2024
DOI: 10.52783/jes.3995
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ETL-FEXIC Model For Secured Heart Rate Abnormality Healthcare Framework

Arthi R

Abstract: In traditional methods, it is critical for an effective continuous pulse monitor for humans prone to heart rate abnormalities. This paper proposes a secured heartrate abnormality detector which continuously monitors human pulse rate and SpO2 level. The current studies proposes that machine learning (ML) models performs well in classification; also, TinyML model shows better performance for data from resource constrained IoT devices. Hence, the research first analyses abnormal heart rate detection and spam data… Show more

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