
Research Article
A Smart approach for Monitoring Health and Diseases through AI-Driven Technologies
@INPROCEEDINGS{10.4108/eai.28-4-2025.2357783, author={Sayyad Rasheeduddin and Nakka Venkatesh and Venkateswarlu Golla and Birru Saikumar}, title={A Smart approach for Monitoring Health and Diseases through AI-Driven Technologies}, proceedings={Proceedings of the 4th International Conference on Information Technology, Civil Innovation, Science, and Management, ICITSM 2025, 28-29 April 2025, Tiruchengode, Tamil Nadu, India, Part I}, publisher={EAI}, proceedings_a={ICITSM PART I}, year={2025}, month={10}, keywords={heart disease prediction clinical decision-support systems artificial intelligence (ai) in healthcare machine learning internet of things (iot) in healthcare remote patient monitoring auto-encoder-based neural networks clinical risk factors early detection of cardiovascular disease}, doi={10.4108/eai.28-4-2025.2357783} }
- Sayyad Rasheeduddin
Nakka Venkatesh
Venkateswarlu Golla
Birru Saikumar
Year: 2025
A Smart approach for Monitoring Health and Diseases through AI-Driven Technologies
ICITSM PART I
EAI
DOI: 10.4108/eai.28-4-2025.2357783
Abstract
Worldwide, heart disease is the number one killer. Prediction of heart disease is a very involved process. Early detection of cardiovascular disease signs is one of the most challenging challenges for doctors. Accurate medical choices may be made with the use of heart disease prediction data. Clinical decision-support systems have made extensive use of AI methods for illness prediction and diagnosis. Because of their potential to reveal previously unseen patterns and correlations in medical data given by medical practitioners, these methods are particularly beneficial for creating clinical support systems. A very accurate model is necessary to reduce death rates. Internet of Things (IoT), cloud computing, machine learning, and deep learning methods are employed to construct such precise models. Heart disease symptoms may be reduced and identified with the use of machine learning. The medical decision-making system is meant to aid doctors in their day-to-day work; hence it is an ever-present and regular activity. The accuracy of medical diagnoses is enhanced by the use of web-based healthcare systems. In order to foresee potential issues with clinical risk factors, doctors use a predictive modeling procedure. Early on, a number of different forms of learning technology are used to aid medical professionals in the identification of illness. An accurate, dependable, and continuous monitoring system is also required for prompt intervention and therapy.