Rapposelli Simona, Coi Alessio, Imbriani Marcello, Bianucci Anna Maria
Department of Pharmaceutical Sciences, University of Pisa, Via Bonanno 6, Pisa 56126, Italy.
Consorzio Interuniversitario Nazionale per la Scienza e la Tecnologia dei Materiali (INSTM), Via Giusti 9, Firenze 50121, Italy.
Int J Mol Sci. 2012;13(6):6924-6943. doi: 10.3390/ijms13066924. Epub 2012 Jun 7.
P-glycoprotein (P-gp) is an efflux pump involved in the protection of tissues of several organs by influencing xenobiotic disposition. P-gp plays a key role in multidrug resistance and in the progression of many neurodegenerative diseases. The development of new and more effective therapeutics targeting P-gp thus represents an intriguing challenge in drug discovery. P-gp inhibition may be considered as a valid approach to improve drug bioavailability as well as to overcome drug resistance to many kinds of tumours characterized by the over-expression of this protein. This study aims to develop classification models from a unique dataset of 59 compounds for which there were homogeneous experimental data on P-gp inhibition, ATPase activation and monolayer efflux. For each experiment, the dataset was split into a training and a test set comprising 39 and 20 molecules, respectively. Rational splitting was accomplished using a sphere-exclusion type algorithm. After a two-step (internal/external) validation, the best-performing classification models were used in a consensus predicting task for the identification of compounds named as "true" P-gp inhibitors, i.e., molecules able to inhibit P-gp without being effluxed by P-gp itself and simultaneously unable to activate the ATPase function.
P-糖蛋白(P-gp)是一种外排泵,通过影响外源性物质的处置参与多种器官组织的保护。P-gp在多药耐药性以及许多神经退行性疾病的进展中起关键作用。因此,开发针对P-gp的新型更有效治疗方法是药物研发中一个有趣的挑战。P-gp抑制可被视为提高药物生物利用度以及克服对以该蛋白过表达为特征的多种肿瘤的耐药性的有效方法。本研究旨在从一个包含59种化合物的独特数据集中开发分类模型,这些化合物具有关于P-gp抑制、ATP酶激活和单层外排的同质实验数据。对于每个实验,数据集被分别分为包含39个和20个分子的训练集和测试集。使用一种排除球型算法完成合理划分。经过两步(内部/外部)验证后,性能最佳的分类模型被用于一个一致性预测任务,以识别被称为“真正”P-gp抑制剂的化合物,即能够抑制P-gp而不被P-gp自身外排且同时不能激活ATP酶功能的分子。