Agatonovic-Kustrin Snezana, Morton David W, Truong Lisa, Razic Slavica
School of Pharmacy and Applied Science, La Trobe Institute of Molecular Sciences, La Trobe University, Bendigo, Australia.
Comb Chem High Throughput Screen. 2014;17(10):879-90. doi: 10.2174/1386207317666141114222955.
A non-linear quantitative structure activity relationship (QSAR) model based on 350 drug molecules was developed as a predictive tool for drug protein binding, by correlating experimentally measured protein binding values with ten calculated molecular descriptors using a radial basis function (RBF) neural network. The developed model has a statistically significant overall correlation value (r > 0.73), a high efficiency ratio (0.986), and a good predictive squared correlation coefficient (q(2)) of 0.532, which is regarded as producing a robust and high quality QSAR model. The developed model may be used for the screening of drug candidate molecules that have high protein binding data, filtering out compounds that are unlikely to be protein bound, and may assist in the dose adjustment for drugs that are highly protein bound. The advantage of using such a model is that the percentage of a potential drug candidate that is protein bound (PB (%)) can be simply predicted from its molecular structure.
通过使用径向基函数(RBF)神经网络,将实验测量的蛋白质结合值与十个计算出的分子描述符相关联,开发了一种基于350个药物分子的非线性定量构效关系(QSAR)模型,作为药物蛋白质结合的预测工具。所开发的模型具有统计学上显著的总体相关值(r > 0.73)、高效率比(0.986)以及良好的预测平方相关系数(q(2))为0.532,被认为产生了一个稳健且高质量的QSAR模型。所开发的模型可用于筛选具有高蛋白结合数据的候选药物分子,过滤掉不太可能与蛋白质结合的化合物,并可能有助于对高度蛋白结合的药物进行剂量调整。使用这种模型的优势在于,可以从其分子结构简单预测潜在候选药物与蛋白质结合的百分比(PB(%))。