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Pathway-Based Microarray Analysis with Negatively Correlated Feature Sets for Disease Classification

机译:基于路径的具有负相关特征集的疾病分类微阵列分析

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Accuracy of disease classification has always been a challenging goal of bioinformatics research. Microarray-based classification of disease states relies on the use of gene expression profiles of patients to identify those that have profiles differing from the control group. A number of methods have been proposed to identify diagnostic markers that can accurately discriminate between different classes of a disease. Pathway-based microarray analysis for disease classification can help improving the classification accuracy. The experimental results showed that the use of pathway activities inferred by the negatively correlated feature sets (NCFS) based methods achieved higher accuracy in disease classification than other different pathway-based feature selection methods for two breast cancer metastasis datasets.
机译:疾病分类的准确性一直是生物信息学研究的一个挑战性目标。基于微阵列的疾病状态分类依赖于患者基因表达谱的使用,以鉴定那些与对照组不同的谱。已经提出了许多方法来鉴定可以准确地区分不同疾病类别的诊断标志物。用于疾病分类的基于通路的微阵列分析可以帮助提高分类的准确性。实验结果表明,使用基于负相关特征集(NCFS)的方法推断的途径活性,在疾病分类方面比针对两个乳腺癌转移数据集的其他不同基于途径的特征选择方法具有更高的准确性。

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