Abstract
Adiponectin is an adipokine multipeptide hormone with insulin-sensitizing; anti-atherosclerotic; and anti-inflammatory properties. Chronic kidney disease (CKD) may be associated with low adiponectin. The adiponectin gene ADIPOQ is thought to be the only major gene responsible for plasma adiponectin levels; which are associated with diabetes and diabetic nephropathy. The purpose of this study was to investigate the association between ADIPOQ polymorphism and CKD. In addition; the combined effects of ADIPOQ polymorphism and diabetes and levels of total urinary arsenic and blood cadmium on CKD were also explored. This study included 215 CKD patients and 423 age–sex matched controls. The ADIPOQ polymorphisms were determined using the Agena Bioscience Mass ARRAY System. The levels of blood cadmium and urinary arsenic species were measured. The ADIPOQ rs182052 GA/AA genotype had a marginally lower odds ratio (OR) for CKD than the GG genotype. The OR (95% confidence interval; CI) was 16.33 (5.72–46.66) of CKD in subjects carrying the ADIPOQ rs182052 GG genotype and diabetes compared to non-diabetes subjects carrying the ADIPOQ rs182052 GA/AA genotype; the interaction term had p = 0.015; and the synergy index was 6.64 (1.81–24.36) after multivariate adjustment. A significant interaction of diabetes and ADIPOQ rs1501299 risk genotype increased the OR of CKD after multivariate adjustment with a synergy index of 0.31 (0.11–0.86) and a multiplicative interaction with p = 0.001. These results suggest that ADIPOQ rs182052 and rs1501299 risk genotypes may significantly modify the association between diabetes and CKD but not the association between total urinary arsenic and blood cadmium and CKD.
Keywords: adiponectin, polymorphisms, diabetes, chronic kidney disease, arsenic, cadmium
1. Introduction
Chronic kidney disease (CKD) is a growing public health problem. The prevalence of CKD in Taiwan was 11.9%, defined as an estimated glomerular filtration rate (eGFR) of <60 mL/min/1.73 m2 [1]. According to the Global Burden of Diagnosis analysis in 2017, the global prevalence of CKD was 9.1% (approximately 697.5 million cases), an increase of 29.3% since 1990 [2]. Taiwan has the highest prevalence of end-stage renal disease (ESRD) in the world, and ESRD incidence increased steadily from 2010 to 2018 [3]. Therefore, it is very important for Taiwan to explore CKD etiology.
Type 1 diabetes, type 2 diabetes, glomerulonephritis, and hypertension are considered risk factors for CKD [2]. A review study showed that exposure to environmental pollutants, such as heavy metals, is also a risk factor for CKD [4]. Our previous study found that high levels of blood cadmium and lead and total urinary arsenic significantly decreased eGFR and increased odds ratios (ORs) for CKD, whereas plasma selenium concentrations significantly increased eGFR and decreased OR for CKD [5]. However, the mechanisms by which metal or metalloid concentrations in blood or urine are associated with CKD are not fully understood.
Adiponectin is a 30-kDa protein that controls glucose and fatty acid metabolism, regulates insulin sensitivity, inhibits the proliferation of vascular smooth muscle cells, has general anti-inflammatory effects, and regulates atherogenesis [6,7,8]. The reduction of adiponectin leads to insulin resistance [8], which may be related to an increased risk of diabetes [9]. Plasma adiponectin levels depend on renal function and are significantly elevated in patients with renal insufficiency [10]. Plasma adiponectin levels in pre-dialysis CKD patients were negatively correlated with glomerular filtration rate [11,12]. However, a two-sample bidirectional Mendelian randomization study noted that high adiponectin concentration can increase eGFR levels and reduce CKD risk [13]. The serum adiponectin level may be able to improve eGFR and treat CKD caused by decreased eGFR [13]. The association between adiponectin levels and CKD is inconsistent.
Exposure to inorganic arsenic from drinking water decreased serum adiponectin and interfered with lipid metabolism in mice [14]. Another animal experiment also found that arsenic exposure reduces adiponectin and reduces body weight [15]. Long-term exposure to low-dose cadmium in rats downregulated adiponectin and leptin mRNA expression levels, suggesting a toxic effect of cadmium on adipocyte function [16]. Expression levels of adiponectin mRNA in white adipose tissue were reduced in mice exposed to high doses of cadmium for 6 h or 2 weeks, suggesting that cadmium exposure may lead to the development of insulin resistance, hypertension, and cardiovascular disease [17]. Results from the National Study of Women’s Health showed that cadmium and lead in urine samples were associated with adverse levels of high molecular weight adiponectin [18]. Experiments in mice showed that selenium supplementation can increase adiponectin concentration [19], but randomized clinical trials showed that selenium supplementation is not associated with adiponectin concentration [20]. The relationships between arsenic, lead, cadmium, and selenium exposures and adiponectin remain inconsistent.
