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Classification and Rule Generation for Colon Tumor Gene Expression Data

机译:结肠肿瘤基因表达数据的分类和规则生成

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Microarray genome studies discover the relationship between gene expression profiles and various diseases. This relationship generally introduces valuable quantitative information from genome profiles. The information facilitates drugs and therapeutics development to provide better treatments. In this paper we suggest that the statistical learning algorithm, Support Vector Machine (SVM) is a useful classification technique to classify genome profiles. Performance and usefulness of SVM is verified with colon tumor genome data. A comparison of SVM's performance is made with another popular decision trees based classification technique C5.0. SVM is found to be superior to C5.0 in performance. However, SVM lacks the rule extraction capability. We extract rules to identity the responsible tissues for colon tumor using C5.0. The rules could be used with SVM to reduce the size of microarrays in future.
机译:微阵列基因组研究发现了基因表达谱与各种疾病之间的关系。这种关系通常会从基因组概况中引入有价值的定量信息。该信息有助于药物和治疗剂的开发,以提供更好的治疗方法。在本文中,我们建议统计学习算法支持向量机(SVM)是一种有用的分类技术,可以对基因组图谱进行分类。 SVM的性能和有用性已通过结肠肿瘤基因组数据进行了验证。 SVM的性能与另一种流行的基于决策树的分类技术C5.0进行了比较。发现SVM在性能上优于C5.0。但是,SVM缺少规则提取功能。我们使用C5.0提取规则来识别结肠肿瘤的负责组织。该规则可与SVM一起使用,以减少将来的微阵列大小。

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