Literature DB >> 21533175

Eight common genetic variants associated with serum DHEAS levels suggest a key role in ageing mechanisms.

Guangju Zhai1, Alexander Teumer, Lisette Stolk, John R B Perry, Liesbeth Vandenput, Andrea D Coviello, Annemarie Koster, Jordana T Bell, Shalender Bhasin, Joel Eriksson, Anna Eriksson, Florian Ernst, Luigi Ferrucci, Timothy M Frayling, Daniel Glass, Elin Grundberg, Robin Haring, Asa K Hedman, Albert Hofman, Douglas P Kiel, Heyo K Kroemer, Yongmei Liu, Kathryn L Lunetta, Marcello Maggio, Mattias Lorentzon, Massimo Mangino, David Melzer, Iva Miljkovic, Alexandra Nica, Brenda W J H Penninx, Ramachandran S Vasan, Fernando Rivadeneira, Kerrin S Small, Nicole Soranzo, André G Uitterlinden, Henry Völzke, Scott G Wilson, Li Xi, Wei Vivian Zhuang, Tamara B Harris, Joanne M Murabito, Claes Ohlsson, Anna Murray, Frank H de Jong, Tim D Spector, Henri Wallaschofski.   

Abstract

Dehydroepiandrosterone sulphate (DHEAS) is the most abundant circulating steroid secreted by adrenal glands--yet its function is unknown. Its serum concentration declines significantly with increasing age, which has led to speculation that a relative DHEAS deficiency may contribute to the development of common age-related diseases or diminished longevity. We conducted a meta-analysis of genome-wide association data with 14,846 individuals and identified eight independent common SNPs associated with serum DHEAS concentrations. Genes at or near the identified loci include ZKSCAN5 (rs11761528; p = 3.15 × 10(-36)), SULT2A1 (rs2637125; p =  2.61 × 10(-19)), ARPC1A (rs740160; p =  1.56 × 10(-16)), TRIM4 (rs17277546; p =  4.50 × 10(-11)), BMF (rs7181230; p = 5.44 × 10(-11)), HHEX (rs2497306; p =  4.64 × 10(-9)), BCL2L11 (rs6738028; p = 1.72 × 10(-8)), and CYP2C9 (rs2185570; p = 2.29 × 10(-8)). These genes are associated with type 2 diabetes, lymphoma, actin filament assembly, drug and xenobiotic metabolism, and zinc finger proteins. Several SNPs were associated with changes in gene expression levels, and the related genes are connected to biological pathways linking DHEAS with ageing. This study provides much needed insight into the function of DHEAS.

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Year:  2011        PMID: 21533175      PMCID: PMC3077384          DOI: 10.1371/journal.pgen.1002025

Source DB:  PubMed          Journal:  PLoS Genet        ISSN: 1553-7390            Impact factor:   5.917


Introduction

Dehydroepiandrosterone sulphate (DHEAS), mainly secreted by the adrenal gland, is the most abundant circulating steroid in humans. It acts as an inactive precursor which is converted initially into DHEA and thereafter into active androgens and estrogens in peripheral target tissues [1]. In humans the serum concentration of circulating DHEAS is 100- to 500-fold or 1000 to 10,000 higher than that of testosterone and estradiol respectively. Unlike DHEA, which is swiftly cleared from the circulation and shows diurnal variation, serum DHEAS concentrations are stable and facilitate accurate measurement and diagnosis of pathology [2]. DHEAS is distinct from the other major adrenal steroids (cortisol and aldosterone) in showing a significant physiological decline after the age of 25 and diminishes about 95% by the age of 85 years [3]. This age-related decline has led to speculation that a relative DHEAS deficiency may contribute to the development of common age-related diseases or diminished longevity [4], [5]. Low DHEAS concentrations are possibly associated with increased insulin resistance [6], [7] and hypertension [8], but not with incident metabolic syndrome [9]. It is strongly associated with osteoporosis in women [10], [11] but not in men [12]. Concurrent change in DHEAS tracks with declines in gait speed, modified mini-mental state examination score (3MSE), and digit symbol substitution test (DSST) in very old women but not in men [13]. Low circulating DHEAS is also strongly associated with cardiovascular disease and mortality in men [14]–[18] but not in women [19]. A recent 15-year follow-up study showed that DHEAS was negatively related to all-cause, all cancers, and other medical mortality, whereas high DHEAS concentrations were protective [20]. This has led to its widespread and uncontrolled use as a controversial anti-ageing and sexual performance supplement in the USA and other western countries without any clear data about efficacy, potential risks or benefits [21]. Despite these observations, the physiological function of DHEAS and its importance in maintaining health are poorly understood. Although previous twin [22], [23] and family-based studies [24], [25] have shown that there is a substantial genetic effect with a heritability estimate of 60% [22], no specific genes regulating serum DHEAS concentration in healthy individuals have been identified to date. Therefore, the current study meta-analyzed the results of genome-wide association studies (GWAS) performed in a total of 14,846 individuals from seven cohorts to identify common genetic variants associated with serum DHEAS concentrations. The findings not only advance understanding of how serum DHEAS concentration is regulated by genes but also provide clues as to its mechanism of action as well as Mendelian randomisation principles [26].

Results

We carried out a meta-analysis of 8,565 women and 6,281 men of European origin from collaborating studies: TwinsUK (n = 4,906), Framingham Heart Study (FHS) (n = 3,183), SHIP (n = 1,832), Rotterdam Study (RS1) (n = 1,597), InCHIANTI (n = 1,182), Health ABC (n = 1,222), and GOOD (n = 924). Serum samples were collected either after overnight fasting or non-fasting in each cohort and DHEAS was measured by either immunoassay or liquid chromatography tandem mass spectrometry (LC-MS/MS) methods (Table 1). Mean age differed across the cohorts from 19 to 74 years in men and 50 to 74 years in women and corresponding mean DHEAS concentrations varied from 1.20 to 7.05 µmol/L (Table 1).
Table 1

Descriptive statistics of serum levels of DHEAS (µmol/L) for each cohort.

