Shortridge Matthew D, Hage David S, Harbison Gerard S, Powers Robert
Department of Chemistry, University of Nebraska, Lincoln, Nebraska 68588, USA.
J Comb Chem. 2008 Nov-Dec;10(6):948-58. doi: 10.1021/cc800122m. Epub 2008 Oct 3.
Many of today's drug discovery programs use high-throughput screening methods that rely on quick evaluations of protein activity to rank potential chemical leads. By monitoring biologically relevant protein-ligand interactions, NMR can provide a means to validate these discovery leads and to optimize the drug discovery process. NMR-based screens typically use a change in chemical shift or line width to detect a protein-ligand interaction. However, the relatively low throughput of current NMR screens and their high demand on sample requirements generally makes it impractical to collect complete binding curves to measure the affinity for each compound in a large and diverse chemical library. As a result, NMR ligand screens are typically limited to identifying candidates that bind to a protein and do not give any estimate of the binding affinity. To address this issue, a methodology has been developed to rank binding affinities for ligands based on NMR screens that use 1D (1)H NMR line-broadening experiments. This method was demonstrated by using it to estimate the dissociation equilibrium constants for twelve ligands with the protein human serum albumin (HSA). The results were found to give good agreement with previous affinities that have been reported for these same ligands with HSA.
当今许多药物发现项目都采用高通量筛选方法,这些方法依靠对蛋白质活性的快速评估来对潜在的化学先导物进行排名。通过监测生物学相关的蛋白质 - 配体相互作用,核磁共振(NMR)可以提供一种手段来验证这些发现的先导物,并优化药物发现过程。基于NMR的筛选通常利用化学位移或线宽的变化来检测蛋白质 - 配体相互作用。然而,当前NMR筛选相对较低的通量以及对样品要求的高需求,通常使得收集完整的结合曲线以测量大型多样化学文库中每种化合物的亲和力变得不切实际。因此,NMR配体筛选通常仅限于识别与蛋白质结合的候选物,而无法给出任何结合亲和力的估计值。为了解决这个问题,已经开发出一种基于使用一维(1)H NMR线宽扩展实验的NMR筛选来对配体的结合亲和力进行排名的方法。通过用该方法估计十二种配体与蛋白质人血清白蛋白(HSA)的解离平衡常数来证明了此方法。结果发现与先前报道的这些相同配体与HSA的亲和力具有良好的一致性。