Literature DB >> 26290879

Association Analysis of Genetic Variants with Type 2 Diabetes in a Mongolian Population in China.

Haihua Bai1, Haiping Liu1, Suyalatu Suyalatu1, Xiaosen Guo2, Shandan Chu1, Ying Chen3, Tianming Lan3, Burenbatu Borjigin1, Yuriy L Orlov4, Olga L Posukh4, Xiuqin Yang5, Guilan Guilan1, Ludmila P Osipova6, Qizhu Wu1, Narisu Narisu7.   

Abstract

The large scale genome wide association studies (GWAS) have identified approximately 80 single nucleotide polymorphisms (SNPs) conferring susceptibility to type 2 diabetes (T2D). However, most of these loci have not been replicated in diverse populations and much genetic heterogeneity has been observed across ethnic groups. We tested 28 SNPs previously found to be associated with T2D by GWAS in a Mongolian sample of Northern China (497 diagnosed with T2D and 469 controls) for association with T2D and diabetes related quantitative traits. We replicated T2D association of 11 SNPs, namely, rs7578326 (IRS1), rs1531343 (HMGA2), rs8042680 (PRC1), rs7578597 (THADA), rs1333051 (CDKN2), rs6723108 (TMEM163), rs163182 and rs2237897 (KCNQ1), rs1387153 (MTNR1B), rs243021 (BCL11A), and rs10229583 (PAX4) in our sample. Further, we showed that risk allele of the strongest T2D associated SNP in our sample, rs757832 (IRS1), is associated with increased level of TG. We observed substantial difference of T2D risk allele frequency between the Mongolian sample and the 1000G Caucasian sample for a few SNPs, including rs6723108 (TMEM163) whose risk allele reaches near fixation in the Mongolian sample. Further study of genetic architecture of these variants in susceptibility of T2D is needed to understand the role of these variants in heterogeneous populations.

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Year:  2015        PMID: 26290879      PMCID: PMC4531200          DOI: 10.1155/2015/613236

Source DB:  PubMed          Journal:  J Diabetes Res            Impact factor:   4.011


1. Introduction

Type 2 diabetes (T2D) is a complex disease characterized by insulin resistance and pancreatic beta-cell dysfunction. In China, 9.7% and 15.5% of the entire population suffer from T2D and prediabetes, respectively [1]. Given recent advances in genotyping and sequencing technology, the GWAS have contributed significantly to the identification of susceptibility loci for T2D and many other complex disorders. At least 80 loci conferring susceptibility to T2D have been identified to date [2, 3] (http://www.genome.gov/gwastudies/) and the genetic architecture underlying T2D varies substantially between populations of different ethnic backgrounds [4, 5]. Studying genetics of T2D in multiethnic cohorts has been insightful for fine-mapping casual variants and identifying new loci [6], demonstrating the use of investigating common variants in different ethnic samples. There are 10 million Mongolians currently living in various regions of Asia [7]. To our knowledge, there is only one T2D association study conducted in a Mongolian sample, which replicated association of variants in KCNQ1 and ABCC8 with T2D [8]. However, the small-sized study (177 cases and 216 controls) has low power to detect variants with smaller effect. The prevalence of T2D in Mongolians in China has grown among the adult urban population from 1.86% in 1980 to 5.6% in 2012 [9-11]. In our study, we aim to explore genetic risks of 34 T2D SNPs previously reported by GWAS in a larger Mongolian sample. Twenty-eight SNPs passed rigorous quality control filtering and 11 of them showed significant association with T2D (Bonferroni corrected P < 0.05). The SNP with the strongest T2D association, rs7578326, has the risk allele significantly associated with increased levels of TG. We demonstrated the need of further study of allelic difference of T2D associated SNPs in diverse populations.

2. Methods and Materials

2.1. Ethics Statement

This study was approved by the Institutional Review Board of the Affiliated Hospital of Inner Mongolia University for the Nationalities and complied with the Declaration of Helsinki. The written informed consent was obtained from each participant.

2.2. Study Population

We collected whole blood samples from 986 individuals of Mongolian ethnicity from Inner Mongolia, China. The sample was comprised of 511 T2D cases and 475 healthy normoglycemic controls, of which 497 cases and 469 controls passed quality control filtering and were used for subsequent analysis (see below). Cases were registered based on the World Health Organization (WHO) criteria [12] of fasting plasma glucose concentration ≥7 mmol/L or 2-h plasma glucose concentration ≥11.1 mmol/L and were admitted to the affiliated hospital of the Inner Mongolia University for Nationalities. Nondiabetic healthy controls were selected based on matching sex and ethnic background from the same region. Aside from the diagnosis of T2D, we collected other diabetes related lipid traits, such as TC, HDL-C, LDL-C, and TG, for each individual. We collected certain life style information (smoking and drinking habits), waist circumference (WC), and body mass index (BMI) of each participant as well.

