首页> 外文会议>Electrical and Computer Engineering, 2002. IEEE CCECE 2002. Canadian Conference on >An artificial neural network based feature evaluation index for the assessment of clinical factors in breast cancer survival analysis
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An artificial neural network based feature evaluation index for the assessment of clinical factors in breast cancer survival analysis

机译:基于人工神经网络的特征评估指标评估乳腺癌生存分析中的临床因素

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This study aims to identify the most and least significant prognostic factors for breast cancer survival analysis by means of feature evaluation indices derived from multilayer feedforward backpropagation neural networks (MLFFBPNN), fuzzy k-nearest neighbour classifier (FK-NN) and a logistic regression-based backward stepwise method (ER). The data used for the survival analysis were collected from 100 women who had been clinically diagnosed with breast disease in the form of carcinoma or benign conditions. The data set consists of seven different histological and cytological prognostic factors and two corresponding outputs to be predicted (whether the patient is alive or dead within 5 years of diagnosis). The MLFFBPNN, FK-NN and LR based indices identified different subsets of the factors as the most significant sets. We therefore suggest that it could be dangerous to rely on one method's outcome for assessment of such factors. It should also be noted that "S-phase fraction" (SPF) is the common cytological factor identified by all three methods while none of the three methods identified another cytological factor, namely "minimum (start) nuclear pleomorphism index" (NPI/sub min/). We, therefore, conclude that "S-phase fraction" and "minimum (start) nuclear pleomorphism index" appear to be the most and least important prognostic factors, respectively, for survival analysis in breast cancer patients, and should be investigated thoroughly in future clinical studies in oncology.
机译:这项研究旨在通过多层前馈反向传播神经网络(MLFFBPNN),模糊k近邻分类器(FK-NN)和Logistic回归-基于后向逐步方法(ER)。生存分析所用的数据是从100名经过临床诊断为乳腺癌或良性疾病的乳腺癌患者中收集的。数据集由七个不同的组织学和细胞学预后因素以及两个可预测的相应输出(患者在诊断后5年内是活着还是死了)组成。基于MLFFBPNN,FK-NN和LR的索引将因素的不同子集标识为最高有效集。因此,我们建议依靠一种方法的结果来评估这些因素可能是危险的。还应注意,“ S期分数”(SPF)是通过所有三种方法识别的常见细胞学因素,而这三种方法均未识别出另一种细胞学因素,即“最小(起始)核多态性指数”(NPI / sub分钟/)。因此,我们得出结论,对于乳腺癌患者的生存分析,“ S期分数”和“最低(起始)核多态性指数”分别是最重要和最不重要的预后因素,今后应进行深入研究肿瘤学的临床研究。

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