Title of article :
Comparison of Two Statistical Models for Predicting Mortality in COVID-19 Patients in Iran
Author/Authors :
Nopour ، Raoof Department of Health Information Management - Student Research Committee, School of Health Management and Information - Iran University of Medical SciencesSciences Branch , Erfannia ، Leila Department of Health Information Management - School of Management and Medical Informatics, Health Human Resources Research Center - Shiraz University of Medical Sciences , Mehrabi ، Nahid Department of Health Information Technology - Aja University of Medical Science , Mashoufi ، Mehrnaz Department of Health Information Management - Faculty of Medicine - Ardabil University of Medical Sciences , Mahdavi ، Abdollah Department of Health Information Management - Faculty of Medicine - Ardabil University of Medical Sciences , Shanbehzadeh ، Mostafa Department of Health Information Technology - School of Paramedical - Ilam University of Medical Sciences
From page :
1
To page :
10
Abstract :
Background: Today, the COVID-19 pandemic is ever-increasingly challenging healthcare systems globally with many uncertainties and ambiguities regarding disease behavior and outcome prediction. Thus, machine learning (ML) algorithms could be potentially demanding to tackle these challenges. Objectives: The present study aimed to construct and compare two prediction models based on statistical and computational ML algorithms to predict mortality in COVID-19 hospitalized patients and, finally, adopt the best-performing algorithm, accordingly. Methods: Having considered a single-center registry, we scrutinized 482 records of laboratory-confirmed COVID-19 hospitalized patients admitted from February 9, 2020, to December 20, 2020. The most important clinical parameters for COVID-19 mortality prediction were identified using the Phi coefficient technique. In the next step, two statistical and computational ML models, ie, logistic regression (LR) and artificial neural network (ANN), were evaluated through the metrics derived from the confusion matrix. Results: Predictive models were trained using 16 validated features. The results indicated that the best performance pertained to the ANN classifier with a positive predictive value (PPV) of 0.96, a negative predictive value (NPV) of 0.86, the sensitivity of 0.94, specificity of 0.94, and accuracy of 0.93. Conclusions: According to the results, ANN predicted mortality in hospitalized patients with COVID-19 with an acceptable level of accuracy. Therefore, it would be extremely reasonable to develop intelligent decision support systems to early detect high-risk patients, helping clinicians come up with proper interventions.
Keywords :
COVID , 19 , Coronavirus , Machine Learning , Artificial Intelligence , Neural Network , Hospital Mortality
Journal title :
Shiraz E Medical Journal
Journal title :
Shiraz E Medical Journal
Record number :
2725241
Link To Document :
بازگشت