Co‐model for chemical toxicity prediction based on multi‐task deep learning

Author:

Yuan Li Yuan1,Chen Lingfeng1,Pu Chengtao1,Zang Chengdong1,Yan YingChao1,Chen Yadong1ORCID,Zhang Yanmin1ORCID,Liu Haichun1ORCID

Affiliation:

1. Laboratory of Molecular Design and Drug Discovery School of Science China Pharmaceutical University 639 Longmian Avenue Nanjing 211198 China

Abstract

AbstractThe toxicity of compounds is closely related to the effectiveness and safety of drug development, and accurately predicting the toxicity of compounds is one of the most challenging tasks in medicinal chemistry and pharmacology. In this paper, we construct three types of models for single and multi‐tasking based on 2D and 3D descriptors, fingerprints and molecular graphs, and then validate the models with benchmark tests on the Tox21 data challenge. We found that due to the information sharing mechanism of multi‐task learning, it could address the imbalance problem of the Tox21 data sets to some extent, and the prediction performance of the multi‐task was significantly improved compared with the single task in general. Given the complement of the different molecular representations and modeling algorithms, we attempted to integrate them into a robust Co‐Model. Our Co‐Model performs well in various evaluation metrics on the test set and also achieves significant performance improvement compared to other models in the literature, which clearly demonstrates its superior predictive power and robustness.

Funder

National Natural Science Foundation of China

Publisher

Wiley

Subject

Organic Chemistry,Computer Science Applications,Drug Discovery,Molecular Medicine,Structural Biology

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