Severity Classification for COVID-19 Infections based on Lasso-Logistic Regression Model

Authors

  • Zainab Hussein Arif Computer Technologies Engineering Department, Information Technology Collage, Imam Ja’afar Al-Sadiq University, Baghdad, Iraq
  • Korhan Cengiz Department of Computer Engineering, Istinye University, 34010, Istanbul, Turkey

DOI:

https://doi.org/10.59543/ijmscs.v1i.7715

Keywords:

Severity classification, COVID-19, Multiclass, Logistic regression

Abstract

The tremendous growth of the Covid19 epidemic in recent months is devastatingly affecting human civilization. Many different biomarkers are being studied to monitor the patient's health. This might mask the symptoms of various diseases, making it more challenging for a doctor to make a correct diagnosis or prognosis. Therefore, this study aimed to create several classes of prediction methods that can handle situations of varying severity (severe, moderate, and mild). Using machine learning, a Lasso-logistic regression model is developed. To create the Covid-19 clinical dataset, researchers enlisted the help of 78 patients from the Azizia main hospital sector, the Wasit Health Directorate, and the Ministry of Health. The results show that the proposed method is generally accurate to 85.9%. Deaths have been reduced thanks to the established prediction method that enables early detection of patients across three severity levels.

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Published

2023-04-20

How to Cite

Arif, Z. H., & Cengiz, K. (2023). Severity Classification for COVID-19 Infections based on Lasso-Logistic Regression Model. International Journal of Mathematics, Statistics, and Computer Science, 1, 25–32. https://doi.org/10.59543/ijmscs.v1i.7715

Issue

Section

Original Research Articles