Abstract

Background: The current pandemic caused by SARS-CoV-2 is an acute illness of global concern. SARS-CoV-2 is an infectious disease caused by a recently discovered coronavirus. Most people who get sick from COVID-19 experience either mild, moderate, or severe symptoms. In order to help make quick decisions regarding treatment and isolation needs, it is useful to determine which significant variables indicate infection cases in the population served by the Tijuana General Hospital (Hospital General de Tijuana). An Artificial Intelligence (Machine Learning) mathematical model was developed in order to identify early-stage significant variables in COVID-19 patients. Methods: The individual characteristics of the study subjects included age, gender, age group, symptoms, comorbidities, diagnosis, and outcomes. A mathematical model that uses supervised learning algorithms, allowing the identification of the significant variables that predict the diagnosis of COVID-19 with high precision, was developed. Results: Automatic algorithms were used to analyze the data: for Systolic Arterial Hypertension (SAH), the Logistic Regression algorithm showed results of 91.0% in area under ROC (AUC), 80% accuracy (CA), 80% F1 and 80% Recall, and 80.1% precision for the selected variables, while for Diabetes Mellitus (DM) with the Logistic Regression algorithm it obtained 91.2% AUC, 89.2% accuracy, 88.8% F1, 89.7% precision, and 89.2% recall for the selected variables. The neural network algorithm showed better results for patients with Obesity, obtaining 83.4% AUC, 91.4% accuracy, 89.9% F1, 90.6% precision, and 91.4% recall. Conclusions: Statistical analyses revealed that the significant predictive symptoms in patients with SAH, DM, and Obesity were more substantial in fatigue and myalgias/arthralgias. In contrast, the third dominant symptom in people with SAH and DM was odynophagia.

Highlights

  • IntroductionThe period from the onset of COVID-19 symptoms to death ranges from 6 to 41 days with a median of 14 days [4]

  • The need of AI during this pandemic: AI can assist to increase the speed and accuracy of identification of cases and through data mining to deal with the health crisis efficiently, (b) Utility of AI in COVID-19 screening, contact tracing, and diagnosis: Efficacy for virus detection can a be increased by deploying the smart city data network using terminal tracking system along-with prediction of future outbreaks, (c) Use of AI in COVID-19 patient monitoring and drug development: Prediction and diagnosis

  • Dataset 1 in each table was determined by using all of the existing variables in the database; for dataset 2, the selection of features was determined by choosing the ones closer to the root within the first ten levels; to assess dataset 3, ranking results were considered, regardless of the variables “Tos”, “Fiebre”, “Disnea”, and “Dolor de cabeza/Cefalea” as these were established by the World Health Organization as official COVID-19 symptoms, and by using them for analysis they performed better obtaining an increase in the dataset scores, by dismissing them the research found other significant variables

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Summary

Introduction

The period from the onset of COVID-19 symptoms to death ranges from 6 to 41 days with a median of 14 days [4]. This period depends largely on the age and the state of the patient’s immune system [4]. Machine Learning and Deep Learning methods show successful results in the COVID-19 cases tested, there are accounting challenges that can be considered to improve the quality of the research in that direction [13].

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