Genome-wide association studies (GWAS) have implicated specific alleles and genes as risk factors for numerous complex traits. However, translating GWAS results into biologically and therapeutically meaningful discoveries remains extremely challenging. Most GWAS results identify noncoding regions of the genome, suggesting that differences in gene regulation are the major driver of trait variability. To better integrate GWAS results with gene regulatory polymorphisms, we previously developed PrediXcan (also known as "transcriptome-wide association studies" or TWAS), which maps SNPs to predicted gene expression using GWAS data. In this study, we developed RatXcan, a framework that extends this methodology to outbred heterogeneous stock (HS) rats. RatXcan accounts for the close familial relationships among HS rats by modeling the relatedness with a random effect that encodes the genetic relatedness. RatXcan also corrects for polygenic-driven inflation because of the equivalence between a relatedness random effect and the infinitesimal polygenic model. To develop RatXcan, we trained transcript predictors for 8,934 genes using reference genotype and expression data from five rat brain regions. We found that the cis genetic architecture of gene expression in both rats and humans was sparse and similar across brain tissues. We tested the association between predicted expression in rats and two example traits (body length and BMI) using phenotype and genotype data from 5,401 densely genotyped HS rats and identified a significant enrichment between the genes associated with rat and human body length and BMI. Thus, RatXcan represents a valuable tool for identifying the relationship between gene expression and phenotypes across species and paves the way to explore shared biological mechanisms of complex traits.
RatXcan: A framework for cross-species integration of genome-wide association and gene expression data.
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作者:Santhanam Natasha, Sanchez-Roige Sandra, Mi Sabrina, Liang Yanyu, Chitre Apurva S, Munro Daniel, Chen Denghui, Gao Jianjun, Garcia-Martinez Angel, George Anthony M, Gileta Alexander F, Han Wenyan, Holl Katie, Hughson Alesa, King Christopher P, Lamparelli Alexander C, Martin Connor D, Nyasimi Festus, St Pierre Celine L, Sumner Sarah, Tripi Jordan, Wang Tengfei, Chen Hao, Flagel Shelly, Ishiwari Keita, Meyer Paul, Polesskaya Oksana, Saba Laura, Solberg Woods Leah C, Palmer Abraham A, Im Hae Kyung
| 期刊: | PLoS Genetics | 影响因子: | 3.700 |
| 时间: | 2025 | 起止号: | 2025 Mar 31; 21(3):e1011583 |
| doi: | 10.1371/journal.pgen.1011583 | ||
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