2.3. Selection of SNPs and Genotyping

We selected a list of SNPs previously found to be associated with T2D based on the NHGRI GWAS catalog [2] (available at http://www.genome.gov/gwastudies/, November, 2012). Candidate SNPs were initially selected with the following considerations: (1) SNPs found to be associated with T2D in an Asian sample were given higher priority (rs6723108 and rs5945326 were added after the initial selection date); and (2) subsequently SNPs found to be associated with multiple studies were included. We were able to genotype 34 SNPs located in or near 33 candidate genes (see Supplementary Material available online at http://dx.doi.org/10.1155/2015/613236). We included two SNPs around KCNQ1, because those have been reported to be associated with Asian populations [13, 14]. We estimated the concentration of isolated genomic DNA using Qubit dsDNA BR Assay Kit (Invitrogen, USA), and the DNA solution was further diluted to a concentration of 10 ng/μL. We designed the targeted sequencing primers and redesigned the primer sets with dispersed or weak electrophoretic bands. To prepare the chip array, we used a multisample nanodispenser (WaferGen, USA) to disperse DNA and primers into SmartChip MyDesign Chip (WaferGen, USA). Following the polymerase chain reaction (PCR) amplification, we purified PCR products through Agencourt AMPure XP-medium beads to get mixed Illumina pair-end libraries. Insert sizes were calculated by Aglient 2100 bioanalyzer (Agilent, USA) and concentrations were estimated by Real Time PCR. Sequencing was performed on either Illumina MiSeq or on Illumina Hiseq 2500. All sequencing steps were in strict accordance with Illumina recommended protocols. The final sequencing depth reached > 200x, and the length of pair-end reads was 100 bp. Reads with an average base quality of ≥20 were kept for further analysis. BWA [15] (v0.5.9, available at http://bio-bwa.sourceforge.net/) was used to map all clean reads against the human reference genome of hg19 allowing ≤3 mismatches across a single read. Samtools mpileup (v0.1.18, available at http://samtools.sourceforge.net/) command was used to obtain SNP genotypes as described in [16]. These genotypes were further filtered according to the following criteria: SNPs with ≥5% of missing call rate across the samples. Samples with ≥3% of missing genotypes (which corresponds to 10% of missing SNP call rate) were removed. We tested SNPs for Hardy-Weinberg Equilibrium (HWE) and excluded SNPs with HWE P value < 1 × 10−6 in unaffected individuals. Twenty-eight SNPs of 966 samples (497 cases and 469 controls) passed the quality control filtering, and the overall genotype call rate is 99.3% or higher across the sample.

2.4. Statistical Analysis

We tested association between candidate SNPs and the status of T2D using logistic regression (likelihood ratio test) by adjusting for the effects of age, sex, and BMI. The study-wide significance was determined by applying Bonferroni correction using 28 tested SNPs (P value ≤ 0.05/28 = 1.8 × 10−3). We tested association with diabetes related quantitative traits (TC, HDL-C, LDL-C, and TG) across both T2D cases and controls using linear regression with the age, sex, BMI, and T2D status as covariates. All quantitative trait measures were normalized by quantile normalization and the normalized values were used in the analyses. Formal statistical tests, including 95% confidence intervals (CI), were performed using EPACTS [17] (v3.2.6, available at http://www.sph.umich.edu/csg/kang/epacts/). Differences in population structure between the Mongolian sample (healthy controls) and healthy Caucasian (CEU) or Chinese (CHB and CHS) samples of 1000 G project [18] (http://www.1000genomes.org/) were estimated by comparing risk allele frequency and the Wright's fixation index (F ST) using plink [19, 20]. Comparison of trait values between cases and controls was conducted using Student's t-test.

3. Results

After rigorous sample and marker level quality control filtering, genotypes of 28 SNPs on 966 individuals (including 497 with T2D cases and 469 nondiabetic ethnically matched controls) were kept for subsequent analyses. Clinical characteristics of the sample are summarized in Table 1. Overall, consistent with previous studies [21], T2D cases in current study have higher TC, TG, and LDL-C values compared to controls and have comparable HDL-C values with the controls, indicating that TC, TG, and LDL-C are among risk factors for T2D in the Mongolian sample.
Table 1

Clinical characteristics of study population.

TraitsControlsa Cases P value for normalized trait valueb
Samples (N)469497
Sex (male/female)168/301214/283
Smoking (%)22.231.6
Drinking (%)38.627.2
Age (years)40.5 ± 15.854.3 ± 10.1
BMI (kg/m2)24.0 ± 4.826.1 ± 4.0<0.001
WC (cm)81.7 ± 14.592.0 ± 11.6<0.001
TC (mmol/L)4.6 ± 1.25.4 ± 1.2<0.001
TG (mmol/L)1.9 ± 1.53.1 ± 2.9<0.001
HDL-C (mmol/L)1.3 ± 0.31.4 ± 1.00.775
LDL-C (mmol/L)2.7 ± 0.93.2 ± 1.0<0.001

aMean ± SD.

bStudent's t-test. BMI: body mass index; WC: waist circumference; TC: total cholesterol; TG: triglyceride; HDL-C: high density lipoprotein cholesterol; LDL-C: low density lipoprotein cholesterol.

Table 2 presents the association results between the 28 SNPs and T2D status. Of the 28 SNPs tested, 11 SNPs were significantly associated after correcting for multiple testing (P < 1.8 × 10−3). We replicated a T2D association near KCNQ1 (rs2237897; OR = 1.39; P = 0.002), originally identified in a Japanese population [14], and subsequently replicated in another Mongolian population sample with the same ethnic background as our sample [22]. We also replicated T2D association of three SNPs initially identified in Asian samples, namely, rs163182 (KCNQ1) [13] in Japanese, rs6723108 (TMEM163) [23] in Indians, and rs10229583 (PAX4) [24] in Chinese samples. In addition, we replicated associations of seven T2D SNPs previously identified in European populations. To our knowledge, the association of rs7578326 (IRS1), rs1531343 (HMGA2), rs8042680 (PRC1), rs1387153 (MTNR1B), rs7578597 (THADA) [25], rs243021 (BCL11A) [26], and rs1333051 (CDKN2) [27] was for the first time replicated in an Asian sample.
Table 2

Association of 28 SNPs tested with T2D in a Mongolian sample.

