Diabetes 57:2527-2533, 2008 DOI: 10.2337/db08-0422 © 2008 by the American Diabetes Association
Evaluating the Role of LPIN1 Variation in Insulin Resistance, Body Weight, and Human Lipodystrophy in U.K. Populations
1 Metabolic Disease Group, Wellcome Trust Sanger Institute, Wellcome Trust Genome Campus, Hinxton, Cambridgeshire, U.K Corresponding author: Inês Barroso, ib1{at}sanger.ac.uk
OBJECTIVE— Loss of lipin 1 activity causes lipodystrophy and insulin resistance in the fld mouse, and LPIN1 expression and common genetic variation were recently suggested to influence adiposity and insulin sensitivity in humans. We aimed to conduct a comprehensive association study to clarify the influence of common LPIN1 variation on adiposity and insulin sensitivity in U.K. populations and to examine the role of LPIN1 mutations in insulin resistance syndromes. RESEARCH DESIGN AND METHOD— Twenty-two single nucleotide polymorphisms tagging common LPIN1 variation were genotyped in Medical Research Council (MRC) Ely (n = 1,709) and Hertfordshire (n = 2,901) population-based cohorts. LPIN1 exons, exon/intron boundaries, and 3' untranslated region were sequenced in 158 patients with idiopathic severe insulin resistance (including 23 lipodystrophic patients) and 48 control subjects. RESULTS— We found no association between LPIN1 single nucleotide polymorphisms and fasting insulin but report a nominal association between rs13412852 and BMI (P = 0.042) in a meta-analysis of 8,504 samples from in-house and publicly available studies. Three rare nonsynonymous variants (A353T, R552K, and G582R) were detected in severely insulin-resistant patients. However, these did not cosegregate with disease in affected families, and Lipin1 protein expression and phosphorylation in patients with variants were indistinguishable from those in control subjects. CONCLUSIONS— Our data do not support a major effect of common LPIN1 variation on metabolic traits and suggest that mutations in LPIN1 are not a common cause of lipodystrophy in humans. The nominal associations with BMI and other metabolic traits in U.K. cohorts require replication in larger cohorts. Lipin 1, a multifunctional protein highly expressed in mouse and human adipose tissue, has been shown to influence adipose tissue development and function. Null mutations in the murine lipin 1 gene (Lpin1) result in impaired adipocyte differentiation leading to a severe reduction in adipose tissue mass, insulin resistance, and progressive peripheral neuropathy in the fld and fld2J mouse models (1). In contrast, transgenic mice with adipose tissue–specific overexpression of Lpin1 exhibit diet-induced obesity and enhanced insulin sensitivity compared with those seen in wild-type littermates (2). In humans, LPIN1 expression in adipose tissue appears to be inversely correlated with measures of adiposity such as BMI and positively correlated with insulin sensitivity (3–6).
The mechanism through which lipin 1 influences adiposity and insulin sensitivity in mice and humans is not entirely known. However, recent data indicate that lipin 1 is a magnesium-dependent phospatidate phosphatase responsible for catalyzing the penultimate step in triacylglyceride synthesis, explaining why Lpin1-deficient fld mice cannot accumulate fat in mature adipocytes (7). Lipin 1 is also thought to regulate transcription of genes involved in adipocyte differentiation (PPAR There has only been one study sequencing LPIN1 in lipodystrophic patients (n = 15), with no pathogenic mutation reported (11). Furthermore, although a number of studies have evaluated the role of common variation in LPIN1 and metabolic quantitative phenotypes (12–14), the results have been inconsistent across studies and sometimes within the same study. For example, rs2716610 and a SNP in high linkage disequilibrium, rs2716609, were associated with BMI in a Finnish obesity case-control study and in the Quebec Family Study (12,14) but not in a German population-based cohort (the the MONItoring of trends and determinants in CArdiovascular disease [MONICA] study) (13). Moreover, LPIN1 haplotypes were strongly associated with traits underlying the metabolic syndrome in the MONICA study, but these haplotypes often had the opposite effect on the same traits in a replication cohort (13). This inconsistency suggests that further studies are needed to clarify the role of LPIN1 variation on human metabolic traits. In this study, we have taken complementary approaches to study the role of LPIN1 variation in human metabolic traits in U.K. populations: 1) we genotyped 22 SNPs that tag common LPIN1 variation (minor allele frequency >0.01) in two white U.K. population-based cohorts (n = 4,610) and tested for association with fasting serum insulin levels, BMI, and a number of additional metabolic traits with previously reported association with LPIN1, and 2) we sequenced LPIN1 in a cohort of patients with syndromes of severe insulin resistance (n = 135) and lipodystrophy (n = 23) to identify potentially pathogenic mutations.
