The Healthcare Monitoring System Based on Artificial Intelligence Protocols
Keywords:
Internet of Things (IoT), connected devices, cloud computing, data analysis, artificial intelligence, machine learning, deep learning, algorithms, stroke (AVC), diabetes and healthcare.Abstract
The need for high-quality healthcare is growing as the world's population rises. Modern technological developments enable a machine to check a patient's health from a distance just as well as if the patient were present in the hospital. This article examines a real-time Internet of Things (IoT)-based remote patient monitoring system designed to prevent a variety of health problems, including diabetes, strokes, etc. In order to immediately identify and prevent health issues, our study entails the real-time collecting of many vital metrics from patients utilizing linked devices. The data is then saved in a database and analyzed using artificial intelligence algorithms.
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