Research Article

Estimation of infection risk using symptoms of COVID-19: an approach based on fuzzy expert system

Volume: 2 Number: 3 December 30, 2021
EN

Estimation of infection risk using symptoms of COVID-19: an approach based on fuzzy expert system

Abstract

According to the published reports and studies, the symptoms of the disease caused by the COVID-19 virus have not yet been fully determined. It is a major stress on clinicians to make a correct and consistent decision about whether to apply the test or not, as many factors with extreme uncertainty need to be evaluated at once. In this study, it is aimed to provide assistance to the clinicians by processing the data using fuzzy logic based decision support system at the time of the decision-making process. In the designed fuzzy logic based decision support system, a fuzzy rule-base was created with linguistic information by interpreting the symptoms that are naturally uncertain by experts. With the help of the obtained fuzzy rule base, the input data of symptoms will be processed and the risk of a person being infected will be obtained as an output. As the results of the estimation module constructed with the existing parameters are examined, it is observed to be compatible with the data published before. In this context, a data set with 50 different patients were designed randomly to evaluate the system. For the analysis of the nonlinear mapping obtained with the Mamdani type fuzzy inference system, random test data is used and infection risk at rates varying between 12.5-83% was determined. The fuzzy logic based decision support system for COVID-19 can be accepted as applicable, flexible, and trustworthy for clinicians. It can be said that this system is not only suitable for COVID-19 but also applicable for future epidemics.

Keywords

References

  1. Akcam, M. O., & Takada, K. (2002). Fuzzy modelling for selecting headgear types. The European Journal of Orthodontics, 24(1), 99-106.
  2. Bates, J., & Young, M. (2003). Applying fuzzy logic to medical decision making in the intensive care unit. American Journal of Respiratory and Critical Care Medicine, 167(7), 948–952.
  3. Benecchi, L. (2006). Neuro-fuzzy systems for prostate cancer diagnosis. Urology, 68(2), 357–361.
  4. Blackmore, C. C., Mecklenburg, R. S., & Kaplan, G. S. (2011). Effectiveness of clinical decision support in controlling inappropriate imaging. Journal of the American College of Radiology, 8(1), 19-25.
  5. CDC, (2020). United States of America Centers for Disease Control and Prevention. Retrieved from Centers for Disease Control and Prevention:https://web.archive.org/web/20200302201644/https://www.cdc.gov/coronavirus/2019-ncov/hcp/clinical-guidance-management-patients.html , Last accessed on December 4, 2020.
  6. Cismondi, F., Celi, L. A., Fialho, A. S., Vieira, S. M., Reti, S. R., Sousa, J. M., & Finkelstein, S. N. (2013). Reducing unnecessary lab testing in the ICU with Artificial Intelligence. Internal Journal of Medical Informatics, 82(5), 345-358.
  7. Ewald, F., & Mohammad, A. (2015). Optimal Placement and Sizing of Shunt Capacitor Banks in the Presence of Harmonics. In E. F. Mohammad A.S. Masoum, Power Quality in Power Systems and Electrical Machines (Second Edition) (pp. 887-959). Elsevier Inc.
  8. Genc, B. N. (2020). Critical management of Covid-19 pandemic in Turkey. Frontiers in Life Sciences and Related Technologies, 1(2), 69-73.

Details

Primary Language

English

Subjects

Engineering

Journal Section

Research Article

Publication Date

December 30, 2021

Submission Date

October 22, 2021

Acceptance Date

December 15, 2021

Published in Issue

Year 2021 Volume: 2 Number: 3

APA
Özbey, S., Koluman, A., & Tokat, S. (2021). Estimation of infection risk using symptoms of COVID-19: an approach based on fuzzy expert system. Frontiers in Life Sciences and Related Technologies, 2(3), 92-102. https://doi.org/10.51753/flsrt.1010253
AMA
1.Özbey S, Koluman A, Tokat S. Estimation of infection risk using symptoms of COVID-19: an approach based on fuzzy expert system. Front Life Sci RT. 2021;2(3):92-102. doi:10.51753/flsrt.1010253
Chicago
Özbey, Serhat, Ahmet Koluman, and Sezai Tokat. 2021. “Estimation of Infection Risk Using Symptoms of COVID-19: An Approach Based on Fuzzy Expert System”. Frontiers in Life Sciences and Related Technologies 2 (3): 92-102. https://doi.org/10.51753/flsrt.1010253.
EndNote
Özbey S, Koluman A, Tokat S (December 1, 2021) Estimation of infection risk using symptoms of COVID-19: an approach based on fuzzy expert system. Frontiers in Life Sciences and Related Technologies 2 3 92–102.
IEEE
[1]S. Özbey, A. Koluman, and S. Tokat, “Estimation of infection risk using symptoms of COVID-19: an approach based on fuzzy expert system”, Front Life Sci RT, vol. 2, no. 3, pp. 92–102, Dec. 2021, doi: 10.51753/flsrt.1010253.
ISNAD
Özbey, Serhat - Koluman, Ahmet - Tokat, Sezai. “Estimation of Infection Risk Using Symptoms of COVID-19: An Approach Based on Fuzzy Expert System”. Frontiers in Life Sciences and Related Technologies 2/3 (December 1, 2021): 92-102. https://doi.org/10.51753/flsrt.1010253.
JAMA
1.Özbey S, Koluman A, Tokat S. Estimation of infection risk using symptoms of COVID-19: an approach based on fuzzy expert system. Front Life Sci RT. 2021;2:92–102.
MLA
Özbey, Serhat, et al. “Estimation of Infection Risk Using Symptoms of COVID-19: An Approach Based on Fuzzy Expert System”. Frontiers in Life Sciences and Related Technologies, vol. 2, no. 3, Dec. 2021, pp. 92-102, doi:10.51753/flsrt.1010253.
Vancouver
1.Serhat Özbey, Ahmet Koluman, Sezai Tokat. Estimation of infection risk using symptoms of COVID-19: an approach based on fuzzy expert system. Front Life Sci RT. 2021 Dec. 1;2(3):92-102. doi:10.51753/flsrt.1010253

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