Khatri Naveen, Lather Viney, Madan A K
Faculty of Pharmaceutical Sciences, Pt. B. D. Sharma University of Health Sciences, Rohtak, 124001 India.
JCDM College of Pharmacy, Barnala Road, Sirsa, 125055 India.
Chem Cent J. 2015 May 23;9:29. doi: 10.1186/s13065-015-0109-0. eCollection 2015.
Purine nucleoside analogs (PNAs) constitute an important group of cytotoxic drugs for the treatment of neoplastic and autoimmune diseases. In the present study, classification models have been developed for the prediction of the anti-HIV activity of purine nucleoside analogs.
The topochemical version of superaugmented pendentic index-4 has been proposed and successfully utilized for the development of models. A total of 60 2D and 3D molecular descriptors (MDs) of diverse nature were selected for building the classification models using decision tree (DT), random forest (RF), support vector machine (SVM), and moving average analysis (MAA). The values of most of these descriptors for each of the analogs in the dataset were computed using the Dragon software (version 5.3). An in-house computer program was also employed to calculate additional MDs which were not included in the Dragon software. DT, RF, and SVM correctly classified the analogs into actives and inactives with an accuracy of 89 %, 83 %, and 78 %, respectively. MAA-based models predicted the anti-HIV activity of purine nucleoside analogs with a non-error rate up to 98 %. Therapeutic active spans of the suggested MAA-based models not only showed more potency but also exhibited enhanced safety as revealed by comparatively high values of selectivity index (SI). The statistical importance of the developed models was appraised via intercorrelation analysis, specificity, sensitivity, non-error rate, and Matthews correlation coefficient.
High predictability of the proposed models clearly indicates an immense potential for developing lead molecules for potent but safe anti-HIV purine nucleoside analogs.
嘌呤核苷类似物(PNAs)是用于治疗肿瘤和自身免疫性疾病的一类重要细胞毒性药物。在本研究中,已开发出分类模型用于预测嘌呤核苷类似物的抗HIV活性。
提出了超增强悬键指数-4的拓扑化学版本,并成功用于模型开发。使用决策树(DT)、随机森林(RF)、支持向量机(SVM)和移动平均分析(MAA),选择了总共60个不同性质的二维和三维分子描述符(MDs)来构建分类模型。数据集中每个类似物的这些描述符的大多数值使用Dragon软件(5.3版)计算。还使用一个内部计算机程序来计算Dragon软件中未包含的其他MDs。DT、RF和SVM分别以89%、83%和78%的准确率将类似物正确分类为活性和非活性。基于MAA的模型预测嘌呤核苷类似物的抗HIV活性,非错误率高达98%。所建议的基于MAA的模型的治疗活性范围不仅显示出更强的效力,而且通过相对较高的选择性指数(SI)值表明安全性增强。通过相互关联分析、特异性、敏感性、非错误率和马修斯相关系数评估所开发模型的统计学重要性。
所提出模型的高预测性清楚地表明,在开发高效且安全的抗HIV嘌呤核苷类似物的先导分子方面具有巨大潜力。