Males
CohortAssayMean Age (Range)MeanSDMedianMinMaxRangen
RS1 Immunoassay69 (55–98)4.342.883.700.1023.0822.98 740
SHIP Immunoassay51 (20–79)1.901.211.640.318.908.591832
FHS Immunoassay51 (25–80)7.055.075.350.2729.8629.59 1571
GOOD MassSpec19 (18–20)6.312.336.041.2715.1013.83924
InCHIANTI Immunoassay67 (23–94)3.162.982.250.0233.0633.04 518
HABC Immunoassay74 (69–80)1.581.121.400.009.939.93696
n Total 6281
Each cohort performed GWA tests for log transformed DHEAS on ∼2.5 million imputed single nucleotide polymorphisms (SNPs) in men and women separately with adjustment for age, and additionally for age and sex for those cohorts who had data in both men and women. Then Z-scores from each cohort were pooled for the meta-analysis at each SNP. In all our individual GWAS, λGC, which is defined as the median χ2 (1 degree of freedom) association statistic across SNPs divided by its theoretical median under the null distribution [27], ranged from 0.984 to 1.023, indicating that there was no population stratification or it was very minor. Further, we corrected for population stratification by applying the genomic control method [27]; the λGC in the meta-analysis is 1.017. In addition, the effect direction was consistent across all the cohorts and there is no between-study heterogeneity as indicated by I2 ranging between 0 and 0.12 (Table 2).
Table 2

SNPs associated with serum DHEAS concentrations: genome-wide results of meta-analysis of men and women combined.

SNPChrPosition in base pairFreqEffect AlleleBeta (SE)* P valueI2 index Effect direction in each studyGeneDistance to the gene
Discovery meta-analysis
rs117615287989567370.08T−0.16 (0.01)3.15×10−36 0.12−−−−−−−− ZKSCAN5 intron
rs263712519530937050.15A−0.09(0.01)2.61×10−19 0.00−−−−−−−− SULT2A1 12 kb
rs718123015381480330.33G0.05(0.01)5.44×10−11 0.00++++++++ BMF 23 kb
rs249730610944751910.49C−0.04(0.01)4.64×10−9 0.00−−−−−−−− HHEX 25 kb
rs218557010967412600.13C−0.06(0.01)2.29×10−8 0.00−−−−−−−− CYP2C9 −2 kb
Conditional analysis
rs740160§ 7987958160.05T0.15 (0.02)1.56×10−16 0.02++++++++ ARPC1A intron
rs17277546§ 7993275070.05A−0.11 (0.02)4.50×10−11 0.00−−−−−−−− TRIM4;CYP3A43 3′UTR
rs6738028§ 21116657980.40G−0.04 (0.01)1.72×10−8 0.00−−−−−−−− BCL2L11 −62 kb

*Beta was expressed as natural log changes in serum DHEAS concentration in µmol/L per copy of the risk allele.

¶: index for between-study heterogeneity: 0.25 – low, 0.50 – moderate and 0.75 – high heterogeneity.

§: pre-conditional p values were 0.612, 1.90×10−26, and 1.94×10−7 for rs740160, rs17277546, and rs6738028, respectively.

*Beta was expressed as natural log changes in serum DHEAS concentration in µmol/L per copy of the risk allele. ¶: index for between-study heterogeneity: 0.25 – low, 0.50 – moderate and 0.75 – high heterogeneity. §: pre-conditional p values were 0.612, 1.90×10−26, and 1.94×10−7 for rs740160, rs17277546, and rs6738028, respectively. We found 44 SNPs were associated with serum DHEAS concentrations in men at conventional genome-wide significance (p<5×10−8), which are all located on chromosome 7q22.1 (Figure 1B; Table S1). All these SNPs except for three were significant in women (Figure 1A; Table S1). In addition, 19 SNPs located on chromosome 19q13.3 were found in women to be associated with serum DHEAS concentrations with p<5×10−8. In the sex-combined meta-analysis, the significance became stronger for all these SNPs (Figure 1C; Table S1). Further, we found 8 SNPs located on chromosome 10q23.33 which represents two regions more than 2 MB apart, 12 SNPs on chromosome 15q15.1, and in addition, 4 SNPs on chromosome 19q13.3 were associated with serum DHEAS concentrations with p<5×10−8. Together we found a total of 87 SNPs associated with serum DHEAS concentrations with p<5×10−8, representing five chromosomal regions of less than 1 Mb each (Table S1).
Figure 1

Manhattan plots for the genome-wide meta-analysis results.

Green dots indicate the SNPs with p<5×10−8.

Manhattan plots for the genome-wide meta-analysis results.

