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  1. Home
  2. Academic Research Output
  3. Conference Paper
  4. Training Strategies for Covid-19 Severity Classification
 
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Training Strategies for Covid-19 Severity Classification

Date Issued
2023
Author(s)
Pordeus, Daniel
Ribeiro, Pedro
Zacarias, Laila
de Oliveira, Adriel
Lobo Marques, Joao Alexandre 
Faculty of Business and Law 
Rodrigues, Pedro Miguel
Leite, Camila
Neto, Manoel Alves
Peixoto, Arnaldo Aires
do Vale Madeiro, Joao Paulo
DOI
10.1007/978-3-031-34953-9_40
Abstract
The COVID-19 pandemic has posed a significant public health challenge on a global scale. It is imperative that we continue to undertake research in order to identify early markers of disease progression, enhance patient care through prompt diagnosis, identification of high-risk patients, early prevention, and efficient allocation of medical resources. In this particular study, we obtained 100 5-min electrocardiograms (ECGs) from 50 COVID-19 volunteers in two different positions, namely upright and supine, who were categorized as either moderately or critically ill. We used classification algorithms to analyze heart rate variability (HRV) metrics derived from the ECGs of the volunteers with the goal of predicting the severity of illness. Our study choose a configuration pro SVC that achieved 76% of accuracy, and 0.84 on F1 Score in predicting the severity of Covid-19 based on HRV metrics.
Subjects

COVID-19

signal processing

disease severity clas...

Electrocardiogram (EC...

Heart Rate Variabilit...

File(s)
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Waiting for Repository Version.pdf

Size

37.66 KB

Format

Adobe PDF

Checksum

(MD5):70439f9ac5a8bde2f366653765cefe3c


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