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Supervised non-negative matrix factorization methods for MALDI imaging applications

机译:MALDI成像应用的监督非负矩阵分解方法

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Motivation: Non-negative matrix factorization (NMF) is a common tool for obtaining low-rank approximations of non-negative data matrices and has been widely used in machine learning, e.g. for supporting feature extraction in high-dimensional classification tasks. In its classical form, NMF is an unsupervised method, i.e. the class labels of the training data are not used when computing the NMF. However, incorporating the classification labels into the NMF algorithms allows to specifically guide them toward the extraction of data patterns relevant for discriminating the respective classes. This approach is particularly suited for the analysis of mass spectrometry imaging (MSI) data in clinical applications, such as tumor typing and classification, which are among the most challenging tasks in pathology. Thus, we investigate algorithms for extracting tumor-specific spectral patterns from MSI data by NMF methods.
机译:动机:非负矩阵分解(NMF)是获得非负数据矩阵的低秩近似的常见工具,并且已广泛用于机器学习,例如, 用于在高维分类任务中支持特征提取。 在其经典形式中,NMF是一种无人监督的方法,即,在计算NMF时不使用训练数据的类标签。 然而,将分类标签纳入NMF算法允许专门引导它们朝向与区分相应类相关的数据模式的提取。 这种方法特别适用于分析临床应用中的质谱成像(MSI)数据,例如肿瘤打字和分类,这些方法是病理中最具挑战性的任务之一。 因此,我们通过NMF方法调查用于从MSI数据中提取肿瘤特异性光谱模式的算法。

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