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arxiv:2502.13991

Learning to Discover Regulatory Elements for Gene Expression Prediction

Published on Feb 19
· Submitted by oceanusity on Feb 24
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Abstract

We consider the problem of predicting gene expressions from DNA sequences. A key challenge of this task is to find the regulatory elements that control gene expressions. Here, we introduce Seq2Exp, a Sequence to Expression network explicitly designed to discover and extract regulatory elements that drive target gene expression, enhancing the accuracy of the gene expression prediction. Our approach captures the causal relationship between epigenomic signals, DNA sequences and their associated regulatory elements. Specifically, we propose to decompose the epigenomic signals and the DNA sequence conditioned on the causal active regulatory elements, and apply an information bottleneck with the Beta distribution to combine their effects while filtering out non-causal components. Our experiments demonstrate that Seq2Exp outperforms existing baselines in gene expression prediction tasks and discovers influential regions compared to commonly used statistical methods for peak detection such as MACS3. The source code is released as part of the AIRS library (https://github.com/divelab/AIRS/).

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(ICLR 2025 Oral) Seq2Exp, a Sequence to Gene Expression network explicitly designed to discover and extract regulatory elements that drive target gene expression based on causal relationship between epigenomic signals, DNA sequences and their associated regulatory elements to perform gene expression prediction

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