Assessment of the post-acute covid-19 syndrome cardiovascular effect through ECG analysis

Pedro Ribeiro, Clarice Cristina Cunha de Souza, Cristine Mayara Cavalcante Camerino, Daniel Pordeus, Camila Ferreira Leite, João Alexandre Lobo Marques, João Paulo Madeiro, Pedro Miguel Rodrigues

Research output: Contribution to conferenceAbstractpeer-review

Abstract

Introduction: SARS-CoV-2, a virus responsible for the emergence of the life-threatening disease known as COVID-19, exhibits a diverse range of clinical manifestations. The spectrum of symptoms varies widely, encompassing mild to severe presentations, while a considerable portion of the population remains asymptomatic. COVID-19, primarily a respiratory virus, has been linked to cardiovascular complications in some patients. Notably, cardiac issues can also arise after recovery, contributing to post-acute COVID-19 syndrome, a significant concern for patient health. The present study intends to evaluate the post-acute COVID-19 syndrome cardiovascular effect through ECG by comparing patients affected with cardiac diseases without COVID-19 diagnosis report (class 1) and patients with cardiac pathologies who present post-acute COVID-19 syndrome (class 2). Methods: From 2 body positions, a total of 10 non-linear features, extracted every 1 second under a multi-band analysis performed by Discrete Wavelet Transform (DWT), have been compressed by 6 statistical metrics to serve as inputs for an individual feature analysis by the means of Mann-Whitney U-test and XROC classification. Results and Discussion: 480 Mann-Whitney U-test statistical analyses and XROC discrimination approaches have been done. The percentage of statistical analysis with significant differences (p<0.05) was 30.42% (146 out of 480). The best overall results were obtained by approximating the feature Energy, with the data compressor Kurtosis in the body position Down. Those results were 83.33% of Accuracy, 83.33% of Sensitivity, 83.33% of Specificity and 87.50% of AUC. Conclusions: The results show that the applied methodology can be a way to show changes in cardiac behaviour provoked by post-acute COVID-19 syndrome.
Original languageEnglish
Publication statusPublished - 11 Oct 2024
EventThe 1st International Online Conference on Bioengineering -
Duration: 16 Oct 202418 Oct 2024

Conference

ConferenceThe 1st International Online Conference on Bioengineering
Abbreviated titleIOCBE 2024
Period16/10/2418/10/24

Keywords

  • Covid-19
  • ECG
  • Multi-band analysis
  • Classification
  • Statistical analysis

Fingerprint

Dive into the research topics of 'Assessment of the post-acute covid-19 syndrome cardiovascular effect through ECG analysis'. Together they form a unique fingerprint.

Cite this