Cheng Alan C, Coleman Ryan G, Smyth Kathleen T, Cao Qing, Soulard Patricia, Caffrey Daniel R, Salzberg Anna C, Huang Enoch S
Department of Molecular Informatics, Research Technology Center, Pfizer Global Research & Development, Cambridge, Massachusetts 02139, USA.
Nat Biotechnol. 2007 Jan;25(1):71-5. doi: 10.1038/nbt1273.
Lead generation is a major hurdle in small-molecule drug discovery, with an estimated 60% of projects failing from lack of lead matter or difficulty in optimizing leads for drug-like properties. It would be valuable to identify these less-druggable targets before incurring substantial expenditure and effort. Here we show that a model-based approach using basic biophysical principles yields good prediction of druggability based solely on the crystal structure of the target binding site. We quantitatively estimate the maximal affinity achievable by a drug-like molecule, and we show that these calculated values correlate with drug discovery outcomes. We experimentally test two predictions using high-throughput screening of a diverse compound collection. The collective results highlight the utility of our approach as well as strategies for tackling difficult targets.
在小分子药物发现中,先导化合物的发现是一个主要障碍,据估计,60%的项目因缺乏先导物质或难以优化先导化合物的类药性质而失败。在投入大量资金和精力之前识别这些难以成药的靶点将很有价值。在这里,我们表明,一种基于基本生物物理原理的模型方法仅基于靶点结合位点的晶体结构就能对成药可能性做出良好预测。我们定量估计了类药分子可达到的最大亲和力,并表明这些计算值与药物发现结果相关。我们通过对多样化化合物库进行高通量筛选,对两个预测进行了实验测试。这些综合结果突出了我们方法的实用性以及应对困难靶点的策略。