Development and validation of a trans-ancestry polygenic risk score for type 2 diabetes in diverse populations.
- Authors
- Ge, Tian; Irvin, Marguerite R; Patki, Amit; Srinivasasainagendra, Vinodh; Lin, Yen-Feng; Tiwari, Hemant K; Armstrong, Nicole D; Benoit, Barbara; Chen, Chia-Yen; Choi, Karmel W; Cimino, James J; Davis, Brittney H; Dikilitas, Ozan; Etheridge, Bethany; Feng, Yen-Chen Anne; Gainer, Vivian; Huang, Hailiang; Jarvik, Gail P; Kachulis, Christopher; Kenny, Eimear E; Khan, Atlas; Kiryluk, Krzysztof; Kottyan, Leah; Kullo, Iftikhar J; Lange, Christoph; Lennon, Niall; Leong, Aaron; Malolepsza, Edyta; Miles, Ayme D; Murphy, Shawn; Namjou, Bahram; Narayan, Renuka; O'Connor, Mark J; Pacheco, Jennifer A; Perez, Emma; Rasmussen-Torvik, Laura J; Rosenthal, Elisabeth A; Schaid, Daniel; Stamou, Maria; Udler, Miriam S; Wei, Wei-Qi; Weiss, Scott T; Ng, Maggie C Y; Smoller, Jordan W; Lebo, Matthew S; Meigs, James B; Limdi, Nita A; Karlson, Elizabeth W
- Year
- 2022
- Journal
- Genome medicine
- PMID
- 35765100
- DOI
- 10.1186/s13073-022-01074-2
- PMCID
- PMC9241245
BACKGROUND: Type 2 diabetes (T2D) is a worldwide scourge caused by both genetic and environmental risk factors that disproportionately afflicts communities of color. Leveraging existing large-scale genome-wide association studies (GWAS), polygenic risk scores (PRS) have shown promise to complement established clinical risk factors and intervention paradigms, and improve early diagnosis and prevention of T2D. However, to date, T2D PRS have been most widely developed and validated in individuals of European descent. Comprehensive assessment of T2D PRS in non-European populations is critical for equitable deployment of PRS to clinical practice that benefits global populations. METHODS: We integrated T2D GWAS in European, African, and East Asian populations to construct a trans-ancestry T2D PRS using a newly developed Bayesian polygenic modeling method, and assessed the prediction accuracy of the PRS in the multi-ethnic Electronic Medical Records and Genomics (eMERGE) study (11,945 cases; 57,694 controls), four Black cohorts (5137 cases; 9657 controls), and the Taiwan Biobank (4570 cases; 84,996 controls). We additionally evaluated a post hoc ancestry adjustment method that can express the polygenic risk on the same scale across ancestrally diverse individuals and facilitate the clinical implementation of the PRS in prospective cohorts. RESULTS: The trans-ancestry PRS was significantly associated with T2D status across the ancestral groups examined. The top 2% of the PRS distribution can identify individuals with an approximately 2.5-4.5-fold of increase in T2D risk, which corresponds to the increased risk of T2D for first-degree relatives. The post hoc ancestry adjustment method eliminated major distributional differences in the PRS across ancestries without compromising its predictive performance. CONCLUSIONS: By integrating T2D GWAS from multiple populations, we developed and validated a trans-ancestry PRS, and demonstrated its potential as a meaningful index of risk among diverse patients in clinical settings. Our efforts represent the first step towards the implementation of the T2D PRS into routine healthcare.
Comparison of the predictive performance of PRS-CSx with three alternative PRS construction methods in the African and Hispanic/Latino samples of the eMERGE dataset. Alternative PRS methods include (i) a European-specific score derived by applying PRS-CS-auto to the European T2D GWAS summary statistics (PRS-CS EUR); (ii) a trans-ancestry score derived by applying PRS-CS-auto to the meta-analysis of the European, MEDIA and BBJ T2D GWAS (PRS-CS Meta); and (iii) a trans-ancestry score derived by applying LDpred2-auto to the T2D meta-GWAS (LDpred2 Meta)
Tail discrimination of the PRS-CSx-derived trans-ancestry T2D PRS at various percentage cutoffs in the European, African (by meta-analyzing the eMERGE African dataset with the four UAB Black cohorts) and East Asian (by meta-analyzing the three TWB batches) populations. POP, population; EUR, European; AFR, African; EAS, East Asian; PPV, prevalence-adjusted positive predictive value; NPV, prevalence-adjusted negative predictive value
| Name | Type |
|---|---|
| 1000 Genomes Project | cohort |
| 1KG phase 3 dataset local | cohort |
| adjusted PRS local | drug |
| Admixed American super-population local | cohort |
| African | cohort |
| African American | cohort |
| African samples | cohort |
| African super-population local | cohort |
| age | phenotype |
| Age >35 years local | phenotype |
| Alcohol Use | phenotype |
| ALLHAT local | cohort |
| amlodipine | drug |
| AMR | cohort |
| ancestry | phenotype |
| Antihypertensive medications local | drug |
| Asian | cohort |
| atrial fibrillation | phenotype |
| Batch 1 local | cohort |
| Batch 2 local | cohort |
| Batch 3 local | cohort |
| BBJ local | cohort |
| BBJ T2D GWAS local | cohort |
| Biobank Japan GWAS local | cohort |
| BioData Catalyst framework local | drug |
| Black | phenotype |
| Black cohorts local | cohort |
| black participants | cohort |
| blood pressure | phenotype |
| BMI | phenotype |
| body mass index | phenotype |
| cardiovascular disease outcomes local | phenotype |
| Children’s Hospital of Pennsylvania local | cohort |
| chlorthalidone local | drug |
