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Feature Extraction from Mass Spectra for Classification of Pathological States

机译:从质谱中提取特征以进行病理状态分类

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摘要

Mass spectrometry is becoming an important tool in pro-teomics. The representation of mass spectra is characterized by very high dimensionality and a high level of redundancy. Here we present a feature extraction method for mass spectra that directly models for domain knowledge, reduces the dimensionality and redundancy of the initial representation and controls for the level of granularity of feature extraction by seeking to optimize classification accuracy. A number of experiments are performed which show that the feature extraction preserves the initial discriminatory content of the learning examples.
机译:质谱正成为蛋白质组学中的重要工具。质谱表示法的特点是具有很高的维数和很高的冗余度。在这里,我们提出了一种质谱特征提取方法,该方法直接为领域知识建模,通过寻求优化分类精度来降低初始表示的维数和冗余度,并控制特征提取的粒度级别。进行了许多实验,这些实验表明特征提取保留了学习示例的初始区分性内容。

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