Statistical analysis of the in silico binding affinity of P-glycoprotein and its substrates with their experimentally known parameters to demonstrate a cost-effective approach for screening, ranking and possible prediction of potential substrates

A. Cleave, P. Suresh
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Abstract

Over-expression of P-glycoprotein (P-gp) has been reported as a cause of multi-drug resistance in cancers and other diseases. Transport assays, which are generally used to find out the specificity of a compound to be effluxed, have always been time consuming, resource-intensive and expensive and thus, have inherent limitations to easily predict a compound's specificity. Hence, there is a clear-cut, unmet need to develop cost-effective methods for screening, identification and ranking of P-gp substrates. All compounds (23 substrates and 3 non-substrates) were docked to two homology modelled human P-gp conformations. The in silico binding affinities, obtained for all substrates, were checked for correlation with their experimentally determined efflux ratios, LogP values and number of hydrogen bond acceptors they possess. Docking results showed that all compounds demonstrated differences in relative binding affinity. Experimentally-derived efflux ratio obtained for 19 substrates from literature, for the first time showed a significant, Spearman correlation with binding energies to outward-facing conformation. Thus, it can be said that binding energies obtained from docking studies can possibly have significant potential in identifying the specificity and ranking P-gp substrates. This approach provides a sound foundation to strengthen the relationship of in silico binding energies with other experimentally defined physico-chemical parameters and can also be part of an iterative process to identify and develop a potential, validatable solution.
统计分析p -糖蛋白及其底物的硅结合亲和力及其实验已知参数,以证明筛选,排序和可能预测潜在底物的成本效益方法
p -糖蛋白(P-gp)的过度表达已被报道为癌症和其他疾病多药耐药的原因之一。转运试验通常用于确定外排化合物的特异性,但一直以来都是耗时、资源密集和昂贵的,因此在容易预测化合物特异性方面存在固有的局限性。因此,对于P-gp底物的筛选、鉴定和排序,有一个明确的、尚未满足的需求。所有化合物(23个底物和3个非底物)都与两个同源的模拟人类P-gp构象对接。所有底物的硅结合亲和度都与实验确定的外排比、LogP值和它们所拥有的氢键受体的数量进行了相关性检查。对接结果显示,所有化合物的相对结合亲和力存在差异。从文献中获得的19种底物的实验导出的流出比首次显示出与结合能与面向外的构象之间存在显著的Spearman相关性。因此,从对接研究中获得的结合能可能在鉴定P-gp底物的特异性和排序方面具有重要的潜力。这种方法为加强硅结合能与其他实验定义的物理化学参数的关系提供了良好的基础,也可以作为确定和开发潜在的、可验证的解决方案的迭代过程的一部分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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