Data Mining a Prostate Cancer Dataset Using Neural Networks

K. Revett
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引用次数: 3

Abstract

Prostate cancer remains one of the leading causes of cancer death worldwide, with a reported incidence rate of 650,000 cases per annum worldwide. The causal factors of prostate cancer still remain to be determined. In this paper, we investigate a medical dataset containing clinical information on 502 prostate cancer patients using the machine learning technique of rough sets and radial basis function neural network. Our preliminary results yield a classification accuracy of 90%, with high sensitivity and specificity (both at approximately 91%). Our results yield a predictive positive value (PPN) of 81% and a predictive negative value (PNV) of 95%
基于神经网络的前列腺癌数据挖掘
前列腺癌仍然是全世界癌症死亡的主要原因之一,据报道,全世界每年的发病率为65万例。前列腺癌的致病因素仍有待确定。本文利用粗糙集和径向基函数神经网络的机器学习技术,研究了包含502例前列腺癌患者临床信息的医学数据集。我们的初步结果产生的分类准确率为90%,具有高灵敏度和特异性(均约为91%)。我们的结果得出预测阳性值(PPN)为81%,预测阴性值(PNV)为95%
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