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A Healthcare System for Internet of Things (IoT) Application: Machine Learning Based Approach

机译:用于物联网的医疗保健系统(物联网)应用:基于机器的方法

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Internet of things (IoT) has become an interesting topic in the field of technological research. It is basically interconnecting of devices with each other over the internet. Beside its general use in terms of autonomous cars and smart homes, but some of the best applications of IoT technology in fields of health care monitoring is worth mentioning. The main purpose of this research work is to provide comport services for patients. It can be used to promote basic nursing care by improving the quality of care and patient safety from patient home environment. Rural area of a country lacks behind the proper patient monitoring system. So, remote monitoring and prescribing by sharing medical information in an authenticated manner is very effective for betterment of medical facilities in rural area. We have proposed a healthcare system which can analyze ECG report using supervise machine learning techniques. Analyzing report can be stored in cloud platform which can be further used to prescribe by the experienced medical practitioner. For performance evaluation, ECG data is analyzed using six supervised machine learning algorithms. Data sets are divided into two groups: 75 percent data for training the model and rest 25 percent data for testing. To avoid any kind of anomalies or repetitions, cross validation and random train-test split was used to obtain the result as accurate as possible.
机译:事情互联网(物联网)已成为技术研究领域的一个有趣的话题。它基本上通过互联网互相互连设备。除了在自动驾驶和智能家庭方面的一般用途旁,但物联网技术在医疗保健监测领域的一些最佳应用值得一提。本研究工作的主要目的是为患者提供Comport服务。它可以通过改善患者家庭环境的护理质量和患者安全性来促进基本护理。一个国家的农村地区缺乏适当的患者监测系统。因此,通过以经过身份验证的方式分享医疗信息,远程监控和规定对于改善农村地区的医疗设施非常有效。我们提出了一个医疗保健系统,可以使用监督机学习技术分析ECG报告。分析报告可以存储在云平台中,该平台可以进一步用于由经验丰富的医生开门。对于性能评估,使用六种监督机器学习算法进行分析ECG数据。数据集分为两组:75%的数据,用于培训模型,并休息25%的测试数据进行测试。为了避免任何类型的异常或重复,跨验证和随机列车测试分裂用于尽可能准确地获得结果。

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