Escola de Artes, Ciências e Humanidades, Universidade de São Paulo, 03828-0000, São Paulo, SP, Brazil.
Curr Med Chem. 2012;19(25):4289-97. doi: 10.2174/092986712802884259.
The interest in the application of machine learning techniques (MLT) as drug design tools is growing in the last decades. The reason for this is related to the fact that the drug design is very complex and requires the use of hybrid techniques. A brief review of some MLT such as self-organizing maps, multilayer perceptron, bayesian neural networks, counter-propagation neural network and support vector machines is described in this paper. A comparison between the performance of the described methods and some classical statistical methods (such as partial least squares and multiple linear regression) shows that MLT have significant advantages. Nowadays, the number of studies in medicinal chemistry that employ these techniques has considerably increased, in particular the use of support vector machines. The state of the art and the future trends of MLT applications encompass the use of these techniques to construct more reliable QSAR models. The models obtained from MLT can be used in virtual screening studies as well as filters to develop/discovery new chemicals. An important challenge in the drug design field is the prediction of pharmacokinetic and toxicity properties, which can avoid failures in the clinical phases. Therefore, this review provides a critical point of view on the main MLT and shows their potential ability as a valuable tool in drug design.
在过去几十年中,人们对将机器学习技术 (MLT) 应用于药物设计工具的兴趣日益浓厚。原因与药物设计非常复杂且需要使用混合技术有关。本文简要回顾了一些 MLT,如自组织映射、多层感知器、贝叶斯神经网络、反向传播神经网络和支持向量机。描述的方法与一些经典统计方法(如偏最小二乘和多元线性回归)之间的性能比较表明,MLT 具有显著的优势。如今,在药物化学中使用这些技术的研究数量大大增加,特别是支持向量机的使用。MLT 应用的最新技术和未来趋势包括使用这些技术构建更可靠的 QSAR 模型。从 MLT 获得的模型可用于虚拟筛选研究以及开发/发现新化学物质的筛选器。药物设计领域的一个重要挑战是预测药代动力学和毒性特性,这可以避免临床阶段的失败。因此,本文对主要的 MLT 进行了批判性的分析,并展示了它们作为药物设计有价值工具的潜在能力。