Using Machine Learning To Create a Decision Tree Model To Predict Outcomes of COVID-19 Cases in the Philippines

Objective: The aim of this study was to create a decision tree model with machine learning to predict the outcomes of COVID-19 cases from data publicly available in the Philippine Department of Health (DOH) COVID Data Drop. Methods: The study design was a cross-sectional records review of the DOH CO...

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Main Authors: Migriño, Julius, Jr, Batangan, Ani Regina U
Format: text
Published: Archīum Ateneo 2021
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Online Access:https://archium.ateneo.edu/asmph-pubs/87
https://ojs.wpro.who.int/ojs/index.php/wpsar/article/view/831
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Institution: Ateneo De Manila University
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spelling ph-ateneo-arc.asmph-pubs-10862022-03-29T05:37:44Z Using Machine Learning To Create a Decision Tree Model To Predict Outcomes of COVID-19 Cases in the Philippines Migriño, Julius, Jr Batangan, Ani Regina U Objective: The aim of this study was to create a decision tree model with machine learning to predict the outcomes of COVID-19 cases from data publicly available in the Philippine Department of Health (DOH) COVID Data Drop. Methods: The study design was a cross-sectional records review of the DOH COVID Data Drop for 25 August 2020. Resolved cases that had either recovered or died were used as the final data set. Machine learning processes were used to generate, train and validate a decision tree model. Results: A list of 132 939 resolved COVID-19 cases was used. The notification rates and case fatality rates were higher among males (145.67 per 100 000 and 2.46%, respectively). Most COVID-19 cases were clustered among people of working age, and older cases had higher case fatality rates. The majority of cases were from the National Capital Region (590.20 per 100 000), and the highest case fatality rate (5.83%) was observed in Region VII. The decision tree model prioritized age and history of hospital admission as predictors of mortality. The model had high accuracy (81.42%), sensitivity (81.65%), specificity (81.41%) and area under the curve (0.876) but a poor F-score (16.74%). Discussion: The model predicted higher case fatality rates among older people. For cases aged >51 years, a history of hospital admission increased the probability of COVID-19-related death. We recommend that more comprehensive primary COVID-19 data sets be used to create more robust prognostic models. 2021-09-14T07:00:00Z text https://archium.ateneo.edu/asmph-pubs/87 https://ojs.wpro.who.int/ojs/index.php/wpsar/article/view/831 Ateneo School of Medicine and Public Health Faculty Publications Archīum Ateneo Epidemiology 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 Epidemiology
Public Health
spellingShingle Epidemiology
Public Health
Migriño, Julius, Jr
Batangan, Ani Regina U
Using Machine Learning To Create a Decision Tree Model To Predict Outcomes of COVID-19 Cases in the Philippines
description Objective: The aim of this study was to create a decision tree model with machine learning to predict the outcomes of COVID-19 cases from data publicly available in the Philippine Department of Health (DOH) COVID Data Drop. Methods: The study design was a cross-sectional records review of the DOH COVID Data Drop for 25 August 2020. Resolved cases that had either recovered or died were used as the final data set. Machine learning processes were used to generate, train and validate a decision tree model. Results: A list of 132 939 resolved COVID-19 cases was used. The notification rates and case fatality rates were higher among males (145.67 per 100 000 and 2.46%, respectively). Most COVID-19 cases were clustered among people of working age, and older cases had higher case fatality rates. The majority of cases were from the National Capital Region (590.20 per 100 000), and the highest case fatality rate (5.83%) was observed in Region VII. The decision tree model prioritized age and history of hospital admission as predictors of mortality. The model had high accuracy (81.42%), sensitivity (81.65%), specificity (81.41%) and area under the curve (0.876) but a poor F-score (16.74%). Discussion: The model predicted higher case fatality rates among older people. For cases aged >51 years, a history of hospital admission increased the probability of COVID-19-related death. We recommend that more comprehensive primary COVID-19 data sets be used to create more robust prognostic models.
format text
author Migriño, Julius, Jr
Batangan, Ani Regina U
author_facet Migriño, Julius, Jr
Batangan, Ani Regina U
author_sort Migriño, Julius, Jr
title Using Machine Learning To Create a Decision Tree Model To Predict Outcomes of COVID-19 Cases in the Philippines
title_short Using Machine Learning To Create a Decision Tree Model To Predict Outcomes of COVID-19 Cases in the Philippines
title_full Using Machine Learning To Create a Decision Tree Model To Predict Outcomes of COVID-19 Cases in the Philippines
title_fullStr Using Machine Learning To Create a Decision Tree Model To Predict Outcomes of COVID-19 Cases in the Philippines
title_full_unstemmed Using Machine Learning To Create a Decision Tree Model To Predict Outcomes of COVID-19 Cases in the Philippines
title_sort using machine learning to create a decision tree model to predict outcomes of covid-19 cases in the philippines
publisher Archīum Ateneo
publishDate 2021
url https://archium.ateneo.edu/asmph-pubs/87
https://ojs.wpro.who.int/ojs/index.php/wpsar/article/view/831
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