ChromosomeNearby geneSNPRisk alleleRisk allele frequency P valueOROR L95a OR H95b
CasesControls
2 IRS1 rs7578326A0.8430.7926.4E − 081.270.981.64
12 HMGA2 rs1531343C0.1110.1066.2E − 071.080.791.49
15 PRC1 rs8042680A0.9530.9165.6E − 061.320.862.00
2 THADA rs7578597T0.9890.9808.0E − 061.920.764.76
9 CDKN2 rs1333051A0.8360.8337.3E − 051.050.801.39
2 TMEM163 rs6723108T0.9970.9807.9E − 057.692.0033.33
11 KCNQ1 rs2237897C0.6760.5858.7E − 051.391.111.72
11 KCNQ1 rs163182C0.4270.3581.0E − 041.371.111.69
11 MTNR1B rs1387153T0.4200.3582.7E − 041.170.951.44
2 BCL11A rs243021A0.7150.6961.2E − 041.331.061.67
7 PAX4 rs10229583G0.8480.8174.5E − 041.280.971.69

3 IGF2BP2 rs4402960T0.3200.2745.0E − 021.210.971.50
2 GRB14 rs3923113A0.8470.8121.7E − 021.200.931.56
13 SPRY2 rs1359790G0.6980.6799.9E − 031.180.951.47
3 ADAMTS9 rs4607103C0.5940.5661.2E − 011.110.881.39
11 KCNJ11 rs5215C0.3700.3366.1E − 031.030.841.25
10 HHEX-IDE rs5015480C0.2230.2195.7E − 031.010.801.29
10 TCF7L2 rs7903146T0.0530.0611.1E − 011.010.661.57
11 CENTD2 rs1552224A0.8960.8915.3E − 021.000.721.39
15 RASGRP1 rs7403531T0.3750.3592.5E − 020.980.801.20
4 WFS1 rs1801214T0.9470.9435.8E − 020.980.621.54
16 FTO rs8050136A0.1620.1661.3E − 010.980.751.30
8 TP53INP1 rs896854T0.3510.3893.1E − 020.930.761.15
12 LGR5 rs7961581C0.2190.2396.1E − 020.920.721.17
10 GRK5 rs10886471C0.7550.7742.2E − 020.860.671.10
6 C6orf57 rs1048886G0.1480.2121.2E − 040.670.510.89
15 ZFAND6 rs11634397G0.1780.2312.6E − 050.670.520.86
5 ZBED3 rs4457053G0.0550.0901.4E − 020.630.430.94

aLower boundary of 95% confidence interval (CI) of odd's ratio.

bUpper boundary of 95% CI of odd's ratio.

Among the four lipid related traits tested, we only observed a single significant association of T2D risk allele A of rs7578326 (IRS1) with TG level (P = 0.0004, OR = 3.4, and CI 1.7–6.6). Mean TG level for AA, AG, and GG is 2.65, 2.12, and 2.03 mmol/L (Figure 1). Individuals homozygous for the risk allele A have 25% higher TG values compared to heterozygotes. Heterozygotes have 4% higher TG compared to those homozygous for the nonrisk allele G.
Figure 1

Correlation of mean triglyceride level with the genotypes of rs7578326 in the Mongolian sample. y-axis represents TG (mmol/L) level, and x-axis represents samples with different genotypes. Error bar represents standard error of TG in the samples with the specific rs7578326 genotype. Number of samples with genotypes GG, AG, and AA are 47, 248, and 647, respectively, across all samples including T2D cases and controls.

Most of the SNPs selected for testing in our sample have been identified to be associated with T2D initially in European populations. The lack of replication of 17 T2D loci identified by the GWAS studies in other populations prompted us to look at the differences of allelic architecture in the SNPs tested for the T2D association in our population. We observed variable risk allele frequency difference between our sample and 1000 G Caucasian (CEU) and Chinese populations (Table 3). Six out of 11 SNPs that have risk allele frequency 10% higher in the Mongolian sample compared to the Caucasian sample in 1000 G panel showed significant association with T2D in our study, and only two out of nine SNPs that have 10% or lower risk allele frequency compared to CEU showed significant association with T2D. Although statistically not significant, this observation shows a trend of overabundance of T2D associated SNPs in those with high frequency of risk alleles in the Mongolian population. In addition, we calculated Wright's fixation index to estimate whether the heterogeneity of a tested SNP is different between the Mongolian sample and Caucasian or Chinese samples. Noteworthy, a T2D associated SNP, rs6723108 (TMEM163), has reached near fixed high risk allele frequency (0.98 in our sample compared to 0.51 in the Caucasian sample of 1000 G project) and has a substantial population difference with the Caucasian (F ST as high as 0.61). This trend is also present for the case of rs8042680 (PRC1), which has much higher risk allele frequency in the Mongolian sample compared to the Caucasians (0.92 versus 0.72; F ST = 0.67). Although it is difficult to postulate the cause of the population difference, high proportion of Mongolians appear to carry this risk allele.
Table 3

Comparison of risk allele frequency of 28 SNPs tested for association with T2D in a Mongolian sample against 1000G populations.

