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Statistical tests for the selection of the optimum parameters set in models describing response surfaces in reversed-phase liquid chromatography

机译:在描述描述反相液相色谱响应面的模型中选择最佳参数的统计测试

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An appropriate procedure based on statistical criteria is suggested for the determination of the optimum set of model parameters for a given chromatographic system. The criteria employed are the t-ratio test, the rate of change in the sum of squares of residuals, the standard error of the fit, the F-test, and the CP-test. The suggested procedure has been evaluated using two different models, one based on partition and the other on adsorption mechanisms, which describe the combined effect of pH and organic modifier content on the retention of ionogenic solutes in reversed-phase liquid chromatography. It is shown that all the criteria give almost converged results and therefore we may simply use the F-test, which seems to be the most sensitive and reliable criterion excluding any personal judgement. It is also found that the retention models tested show a different behavior towards their simplification. In particular, the use of a reduced equation of the partition model, selected on the basis of the suggested procedure, is necessary for the prediction of meaningful retention surfaces, whereas the decrease in the number of the adjustable parameters in the adsorption model offers only noise reduction and fitting simplicity, because no version of this model predicts abnormal retention surfaces.
机译:建议使用基于统计标准的适当程序来确定给定色谱系统的最佳模型参数集。使用的标准是t比率检验,残差平方和的变化率,拟合的标准误差,F检验和CP检验。建议的程序已使用两种不同的模型进行了评估,一种基于分配模型,另一种基于吸附机理,描述了pH和有机改性剂含量对反相液相色谱中离子型溶质保留的综合影响。结果表明,所有标准都给出了几乎收敛的结果,因此我们可以简单地使用F检验,这似乎是最敏感,最可靠的标准,不包括任何个人判断。还发现,测试的保留模型在简化方面表现出不同的行为。尤其是,根据建议的程序选择分区模型的简化方程对于预测有意义的保留表面是必要的,而吸附模型中可调整参数数量的减少仅会产生噪音简化和拟合简单,因为此模型的任何版本都无法预测异常的保留表面。

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