Triboostcardio ensemble model for cardiovascular disease detection using advanced blockchain-enabled health monitoring
M. Mayuranathan, V. Anitha, P. Nehru, Bosko Nikolic, Miloš Janjić, Nebojsa Bacanin

TL;DR
This paper introduces a blockchain-enabled system for early detection of cardiovascular diseases using IoT devices and an ensemble machine learning model.
Contribution
A novel TriBoostCardio Ensemble model combined with blockchain for secure and accurate cardiovascular disease detection.
Findings
The TriBoostCardio model improves predictive accuracy and early detection of CVDs.
Blockchain-based access control enhances data privacy and integrity in healthcare systems.
SCSO feature selection strengthens model robustness and classification precision.
Abstract
Heart diseases (CVDs) are a major cause of morbidity and mortality in all global regions and thus there is the pressing need to develop early detection and effective management approaches. Traditional cardiovascular monitoring systems do not necessarily have real-time analyzing solutions and individual understanding, which leads to delayed interventions. Moreover, one of the greatest issues in digital healthcare applications remains to be data privacy and security. The proposed research is to present a developed model of CVD detection that will combine Internet of Things (IoT)-based wearable devices, electronic clinical records, and access control using blockchain. The system starts by registering patients and medical personnel and then proceeds with collecting physiological as well as clinical data. Kalman filtering helps in improving data reliability in the pre-processing stage.…
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Taxonomy
TopicsArtificial Intelligence in Healthcare · ECG Monitoring and Analysis · COVID-19 diagnosis using AI
