Namasivayam Vigneshwaran, Iyer Preeti, Bajorath Jürgen
Department of Life Science Informatics, B-IT, Rheinische Friedrich-Wilhelms-Universität Bonn , Dahlmannstr. 2, D-53113 Bonn, Germany.
J Chem Inf Model. 2013 Dec 23;53(12):3131-9. doi: 10.1021/ci400597d. Epub 2013 Dec 10.
Activity cliffs are formed by structurally similar or analogous compounds having large potency differences. In medicinal chemistry, pairs or groups of compounds forming activity cliffs are of interest for structure-activity relationship (SAR) analysis and compound optimization. Thus far, activity cliff assessment has mostly been descriptive, i.e., compound data sets and activity landscape representations have been searched for activity cliffs in the context of SAR analysis. Only recently, first attempts have also been made to depart from descriptive analysis and predict activity cliffs. This has been done by building computational models that distinguish compound pairs forming activity cliffs from non-cliff pairs. However, it is principally more challenging to predict single compounds that participate in activity cliffs. Here, we show that individual compounds having high or low potency can be accurately predicted to form activity cliffs on the basis of emerging chemical patterns.
活性悬崖是由结构相似或类似但活性差异很大的化合物形成的。在药物化学中,形成活性悬崖的化合物对或化合物组对于构效关系(SAR)分析和化合物优化具有重要意义。到目前为止,活性悬崖评估大多是描述性的,即在SAR分析的背景下,在化合物数据集和活性景观表示中寻找活性悬崖。直到最近,才首次尝试从描述性分析转向预测活性悬崖。这是通过构建计算模型来实现的,该模型能够区分形成活性悬崖的化合物对和非悬崖对。然而,预测参与活性悬崖的单个化合物在本质上更具挑战性。在这里,我们表明,基于新出现的化学模式,可以准确预测具有高活性或低活性的单个化合物形成活性悬崖。