Green dots indicate the SNPs with p<5×10−8. The most significantly associated SNPs in each of these five regions are presented in Table 2. The minor allele of rs11761528 (p = 3.15×10−36) on chromosome 7q22.1, rs2637125 (p = 2.61×10−19) on chromosome 19q13.3, and rs2497306 (p = 4.6×10−9) and rs2185570 (p = 2.29×10−8) on chromosome 10q22.33 (more than 2 Mb apart), were negatively associated with DHEAS concentrations. In comparison, the minor allele of rs7181230 (p = 5.44×10−11) on chromosome 15q15.1 was positively associated with serum DHEAS concentrations. Based on the HapMap3 release2 CEU data, the significant 87 SNPs from within the five regions have low pair-wise r2, indicating potentially multiple independent signals. To verify this, we performed a conditional meta-analysis with adjustment for the five most significant SNPs plus age and sex in each cohort. After this adjustment, all other SNPs on chromosome 10, 15, and 19 became non-significant (Figure 1D). However, on chromosome 7, we found two independent signals; one defined by rs11761528 and a second located 370 kb upstream in the 3′ UTR of the TRIM4 and CYP3A43 genes (rs17277546, p = 4.50×10−11). Furthermore, we identified two additional significant loci associated with DHEAS, one on chromosome 2q13 (rs6738028, p = 1.72×10−8), and another on chromosome 7 within the ARPC1A gene (rs740160 located 161 kb downstream of rs11761528, p = 1.56×10−16) (Table 2; Figure 1D). In total, we found eight independent SNPs associated with serum DHEAS concentrations at conventional genome-wide significant level (p<5×10−8) (Table 2). The effect was consistently in the same direction across all cohorts (Table 2). No heterogeneity among cohorts was observed (Table 2). These SNPs together explained ∼4% of the total and ∼7% of genetic variance of serum DHEAS concentrations (based on TwinsUK data). To further look at whether the magnitude of these genetic association varies with age, we carried out an interaction analysis between age and each of these 8 SNPs on serum DHEAS concentrations by including an interaction term of age×SNP in the linear regression model in each cohort and then meta-analyzed the results. We found that there was no significant interaction between age and each of these SNPs (all p values≥0.05). The genes at, or near the identified SNPs, include BCL2L11 on chromosome 2, ZKSCAN5, ARPC1A, TRIM4 and CYP3A43 on chromosome 7, HHEX and CYP2C9 on chromosome 10, BMF on chromosome 15, and SULT2A1 on chromosome 19 (Figure 2). To explore the potentially functional impacts and likely genetic mechanisms, we used two resources: Genome-wide expression data from the Multiple Tissue Human Expression Resource (MuTHER) [28] (http://www.muther.ac.uk/) based on ∼777 unselected UK twins sampled for skin, adipose tissue, and lymphoblastoid cell lines (LCLs) (more details in Text S1); and published gene expression data in human liver [29]. We found that 3 DHEAS-associated SNPs were clearly associated with the related gene expression levels in at least one tissue after accounting for multiple testing (Table 3). These specific transcript associations provide further evidence for the likely functional gene at each locus.
Figure 2

Regional linkage disequilibrium plots.

For rs6738028 (A), rs740160 (B), rs11761528 (C), rs17277546 (D), rs2497306 (E), rs2185570 (F), rs7181230 (G), and rs2637125 (H). Note: p values from the conditional analysis were used for (a) and (b), both of them became genome-wide significant in the conditional analysis. Annotation key: ▴ - framestop or splice; ▾ - NonSynonymous; ▪ - Synonymous or UTR; •- nothing; *- TFBScons; -MCS44 Placental.

Table 3

Association between DHEAS-associated SNPs and related gene expression levels in different human tissues.

GeneChrSNP (effect allele)PositionLCL* (n = 777)Adipose tissue* (n = 776)Skin tissue* (n = 667)Liver tissue (n = 427)
Beta (SE)P valueBeta (SE)P valueBeta (SE)P valueP value
BCL2L11 2rs6738028 (G)1116657980.07 (0.02)0.00030.02 (0.005)0.001−0.00004 (0.005)0.99Not available
TRIM4 7rs17277546 (A)993275070.15 (0.04)0.00010.13(0.04)0.0020.10(0.04)0.01Not available
SULT2A1 19rs2637125 (A)/rs2547231** 530937050.0006 (0.007)0.93−0.009(0.007)0.190.02(0.007)0.012.16×10−11

*from MuTHER consortium and beta (SE) were from linear regression modelling; LCL – lymphoblastoid cell lines.

¶: from reference 27 and effect size was not reported.

**p value in liver expression is for rs2547231, data is not available for rs2637125, but two SNPs are in strong LD (r2 = 0.658).

Regional linkage disequilibrium plots.

For rs6738028 (A), rs740160 (B), rs11761528 (C), rs17277546 (D), rs2497306 (E), rs2185570 (F), rs7181230 (G), and rs2637125 (H). Note: p values from the conditional analysis were used for (a) and (b), both of them became genome-wide significant in the conditional analysis. Annotation key: ▴ - framestop or splice; ▾ - NonSynonymous; ▪ - Synonymous or UTR; •- nothing; *- TFBScons; -MCS44 Placental. *from MuTHER consortium and beta (SE) were from linear regression modelling; LCL – lymphoblastoid cell lines. ¶: from reference 27 and effect size was not reported. **p value in liver expression is for rs2547231, data is not available for rs2637125, but two SNPs are in strong LD (r2 = 0.658). Further, we carried out gene ontology and pathway analyses using a gene set enrichment analysis (GSEA) approach in MAGENTA [30] which consists of four main steps: First, DNA variants, e.g. SNP, are mapped onto genes. Second, each gene is assigned a gene association score that is a function of its regional SNP association p-values. Third, confounding effects on gene association scores are identified and corrected for, without requiring genotype data. Fourth, a GSEA-like statistical test is applied to predefined biologically relevant gene sets to determine whether any of the gene sets are enriched for highly ranked gene association scores compared to randomly sampled gene sets of identical size from the genome. More details of these four steps are described in the method section. In this analysis, we identified three pathways which passed our significance threshold (false discovery rate (FDR)<0.05); xenobiotic metabolism with FDR = 0.001 (pathway database: KEGG and Ingenuity), retinoid X receptor (RXR) function with FDR = 0.003 (pathway database: Ingenuity), and linoleic acid metabolism with FDR = 0.02 (pathway database: KEGG) (Figure S1). The top significant genes with p<5.0×10−8 include CYP3A4, CYP3A43, CYP3A5, and CYP3A7 on chromosome 7, and CYP2C8 and CYP2C9 on chromosome 10 for all three pathways, and SULT2A1 for RXR pathway. The best index SNPs are rs17277546 for CYP3A4 and CYP3A43, rs4646450 for CYP3A5 and CYP3A7, rs2185570 for CYP2C9, rs11572169 for CYP2C8, and rs2637125 for SULT2A1. The full list of the genes in each of the three pathways and the best index SNPs for each gene are listed in Table S2. Three SNPs – rs17277546, rs2185570, and rs2637125 are the DHEAS-associated SNPs found in our meta-analysis. Both rs4646450 and rs11572169 were associated with DHEAS with p values of 8.8×10−17 and 4.8×10−8, respectively, but become non-significant in the conditional meta-analysis because rs4646450 is in linkage disequilibrium (LD, r2 = 0.429) with rs11761528 which is the most significant DHEAS-associated SNP while rs11572169 is in high LD (r2 = 0.778) with rs2185570. Intriguingly, two pathways - xenobiotic metabolism and linoleic acid metabolism, have been linked to ageing in model organisms [31]–[36].

