Review of machine learning and deep learning models for toxicity prediction

被引:40
作者
Guo, Wenjing [1 ]
Liu, Jie [1 ]
Dong, Fan [1 ]
Song, Meng [1 ]
Li, Zoe [1 ]
Khan, Md Kamrul Hasan [1 ]
Patterson, Tucker A. [1 ]
Hong, Huixiao [1 ]
机构
[1] US FDA, Natl Ctr Toxicol Res, Jefferson, AR 72079 USA
关键词
Toxicity; machine learning; deep learning; model; dataset; data quality; INDUCED LIVER-INJURY; IN-SILICO PREDICTION; POTASSIUM CHANNEL BLOCKAGE; DEVELOPMENTAL TOXICITY; CHEMICAL CARCINOGENICITY; REPRODUCTIVE TOXICITY; CLASSIFICATION MODELS; ESTROGENIC ACTIVITY; NEURAL-NETWORK; DRUG;
D O I
10.1177/15353702231209421
中图分类号
R-3 [医学研究方法]; R3 [基础医学];
学科分类号
1001 ;
摘要
The ever-increasing number of chemicals has raised public concerns due to their adverse effects on human health and the environment. To protect public health and the environment, it is critical to assess the toxicity of these chemicals. Traditional in vitro and in vivo toxicity assays are complicated, costly, and time-consuming and may face ethical issues. These constraints raise the need for alternative methods for assessing the toxicity of chemicals. Recently, due to the advancement of machine learning algorithms and the increase in computational power, many toxicity prediction models have been developed using various machine learning and deep learning algorithms such as support vector machine, random forest, k-nearest neighbors, ensemble learning, and deep neural network. This review summarizes the machine learning- and deep learning-based toxicity prediction models developed in recent years. Support vector machine and random forest are the most popular machine learning algorithms, and hepatotoxicity, cardiotoxicity, and carcinogenicity are the frequently modeled toxicity endpoints in predictive toxicology. It is known that datasets impact model performance. The quality of datasets used in the development of toxicity prediction models using machine learning and deep learning is vital to the performance of the developed models. The different toxicity assignments for the same chemicals among different datasets of the same type of toxicity have been observed, indicating benchmarking datasets is needed for developing reliable toxicity prediction models using machine learning and deep learning algorithms. This review provides insights into current machine learning models in predictive toxicology, which are expected to promote the development and application of toxicity prediction models in the future.
引用
收藏
页码:1952 / 1973
页数:22
相关论文
共 144 条
[51]   Regulatory Forum Opinion Piece*: Transgenic/Alternative Carcinogenicity Assays: A Retrospective Review of Studies Submitted to CDER/FDA 1997-2014 [J].
Jacobs, Abigail C. ;
Brown, Paul C. .
TOXICOLOGIC PATHOLOGY, 2015, 43 (05) :605-610
[52]   In silico prediction of chemical reproductive toxicity using machine learning [J].
Jiang, Changsheng ;
Yang, Hongbin ;
Di, Peiwen ;
Li, Weihua ;
Tang, Yun ;
Liu, Guixia .
JOURNAL OF APPLIED TOXICOLOGY, 2019, 39 (06) :844-854
[53]   CardioTox net: a robust predictor for hERG channel blockade based on deep learning meta-feature ensembles [J].
Karim, Abdul ;
Lee, Matthew ;
Balle, Thomas ;
Sattar, Abdul .
JOURNAL OF CHEMINFORMATICS, 2021, 13 (01)
[54]   DeepAffinity: interpretable deep learning of compound-protein affinity through unified recurrent and convolutional neural networks [J].
Karimi, Mostafa ;
Wu, Di ;
Wang, Zhangyang ;
Shen, Yang .
BIOINFORMATICS, 2019, 35 (18) :3329-3338
[55]   Molecular graph convolutions: moving beyond fingerprints [J].
Kearnes, Steven ;
McCloskey, Kevin ;
Berndl, Marc ;
Pande, Vijay ;
Riley, Patrick .
JOURNAL OF COMPUTER-AIDED MOLECULAR DESIGN, 2016, 30 (08) :595-608
[56]   Prediction models for drug-induced hepatotoxicity by using weighted molecular fingerprints [J].
Kim, Eunyoung ;
Nam, Hojung .
BMC BIOINFORMATICS, 2017, 18
[57]   BayeshERG: a robust, reliable and interpretable deep learning model for predicting hERG channel blockers [J].
Kim, Hyunho ;
Park, Minsu ;
Lee, Ingoo ;
Nam, Hojung .
BRIEFINGS IN BIOINFORMATICS, 2022, 23 (04)
[58]  
Kleinstreuer NC., 2021, CHEM RES TOXICOL, V34
[59]   Predicting drug-induced liver injury: The importance of data curation [J].
Kotsampasakou, Eleni ;
Montanari, Floriane ;
Ecker, Gerhard F. .
TOXICOLOGY, 2017, 389 :139-145
[60]   Toxicity testing in the 21st century: progress in the past decade and future perspectives [J].
Krewski, D. ;
Andersen, M. E. ;
Tyshenko, M. G. ;
Krishnan, K. ;
Hartung, T. ;
Boekelheide, K. ;
Wambaugh, J. F. ;
Jones, D. ;
Whelan, M. ;
Thomas, R. ;
Yauk, C. ;
Barton-Maclaren, T. ;
Cote, I. .
ARCHIVES OF TOXICOLOGY, 2020, 94 (01) :1-58