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  4. Detection Of Covid-19 Patients Using Machine Learning Techniques: A Nationwide Chilean Study
 
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Detection Of Covid-19 Patients Using Machine Learning Techniques: A Nationwide Chilean Study

Journal
International Journal of Environmental Research and Public Health
Date Issued
2022-06-30
Author(s)
Pablo Ormeño
Gastón Márquez
Guerrero, Camilo  
Facultad de Medicina  
Carla Taramasco
DOI
10.3390/ijerph19138058
WoS ID
WOS:000824343300001
Abstract
Epivigila is a Chilean integrated epidemiological surveillance system with more than 17,000,000 Chilean patient records, making it an essential and unique source of information for the quantitative and qualitative analysis of the COVID-19 pandemic in Chile. Nevertheless, given the extensive volume of data controlled by Epivigila, it is difficult for health professionals to classify vast volumes of data to determine which symptoms and comorbidities are related to infected patients. This paper aims to compare machine learning techniques (such as support-vector machine, decision tree and random forest techniques) to determine whether a patient has COVID-19 or not based on the symptoms and comorbidities reported by Epivigila. From the group of patients with COVID-19, we selected a sample of 10% confirmed patients to execute and evaluate the techniques. We used precision, recall, accuracy, F1-score, and AUC to compare the techniques. The results suggest that the support-vector machine performs better than decision tree and random forest regarding the recall, accuracy, F1-score, and AUC. Machine learning techniques help process and classify large volumes of data more efficiently and effectively, speeding up healthcare decision making.
Subjects

Environmental Science...

Health, Toxicology An...

Public, Environmental...

Public Health, Enviro...

OCDE Subjects

Medical And Health Sc...

Quartile (Date Issued)
Q1
License
acceso abierto
Open Science Path
https://creativecommons.org/licenses/by/4.0/

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