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Automatic COVID-19 Prediction with Optimized Machine Learning Classifiers Using Clinical Inpatient Data

  • Abbas Jafar (Dept. of Computer Engineering, Myongji University) ;
  • Myungho Lee (Dept. of Computer Engineering, Myongji University)
  • Published : 2023.05.18

Abstract

COVID-19 is a viral pandemic disease that spreads widely all around the world. The only way to identify COVID-19 patients at an early stage is to stop the spread of the virus. Different approaches are used to diagnose, such as RT-PCR, Chest X-rays, and CT images. However, these are time-consuming and require a specialized lab. Therefore, there is a need to develop a time-efficient diagnosis method to detect COVID-19 patients. The proposed machine learning (ML) approach predicts the presence of coronavirus based on clinical symptoms. The clinical dataset is collected from the Israeli Ministry of Health. We used different ML classifiers (i.e., XGB, DT, RF, and NB) to diagnose COVID-19. Later, classifiers are optimized with the Bayesian hyperparameter optimization approach to improve the performance. The optimized RF outperformed the others and achieved an accuracy of 97.62% on the testing data that help the early diagnosis of COVID-19 patients.

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Acknowledgement

This work was supported by the Supercomputer Development Leading Program of the National Research Foundation of Korea (NRF) funded by the Korean government (MSIT) (No. 2020M3H6A1084984).