首页> 外文会议>Information Technology Applications in Biomedicine, 2000. Proceedings. 2000 IEEE EMBS International Conference on >Assessment of bilharziasis history in outcome prediction of bladder cancer using a radial basis function neural network
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Assessment of bilharziasis history in outcome prediction of bladder cancer using a radial basis function neural network

机译:使用径向基函数神经网络评估胆道疾病史在预测膀胱癌预后中的作用

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Investigates the potential value of bilharziasis history in predicting the outcome progress of patients with bladder cancer using a radial basis function (RBF) neural network. The data set is described by eight input features: histology, tumour grade, lymph nodes status, bilharziasis history, stage, DNA ploidy, sex, and age interval. Two outcomes are of interest: recurrence of disease and death within five years of diagnosis. The total number of patients was 321, of whom 83.5% had been confirmed with bilharziasis history. Different feature subsets have been examined to improve the predictive accuracy and to assess the effect of bilharziasis. The highest predictive accuracy is 74.07% from the RBF network. The analysis shows that bilharziasis history is an important prognostic marker in the prediction.
机译:使用径向基函数(RBF)神经网络研究胆道疾病史在预测膀胱癌患者预后方面的潜在价值。该数据集由八个输入特征来描述:组织学,肿瘤等级,淋巴结状态,胆道疾病史,分期,DNA倍性,性别和年龄间隔。有两个结果值得关注:诊断的五年内疾病的复发和死亡。患者总数为321例,其中83.5%的患者已被确诊为胆原虫病。已经研究了不同的特征子集,以提高预测准确性并评估胆道疾病的效果。来自RBF网络的最高预测准确性为74.07%。分析表明,胆道感染史是预测的重要预后标志。

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