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A Fast Multi-component Latent Variable Regression Framework for Quantitative Analysis of Surface-Enhanced Raman Spectra

机译:用于表面增强拉曼光谱定量分析的快速多组分潜变量回归框架

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Surface-enhanced Raman spectroscopy (SERS) has been a routine method for the quantitative analysis of Nano-tags or biomarkers. The multivariate calibration (MC) model is normally used to reduce the bias from the inherent instability of Raman signals. To solve the more variables than observations, ill-conditioned problem within the MC model, latent variable regression (LVR) methods are usually used. In order to decide the optimized number of latent variables (LVs) used in the model, cross-validation methods are commonly used to test every possible number, and the one gives the minimum estimated error is returned as the optimized number. In this paper we present a new multi-component LVR together with a cross-validation framework to accelerate the time-consuming processes of optimizing number of LVs. It reduces the growth rate of the algorithms from O(k^2) to O(k), where k is the possible numbers of LVs. Experimental results show the estimated results of the two frameworks are equivalent and the running time of our new framework is evidently reduced.
机译:表面增强拉曼光谱(SERS)已成为定量分析纳米标签或生物标记物的常规方法。多元校正(MC)模型通常用于减少拉曼信号固有不稳定性带来的偏差。为了解决比观察值更多的变量,MC模型中的病态问题,通常使用潜变量回归(LVR)方法。为了确定模型中使用的潜在变量(LV)的最佳数量,交叉验证方法通常用于测试每个可能的数量,并且给出最小估计误差的一种作为最佳数量返回。在本文中,我们提出了一种新的多组件LVR以及交叉验证框架,以加速优化LV数量的耗时过程。它将算法的增长率从O(k ^ 2)降低到O(k),其中k是LV的可能数量。实验结果表明,两个框架的估计结果是等效的,并且新框架的运行时间明显减少。

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