Adiponectin is encoded by the ADIPOQ gene, which consists of two introns and three exons located on chromosome 3q27 [21]. Genetic variation in the adiponectin-encoding gene was associated with adiponectin levels in a genome-wide linkage and association study [22]. Various ADIPOQ polymorphisms were associated with coronary artery disease [23], diabetes [24], and hypertension [25]. Currently, only one study has examined the distribution of the ADIPOQ rs1501299 TT genotype, which significantly differed between CKD and controls, but without adjusting for other confounding factors [26]. Therefore, the purpose of this study is to investigate the association between ADIPOQ polymorphisms and CKD. In addition, we also assessed whether the ADIPOQ genotype modifies the associations between a history of diabetes and hypertension, total urinary arsenic and blood cadmium concentrations, and CKD.
2. Results
The sociodemographic characteristics, lifestyle, and disease history for CKD cases and controls are shown in Table 1. The OR of CKD was significantly lower in those with an education level above high school and who drink alcohol, tea, or coffee frequently or occasionally than in those with an education level below high school and who never drink alcohol, tea, or coffee. The proportion of smokers did not differ between cases and controls. Routine use of analgesics had a significantly higher OR for CKD than those who used analgesics only when needed. Individuals with diabetes and hypertension had a significantly higher OR for CKD than those without.
Table 1.
Variables | CKD Cases (N = 215) |
Controls (N = 423) |
Age–Sex Adjusted OR (95% CI) |
---|---|---|---|
Age | 66.00 (19.00) | 66.00 (18.00) a | 1.00 (0.99–1.02) |
Gender | |||
Male | 132 (61.40) | 260 (61.47) b | 1.00 |
Female | 83 (38.60) | 163 (38.53) | 1.02 (0.72–1.44) |
Educational level | |||
Illiterate/elementary school | 88 (40.93) | 96 (22.70) b,*** | 1.00 |
Junior/senior high school | 71 (33.02) | 146 (34.52) | 0.50 (0.33–0.75) ** |
College and above | 56 (26.05) | 181 (42.79) | 0.31 (0.20–0.48) *** |
Cigarette smoking | |||
Non-smoker | 158 (73.49) | 307 (72.58) b | 1.00 |
Former smoker | 32 (14.88) | 73 (17.26) | 1.16 (0.66–2.02) |
Current smoker | 25 (11.63) | 43 (10.17) | 0.83 (0.51–1.36) |
Alcohol consumption | |||
Never | 178 (82.79) | 270 (63.83) b,*** | 1.00 |
Frequently | 33 (15.35) | 65 (15.37) | 0.71 (0.44–1.14) |
Occasional | 4 (1.86) | 88 (20.80) | 0.06 (0.02–0.18) *** |
Frequently or occasional | 37 (17.21) | 153 (36.17) | 0.34 (0.22–0.51) *** |
Coffee consumption | |||
Never | 167 (77.67) | 218 (51.54) b,*** | 1.00 |
Frequently | 29 (13.49) | 102 (24.11) | 0.37 (0.23–0.59) *** |
Occasional | 19 (8.84) | 103 (24.35) | 0.06 (0.02–0.18) *** |
Frequently or occasional | 48 (22.33) | 205 (48.46) | 0.30 (0.21–0.44) *** |
Tea consumption | |||
Never | 119 (55.35) | 149 (35.22) b,*** | 1.00 |
Frequently | 70 (32.56) | 168 (39.72) | 0.52 (0.36–0.75) *** |
Occasional | 26 (12.09) | 106 (25.06) | 0.31 (0.19–0.50) *** |
Frequently or occasional | 96 (44.65) | 274 (64.78) | 0.43 (0.31–0.61) *** |
Analgesic usage | |||
No/yes as-needed basis | 189 (87.91) | 404 (95.51) b,*** | 1.00 |
Yes, routinely | 26 (12.09) | 19 (4.49) | 2.94 (1.59–5.45) *** |
Diabetes | |||
No | 130 (60.47) | 379 (89.60) b,*** | 1.00 |
Yes | 85 (39.53) | 44 (10.40) | 5.66 (3.73–8.59) *** |
Hypertension | |||
No | 93 (43.26) | 296 (69.98) b,*** | 1.00 |
Yes | 122 (56.72) | 127 (30.02) | 3.17 (2.23–4.50) *** |
Abbreviations: CKD, chronic kidney disease; OR, odds ratio; CI, confidence interval; Values are expressed as median (quartile range) or number (%) of cases and controls; a Wilcoxon rank sum test; b χ2 test; ** p < 0.01, *** p < 0.001.
The association between ADIPOQ genotypes and CKD is presented in Table 2. The ADIPOQ rs1501299 GT genotype had a marginally significantly higher OR for CKD than the GG genotype. After multivariate adjustment, the OR of CKD was marginally higher in those with the ADIPOQ rs182052 GG genotype compared to the GA/AA genotype. While the ADIPOQ rs1501299 GT and ADIPOQ rs182052 GG genotypes show marginal values. If the results of ADIPOQ genotyping improve the health of CKD, it is worthwhile [27]. The other polymorphisms of ADIPOQ were not associated with CKD.
