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Classification of mass-spectrometric data in clinical proteomics using learning vector quantization methods

机译:使用学习矢量量化方法对临床蛋白质组学中的质谱数据进行分类

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In the present contribution we propose two recently developed classification algorithms for the analysis of mass-spectrometric datathe supervised neural gas and the fuzzy-labeled self-organizing map. The algorithms are inherently regularizing, which is recommended, for these spectral data because of its high dimensionality and the sparseness for specific problems. The algorithms are both prototype-based such that the principle of characteristic representants is realized. This leads to an easy interpretation of the generated classifcation model. Further, the fuzzy-labeled self-organizing map is able to process uncertainty in data, and classification results can be obtained as fuzzy decisions. Moreover, this fuzzy classification together with the property of topographic mapping offers the possibility of class similarity detection, which can be used for class visualization. We demonstrate the power of both methods for two exemplary examples: the classification of bacteria (listeria types) and neoplastic and non-neoplastic cell populations in breast cancer tissue sections.
机译:在当前的贡献中,我们提出了两种最近开发的分类算法,用于分析质谱数据,监督神经气体和模糊标记的自组织图。对于这些光谱数据,算法固有地是正则化的,因此建议使用该算法,因为它的维数高且对特定问题的稀疏性。这些算法都是基于原型的,从而实现了特征代表的原理。这导致对生成的分类模型的简单解释。此外,模糊标记的自组织图能够处理数据中的不确定性,并且可以获得分类结果作为模糊决策。此外,这种模糊分类以及地形图的属性提供了类相似性检测的可能性,可用于类可视化。我们证明了这两种方法对两个示例性例子的影响:乳腺癌组织切片中细菌(利斯特氏菌类型)的分类以及赘生性和非赘生性细胞群体。

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