Using Machine Learning Algorithms to Determine the Post-COVID State of a Person by Their Rhythmogram

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Abstract

This study introduces a novel method for detecting the post-COVID state using ECG data. By leveraging a convolutional neural network, we identify “cardiospikes” present in the ECG data of individuals who have experienced a COVID-19 infection. With a test sample, we achieve an 87 percent accuracy in detecting these cardiospikes. Importantly, our research demonstrates that these observed cardiospikes are not artifacts of hardware–software signal distortions, but rather possess an inherent nature, indicating their potential as markers for COVID-specific modes of heart rhythm regulation. Additionally, we conduct blood parameter measurements on recovered COVID-19 patients and construct corresponding profiles. These findings contribute to the field of remote screening using mobile devices and heart rate telemetry for diagnosing and monitoring COVID-19.

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Stasenko, S. V., Kovalchuk, A. V., Eremin, E. V., Drugova, O. V., Zarechnova, N. V., Tsirkova, M. M., … Polevaya, S. A. (2023). Using Machine Learning Algorithms to Determine the Post-COVID State of a Person by Their Rhythmogram. Sensors, 23(11). https://doi.org/10.3390/s23115272

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