Discussion

This is the first meta-analysis of GWA studies on serum DHEAS in 14,846 Caucasian subjects. We found 8 common SNPs that implicate nearby genes that are independently associated with serum DHEAS concentrations and provide clues to its role in ageing. Among the genes identified, SULT2A1, a specialized sulpho-transferase which converts DHEA to DHEAS in the adrenal cortex, is an obvious candidate gene [3]. SULT2A1 has a broad substrate specificity, which includes conversion of pregnenolone, 17α-hydroxypregnenolone, and DHEA to their respective sulphated products [37]. Once sulphated by SULT2A1, pregnenolone and 17α-hydroxypregnenolone are no longer available as substrates for HSD3B2. Therefore, SULT2A1 sulphation of pregnenolone and 17α-hydroxypregnenolone removes these substrates from the mineralocorticoid and glucocorticoid biosynthetic pathways. This suggests that high levels of SULT2A1 would ensure the formation of DHEAS [3]. Variation in SULT2A1 expression has previously been associated with variation of DHEAS concentration [38]. The SULT2A1 gene is predominantly expressed in the adrenal cortex and to a lesser extent in the liver. We found that rs2547231 (p = 1.76×10−17), located 12 kb downstream of SULT2A1, was strongly associated with expression levels of SULT2A1 in human liver tissues. Although this SNP is not the most strongly associated with serum DHEAS, it is itself in strong LD with the most significant SNP rs2637125 (r2 = 0.658). However, we did not find a significant association with SULT2A1 expression levels in LCL, skin, and adipose tissues, suggesting a tissue specific effect. The SULT2B1b is also reported to play a role in sulphation of DHEA, but in comparison, the strongest signal from that genomic region was rs10417472 with a p = 0.06. In contrast, enzymatic removal of the sulphate group from DHEAS to form DHEA is performed by steroid sulphatase gene (STS), but that gene is on the X chromosome and so was not assessed in this meta-analysis. CYP2C9 is an important cytochrome P450 enzyme, accounts for approximately 17–20% of the total P450 content in human liver, and catalyzes many reactions involved in drug metabolism as well as synthesis of cholesterol, steroids and other lipids [39]. We found that rs2185570 located in the CYP2C9 gene region is associated with serum DHEAS concentrations. This SNP is in strong LD with rs4086116 and rs4917639 (r2 = 0.67 for both) which were found to be associated with acenocoumarol [40] and warfarin maintenance dosage [41] respectively in recent GWAS. Two other cytochrome P450 enzymes – CYP11A1 and CYP17A1, are two important enzymes which are required in the synthesis of DHEAS in the adrenal gland [3], however, the strongest signals in the genomic region were rs2930306 with p = 0.29 for CYP11A1 and rs4919686 with p = 0.04 for CYP17A1. The decline in serum DHEAS concentrations with increasing age has been proposed as a putative biomarker of ageing [21]. We found that two putative ageing genes – BCL2L11 and BMF [42] are associated with serum DHEAS concentrations. Both of them encode proteins which belong to the BCL2 family and act as anti- or pro-apoptotic regulators that are involved in a wide variety of cellular activities. BCL2L11 has been implicated in chronic lymphocytic leukaemia (rs17483466, P = 2.36×10−10) [43] and follicular lymphoma (rs3789068, P for trend = 0.0004) [44]. The DHEAS-associated SNP rs6738028 is not however one of the same SNPs associated with lymphocytic leukaemia and follicular lymphoma nor is it in LD with them. Nevertheless, rs6738028 is strongly associated with BCL2L11 gene expression levels in both LCL and adipose tissues, suggesting its putative regulatory role. There is relatively little data on the human BMF gene or the protein product, but Bmf −/− mice show altered immune and hematopoietic phenotypes as well as defects in uterovaginal development. However, we were not able to detect any association between rs7181230 and the expression levels of BMF in the tissues we studied. HHEX encodes a member of the homeobox family of transcription factors, many of which are involved in developmental processes. This gene has been found to be associated with type 2 diabetes by several recent GWAS [45]–[51]. The risk alleles of the diabetes-associated SNPs rs1111875 and rs5015480 are associated with low serum DHEAS concentrations although the p values (p = 0.0009 for both SNPs) didn't reach to the GWAS significance level. This is consistent with the observation in which the low serum DHEAS concentrations were associated with insulin resistance [6], [7]. The identified DHEAS-associated SNP rs2497306 is in moderate LD with rs1111875 and rs5015480 (r2 = 0.38). And the major allele of rs2497306 is associated with increasing serum DHEAS concentrations. The reason for the observed association is unknown. Studies showed that insulin infusion increases the metabolic clearance of DHEA and DHEAS [52], [53], resulting in decreased DHEA and DHEAS concentrations, and DHEA administration significantly enhances insulin sensitivity attenuating the age-related decline in glucose tolerance [54], partly explaining why the diabetes-associated gene is also associated with DHEAS. Interestingly, HHEX null mice show cardiovascular, endocrine, liver, muscle, nervous system, and metabolic phenotypes, suggesting extensive multisystem roles for the protein product of this gene. The findings could help dissect causal pathways for the observed associations between DHEAS, insulin resistance, age-related decline in glucose tolerance [54], and other age related phenotypes [55]. Three identified DHEAS-associated SNPs on chromosome 7 (Figure S2), which were independent, and 161 kb downstream (rs740160) and 370 kb upstream (rs17277546) apart from rs11761528 which is located in the middle of the region, are located in four genes - ZKSCAN5, ARPC1A, and TRIM4/CYP3A43. ZKSCAN5 encodes a zinc finger protein of the Kruppel family and is expressed ubiquitously in adult and fetal tissues with the strongest expression in testis [56]. rs11761528 is located in the intron of the ZKSCAN5 gene. It is the strongest signal we found and explains 1% of the total variance of serum DHEAS concentration alone. ARPC1A encodes one of seven subunits of the human Arp2/3 protein complex which has been implicated in actin polymerization and filament assembly in cells [57]. TRIM4 encodes a member of the tripartite motif (TRIM) family whereas CYP3A43 is another cytochrome P450 enzyme. The potential mechanisms for the association are unknown, but we found that rs17277546 is strongly associated with expression levels of TRIM4 not CYP3A43, suggesting TRIM4 is the possible candidate for DHEAS. However, rs17277546 is the best index SNP for both CYP3A43 and CYP3A4 genes in the pathway analysis, indicating a fine mapping in this region is needed to reveal the potential mechanism for the association. Further, the region harbours many other genes including CYP3A7 which has been reported to increase the clearance of DHEA and DHEAS [58] and a common haplotype polymorphism in the gene has been associated with DHEAS [59], [60]. However, none of the DHEAS-associated SNPs are associated with its expression levels in the tissues we studied, and the best index SNP rs4646450 for CYP3A7 found in our pathway analysis is in LD with rs11761528 and become non-significant in the conditional analysis. In the pathway analysis, two DHEAS-associated SNPs (rs2185570 and rs17277546) were contained in all three pathways we found and one SNP (rs2637125) was contained in the RXR function pathway. Intriguingly, components of the xenobiotic metabolism pathway have been linked to ageing in model organisms, for example, age-associated changes in expression of genes involved in xenobiotic metabolism have been identified in rats [31], [32], up-regulation of xenobiotic detoxification genes has been observed in long-lived mutant mice [33], and adrenal xenobiotic-metabolizing activities increase with ageing in guinea pigs [34]. Furthermore, linoleic acid metabolism has also been linked to changes with ageing in rat cardiac muscle [35] and in human skin fibroblasts [36]. Taken together, these findings suggest that molecular pathways involved in ageing and longevity may also underlie DHEAS regulation, suggesting shared genetic components in both processes and corroborating a role for DHEAS as a marker of biological ageing. In summary, this first GWAS identified eight independent SNPs associated with serum DHEAS concentrations. The related genes have various associations with steroid hormone metabolism, co-morbidities of ageing including type 2 diabetes, lymphoma, actin filament assembly, drug and xenobiotic metabolism, and zinc fingers - suggesting a wider functional role for DHEAS than previously thought.

