Improving genetic risk prediction by leveraging pleiotropy
Cong Li, Can Yang, Joel Gelernter, Hongyu Zhao

TL;DR
This study demonstrates that leveraging genetic correlations between traits through joint analysis can significantly enhance the accuracy of genetic risk prediction models, especially for complex diseases.
Contribution
The paper introduces a bivariate ridge regression approach to incorporate pleiotropy, improving disease risk prediction by utilizing shared genetic bases between traits.
Findings
Joint analysis of bipolar disorder and schizophrenia improves prediction accuracy.
Combining Crohn's disease and ulcerative colitis GWAS data enhances risk prediction.
Simulation studies confirm benefits of using genetically correlated phenotypes.
Abstract
An important task of human genetics studies is to accurately predict disease risks in individuals based on genetic markers, which allows for identifying individuals at high disease risks, and facilitating their disease treatment and prevention. Although hundreds of genome-wide association studies (GWAS) have been conducted on many complex human traits in recent years, there has been only limited success in translating these GWAS data into clinically useful risk prediction models. The predictive capability of GWAS data is largely bottlenecked by the available training sample size due to the presence of numerous variants carrying only small to modest effects. Recent studies have shown that different human traits may share common genetic bases. Therefore, an attractive strategy to increase the training sample size and hence improve the prediction accuracy is to integrate data of…
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Taxonomy
TopicsGenetic Associations and Epidemiology · Genetic and phenotypic traits in livestock · Lipid metabolism and disorders
