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Consensus analysis of multiple classifiers using non-repetitive variables: Diagnostic application to microarray gene expression data

机译:使用非重复变量对多个分类器进行共识分析:对微阵列基因表达数据的诊断应用

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摘要

Class prediction based on DNA microarray data has been emerged as one of the most important application of bioinformatics for diagnostics/prognostics. Robust classifiers are needed that use most biologically relevant genes embedded in the data. A consensus approach that combines multiple classifiers has attributes that mitigate this difficulty compared to a single classifier. A new classification method named as consensus analysis of multiple classifiers using non-repetitive variables (CAMCUN) was proposed for the analysis of hyper-dimensional gene expression data. The CAMCUN method combined multiple classifiers, each of which was built from distinct, non-repeated genes that were selected for effectiveness in class differentiation. Thus, the CAMCUN utilized most biologically relevant genes in the final classifier. The CAMCUN algorithm was demonstrated to give consistently more accurate predictions for two well-known datasets for prostate cancer and leukemia. Importantly, the CAMCUN algorithm employed an integrated 10-fold cross-validation and randomization test to assess the degree of confidence of the predictions for unknown samples.
机译:基于DNA微阵列数据的类别预测已经成为生物信息学用于诊断/预后的最重要应用之一。需要使用数据中嵌入的大多数生物学相关基因的稳健分类器。与单个分类器相比,组合多个分类器的共识方法具有可减轻此困难的属性。提出了一种新的分类方法,即使用非重复变量(CAMCUN)的多个分类器的共识分析方法,用于分析超维基因表达数据。 CAMCUN方法结合了多个分类器,每个分类器均由不同的,非重复的基因构建而成,这些基因经选择可有效实现分类差异。因此,CAMCUN在最终分类器中利用了生物学上最相关的基因。事实证明,CAMCUN算法可为前列腺癌和白血病的两个著名数据集提供始终如一的准确预测。重要的是,CAMCUN算法采用了集成的10倍交叉验证和随机化测试来评估未知样本预测的置信度。

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