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The quality coefficient as performance assessment parameter of straight line calibration curves in relationship with the number of calibration points

机译:品质系数作为直线校准曲线性能评估参数与校准点数量的关系

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摘要

Knowledge of the response function (y = f(x)) is essential in the validation of quantitative analysis methods as it describes the mathematical relationship between measurable responses and the concentrations or quantities of the analyte in the sample within a suitable range. The most common response function used is a straight line obtained by ordinary least squares (OLS) regression. Suitability of calibration lines obtained by OLS regression might be verified by calculation of a quality coefficient (QC _(mean)). Mathematical modelling performed previously showed that with respect to critical limit values for g, which controls the symmetry of the prediction interval of the abscissa value obtained from the confidence intervals around the OLS calibration curve, a corresponding quality coefficient value exists as a quality performance parameter which is related to the spread of the abscissa values around their mean. In this paper, new mathematical models are developed to demonstrate to which extend also the number n of calibration points (x _i,y _i) defines the required value for the quality coefficient (QC _(mean)) for different values of g. From these models, it could be established that the attribution of a critical limit value to QC _(mean) as a performance parameter for straight line calibration cannot be arbitrary chosen but has to rely on the mathematical model relating QC _(mean), the g-value, the number n of calibration points and the spread of the x _i-values around their mean. Practical measures for analysts are provided which tend to lower the g-value of straight calibration lines beneath critical values and enable to improve the quality of the calibration line applied for analysis, as demonstrated in an elaborated example.
机译:响应函数的知识(y = f(x))在定量分析方法的验证中至关重要,因为它描述了可测量响应与样品在适当范围内分析物的浓度或数量之间的数学关系。最常用的响应函数是通过普通最小二乘(OLS)回归获得的直线。通过OLS回归获得的校准线的适用性可通过计算质量系数(QC _(平均值))来验证。先前执行的数学建模表明,对于g的临界极限值(其控制从OLS校准曲线周围的置信区间获得的横坐标值的预测区间的对称性),存在相应的质量系数值作为质量性能参数,与横坐标值在均值周围的分布有关。在本文中,开发了新的数学模型以证明还将校准点的数量n(x _i,y _i)定义为g的不同值的质量系数(QC _(mean))所需的值。从这些模型中可以确定,不能随意选择将临界极限值作为直线校准性能参数的QC _(mean),而是必须依靠与QC _(mean)有关的数学模型。 g值,校准点的数量n以及x _i值在其平均值附近的分布。为分析人员提供了一些实用的措施,这些措施往往会将直线校准线的g值降低到临界值以下,并能够提高用于分析的校准线的质量,如详细示例所示。

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