Nearby geneSNPT2D risk alleleT2D risk allele frequency(MGL − CEU)/CEU F ST with Mongolian sampleT2D association
MGLa CEUb CHSc CHBd CEUCHSCHB
TMEM163 rs6723108T0.980.511.001.000.940.660.010.01Yes
C6orf57 rs1048886G0.210.140.060.100.550.010.070.04No
WFS1 rs1801214T0.940.650.880.980.460.340.030.01No
BCL11A rs243021A0.700.480.660.630.450.060.230.19Yes
MTNR1B rs1387153T0.360.250.450.410.420.020.020.00Yes
GRK5 rs10886471C0.770.550.760.790.420.210.000.00No
GRB14 rs3923113A0.810.590.890.810.370.120.020.00No
RASGRP1 rs7403531T0.360.280.290.340.290.010.010.00No
PRC1 rs8042680A0.920.721.001.000.280.670.050.04Yes
IRS1 rs7578326A0.790.660.830.860.200.040.000.01Yes
THADA rs7578597T0.980.880.991.000.120.130.000.00Yes

PAX4 rs10229583G0.820.750.840.840.090.010.000.00Yes
CENTD2 rs1552224A0.890.880.910.900.010.000.000.00No
HMGA2 rs1531343C0.110.110.120.110.000.000.000.00Yes
CDKN2 rs1333051A0.830.840.880.86−0.010.000.000.00Yes
SPRY2 rs1359790G0.680.730.700.67−0.070.000.000.00No
LGR5 rs7961581C0.240.260.210.19−0.090.000.000.00No
TP53INP1 rs896854T0.390.430.300.31−0.090.000.020.01No

IGF2BP2 rs4402960T0.270.310.230.25−0.110.000.000.00No
KCNJ11 rs5215C0.340.380.400.38−0.120.000.000.00No
KCNQ1 rs163182C0.360.410.310.39−0.130.000.000.00Yes
ADAMTS9 rs4607103C0.570.780.640.57−0.280.090.010.00No
ZFAND6 rs11634397G0.230.340.070.08−0.330.330.070.06No
KCNQ1 rs2237897C0.580.940.660.62−0.380.230.010.00Yes
FTO rs8050136A0.170.440.140.15−0.630.190.000.00No
ZBED3 rs4457053G0.090.300.040.07−0.700.170.010.00No
TCF7L2 rs7903146T0.060.310.030.02−0.810.270.010.01No

aMongolian sample of this study. b,c,dPopulation samples of Caucasian, Chinese in Beijing, and Chinese in Shanghai from the 1000G project, respectively.

4. Discussion

In this study, we chose to examine the association of 34 GWAS SNPs, previously identified in European and East Asian populations, with susceptibility to T2D in a Mongolian sample from China. Six SNPs did not pass quality control filtering and were excluded from the analysis. This study confirmed the T2D association of rs2237897 in KCNQ1 that were reported in European, Mexican, Chinese, Japanese, and Mongolian populations [8]. We also replicated the T2D association of three SNPs previously identified in Asian samples, namely, rs163182 (KCNQ1) [13] in Japanese, rs6723108 (TMEM163) [23] in Indians, and rs10229583 (PAX4) [24] in Chinese samples. In addition, our study replicated T2D association of seven additional GWAS SNPs in our sample. To our knowledge, the T2D association of rs7578326 (IRS1), rs1531343 (HMGA2), rs8042680 (PRC1), rs1387153 (MTNR1B), rs7578597 (THADA) [25], rs243021 (BCL11A) [26], and rs1333051 (CDKN2) [27] was replicated in an East Asian sample for the first time. This indicates that our study was able to replicate the result obtained in a population with the similar ethnic background and extended the replication of several other loci in an Asian population. Although the association is not significant after the multiple test correction, additional six SNPs show the OR trend consistent with the original reported studies. SNPs found to be associated with T2D in Asian populations, rs1048886 (C6orf57) [5], rs4402960 (IGF2BP2) [28], rs5015480 (HHEX, IDE), rs1359790 (SPRY2) [29], rs1552224 (CENTD2), rs3923113 (GRB14), rs5215 (KCNJ11), rs7903146 (TCF7L2) [6], rs10886471 (GRK5), and rs7403531 (RASGRP1) [30], were not replicated in our study. This observation clearly suggests the following: (1) our study has a limited power because of relatively small sample size, which warrants further confirmation of these SNPs in a larger sample from the same ethnic group; (2) our sample has variable degrees of difference in risk allele frequency compared to Caucasian population where most original GWAS were conducted, and (3) the selection of control individuals was not matched precisely with the cases, in particular, with respect to age, and there is a trend that the healthy controls are younger compared to the cases. However, we took a step to use age, sex, and BMI as covariates in our statistical analysis to minimize the effect of this disparity. The follow-up larger scale study should recruit more matching control individuals to cases. None of the SNPs we tested for association with T2D here has been previously implicated to be associated with lipids based on the NHGRI GWAS catalog (available at http://www.genome.gov/gwastudies/, November, 2012). However, we observed that association of T2D risk allele (A, major allele) of rs7578326 (IRS1)   is associated with the increased level of TG. An elevated level of TG has been implicated as a risk factor of T2D, which likely resulted from the diminished activity of insulin causing inhibition of microsomal TG transfer protein activity [31]. The major allele (A) of a SNP in the upstream region of the same gene (IRS1), namely, rs2972146, is reported to be associated with an elevated level of TG as well [32]. rs297214 has nominal linkage disequilibrium with the SNP reported here (r 2 = 0.3753, 1000 G phase I), indicating a possibility that the T2D associated SNP or its proxy could be playing a role in pathogenesis of T2D or its related TG metabolism through IRS1 activity. Further functional work will help to understand the role of this SNP. Since we did not have information on previous medical history of treatment for either high cholesterol or T2D for the patients, it is possible that such treatments, if administered previously, could have prevented us from seeing the effect of SNP association with the diabetes related quantitative traits, including TG. Mongolians are one of the people who reside on the Mongolian Plateau in Asia and have heavily depended on nomadic life styles with harsh environments characterized by low temperature and scarce availability of food sources [33]. Although we do not have any concrete evidence that these variants might play a role in conserving energy, we found six T2D associated SNPs in our sample that have 10% or higher risk allele frequency compared to Caucasian samples. These SNPs have a comparable risk allele frequency with Chinese populations in the 1000 G project, indicating that our allele frequency estimate is reflecting the allelic structure of the SNPs in the populations of Asia. We observed that SNPs rs6723108 (TMEM163) and rs8042680 (PRC1) have substantial allelic differences in our sample compared to Caucasians and the risk alleles have reached near fixed level in Mongolians. On the other hand, a widely replicated T2D SNP, rs7903146 (TCF7L2), in European populations has substantially low risk allele frequency in the Mongolian sample (0.06 versus 0.31 in the Caucasian sample; F ST = 0.27) and is not associated in our sample of modest size. It is likely that the frequency difference of some SNPs between our sample and European population also contributed to the lack of reproducibility in T2D association in our study. Although we note that rs6723108 has a wide range of OR estimate (95% CI 2–33.3; risk allele frequency 0.98), the OR of 7.7 in our study is substantially greater than what was reported in the original study in an Indian population [23] (OR = 1.31, 95% CI 1.20–1.44; risk allele frequency 0.89), indicating the potential higher effect of the variant in our sample. More systematic studies of population specific allelic architecture with respect to T2D are needed to dissect the potential impact of these highly differentiated SNPs in different populations. In conclusion, our association study has confirmed association of several previously identified T2D susceptibility loci in the Mongolian sample. We also identified rs7578326 near IRS1 to be associated with an increased level of TG. The observation of the remarkable allele frequency difference of the T2D SNPs in our sample compared to Caucasians is important in further identifying causative variants for T2D and understanding the role of these SNPs in development of T2D in different ethnic populations. The SNPs were chosen with following considerations: (1) GWAS SNPs found to be associated with T2D in an Asian sample were given higher priority; and (2) subsequently, SNPs found to be associated with T2D in multiple studies were included. Genotyping of six SNPs was not successful, thus these SNPs were included from further analysis.
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2.  Potential etiologic and functional implications of genome-wide association loci for human diseases and traits.