| Cincinnati Children's Hospital Medical Center local | cohort |
| Clinical Risk Factors local | phenotype |
| Columbia University local | cohort |
| communities of color local | cohort |
| Communities of color local | cohort |
| coronary heart disease | phenotype |
| CVD outcomes local | phenotype |
| diabetes medications local | drug |
| discovery GWAS samples local | cohort |
| diverse samples local | cohort |
| doxazosin local | drug |
| East Asian | cohort |
| East Asian super-population local | cohort |
| eMERGE African ancestry cohort local | cohort |
| eMERGE African dataset local | cohort |
| eMERGE African samples local | cohort |
| eMERGE algorithm local | cohort |
| eMERGE algorithm local | drug |
| eMERGE dataset local | cohort |
| eMERGE European dataset local | cohort |
| eMERGE European samples local | cohort |
| eMERGE I-III genotyped dataset local | cohort |
| eMERGE I-III samples local | cohort |
| eMERGE IV study local | cohort |
| eMERGE network | cohort |
| eMERGE study local | cohort |
| End-organ damage local | phenotype |
| European ancestry | cohort |
| European descent GWAS local | cohort |
| European population | cohort |
| European super-population local | cohort |
| European T2D GWAS local | cohort |
| evaluation cohorts local | cohort |
| Family history of diabetes local | phenotype |
| family history positive | phenotype |
| fasting glucose | phenotype |
| Genetic Counseling/Lifestyle Change (GC/LC) study local | cohort |
| GenHAT local | cohort |
| Gibbs sampler local | drug |
| glucose | drug |
| glucose-lowering medications local | drug |
| GWAS | cohort |
| Haplotype Reference Consortium local | drug |
| HapMap3 variants local | variant |
| Healthcare Professionals local | cohort |
| high glucose local | phenotype |
| His | cohort |
| Hispanic | phenotype |
| Hispanic/Latino local | cohort |
| Hispanic/Latino ancestry local | cohort |
| Hispanic/Latino sample local | cohort |
| Hispanic/Latino samples local | cohort |
| HyperGen local | cohort |
| HyperGEN local | cohort |
| hypertension | phenotype |
| Icahn School of Medicine at Mount Sinai | cohort |
| Illumina 1M duo array local | drug |
| Illumina MEGA array local | drug |
| Illumina MEGA arrays local | drug |
| imputed SNPs | variant |
| incident stroke local | phenotype |
| INR local | phenotype |
| Integrated Risk Assessment local | phenotype |
| LDL cholesterol | phenotype |
| LDpred2 local | drug |
| LDpred2 Meta local | drug |
| lead variant local | variant |
| lead variants | variant |
| lisinopril local | drug |
| MAF >1% local | variant |
| Mass General Brigham local | cohort |
| Mayo Clinic | cohort |
| MEDIA local | cohort |
| MEDIA Consortium local | cohort |
| MEDIA Consortium GWAS local | cohort |
| MEDIA study local | cohort |
| MEDIA T2D GWAS local | cohort |
| MedSeq Project local | cohort |
| MGB local | cohort |
| MGB algorithm local | cohort |
| MGB chart review dataset local | cohort |
| MI-GENES study local | cohort |
| modified eMERGE algorithm local | cohort |
| modified eMERGE algorithm local | drug |
| modified MGB algorithm local | cohort |
| modified MGB algorithm local | drug |
| multi-ethnic meta-GWAS local | cohort |
| myocardial infarction | phenotype |
| Native Americans | cohort |
| NHLBI Family Blood Pressure Program local | cohort |
| NHLBI TOPMed reference panel local | cohort |
| NHLBI TOPMed reference panel local | drug |
| non-European ancestry | cohort |
| non-European GWAS local | cohort |
| Northwestern University local | cohort |
| outcome | phenotype |
| Overweight or obesity local | phenotype |
| patients | cohort |
| peripheral arterial disease | phenotype |
| physical activity | phenotype |
| physical inactivity | phenotype |
| PLINK 1.9 local | drug |
| polygenic risk score | cohort |
| principal components | drug |
| Prospective Study | cohort |
| PRS | drug |
| PRS_adj local | phenotype |
| PRS-CS | drug |
| PRS-CS EUR local | drug |
| PRS-CS Meta local | drug |
| PRS_raw local | phenotype |
| raw PRS local | drug |
| REGARDS local | cohort |
| screen negative subjects local | cohort |
| screen positive subjects local | cohort |
| smoking | phenotype |
| statins | drug |
| stroke | phenotype |
| study cohort | cohort |
| T2D meta-GWAS local | cohort |
| T2D PRS local | drug |
| tag variant local | variant |
| Taiwan Biobank local | cohort |
| Taiwan Biobank participants local | cohort |
| target population | cohort |
| tobacco use | phenotype |
| Trans-ancestry Polygenic Risk Score local | drug |
| trans-ancestry PRS local | variant |
| trans-ancestry T2D PRS local | drug |
| transient ischemic attack local | phenotype |
| TWB local | cohort |
| TWB batches local | cohort |
| TWBv1 array local | drug |
| TWBv2 array local | drug |
| type 1 diabetes | phenotype |
| type 2 diabetes | phenotype |
| UAB local | cohort |
| UAB Black cohorts local | cohort |
| UAB chart review dataset local | cohort |
| UAB WPC local | cohort |
| underrepresented populations local | cohort |
| University of Alabama at Birmingham local | cohort |
| Vanderbilt University Medical Center local | cohort |
| venous thromboembolism local | phenotype |
| warfarin | drug |
| Warfarin local | cohort |
| White | phenotype |
| WPC local | cohort |
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In this knowledge base
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