Using Machine Learning Algorithms to Determine the Post-COVID State of a Person by Their Rhythmogram.
Sergey V StasenkoAndrey V KovalchukEvgeny V EreminOlga V DrugovaNatalya V ZarechnovaMaria M TsirkovaSergey A PermyakovSergey B ParinSofia A PolevayaPublished in: Sensors (Basel, Switzerland) (2023)
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.