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A Novel Wavelet-based Thresholding Method for the Pre-processing of Mass Spectrometry Data that Accounts for Heterogeneous Noise

机译:一种新的基于小波的阈值处理质谱数据的阈值方法该方法解决了异构噪声

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摘要

In recent years there has been an increased interest in using protein mass spectroscopy to discriminate diseased from healthy individuals with the aim of discovering molecular markers for disease. A crucial step before any statistical analysis is the pre-processing of the mass spectrometry data. Statistical results are typically strongly affected by the specific pre-processing techniques used. One important pre-processing step is the removal of chemical and instrumental noise from the mass spectra. Wavelet denoising techniques are a standard method for denoising. Existing techniques, however, do not accommodate errors that vary across the mass spectrum, but instead assume a homogeneous error structure. In this paper we propose a novel wavelet denoising approach that deals with heterogeneous errors by incorporating a variance change point detection method in the thresholding procedure. We study our method on real and simulated mass spectrometry data and show that it improves on performances of peak detection methods.
机译:近年来,人们越来越关注使用蛋白质质谱法将疾病与健康个体区分开来,目的是发现疾病的分子标记。任何统计分析之前的关键步骤是质谱数据的预处理。统计结果通常会受到所使用的特定预处理技术的强烈影响。一个重要的预处理步骤是从质谱图中消除化学和仪器噪声。小波降噪技术是一种标准的降噪方法。但是,现有技术不能适应在整个质谱范围内变化的误差,而是采用同构的误差结构。在本文中,我们提出了一种新颖的小波去噪方法,该方法通过在阈值处理过程中结合方差变化点检测方法来处理异构错误。我们在真实和模拟的质谱数据上研究了我们的方法,并表明它改善了峰检测方法的性能。

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