Roy Kunal, Mitra Indrani
Drug Theoretics and Cheminformatics Laboratory, Division of Medicinal and Pharmaceutical Chemistry, Department of Pharmaceutical Technology, Jadavpur University, Kolkata 700 032, India.
Comb Chem High Throughput Screen. 2011 Jul;14(6):450-74. doi: 10.2174/138620711795767893.
Quantitative structure-activity relationships (QSARs) have important applications in drug discovery research, environmental fate modeling, property prediction, etc. Validation has been recognized as a very important step for QSAR model development. As one of the important objectives of QSAR modeling is to predict activity/property/toxicity of new chemicals falling within the domain of applicability of the developed models and QSARs are being used for regulatory decisions, checking reliability of the models and confidence of their predictions is a very important aspect, which can be judged during the validation process. One prime application of a statistically significant QSAR model is virtual screening for molecules with improved potency based on the pharmacophoric features and the descriptors appearing in the QSAR model. Validated QSAR models may also be utilized for design of focused libraries which may be subsequently screened for the selection of hits. The present review focuses on various metrics used for validation of predictive QSAR models together with an overview of the application of QSAR models in the fields of virtual screening and focused library design for diverse series of compounds with citation of some recent examples.
定量构效关系(QSARs)在药物发现研究、环境归趋建模、性质预测等方面有着重要应用。验证已被视为QSAR模型开发的一个非常重要的步骤。由于QSAR建模的重要目标之一是预测处于所开发模型适用范围内的新化学品的活性/性质/毒性,并且QSAR正被用于监管决策,检查模型的可靠性及其预测的可信度是一个非常重要的方面,这可以在验证过程中进行判断。具有统计学意义的QSAR模型的一个主要应用是基于QSAR模型中出现的药效特征和描述符对具有更高活性的分子进行虚拟筛选。经过验证的QSAR模型还可用于设计聚焦文库,随后可对其进行筛选以选择命中物。本综述重点介绍了用于验证预测性QSAR模型的各种指标,并概述了QSAR模型在虚拟筛选和聚焦文库设计领域针对不同系列化合物的应用,并引用了一些近期的实例。