Methods

Study population

Seven study samples contributed to this meta-analysis of GWA studies on serum DHEAS concentrations, comprising a total of 14,846 men and women of Caucasian origin. The consortium was made up of populations from TwinsUK (n = 4,906), Framingham Heart Study (FHS) (n = 3,183), SHIP (n = 1,832), Rotterdam Study (RS1) (n = 1,597), InCHIANTI (n = 1,182), Health ABC (n = 1,222), and GOOD (n = 924). Full details can be found in Text S1.

DHEAS methods

Blood samples were collected from each of the study participants either after overnight fasting or non-fasting and the serum levels of DHEAS were measured by either immunoassay or liquid chromatography tandem mass spectrometry (LC-MS/MS) methods (Text S1). Because the distribution of the serum DHEAS levels was skewed, we log transformed the concentrations and the transformed data used in the subsequent analysis.

Genotyping and imputation

Seven study populations were genotyped using a variety of genotyping platforms including Illumina (HumanHap 317k, 550k, 610k, 1M-Duo BeadChip) and Affymetrix (array 500K, 6.0). Each cohort followed a strict quality control on the genotyping data. More details on the quality control and filtering criteria can be found in Text S1. In order to increase genomic coverage and allow the evaluation of the same SNPs across as many study populations as possible, each study imputed genotype data based on the HapMap CEU Build 36. Algorithms were used to infer unobserved genotypes in a probabilistic manner in either MACH (http://www.sph.umich.edu/csg/abecasis/MACH), or IMPUTE [61]. We exclude non-genotyped SNPs with an imputation quality score <0.2 and SNPs with allele frequency <0.01 from meta-analysis.

Statistical method

Each study performed genome-wide association testing for serum concentrations of DHEAS across approximately 2.5 million SNPs under an additive genetic model separately in men and women (Text S1). The analyses were adjusted for age. In addition, the association testing was performed in the combined men and women data with adjustment for age and sex. Studies used PLINK, GenABEL, SNPTEST, QUICKTEST, or MERLIN for the association testing. The summary results from each cohort were meta-analyzed by Z-score pooling method implemented in Metal (http://www.sph.umich.edu/csg/abecasis/metal/). We chose this method to minimize the impact of the different assays used for serum DHEAS measurements. Specifically, for each study, we converted the two-sided P value after adjustment for population stratification by the genomic control method to a Z statistic that was signed to reflect the direction of the association given the reference allele. Each Z score was then weighted; the squared weights were chosen to sum to 1, and each sample-specific weight was proportional to the square root of the effective number of individuals in the sample. We summed the weighted Z statistics across studies and converted the summary Z score to a two-sided P value. We also used I2 index to assess between-study heterogeneity and the inverse variance weighted method to estimate the effect size. Genome-wide significance was defined as p<5×10−8. The association between the DHEAS-associated SNPs and the related gene expression levels in MuTHER data were examined by mixed linear regression modelling which takes both family structure and batch effects into account. The significance was defined as p<0.006 after accounting for multiple testing (Bonferroni method, correcting 9 independent tests).

Pathway analysis

Meta-Analysis Gene-set Enrichment of variaNT Associations (MAGENTA) was used to explore pathway-based associations in the full GWAS dataset. MAGENTA implements a gene set enrichment analysis (GSEA) based approach, the methodology of which is described in Segrè et al [30]. Briefly, each gene in the genome is mapped to a single index SNP with the lowest P-value within a 110 kb upstream, 40 kb downstream window. This P-value, representing a gene score, is then corrected for confounding factors such as gene size, SNP density and LD-related properties in a regression model. Genes within the HLA-region were excluded from analysis due to difficulties in accounting for gene density and LD patterns. Each mapped gene in the genome is then ranked by its adjusted gene score. At a given significance threshold (95th and 75th percentiles of all gene scores), the observed number of gene scores in a given pathway, with a ranked score above the specified threshold percentile, is calculated. This observed statistic is then compared to 1,000,000 randomly permuted pathways of identical size. This generates an empirical GSEA P-value for each pathway. Significance was determined when an individual pathway reached a false discovery rate (FDR)<0.05 in either analysis. In total, 2529 pathways from Gene Ontology, PANTHER, KEGG and Ingenuity were tested for enrichment of multiple modest associations with serum DHEAS levels.

