Faculty of Chemistry, Department of Organic Chemistry, University of Vigo, Vigo, Spain.
Mol Divers. 2011 Nov;15(4):947-55. doi: 10.1007/s11030-011-9325-2. Epub 2011 Jul 7.
Glycogen synthase kinase-3 (GSK-3) targets encompass proteins implicated in AD and neurological disorders. The functions of GSK-3 and its implication in various human diseases have triggered an active search for potent and selective GSK-3 inhibitors. In this sense, QSAR could play an important role in studying these GSK-3 inhibitors. For this reason, we developed QSAR models for GSK-3α, linear discriminant analysis (LDA), and artificial neural networks (ANNs) from nearly 50,000 cases with more than 700 different GSK-3α inhibitors obtained from ChEMBL database server; in total we used more than 20,000 different molecules to develop the QSAR models. The model correctly classified 237 out of 275 active compounds (86.2%) and 14,870 out of 15,970 non-active compounds (93.2%) in the training series. The overall training performance was 93.0%. Validation of the model was carried out using an external predicting series. In these series, the model classified correctly 458 out of 549 (83.4%) compounds and 29,637 out of 31,927 non-active compounds (83.4%). The overall predictability performance was 92.7%. In this study, we propose three types of non-linear ANN as alternative to already existing models, such as LDA. Linear neural network: LNN: 236:236-1-1:1 which had an overall training performance of 96% proved to be the best model. In addition, we did a study of the different fragments of the molecules of the database to see which fragments had more influence in the activity. This can help design new inhibitors of GSK-3α. This study reports the attempts to calculate, within a unified framework probabilities of GSK-3α inhibitors against different molecules found in the literature.
糖原合酶激酶-3(GSK-3)的靶标包括与 AD 和神经紊乱相关的蛋白质。GSK-3 的功能及其在各种人类疾病中的作用引发了对有效和选择性 GSK-3 抑制剂的积极探索。在这种情况下,QSAR 可能在研究这些 GSK-3 抑制剂方面发挥重要作用。出于这个原因,我们从 ChEMBL 数据库服务器中获得了近 50,000 个案例和 700 多种不同的 GSK-3α 抑制剂,开发了 GSK-3α 的 QSAR 模型,包括线性判别分析(LDA)和人工神经网络(ANN);总共我们使用了 20,000 多个不同的分子来开发 QSAR 模型。该模型正确地将 275 种活性化合物中的 237 种(86.2%)和 15,970 种非活性化合物中的 14,870 种(93.2%)分类到训练系列中。总体训练性能为 93.0%。使用外部预测系列对模型进行了验证。在这些系列中,模型正确地将 549 种化合物中的 458 种(83.4%)和 31,927 种非活性化合物中的 29,637 种(83.4%)分类。总体预测性能为 92.7%。在这项研究中,我们提出了三种类型的非线性 ANN 作为已经存在的模型的替代方案,例如 LDA。线性神经网络:LNN:236:236-1-1:1,其整体训练性能达到 96%,被证明是最佳模型。此外,我们对数据库中分子的不同片段进行了研究,以观察哪些片段对活性有更大的影响。这有助于设计新的 GSK-3α 抑制剂。本研究报告了在统一框架内计算文献中发现的不同分子的 GSK-3α 抑制剂概率的尝试。