| Literature DB >> 29954342 |
Yi Yang1,2, Mingwei Dai3,4, Jian Huang5, Xinyi Lin2, Can Yang4, Min Chen1, Jin Liu6.
Abstract
BACKGROUND: To date, genome-wide association studies (GWAS) have successfully identified tens of thousands of genetic variants among a variety of traits/diseases, shedding light on the genetic architecture of complex disease. The polygenicity of complex diseases is a widely accepted phenomenon through which a vast number of risk variants, each with a modest individual effect, collectively contribute to the heritability of complex diseases. This imposes a major challenge on fully characterizing the genetic bases of complex diseases. An immediate implication of polygenicity is that a much larger sample size is required to detect individual risk variants with weak/moderate effects. Meanwhile, accumulating evidence suggests that different complex diseases can share genetic risk variants, a phenomenon known as pleiotropy.Entities:
Keywords: Genome-wide association studies; Pleiotropy; Variational Bayesian expectation-maximization
Mesh:
Year: 2018 PMID: 29954342 PMCID: PMC6022345 DOI: 10.1186/s12864-018-4851-2
Source DB: PubMed Journal: BMC Genomics ISSN: 1471-2164 Impact factor: 3.969
Fig. 1The comparison of LPG (VB joint) and its alternative methods, BVSR (VB separate) and Lasso, for quantitative traits demonstrated increased power in ascending order of pleiotropy g, while the FDR of both LPG and BVSR were controlled at 0.2. Panels from top to bottom are the AUC, FDR, Power and Prediction. Choices of g range from 0 to 1. The parameter settings of the model are : p = 20,000, n1=n2 = 3000, h2 = 0.5, ρ=0.5 and α1 = 0.005
Fig. 2The comparison of LPG (VB joint) and its alternative methods, BVSR (VB separate) and Lasso, for binary traits demonstrated increased power in ascending order of pleiotropy g, while the FDR of both LPG and BVSR were controlled at 0.2. Panels from top to bottom are the AUC, FDR, Power and Prediction. Choices of g range from 0 to 1. The parameter settings of the model are : p = 20,000, n1=n2 = 3000, h2 = 0.5, ρ=0.5 and α1 = 0.0025
Fig. 3For the data consisting of the 58C controls with RA and UKBS controls with T1D, Manhattan plots of the separate analysis using BVSR and joint analysis using LPG
Comparison of SNPs identified by BVSR and LPG between T1D and RA
| snp | chr | position | sep T1D | sep RA | joi T1D | joi RA | |
|---|---|---|---|---|---|---|---|
| 1 | rs6679677 | 1 | 114303808 | < 1e-17a (0.3494) | 4.66e-13a (0.3161) | < 1e-17a (0.3504) | < 1e-17a (0.2944) |
| 2 | rs13200022 | 6 | 31098957 | 2.22e-16a (-0.3371) | 1 (-0.0309) | < 1e-17a (-0.3380) | 2.29e-14a (-0.0670) |
| 3 | rs550513 | 6 | 31920687 | 2.14e-05a (-0.2315) | 9.96e-01 (-0.1355) | 8.76e-09a (-0.2325) | 8.76e-09a (-0.1458) |
| 4 | rs3130287 | 6 | 32050544 | < 1e-17a (-0.4659) | 1 (-0.0650) | < 1e-17a (-0.4668) | 3.29e-14a (-0.0603) |
| 5 | rs17421624 | 6 | 32066177 | 1.1e-08a (-0.2672) | < 1e-17a (0.3801) | < 1e-17a (-0.2686) | < 1e-17a (0.2570) |
| 6 | rs9272346 | 6 | 32604372 | < 1e-17a (-0.7077) | 1 (-0.0888) | < 1e-17a (-0.7089) | 3.73e-14a (-0.0579) |
| 7 | rs2070121 | 6 | 32781554 | 4.44e-16a (-0.3331) | 1 (-0.0597) | < 1e-17a (-0.3335) | 2.22e-16a (-0.1199) |
| 8 | rs10484565 | 6 | 32795032 | < 1e-17a (0.3786) | 1 (0.0838) | < 1e-17a (0.3797) | < 1e-17a (0.1541) |
| 9 | rs241427 | 6 | 32804414 | 1e-04a (-0.2236) | 9.98e-01 (-0.1283) | 6.1e-06a (-0.2237) | 6.1e-06a (-0.1005) |
| 10 | rs10759987 | 9 | 121364134 | 1.66e-03a (-0.2082) | 1 (0.0272) | 6.76e-03a (-0.2083) | 6.76e-03a (0.0208) |
| 11 | rs17696736 | 12 | 112486818 | 9.86e-06a (0.2354) | 1 (0.0570) | 1.18e-05a (0.2358) | 1.18e-05a (0.0560) |
Results from the analysis of the dataset consisting of 58C controls with RA and UKBS controls with T1D. Two types of analysis were conducted: separate (“sep”) analysis using BVSR and joint (“joi”) analysis using LPG. The last 4 columns of the table give the local false discovery rates (lfdr) and estimated coefficients (in parentheses) for SNPs identified by BVSR and LPG between T1D and RA
adenotes lfdr < 0.2
Comparison of the prediction accuracy of T1D and RA
| Data | Number of hits | Prediction accuracy (AUC) | |
|---|---|---|---|
| 1 | Type 1 diabetes(T1D)joint | 11 | 78.3%(2.9%) |
| 2 | Rheumatoid arthritis(RA)joint | 11 | 64.4%(1.8%) |
| 3 | Type 1 diabetes(T1D)separate | 11 | 76.7%(2.9%) |
| 4 | Rheumatoid arthritis(RA)separate | 2 | 62.8%(2.4%) |
For the data consisting of 58C controls with RA and UKBS controls with T1D, summary of separate and joint analysis of T1D and RA
Inference of pleiotropy
| LRT | ||
|---|---|---|
| CD-T1D-inMHC | 2.27e-05 | 1 |
| RA-T1D-inMHC | 1.03e+02 | 2.75e-24 |
| T1D-CD-inMHC | -8.87e-02 | 1 |
| T1D-RA-inMHC | 7.25e+01 | 1.68e-17 |
| CD-T1D-exMHC | 8.22e+00 | 4.13e-03 |
| RA-T1D-exMHC | 2.33e+01 | 1.38e-06 |
| T1D-CD-exMHC | 4.73e+00 | 2.96e-02 |
| T1D-RA-exMHC | 2.07e+01 | 5.29e-06 |
Pleiotropy estimated and inference, inMHC means including the MHC region and exMHC means excluding the MHC region