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Predictive QSAR modeling workflow, model applicability domains, and virtual screening.

机译:预测性QSAR建模工作流,模型适用性域和虚拟筛选。

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摘要

Quantitative Structure Activity Relationship (QSAR) modeling has been traditionally applied as an evaluative approach, i.e., with the focus on developing retrospective and explanatory models of existing data. Model extrapolation was considered if only in hypothetical sense in terms of potential modifications of known biologically active chemicals that could improve compounds' activity. This critical review re-examines the strategy and the output of the modern QSAR modeling approaches. We provide examples and arguments suggesting that current methodologies may afford robust and validated models capable of accurate prediction of compound properties for molecules not included in the training sets. We discuss a data-analytical modeling workflow developed in our laboratory that incorporates modules for combinatorial QSAR model development (i.e., using all possible binary combinations of available descriptor sets and statistical data modeling techniques), rigorous model validation, and virtual screening of available chemical databases to identify novel biologically active compounds. Our approach places particular emphasis on model validation as well as the need to define model applicability domains in the chemistry space. We present examples of studies where the application of rigorously validated QSAR models to virtual screening identified computational hits that were confirmed by subsequent experimental investigations. The emerging focus of QSAR modeling on target property forecasting brings it forward as predictive, as opposed to evaluative, modeling approach.
机译:定量结构活动关系(QSAR)建模传统上已被用作一种评估方法,即着重于开发现有数据的回顾性和解释性模型。如果仅在假设意义上考虑模型外推,则可以对已知的生物活性化学物质进行可能的修饰,从而可以改善化合物的活性。这篇重要的评论重新审查了现代QSAR建模方法的策略和输出。我们提供的示例和论点表明,当前的方法学可能会提供鲁棒且经过验证的模型,能够准确预测训练集中未包含的分子的化合物特性。我们讨论在实验室中开发的数据分析建模工作流程,该工作流程包含用于组合QSAR模型开发的模块(即,使用可用描述符集和统计数据建模技术的所有可能二进制组合),严格的模型验证以及对可用化学数据库的虚拟筛选来鉴定新型的生物活性化合物。我们的方法特别强调模型验证以及在化学领域定义模型适用性域的需求。我们提供了一些研究示例,其中严格验证的QSAR模型在虚拟筛选中的应用确定了计算命中率,随后的实验研究证实了这一点。 QSAR建模对目标属性预测的关注日益突出,将其作为预测性建模方法而非评估性建模方法提出。

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