Laboratoire d'Innovation Thérapeutique, Faculté de Pharmacie, UMR7200 CNRS Université de Strasbourg, 67400, Illkirch, France.
Laboratoire de Conception et Application de Molécules Bioactives, Faculté de Pharmacie, UMR7199 CNRS Université de Strasbourg, 67400, Illkirch, France.
Mol Inform. 2023 Dec;42(12):e202300141. doi: 10.1002/minf.202300141. Epub 2023 Nov 9.
Agonists of the β2 adrenergic receptor (ADRB2) are an important class of medications used for the treatment of respiratory diseases. They can be classified as short acting (SABA) or long acting (LABA), with each class playing a different role in patient management. In this work we explored both ligand-based and structure-based high-throughput approaches to classify β2-agonists based on their duration of action. A completely in-silico prediction pipeline using an AlphaFold generated structure was used for structure-based modelling. Our analysis identified the ligands' 3D structure and lipophilicity as the most relevant features for the prediction of the duration of action. Interaction-based methods were also able to select ligands with the desired duration of action, incorporating the bias directly in the structure-based drug discovery pipeline without the need for further processing.
β2 肾上腺素能受体 (ADRB2) 的激动剂是一类用于治疗呼吸疾病的重要药物。它们可以分为短效 (SABA) 或长效 (LABA),每类药物在患者管理中发挥不同的作用。在这项工作中,我们探索了基于配体和基于结构的高通量方法,根据作用持续时间对 β2-激动剂进行分类。我们使用基于 AlphaFold 生成的结构的完全计算机预测管道用于基于结构的建模。我们的分析确定了配体的 3D 结构和脂溶性是预测作用持续时间的最相关特征。基于相互作用的方法也能够选择具有所需作用持续时间的配体,将偏差直接纳入基于结构的药物发现管道,而无需进一步处理。