Table 2.
ADIPOQ Genotypes | CKD Cases | Controls | Age–Sex Adjusted ORs (95% CI) |
Multivariate Adjusted a
ORs (95% CI) |
---|---|---|---|---|
rs182052 G>A | ||||
AA | 33 (15.64) | 76 (18.27) | 1.00 | 1.00 §,+ |
GA | 103 (48.81) | 214 (51.44) | 1.11 (0.69–1.78) | 1.14 (0.65–2.00) |
GG | 75 (35.55) | 126 (30.29) | 1.38 (0.84–2.27) | 1.63 (0.90–2.97) |
GG vs. GA/AA | 1.27 (0.90–1.81) | 1.48 (0.97–2.26)+ | ||
rs1501299 G>T | ||||
GG | 106 (49.77) | 230 (54.89) | 1.00 | 1.00 |
GT | 95 (44.60) | 152 (36.28) | 1.36 (0.97–1.93) + | 1.19 (0.79–1.79) |
TT | 12 (5.63) | 37 (8.83) | 0.71 (0.36–1.42) | 0.73 (0.33–1.60) |
GT/TT | 107 (50.23) | 189 (45.11) | 1.23 (0.89–1.72) | 1.20 (0.82–1.74) |
rs1063539 G>C | ||||
GG | 104 (48.60) | 198 (48.06) | 1.00 | 1.00 |
GC | 91 (42.52) | 176 (42.72) | 0.99 (0.70–1.40) | 0.89 (0.59–1.35) |
CC | 19 (8.88) | 38 (9.22) | 0.96 (0.53–1.75) | 0.94 (0.47–1.90) |
rs2241766 G>T | ||||
GG | 27 (12.62) | 56 (13.59) | 1.00 | 1.00 |
GT | 99 (46.26) | 165 (40.05) | 1.17 (0.64–2.15) | 1.13 (0.56–2.29) |
TT | 88 (41.12) | 191 (46.36) | 0.93 (0.51–1.70) | 0.97 (0.48–1.95) |
rs7627128 A>C | ||||
AA | 8 (3.77) | 19 (4.52) | 1.00 | 1.00 |
AC | 66 (31.13) | 156 (37.14) | 1.01 (0.42–2.43) | 0.58 (0.20–1.67) |
CC | 138 (65.09) | 245 (58.33) | 1.35 (0.58–3.17) | 0.93 (0.33–2.59) |
rs822396 A>G | ||||
AA | 164 (77.73) | 335 (80.34) | 1.00 | 1.00 |
AG | 47 (22.27) | 75 (17.99) | 1.30 (0.86–1.96) | 1.18 (0.72–1.93) |
GG | 0 (0.00) | 7 (1.68) |
Abbreviations: CKD, chronic kidney disease; ADIPOQ, adiponectin; OR, odds ratio; CI, confidence interval. Twelve participants were missing for ADIPOQ rs11063539, three were missing for ADIPOQ rs150129, eleven were missing for ADIPOQ rs182052, twelve were missing for ADIPOQ rs2241766, six were missing for ADIPOQ rs7627128, and ten were missing for ADIPOQ rs822396. a Adjusted for age, sex, educational level, analgesic usage, disease histories of diabetes and hypertension, and alcohol, coffee, and tea consumption. § Trend test; + 0.05 < p < 0.1.
The LD and haplotype analyses showed that ADIPOQ had two haplotype blocks (Supplementary Figure S1). The Lewontin’s D′ for the haplotype ADIPOQ block 1 (ADIPOQ rs182052 and rs822396) and ADIPOQ block 2 (ADIPOQ rs1063539 and rs1501299) polymorphisms was 0.96 for both, indicating the LD (Figure S1A) and r2 values (Figure S1B) for each pair of polymorphisms. Supplementary Table S2 shows the relationship between the ADIPOQ haplotypes and CKD. The OR of CKD in the A-A haplotype of ADIPOQ block 1 marginally decreased compared to the G-A haplotype, and the haplotypes in ADIPOQ block 2 were not related to CKD after multivariate adjustment.
Table 3 shows the serum creatinine, plasma selenium, blood cadmium and lead, and total urinary arsenic concentrations and eGFR in the CKD cases and controls. Of these, plasma selenium levels and eGFR were significantly lower in CKD cases than controls, but blood cadmium and lead, and total urinary arsenic concentrations were significantly higher; these results are similar to previous studies [5,28].
Table 3.
