CAPE: a deep learning framework with Chaos-Attention net for Promoter Evolution

Author:

Ren Ruohan1,Yu Hongyu2,Teng Jiahao3,Mao Sihui1,Bian Zixuan4,Tao Yangtianze2,Yau Stephen S-T25

Affiliation:

1. Zhili College, Tsinghua University , Beijing 100084, China

2. Department of Mathematical Sciences, Tsinghua University , Beijing 100084, China

3. School of Life Sciences, Tsinghua University , Beijing 100084, China

4. Weiyang College, Tsinghua University , Beijing 100084, China

5. Beijing Institute of Mathematical Sciences and Applications (Bimsa) , Beijing 101408, China

Abstract

Abstract Predicting the strength of promoters and guiding their directed evolution is a crucial task in synthetic biology. This approach significantly reduces the experimental costs in conventional promoter engineering. Previous studies employing machine learning or deep learning methods have shown some success in this task, but their outcomes were not satisfactory enough, primarily due to the neglect of evolutionary information. In this paper, we introduce the Chaos-Attention net for Promoter Evolution (CAPE) to address the limitations of existing methods. We comprehensively extract evolutionary information within promoters using merged chaos game representation and process the overall information with modified DenseNet and Transformer structures. Our model achieves state-of-the-art results on two kinds of distinct tasks related to prokaryotic promoter strength prediction. The incorporation of evolutionary information enhances the model’s accuracy, with transfer learning further extending its adaptability. Furthermore, experimental results confirm CAPE’s efficacy in simulating in silico directed evolution of promoters, marking a significant advancement in predictive modeling for prokaryotic promoter strength. Our paper also presents a user-friendly website for the practical implementation of in silico directed evolution on promoters. The source code implemented in this study and the instructions on accessing the website can be found in our GitHub repository https://github.com/BobYHY/CAPE.

Funder

National Natural Science Foundation of China

Tsinghua University Education Foundation fund

Tsinghua University Initiative Scientific Research Program

Academic and Scientific Works Competition for Undergraduates

Academic Affairs Office

Tsinghua University

Xuetang Program

Publisher

Oxford University Press (OUP)

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