Litcius/Paper detail

Deep Learning in Environmental Toxicology: Current Progress and Open Challenges

Haoyue Tan, Jinsha Jin, Chao Fang, Ying Zhang, Baodi Chang, Xiaowei Zhang, Hongxia Yu, Wei Shi

2023ACS ES&T Water16 citationsDOI

Abstract

Ubiquitous chemicals in the environment may pose a threat to human health and the ecosystem, so comprehensive toxicity information must be obtained. Due to the inability of traditional experimental methods to meet the needs of toxicity testing of a large number of chemicals, in vivo and in vitro assays have been shifted to a new paradigm, computer-assisted virtual screening. However, the commonly used virtual screening techniques, including read-across and machine learning-based quantitative structure–activity relationship (QSAR), have limitations in assessing complicated, high-dimensional, and multimodal bioactivity data. In these cases, deep learning (DL) has emerged as a desirable solution for the application of QSARs in toxicity prediction. Therefore, this paper introduces and discusses (a) architectures of six commonly used DL algorithms (fully connected neural network, convolutional neural network, recurrent neural network, long short-term memory, graph neural network, and generative adversarial network), (b) the application scenarios of six DL algorithms, e.g., toxicity prediction and data generation, and (c) challenges and future trends of DLs in toxicity prediction. We believe that by consolidating toxicological mechanisms and DL algorithms, this survey can help readers to build prediction models with excellent performance while promoting further discussions of the fusion of environmental toxicology and DL.

Topics & Concepts

Computer scienceMachine learningDeep learningArtificial intelligenceConvolutional neural networkArtificial neural networkQuantitative structure–activity relationshipComputational Drug Discovery MethodsMachine Learning in Materials ScienceAnimal testing and alternatives