CKD Cases | Controls | ||
---|---|---|---|
Variables | Median (Quartile Range) | Median (Quartile Range) | p |
Serum creatinine (mg/dL) | 2.00 (1.70) | 0.90 (0.20) | <0.0001 |
eGFR (mL/min/1.73 m2) | 32.24 (25.76) | 80.83 (19.70) | <0.0001 |
Total urinary arsenic (μg/g creatinine) | 22.53 (18.93) | 16.04 (15.36) | <0.0001 |
Blood cadmium (μg/L) | 1.66 (1.47) | 1.04 (0.82) | <0.0001 |
Blood lead (μg/dL) | 63.72 (46.71) | 42.29 (27.08) | <0.0001 |
Plasma selenium (μg/L) | 185.68 (75.65) | 217.85 (70.55) | <0.0001 |
Quartile range: third quartile–first quartile; eGFR, estimated glomerular filtration rate; p-value tested by Wilcoxon rank-sum test.
The association between ADIPOQ polymorphisms and CKD was analyzed after stratification by medical history, such as diabetes and hypertension, blood cadmium and lead, plasma selenium, and total urinary arsenic (Table 4). The multivariate-adjusted OR of CKD in diabetic patients with the ADIPOQ rs182052 GG genotype was significantly higher than those with the GA+AA genotype, while the ADIPOQ rs182052 genotype was not associated with CKD in non-diabetic patients. When comparing the ADIPOQ rs182052 GG with the GA+AA genotype, the OR of CKD was marginally higher in the low total urinary arsenic and low blood cadmium concentration group but not in the high total urinary arsenic or high blood cadmium concentration group. Diabetics with ADIPOQ rs1501299 GT/TT versus GG genotype had significantly lower multivariate-adjusted OR of CKD. In contrast, the multivariate-adjusted OR of CKD in the ADIPOQ rs1501299 GT/TT genotype without diabetes was marginally higher than those with GG genotype. Thus, ADIPOQ rs182052 may, respectively, interact with diabetes and total urinary arsenic and blood cadmium concentrations on CKD. ADIPOQ rs1501299 may interact with diabetes on CKD. Therefore, we subsequently analyzed the interaction of these ADIPOQ genotypes and diabetes and blood cadmium and total urinary arsenic concentrations on CKD. However, there was no association between ADIPOQ polymorphisms and CKD in analyses stratified by hypertension, blood lead, and plasma selenium.
Table 4.
Diabetes | Non-Diabetes | |||||
---|---|---|---|---|---|---|
ADIPOQ Genotypes | CKD Cases/ Controls |
Age–Sex Adjusted ORs (95% CI) |
Multivariate Adjusted a
ORs (95% CI) |
CKD Cases/ Controls |
Age–Sex Adjusted ORs (95% CI) |
Multivariate Adjusted a
ORs (95% CI) |
rs182052 G>A | ||||||
AA | 14/10 | 1.00 §,* | 1.00 §,* | 19/66 | 1.00 | 1.00 |
GA | 38/28 | 0.97 (0.37–2.51) | 0.75 (0.24–2.32) | 65/186 | 1.20 (0.67–2.16) | 1.26 (0.66–2.41) |
GG | 32/5 | 4.51 (1.29–15.73) * | 4.48 (1.02–19.66) * | 43/121 | 1.22 (0.66–2.28) | 1.33 (0.67–2.65) |
GG vs.GA/AA | 4.62 (1.64–13.01) ** | 5.54 (1.64–18.74) ** | 1.06 (0.69–1.63) | 1.11 (0.69–1.80) | ||
rs1501299 G>T | ||||||
GG | 44/15 | 1.00 §,* | 1.00 §,* | 62/215 | 1.00 | 1.00 |
GT | 36/20 | 0.62 (0.28–1.38) | 0.40 (0.15–1.06) + | 59/132 | 1.55 (1.02–2.36) * | 1.55 (0.97–2.46) + |
TT | 4/8 | 0.16 (0.04–0.62) ** | 0.27 (0.05–1.39) | 8/29 | 0.96 (0.42–2.22) | 1.05 (0.42–2.58) |
GT/TT | 40/28 | 0.49 (0.23–1.04) + | 0.37 (0.15–0.96) * | 67/161 | 1.45 (0.97–2.16) + | 1.46 (0.94–2.27) + |
Total urinary arsenic ≤ 16.04 μg/g creatinine | Total urinary arsenic > 16.04 μg/g creatinine | |||||
rs182052 G>A | ||||||
AA | 5/38 | 1.00 §,* | 1.00 §,* | 28/37 | 1.00 | 1.00 |
GA | 28/105 | 1.84 (0.65–5.16) | 2.49 (0.77–7.99) | 75/108 | 0.89 (0.50–1.59) | 0.80 (0.40–1.30) |
GG | 24/61 | 3.05 (1.06–8.78) * | 4.06 (1.22–13.57) * | 51/65 | 1.05 (0.56–1.94) | 1.20 (0.54–2.67) |
GG vs. GA/AA | 1.88 (1.01–3.50) * | 1.96 (0.97–3.94) + | 1.14 (0.73–1.79) | 1.39 (0.78–2.50) | ||
Blood cadmium ≤ 1.04 μg/L | Blood cadmium > 1.04 μg/L | |||||
rs182052 G>A | ||||||
AA | 8/39 | 1.00 | 1.00 | 25/37 | 1.00 | 1.00 |
GA | 19/108 | 0.81 (0.32–2.01) | 0.78 (0.26–2.52) | 84/106 | 1.15 (0.64–2.06) | 1.09 (0.54–2.23) |
GG | 18/64 | 1.28 (0.50–3.26) | 1.91 (0.61–5.99) | 57/62 | 1.31 (0.70–2.46) | 1.29 (0.60–2.78) |
GA/AA | 1.50 (0.77–2.92) | 2.27 (0.95–5.43) + | 1.18 (0.76–1.83) | 1.20 (0.71–2.04) |
Abbreviations: ADIPOQ, adiponectin; OR, odds ratio; CI, confidence interval. a Adjusted for age, sex, educational level, analgesic usage, disease histories of diabetes and hypertension, and alcohol, coffee, and tea consumption; § Trend test, + 0.05 < p <0.1, * p < 0.05, ** p < 0.01; Two participants were missing for ADIPOQ rs150129 in diabetes and four missing for ADIPOQ rs150129 in non-diabetes; two were missing for ADIPOQ rs182052 in diabetes and nine missing for ADIPOQ rs182052 in non-diabetes; two were missing in total urinary arsenic ≤ 16.04 μg/g creatinine and five missing in total urinary arsenic > 16.04 μg/g creatinine for ADIPOQ rs182052; and six were missing in blood cadmium ≤ 1.04 μg/L and five in blood cadmium ≤ 1.04 μg/L for ADIPOQ rs182052.
