Adaptive denoising in spectral analysis by genetic programming

J. Rowland, Janet Taylor
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Abstract

This paper relates to supervised interpretation of the infrared analytical spectra of complex biological samples. The aim is to produce a model that can predict the value of a measurand of interest, such as the concentration of a particular chemical constituent in complex biological material. Conventionally, a number of spectra are co-added to reduce measurement noise and this is time consuming. In this paper we demonstrate the ability of evolutionary search to provide adaptive averaging of spectral regions to provide selective tradeoff between spectral resolution and signal-to-noise ratio. The resultant denoised subset of the variables is then input to a proprietary Genetic Programming (GP) package which forms a predictive model that compares well in predictive power with a combination of Partial Least Squares Regression (PLS) and adaptive denoising. This demonstrates the considerable advantage that, given appropriate node functions, the GP could handle the entire process of denoising and forming the final predictive model all in one stage. This reduces or removes the need for co-adding with a consequent reduction in data acquisition time.
基于遗传规划的谱分析自适应去噪
本文涉及复杂生物样品红外分析光谱的监督解释。其目的是建立一个能够预测感兴趣的测量值的模型,例如复杂生物材料中特定化学成分的浓度。传统的方法是将多个光谱叠加在一起以降低测量噪声,这是一种耗时的方法。在本文中,我们展示了进化搜索提供自适应平均光谱区域的能力,以提供光谱分辨率和信噪比之间的选择性权衡。然后将所得的去噪变量子集输入到专有的遗传规划(GP)包中,该包形成一个预测模型,该模型与偏最小二乘回归(PLS)和自适应去噪的组合在预测能力方面比较好。这表明,在给定适当的节点函数的情况下,GP可以在一个阶段处理去噪和形成最终预测模型的整个过程,这是相当大的优势。这减少或消除了共添加的需要,从而减少了数据采集时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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