基于机器学习的糖尿病无创血糖观察

R. K, T. Thirunavukkarasu, P. S, Puvisha. C, R. S
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引用次数: 0

摘要

在本文中,我们讨论了克服传统的侵入性技术来捕获血糖水平,并通过使用非侵入性方法来监测血糖水平和其他相关参数来克服这一问题,从而使医生能够清楚地了解糖尿病。我们提到的更清晰的图景包括实现用于糖尿病早期预测和诊断的机器学习算法。这些参数包括血糖水平、体温和心率,揭示各种临床参数可能是非常必要的。在现代医疗保健系统中,物联网的使用在访问和监测各种患者数据方面起着至关重要的作用。物联网是医疗保健的催化剂,在各种医疗保健应用中占有突出地位。在这个项目中,微控制器被用作与各种传感器对话的网关,包括温度传感器、心跳传感器、葡萄糖传感器。微控制器处理传感器记录并将其发送到云端,随后为医生提供心率、体温和血糖水平等参数的实时数据跟踪。每次都可以借助辅助工具访问记录。存储在云中的记录随后用于机器学习算法来监测血糖水平,并从中获得有价值的预测,以供进一步监测。
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Machine Learning Based Non-Invasive Glucose Observation for Diabetes
In this paper, we discuss overcoming the traditional invasive technique to capture glucose levels and overcome this by using a non-invasive method to monitor glucose levels and other related parameters to give doctors a clear insight on diabetes. The clearer picture which we mention includes the implementation of Machine Learning algorithms for the early prediction and diagnosis of diabetes. The parameters include glucose levels, temperature, and heart rate and it may be very essential to reveal diverse clinical parameters. In modern healthcare systems, the use of IoT plays a vital role in the accessibility and monitoring of diverse patient data. The Internet of things serves as a catalyst for healthcare and performs an outstanding position in a huge variety of healthcare applications. In this venture, the microcontroller is used as a gateway to speak to the diverse sensors which include a temperature sensor and heartbeat sensor, glucose sensor. The microcontroller processes the sensor records and sends them to the cloud and subsequently presents the real-time data tracking of the parameters such as heart rate, temperature, and glucose levels for doctors. The records may be accessed each time with the aid. The records which are stored in the cloud are later used in Machine Learning algorithms to monitor the glucose levels and get a valuable prediction out of it for further monitoring purposes.
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