Table 5 shows pairwise analyses of the interaction of diabetes, total urinary arsenic, blood cadmium, and ADIPOQ risk genotype on CKD. The OR for CKD increased significantly with increasing risk factors in a dose–response manner. The OR (95% confidence interval, CI) of CKD was 16.33 (5.72–46.66) in subjects carrying the ADIPOQ rs182052 GG genotype with diabetes compared to those with the ADIPOQ rs182052 GA/AA genotype and without diabetes. The ADIPOQ rs182052 and diabetes status significantly interacted with CKD (p = 0.015), and the synergy index was 6.64 (1.81–24.36). Thus, ADIPOQ rs182052 appeared to have an additive and multiplicative interaction with diabetes on CKD after multivariate adjustment. The OR of CKD increased significantly with a risk factors (diabetes and ADIPOQ rs1501299 risk genotype) increment after multivariable adjustment, with an additive interaction (synergy index) of 0.31 (0.11–0.86) and a significant multiplicative interaction (p = 0.001). The interaction between the ADIPOQ rs182052 risk genotype and metals showed a dose-dependent OR for CKD when increasing risk factors, but the interaction was not significant.
Table 5.
Risk Factor | Risk Factor | Case/Control | Age–Sex Adjusted ORs (95% CI) |
Multivariate Adjusted ORs (95% CI) a |
---|---|---|---|---|
ADIPOQ rs182052 | Diabetes | |||
GA/AA No | No | 84/252 | 1.00 §,*** | 1.00 §,*** |
GG | No | 43/121 | 1.07 (0.70–1.64) | 1.12 (0.69–1.81) |
GA/AA | Yes | 52/38 | 4.11 (2.52–6.69) *** | 3.19 (1.83–5.54) *** |
GG | Yes | 32/5 | 19.21 (7.25–50.89) *** | 16.33 (5.72–46.66) *** |
Synergy index | 5.73 (1.82–18.10) | 6.64 (1.81–24.36) | ||
p interaction | 0.010 | 0.015 | ||
ADIPOQ rs1501299 | Diabetes | |||
GG | No | 62/215 | 1.00 §,*** | 1.00 §,*** |
GT/TT | No | 67/161 | 1.45 (0.97–2.17) + | 1.47 (0.94–2.30) + |
GG | Yes | 44/15 | 10.22 (5.32–19.60) *** | 9.24 (4.44–19.21) *** |
GT/TT | Yes | 40/28 | 4.96 (2.83–8.70) *** | 3.69 (1.98–6.87) *** |
Synergy index | 0.41 (0.17–0.98) | 0.31 (0.11–0.86) | ||
p interaction | 0.013 | 0.001 | ||
ADIPOQ rs182052 | Total urinary arsenic (μg/g creatinine) |
|||
GA/AA No | <16.04 | 33/145 | 1.00 §,*** | 1.00 §,*** |
GG | <16.04 | 24/61 | (0.94–3.18) + | 2.07 (1.04–4.13) * |
GA/AA | >16.04 | 103/145 | 3.16 (2.00–5.00) *** | 2.79 (1.64–4.77) *** |
GG | >16.04 | 51/65 | 3.46 (2.04–5.87) *** | 3.59 (1.90–6.79) *** |
Synergy index | 0.85 (0.44–1.65) | 0.91 (0.40–2.05) | ||
p interaction | 0.531 | 0.913 | ||
ADIPOQ rs182052 | Blood cadmium (μg/L) | |||
GA/AA No | <1.04 | 27/147 | 1.00 §,*** | 1.00 §,*** |
GG | <1.04 | 18/64 | 1.52 (0.78–2.96) | 2.14 (0.96–4.77) + |
GA/AA | >1.04 | 109/143 | 4.33 (2.66–7.06) *** | 5.26 (2.90–9.53) *** |
GG | >1.04 | 57/62 | 5.16 (2.98–8.94) *** | 6.25 (3.21–12.17) *** |
Synergy index | 1.08 (0.61–1.93) | 0.97 (0.50–1.87) | ||
p interaction | 0.441 | 0.259 |
Abbreviations: ADIPOQ, adiponectin; OR, odds ratio; CI, confidence interval. a Adjusted for age, sex, educational level, analgesic usage, disease histories of diabetes and hypertension, and alcohol, coffee, and tea consumption. § Trend test; + 0.05 < p < 0.1, * p < 0.05, *** p < 0.001; p interaction: multiplicative interaction. Three were missing for ADIPOQ rs150129 and eleven missing for ADIPOQ rs182052. Eleven were missing in the combined effect for total urinary arsenic and ADIPOQ rs182052, eleven missing in the combined effect of blood cadmium and ADIPOQ rs182052; and twelve missing in the combined effect of blood cadmium and ADIPOQ rs1063539.
