首页> 外文期刊>Journal of Analytical Toxicology >Comparison of Ordinary, Weighted, and Generalized Least-Squares Straight-Line Calibrations for LC-MS-MS, GC-MS, HPLC, GC, and Enzymatic Assay.
【24h】

Comparison of Ordinary, Weighted, and Generalized Least-Squares Straight-Line Calibrations for LC-MS-MS, GC-MS, HPLC, GC, and Enzymatic Assay.

机译:用于LC-MS-MS,GC-MS,HPLC,GC和酶促测定的普通,加权和广义最小二乘直线校准的比较。

获取原文
获取原文并翻译 | 示例
           

摘要

The impact of experimental errors in one or both variables on the use of linear least-squares was investigated for method calibrations (response = intercept plus slope times concentration, or equivalently, Y = a(1) + a(2)X ) frequently used in analytical toxicology. In principle, the most reliable calibrations should consider errors from all sources, but consideration of concentration (X) uncertainties has not been common due to complex fitting algorithm requirements. Data were obtained for liquid chromatography-tandem mass spectrometry, gas chromatography-mass spectrometry, high-performance liquid chromatography, gas chromatography, and enzymatic assay. The required experimental uncertainties in response were obtained from replicate measurements. The required experimental uncertainties in concentration were determined from manufacturers' furnished uncertainties in stock solutions coupled with uncertainties imparted by dilution techniques. The mathematical fitting techniques used in the investigation were ordinary least-squares, weighted least-squares (WOLS), and generalized least-squares (GLS). GLS best-fit results, obtained with an efficient iteration algorithm implemented in a spreadsheet format, are used with a modified WOLS-based formula to derive reliable uncertainties in calculated concentrations. It was found that while the values of the intercepts and slopes were not markedly different for the different techniques, the derived uncertainties in parameters were different. Such differences can significantly affect the predicted uncertainties in concentrations derived from the use of the different linear least-squares equations.
机译:经常使用的方法校准(响应=截距加上斜率乘以浓度,或者等效地,Y = a(1)+ a(2)X),研究了一个或两个变量中实验误差对线性最小二乘法的使用的影响。分析毒理学。原则上,最可靠的校准应考虑所有来源的误差,但由于复杂的拟合算法要求,对浓度(X)不确定性的考虑并不常见。获得了液相色谱-串联质谱,气相色谱-质谱,高效液相色谱,气相色谱和酶促测定的数据。从重复测量中获得了所需的实验不确定性。浓度所需的实验不确定性由制造商提供的储备溶液不确定性以及稀释技术带来的不确定性确定。研究中使用的数学拟合技术为普通最小二乘法,加权最小二乘(WOLS)和广义最小二乘(GLS)。通过以电子表格格式实现的高效迭代算法获得的GLS最佳拟合结果与基于WOLS的改进公式结合使用,可以得出计算浓度的可靠不确定性。结果发现,尽管不同技术的截距和斜率值没有明显不同,但参数的不确定性却不同。这种差异会显着影响使用不同的线性最小二乘方程式得出的浓度预测的不确定性。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号