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Deep learning modeling of ribosome profiling reveals regulatory underpinnings of translatome and interprets disease variants

Deep learning modeling of ribosome profiling reveals regulatory underpinnings of translatome and interprets disease variants

来源:bioRxiv_logobioRxiv
英文摘要

Gene expression involves transcription and translation. Despite large datasets and increasingly powerful methods devoted to calculating genetic variants' effects on transcription, discrepancy between mRNA and protein levels hinders the systematic interpretation of the regulatory effects of disease-associated variants. Accurate models of the sequence determinants of translation are needed to close this gap and to interpret disease-associated variants that act on translation. Here, we present Translatomer, a multimodal transformer framework that predicts cell-type-specific translation from mRNA expression and gene sequence. We train Translatomer on 33 tissues and cell lines, and show that the inclusion of sequence substantially improves the prediction of ribosome profiling signal, indicating that Translatomer captures sequence-dependent translational regulatory information. Translatomer achieves accuracies of 0.72 to 0.80 for de novo prediction of cell-type-specific ribosome profiling. We develop an in silico mutagenesis tool to estimate mutational effects on translation and demonstrate that variants associated with translation regulation are evolutionarily constrained, both within the human population and across species. Notably, we identify cell-type-specific translational regulatory mechanisms independent of eQTLs for 3,041 non-coding and synonymous variants associated with complex diseases, including Alzheimer's disease, schizophrenia, and congenital heart disease. Translatomer accurately models the genetic underpinnings of translation, bridging the gap between mRNA and protein levels, and providing valuable mechanistic insights toward mapping "missing regulation" in disease genetics.

Mao Yuanhui、Xiong Xushen、Kellis Manolis、Xiong Lei、Shi Shaohui、Li Chengyu、Fang Qianchen、Ding Ke、Hu Xinyang、He Jialin、Chen Kexuan、Nan Jiuhong、Boix Carles A.、Li Jingyun

10.1101/2024.02.26.582217

基础医学生物科学研究方法、生物科学研究技术分子生物学

Mao Yuanhui,Xiong Xushen,Kellis Manolis,Xiong Lei,Shi Shaohui,Li Chengyu,Fang Qianchen,Ding Ke,Hu Xinyang,He Jialin,Chen Kexuan,Nan Jiuhong,Boix Carles A.,Li Jingyun.Deep learning modeling of ribosome profiling reveals regulatory underpinnings of translatome and interprets disease variants[EB/OL].(2025-03-28)[2025-06-05].https://www.biorxiv.org/content/10.1101/2024.02.26.582217.点此复制

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