3. Discussion
We found the OR of CKD in the ADIPOQ rs182052 GG genotype was marginally higher than that of the GA/AA genotype. There was no evidence for an association of other ADIPOQ genotypes or haplotypes with CKD in this study (Table 2). However, stratification analysis showed that ADIPOQ rs1501299 and rs182052 had different ORs of CKD in different strata of diabetes and levels of blood cadmium and total urinary arsenic (Table 4). The combined effect of ADIPOQ rs1501299 or ADIPOQ rs182052 risk genotypes and diabetes, respectively, increased the OR of CKD when risk factors rose in a dose–response manner and had significant additive and multiplicative interaction effects (Table 5).
Our study found that the OR of CKD was significantly lower in those who drank alcohol, tea, and coffee (Table 1). This may be because alcohol [29] and tea [30] contain polyphenols that can reduce reactive oxygen species and anti-inflammatory components, and coffee contains active phytochemicals, including polyphenols, that can increase antioxidant capacity [31] and modulate glucose and fat metabolism [32].
The ADIPOQ rs1501299 polymorphism is in intron 2 at position 276 of the adiponectin gene (SNP 276G>T). In a Spanish study, the ADIPOQ rs1501299 T allele increased plasma adiponectin levels and decreased insulin resistance [33]. Another study showed that the ADIPOQ rs1501299 T allele was associated with the pathogenesis of type 2 diabetes in Kyrgyzstan [34]. In a renal transplant study, the T allele of ADIPOQ rs1501299 in donors was significantly associated with higher eGFR values than the G allele and was also associated with higher combined genetic scores and better functions in a Spanish study [35]. The inconsistent results may be attributed to ethnic differences in the distribution of the ADIPOQ rs1501299 polymorphism. However, our study showed that the ADIPOQ rs1501299 GT/TT genotype significantly decreased the OR for CKD compared with the GG genotype in subjects with diabetes (Table 4). This is because the ADIPOQ rs1501299 TT genotype increased the plasma adiponectin concentration, reduced the insulin resistance index, and decreased the risk of type 2 diabetes compared to the GG genotype in a Japanese population [36], thereby reducing the risk of CKD. Conversely, ADIPOQ rs1501299 GT/TT relative to the GG genotype increased the OR of CKD in subjects without diabetes in our study (Table 4). This result is consistent with a Taiwanese study showing that the ADIPOQ rs1501299 T allele increased the risk of type 2 diabetes [37]. A Greek study showed that the OR of the ADIPOQ rs1501299 GT genotype significantly increased the risk of diabetic retinopathy in diabetic patients, and the OR (95% CI) was 2.68 (1.38–5.21) when adjusted for other risk factors [38]. A meta-analysis study found that the ADIPOQ rs1501299 GG genotype had a marginally lower OR for coronary artery disease than the GT/TT genotype in East Asians with an OR of 0.82 and 95% CI 0.66–1.03 [39]. These inconsistent results may be due to complex interactions between genotype and environmental factors (such as the presence or absence of diabetes), which we currently cannot explain.
