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Multiset correlation and factor analysis enables exploration of multi-omics data

Authors :
Brown, Brielin C.
Wang, Collin
Kasela, Silva
Aguet, François
Nachun, Daniel C.
Taylor, Kent D.
Tracy, Russell P.
Durda, Peter
Liu, Yongmei
Johnson, W. Craig
Van Den Berg, David
Gupta, Namrata
Gabriel, Stacy
Smith, Joshua D.
Gerzsten, Robert
Clish, Clary
Wong, Quenna
Papanicolau, George
Blackwell, Thomas W.
Rotter, Jerome I.
Rich, Stephen S.
Barr, R. Graham
Ardlie, Kristin G.
Knowles, David A.
Lappalainen, Tuuli
Brown, Brielin C.
Wang, Collin
Kasela, Silva
Aguet, François
Nachun, Daniel C.
Taylor, Kent D.
Tracy, Russell P.
Durda, Peter
Liu, Yongmei
Johnson, W. Craig
Van Den Berg, David
Gupta, Namrata
Gabriel, Stacy
Smith, Joshua D.
Gerzsten, Robert
Clish, Clary
Wong, Quenna
Papanicolau, George
Blackwell, Thomas W.
Rotter, Jerome I.
Rich, Stephen S.
Barr, R. Graham
Ardlie, Kristin G.
Knowles, David A.
Lappalainen, Tuuli
Publication Year :
2023

Abstract

Multi-omics datasets are becoming more common, necessitating better integration methods to realize their revolutionary potential. Here, we introduce multi-set correlation and factor analysis (MCFA), an unsupervised integration method tailored to the unique challenges of high-dimensional genomics data that enables fast inference of shared and private factors. We used MCFA to integrate methylation markers, protein expression, RNA expression, and metabolite levels in 614 diverse samples from the Trans-Omics for Precision Medicine/Multi-Ethnic Study of Atherosclerosis multi-omics pilot. Samples cluster strongly by ancestry in the shared space, even in the absence of genetic information, while private spaces frequently capture dataset-specific technical variation. Finally, we integrated genetic data by conducting a genome-wide association study (GWAS) of our inferred factors, observing that several factors are enriched for GWAS hits and trans-expression quantitative trait loci. Two of these factors appear to be related to metabolic disease. Our study provides a foundation and framework for further integrative analysis of ever larger multi-modal genomic datasets.<br />QC 20231003

Details

Database :
OAIster
Notes :
English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1428115678
Document Type :
Electronic Resource
Full Text :
https://doi.org/10.1016.j.xgen.2023.100359