Hemogram Data as a Tool for Decision-making in COVID-19 Management: Applications to Resource Scarcity Scenarios
Eduardo Avila, Marcio Dorn, Clarice Sampaio Alho, Alessandro Kahmann

TL;DR
This study develops a Naive-Bayes machine learning model using hemogram data to predict COVID-19 qRT-PCR results, aiding decision-making during resource shortages and testing limitations.
Contribution
It introduces a novel, adaptable model that leverages common blood test data to predict COVID-19 status, optimizing resource allocation in scarcity scenarios.
Findings
High accuracy, sensitivity, and specificity in predictions
Effective management of testing shortages and personnel allocation
Model adaptability to different scarcity contexts
Abstract
COVID-19 pandemics has challenged emergency response systems worldwide, with widespread reports of essential services breakdown and collapse of health care structure. A critical element involves essential workforce management since current protocols recommend release from duty for symptomatic individuals, including essential personnel. Testing capacity is also problematic in several countries, where diagnosis demand outnumbers available local testing capacity. This work describes a machine learning model derived from hemogram exam data performed in symptomatic patients and how they can be used to predict qRT-PCR test results. Methods: A Naive-Bayes model for machine learning is proposed for handling different scarcity scenarios, including managing symptomatic essential workforce and absence of diagnostic tests. Hemogram result data was used to predict qRT-PCR results in situations where…
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Taxonomy
TopicsCOVID-19 diagnosis using AI · Machine Learning in Healthcare · Sepsis Diagnosis and Treatment
