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Investigation of Noise-Induced Instabilities in Quantitative Biological Spectroscopy and Its Implications for Noninvasive Glucose Monitoring

机译:定量生物光谱学中噪声诱发的不稳定性及其对无创血糖监测的意义的研究

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Over the past decade, optical spectroscopy has been employed in combination with multivariate chemometric models to investigate a wide variety of diseases and pathological conditions, primarily due to its excellent chemical specificity and lack of sample preparation requirements. Despite promising results in several proof-of-concept studies, its translation to the clinical setting has often been hindered by inadequate accuracy of the conventional spectroscopic models. To address this issue and the possibility of curved (nonlinear) effects in the relationship between the concentrations of the analyte of interest and the mixture spectra (due to fluctuations in sample and environmental conditions), support vector machine-based least-squares nonlinear regression (LS-SVR) has been recently proposed. In this paper, we investigate the robustness of this methodology to noise-induced instabilities and present an analytical formula for estimating modeling precision as a function of measurement noise and model parameters. This formalism can be readily used to evaluate uncertainty in information extracted from spectroscopic measurements, particularly important for rapid-acquisition biomedical applications. Subsequently, using field data (Raman spectra) acquired from a glucose clamping study on an animal model subject, we perform the first systematic investigation of the relative effect of additive interference components (namely, noise in prediction spectra, calibration spectra, and calibration concentrations) on the prediction error of nonlinear spectroscopic models. Our results show that the LS-SVR method gives more accurate results and is substantially more robust to additive noise when compared with conventional regression methods such as partial least-squares regression (PLS), when careful selection of the LS-SVR model parameters are performed. We anticipate that these results will be useful for uncertainty estimation in similar biomedical applications where the precision of measurements and its response to noise in the data set is as important, if not more so, than the generic accuracy level.
机译:在过去的十年中,主要是由于其出色的化学特异性和对样品制备的要求,光谱技术已与多变量化学计量学模型结合用于研究多种疾病和病理状况。尽管在一些概念验证研究中取得了令人鼓舞的结果,但由于传统光谱模型的准确性不足,通常无法将其翻译为临床。为解决此问题以及目标分析物浓度与混合物光谱之间关系(由于样品和环境条件的波动)之间可能产生弯曲(非线性)效应的可能性,请支持基于向量机的最小二乘非线性回归( LS-SVR)最近已被提出。在本文中,我们研究了这种方法对噪声引起的不稳定性的鲁棒性,并提出了一个解析公式,用于估计作为测量噪声和模型参数的函数的建模精度。这种形式主义可以很容易地用于评估从光谱测量中提取的信息的不确定性,这对于快速获取生物医学应用尤其重要。随后,使用从葡萄糖钳制研究中获得的动物模型受试者的现场数据(拉曼光谱),我们对附加干扰成分(即预测光谱,校准光谱和校准浓度中的噪声)的相对影响进行了首次系统研究。非线性光谱模型的预测误差我们的结果表明,与传统的回归方法(如偏最小二乘回归(PLS))相比,当仔细选择LS-SVR模型参数时,LS-SVR方法可提供更准确的结果,并且对加性噪声的鲁棒性更强。我们预计,这些结果对于类似的生物医学应用中的不确定性估计将很有用,在这些应用中,测量的精度及其对数据集中噪声的响应与通用精度水平同样重要,甚至更高。

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