PSO-ANN based diagnostic model for the early detection of dengue disease

Shalini Gambhir , Sanjay Kumar Malik , Yugal Kumar
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引用次数: 69

Abstract

Large numbers of machine learning approaches have been developed for analysis of medical data in recent years. These approaches have also proved their significance through accurate and earlier diagnosis of diseases. The objective of this work is to develop a diagnostic model for earlier diagnosis of dengue disease. Dengue fever is spread through the bite of the female mosquito (Aedes aegypti). The symptoms of this fever are similar to other fever such as that of Viral influenza, Chikungunya, Zika fever, and so on. However, in this fever, human life can be at risk due to severe depletion of blood platelets. Therefore, early diagnosis of dengue disease can help in protecting human lives by making a preventive move before it turns into an infectious disease. In this work, an effort is made to develop a PSO-ANN based diagnostic model for earlier diagnosis of dengue fever. In the proposed model, PSO technique is applied to optimize the weight and bias parameters of ANN method. Further, PSO optimized ANN approach is used to detect dengue patients. The effectiveness of the proposed model is evaluated based on accuracy, sensitivity, specificity, error rate and AUC parameters. The results of the proposed model have been compared with other existing approaches like ANN, DT, NB, and PSO. It is observed that the proposed diagnostic model is a proficient and powerful model for more accurate and earlier detection of dengue fever.

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基于粒子群神经网络的登革热早期诊断模型
近年来,大量的机器学习方法被开发出来用于分析医疗数据。这些方法也通过准确和早期诊断疾病证明了它们的重要性。这项工作的目的是开发一个早期诊断登革热疾病的诊断模型。登革热通过雌蚊(埃及伊蚊)的叮咬传播。这种发烧的症状与其他发烧类似,如病毒性流感、基孔肯雅热、寨卡热等。然而,在这种发烧中,由于血小板的严重消耗,人的生命可能处于危险之中。因此,登革热的早期诊断可以通过在其转变为传染病之前采取预防措施来帮助保护人类生命。在这项工作中,努力建立一个基于PSO-ANN的登革热早期诊断模型。在该模型中,采用粒子群算法对神经网络方法的权重和偏置参数进行优化。进一步,采用粒子群优化的神经网络方法对登革热患者进行检测。基于准确率、灵敏度、特异性、错误率和AUC参数对该模型的有效性进行了评价。将该模型的结果与其他现有方法如ANN、DT、NB和PSO进行了比较。观察到,所提出的诊断模型是一个更准确和更早发现登革热的熟练和强大的模型。
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Contents Editorial Board Improving disease diagnosis by a new hybrid model Pros, cons and future of antibiotics Abstracts: 5th Annual Congress of the European Society for Translational Medicine (EUSTM-2017), 20-22 October 2017, Berlin, Germany
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