AI Article Synopsis

  • eQTLs are genetic variations that influence gene expression, and traditional analyses often overlook the complexity of gene regulatory networks.
  • The TBLDA framework is developed to analyze gene expression and genotype data together, accommodating multiple samples from individuals without losing accuracy.
  • By applying this model to GTEx v8 data, the authors successfully identified thousands of eQTLs while capturing significant biological signals across different tissues, all using unnormalized raw count data.

Article Abstract

Expression quantitative trait loci (eQTLs), or single-nucleotide polymorphisms that affect average gene expression levels, provide important insights into context-specific gene regulation. Classic eQTL analyses use one-to-one association tests, which test gene-variant pairs individually and ignore correlations induced by gene regulatory networks and linkage disequilibrium. Probabilistic topic models, such as latent Dirichlet allocation, estimate latent topics for a collection of count observations. Prior multimodal frameworks that bridge genotype and expression data assume matched sample numbers between modalities. However, many data sets have a nested structure where one individual has several associated gene expression samples and a single germline genotype vector. Here, we build a telescoping bimodal latent Dirichlet allocation (TBLDA) framework to learn shared topics across gene expression and genotype data that allows multiple RNA sequencing samples to correspond to a single individual's genotype. By using raw count data, our model avoids possible adulteration via normalization procedures. Ancestral structure is captured in a genotype-specific latent space, effectively removing it from shared components. Using GTEx v8 expression data across 10 tissues and genotype data, we show that the estimated topics capture meaningful and robust biological signal in both modalities and identify associations within and across tissue types. We identify 4,645 cis-eQTLs and 995 trans-eQTLs by conducting eQTL mapping between the most informative features in each topic. Our TBLDA model is able to identify associations using raw sequencing count data when the samples in two separate data modalities are matched one-to-many, as is often the case in biological data. Our code is freely available at https://github.com/gewirtz/TBLDA.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9387650PMC
http://dx.doi.org/10.26508/lsa.202101297DOI Listing

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