Authors:  Lucia A Hindorff; Praveen Sethupathy; Heather A Junkins; Erin M Ramos; Jayashri P Mehta; Francis S Collins; Teri A Manolio
Journal:  Proc Natl Acad Sci U S A       Date:  2009-05-27       Impact factor: 11.205

3.  Death and suffering in the land of Genghis Khan.

Authors:  Lauralee Morris
Journal:  CMAJ       Date:  2011-02-22       Impact factor: 8.262

4.  Twelve type 2 diabetes susceptibility loci identified through large-scale association analysis.

Authors:  Benjamin F Voight; Laura J Scott; Valgerdur Steinthorsdottir; Andrew P Morris; Christian Dina; Ryan P Welch; Eleftheria Zeggini; Cornelia Huth; Yurii S Aulchenko; Gudmar Thorleifsson; Laura J McCulloch; Teresa Ferreira; Harald Grallert; Najaf Amin; Guanming Wu; Cristen J Willer; Soumya Raychaudhuri; Steve A McCarroll; Claudia Langenberg; Oliver M Hofmann; Josée Dupuis; Lu Qi; Ayellet V Segrè; Mandy van Hoek; Pau Navarro; Kristin Ardlie; Beverley Balkau; Rafn Benediktsson; Amanda J Bennett; Roza Blagieva; Eric Boerwinkle; Lori L Bonnycastle; Kristina Bengtsson Boström; Bert Bravenboer; Suzannah Bumpstead; Noisël P Burtt; Guillaume Charpentier; Peter S Chines; Marilyn Cornelis; David J Couper; Gabe Crawford; Alex S F Doney; Katherine S Elliott; Amanda L Elliott; Michael R Erdos; Caroline S Fox; Christopher S Franklin; Martha Ganser; Christian Gieger; Niels Grarup; Todd Green; Simon Griffin; Christopher J Groves; Candace Guiducci; Samy Hadjadj; Neelam Hassanali; Christian Herder; Bo Isomaa; Anne U Jackson; Paul R V Johnson; Torben Jørgensen; Wen H L Kao; Norman Klopp; Augustine Kong; Peter Kraft; Johanna Kuusisto; Torsten Lauritzen; Man Li; Aloysius Lieverse; Cecilia M Lindgren; Valeriya Lyssenko; Michel Marre; Thomas Meitinger; Kristian Midthjell; Mario A Morken; Narisu Narisu; Peter Nilsson; Katharine R Owen; Felicity Payne; John R B Perry; Ann-Kristin Petersen; Carl Platou; Christine Proença; Inga Prokopenko; Wolfgang Rathmann; N William Rayner; Neil R Robertson; Ghislain Rocheleau; Michael Roden; Michael J Sampson; Richa Saxena; Beverley M Shields; Peter Shrader; Gunnar Sigurdsson; Thomas Sparsø; Klaus Strassburger; Heather M Stringham; Qi Sun; Amy J Swift; Barbara Thorand; Jean Tichet; Tiinamaija Tuomi; Rob M van Dam; Timon W van Haeften; Thijs van Herpt; Jana V van Vliet-Ostaptchouk; G Bragi Walters; Michael N Weedon; Cisca Wijmenga; Jacqueline Witteman; Richard N Bergman; Stephane Cauchi; Francis S Collins; Anna L Gloyn; Ulf Gyllensten; Torben Hansen; Winston A Hide; Graham A Hitman; Albert Hofman; David J Hunter; Kristian Hveem; Markku Laakso; Karen L Mohlke; Andrew D Morris; Colin N A Palmer; Peter P Pramstaller; Igor Rudan; Eric Sijbrands; Lincoln D Stein; Jaakko Tuomilehto; Andre Uitterlinden; Mark Walker; Nicholas J Wareham; Richard M Watanabe; Gonçalo R Abecasis; Bernhard O Boehm; Harry Campbell; Mark J Daly; Andrew T Hattersley; Frank B Hu; James B Meigs; James S Pankow; Oluf Pedersen; H-Erich Wichmann; Inês Barroso; Jose C Florez; Timothy M Frayling; Leif Groop; Rob Sladek; Unnur Thorsteinsdottir; James F Wilson; Thomas Illig; Philippe Froguel; Cornelia M van Duijn; Kari Stefansson; David Altshuler; Michael Boehnke; Mark I McCarthy
Journal:  Nat Genet       Date:  2010-07       Impact factor: 38.330

