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USE OF NEURAL NETWORK ANALYSIS TO DIAGNOSE BREAST CANCER PATIENTS

机译:神经网络分析在诊断乳腺癌患者中的应用

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In diagnosis of breast cancer, several different diagnostic tests can be conducted on same patient simultaneously so as to improve the diagnostic results.There are three tumor markers currently available for breast cancer diagnosis, namely CEA, CA15.3, and MCA. The purpose of this study was to investigate the usefulness of neural networks to distinguish breast cancer patients from normal people based on the pattern of the three tumor marker measurements. The neural network was built and trained with the training data set, and then tested with a separate data set.In order to evaluate the performance of the neural network which differentiated breast carcinoma from normal conditions, an advanced statistical method,relative operating characteristic (ROC) analysis, was utilized. In addition, two multivariate analysis studies using discriminant functions and logistic regression were also performed. The results showed that the neural network compared favorably with the two conventional statistical methods.
机译:在乳腺癌的诊断中,可以对同一患者同时进行几种不同的诊断测试,以改善诊断结果。目前可用于乳腺癌诊断的三种肿瘤标志物分别为CEA,CA15.3和MCA。这项研究的目的是研究基于三种肿瘤标记物测量模式的神经网络对区分乳腺癌患者与正常人群的有用性。建立神经网络并使用训练数据集对其进行训练,然后使用单独的数据集进行测试。为了评估将乳腺癌与正常状况区分开的神经网络的性能,采用了一种先进的统计方法,相对操作特征(ROC) )分析。此外,还进行了两项使用判别函数和逻辑回归的多元分析研究。结果表明,神经网络与两种常规统计方法相比具有优势。

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