TransformerCPI: improving compound–protein interaction prediction by sequence-based deep learning with self-attention mechanism and label reversal experiments

Lifan Chen(Shanghai Institute of Materia Medica), Xiaoqin Tan(Shanghai Institute of Materia Medica), Dingyan Wang(Shanghai Institute of Materia Medica), Feisheng Zhong(Shanghai Institute of Materia Medica), Xiaohong Liu(ShanghaiTech University), Tianbiao Yang(Shanghai Institute of Materia Medica), Xiaomin Luo(Shanghai Institute of Materia Medica), Kaixian Chen(ShanghaiTech University), Hualiang Jiang(ShanghaiTech University), Mingyue Zheng(Shanghai Institute of Materia Medica)
Bioinformatics
May 14, 2020
Cited by 556Open Access
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Abstract

MOTIVATION: Identifying compound-protein interaction (CPI) is a crucial task in drug discovery and chemogenomics studies, and proteins without three-dimensional structure account for a large part of potential biological targets, which requires developing methods using only protein sequence information to predict CPI. However, sequence-based CPI models may face some specific pitfalls, including using inappropriate datasets, hidden ligand bias and splitting datasets inappropriately, resulting in overestimation of their prediction performance. RESULTS: To address these issues, we here constructed new datasets specific for CPI prediction, proposed a novel transformer neural network named TransformerCPI, and introduced a more rigorous label reversal experiment to test whether a model learns true interaction features. TransformerCPI achieved much improved performance on the new experiments, and it can be deconvolved to highlight important interacting regions of protein sequences and compound atoms, which may contribute chemical biology studies with useful guidance for further ligand structural optimization. AVAILABILITY AND IMPLEMENTATION: https://github.com/lifanchen-simm/transformerCPI.


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