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Paired neural network with negatively correlated features for cancer classification in DNA gene expression profiles

机译:具有负相关特征的配对神经网络用于DNA基因表达谱中的癌症分类

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While several conventional techniques for diagnosis of cancer in clinical practice can be often incomplete or misleading, molecular level diagnostics with gene expression profiles can offer the methodology of precise, objective, and systematic cancer classification. Moreover, since accurate classification of cancer is very important issue for treatment of cancer, it is desirable to make a decision by combining the results of various basis classifiers rather than by deciding the result with only one classifier. Generally combining classifiers gives high performance and high confidence. In spite of many advantages of ensemble classifiers, ensemble with mutually error-correlated classifiers has a limit in the performance. In this paper, we propose the ensemble of neural network classifiers learned from negatively correlated features to precisely classify cancer, and systematically evaluate the performances of the proposed method using three benchmark datasets. Experimental results show that the ensemble classifier with negatively correlated features produces the best recognition rate on the three benchmark datasets.
机译:尽管临床实践中用于诊断癌症的几种常规技术通常可能不完整或具有误导性,但具有基因表达谱的分子水平诊断可以提供精确,客观和系统的癌症分类方法。此外,由于癌症的准确分类对于治疗癌症是非常重要的问题,因此期望通过组合各种基础分类器的结果而不是仅通过一个分类器来确定结果来做出决定。通常,组合分类器可提供高性能和高置信度。尽管集成分类器有许多优点,但具有相互错误相关的分类器的集成在性能上有局限性。在本文中,我们提出了从负相关特征中学习的神经网络分类器集合,以对癌症进行精确分类,并使用三个基准数据集系统地评估了该方法的性能。实验结果表明,具有负相关特征的集成分类器在三个基准数据集上产生了最佳识别率。

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