Machine learning for drug repositioning: Recent advances and challenges

Lijun Cai , Jiaxin Chu , Junlin Xu , Yajie Meng , Changcheng Lu , Xianfang Tang , Guanfang Wang , Geng Tian , Jialiang Yang
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Abstract

Because translating the growing body of knowledge about human disease into treatments has been slower than expected, the application of machine learning techniques to drug repositioning has become attractive. An effective and comprehensive understanding of the current state of drug repositioning can help researchers to investigate more efficient and accurate algorithms. In this study, we first present the theoretical rationale for drug repositioning analysis. Then, we conduct a comprehensive review on machine learning algorithms for drug discovery, which include (1) traditional machine learning-based models using linear and logistic regression, support vector machines, random forest, and decision tree, (2) network transmission-based models using drug–disease similarity and network similarity-based reasoning, (3) matrix completion and matrix factorization-based methods using matrix completion, logistic matrix factorization, collaborative matrix factorization, and regularized matrix factorization, and (4) deep learning-based methods using deep neural networks, convolutional neural networks, recurrent neural networks, and graph convolutional networks. This is followed by a review of commonly used data sources for drug repositioning, as well as an introduction to particular data sources that can be employed by researchers. To conclude, we discuss the future developments and challenges of drug repositioning methods.

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用于药物重新定位的机器学习:最新进展和挑战
由于将不断增长的人类疾病知识转化为治疗方法的速度比预期的要慢,因此将机器学习技术应用于药物重新定位变得很有吸引力。有效和全面地了解药物重新定位的现状可以帮助研究人员研究更有效和准确的算法。在这项研究中,我们首先提出了药物重新定位分析的理论基础。然后,我们对用于药物发现的机器学习算法进行了全面的综述,包括:(1)基于线性和逻辑回归、支持向量机、随机森林和决策树的传统机器学习模型;(2)基于药物-疾病相似性和基于网络相似性推理的基于网络传输的模型;(3)基于矩阵补全和矩阵分解的方法,使用矩阵补全、逻辑矩阵分解、协同矩阵分解和正则化矩阵分解,以及(4)基于深度学习的方法,使用深度神经网络、卷积神经网络、循环神经网络和图卷积网络。接下来是对药物重新定位常用数据源的回顾,以及对研究人员可以使用的特定数据源的介绍。最后,我们讨论了药物重新定位方法的未来发展和挑战。
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来源期刊
Current research in chemical biology
Current research in chemical biology Biochemistry, Genetics and Molecular Biology (General)
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56 days
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