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Sparse Proteomics Analysis – a compressed sensing-based approach for feature selection and classification of high-dimensional proteomics mass spectrometry data

机译:稀疏蛋白质组学分析–一种基于压缩感知的方法用于高维蛋白质组学质谱数据的特征选择和分类

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摘要

BackgroundHigh-throughput proteomics techniques, such as mass spectrometry (MS)-based approaches, produce very high-dimensional data-sets. In a clinical setting one is often interested in how mass spectra differ between patients of different classes, for example spectra from healthy patients vs. spectra from patients having a particular disease. Machine learning algorithms are needed to (a) identify these discriminating features and (b) classify unknown spectra based on this feature set. Since the acquired data is usually noisy, the algorithms should be robust against noise and outliers, while the identified feature set should be as small as possible.
机译:背景技术高通量蛋白质组学技术,例如基于质谱(MS)的方法,可产生非常高维的数据集。在临床环境中,人们通常感兴趣的是不同类别的患者之间的质谱差异,例如健康患者的质谱与患有特定疾病的患者的质谱。需要机器学习算法来(a)识别这些区分特征,并(b)基于此特征集对未知光谱进行分类。由于获取的数据通常比较嘈杂,因此算法应该对噪声和离群值具有鲁棒性,而识别出的特征集应尽可能小。

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