Pmf-cpi: assessing drug selectivity with a pretrained multi-functional model for compound–protein interactions

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Abstract

Compound–protein interactions (CPI) play significant roles in drug development. To avoid side effects, it is also crucial to evaluate drug selectivity when binding to different targets. However, most selectivity prediction models are constructed for specific targets with limited data. In this study, we present a pretrained multi-functional model for compound–protein interaction prediction (PMF-CPI) and fine-tune it to assess drug selectivity. This model uses recurrent neural networks to process the protein embedding based on the pretrained language model TAPE, extracts molecular information from a graph encoder, and produces the output from dense layers. PMF-CPI obtained the best performance compared to outstanding approaches on both the binding affinity regression and CPI classification tasks. Meanwhile, we apply the model to analyzing drug selectivity after fine-tuning it on three datasets related to specific targets, including human cytochrome P450s. The study shows that PMF-CPI can accurately predict different drug affinities or opposite interactions toward similar targets, recognizing selective drugs for precise therapeutics.Kindly confirm if corresponding authors affiliations are identified correctly and amend if any.Yes, it is correct.

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Song, N., Dong, R., Pu, Y., Wang, E., Xu, J., & Guo, F. (2023). Pmf-cpi: assessing drug selectivity with a pretrained multi-functional model for compound–protein interactions. Journal of Cheminformatics, 15(1). https://doi.org/10.1186/s13321-023-00767-z

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