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Pathway-based microarray analysis for robust disease classification

机译:基于路径的微阵列分析,可进行可靠的疾病分类

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摘要

The advent of high-throughput technology has made it possible to measure genome-wide expression profiles, thus providing a new basis for microarray-based diagnosis of disease states. Numerous methods have been proposed to identify biomarkers that can accurately discriminate between case and control classes. Many of the methods used only a subset of ranked genes in the pathway and may not be able to fully represent the classification boundaries for the two disease classes. The use of negatively correlated feature sets (NCFS) to obtain more relevant features in form of phenotype-correlated genes (PCOGs) and inferring pathway activities is proposed in this study. The two pathway activity inference schemes that use NCFS significantly improved the power of pathway markers to discriminate between two phenotypes classes in microarray expression datasets of breast cancer. In particular, the NCFS-i method provided better contrasting features for classification purposes. The improvement is consistent for all cases of pathways used, using both within- and across-dataset validations. The results show that the two proposed methods that use NCFS clearly outperformed other pathway-based classifiers in terms of both ROC area and discriminative score. That is, the identification of PCOGs within each pathway, especially NCFS-i method, helps to reduce noisy or variable measurements, leading to a high performance and more robust classifier. In summary, we have demonstrated that effective incorporation of pathway information into expression-based disease diagnosis and using NCFS can provide better discriminative and more robust models.
机译:高通量技术的出现使得测量全基因组表达谱成为可能,从而为基于微阵列的疾病状态诊断提供了新的基础。已经提出了许多方法来鉴定可以准确地区分病例和对照类别的生物标志物。许多方法仅使用该途径中排名基因的子集,可能无法完全代表两种疾病类别的分类边界。在这项研究中,建议使用负相关特征集(NCFS)以表型相关基因(PCOGs)的形式获得更多相关特征并推断途径活性。使用NCFS的两种途径活性推断方案显着提高了途径标记物在乳腺癌微阵列表达数据集中区分两种表型的能力。特别是,NCFS-i方法为分类目的提供了更好的对比功能。使用数据集内和跨数据集验证,对于所用途径的所有情况,改进都是一致的。结果表明,两种建议的使用NCFS的方法在ROC面积和判别分数方面均明显优于其他基于路径的分类器。也就是说,每个路径内的PCOG的识别,尤其是NCFS-i方法,有助于减少嘈杂或可变的测量结果,从而实现高性能和更强大的分类器。总之,我们已经证明,将路径信息有效地整合到基于表达的疾病诊断中并使用NCFS可以提供​​更好的区分性和更强大的模型。

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