Muegge Ingo
Bayer Research Center, 400 Morgan Lane, West Haven, Connecticut 06516, USA.
Med Res Rev. 2003 May;23(3):302-21. doi: 10.1002/med.10041.
The fast identification of quality lead compounds in the pharmaceutical industry through a combination of high throughput synthesis and screening has become more challenging in recent years. Although the number of available compounds for high throughput screening (HTS) has dramatically increased, large-scale random combinatorial libraries have contributed proportionally less to identify novel leads for drug discovery projects. Therefore, the concept of 'drug-likeness' of compound selections has become a focus in recent years. In parallel, the low success rate of converting lead compounds into drugs often due to unfavorable pharmacokinetic parameters has sparked a renewed interest in understanding more clearly what makes a compound drug-like. Various approaches have been devised to address the drug-likeness of molecules employing retrospective analyses of known drug collections as well as attempting to capture 'chemical wisdom' in algorithms. For example, simple property counting schemes, machine learning methods, regression models, and clustering methods have been employed to distinguish between drugs and non-drugs. Here we review computational techniques to address the drug-likeness of compound selections and offer an outlook for the further development of the field.
近年来,通过高通量合成与筛选相结合的方式在制药行业快速鉴定优质先导化合物变得更具挑战性。尽管用于高通量筛选(HTS)的可用化合物数量急剧增加,但大规模随机组合文库对药物发现项目中鉴定新型先导化合物的贡献却相对较少。因此,化合物选择的“类药性质”概念近年来已成为一个焦点。与此同时,先导化合物转化为药物的成功率较低,这通常是由于不良的药代动力学参数所致,这引发了人们对更清晰地理解使化合物具有类药性质的因素的新兴趣。人们已经设计出各种方法来解决分子的类药性质问题,这些方法包括对已知药物集合进行回顾性分析以及尝试在算法中捕捉“化学智慧”。例如,简单的性质计数方案、机器学习方法、回归模型和聚类方法已被用于区分药物和非药物。在此,我们综述了用于解决化合物选择类药性质问题的计算技术,并对该领域的进一步发展进行了展望。