5.  The Sequence Alignment/Map format and SAMtools.

Authors:  Heng Li; Bob Handsaker; Alec Wysoker; Tim Fennell; Jue Ruan; Nils Homer; Gabor Marth; Goncalo Abecasis; Richard Durbin
Journal:  Bioinformatics       Date:  2009-06-08       Impact factor: 6.937

6.  A genome-wide association study confirms previously reported loci for type 2 diabetes in Han Chinese.

Authors:  Bin Cui; Xiaolin Zhu; Min Xu; Ting Guo; Dalong Zhu; Gang Chen; Xuejun Li; Lingyan Xu; Yufang Bi; Yuhong Chen; Yu Xu; Xiaoying Li; Weiqing Wang; Haifeng Wang; Wei Huang; Guang Ning
Journal:  PLoS One       Date:  2011-07-22       Impact factor: 3.240

7.  The genome of a Mongolian individual reveals the genetic imprints of Mongolians on modern human populations.

Authors:  Haihua Bai; Xiaosen Guo; Dong Zhang; Narisu Narisu; Junjie Bu; Jirimutu Jirimutu; Fan Liang; Xiang Zhao; Yanping Xing; Dingzhu Wang; Tongda Li; Yanru Zhang; Baozhu Guan; Xukui Yang; Zili Yang; Shuangshan Shuangshan; Zhe Su; Huiguang Wu; Wenjing Li; Ming Chen; Shilin Zhu; Bayinnamula Bayinnamula; Yuqi Chang; Ying Gao; Tianming Lan; Suyalatu Suyalatu; Hui Huang; Yan Su; Yujie Chen; Wenqi Li; Xu Yang; Qiang Feng; Jian Wang; Huanming Yang; Jun Wang; Qizhu Wu; Ye Yin; Huanmin Zhou
Journal:  Genome Biol Evol       Date:  2014-11-05       Impact factor: 3.416

8.  Genome-wide association study in a Chinese population identifies a susceptibility locus for type 2 diabetes at 7q32 near PAX4.

Authors:  R C W Ma; C Hu; C H Tam; R Zhang; P Kwan; T F Leung; G N Thomas; M J Go; K Hara; X Sim; J S K Ho; C Wang; H Li; L Lu; Y Wang; J W Li; Y Wang; V K L Lam; J Wang; W Yu; Y J Kim; D P Ng; H Fujita; K Panoutsopoulou; A G Day-Williams; H M Lee; A C W Ng; Y-J Fang; A P S Kong; F Jiang; X Ma; X Hou; S Tang; J Lu; T Yamauchi; S K W Tsui; J Woo; P C Leung; X Zhang; N L S Tang; H Y Sy; J Liu; T Y Wong; J Y Lee; S Maeda; G Xu; S S Cherny; T F Chan; M C Y Ng; K Xiang; A P Morris; S Keildson; R Hu; L Ji; X Lin; Y S Cho; T Kadowaki; E S Tai; E Zeggini; M I McCarthy; K L Hon; L Baum; B Tomlinson; W Y So; Y Bao; J C N Chan; W Jia
Journal:  Diabetologia       Date:  2013-03-27       Impact factor: 10.122

9.  An integrated map of genetic variation from 1,092 human genomes.

Authors:  Goncalo R Abecasis; Adam Auton; Lisa D Brooks; Mark A DePristo; Richard M Durbin; Robert E Handsaker; Hyun Min Kang; Gabor T Marth; Gil A McVean
Journal:  Nature       Date:  2012-11-01       Impact factor: 49.962

