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On the cross-population generalizability of gene expression prediction models.

TitleOn the cross-population generalizability of gene expression prediction models.
Publication TypeJournal Article
Year of Publication2020
AuthorsKeys KL, C Y Mak A, White MJ, Eckalbar WL, Dahl AW, Mefford J, Mikhaylova AV, Contreras MG, Elhawary JR, Eng C, Hu D, Huntsman S, Oh SS, Salazar S, Lenoir MA, Ye JC, Thornton TA, Zaitlen N, Burchard EG, Gignoux CR
JournalPLoS Genet
Volume16
Issue8
Paginatione1008927
Date Published2020 08
ISSN1553-7404
KeywordsAfrican Americans, Gene Expression Profiling, Genome-Wide Association Study, Humans, Models, Genetic, Quantitative Trait Loci, Reference Standards, RNA-Seq, Transcriptome
Abstract

The genetic control of gene expression is a core component of human physiology. For the past several years, transcriptome-wide association studies have leveraged large datasets of linked genotype and RNA sequencing information to create a powerful gene-based test of association that has been used in dozens of studies. While numerous discoveries have been made, the populations in the training data are overwhelmingly of European descent, and little is known about the generalizability of these models to other populations. Here, we test for cross-population generalizability of gene expression prediction models using a dataset of African American individuals with RNA-Seq data in whole blood. We find that the default models trained in large datasets such as GTEx and DGN fare poorly in African Americans, with a notable reduction in prediction accuracy when compared to European Americans. We replicate these limitations in cross-population generalizability using the five populations in the GEUVADIS dataset. Via realistic simulations of both populations and gene expression, we show that accurate cross-population generalizability of transcriptome prediction only arises when eQTL architecture is substantially shared across populations. In contrast, models with non-identical eQTLs showed patterns similar to real-world data. Therefore, generating RNA-Seq data in diverse populations is a critical step towards multi-ethnic utility of gene expression prediction.

DOI10.1371/journal.pgen.1008927
Pubmed Linkhttps://www.ncbi.nlm.nih.gov/pubmed/32797036?dopt=Abstract
page_expoExternal
Alternate JournalPLoS Genet
PubMed ID32797036
PubMed Central IDPMC7449671
Grant ListR01 HL117004 / HL / NHLBI NIH HHS / United States
TL4 GM118986 / GM / NIGMS NIH HHS / United States
P60 MD006902 / MD / NIMHD NIH HHS / United States
R01 ES015794 / ES / NIEHS NIH HHS / United States
T34 GM008574 / GM / NIGMS NIH HHS / United States
R01 HL128439 / HL / NHLBI NIH HHS / United States
T32 HG000044 / HG / NHGRI NIH HHS / United States
K01 HL140218 / HL / NHLBI NIH HHS / United States
R56 HG010297 / HG / NHGRI NIH HHS / United States
U01 HG007419 / HG / NHGRI NIH HHS / United States
U01 HG009080 / HG / NHGRI NIH HHS / United States
R01 HL135156 / HL / NHLBI NIH HHS / United States
R21 ES024844 / ES / NIEHS NIH HHS / United States
R01 HG010297 / HG / NHGRI NIH HHS / United States
R01 HL104608 / HL / NHLBI NIH HHS / United States
R01 HL141992 / HL / NHLBI NIH HHS / United States
K12 GM081266 / GM / NIGMS NIH HHS / United States
R00 HL135403 / HL / NHLBI NIH HHS / United States
R01 MD010443 / MD / NIMHD NIH HHS / United States
UL1 GM118985 / GM / NIGMS NIH HHS / United States
RL5 GM118984 / GM / NIGMS NIH HHS / United States

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