A review of smart sensors coupled with Internet of Things and Artificial Intelligence approach for heart failure monitoring
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Issam Bahadur | Kishor Kumar Sadasivuni | Hassen M. Ouakad | Somaya Al-Máadeed | Muni Raj Maurya | Huseyin Cagatay Yalcin | Najam U. S. Sahar Riyaz | M. Sai Bhargava Reddy | H. Ouakad | H. Yalcin | S. Al-Maadeed | I. Bahadur | N. Riyaz | M. S. B. Reddy | K. K. Sadasivuni
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