10.  Discovery and refinement of loci associated with lipid levels.

Authors:  Cristen J Willer; Ellen M Schmidt; Sebanti Sengupta; Michael Boehnke; Panos Deloukas; Sekar Kathiresan; Karen L Mohlke; Erik Ingelsson; Gonçalo R Abecasis; Gina M Peloso; Stefan Gustafsson; Stavroula Kanoni; Andrea Ganna; Jin Chen; Martin L Buchkovich; Samia Mora; Jacques S Beckmann; Jennifer L Bragg-Gresham; Hsing-Yi Chang; Ayşe Demirkan; Heleen M Den Hertog; Ron Do; Louise A Donnelly; Georg B Ehret; Tõnu Esko; Mary F Feitosa; Teresa Ferreira; Krista Fischer; Pierre Fontanillas; Ross M Fraser; Daniel F Freitag; Deepti Gurdasani; Kauko Heikkilä; Elina Hyppönen; Aaron Isaacs; Anne U Jackson; Åsa Johansson; Toby Johnson; Marika Kaakinen; Johannes Kettunen; Marcus E Kleber; Xiaohui Li; Jian'an Luan; Leo-Pekka Lyytikäinen; Patrik K E Magnusson; Massimo Mangino; Evelin Mihailov; May E Montasser; Martina Müller-Nurasyid; Ilja M Nolte; Jeffrey R O'Connell; Cameron D Palmer; Markus Perola; Ann-Kristin Petersen; Serena Sanna; Richa Saxena; Susan K Service; Sonia Shah; Dmitry Shungin; Carlo Sidore; Ci Song; Rona J Strawbridge; Ida Surakka; Toshiko Tanaka; Tanya M Teslovich; Gudmar Thorleifsson; Evita G Van den Herik; Benjamin F Voight; Kelly A Volcik; Lindsay L Waite; Andrew Wong; Ying Wu; Weihua Zhang; Devin Absher; Gershim Asiki; Inês Barroso; Latonya F Been; Jennifer L Bolton; Lori L Bonnycastle; Paolo Brambilla; Mary S Burnett; Giancarlo Cesana; Maria Dimitriou; Alex S F Doney; Angela Döring; Paul Elliott; Stephen E Epstein; Gudmundur Ingi Eyjolfsson; Bruna Gigante; Mark O Goodarzi; Harald Grallert; Martha L Gravito; Christopher J Groves; Göran Hallmans; Anna-Liisa Hartikainen; Caroline Hayward; Dena Hernandez; Andrew A Hicks; Hilma Holm; Yi-Jen Hung; Thomas Illig; Michelle R Jones; Pontiano Kaleebu; John J P Kastelein; Kay-Tee Khaw; Eric Kim; Norman Klopp; Pirjo Komulainen; Meena Kumari; Claudia Langenberg; Terho Lehtimäki; Shih-Yi Lin; Jaana Lindström; Ruth J F Loos; François Mach; Wendy L McArdle; Christa Meisinger; Braxton D Mitchell; Gabrielle Müller; Ramaiah Nagaraja; Narisu Narisu; Tuomo V M Nieminen; Rebecca N Nsubuga; Isleifur Olafsson; Ken K Ong; Aarno Palotie; Theodore Papamarkou; Cristina Pomilla; Anneli Pouta; Daniel J Rader; Muredach P Reilly; Paul M Ridker; Fernando Rivadeneira; Igor Rudan; Aimo Ruokonen; Nilesh Samani; Hubert Scharnagl; Janet Seeley; Kaisa Silander; Alena Stančáková; Kathleen Stirrups; Amy J Swift; Laurence Tiret; Andre G Uitterlinden; L Joost van Pelt; Sailaja Vedantam; Nicholas Wainwright; Cisca Wijmenga; Sarah H Wild; Gonneke Willemsen; Tom Wilsgaard; James F Wilson; Elizabeth H Young; Jing Hua Zhao; Linda S Adair; Dominique Arveiler; Themistocles L Assimes; Stefania Bandinelli; Franklyn Bennett; Murielle Bochud; Bernhard O Boehm; Dorret I Boomsma; Ingrid B Borecki; Stefan R Bornstein; Pascal Bovet; Michel Burnier; Harry Campbell; Aravinda Chakravarti; John C Chambers; Yii-Der Ida Chen; Francis S Collins; Richard S Cooper; John Danesh; George Dedoussis; Ulf de Faire; Alan B Feranil; Jean Ferrières; Luigi Ferrucci; Nelson B Freimer; Christian Gieger; Leif C Groop; Vilmundur Gudnason; Ulf Gyllensten; Anders Hamsten; Tamara B Harris; Aroon Hingorani; Joel N Hirschhorn; Albert Hofman; G Kees Hovingh; Chao Agnes Hsiung; Steve E Humphries; Steven C Hunt; Kristian Hveem; Carlos Iribarren; Marjo-Riitta Järvelin; Antti Jula; Mika Kähönen; Jaakko Kaprio; Antero Kesäniemi; Mika Kivimaki; Jaspal S Kooner; Peter J Koudstaal; Ronald M Krauss; Diana Kuh; Johanna Kuusisto; Kirsten O Kyvik; Markku Laakso; Timo A Lakka; Lars Lind; Cecilia M Lindgren; Nicholas G Martin; Winfried März; Mark I McCarthy; Colin A McKenzie; Pierre Meneton; Andres Metspalu; Leena Moilanen; Andrew D Morris; Patricia B Munroe; Inger Njølstad; Nancy L Pedersen; Chris Power; Peter P Pramstaller; Jackie F Price; Bruce M Psaty; Thomas Quertermous; Rainer Rauramaa; Danish Saleheen; Veikko Salomaa; Dharambir K Sanghera; Jouko Saramies; Peter E H Schwarz; Wayne H-H Sheu; Alan R Shuldiner; Agneta Siegbahn; Tim D Spector; Kari Stefansson; David P Strachan; Bamidele O Tayo; Elena Tremoli; Jaakko Tuomilehto; Matti Uusitupa; Cornelia M van Duijn; Peter Vollenweider; Lars Wallentin; Nicholas J Wareham; John B Whitfield; Bruce H R Wolffenbuttel; Jose M Ordovas; Eric Boerwinkle; Colin N A Palmer; Unnur Thorsteinsdottir; Daniel I Chasman; Jerome I Rotter; Paul W Franks; Samuli Ripatti; L Adrienne Cupples; Manjinder S Sandhu; Stephen S Rich
Journal:  Nat Genet       Date:  2013-10-06       Impact factor: 38.330

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  13 in total

1.  Prevalence of and risk factors for refractive error: a cross-sectional study in Han and Mongolian adults aged 40-80 years in Inner Mongolia, China.

