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Prognostic prediction of bilharziasis-related bladder cancer by neuro-fuzzy classifier

机译:神经模糊分类器预测胆汁淤积相关性膀胱癌的预后

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Cancer prognostic prediction requires a classification system that is robust to the interaction and uncertainty of input factors, as well as being interpretable on the decision made. In this paper, a hybrid neuro-fuzzy classifier is applied to determine the long-term outcome of patients with bilharziasis-related bladder cancer. The same data set is also analysed by a multi-layer perception neural network (MLPNN) and logistic regression, which are both widely used in the area of medical decision-making. In order to better assess the value of this neuro-fuzzy classifier, a benchmark data set used in this area of oncology, the Wisconsin breast cancer data (WBCD), is examined by the above three methods. The study demonstrates that the hybrid neuro-fuzzy classifier is efficient in cancer data analysis and it yields a high classification rate of 97.1% for WBCD, and 84.9% for the bladder cancer data, respectively.
机译:癌症预测预测需要一种对输入因素的相互作用和不确定性的繁重的分类系统,以及对所做的决定来说是可解释的。本文应用了杂交神经模糊分类器,以确定Bilharziasis相关膀胱癌患者的长期结果。通过多层感知神经网络(MLPNN)和逻辑回归也分析了相同的数据集,这些数据集和逻辑回归都广泛用于医学决策区域。为了更好地评估该神经模糊分类器的值,通过上述三种方法检查脑神经乳腺癌数据(WBCD)的该肿瘤学领域的基准数据集。该研究表明,杂交神经模糊分类器在癌症数据分析中有效,其对膀胱癌数据的WBCD具有高97.1%的高分类速率,以及膀胱癌数据的84.9%。

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