the HPA database suggested the over-representation of genes with prognostic value for five-year survival or genes with elevated expression specifically in pancreatic cancer among our PDAC-associated marker genes (Fig.3B–C), including such genes as HDAC4, Rab1, FIP3, which are known to be related to PDAC pathobiology and/or metastasis [29,30]. Taken together, our findings demonstrated the technical feasibility of the TAB-Array in cancer biomarker discovery and indicated biomarker potential of 5hmC for the diagnosis and prognosis of PDAC.
We acknowledged there were several limitations of the current study. Firstly, the sample size was limited. Future investigation on more samples will elucidate the relevance of 5hmC in PDAC pathobiology. Secondly, the microarray-based profiling, though cost-effective, restricted the genome-wide scan to those available modification sites on the array. Future technical advances in the next-generation sequencing-based approaches will allow a more comprehensive and unbiased genome-wide analysis for 5hmC in PDAC. Thirdly, in the current report, we used the leftover samples from surgical resection to explore the biomarker potential of 5hmC. Future studies on patient samples with detailed clinical and epidemiological data will allow a more comprehensive analysis for the relationships between 5hmC and other clinical/epidemiological factors. Finally, future investigations will need to elucidate the relationships between 5hmC profiles and tumor subtypes and to evaluate whether the 5hmC biomarkers are consistent across all tumors with different molecular characteristics.
In summary, in the current study of 17 pairs of PDAC tumor and adjacent tissue samples, we demonstrated the feasibility of using the TAB-Array assay to profile genome-wide 5hmC with improved coverage and identify 5hmC-enriched genomic elements in PDAC tissues. A substantial number of 5hmC loci were found to be differentially modified between tumors and adjacent tissues from PDAC patients. Though limited by sample size and the lack of more detailed clinical data, our findings showed the technical feasibility of the TAB-Array in cancer biomarker discovery and functional relevance of those genes containing PDAC-associated 5hmC, as well as potential prognostic value of 5hmC markers. Overall, 5hmC is warranted to be an important epigenetic target in future biomarker discovery studies for PDAC to facilitate the urgent need of developing effective biomarkers to improve clinical outcomes, using emerging technologies such as the TAB-Array.
4. Materials and Methods
4.1. Study subjects
De-identified, clinically annotated leftover tissue samples from 17 adult patients with primary PDAC diagnosed during 2007 – 2011 (females: n = 10, males: n = 7; European descents: n = 7, African descents: n = 1, Hispanic: n = 1, Unknown races: n = 8; age at the time of diagnosis [mean, standard deviation]: 62.5±15.8 yrs) were obtained from the Human Tissue Resource Center (HTRC) of The University of Chicago Medical Center. Patients treated with chemotherapy, radiation therapy or immunotherapy, were excluded from this study. Diagnosis of primary PDAC was histologically confirmed. Tumor and adjacent tissue samples were collected using the laser microdissection and snap frozen at −80C° at the HTRC. The Institutional Review Board at each participating institute approved this study.
4.2. DNA isolation and the TAB-Array assay
Genomic DNA (gDNA) was isolated using the DNeasy Blood & Tissue kit (Qiagen, Germany), purified, and quantified, followed by the TAB-Array assay at the University of Chicago Genomics Core Facility [16]. Briefly, ~500 ng gDNA prepared from snap frozen tissues was split into two fractions. One fraction was bisulfite converted and analyzed by hybridization to the Illumina EPIC array, which covers ~850,000 cytosine modification sites across the entire human genome. The second fraction was first glucosylated to protect the 5hmC from oxidation by recombinant Tet1 enzyme using the 5hmC-TAB-Array Kit (WiseGene LLC, Chicago, IL), followed by bisulfite treatment and hybridization to the EPIC array. Unmethylated cytosines can be converted to thymidines by bisulfite treatment and amplification. In the absence of TAB (Tet-assisted bisulfite) treatment, both 5hmC and 5mC are protected and remain as cytosines. TAB treatment thus protects 5hmC, while 5mC is oxidized and converted by sodium bisulfite to thymidines. The raw and processed TAB-Array data have been deposited into the NCBI/Gene Expression Omnibus database (Accession Number: GSE118694).
