General Kernel Machine Methods for Multi-Omics Integration and Genome-Wide Association Testing With Related Individuals. Academic Article uri icon

Overview

abstract

  • Integrating multi-omics data may help researchers understand the genetic underpinnings of complex traits and diseases. However, the best ways to integrate multi-omics data and use them to address pressing scientific questions remain a challenge. One important and topical problem is how to assess the aggregate effect of multiple genomic data types (e.g. genotypes and gene expression levels) on a phenotype, particularly while accommodating routine issues, such as having related subjects' data in analyses. In this paper, we extend an existing composite kernel machine regression model to integrate two multi-omics data types, while accommodating for general correlation structures amongst outcomes. Due to the kernel machine regression framework, our methods allow for the integration of high-dimensional omics data with small, nonlinear, and interactive effects, and accommodation of general study designs. Here, we focus on scientific questions that aim to assess the association between a functional grouping (such as a gene or a pathway) and a quantitative trait of interest. We use a kernel machine regression to integrate the two multi-omics data types, as they may relate to the trait, and perform a global test of association. We demonstrate the advantage of this approach over single data type association tests via simulation. Finally, we apply this method to a large, multi-ethnic data set to investigate how predicted gene expression and rare genetic variation may be related to two platelet traits.

authors

  • Little, Amarise
  • Zhao, Ni
  • Mikhaylova, Anna
  • Zhang, Angela
  • Ling, Wodan
  • Thibord, Florian
  • Johnson, Andrew D
  • Raffield, Laura M
  • Curran, Joanne E
  • Blangero, John
  • O'Connell, Jeffrey R
  • Xu, Huichun
  • Rotter, Jerome I
  • Rich, Stephen S
  • Rice, Kenneth M
  • Chen, Ming-Huei
  • Reiner, Alexander
  • Kooperberg, Charles
  • Vu, Thao
  • Hou, Lifang
  • Fornage, Myriam
  • Loos, Ruth J F
  • Kenny, Eimear
  • Mathias, Rasika
  • Becker, Lewis
  • Smith, Albert V
  • Boerwinkle, Eric
  • Yu, Bing
  • Thornton, Timothy
  • Wu, Michael C

publication date

  • January 1, 2025

Research

keywords

  • Genome-Wide Association Study
  • Genomics

Identity

Digital Object Identifier (DOI)

  • 10.1002/gepi.22610

PubMed ID

  • 39812506

Additional Document Info

volume

  • 49

issue

  • 1