The ADIPOQ rs182052 is located in intron 1 of the human adiponectin gene (SNP -10069G>A). Although introns are non-protein-coding regions within genes, they are associated with serum adiponectin levels [40]. Many studies have pointed out that the ADIPOQ rs182052 A allele is related to diabetes [24,41]. This may be because the ADIPOQ rs182052 A allele is related to lower serum adiponectin levels, higher body mass index, higher fasting insulin, thicker skinfold thickness, lower homeostasis model assessment of insulin sensitivity, and diabetic nephropathy [42,43,44]. However, we found the OR of CKD in the ADIPOQ rs182052 GG genotype was marginally higher than that of the GA/AA genotype. Whether it is because ADIPOQ rs182052 has more GG genotype distribution in CKD cases, and its eGFR is significantly lower than that of controls (Table 3), needs further investigation. Furthermore, we found that the ADIPOQ rs182052 GG genotype had significantly or marginally higher OR for CKD than the GA/AA genotype in the group with diabetes or in those with low total urinary arsenic or low blood cadmium concentrations (Table 4). This may be due to the lower adiponectin concentration in the ADIPOQ rs182052 GG genotype than in the GA/AA genotype, while at the same time diabetic patients had lower adiponectin, resulting in a higher OR of CKD, which was not observed in non-diabetic patients (normal adiponectin). However, we did not measure adiponectin concentrations; we have no evidence at present. In addition, the effect of the ADIPOQ rs182052 gene on CKD was shown at low urinary total arsenic and low blood cadmium concentrations, but at high urinary total arsenic and high blood cadmium concentrations, the effect of the ADIPOQ rs182052 gene on CKD could not be presented; it may be that the effect of the ADIPOQ rs182052 gene is lower than the effect of metals on CKD, and this needs further investigation. The discrepancy between previous studies and our results may be partly due to different population backgrounds, allelic heterogeneity, and phenotype definitions. However, the genotype frequencies in our control group were similar to those in previous studies [45,46]. Only one study had similar results to ours in which they found a significantly lower risk for ischemic stroke for the ADIPOQ rs182052 GA/AA compared to the GG genotype [47]. Furthermore, we found that the ADIPOQ rs182052 risk genotype had a significant additive and multiplicative interaction with diabetes to increase the risk of CKD. This may be because diabetes is an important risk factor for CKD, and diabetes is associated with low adiponectin levels [48]. We did not measure serum adiponectin levels to confirm whether the ADIPOQ rs182052 GG genotype interacted with diabetes to increase CKD risk through serum adiponectin levels or through other mechanisms, and this requires further exploration.
This study had some limitations. We did not measure adiponectin concentrations, which is one limitation of this study. When assessing the association between ADIPOQ polymorphisms and CKD and the interaction of ADIPOQ polymorphisms and metal levels on CKD, further studies with larger sample sizes are required to improve the precision of point estimates. The analysis of six ADIPOQ polymorphisms could not explain all gene functions. Further functional evaluation of ADIPOQ polymorphisms is needed to determine their role in CKD.
4. Materials and Methods
4.1. Study Subjects
This study recruited 215 CKD patients and 423 age- and sex-matched healthy controls at Taipei Wanfang Medical Center and Taipei Medical University Hospital previously [49]. This study was approved by the Taipei Medical University-Joint Institutional Review Board (N202206001). All study subjects were interviewed using questionnaires and had biological samples collected after providing their informed consent. Nephrologists at Taipei Wanfang Hospital Medical Center and Taipei Medical University Hospital determined the different stages of CKD in patients using serum creatinine, blood urea nitrogen, proteinuria, and the modified diet in renal disease (MDRD) formula to calculate eGFR. The MDRD formula follows eGFR (mL/min/1.73 m2) = 186.3 × serum creatinine−1.154 × age−0.203 × 1.212 (if patient is black) × 0.742 (if female) [50].
4.2. Interview and Bio-Specimen Collection
Well-trained interviewers conducted interviews with study subjects using structured questionnaires. The questionnaire included sociodemographic data, use of analgesics, history of diseases, such as hypertension and diabetes, and lifestyle information, such as alcohol, coffee, and tea consumption and cigarette smoking habits.
From each subject, approximately 8 mL of blood was collected using an EDTA vacuum syringe to separate buffy coats for DNA extraction to analyze ADIPOQ rs11063539, rs150129, rs182052, rs2241766, rs7627128, and rs822396 genotypes. Plasma was separated for measurement of selenium levels, and red blood cells were separated to measure lead and cadmium concentrations. Spot urine samples were collected and stored in acid-washed tubes and transferred to a −20 °C freezer in preparation for arsenic species analyses.
4.3. Arsenic, Cadmium, Lead, and Selenium Measurement
Arsenite (AsIII), arsenate (AsV), monomethylarsonic acid (MMAV), and dimethylarsinic acid (DMAV) were separated using high-performance liquid chromatography (Merck Hitachi, Tokyo, Japan). The concentrations of these four species were determined using a hydride generator coupled to an atomic absorption spectrometer (PerkinElmer, Waltham, MA, USA) [51]. Analysis of plasma selenium and blood lead and cadmium levels was performed by inductively coupled plasma mass spectrometry (Agilent Technologies, Santa Clara, CA, USA) [5]. When the experimental value was below the detection limit, half the concentration of the detection limit was used in data analysis. Supplementary Table S1 presents assay methods, detection limits, validity, and reliability for metals or metalloids. Total urinary arsenic concentration was the sum of AsIII, AsV, MMAV, and DMAV concentrations.
