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A wavelet-based data pre-processing analysis approach in mass spectrometry.

机译:质谱中基于小波的数据预处理分析方法。

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摘要

Recently, mass spectrometry analysis has a become an effective and rapid approach in detecting early-stage cancer. To identify proteomic patterns in serum to discriminate cancer patients from normal individuals, machine-learning methods, such as feature selection and classification, have already been involved in the analysis of mass spectrometry (MS) data with some success. However, the performance of existing machine learning methods for MS data analysis still needs improving. The study in this paper proposes a wavelet-based pre-processing approach to MS data analysis. The approach applies wavelet-based transforms to MS data with the aim of de-noising the data that are potentially contaminated in acquisition. The effects of the selection of wavelet function and decomposition level on the de-noising performance have also been investigated in this study. Our comparative experimental results demonstrate that the proposed de-noising pre-processing approach has potentials to remove possible noise embedded in MS data, which can lead to improved performance for existing machine learning methods in cancer detection.
机译:最近,质谱分析已成为检测早期癌症的有效且快速的方法。为了鉴定血清中的蛋白质组模式以将癌症患者与正常人区分开,机器学习方法(例如特征选择和分类)已经参与了质谱(MS)数据的分析,并取得了一些成功。但是,用于MS数据分析的现有机器学习方法的性能仍需要提高。本文的研究提出了一种基于小波的MS数据分析预处理方法。该方法将基于小波的变换应用于MS数据,以对在采集中可能受到污染的数据进行消噪。这项研究还研究了小波函数的选择和分解水平对降噪性能的影响。我们的对比实验结果表明,所提出的降噪预处理方法具有消除嵌入在MS数据中的可能噪声的潜力,这可以提高现有的机器学习方法在癌症检测中的性能。

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