Abstract

Many efforts were made by the scientific community during the Covid-19 pandemic to understand the disease and better manage health systems' resources. Believing that city and population characteristics influence how the disease spreads and develops, we used Machine Learning techniques to provide insights to support decision-making in the city of São José dos Campos (SP), Brazil. Using a database with information from people who undergo the Covid-19 test in this city, we generate and evaluate predictive models related to severity, need for hospitalization and period of hospitalization. Additionally, we used the SHAP value for models' interpretation of the most decisive attributes influencing the predictions. We can conclude that patient age linked to symptoms such as saturation and respiratory distress and comorbidities such as cardiovascular disease and diabetes are the most important factors to consider when one wants to predict severity and need for hospitalization in this city. We also stress the need of a greater attention to the proper collection of this information from citizens who undergo the Covid-19 diagnosis test.

Highlights

  • The COVID-19 pandemic has led scientists from different areas to use their knowledge to answer a wide range of questions

  • Whenever a citizen takes a COVID-19 test in Brazil, a set of information about the symptoms developed and comorbidities he/she has is registered into governmental systems

  • During the COVID-19 pandemic, which is still of world concern, many efforts have been made by the scientific community to better understand the situation and provide insights for a better decision-making

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Summary

Introduction

The COVID-19 pandemic has led scientists from different areas to use their knowledge to answer a wide range of questions. More than a year after the start of the pandemic, a certain volume of data has been accumulated which can be useful in different studies to support the decision process of managers and public policies makers. This data can be used to answer questions related to medical care planning for the population and for the direction of resources to fight the disease more effectively. The objective here is to predict whether a citizen with a positive diagnosis for COVID-19 will develop a serious condition, requiring greater medical attention and the reserve of hospital resources. The predictive model has two possible outcomes for a given case: serious or non-serious

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