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Saturday April 11, 2026 9:30am - 11:30am GMT+07

Authors - Etambuyu Akufuna, Mayumbo Nyirenda, Ruth Wahila, Marjorie kabinga Makukula
Abstract - As the primary cause of death worldwide, cardiovascular disease (CVD) necessitates accurate early detection methods. We provide a machine learning approach for predicting heart illness using clinical health data that is enabled by the Internet of Things. An SVM classifier that was trained using 14 Cleveland Heart The disease dataset separates patients at high risk from those in good health. Preprocessing, feature standardisation, and GridSearch Cross-Validation hyperparameter optimisation are all included in the workflow. The model outperforms a number of benchmark techniques in the literature with an accuracy of 93.33% and an AUC of 0.97. A scalable and comprehensible basis for IoT-based clinical decision assistance is confirmed by comparative outcomes.
Paper Presenter
Saturday April 11, 2026 9:30am - 11:30am GMT+07
Virtual Room G Bangkok, Thailand

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