Which curve provides the best explanation of the growth in confirmed COVID-19 cases in Chile?
Author
dc.contributor.author
Díaz Narvaez, Víctor
Author
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San Martín Roldán, David
Author
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Calzadilla Núñez, Aracelis
Author
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San Martín Roldán, Pablo
Author
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Parody Muñoz, Alexander
Author
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Robledo Veloso, Gonzalo
Admission date
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2020-10-08T20:39:33Z
Available date
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2020-10-08T20:39:33Z
Publication date
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2020
Cita de ítem
dc.identifier.citation
Rev. Latino-Am. Enfermagem 2020;28:e3346
es_ES
Identifier
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10.1590/1518-8345.4493.3346
Identifier
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https://repositorio.uchile.cl/handle/2250/177051
Abstract
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Objective: to explore the best type of curve or trend model that could explain the epidemiological behavior of the infection by COVID-19 and derive the possible causes that contribute to explain the corresponding model and the health implications that can be inferred. Method: data were collected from the COVID-19 reports of the Department of Epidemiology, Ministry of Health, Chile. Curve adjustment studies were developed with the data in four different models: quadratic, exponential, simple exponential smoothing, and double exponential smoothing. The significance level used was a <= 0.05. Results: the curve that best fits the evolution of the accumulated confirmed cases of COVID-19 in Chile is the doubly-smoothed exponential curve. Conclusion: the number of infected patients will continue to increase. Chile needs to remain vigilant and adjust the strategies around the prevention and control measures. The behavior of the population plays a fundamental role. We suggest not relaxing restrictions and further improving epidemiological surveillance. Emergency preparations are needed and more resource elements need to be added to the current health support. This prediction is provisional and depends on keeping all intervening variables constant. Any alteration will modify the prediction.