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Comparison of PLS Discriminant Analysis and supervised SOMs for Blood Brain Barrier activity

机译:PLS判别分析和监督SOM对血脑屏障活动的比较

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In the development of drugs compounds suitable for human being, many experiments have to be conducted to ensure drugs safe consumption and generally takes almost 10 to 12 years for a particular drugs to enter the market from laboratory. Therefore, the pattern recognition in QSAR is significant for analyzing the data and developing several necessary models, so that only novel drugs candidate will be synthesized. There are three important aspects for the classification of BBB activity in this work, (1) variable reduction by PCA (2) variable selection and class separation with comparison of three methods such as T-Statistics, Partial Least Squares Regression Coefficient (PLSRC) and newly invented Self Organising Maps Discriminatory Index (SOMDI). and (3) classification, a comparison of linear (PLSDA) and non linear (SuSOMs) methods. The number of PCA component determined by LOO cross-validations is seven. Based on PCA score, the variables selected by T-Statistics and SOMDI are more selective and can provide better separation for BBB activity than PLSRC. Models performances and validations, built through PLSDA and SOMs show that the consensually selected 7 descriptors in this work by using SOMDI, T-statistics and PLSRC were able to classify BBB penetration and non-penetration compounds.
机译:在开发适合人类的药物化合物时,必须进行许多实验以确保药物的安全消费,特定药物从实验室进入市场通常需要近10至12年的时间。因此,QSAR中的模式识别对于分析数据和开发几种必要的模型具有重要意义,因此只能合成新的候选药物。在这项工作中,BBB活性的分类有三个重要方面,(1)通过PCA进行变量归约(2)变量选择和类分离,以及三种方法的比较,例如T统计量,偏最小二乘回归系数(PLSRC)和新发明的自组织地图鉴别索引(SOMDI)。 (3)分类:线性方法(PLSDA)和非线性方法(SuSOMs)的比较。由LOO交叉验证确定的PCA组件数为7。根据PCA分数,由T统计和SOMDI选择的变量更具选择性,并且与PLSRC相比,可以为BBB活性提供更好的分离。通过PLSDA和SOM建立的模型性能和验证结果表明,通过使用SOMDI,T统计和PLSRC自愿选择的7个描述符能够对BBB渗透和非渗透化合物进行分类。

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