Ethics statement

All studies were approved by local ethics committees and all participants provided written informed consent as stated in Text S1. Three pathways which were associated with DHEAS. The genes which are near the DHEAS-associated SNPs are highlighted by red circles. a. Xenobiotic metabolism pathway; b. Retinoid X receptor (RXR) function pathway; c. Linoleic acid metabolism pathway; d. Legends for the pathway figures. The pathway figures were made using MetaCore from GeneGo (http://www.genego.com/metacore.php). (TIF) Click here for additional data file. Regional linkage disequilibrium plots for three SNPs on chromosome 7 in one plot. (TIF) Click here for additional data file. 87 SNPs associated with DHEAS in men, women, and combined meta-analysis with p<5×10−8. (XLS) Click here for additional data file. Pathway analysis results – list of all pathways, significant pathways, and significant genes with the best index SNPs. (XLS) Click here for additional data file. Supplementary Note. (DOC) Click here for additional data file.
  61 in total

1.  Isolation, characterization, and mapping of a zinc finger gene, ZFP95, containing both a SCAN box and an alternatively spliced KRAB A domain.

Authors:  S D Dreyer; Q Zheng; B Zabel; A Winterpacht; B Lee
Journal:  Genomics       Date:  1999-11-15       Impact factor: 5.736

2.  Genomic control for association studies.

Authors:  B Devlin; K Roeder
Journal:  Biometrics       Date:  1999-12       Impact factor: 2.571

Review 3.  Concise review of the cytochrome P450s and their roles in toxicology.

Authors:  C J Omiecinski; R P Remmel; V P Hosagrahara
Journal:  Toxicol Sci       Date:  1999-04       Impact factor: 4.849

4.  [A relationship between dehydroepiandrosterone sulphate and insulin resistance in obese men and women].

Authors:  R Mottl; J Cerman
Journal:  Vnitr Lek       Date:  2004-12

5.  Maturational changes in CYP2D16 expression and xenobiotic metabolism in adrenal glands from male and female guinea pigs.

Authors:  B B Yuan; R Tchao; J M Voigt; H D Colby
Journal:  Drug Metab Dispos       Date:  2001-02       Impact factor: 3.922

6.  Developmental changes in steroidogenic enzymes in human postnatal adrenal cortex: immunohistochemical studies.

Authors:  T Suzuki; H Sasano; J Takeyama; C Kaneko; W A Freije; B R Carr; W E Rainey
Journal:  Clin Endocrinol (Oxf)       Date:  2000-12       Impact factor: 3.478

7.  A close association between insulin resistance and dehydroepiandrosterone sulfate in subjects with essential hypertension.

Authors:  M Suzuki; A Kanazawa; M Hasegawa; Y Hattori; Y Harano
Journal:  Endocr J       Date:  1999-08       Impact factor: 2.349

8.  Prospective measurements of dehydroepiandrosterone sulfate in a cohort of elderly subjects: relationship to gender, subjective health, smoking habits, and 10-year mortality.

Authors:  L Mazat; S Lafont; C Berr; B Debuire; J F Tessier; J F Dartigues; E E Baulieu
Journal:  Proc Natl Acad Sci U S A       Date:  2001-06-26       Impact factor: 11.205

9.  Linoleic acid metabolism in primary cultures of adult rat cardiomyocytes is impaired by aging.

Authors:  J A Lopez Jimenez; A Bordoni; A Lorenzini; C A Rossi; P L Biagi; S Hrelia
Journal:  Biochem Biophys Res Commun       Date:  1997-08-08       Impact factor: 3.575

10.  The architecture of gene regulatory variation across multiple human tissues: the MuTHER study.

Authors:  Alexandra C Nica; Leopold Parts; Daniel Glass; James Nisbet; Amy Barrett; Magdalena Sekowska; Mary Travers; Simon Potter; Elin Grundberg; Kerrin Small; Asa K Hedman; Veronique Bataille; Jordana Tzenova Bell; Gabriela Surdulescu; Antigone S Dimas; Catherine Ingle; Frank O Nestle; Paola di Meglio; Josine L Min; Alicja Wilk; Christopher J Hammond; Neelam Hassanali; Tsun-Po Yang; Stephen B Montgomery; Steve O'Rahilly; Cecilia M Lindgren; Krina T Zondervan; Nicole Soranzo; Inês Barroso; Richard Durbin; Kourosh Ahmadi; Panos Deloukas; Mark I McCarthy; Emmanouil T Dermitzakis; Timothy D Spector
Journal:  PLoS Genet       Date:  2011-02-03       Impact factor: 5.917

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  36 in total

1.  Genome-Wide Meta-Analyses of Breast, Ovarian, and Prostate Cancer Association Studies Identify Multiple New Susceptibility Loci Shared by at Least Two Cancer Types.