Definition of cohorts ELY cohort. The MRC Ely Study is a population-based cohort study of the etiology and pathogenesis of type 2 diabetes and related metabolic disorders in the U.K. (15). The subject population is comprised of white men and women aged 35–79 years without diagnosed diabetes. Measurements of anthropometric and metabolic data analyzed in this study have previously been described (16). Informed consent was obtained from all participants, and ethical approval for the study was granted by the Cambridge Local Research Ethics Committee.
Hertfordshire cohort.
European Prospective Investigation into Cancer and Nutrition–Obesity study.
Human genome diversity cell line panel and Centre d'Etude du Polymorphisme Humain.
Severe insulin resistance cohort.
Selection of single nucleotide polymorphisms to common tag LPIN1 variation.
Genotyping.
Statistical analysis.
PCR and sequencing.
Western blotting.
Indirect immunofluorescence by confocal microscopy.
Association studies of LPIN1 tag SNPs. Twenty-one LPIN1 tag SNPs were successfully genotyped in two white U.K. population–based cohorts: the MRC Ely study (n = 1,709) and the Hertfordshire cohort study (n = 2,901). In the MRC Ely cohort, the minor allele of rs13412852 is nominally associated with lower fasting insulin levels (P = 0.041) and the minor allele of rs17603350 is nominally associated with higher BMI (P = 0.031), but these associations are not replicated in the Hertfordshire cohort (Table 1). Conversely, in the Hertfordshire cohort, and not in the MRC Ely cohort, rs17603420 and rs2577261 are nominally associated with BMI (P = 0.01 and P = 0.006, respectively) (Table 1). In a joint analysis of the pooled Ely and Hertfordshire cohorts (supplementary Table 3), no SNPs were associated with fasting insulin levels, but rs13412852, rs17603420 and rs2577261 were nominally associated with BMI (P 0.05). Two of these SNPs, rs13412852 and rs2577261, overlapped with SNPs on the Affymetrix 500k and Illumina 300k SNP chips, and rs17603420 could be imputed. Consequently, we were able to increase the power of our study to detect modest effects of these SNPs on BMI by performing meta-analyses with in-house data (EPIC-Obesity study; n = 2,415) and, in the case of rs13412852 and rs2577261, with data deposited by the Wellcome Trust Case Control Consortium and the Wellcome Trust Sanger Institute and published online from the British 1958 DNA collection (n = 1,479) (http://www.b58cgene.sgul.ac.uk/, accessed January 2008). SNPs rs2577261 and rs17603420 were not associated with BMI in the meta-analysis (P = 0.114 and 0.071, respectively). However, the association between rs13412852 and BMI remained marginally statistically significant (P = 0.042) in the meta-analysis (Fig. 1).
In analyses of pooled Ely and Hertfordshire cohorts, a number of nominal associations (P < 0.05) were detected between LPIN1 tag SNPs and traits previously reported to be associated with LPIN1 variation (13). These data are presented in supplementary Tables 4 and 5. For SNPs overlapping with the Affymetrix 500k SNP chip, meta-analyses were performed on continuous traits with publicly available data from the Broad Institute (http://www.broad.mit.edu/diabetes/scandinavs/metatraits.html) (supplementary Table 4). For rs2577256, meta-analysis was performed with publicly available Wellcome Trust Case Control Consortium data to test for association with diabetes and hypertension (supplementary Table 5).
Mutation screening in the severe insulin resistance cohort.
A353T was detected in a female patient with a Pakistani father and British white mother. She presented with clinical features of severe insulin resistance at 8 years old, which worsened with weight gain in the second decade, before improving dramatically with weight loss in adult life. She had no evidence of lipodystrophy. A353T was predicted to have no functional impact on the lipin 1 protein by PANTHER. DNA from the patient's mother, maternal aunts, and maternal grandparents was sequenced and demonstrated that the A353T variant did not segregate with the hallmarks of insulin resistance in the family (Fig. 3A). A353T was also genotyped in 1,064 participants of the HGDP-CEPH Human Genome Diversity Cell Line Panel (referred to below as the diversity panel) but was not detected.
