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首页> 外文期刊>Journal of Medicinal Chemistry >Multivariate data analysis using D-optimal designs, partial least squares, and response surface modeling: A directional approach for the analysis of farnesyltransferase inhibitors.
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Multivariate data analysis using D-optimal designs, partial least squares, and response surface modeling: A directional approach for the analysis of farnesyltransferase inhibitors.

机译:使用D优化设计,偏最小二乘和响应面建模的多变量数据分析:法尼基转移酶抑制剂的一种定向分析方法。

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We have investigated the combined use of partial least squares (PLS) and statistical design principles in principal property space (PP-space), derived from principal component analysis (PCA), to analyze farnesyltransferase inhibitors in order to identify "activity trends" (an approach we call a "directional" approach) and quantitative structure-activity relationships (QSAR) for a congeneric series of inhibitors: the benzo[f]perhydroisoindole (BPHI) series. Trends observed in the PCA showed that the descriptors used were relevant to describe our structural data set by clearly identifying two well-defined structural subclasses of inhibitors. D-Optimal design techniques allowed us to define a training set for PLS study in PP-space. Models were derived for each biological assay under evaluation: the in vitro Ki-Ras and cellular HCT116 tests. Each of these assay-based sets was subdivided once more into two subsets according to two structural classes in this BPHI series as revealed by the PCA model. The response surface modeling (RSM) methodology was used for each subset, and the corresponding RSM plots helped us identify "activity trends" exploited to guide further analogue design. For more precise activity predictions more refined PLS models on constrained PP-spaces were developed for each subset. This approach was validated with predicted sets and demonstrates that useful information can be extracted from just a few very informative and representative compounds. Finally, we also showed the potential use of such a strategy at an early stage of an optimization process to extract the first "activity trends" that might support decision making and guide medicinal chemists in the initial design of new analogues and/or lead followup libraries.
机译:我们已经研究了在主属性空间(PP-space)中结合使用偏最小二乘(PLS)和统计设计原理,从主成分分析(PCA)得出的结果,以分析法呢基转移酶抑制剂,从而确定“活性趋势”(我们称之为“定向”方法)和同类抑制剂系列的定量构效关系(QSAR):苯并[f]全氢异吲哚(BPHI)系列。在PCA中观察到的趋势表明,通过清楚地确定抑制剂的两个明确定义的结构子类,所使用的描述符与描述我们的结构数据集相关。 D-Optimal设计技术使我们能够为PP空间中的PLS研究定义训练集。每种生物测定的模型均得到评估:体外Ki-Ras和细胞HCT116测试。如PCA模型所揭示的那样,根据该BPHI系列中的两个结构类别,将这些基于测定的集合再次细分为两个子集。响应面建模(RSM)方法用于每个子集,相应的RSM图帮助我们识别“活动趋势”,以指导进一步的模拟设计。为了进行更精确的活动预测,针对每个子集开发了在约束PP空间上更精确的PLS模型。该方法已通过预测集进行了验证,证明了仅从一些非常有用且具有代表性的化合物中可以提取出有用的信息。最后,我们还展示了在优化过程的早期阶段使用这种策略来提取第一个“活性趋势”的潜在用途,该趋势可能支持决策制定并在新类似物和/或潜在客户追踪库的初始设计中指导药物化学家。

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