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Hybrid system based on bijective soft and neural network for Egyptian neonatal jaundice diagnosis

机译:基于双射软神经网络的混合系统在埃及新生儿黄疸诊断中的应用

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摘要

Neonatal jaundice or hyperbilirubinemia and its evolution to acute bilirubin encephalopathy (ABE) and kernicterus are an important, yet avoidable, origin of newborn deaths, re-hospitalisations and disabilities generally. In this study, a new supervised hybrid bijective soft set neural network-based classification method is introduced for prediction of Egyptian neonatal jaundice dataset. Early prediction and classification of diseases would provide support to doctors for making decision of patient concerning the type of treatment. The hybrid bijective soft set neural network (BISONN) approach integrates both bijective soft set and back propagation neural network for the diagnosis of diseases. The experimental results are acquired by examining the proposed method on neonatal jaundice. The acquired results demonstrate that the hybrid bijective soft set neural network method can deliver expressively more accurate and consistent predictive accuracy than well-known algorithms such as bijective soft set classifier, back propagation network, multi-layered perceptron, decision table and naVve Bayes classification algorithms.
机译:新生儿黄疸或高胆红素血症及其演变为急性胆红素脑病(ABE)和核仁,是重要的但可避免的新生儿死亡,再次住院和残障的起源。在这项研究中,引入了一种新的基于监督混合双射软集神经网络的分类方法,用于预测埃及新生儿黄疸数据集。疾病的早​​期预测和分类将为医生做出有关治疗类型的患者决策提供支持。混合双射软集合神经网络(BISONN)方法将双射软集合和反向传播神经网络相结合,用于疾病诊断。通过检查所提出的新生儿黄疸方法获得了实验结果。获得的结果表明,与双射软集分类器,反向传播网络,多层感知器,决策表和naVve Bayes分类算法等著名算法相比,混合双射软集神经网络方法可以提供表达上更准确和一致的预测精度。 。

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