R552K was detected in two unrelated white European female subjects but not in 1,064 control subjects from the diversity panel. The first proband presented with severe insulin resistance and femorogluteal lipodystrophy at 15 years old. The lipodystrophy progressed to become generalized in conjunction with the appearance of aggressive hemolytic anemia and autoimmune liver disease. Liver failure led to her death at 24 years old. The other proband was diagnosed with insulin-resistant diabetes at 32 years old and subsequently required in excess of 4 units/day exogenous insulin to maintain satisfactory glycemic control. She had no clinical evidence of lipodystrophy, and her BMI was sustained above 30 kg/m2. R552 is within a highly conserved tract (Fig. 2B), and mutation to lysine is predicted by PANTHER to have deleterious effects on lipin 1 function. Family DNA was not available for cosegregation analysis for either patient. G582R was identified in a white European male with a complex syndrome. This included severe insulin resistance and severe early-onset sensorimotor neuropathy that confined him to a wheelchair, a combination reminiscent of lipodystrophy/insulin resistance and neuropathy in the fld mouse. This patient also underwent allogeneic bone marrow transplantation in childhood for acute lymphoblastic leukemia and had a cerebral cavernous hemangioma. All genomic analyses were undertaken on DNA extracted from cultured skin fibroblasts. G582 is a well-conserved residue within the protein (Fig. 2B), and mutation to arginine is predicted by PANTHER to have deleterious effects on lipin 1 function. Cosegregation analysis was performed using DNA from first-degree relatives of the patient (Fig. 3B). The father also carried the variant, but although he was diagnosed with diabetes at age 69 years, he had no peripheral neuropathy or clinical or biochemical evidence of insulin resistance/lipodystrophy. Subsequently, the G582R variant was genotyped in the Diversity Panel and detected in a Bedouin control subject from Nedev, Israel. In summary, we identified three rare LPIN1 missense variants in a cohort of insulin-resistant patients. G582R and R552K are predicted to be deleterious by PANTHER, and the proband carrying the G582R variant had a syndrome reminiscent of the fld mouse. Thus, despite the failure of this variant to cosegregate with disease in the kindred, and despite the absence of available family members from the R552K kindred, we elected to investigate the possibility of impaired lipin 1 function in primary skin fibroblasts from the probands. As A353T was predicted to be benign, it did not segregate with disease in the family, and as no fibroblasts were available, this variant was not investigated further.
Assessing the functional impact of LPIN1 mutations.
In this study, we performed a comprehensive analysis of LPIN1 variants and their effects on metabolic quantitative traits and syndromes of insulin resistance (including lipodystrophy). Analysis of LPIN1 common variation (MAF >0.01) in two U.K. population-based cohorts (n = 4,610) revealed nominal significant associations with BMI, and rs13412582 remained marginally associated with BMI (P = 0.042) in a meta-analysis of U.K. population-based samples from in-house and publicly available genome-wide studies (n = 8,504). We also detected nominal associations between our tag SNPs and metabolic traits previously reported to be associated with LPIN1 variation (13). Sequencing of 23 patients with lipodystrophy and 135 patients with syndromes of insulin resistance revealed that mutations in LPIN1 are not a common cause of these diseases in humans. To our knowledge, neither rs13412582 nor any highly correlated SNPs have been tested in other association studies published to date. Further replication in larger cohorts will be required to confirm the association between rs13412582 and BMI. Seven of our 21 tag SNPs were directly genotyped in at least one of the other association studies (12–14). No analyses, including our own, found an association between rs4669781, rs1050800, and rs2577256 and insulin levels and measures of adiposity. Results for the other four SNPs are inconsistent between studies. For example, rs2716610 was associated with BMI in lean Finnish men (12) and with quantitative measures of adiposity in French-Canadian families in the Quebec Family Study (14). Here, the highly correlated SNP rs2716609 (r2 = 1.0 in HapMap trios) was associated with skinfolds and waist circumference, and BMI showed the same trend. Given our sample size of 4,130 individuals with full rs2716609 genotype and BMI data, we had >80% power to detect the effect size observed in the Quebec Family study. Nevertheless, we did not replicate the association between rs2716609 and BMI or waist circumference in the Ely and Hertfordshire cohorts (Table 1). Our results agree with the MONICA study Augsburg (n = 1,416), a German population–based cohort, which found no association between rs2716610 and BMI in men or women (13). Two other SNPs, rs893346 and rs2577262, were associated with BMI in lean Finnish men (12) but showed no statistical association with BMI in 1,873 lean men from the Ely and Hertfordshire cohort studies (P = 0.631 and 0.253, respectively). Similarly, rs2278513 and rs2577262 were associated with BMI in obese Finnish men but not in obese men from the U.K. (P = 0.780 and 0.676, respectively). Our data agree with the results of the MONICA study, which showed no association of rs893346 and two SNPs highly correlated with rs2577262 in HapMap CEU trios (r2 = 1.0 and 0.96 for rs6744682 and rs6708316, respectively) with BMI in men (13). The MONICA study reported strong associations between haplotypes of rs33997857, rs6744682, and rs6708316 with hypertension-, obesity-, or diabetes-related traits (13). Several of the traits were also statistically associated with the same