An IoT-Enabled Smart Healthcare Monitoring System Using Machine Learning for Early Health Risk Prediction

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Ghousia Sanober Sabreen

Thanks to fast-moving tech trends around IoT, people now track their health using online sensors. Lots of body-related information flows through these linked gadgets every day. Turning that flood of details into useful warnings about wellness risks is not as straightforward as it sounds. A fresh approach here involves blending AI methods into such digital health setups. These setups aim to catch potential medical issues sooner rather than later. From live body signals, the system gathers information via connected devices spread across a shared computing hub. Instead of relying on single methods, several learning techniques work together to sort patterns in the data, spotting possible health issues ahead of time. Because it examines trends as they unfold, predictions become more precise and happen faster when needed most. This way of processing inputs fits well for tasks that require constant oversight in medical settings. This setup works to boost early help in health care, cut down on late reactions, while offering a flexible answer for smart, connected medical spaces.


Health risk prediction ties into machine learning under smart healthcare systems powered by internet of things devices. Remote patient monitoring connects closely with these themes where machine learning shapes decision support tools.

An IoT-Enabled Smart Healthcare Monitoring System Using Machine Learning for Early Health Risk Prediction. (2026). International Journal of Latest Technology in Engineering Management & Applied Science, 15(2), 10-17. https://doi.org/10.51583/IJLTEMAS.2026.1502000002

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An IoT-Enabled Smart Healthcare Monitoring System Using Machine Learning for Early Health Risk Prediction. (2026). International Journal of Latest Technology in Engineering Management & Applied Science, 15(2), 10-17. https://doi.org/10.51583/IJLTEMAS.2026.1502000002