4.7 Article

Large-Scale Modeling of Multispecies Acute Toxicity End Points Using Consensus of Multitask Deep Learning Methods

Journal

JOURNAL OF CHEMICAL INFORMATION AND MODELING
Volume 61, Issue 2, Pages 653-663

Publisher

AMER CHEMICAL SOC
DOI: 10.1021/acs.jcim.0c01164

Keywords

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Funding

  1. Intramural Research Program of the National Institutes of Health, National Center for Advancing Translational Sciences

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The study reports the collection, curation, and integration of data from the ChemIDplus database for predicting toxicity using various computational modeling approaches, including deep neural networks. The developed models demonstrated significantly better performance, especially in predicting smaller tasks, and have been made publicly available to support regulatory and research applications.
Computational methods to predict molecular properties regarding safety and toxicology represent alternative approaches to expedite drug development, screen environmental chemicals, and thus significantly reduce associated time and costs. There is a strong need and interest in the development of computational methods that yield reliable predictions of toxicity, and many approaches, including the recently introduced deep neural networks, have been leveraged towards this goal. Herein, we report on the collection, curation, and integration of data from the public data sets that were the source of the ChemIDplus database for systemic acute toxicity. These efforts generated the largest publicly available such data set comprising > 80,000 compounds measured against a total of 59 acute systemic toxicity end points. This data was used for developing multiple single- and multitask models utilizing random forest, deep neural networks, convolutional, and graph convolutional neural network approaches. For the first time, we also reported the consensus models based on different multitask approaches. To the best of our knowledge, prediction models for 36 of the 59 end points have never been published before. Furthermore, our results demonstrated a significantly better performance of the consensus model obtained from three multitask learning approaches that particularly predicted the 29 smaller tasks (less than 300 compounds) better than other models developed in the study. The curated data set and the developed models have been made publicly available at https://github.com/ncats/ld50-multitask, https://predictor.ncats.io/, and https://cactus.nci.nih.gov/download/acute-toxicity-db (data set only) to support regulatory and research applications.

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