Autoencoder-transformed transcriptome improves genotype-phenotype association studies

Qing Li,Jiayi Bian, Janith Weeraman, Albert Leung, Guotao Yang, Thierry Chekouo,Jun Yan,Jingjing Wu,Quan Long

biorxiv(2024)

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摘要
Transcriptome-wide association study (TWAS) is an emerging model leveraging gene expressions to direct genotype- phenotype association mapping. A key component in TWAS is the prediction of gene expressions; and many statistical approaches have been developed along this line. However, a problem is that many genes have low expression heritability, limiting the performance of any predictive model. In this work, hypothe- sizing that appropriate denoising may improve the quality of expression data (including heritability), we propose AE-TWAS, which adds a transformation step before conducting standard TWAS. The transformation is composed of two steps by first splitting the whole transcriptome into co-expression networks (modules) and then using autoencoder (AE) to reconstruct the transcriptome data within each module. This transformation removes noise (including nonlinear ones) from the transcriptome data, paving the path for downstream TWAS. We showed two inspiring properties of AE-TWAS: (1) After transformation, the transcriptome data enjoy higher expression heritability at the low-heritability spectrum and possess higher connectivity within the modules. (2) The transferred transcriptome indeed enables better performance of TWAS; and moreover, the newly formed highly connected genes (i.e., hub genes) are more functionally relevant to diseases, evidenced by their functional annotations and overlap with TWAS hits. ### Competing Interest Statement The authors have declared no competing interest.
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