haplotypes in a replication study, but the effect was always in the opposite direction compared with the original cohort. To attempt replication of the MONICA study data, we tested haplotypes of rs33997857 and rs2577262 (highly correlated with rs6744682 [r2 = 1.0] and rs6708316 [r2 = 0.96] in HapMap CEU trios) against metabolic traits in the Ely and Hertfordshire cohorts but only found nominal associations with hypertension (supplementary Table 6). We did detect a number of nominal associations between these traits and other SNPs in our study (supplementary Tables 4 and 5). However, none of these reached statistical significance after adjustment of the P value threshold for multiple testing using the Bonferroni correction, and all require further replication. There are several possible reasons why we could not replicate previously reported associations between LPIN1 variants and metabolic quantitative traits. Firstly, we may have reported false-negative results. However, where effect sizes were reported in previously published studies, we were able to calculate that our study had >80% power to detect them. Secondly, previous studies might have reported false-positive results. In particular, as a consequence of multiple testing, detection of false-positive associations becomes more likely when analyses are performed in subsets of samples and on many traits. Furthermore, one has to expect false-positive findings among previously reported disease associations given the low prior probability of detecting a true association with a complex trait (25). Alternatively, the discrepancy in results between studies may be due to genetic and/or environmental differences between the populations genotyped. For example, the degree of linkage disequilibrium between LPIN1 tag SNPs and the putative unmeasured true functional variant(s) may vary between the cohorts. Also, LPIN1 SNPs may interact with other genetic and/or environmental risk factors in different studies. In the fld mouse model, Lpin1-null mutations cause lipodystrophy, insulin resistance, and peripheral neuropathy (1). However, of the three rare (MAF <0.01) nonsynonymous LPIN1 variants detected within our cohort of patients with syndromes of severe insulin resistance, none are likely to be pathogenic in isolation in heterozygous form; family cosegregation analysis showed that A353T and G582R did not segregate with disease in a fully penetrant manner, and G582R was also detected in one Bedouin control. Western blotting of patient fibroblasts showed that G582R and R552K had no discernable impact on lipin 1 protein levels. Proteins orthologous to lipin 1 in yeast are proposed to be involved in nuclear membrane growth and morphology (26–28). However, staining of a nuclear pore marker in patient fibroblasts with R552K and G582R variants revealed no abnormalities in membrane morphology compared with control fibroblasts. To date, our study and a previously published work (11), including 23 and 15 patients with lipodystophy screened, respectively, have demonstrated that LPIN1 coding mutations are unlikely to be a common cause of human lipodystrophy. However, we cannot rule out the possibility that LPIN1 mutations interact with other genetic defects to cause disease or that they are rarer causes of these disorders. The methods used to screen for mutations would not have detected copy number variations affecting large regions or mutations affecting regulatory regions; therefore, we cannot exclude these types of LPIN1 variations as causes of human lipodystrophy and insulin resistance. Furthermore, the in vitro assays used to assess the functional impact of LPIN1 nonsynonymous variants might have missed some functional effects, such as phosphatidic acid phosphatase activity. We conclude that LPIN1 coding variants are not a common cause of lipodystrophy and severe insulin resistance in humans and that polymorphisms in LPIN1 are unlikely to importantly contribute to insulin sensitivity and waist circumference in U.K. populations. Nominal associations between LPIN1 variants and BMI, blood pressure, cholesterol, triglycerides, A1C, and risk of hypertension need replicating in larger cohorts.
We acknowledge use of genotype data from the British 1958 Birth Cohort DNA collection, funded by Medical Research Council Grant G0000934 and Wellcome Trust Grant 068545/Z/02. We also acknowledge use of genotype data from the Wellcome Trust Case Control Consortium and the Diabetes Genetics Initiative. K.F., E.W., A.D., and I.B. are funded by the Wellcome Trust. I.B. and E.W. also acknowledge support from EU FP6 funding (contract no. LSHM-CT-2003-503041). N.G. and S.S. are supported by a Wellcome Trust Career development fellowship. R.S., M.S., and S.O. are grateful for the support of the Wellcome Trust (Intermediate Clinical Fellowship 080952/Z/06/Z and Programme Grant 078986/Z/06/Z to R.S.) and the U.K. National Institute for Health Research Cambridge Biomedical Research Centre. We thank Susannah Bumpstead and Andrew Keniry, members of the genotyping facility within the Genetics of Complex Traits in Humans team at the Wellcome Trust Sanger Institute, for genotyping LPIN1 variants in the Ely and Hertfordshire cohorts and the HGDP CEPH panel.
Published ahead of print at http://diabetes.diabetesjournals.org on 30 June 2008. Readers may use this article as long as the work is properly cited, the use is educational and not for profit, and the work is not altered. See http://creativecommons.org/licenses/by-nc-nd/3.0/ for details. The costs of publication of this article were defrayed in part by the payment of page charges. This article must therefore be hereby marked "advertisement" in accordance with 18 U.S.C. Section 1734 solely to indicate this fact. Received for publication March 27, 2008 and accepted in revised form June 17, 2008
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