Department of Chemistry, Saint Francis Xavier University, P.O. Box 5000, Antigonish, Nova Scotia, B2G 2W5, Canada.
Appl Spectrosc. 2010 Mar;64(3):245-54. doi: 10.1366/000370210790918300.
Near-infrared (NIR) spectroscopy has been used for noninvasive measurements of solid and liquid samples, through highly scattering media such as colloids, food, and tissue. It has seen many applications in agriculture, medicine, and petroleum industries, mainly due to the minimal sample preparation that is required. This minimal sample preparation does come at a cost to the analyst, since the high signal-to-noise ratio of a typical NIR instrument can be riddled with effects stemming from heterogeneity and the scattering of light. This work proposes a novel preprocessing method, the path length distribution correction (PDC) method, to correct spectral nonlinearities in samples of highly scattering media. These nonlinearities stem from the distribution of path lengths of the incident light, which are a result of the scattering of light in the sample. Recent developments in time-of-flight (TOF) spectroscopy have allowed for the acquisition of the distribution of times that photons travel within a sample simultaneous with the collection of the NIR spectrum. The TOF distribution is used to estimate a path length distribution within a sample, which is then used to fix the measurement spectra, giving each spectrum an apparent path length of unity. The PDC-corrected spectra can then be used with traditional multivariate calibration methods such as principal component regression (PCR) and partial least squares (PLS). Another discussion looks at the viability of using a lognormal distribution as a simple approximation of the TOF distribution. This would be very useful in circumstances in which experimental TOF distributions are not collected. PDC is shown to significantly improve prediction errors in experimental data sets, while diagnostic plots indicate that the corrected spectra do appear to have a path length of unity, thus alleviating effects of the distribution of path lengths.
近红外(NIR)光谱学已被用于通过胶体、食品和组织等高度散射介质对固体和液体样品进行非侵入式测量。它在农业、医学和石油工业中有着广泛的应用,主要是因为它所需的样品制备量很少。这种最小的样品制备确实给分析人员带来了一定的代价,因为典型的近红外仪器的高信噪比可能会受到来自异质性和光散射的影响。这项工作提出了一种新的预处理方法,即光程分布校正(PDC)方法,以校正高度散射介质样品中的光谱非线性。这些非线性源于入射光的光程分布,这是由于光在样品中的散射造成的。最近,飞行时间(TOF)光谱学的发展允许同时采集光子在样品中传播的时间分布和近红外光谱,以获取时间分布。TOF 分布用于估计样品内部的光程分布,然后用于固定测量光谱,使每个光谱具有明显的光程长度为 1。然后可以使用 PDC 校正的光谱与传统的多元校准方法(如主成分回归(PCR)和偏最小二乘(PLS))一起使用。另一个讨论是探讨使用对数正态分布作为 TOF 分布的简单近似的可行性。在没有实验 TOF 分布的情况下,这将非常有用。PDC 显著降低了实验数据集的预测误差,而诊断图表明校正后的光谱似乎确实具有光程长度为 1,从而减轻了光程分布的影响。