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Construction of Training Sets for Valid Calibration of in Vivo Cyclic Voltammetric Data by Principal Component Analysis

机译:用主成分分析法建立有效校准体内循环伏安数据的训练集

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摘要

Principal component regression, a multivariate calibration technique, is an invaluable tool for the analysis of voltammetric data collected in vivo with acutely implanted microelectrodes. This method utilizes training sets to separate cyclic voltammograms into contributions from multiple electro-active species. The introduction of chronically implanted microelectrodes permits longitudinal measurements at the same electrode and brain location over multiple recordings. The reliability of these measurements depends on a consistent calibration methodology. One published approach has been the use of training sets built with data from separate electrodes and animals to evaluate neurochemical signals in multiple subjects. Alternatively, responses to unpredicted rewards have been used to generate calibration data. This study addresses these approaches using voltammetric data from three different experiments in freely moving rats obtained with acutely implanted microelectrodes. The findings demonstrate critical issues arising from the misuse of principal component regression that result in significant underestimates of concentrations and improper statistical model validation that, in turn, can lead to inaccurate data interpretation. Therefore, the calibration methodology for chronically implanted microelectrodes needs to be revisited and improved before measurements can be considered reliable.
机译:主成分回归是一种多变量校准技术,对于分析使用急性植入的微电极在体内收集的伏安数据,是一种宝贵的工具。该方法利用训练集将循环伏安图分离为来自多个电活性物质的贡献。长期植入的微电极的引入允许在多次记录中在同一电极和大脑位置进行纵向测量。这些测量的可靠性取决于一致的校准方法。一种已公开的方法是使用训练集,该训练集由来自不同电极和动物的数据构建而成,以评估多个受试者的神经化学信号。备选地,已经使用对意外奖励的响应来生成校准数据。这项研究使用来自三个不同实验的伏安数据对这些方法进行了研究,这些实验是在使用急性植入的微电极的自由移动大鼠中进行的。研究结果表明,滥用主成分回归法会导致严重问题,导致严重低估集中度和不正确的统计模型验证,进而可能导致数据解释不准确。因此,在认为测量可靠之前,需要重新审视和改进用于长期植入的微电极的校准方法。

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