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Multivariate denoising methods combining wavelets and principal component analysis for mass spectrometry data

机译:结合小波和主成分分析的多元降噪方法用于质谱数据

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The identification of new diagnostic or prognostic biomarkers is one of the main aims of clinical cancer research. In recent years, there has been a growing interest in using mass spectrometry for the detection of such biomarkers. The MS signal resulting from MALDI-TOF measurements is contaminated by different sources of technical variations that can be removed by a prior pre-processing step. In particular, denoising makes it possible to remove the random noise contained in the signal. Wavelet methodology associated with thresholding is usually used for this purpose. In this study, we adapted two multivariate denoising methods that combine wavelets and PCA to MS data. The objective was to obtain better denoising of the data so as to extract the meaningful proteomic biological information from the raw spectra and reach meaningful clinical conclusions. The proposed methods were evaluated and compared with the classical soft thresholding denoising method using both real and simulated data sets. It was shown that taking into account common structures of the signals by adding a dimension reduction step on approximation coefficients through PCA provided more effective denoising when combined with soft thresholding on detail coefficients.
机译:新的诊断或预后生物标志物的鉴定是临床癌症研究的主要目标之一。近年来,使用质谱法检测此类生物标志物的兴趣日益浓厚。 MALDI-TOF测量结果产生的MS信号受到不同技术变化源的污染,这些变化可以通过先前的预处理步骤消除。特别地,去噪使得可以去除信号中包含的随机噪声。与阈值相关的小波方法通常用于此目的。在这项研究中,我们采用了两种将小波和PCA结合到MS数据的多元去噪方法。目的是获得更好的数据去噪,以便从原始光谱中提取有意义的蛋白质组生物学信息并得出有意义的临床结论。对所提出的方法进行了评估,并与使用实际和模拟数据集的经典软阈值去噪方法进行了比较。结果表明,考虑到信号的通用结构,通过与PCA结合对细节系数进行软阈值处理,通过PCA在近似系数上增加降维步骤可提供更有效的降噪。

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