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HIPAA compliant wireless sensing smartwatch application for the self-management of pediatric asthma

机译:HIPAA兼容无线传感SmartWatch应用,用于自我管理儿科哮喘

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Asthma is the most prevalent chronic disease among pediatrics, as it is the leading cause of student absenteeism and hospitalization for those under the age of 15. To address the significant need to manage this disease in children, the authors present a mobile health (mHealth) system that determines the risk of an asthma attack through physiological and environmental wireless sensors and representational state transfer application program interfaces (RESTful APIs). The data is sent from wireless sensors to a smartwatch application (app) via a Health Insurance Portability and Accountability Act (HIPAA) compliant cryptography framework, which then sends data to a cloud for real-time analytics. The asthma risk is then sent to the smartwatch and provided to the user via simple graphics for easy interpretation by children. After testing the safety and feasibility of the system in an adult with moderate asthma prior to testing in children, it was found that the analytics model is able to determine the overall asthma risk (high, medium, or low risk) with an accuracy of 80.10±14.13%. Furthermore, the features most important for assessing the risk of an asthma attack were multifaceted, highlighting the importance of continuously monitoring different wireless sensors and RESTful APIs. Future testing this asthma attack risk prediction system in pediatric asthma individuals may lead to an effective self-management asthma program.
机译:哮喘是儿科中最普遍的慢性疾病,因为它是学生缺勤和住院的主要原因,为15岁以下的人来说,提交人提供了一个移动健康(MHealth)的重要性。通过生理和环境无线传感器和代表性状态转移应用程序接口确定哮喘攻击的风险(RESTful API)。数据通过健康保险便携性和问责法(HIPAA)符合Cryptography框架从无线传感器发送到SmartWatch应用程序(APP),然后将数据发送到云以进行实时分析。然后将哮喘风险发送到SmartWatch,并通过简单的图形向用户提供,以便于儿童轻松解释。在在儿童进行测试之前测试了在成人中系统中系统的安全性和可行性后,发现分析模型能够以80.10的准确度确定整体哮喘风险(高,中等或低风险) ±14.13%。此外,对于评估哮喘发作风险的特征是多方面的,突出了连续监测不同无线传感器和RESTful API的重要性。未来测试这种哮喘攻击风险预测系统在儿科哮喘患者中可能导致有效的自我管理哮喘计划。

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