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CLASS PREDICTION OF CANCER USING PROBABILISTIC NEURAL NETWORKS AND RELATIVE CORRELATION METRIC

机译:基于概率神经网络和相对相关度量的癌症分类预测

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摘要

Accurate diagnosis and classification is the key issue for the optimal treatment of cancer patients. Several studies demonstrate that cancer classification can be estimated with high accuracy, sensitivity, and specificity from microarray-based gene expression profiling using artificial neural networks. In this paper, a comprehensive study was undertaken to investigate the capability of the probabilistic neural networks along with a feature selection method in the application of cancer classification. The feature selection method is based on the correlation with the class distinction. The experimental results show that the conjugation of the probabilistic neural network and the feature selection method can achieve 100% recognition accuracy in the ALL/AML classification, and also attain satisfactory results in two colon cancer data sets.
机译:准确的诊断和分类是癌症患者最佳治疗的关键问题。数项研究表明,可以使用人工神经网络从基于微阵列的基因表达谱中评估癌症分类的准确性,敏感性和特异性。在本文中,进行了一项全面的研究,以研究概率神经网络的功能以及特征选择方法在癌症分类中的应用。特征选择方法基于具有类别区别的相关性。实验结果表明,概率神经网络和特征选择方法的结合在ALL / AML分类中可以达到100%的识别准确率,并且在两个结肠癌数据集上均取得令人满意的结果。

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