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E-health monitoring system enhancement with Gaussian mixture model

机译:利用高斯混合模型增强电子健康监测系统

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In order to enhance the healthcare system, we have designed and developed a system prototype which remotely monitors patient's vital parameters by using mobile based android application. Proposed E-health care system collects patient's biological and personal information with the corresponding vital parameters and stores this Meta data information into the health care database servers. The distributed servers are connected with GSP system. So the extracted information from the server is directly feed to the doctor's mobile device as well as to the patient's mobile devices in a presentable format. This system also uses Frontline SMS as an SMS service which is used to send SMS to the doctor's mobile device automatically, when any one of the patient's vital parameter goes out of normal range. In this paper, we present the GMM (Gaussian mixture model) based on extracted features of the patient information and assign it to the specialized doctor. In this work, we have shown that by GMM based algorithm efficiently balances the patient load to the doctor. This novel approach enhances the E-health monitoring system for normal situations as well as in the case of Natural disaster. The proposed load balancing approach gives relief to the patient for unnecessary long delay to receive medical advice. The presented result in this work shown that, the doctors from all category and specialization are loaded rationally and uniformly. According to our knowledge GMM based approach is the new additional component to enhance the E-health care system.
机译:为了增强医疗保健系统,我们设计并开发了系统原型,该原型通过使用基于移动的android应用程序远程监视患者的重要参数。拟议的电子医疗保健系统将收集患者的生物学和个人信息以及相应的重要参数,并将此元数据信息存储到医疗保健数据库服务器中。分布式服务器与GSP系统连接。因此,从服务器提取的信息将以可显示的格式直接馈送到医生的移动设备以及患者的移动设备。该系统还使用Frontline SMS作为SMS服务,当任何患者的重要参数超出正常范围时,该服务将自动将SMS发送到医生的移动设备。在本文中,我们基于提取的患者信息特征提出了GMM(高斯混合模型)并将其分配给专业医生。在这项工作中,我们证明了基于GMM的算法可以有效地平衡患者对医生的负担。这种新颖的方法增强了正常情况以及自然灾害情况下的电子医疗监控系统。所提出的负载平衡方法可减轻患者不必要的长时间延迟,以使他们接受医疗建议。这项工作的结果表明,合理,统一地分配了所有类别和专业的医生。根据我们的知识,基于GMM的方法是增强电子医疗系统的新的附加组件。

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