Authors:  Siddhartha P Kar; Jonathan Beesley; Ali Amin Al Olama; Kyriaki Michailidou; Jonathan Tyrer; ZSofia Kote-Jarai; Kate Lawrenson; Sara Lindstrom; Susan J Ramus; Deborah J Thompson; Adam S Kibel; Agnieszka Dansonka-Mieszkowska; Agnieszka Michael; Aida K Dieffenbach; Aleksandra Gentry-Maharaj; Alice S Whittemore; Alicja Wolk; Alvaro Monteiro; Ana Peixoto; Andrzej Kierzek; Angela Cox; Anja Rudolph; Anna Gonzalez-Neira; Anna H Wu; Annika Lindblom; Anthony Swerdlow; Argyrios Ziogas; Arif B Ekici; Barbara Burwinkel; Beth Y Karlan; Børge G Nordestgaard; Carl Blomqvist; Catherine Phelan; Catriona McLean; Celeste Leigh Pearce; Celine Vachon; Cezary Cybulski; Chavdar Slavov; Christa Stegmaier; Christiane Maier; Christine B Ambrosone; Claus K Høgdall; Craig C Teerlink; Daehee Kang; Daniel C Tessier; Daniel J Schaid; Daniel O Stram; Daniel W Cramer; David E Neal; Diana Eccles; Dieter Flesch-Janys; Digna R Velez Edwards; Dominika Wokozorczyk; Douglas A Levine; Drakoulis Yannoukakos; Elinor J Sawyer; Elisa V Bandera; Elizabeth M Poole; Ellen L Goode; Elza Khusnutdinova; Estrid Høgdall; Fengju Song; Fiona Bruinsma; Florian Heitz; Francesmary Modugno; Freddie C Hamdy; Fredrik Wiklund; Graham G Giles; Håkan Olsson; Hans Wildiers; Hans-Ulrich Ulmer; Hardev Pandha; Harvey A Risch; Hatef Darabi; Helga B Salvesen; Heli Nevanlinna; Henrik Gronberg; Hermann Brenner; Hiltrud Brauch; Hoda Anton-Culver; Honglin Song; Hui-Yi Lim; Iain McNeish; Ian Campbell; Ignace Vergote; Jacek Gronwald; Jan Lubiński; Janet L Stanford; Javier Benítez; Jennifer A Doherty; Jennifer B Permuth; Jenny Chang-Claude; Jenny L Donovan; Joe Dennis; Joellen M Schildkraut; Johanna Schleutker; John L Hopper; Jolanta Kupryjanczyk; Jong Y Park; Jonine Figueroa; Judith A Clements; Julia A Knight; Julian Peto; Julie M Cunningham; Julio Pow-Sang; Jyotsna Batra; Kamila Czene; Karen H Lu; Kathleen Herkommer; Kay-Tee Khaw; Keitaro Matsuo; Kenneth Muir; Kenneth Offitt; Kexin Chen; Kirsten B Moysich; Kristiina Aittomäki; Kunle Odunsi; Lambertus A Kiemeney; Leon F A G Massuger; Liesel M Fitzgerald; Linda S Cook; Lisa Cannon-Albright; Maartje J Hooning; Malcolm C Pike; Manjeet K Bolla; Manuel Luedeke; Manuel R Teixeira; Marc T Goodman; Marjanka K Schmidt; Marjorie Riggan; Markus Aly; Mary Anne Rossing; Matthias W Beckmann; Matthieu Moisse; Maureen Sanderson; Melissa C Southey; Michael Jones; Michael Lush; Michelle A T Hildebrandt; Ming-Feng Hou; Minouk J Schoemaker; Montserrat Garcia-Closas; Natalia Bogdanova; Nazneen Rahman; Nhu D Le; Nick Orr; Nicolas Wentzensen; Nora Pashayan; Paolo Peterlongo; Pascal Guénel; Paul Brennan; Paula Paulo; Penelope M Webb; Per Broberg; Peter A Fasching; Peter Devilee; Qin Wang; Qiuyin Cai; Qiyuan Li; Radka Kaneva; Ralf Butzow; Reidun Kristin Kopperud; Rita K Schmutzler; Robert A Stephenson; Robert J MacInnis; Robert N Hoover; Robert Winqvist; Roberta Ness; Roger L Milne; Ruth C Travis; Sara Benlloch; Sara H Olson; Shannon K McDonnell; Shelley S Tworoger; Sofia Maia; Sonja Berndt; Soo Chin Lee; Soo-Hwang Teo; Stephen N Thibodeau; Stig E Bojesen; Susan M Gapstur; Susanne Krüger Kjær; Tanja Pejovic; Teuvo L J Tammela; Thilo Dörk; Thomas Brüning; Tiina Wahlfors; Tim J Key; Todd L Edwards; Usha Menon; Ute Hamann; Vanio Mitev; Veli-Matti Kosma; Veronica Wendy Setiawan; Vessela Kristensen; Volker Arndt; Walther Vogel; Wei Zheng; Weiva Sieh; William J Blot; Wojciech Kluzniak; Xiao-Ou Shu; Yu-Tang Gao; Fredrick Schumacher; Matthew L Freedman; Andrew Berchuck; Alison M Dunning; Jacques Simard; Christopher A Haiman; Amanda Spurdle; Thomas A Sellers; David J Hunter; Brian E Henderson; Peter Kraft; Stephen J Chanock; Fergus J Couch; Per Hall; Simon A Gayther; Douglas F Easton; Georgia Chenevix-Trench; Rosalind Eeles; Paul D P Pharoah; Diether Lambrechts
Journal:  Cancer Discov       Date:  2016-07-17       Impact factor: 39.397

2.  Contribution of Genetic Factors to Lower DHEAS in Patients with Rheumatoid Arthritis.

Authors:  Lucia Vernerova; Martina Mravcova; Lucia Paulikova; Miroslav Vlcek; Andrea Marko; Milada Meskova; Adela Penesova; Jozef Rovensky; Juraj Wendl; Katarina Raslova; Branislav Vohnout; Ivana Jochmanova; Ivica Lazurova; Zdenko Killinger; Guenter Steiner; Josef Smolen; Richard Imrich
Journal:  Cell Mol Neurobiol       Date:  2017-07-15       Impact factor: 5.046

3.  Human metabolic individuality in biomedical and pharmaceutical research.

Authors:  So-Youn Shin; Ann-Kristin Petersen; Nicole Soranzo; Christian Gieger; Karsten Suhre; Robert P Mohney; David Meredith; Brigitte Wägele; Elisabeth Altmaier; Panos Deloukas; Jeanette Erdmann; Elin Grundberg; Christopher J Hammond; Martin Hrabé de Angelis; Gabi Kastenmüller; Anna Köttgen; Florian Kronenberg; Massimo Mangino; Christa Meisinger; Thomas Meitinger; Hans-Werner Mewes; Michael V Milburn; Cornelia Prehn; Johannes Raffler; Janina S Ried; Werner Römisch-Margl; Nilesh J Samani; Kerrin S Small; H-Erich Wichmann; Guangju Zhai; Thomas Illig; Tim D Spector; Jerzy Adamski
Journal:  Nature       Date:  2011-08-31       Impact factor: 49.962

Review 4.  Genetic variation in metabolic phenotypes: study designs and applications.

