COVID-19 Infection Wave Mortality from Surveillance Data in the Philippines Using Machine Learning

The Philippines had several COVID-19 infection waves brought about by different strains and variants of SARS-CoV-2. This study aimed to describe COVID-19 outcomes by infection waves using machine learning. A cross-sectional surveillance data review design was employed using the DOH COVID Data Drop d...

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Main Authors: Migriño, Julius, Jr, Batangan, Ani Regina U., Abello, Rizal Michael R.
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Published: Archīum Ateneo 2024
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Online Access:https://archium.ateneo.edu/asmph-pubs/292
https://archium.ateneo.edu/context/asmph-pubs/article/1296/viewcontent/2023.11.28.23299037v1.full.pdf
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Institution: Ateneo De Manila University
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spelling ph-ateneo-arc.asmph-pubs-12962025-03-20T02:59:51Z COVID-19 Infection Wave Mortality from Surveillance Data in the Philippines Using Machine Learning Migriño, Julius, Jr Batangan, Ani Regina U. Abello, Rizal Michael R. The Philippines had several COVID-19 infection waves brought about by different strains and variants of SARS-CoV-2. This study aimed to describe COVID-19 outcomes by infection waves using machine learning. A cross-sectional surveillance data review design was employed using the DOH COVID Data Drop dataset as of September 24, 2022. The predominant variant(s) of concern divided the dataset into time intervals representing the infection waves: ancestral (A0), Alpha/Beta (AB), Delta (D), and Omicron (O). Descriptive statistics and machine learning models were generated from each infection. The final data set consisted of 3,896,206 cases wherein 98.39% of cases recovered while 1.61% died. The highest and lowest CFR was observed during the ancestral wave (2.49) and the Omicron wave (0.61%), respectively. In all four data sets, higher age groups had higher CFRs, and F-score and specificity were highest using naïve Bayes. Area under the curve (AUC) was highest in the naïve Bayes models for the A0, AB and D models, while sensitivity was highest in the decision tree models for the A0, AB and O models. The ancestral, Alpha/Beta and Delta variants seem to have similar transmission and mortality profiles, while the Omicron variant caused lesser deaths despite increased transmissibility. 2024-08-30T07:00:00Z text application/pdf https://archium.ateneo.edu/asmph-pubs/292 https://archium.ateneo.edu/context/asmph-pubs/article/1296/viewcontent/2023.11.28.23299037v1.full.pdf Ateneo School of Medicine and Public Health Publications Archīum Ateneo COVID-19 mortality variant machine learning surveillance COVID-19 Medicine and Health Sciences Public Health
institution Ateneo De Manila University
building Ateneo De Manila University Library
continent Asia
country Philippines
Philippines
content_provider Ateneo De Manila University Library
collection archium.Ateneo Institutional Repository
topic COVID-19
mortality
variant
machine learning
surveillance
COVID-19
Medicine and Health Sciences
Public Health
spellingShingle COVID-19
mortality
variant
machine learning
surveillance
COVID-19
Medicine and Health Sciences
Public Health
Migriño, Julius, Jr
Batangan, Ani Regina U.
Abello, Rizal Michael R.
COVID-19 Infection Wave Mortality from Surveillance Data in the Philippines Using Machine Learning
description The Philippines had several COVID-19 infection waves brought about by different strains and variants of SARS-CoV-2. This study aimed to describe COVID-19 outcomes by infection waves using machine learning. A cross-sectional surveillance data review design was employed using the DOH COVID Data Drop dataset as of September 24, 2022. The predominant variant(s) of concern divided the dataset into time intervals representing the infection waves: ancestral (A0), Alpha/Beta (AB), Delta (D), and Omicron (O). Descriptive statistics and machine learning models were generated from each infection. The final data set consisted of 3,896,206 cases wherein 98.39% of cases recovered while 1.61% died. The highest and lowest CFR was observed during the ancestral wave (2.49) and the Omicron wave (0.61%), respectively. In all four data sets, higher age groups had higher CFRs, and F-score and specificity were highest using naïve Bayes. Area under the curve (AUC) was highest in the naïve Bayes models for the A0, AB and D models, while sensitivity was highest in the decision tree models for the A0, AB and O models. The ancestral, Alpha/Beta and Delta variants seem to have similar transmission and mortality profiles, while the Omicron variant caused lesser deaths despite increased transmissibility.
format text
author Migriño, Julius, Jr
Batangan, Ani Regina U.
Abello, Rizal Michael R.
author_facet Migriño, Julius, Jr
Batangan, Ani Regina U.
Abello, Rizal Michael R.
author_sort Migriño, Julius, Jr
title COVID-19 Infection Wave Mortality from Surveillance Data in the Philippines Using Machine Learning
title_short COVID-19 Infection Wave Mortality from Surveillance Data in the Philippines Using Machine Learning
title_full COVID-19 Infection Wave Mortality from Surveillance Data in the Philippines Using Machine Learning
title_fullStr COVID-19 Infection Wave Mortality from Surveillance Data in the Philippines Using Machine Learning
title_full_unstemmed COVID-19 Infection Wave Mortality from Surveillance Data in the Philippines Using Machine Learning
title_sort covid-19 infection wave mortality from surveillance data in the philippines using machine learning
publisher Archīum Ateneo
publishDate 2024
url https://archium.ateneo.edu/asmph-pubs/292
https://archium.ateneo.edu/context/asmph-pubs/article/1296/viewcontent/2023.11.28.23299037v1.full.pdf
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