a Department of Medicinal Chemistry, School of Pharmacy , China Pharmaceutical University , Nanjing , China.
Expert Opin Drug Discov. 2018 Dec;13(12):1091-1102. doi: 10.1080/17460441.2018.1547278. Epub 2018 Nov 17.
: Artificial intelligence systems based on neural networks (NNs) find rules for drug discovery according to training molecules, but first, the molecules need to be represented in certain ways. Molecular descriptors and fingerprints have been used as inputs for artificial neural networks (ANNs) for a long time, while other ways for describing molecules are used only for storing and presenting molecules. With the development of deep learning, variants of ANNs are now able to use different kinds of inputs, which provide researchers with more choices for drug discovery. : The authors provide a brief overview of the applications of NNs in drug discovery. Combined with the characteristics of different ways for describing molecules, corresponding methods based on NNs provide new choices for drug discovery, including drug design, ligand-based drug design, and receptor-based drug design. : Various ways for describing molecules can be inputs of NN-based models, and these models achieve satisfactory results in metrics. Although most of the models have not been widely applied and tested in practice, they can be the basis for automatic drug discovery in the future.
基于神经网络 (NN) 的人工智能系统根据训练分子来寻找药物发现的规则,但首先,分子需要以某种方式表示。分子描述符和指纹长期以来一直被用作人工神经网络 (ANN) 的输入,而其他描述分子的方法仅用于存储和呈现分子。随着深度学习的发展,ANN 的变体现在能够使用不同种类的输入,这为研究人员提供了更多的药物发现选择。
作者简要概述了神经网络在药物发现中的应用。结合不同分子描述方法的特点,基于神经网络的相应方法为药物发现提供了新的选择,包括药物设计、基于配体的药物设计和基于受体的药物设计。
各种分子描述方法都可以作为基于 NN 的模型的输入,这些模型在指标上取得了令人满意的结果。尽管大多数模型尚未在实践中得到广泛应用和测试,但它们可以成为未来自动药物发现的基础。