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Applications of Machine Learning Methods in Drug Toxicity Prediction

机译:机器学习方法在药物毒性预测中的应用

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摘要

Toxicity evaluation is an important part of the preclinical safety assessment of new drugs, which is directly related to human health and the fate of drugs. It is of importance to study how to evaluate drug toxicity accurately and economically. The traditional in vitro and in vivo toxicity tests are laborious, time-consuming, highly expensive, and even involve animal welfare issues. Computational methods developed for drug toxicity prediction can compensate for the shortcomings of traditional methods and have been considered useful in the early stages of drug development. Numerous drug toxicity prediction models have been developed using a variety of computational methods. With the advance of the theory of machine learning and molecular representation, more and more drug toxicity prediction models are developed using a variety of machine learning methods, such as support vector machine, random forest, naive Bayesian, back propagation neural network. And significant advances have been made in many toxicity endpoints, such as carcinogenicity, mutagenicity, and hepatotoxicity. In this review, we aimed to provide a comprehensive overview of the machine learning based drug toxicity prediction studies conducted in recent years. In addition, we compared the performance of the models proposed in these studies in terms of accuracy, sensitivity, and specificity, providing a view of the current state-of-the-art in this field and highlighting the issues in the current studies.
机译:毒性评估是新药物临床前安全评估的重要组成部分,其与人类健康和药物的命运直接相关。研究如何准确且经济地评估药物毒性是重要的。传统的体外和体内毒性测试是费力,耗时,高度昂贵的,甚至涉及动物福利问题。用于药物毒性预测开发的计算方法可以弥补传统方法的缺点,并被认为是在药物发育的早期阶段有用。使用各种计算方法开发了许多药物毒性预测模型。随着机器学习理论的进展和分子表示,使用各种机器学习方法开发了越来越多的药物毒性预测模型,例如支持向量机,随机森林,天真贝叶斯,后传播神经网络。许多毒性终点,例如致癌性,崩溃性和肝毒性,已经取得了显着进展。在本综述中,我们旨在提供近年来基于机器学习的药物毒性预测研究的全面概述。此外,我们在准确性,敏感性和特异性方面比较了这些研究中提出的模型的性能,提供了对本领域目前最先进的看法,并突出了当前研究中的问题。

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