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Integration of Internet of Things Devices for Personalized Monitoring and Predictive Diagnostics in ML-Driven Smart Healthcare Systems
0
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2
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2025
Jahr
Abstract
Recent advancements in Internet of Things (IoT) and machine learning (ML) have come up with a modern healthcare system, enabling personalized monitoring and predictive diagnostics. The integration of Internet-of-Things (IoT) devices with machine learning (ML) algorithms enables personalized care that can adjust to each patient's distinct needs, resulting in better clinical outcomes and decreased healthcare costs. The integration of IoT devices for a personalized health monitoring, predictive diagnostics, and decisions associated with ML-driven smart healthcare systems through this research. Health-care services supported with IoT functionalities provide real-time data acquisition laid down to constant monitoring of health and necessary for early detection of various health care related problems. A trained machine learning model uses this data to predict health events (for example, disease flare-ups, a critical episode or non-compliance with medication) to enable proactive intervention and a patient-specific treatment strategy. This is where ML techniques like supervised learning, time series forecasting, and deep learning come into play, which can improve diagnostic accuracy, and help provide actionable insights gleaned from the large volumes of data generated by IoT devices. Moreover, with the implementation of IoT and ML, health monitoring can be done remotely, making it more accessible and convenient for patients, especially for those living in rural or remote places. However, the incorporation of these technologies integrates challenges related to data security, privacy, interoperability and system scalability, that need to be overcome for wider adoption. This paper summarizes the current IoT and ML applications in smart healthcare, provides an overview of major technical and ethical challenges, and suggests solutions to enhance the effectiveness and sustainability of IoT-based personalized health systems. The results underscore the transformative potential of IoT-based personalized monitoring and predictive diagnostics in revolutionizing healthcare delivery, improving patient outcomes, and shaping the future of healthcare systems.
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