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Automatic process for sample selection during multivariate calibration

机译:多元校准过程中样品自动选择过程

摘要

A process for enhancing a multivariate calibration through optimization of a calibration data set operates on a large calibration set of samples that includes measurements and associated reference values to automatically select an optimal sub-set of samples that enables calculation of an optimized calibration model. The process is automatic and bases sample selection on two basic criteria: enhancement of correlation between a partner variable extracted from the independent variable and the dependent variable and reduction of correlation between the dependent variable and interference. The method includes two fundamental steps: evaluation, assigning a measurement of calibration suitability to a subset of data; and optimization, selecting an optimal subset of data as directed by the measurement of suitability. The process is particularly applied in enhancing and automating the calibration process for non-invasive measurement glucose measurement but can be applied in any system involving the calculation of multivariate models from empirical data sets.
机译:通过对校准数据集进行优化来增强多变量校准的过程在包括测量值和相关参考值的大样本校准集上进行操作,以自动选择能够计算优化校准模型的最佳样本子集。该过程是自动的,并基于两个基本标准进行样本选择:增强从自变量提取的伙伴变量与因变量之间的相关性,并减少因变量与干扰之间的相关性。该方法包括两个基本步骤:评估,将校准适用性的度量分配给数据子集;和优化,根据适合性的测量选择最佳的数据子集。该过程特别适用于增强和自动化非侵入性测量葡萄糖测量的校准过程,但可以应用于涉及根据经验数据集计算多元模型的任何系统。

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