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Assessment of quality performance parameters for straight line calibration curves related to the spread of the abscissa values around their mean

机译:评估直线校准曲线的质量性能参数,该曲线与横坐标值在均值周围的分布有关

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In validation of quantitative analysis methods, knowledge of the response function is essential as it describes, within the range of application, the existing relationship between the response (the measurement signal) and the concentration or quantity of the analyte in the sample. The most common response function used is obtained by simple linear regression, estimating the regression parameters slope and intercept by the least squares method as general fitting method. The assumption in this fitting is that the response variance is a constant, whatever the concentrations within the range examined. The straight calibration line may perform unacceptably due to the presence of outliers or unexpected curvature of the line. Checking the suitability of calibration lines might be performed by calculation of a well-defined quality coefficient based on a constant standard deviation. The concentration value for a test sample calculated by interpolation from the least squares line is of little value unless it is accompanied by an estimate of its random variation expressed by a confidence interval. This confidence interval results from the uncertainty in the measurement signal, combined with the confidence interval for the regression line at that measurement signal and is characterized by a standard deviation s(x0) calculated by an approximate equation. This approximate equation is only valid when the mathematical function, calculating a characteristic value g from specific regression line parameters as the slope, the standard error of the estimate and the spread of the abscissa values around their mean, is below a critical value as described in literature. It is mathematically demonstrated that with respect to this critical limit value for g, the proposed value for the quality coefficient applied as a suitability check for the linear regression line as calibration function, depends only on the number of calibration points and the spread of the abscissa values around their mean. (c) 2006 Published by Elsevier B.V.
机译:在验证定量分析方法时,必须了解响应函数,因为它描述了在应用范围内响应(测量信号)与样品中分析物的浓度或数量之间的现有关系。通过简单的线性回归,使用最小二乘法作为一般拟合方法,估计回归参数的斜率和截距,可以得到最常用的响应函数。这种拟合的假设是,无论所检查范围内的浓度如何,响应方差都是一个常数。由于存在异常值或直线的意外弯曲,直线校准线可能无法令人满意地执行。通过基于恒定的标准偏差计算定义明确的质量系数,可以检查校准线的适用性。由最小二乘线通过内插法计算出的测试样品浓度值几乎没有值,除非它伴随着以置信区间表示的随机变化的估计值。该置信区间是由测量信号的不确定性引起的,再加上该测量信号处回归线的置信区间,其特征在于由近似方程式计算的标准偏差s(x0)。仅当数学函数根据特定的回归线参数(如斜率,估计的标准误差和横坐标值在其平均值周围的分布)计算出特征值g低于临界值时,该近似方程式才有效文学。从数学上证明,对于g的这个临界极限值,作为线性回归线作为校准函数的适用性检验而应用的质量系数的建议值仅取决于校准点的数量和横坐标的范围均值附近的值。 (c)2006年由Elsevier B.V.

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