4.3. Processing of the TAB-Array data and detection of differential loci
The raw TAB-Array and conventional EPIC array data were processed using the R Package ENmix, separately [31]. Briefly, after the QC process, 3,266 (TAB-Array) and 25,088 (bisulfite conversion protocol) low-quality CpGs (i.e., detection p-value > 10−6 in more than 5% samples) were detected for each assay, respectively. The detected low-quality CpGs were combined and removed from both datasets. For each dataset, the modification signal intensities were modeled with a flexible exponential-normal mixture distribution and the background noise was modeled with a truncated normal distribution for correction. Quantile normalization of modification intensities was performed across all 34 samples (17 pairs of tumor and adjacent tissues), and the β-values for each CpG probe were then obtained. The final 5hmC and 5mC β-values were estimated using the Maximum Likelihood Estimate (MLE) from the paired bisulfite conversion and TAB-treated samples. The CpGs on sex chromosome were removed, resulting in a final set of 822,760 CpGs for further statistical analyses. To detect differentially modified 5hmC loci across the 17 pairs of tumor and adjacent tissue samples, the R Package Limma was used to perform a paired t-test for each probe [32]. The Bonferroni-corrected p-value< 0.05 was used as the cutoff for statistical significance. All the statistical tests were performed under the R Statistical Computing Environment ( v 3.5.1) [33].
4.4. Evaluating genomic distributions of 5hmC and functional relevance
To characterize the distributions of tumor-associated 5hmC loci, their genomic coordinates were extracted and mapped to their respective host genes based on the current GENCODE annotations (hg19) [34]. We also mapped the tumor-associated 5hmC loci to known histone modification marks derived from pancreas using ChIP-seq from the Roadmap Epigenomics Project [19]. Specifically, we retrieved the start and end annotations of the Gapped Peaks (i.e., narrow contiguous regions of enrichment for histone ChIP-seq with Poisson p-value < 0.01). The 5hmC loci overlapped with these Gapped Peaks were considered to be co-localized with histone modification marks. To measure the enrichment of tumor-associated 5hmC loci with various genomic features (e,g., histone modification marks), the one-sided Fisher’ exact test was performed to calculate the odds ratio and p-value using the analyzed set of EPIC array probes (i.e., 822,760 CpGs) as the background reference.
In addition, the biological relevance of the 5hmC-containing genes was explored using the NIH/DAVID tool for the KEGG pathways and GO biological processes [20–22].
4.5. Exploring prognostic value and pancreatic cancer-specific expression of PDAC-associated 5hmC
The HPA is a database that explores the prognostic role of protein-coding genes in 17 different cancers by transcriptomics and antibody-based profiling [26]. The HPA predicts the prognostic role of a particular gene for PDAC using TCGA data on 176 US patients with primary PDAC [26]. According to the HPA, the “favorable” (or “unfavorable”) gene was defined as having higher relative expression levels at the time of diagnosis and while corresponding to higher (or lower for “unfavorable”) five-year overall survival, and the log-rank p-value< 0.001 was used to infer potential prognostic value of the 5hmC-contatining marker genes.
Additionally, permutation tests were carried out to explore whether the detected PDAC-associated 5hmC were enriched with genes showing prognostic value or specifically expressed in PDAC. A random sampling was performed from the analyzed set of EPIC array probes (i.e., 822,760 CpGs) as background for 100,000 times to generate the null distribution based on the size of 5hmC-containing genes to be tested. To determine whether the PDAC-associated 5hmC were enriched in genes with prognostic value, the proportion of the simulations in which the number of genes with prognostic value was larger than the observed number was counted as the empirical p-value. Similarly, to determine whether the PDAC-associated 5hmC were enriched in genes with specific expression in pancreatic cancer, the proportion of the simulations in which the number of genes with elevated mRNA expression levels in pancreatic cancer was larger than the observed number was counted as the empirical p-value.
Supplementary Material
Acknowledgments
We would like to thank Dr. Pieter Faber at the University of Chicago Genomics Core for processing the TAB-Array assay.
Funding: This research was funded partially by the National Cancer Institute: R21 CA187869 (WZ and LH), and P30 CA060553 Career Development Fund (WZ).
Footnotes
Conflicts of Interest: WZ is a shareholder of Shanghai Epican Genetech Co. Ltd., which develops epigenetic cancer biomarkers. Other authors declare no conflicts of interest.
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