Raevsky O A, Polianczyk D E, Mukhametov A, Grigorev V Y
a Department of Computer-aided Molecular Design , Institute of Physiologically Active Compounds of the Russian Academy of Science , Chernogolovka , Russian Federation.
SAR QSAR Environ Res. 2016 Aug;27(8):629-35. doi: 10.1080/1062936X.2016.1212922. Epub 2016 Aug 1.
Assessment of "CNS drugs/CNS candidates" classification abilities of the multi-parametric optimization (CNS MPO) approach was performed by logistic regression. It was found that the five out of the six separately used physical-chemical properties (topological polar surface area, number of hydrogen-bonded donor atoms, basicity, lipophilicity of compound in neutral form and at pH = 7.4) provided accuracy of recognition below 60%. Only the descriptor of molecular weight (MW) could correctly classify two-thirds of the studied compounds. Aggregation of all six properties in the MPOscore did not improve the classification, which was worse than the classification using only MW. The results of our study demonstrate the imperfection of the CNS MPO approach; in its current form it is not very useful for computer design of new, effective CNS drugs.
通过逻辑回归对多参数优化(CNS MPO)方法的“中枢神经系统药物/中枢神经系统候选药物”分类能力进行了评估。结果发现,单独使用的六种物理化学性质中的五种(拓扑极性表面积、氢键供体原子数、碱性、中性形式和pH = 7.4时化合物的亲脂性)识别准确率低于60%。只有分子量(MW)描述符能够正确分类三分之二的研究化合物。将所有六种性质汇总到MPOscore中并没有改善分类,其结果比仅使用MW进行的分类更差。我们的研究结果表明CNS MPO方法存在缺陷;以其目前的形式,它对新型有效中枢神经系统药物的计算机设计不是很有用。