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首页> 外文期刊>Journal of medical systems >Kyasanur Forest Disease Classification Framework Using Novel Extremal Optimization Tuned Neural Network in Fog Computing Environment
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Kyasanur Forest Disease Classification Framework Using Novel Extremal Optimization Tuned Neural Network in Fog Computing Environment

机译:京萨伦森林病分类框架采用新型极值优化调谐神经网络在雾计算环境中

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摘要

Kyasanur Forest Disease (KFD) is a life-threatening tick-borne viral infectious disease endemic to South Asia and has been taking so many lives every year in the past decade. But recently, this disease has been witnessed in other regions to a large extent and can become an epidemic very soon. In this paper, a new fog computing based e-Healthcare framework has been proposed to monitor the KFD infected patients in an early phase of infection and control the disease outbreak. For ensuring high prediction rate, a novel Extremal Optimization tuned Neural Network (EO-NN) classification algorithm has been developed using hybridization of the extremal optimization with the feed-forward neural network. Additionally, a location based alert system has also been suggested to provide the global positioning system (GPS)-based location information of each KFD infected user and the risk-prone zones as early as possible to prevent the outbreak. Furthermore, a comparative study of proposed EO-NN with state of art classification algorithms has been carried out and it can be concluded that EO-NN outperforms others with an average accuracy of 91.56%, a sensitivity of 91.53% and a specificity of 97.13% respectively in classification and accurate identification of risk-prone areas.
机译:Kyasanur Forest疾病(KFD)是一种危及危及生命的蜱虫病毒传染病,对南亚有条不紊地,在过去十年中每年都在每年服用这么多生命。但最近,这种疾病在很大程度上在其他地区见证,并且很快就会成为流行病。本文综述了基于新的雾计算的电子医疗保健框架,以监测感染早期阶段的KFD感染患者,并控制疾病爆发。为了确保高预测率,使用与前馈神经网络的极值优化的杂交开发了一种新的极值优化调谐神经网络(EO-NN)分类算法。另外,还提出了一种基于位置的警报系统,以便尽早提供每个KFD受感染用户的全球定位系统(GPS)的位置信息,以防止爆发。此外,已经进行了具有现有化分类算法状态的提出的EO-NN的比较研究,可以得出结论,EO-NN优于平均精度为91.56%,灵敏度为91.53%,特异性为97.13%分别在分类中,准确地识别风险易受的区域。

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