과제정보
The authors extend their appreciation to the Researchers Supporting Project number (RSPD2023R744), King Saud University, Riyadh, Saudi Arabia.
참고문헌
- Lai, C.-C., et al., Severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) and coronavirus disease-2019 (COVID-19): The epidemic and the challenges. International journal of antimicrobial agents, 2020. 55(3): p. 105924.
- Control, C.f.D. and Prevention, Symptoms of COVID-19. 2021. URL https://www.cdc.gov/coronavirus/2019-ncov/symptomstesting/symptoms.html, 2021.
- Control, C.f.D. and Prevention, Symptoms of COVID-19.
- Nannoni, S., et al., Stroke in COVID-19: a systematic review and meta-analysis. International Journal of Stroke, 2021. 16(2): p. 137-149.
- Del Sole, F., et al., Features of severe COVID-19: a systematic review and meta-analysis. European journal of clinical investigation, 2020. 50(10): p. e13378.
- Wong, C.K., et al., Clinical presentations, laboratory and radiological findings, and treatments for 11,028 COVID-19 patients: a systematic review and meta-analysis. Scientific reports, 2020. 10(1): p. 1-16.
- Hoang, T., Characteristics of COVID-19 recurrence: a systematic review and meta-analysis. Annals of Global Health, 2021. 87(1).
- Simsek, H. and E. Yangin, An alternative approach to determination of Covid-19 personal risk index by using fuzzy logic. Health and Technology, 2022. 12(2): p. 569-582.
- Li, H., et al., Milder symptoms and shorter course in patients with re-positive COVID-19: A cohort of 180 patients from Northeast China. Frontiers in Microbiology, 2022. 13.
- Burki, T., Understanding variants of SARS-CoV-2. The Lancet, 2021. 397(10273): p. 462.
- Lai, S., Preliminary risk analysis of the international spread of new COVID-19 variants, lineage B. 1.1. 7, B. 1.351 and P. 1.
- Rao, S. and M. Singh, An evolving public health crisis caused by the rapid spread of the SARS-CoV-2 delta variant: the protective effect of vaccination. DHR Proceedings, 2021. 1(S4): p. 6-8.
- Yang, J., et al., Prevalence of comorbidities in the novel Wuhan coronavirus (COVID-19) infection: a systematic review and meta-analysis. Int J Infect Dis, 2020. 94(1): p. 91-95.
- Emami, A., et al., Prevalence of underlying diseases in hospitalized patients with COVID-19: a systematic review and meta-analysis. Archives of academic emergency medicine, 2020. 8(1).
- Elliott, J., et al., Predictive symptoms for COVID-19 in the community: REACT-1 study of over 1 million people. PLoS medicine, 2021. 18(9): p. e1003777.
- Kaur, J. and B.S. Khehra, Fuzzy logic and hybrid based approaches for the risk of heart disease detection: state-of-the-art review. Journal of The Institution of Engineers (India): Series B, 2022. 103(2): p. 681-697.
- Zadeh, L.A., Is there a need for fuzzy logic? Information sciences, 2008. 178(13): p. 2751-2779.
- Singla, J., et al., A novel fuzzy logic-based medical expert system for diagnosis of chronic kidney disease. Mobile Information Systems, 2020.
- Awotunde, J.B., O.E. Matiluko, and O.W. Fatai, Medical diagnosis system using fuzzy logic. African Journal of Computing & ICT, 2014. 7(2): p. 99-106.
- Shaban, W.M., et al., Detecting COVID-19 patients based on fuzzy inference engine and Deep Neural Network. Applied soft computing, 2021. 99: p. 106906.
- Shatnawi, M., et al., Symptoms-based fuzzy-logic approach for COVID-19 diagnosis. Int J Adv Comp Sci Appl, 2021. 12(4).
- Al-Ali, A., et al., ANFIS-Net for automatic detection of COVID-19. Scientific Reports, 2021. 11(1): p. 17318.
- de Medeiros, I.B., et al., A fuzzy inference system to support medical diagnosis in real time. Procedia computer science, 2017. 122: p. 167-173.
- Jindal, N., et al., Fuzzy logic systems for diagnosis of renal cancer. Applied Sciences, 2020. 10(10): p. 3464.
- Sikchi, S.S., S. Sikchi, and M. Ali, Fuzzy expert systems (FES) for medical diagnosis. International Journal of Computer Applications, 2013. 63(11).
- Ylenia, C., et al., A Clinical Decision Support System based on fuzzy rules and classification algorithms for monitoring the physiological parameters of type-2 diabetic patients. Mathematical Biosciences and Engineering, 2021. 18(3): p. 2654-2674.
- Govindan, K., H. Mina, and B. Alavi, A decision support system for demand management in healthcare supply chains considering the epidemic outbreaks: A case study of coronavirus disease 2019 (COVID-19). Transportation Research Part E: Logistics and Transportation Review, 2020. 138: p. 101967.
- Mangla, M., N. Sharma, and P. Mittal, A fuzzy expert system for predicting the mortality of COVID'19. Turkish Journal of Electrical Engineering and Computer Sciences, 2021. 29(3): p. 1628-1642.
- Hamedan, F., et al., Clinical decision support system to predict chronic kidney disease: A fuzzy expert system approach. International journal of medical informatics, 2020. 138: p. 104134.
- Al-Qaness, M.A., et al., Optimization method for forecasting confirmed cases of COVID-19 in China. Journal of Clinical Medicine, 2020. 9(3): p. 674.
- Bouncenna, N., et al., Aggravating and progression factors of COVID-19: Intelligent analysis. Euro Med J, 2021. 2: p. 2.
- Chowdhury, M.A., et al., Evaluation of the effect of environmental parameters on the spread of COVID-19: a fuzzy logic approach. Advances in Fuzzy Systems, 2020. 2020: p. 1-5.
- Fu, Y.-L. and K.-C. Liang, Fuzzy logic programming and adaptable design of medical products for the COVID-19 anti-epidemic normalization. Computer Methods and Programs in Biomedicine, 2020. 197: p. 105762.
- Gemmar, P., Mortality Prediction for COVID-19 Patients: Methods and Potential. Journal of Bacteriology & Parasitology, 2020. 11(4).
- Painuli, D., et al., Fuzzy rule based system to predict COVID19-a deadly virus. way, 2020. 3(4): p. 5.
- Castillo, O. and P. Melin, Forecasting of COVID-19 time series for countries in the world based on a hybrid approach combining the fractal dimension and fuzzy logic. Chaos, Solitons & Fractals, 2020. 140: p. 110242.
- Ardabili, S.F., et al., Covid-19 outbreak prediction with machine learning. Algorithms, 2020. 13(10): p. 249.
- Sharma, M.K., N. Dhiman, and V.N. Mishra, Mediative fuzzy logic mathematical model: A contradictory management prediction in COVID-19 pandemic. Applied Soft Computing, 2021. 105: p. 107285.
- Zadeh, L.A., G.J. Klir, and B. Yuan, Fuzzy sets, fuzzy logic, and fuzzy systems: selected papers. Vol. 6. 1996: World Scientific.