Retrained Classification of Tyrosinase Inhibitors and "In Silico" Potency Estimation by Using Atom-Type Linear Indices: A Powerful Tool for Speed up the Discovery of Leads

G. Casañola-Martín, Mahmud Tareq Hassan Khan, Huong Le-Thi-Thu, Y. Marrero-Ponce, R. García-Domènech, F. Torrens, A. Rescigno
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引用次数: 8

Abstract

In this paper, the authors present an effort to increase the applicability domain (AD) by means of retraining models using a database of 701 great dissimilar molecules presenting anti-tyrosinase activity and 728 drugs with other uses. Atom-based linear indices and best subset linear discriminant analysis (LDA) were used to develop individual classification models. Eighteen individual classification-based QSAR models for the tyrosinase inhibitory activity were obtained with global accuracy varying from 88.15-91.60% in the training set and values of Matthews correlation coefficients (C) varying from 0.76-0.82. The external validation set shows globally classifications above 85.99% and 0.72 for C. All individual models were validated and fulfilled by OECD principles. A brief analysis of AD for the training set of 478 compounds and the new active compounds included in the re-training was carried out. Various assembled multiclassifier systems contained eighteen models using different selection criterions were obtained, which provide possibility of select the best strategy for particular problem. The various assembled multiclassifier systems also estimated the potency of active identified compounds. Eighteen validated potency models by OECD principles were used.
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酪氨酸酶抑制剂的再训练分类和使用原子型线性指数的“计算机”效能估计:加速发现线索的有力工具
本文利用701种具有抗酪氨酸酶活性的大异分子和728种具有其他用途的药物的数据库,通过对模型进行再训练来提高其适用域(AD)。采用基于原子的线性指标和最佳子集线性判别分析(LDA)建立个体分类模型。获得了18个基于个体分类的酪氨酸酶抑制活性QSAR模型,训练集的总体准确率在88.15-91.60%之间,Matthews相关系数(C)值在0.76-0.82之间。外部验证集显示全局分类高于85.99%,c的分类高于0.72。所有个体模型都经过OECD原则的验证和满足。对478个化合物的训练集和重新训练的新活性化合物进行了简要的AD分析。采用不同的选择准则,得到了包含18个模型的组合多分类器系统,为选择特定问题的最佳策略提供了可能。各种组装的多分类系统还估计了活性鉴定化合物的效力。采用了18个经OECD原则验证的效价模型。
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