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2020 | OriginalPaper | Chapter

MONN: A Multi-objective Neural Network for Predicting Pairwise Non-covalent Interactions and Binding Affinities Between Compounds and Proteins

Authors : Shuya Li, Fangping Wan, Hantao Shu, Tao Jiang, Dan Zhao, Jianyang Zeng

Published in: Research in Computational Molecular Biology

Publisher: Springer International Publishing

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Abstract

Background. Computational approaches for inferring the mechanisms of compound-protein interactions (CPIs) can greatly facilitate drug development. Recently, although a number of deep learning based methods have been proposed to predict binding affinities of CPIs and attempt to capture local interaction sites in compounds and proteins through neural attentions, they still lack a systematic evaluation on the interpretability of the identified local features [13]. In this work, we constructed the first benchmark dataset containing the pairwise inter-molecular non-covalent interactions for more than 10,000 compound-protein pairs. Our comprehensive evaluation suggested that current neural attention based approaches have difficulty in automatically capturing the accurate local non-covalent interactions between compounds and proteins.

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Literature
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Metadata
Title
MONN: A Multi-objective Neural Network for Predicting Pairwise Non-covalent Interactions and Binding Affinities Between Compounds and Proteins
Authors
Shuya Li
Fangping Wan
Hantao Shu
Tao Jiang
Dan Zhao
Jianyang Zeng
Copyright Year
2020
DOI
https://doi.org/10.1007/978-3-030-45257-5_29

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