首页> 外文会议>Iberoamerican Congress on Pattern Recognition(CIARP 2007); 20071113-16; Vina del Mar-Valparaiso(CL) >Mass Spectrometry Based Cancer Classification Using Fuzzy Fractal Dimensions
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Mass Spectrometry Based Cancer Classification Using Fuzzy Fractal Dimensions

机译:基于质谱的癌症分形维数的癌症分类

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Cancer classification using high-throughput mass spectrometry data for early disease detection and prevention has recently become an attractive topic of research in bioinformatics. Recently, several studies have shown that the synergy of proteomic technology and pattern classification techniques is promising for the predictive diagnoses of several cancer diseases. However, the extraction of some effective features that can represent the identities of different classes plays a critical factor for any classification problems involving the analysis of complex data. In this paper we present the concept of a fuzzy fractal dimension that can be utilized as a novel feature of mass spectrometry (MS) data. We then apply vector quantization (VQ) to model the class prototyes using the fuzzy fractal dimensions for classification. The proposed methodology was tested with an MS-based ovarian cancer dataset. Using a simple VQ-based classification rule, the overall average classification rates of the proposed approach were found to be superior to some other methods.
机译:使用高通量质谱数据进行早期疾病检测和预防的癌症分类最近已成为生物信息学研究的一个有吸引力的主题。最近,一些研究表明,蛋白质组学技术和模式分类技术的协同作用有望用于几种癌症疾病的预测诊断。但是,提取一些可以表示不同类别标识的有效特征,对于涉及复杂数据分析的任何分类问题都是至关重要的因素。在本文中,我们提出了模糊分形维数的概念,该概念可以用作质谱(MS)数据的新功能。然后,我们应用向量量化(VQ)来使用模糊分形维数对类别原型进行分类。使用基于MS的卵巢癌数据集对提出的方法进行了测试。使用简单的基于VQ的分类规则,发现该方法的总体平均分类率优于其他方法。

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