Polygenic Risk Prediction using Gradient Boosted Trees Captures Non-Linear Genetic Effects and Allele Interactions in Complex Phenotypes

Author:

Elgart Michael,Lyons Genevieve,Romero-Brufau Santiago,Kurniansyah Nuzulul,Brody Jennifer A.ORCID,Guo Xiuqing,Lin Henry J,Raffield LauraORCID,Gao Yan,Chen HanORCID,de Vries Paul,Lloyd-Jones Donald M.,Lange Leslie A,Peloso Gina M,Fornage MyriamORCID,Rotter Jerome I,Rich Stephen S,Morrison Alanna C,Psaty Bruce M,Levy Daniel,Redline Susan,Sofer TamarORCID,

Abstract

AbstractPolygenic risk scores (PRS) are commonly used to quantify the inherited susceptibility for a given trait. However, the standard PRS fail to account for non-linear and interaction effects between single nucleotide polymorphisms (SNPs). Machine learning algorithms can be used to account for such non-linearities and interactions. We trained and validated polygenic prediction models for five complex phenotypes in a multi-ancestry population: total cholesterol, triglycerides, systolic blood pressure, sleep duration, and height. We used an ensemble method of LASSO for feature selection and gradient boosted trees (XGBoost) for non-linearities and interaction effects. In an independent test set, we found that combining a standard PRS as a feature in the XGBoost model increases the percentage variance explained (PVE) of the prediction model compared to the standard PRS by 25% for sleep duration, 26% for height, 44% for systolic blood pressure, 64% for triglycerides, and 85% for total cholesterol. Machine learning models trained in specific racial/ethnic groups performed similarly in multi-ancestry trained models, despite smaller sample sizes. The predictions of the machine learning models were superior to the standard PRS in each of the racial/ethnic groups in our study. However, among Blacks the PVE was substantially lower than for other groups. For example, the PVE for total cholesterol was 8.1%, 12.9%, and 17.4% for Blacks, Whites, and Hispanics/Latinos, respectively. This work demonstrates an effective method to account for non-linearities and interaction effects in genetics-based prediction models.

Publisher

Cold Spring Harbor Laboratory

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