药物发现
计算生物学
药品
天然产物
非甾体
计算机科学
药物靶点
动作(物理)
生化工程
化学
组合化学
药理学
生物
立体化学
工程类
生物化学
物理
量子力学
作者
Petra Schneider,Gisbert Schneider
标识
DOI:10.1002/anie.201706376
摘要
Abstract Drug discovery is governed by the desire to find ligands with defined modes of action. It has been realized that even designated selective drugs may have more macromolecular targets than is commonly thought. Consequently, it will be mandatory to consider multitarget activity for the design of future medicines. Computational models assist medicinal chemists in this effort by helping to eliminate unsuitable lead structures and spot undesired drug effects early in the discovery process. Here, we present a straightforward computational method to find previously unknown targets of pharmacologically active compounds. Validation experiments revealed hitherto unknown targets of the natural product resveratrol and the nonsteroidal anti‐inflammatory drug celecoxib. The obtained results advocate machine learning for polypharmacology‐based molecular design, drug re‐purposing, and the “de‐orphaning” of phenotypic drug effects.
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