BAYESIAN METHODS FOR MULTIVARIATE MODELING OF PLEIOTROPIC SNP ASSOCIATIONS AND GENETIC RISK PREDICTION

Bayesian methods for multivariate modeling of pleiotropic SNP associations and genetic risk prediction

Bayesian methods for multivariate modeling of pleiotropic SNP associations and genetic risk prediction

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Genome-wide association studies (GWAS) have identified numerous associations between genetic loci and individual phenotypes; however, relatively few GWAS have attempted to detect pleiotropic associations, in which Interactive Attention-Based Capsule Network for Click-Through Rate Prediction loci are simultaneously associated with multiple distinct phenotypes.We show that pleiotropic associations can be directly modeled via the construction of simple Bayesian networks, and that these models can be applied to produce single or ensembles of Bayesian classifiers that leverage pleiotropy to improve genetic risk prediction.The proposed method includes two phases: (1) Bayesian model comparison, to identify SNPs associated with one or more traits; and (2) cross validation feature selection, in which a final set of SNPs is selected to optimize prediction.To demonstrate the capabilities and limitations of the method, a Spatial Multi-Criteria Assessment to Select Optimum Route To Improve Transportation Network in Al-Omarah City total of 1600 case-control GWAS datasets with 2 dichotomous phenotypes were simulated under 16 scenarios, varying the association strengths of causal SNPs, the size of the discovery sets, the balance between cases and controls, and the number of pleiotropic causal SNPs.

Across the 16 scenarios, prediction accuracy varied from 90% to 50%.In the 14 scenarios that included pleiotropically-associated SNPs, the pleiotropic model search and prediction methods consistently outperformed the naive model search and prediction.In the 2 scenarios in which there were no true pleiotropic SNPs, the differences between the pleiotropic and naive model searches were minimal.

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