Guru Gobind Singh College of Pharmacy, Yamunanagar, India.
Arch Pharm (Weinheim). 2010 Nov;343(11-12):664-79. doi: 10.1002/ardp.201000034.
Targeted inhibition of activated BRAF mutation has emerged as a most promising and putative therapeutic approach for the anticancer drug development. In the present study, an in-silico approach using decision tree and moving average analysis has been applied to a data set comprising of 43 analogues of pyridoimidazolones for development of models for prediction of both (V)600(E)BRAF and melanoma cells (BRAF WM266.4) growth inhibitory activities. A decision tree was mainly employed for determining the importance of molecular descriptors (n=46). The value of majority of these descriptors for each analogue in the dataset was computed using E-Dragon software (version 1.0). The decision tree learned the information from the input data with an accuracy of 98% and correctly predicted the cross-validated (10-fold) data with accuracy up to 79%. A total of three non-correlating descriptors, identified best by the decision tree analysis, were subsequently utilized for development of suitable models using moving average analysis. These proposed models resulted in the prediction of (V)600(E)BRAF inhibitory activity (IC50) and melanoma cells growth (SRB GI50) inhibitory activity with an overall accuracy of ≥90%. The statistical significance of models/descriptors was assessed through intercorrelation analysis, sensitivity, specificity and Matthew's correlation coefficient.
靶向抑制激活的 BRAF 突变已成为癌症药物开发中最有前途和有潜力的治疗方法。在本研究中,使用决策树和移动平均分析的计算方法应用于包含 43 种嘧啶并咪唑酮类似物的数据集,以开发用于预测 (V)600(E)BRAF 和黑色素瘤细胞(BRAF WM266.4)生长抑制活性的模型。决策树主要用于确定分子描述符的重要性(n=46)。使用 E-Dragon 软件(版本 1.0)计算了这些描述符中大多数描述符对数据集每个类似物的数值。决策树从输入数据中学习信息,准确率为 98%,并以高达 79%的准确率正确预测了交叉验证(10 倍)数据。通过决策树分析确定的三个不相关描述符随后被用于使用移动平均分析开发合适的模型。这些提出的模型导致对 (V)600(E)BRAF 抑制活性(IC50)和黑色素瘤细胞生长(SRB GI50)抑制活性的预测,总体准确率≥90%。通过互相关分析、敏感性、特异性和马修相关系数评估模型/描述符的统计学意义。