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毒性预测的最新进展:深度图学习的应用。

Recent Advances in Toxicity Prediction: Applications of Deep Graph Learning.

机构信息

Department of Computer Science and Engineering, University of Texas at Arlington, Arlington, Texas 76019, United States.

出版信息

Chem Res Toxicol. 2023 Aug 21;36(8):1206-1226. doi: 10.1021/acs.chemrestox.2c00384. Epub 2023 Aug 10.

Abstract

The development of new drugs is time-consuming and expensive, and as such, accurately predicting the potential toxicity of a drug candidate is crucial in ensuring its safety and efficacy. Recently, deep graph learning has become prevalent in this field due to its computational power and cost efficiency. Many novel deep graph learning methods aid toxicity prediction and further prompt drug development. This review aims to connect fundamental knowledge with burgeoning deep graph learning methods. We first summarize the essential components of deep graph learning models for toxicity prediction, including molecular descriptors, molecular representations, evaluation metrics, validation methods, and data sets. Furthermore, based on various graph-related representations of molecules, we introduce several representative studies and methods for toxicity prediction from the perspective of GNN architectures and graph pretrained models. Compared to other types of models, deep graph models not only advance in higher accuracy and efficiency but also provide more intuitive insights, which is significant in the development of model interpretation and generalization ability. The graph pretrained models are emerging as they can extract prominent features from large-scale unlabeled molecular graph data and improve the performance of downstream toxicity prediction tasks. We hope this survey can serve as a handbook for individuals interested in exploring deep graph learning for toxicity prediction.

摘要

新药的研发既耗时又昂贵,因此准确预测候选药物的潜在毒性对于确保其安全性和有效性至关重要。最近,由于其计算能力和成本效益,深度图学习在该领域变得流行。许多新颖的深度图学习方法有助于毒性预测,并进一步推动药物研发。本综述旨在将基础知识与新兴的深度图学习方法联系起来。我们首先总结了用于毒性预测的深度图学习模型的基本组成部分,包括分子描述符、分子表示、评估指标、验证方法和数据集。此外,基于分子的各种图相关表示,我们从 GNN 架构和图预训练模型的角度介绍了几种用于毒性预测的代表性研究和方法。与其他类型的模型相比,深度图模型不仅在更高的准确性和效率方面有所进步,而且还提供了更直观的见解,这对于模型解释和泛化能力的发展具有重要意义。图预训练模型正在兴起,因为它们可以从大规模未标记的分子图数据中提取突出特征,并提高下游毒性预测任务的性能。我们希望本调查能够成为对探索深度图学习进行毒性预测感兴趣的人的手册。

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