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Knowledge extraction about patients surviving breast cancer treatment through an autonomous fuzzy neural network

机译:通过自主模糊神经网络提取乳腺癌患者的知识

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Cancer treatment is extremely aggressive and, in addition to causing considerable discomfort, can lead to death. Therefore, identifying aspects related to treatment assertiveness may be efficient for reducing the mortality rate of cancer patients. This paper seeks to identify the prognosis of cancer treatment survival through hybrid techniques based on the autonomous fuzzification process and artificial neural networks. The public dataset on cancer mortality is the source for conducting treatment assertiveness rating tests. The hybrid model had its results compared to other models present in the pattern classification literature with superior accuracy and identification of people likely to survive treatment (90.46%), and the fuzzy rules obtained with the execution of the model corroborate the high assertiveness of the model, even surpassing state of the art for the theme.
机译:癌症治疗极具侵略性,除引起相当大的不适外,还可能导致死亡。因此,确定与治疗自信有关的方面对于降低癌症患者的死亡率可能是有效的。本文力求通过基于自主模糊化过程和人工神经网络的混合技术来确定癌症治疗生存的预后。有关癌症死亡率的公共数据集是进行治疗自信度测试的来源。混合模型的结果与模式分类文献中存在的其他模型相比,具有较高的准确性,并且可以识别可能幸存的人(90.46%),并且执行该模型时获得的模糊规则证实了该模型的高确定性,甚至超越了该主题的最新水平。

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