Deep learning for predicting toxicity of chemicals: a mini review.

Q2 Biochemistry, Genetics and Molecular Biology
Weihao Tang, Jingwen Chen, Zhongyu Wang, Hongbin Xie, Huixiao Hong
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引用次数: 49

Abstract

Humans and wildlife inhabit a world with panoply of natural and synthetic chemicals. Alarmingly, only a limited number of chemicals have undergone comprehensive toxicological evaluation due to limitations of traditional toxicity testing. High-throughput screening assays provide a higher-speed alternative for conventional toxicity testing. Advancement of high-throughput bioassay technology has greatly increased chemical toxicity data volumes in the past decade, pushing toxicology research into a "big data" era. However, traditional data analysis methods fail to effectively process large data volumes, presenting both a challenge and an opportunity for toxicologists. Deep learning, a machine learning method leveraging deep neural networks (DNNs), is a proven useful tool for building quantitative structure-activity relationship (QSAR) models for toxicity prediction utilizing these new large datasets. In this mini review, a brief technical background on DNNs is provided, and the current state of chemical toxicity prediction models built with DNNs is reviewed. In addition, relevant toxicity data sources are summarized, possible limitations are discussed, and perspectives on DNN utilization in chemical toxicity prediction are given.

预测化学物质毒性的深度学习:一个小回顾。
人类和野生动物生活在一个充满天然和合成化学物质的世界。令人震惊的是,由于传统毒性测试的局限性,只有有限数量的化学品进行了全面的毒理学评估。高通量筛选试验为传统毒性试验提供了一种更快的替代方法。近十年来,高通量生物测定技术的进步极大地增加了化学毒性数据量,将毒理学研究推向了“大数据”时代。然而,传统的数据分析方法无法有效地处理大量数据,这对毒理学家来说既是挑战也是机遇。深度学习是一种利用深度神经网络(dnn)的机器学习方法,是利用这些新的大型数据集构建定量结构-活性关系(QSAR)模型进行毒性预测的有效工具。本文简要介绍了深度神经网络的技术背景,并对利用深度神经网络建立的化学毒性预测模型的现状进行了综述。此外,综述了相关毒性数据来源,讨论了可能存在的局限性,并对DNN在化学毒性预测中的应用前景进行了展望。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
6.20
自引率
0.00%
发文量
0
审稿时长
>24 weeks
期刊介绍: Journal of Environmental Science and Health, Part C: Environmental Carcinogenesis and Ecotoxicology Reviews aims at rapid publication of reviews on important subjects in various areas of environmental toxicology, health and carcinogenesis. Among the subjects covered are risk assessments of chemicals including nanomaterials and physical agents of environmental significance, harmful organisms found in the environment and toxic agents they produce, and food and drugs as environmental factors. It includes basic research, methodology, host susceptibility, mechanistic studies, theoretical modeling, environmental and geotechnical engineering, and environmental protection. Submission to this journal is primarily on an invitational basis. All submissions should be made through the Editorial Manager site, and are subject to peer review by independent, anonymous expert referees. Please review the instructions for authors for manuscript submission guidance.
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