4.4. Determination of ADIPOQ Gene Polymorphisms
Genomic DNA was obtained by digestion with proteinase K followed by phenol and chloroform extraction. Appropriate single nucleotide polymorphisms (SNPs) were selected based on the frequency of Han Chinese in Beijing, China and Asians from the dbSNP Short Genetic Variations provided by the National Center for Biotechnology Information (https://www.ncbi.nlm.nih.gov/projects/SNP/, accessed on 1 September 2022). The genotypes of ADIPOQ rs11063539, rs150129, rs182052, rs2241766, rs7627128, and rs822396 were determined using the Agena Bioscience Mass ARRAY System according to the manufacturer’s instructions.
4.5. Statistical Analysis
Medians (interquartile ranges) present continuous variables, and frequencies (percentages) represent categorical variables. The chi-square test was used to test whether the ADIPOQ genotypes of the control group fitted Hardy–Weinberg equilibrium and to analyze the distribution of categorical variables among the subject groups. The Wilcoxon rank sum test compared the continuous variables between CKD cases and controls. Multiple logistic regressions were used to estimate ORs and 95% CIs to assess the associations between ADIPOQ genotypes and CKD. The association between SNPs for each ADIPOQ and CKD was analyzed for trend test using ranked SNPs coded for zero, one, and two minor alleles. The median of urinary total arsenic and blood cadmium concentrations in the control group was used as the cut point for stratification in order to divide all the population into high-concentration group and low-concentration group. The associations between ADIPOQ gene polymorphisms and CKD in the high-concentration and low-concentration groups were analyzed, respectively. All models were adjusted for variables such as age, sex, education level, analgesic usage, history of diabetes and hypertension, and alcohol, coffee, and tea consumption. Linkage disequilibrium (LD) strength was determined by calculating Lewontin’s D′ and r2 using Haploview 4.1 software [52]. The interaction of metal concentrations (median of control concentrations as cut-off point) and ADIPOQ polymorphisms on CKD was also assessed. The linear trend test of the OR of each stratum in the interaction was calculated using the scores of no risk factor, one risk factor, and two risk factors (risk genotype, diabetes, or high metal exposure) as continuous variables. The synergy index was used to analyze the additive interaction of pairwise variables, such as ADIPOQ genotype, disease histories, total urinary arsenic, plasma selenium, and blood lead and cadmium concentrations on CKD [53]. The 95% CIs were calculated using the OR and its variance–covariance matrix [54]. Multiplicative interactions between metals, disease history, and ADIPOQ polymorphisms on CKD were analyzed using product terms in multiple logistic regression models. Software SAS 9.4 (SAS Institute, Cary, NC, USA) was used to analyze data. Significance was considered with a two-tailed p < 0.05.
5. Conclusions
We observed a marginal association between ADIPOQ rs182052 and CKD. However, to our knowledge, this is the first finding that ADIPOQ rs182052 and rs1501299 polymorphisms have respective significant additive and multiplicative interactions with diabetes to enhance the risk of CKD.
Supplementary Materials
The following supporting information can be downloaded at: https://www.mdpi.com/article/10.3390/ijms24098128/s1.
Author Contributions
Conceptualization, H.-H.C. and Y.-M.H.; formal analysis, H.-H.C. and Y.-M.H.; investigation, Y.-C.L., S.-L.H. and C.-Y.W.; resources, M.-C.C., Y.-C.L., S.-L.H., H.-S.S. and Y.-M.H.; data curation, Y.-L.H. and M.-C.C.; writing—original draft preparation, H.-H.C.; writing—review and editing, Y.-L.H. and H.-S.S.; supervision, Y.-M.H.; project administration, H.-H.C. All authors have read and agreed to the published version of the manuscript.
Institutional Review Board Statement
The study was conducted in accordance with the Declaration of Helsinki and was approved by the Taipei Medical University-Joint Institutional Review Board (protocol code: N202206001; 9 August 2022).
Informed Consent Statement
Informed consent was obtained from all participants involved in the study.
Data Availability Statement
The data presented in this study are available on request from the corresponding author. The data are not publicly available due to privacy or ethical restrictions.
Conflicts of Interest
The authors declare no conflict of interest.
Funding Statement
This study was supported by grants from the Taipei Medical University–Wanfang Hospital Research Project (111TMU-WFH-05) and the Ministry of Science and Technology of the Republic of China (MOST 107-2320-B-039-010, MOST 106-2314-B-002-235-MY3, MOST 107-2314-B-038-073, MOST 108-2314-B-038-089, MOST 109-2314-B-038-081, MOST 109-2314-B-038-067, MOST 110-2314-B-038-054, MOST110-2314-B-002-113, MOST 111-2314-B-038-052, and MOST 111-2314-B-002-240-MY3).
Footnotes
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Associated Data
This section collects any data citations, data availability statements, or supplementary materials included in this article.
Supplementary Materials
Data Availability Statement
The data presented in this study are available on request from the corresponding author. The data are not publicly available due to privacy or ethical restrictions.