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CASCADING SVMS AS A TOOL FOR MEDICAL DIAGNOSIS USING MULTI-CLASS GENE EXPRESSION DATA

机译:使用多类基因表达数据将SVMS级联为医学诊断工具

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In this paper we propose a novel Support Vector Machines-based architecture for medical diagnosis using multi-class gene expression data. It consists of a pre-processing unit and N - 1 sequentially ordered blocks capable of classifying N classes in a cascading manner. Each block embodies both a gene selection and a classification module. It offers the flexibility of constructing block-specific gene expression spaces and hypersurfaces for the discrimination of the different classes. The proposed architecture was applied for medical diagnostic tasks including prostate and lung cancer diagnosis. Its performance was evaluated by using a leave-one-out cross validation approach which avoids the bias introduced by the gene selection process. The results show that it provides high accuracy which in most cases exceeds the accuracy achieved by the popular one-vs-one and one-vs-all SVM combination schemes and Nearest-Neighbor classifiers. The cascading SVMs can be successfully applied as a medical diagnostic tool
机译:在本文中,我们提出了一种新颖的基于支持向量机的体系结构,用于使用多类基因表达数据进行医学诊断。它由一个预处理单元和N-1个顺序排列的块组成,这些块能够以级联方式对N个类别进行分类。每个方框都包含基因选择和分类模块。它提供了构建用于区分不同类别的块特异性基因表达空间和超表面的灵活性。所提出的体系结构被用于医疗诊断任务,包括前列腺癌和肺癌的诊断。通过使用留一法交叉验证方法来评估其性能,该方法避免了基因选择过程引入的偏倚。结果表明,它提供了很高的准确性,在大多数情况下,它们超过了流行的一对一和一对多所有SVM组合方案以及最近邻分类器所达到的准确性。级联SVM可以成功地用作医疗诊断工具

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