Authors:  M Wang; J Ma; L Pan; T Chen; H L Wang; Y H Wang; W R Wang; X D Pan; Y G Qian; X Zhang; Y Zhong; G L Shan
Journal:  Eye (Lond)       Date:  2019-06-03       Impact factor: 3.775

2.  Editorial: Association Between Individuals' Genomic Ancestry and Variation in Disease Susceptibility.

Authors:  Ranajit Das; Tatiana V Tatarinova; Elvira R Galieva; Yuriy L Orlov
Journal:  Front Genet       Date:  2022-02-02       Impact factor: 4.599

3.  Genetics research at the "Centenary of human population genetics" conference and SBB-2019.

Authors:  Tatiana V Tatarinova; Ludmila E Tabikhanova; Gilda Eslami; Haihua Bai; Yuriy L Orlov
Journal:  BMC Genet       Date:  2020-10-22       Impact factor: 2.797

4.  Medical genetics studies at the SBB-2019 and MGNGS-2019 conferences.

Authors:  Ancha V Baranova; Elena Yu Leberfarb; Georgy S Lebedev; Yuriy L Orlov
Journal:  BMC Med Genet       Date:  2020-10-22       Impact factor: 2.103

5.  Smoking Modifies Pancreatic Cancer Risk Loci on 2q21.3.

Authors:  Evelina Mocci; Prosenjit Kundu; Nilanjan Chatterjee; Alison P Klein; Rachael Stolzenberg-Solomon; William Wheeler; Alan A Arslan; Laura E Beane-Freeman; Paige M Bracci; Paul Brennan; Federico Canzian; Mengmeng Du; Steven Gallinger; Graham G Giles; Phyllis J Goodman; Charles Kooperberg; Loic Le Marchand; Rachel E Neale; Xiao-Ou Shu; Kala Visvanathan; Emily White; Wei Zheng; Demetrius Albanes; Gabriella Andreotti; Ana Babic; William R Bamlet; Sonja I Berndt; Amanda L Blackford; Bas Bueno-de-Mesquita; Julie E Buring; Daniele Campa; Stephen J Chanock; Erica J Childs; Eric J Duell; Charles S Fuchs; J Michael Gaziano; Edward L Giovannucci; Michael G Goggins; Patricia Hartge; Manal M Hassan; Elizabeth A Holly; Robert N Hoover; Rayjean J Hung; Robert C Kurtz; I-Min Lee; Núria Malats; Roger L Milne; Kimmie Ng; Ann L Oberg; Salvatore Panico; Ulrike Peters; Miquel Porta; Kari G Rabe; Elio Riboli; Nathaniel Rothman; Ghislaine Scelo; Howard D Sesso; Debra T Silverman; Victoria L Stevens; Oliver Strobel; Ian M Thompson; Anne Tjonneland; Antonia Trichopoulou; Stephen K Van Den Eeden; Jean Wactawski-Wende; Nicolas Wentzensen; Lynne R Wilkens; Herbert Yu; Fangcheng Yuan; Anne Zeleniuch-Jacquotte; Laufey T Amundadottir; Donghui Li; Eric J Jacobs; Gloria M Petersen; Brian M Wolpin; Harvey A Risch; Peter Kraft
Journal:  Cancer Res       Date:  2021-02-11       Impact factor: 13.312

6.  A variant in KCNQ1 gene predicts metabolic syndrome among northern urban Han Chinese women.

Authors:  Yafei Liu; Chunxia Wang; Yafei Chen; Zhongshang Yuan; Tao Yu; Wenchao Zhang; Fang Tang; Jianhua Gu; Qinqin Xu; Xiaotong Chi; Lijie Ding; Fuzhong Xue; Chengqi Zhang
Journal:  BMC Med Genet       Date:  2018-08-29       Impact factor: 2.103

7.  The rs10229583 polymorphism near paired box gene 4 is associated with gestational diabetes mellitus in Chinese women.

Authors:  Tianyi Xu; Yiru Shi; Jiangbo Liu; Yun Liu; Ailin Zhu; Cui Xie; Yan Zhang; Yan Chen; Lirong Ren
Journal:  J Int Med Res       Date:  2017-07-21       Impact factor: 1.671

8.  Evaluation of an HMGA2 variant for pleiotropic effects on height and metabolic traits in ponies.

Authors:  Elaine M Norton; Felipe Avila; Nichol E Schultz; James R Mickelson; Ray J Geor; Molly E McCue
Journal:  J Vet Intern Med       Date:  2019-01-21       Impact factor: 3.333

9.  Pleiotropic Effects of a KCNQ1 Variant on Lipid Profiles and Type 2 Diabetes: A Family-Based Study in China.

Authors:  Xiaowen Wang; Junhui Wu; Yao Wu; Mengying Wang; Zijing Wang; Tao Wu; Dafang Chen; Xun Tang; Xueying Qin; Yiqun Wu; Yonghua Hu
Journal:  J Diabetes Res       Date:  2020-01-13       Impact factor: 4.011

10.  BCL11A: a potential diagnostic biomarker and therapeutic target in human diseases.

Authors:  Jiawei Yin; Xiaoli Xie; Yufu Ye; Lijuan Wang; Fengyuan Che
Journal:  Biosci Rep       Date:  2019-11-29       Impact factor: 3.840

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