首页> 外文期刊>Journal of chemical theory and computation: JCTC >Binding Free Energy Calculations for Lead Optimization: Assessment of Their Accuracy in an Industrial Drug Design Context
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Binding Free Energy Calculations for Lead Optimization: Assessment of Their Accuracy in an Industrial Drug Design Context

机译:结合自由能计算优化铅:在工业药物设计环境中评估其准确性

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Correctly ranking compounds according to their computed relative binding affinities will be of great value for decision making in the lead optimization phase of industrial drug discovery. However, the performance of existing computationally demanding binding free energy calculation methods in this context is largely unknown. We analyzed the performance of the molecular mechanics continuum solvent, the linear interaction energy (LIE), and the thermodynamic integration (Tl) approach for three sets of compounds from industrial lead optimization projects. The data sets pose challenges typical for this early stage of drug discovery. None of the methods was sufficiently predictive when applied out of the box without considering these challenges. Detailed investigations of failures revealed critical points that are essential for good binding free energy predictions. When data set-specific features were considered accordingly, predictions valuable for lead optimization could be obtained for all approaches but LIE. Our findings lead to clear recommendations for when to use which of the above approaches. Our findings also stress the important role of expert knowledge in this process, not least for estimating the accuracy of prediction results by TI, using indicators such as the size and chemical structure of exchanged groups and the statistical error in the predictions. Such knowledge will be invaluable when it comes to the question which of the TI results can be trusted for decision making.
机译:根据其计算的相对结合亲和力对化合物进行正确排名将对工业药物发现的前导优化阶段的决策具有重要价值。但是,在这种情况下,现有的计算要求很高的结合自由能计算方法的性能在很大程度上是未知的。我们分析了来自工业铅优化项目的三组化合物的分子力学连续溶剂,线性相互作用能(LIE)和热力学积分(Tl)方法的性能。这些数据集提出了药物研发这一早期阶段的典型挑战。如果不考虑这些挑战,开箱即用地使用这些方法都无法充分预测。对故障的详细调查显示了关键点,这些关键点对于良好的结合自由能预测至关重要。当据此考虑特定于数据集的特征时,除LIE之外,所有方法都可以获得对线索优化有价值的预测。我们的发现为何时使用以上哪种方法提供了明确的建议。我们的发现还强调了专家知识在此过程中的重要作用,尤其是通过使用诸如交换基团的大小和化学结构以及预测中的统计误差等指标来估计TI预测结果的准确性。当涉及到哪些TI结果可被信任用于决策时,此类知识将具有无价的价值。

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