SmartCardio: Smart IoT-Based Heart Disease Diagnosis with Optimal Feature Selection and Dense Non-Local Coordinate-Attention Network

Presently, Heart Disease (HD) is considered as the major reason of death. The prediction of HD is a challenging since that demands both sophisticated knowledge and experience. Recently, healthcare organizations have begun using Internet of Things (IoT) technology for collecting sensor data for the d...

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Vydáno v:2024 International Conference on Advancement in Renewable Energy and Intelligent Systems (AREIS) s. 1 - 6
Hlavní autoři: Venifa Mini, G., Lincy, C T, Pravin Rose, T, Reeba Rex, S, Saji, K S, John, Dayana. V.
Médium: Konferenční příspěvek
Jazyk:angličtina
Vydáno: IEEE 05.12.2024
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Shrnutí:Presently, Heart Disease (HD) is considered as the major reason of death. The prediction of HD is a challenging since that demands both sophisticated knowledge and experience. Recently, healthcare organizations have begun using Internet of Things (IoT) technology for collecting sensor data for the diagnosis and prognosis of HD. The diagnosis of HD is the subject of several studies; yet the accuracy of findings is poor. To solve this problem, asmart IoT-based heart disease diagnosis using Deep Learning (DL) (SmartCardio) is proposed to more precisely detectHD. The patient's data are initially tracked by the smartwatch and heart monitor gadget. The received sensor data is classified as normal or HD. The repetitive data are minimized through the use of Hadoop distributed file system (HDFS) and performed pre-processing. After that, a Black-Winged Kite Algorithm (BWiKA) is employed to choose the important features. Lastly, a Dense Non-Local Team Training Coordinate-Attention (DNL-TTCA) network is used to classify these features as HD or not HD. The Python platform is used to simulate the SmartCardio framework, and the system's performance is evaluated by comparing with existing techniques. The results demonstrate that the SmartCardio framework outperforms other classifiers with 99.51% accuracy, respectively.
DOI:10.1109/AREIS62559.2024.10893662