Authors:  Karsten Suhre; Christian Gieger
Journal:  Nat Rev Genet       Date:  2012-10-03       Impact factor: 53.242

5.  The Rotterdam Study: 2018 update on objectives, design and main results.

Authors:  M Arfan Ikram; Guy G O Brusselle; Sarwa Darwish Murad; Cornelia M van Duijn; Oscar H Franco; André Goedegebure; Caroline C W Klaver; Tamar E C Nijsten; Robin P Peeters; Bruno H Stricker; Henning Tiemeier; André G Uitterlinden; Meike W Vernooij; Albert Hofman
Journal:  Eur J Epidemiol       Date:  2017-10-24       Impact factor: 8.082

Review 6.  Genetics of androgen metabolism in women with infertility and hypoandrogenism.

Authors:  Aya Shohat-Tal; Aritro Sen; David H Barad; Vitaly Kushnir; Norbert Gleicher
Journal:  Nat Rev Endocrinol       Date:  2015-05-05       Impact factor: 43.330

7.  Genetic Variation in Steroid and Xenobiotic Metabolizing Pathways and Enterolactone Excretion Before and After Flaxseed Intervention in African American and European American Women.

Authors:  Huiru Chang; Song Yao; David Tritchler; Meredith A Hullar; Johanna W Lampe; Lilian U Thompson; Susan E McCann
Journal:  Cancer Epidemiol Biomarkers Prev       Date:  2019-02       Impact factor: 4.254

8.  Four Susceptibility Loci for Gallstone Disease Identified in a Meta-analysis of Genome-Wide Association Studies.

Authors:  Amit D Joshi; Charlotte Andersson; Stephan Buch; Stefan Stender; Raymond Noordam; Lu-Chen Weng; Peter E Weeke; Paul L Auer; Bernhard Boehm; Constance Chen; Hyon Choi; Gary Curhan; Joshua C Denny; Immaculata De Vivo; John D Eicher; David Ellinghaus; Aaron R Folsom; Charles Fuchs; Manish Gala; Jeffrey Haessler; Albert Hofman; Frank Hu; David J Hunter; Harry L A Janssen; Jae H Kang; Charles Kooperberg; Peter Kraft; Wolfgang Kratzer; Wolfgang Lieb; Pamela L Lutsey; Sarwa Darwish Murad; Børge G Nordestgaard; Louis R Pasquale; Alex P Reiner; Paul M Ridker; Eric Rimm; Lynda M Rose; Christian M Shaffer; Clemens Schafmayer; Rulla M Tamimi; André G Uitterlinden; Uwe Völker; Henry Völzke; Yoshiyuki Wakabayashi; Janey L Wiggs; Jun Zhu; Dan M Roden; Bruno H Stricker; Weihong Tang; Alexander Teumer; Jochen Hampe; Anne Tybjærg-Hansen; Daniel I Chasman; Andrew T Chan; Andrew D Johnson
Journal:  Gastroenterology       Date:  2016-04-16       Impact factor: 22.682

9.  Joint study of two genome-wide association meta-analyses identified 20p12.1 and 20q13.33 for bone mineral density.

Authors:  Yu-Fang Pei; Wen-Zhu Hu; Min-Wei Yan; Chang-Wei Li; Lu Liu; Xiao-Lin Yang; Rong Hai; Xiu-Yan Wang; Hui Shen; Qing Tian; Hong-Wen Deng; Lei Zhang
Journal:  Bone       Date:  2018-02-28       Impact factor: 4.398

10.  Life-Course Genome-wide Association Study Meta-analysis of Total Body BMD and Assessment of Age-Specific Effects.

Authors:  Carolina Medina-Gomez; John P Kemp; Katerina Trajanoska; Jian'an Luan; Alessandra Chesi; Tarunveer S Ahluwalia; Dennis O Mook-Kanamori; Annelies Ham; Fernando P Hartwig; Daniel S Evans; Raimo Joro; Ivana Nedeljkovic; Hou-Feng Zheng; Kun Zhu; Mustafa Atalay; Ching-Ti Liu; Maria Nethander; Linda Broer; Gudmar Porleifsson; Benjamin H Mullin; Samuel K Handelman; Mike A Nalls; Leon E Jessen; Denise H M Heppe; J Brent Richards; Carol Wang; Bo Chawes; Katharina E Schraut; Najaf Amin; Nick Wareham; David Karasik; Nathalie Van der Velde; M Arfan Ikram; Babette S Zemel; Yanhua Zhou; Christian J Carlsson; Yongmei Liu; Fiona E McGuigan; Cindy G Boer; Klaus Bønnelykke; Stuart H Ralston; John A Robbins; John P Walsh; M Carola Zillikens; Claudia Langenberg; Ruifang Li-Gao; Frances M K Williams; Tamara B Harris; Kristina Akesson; Rebecca D Jackson; Gunnar Sigurdsson; Martin den Heijer; Bram C J van der Eerden; Jeroen van de Peppel; Timothy D Spector; Craig Pennell; Bernardo L Horta; Janine F Felix; Jing Hua Zhao; Scott G Wilson; Renée de Mutsert; Hans Bisgaard; Unnur Styrkársdóttir; Vincent W Jaddoe; Eric Orwoll; Timo A Lakka; Robert Scott; Struan F A Grant; Mattias Lorentzon; Cornelia M van Duijn; James F Wilson; Kari Stefansson; Bruce M Psaty; Douglas P Kiel; Claes Ohlsson; Evangelia Ntzani; Andre J van Wijnen; Vincenzo Forgetta; Mohsen Ghanbari; John G Logan; Graham R Williams; J H Duncan Bassett; Peter I Croucher; Evangelos Evangelou; Andre G Uitterlinden; Cheryl L Ackert-Bicknell; Jonathan H Tobias; David M Evans; Fernando Rivadeneira
Journal:  Am J Hum Genet       Date:  2018-01-04       Impact factor: 11.025

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