References
- Atanassov, K.T. (2012). On Intuitionistic Fuzzy Sets Theory, Springer, Heidelberg.
- Chaira, T. (2011). Intuitionistic fuzzy set theory in medical imaging, International Journal of Soft Computing and Engineering 1(2): 24–26.
- Chin, C.-L., Lin, J.-C., Li, C.-Y., Sun, T.-Y., Chen, T., Lai, Y.-M., Huang, P.-C., Chang, S.-W. and Sharma, A.K. (2023). A novel fuzzy DBnet for medical image segmentation, Electronics 12(12): 2658.
- Curtis, C., Liu, C., Bollerman, T.J. and Pianykh, O.S. (2018). Machine learning for predicting patient wait times and appointment delays, Journal of the American College of Radiology 15(9): 1310–1316.
- Davenport, T.H., Hongsermeier, T. and Mc Cord, K.A. (2018). Using AI to improve electronic health records, Harvard Business Review 12(2): 1–6.
- Dey, N., Ashour, A.S., Shi, F. and Balas, V.E. (2018). Soft Computing Based Medical Image Analysis, Academic Press, London.
- Fauci, A.S. and Morens, D.M. (2012). The perpetual challenge of infectious diseases, New England Journal of Medicine 366(5): 454–461.
- Hasan, M.R., Ray, R.K. and Chowdhury, F.R. (2024). Employee performance prediction: An integrated approach of business analytics and machine learning, Journal of Business and Management Studies 6(1): 215–219.
- Hema, R., Sudharani, R. and Kavitha, M. (2023). A novel approach on plithogenic interval valued neutrosophic hyper-soft sets and its application in decision making, Indian Journal of Science and Technology 16(32): 2494–2502.
- Jiang, Y., Tang, Y. and Chen, Q. (2011). An adjustable approach to intuitionistic fuzzy soft sets based decision making, Applied Mathematical Modelling 35(2): 824–836.
- Kamacı, H. (2021). On hybrid structures of hypersoft sets and rough sets International Journal of Modern Science and Technology 6(4): 69–82.
- Kaur, P. and Chaira, T. (2021). A novel fuzzy approach for segmenting medical images, Soft Computing 25(5): 3565–3575.
- Koundal, D. and Sharma, B. (2019). Challenges and future directions in neutrosophic set-based medical image analysis, in Y. Guo and A.S. Ashour (Eds), Neutrosophic Set in Medical Image Analysis, Elsevier, Amsterdam, pp. 313–343.
- Lauraitis, A., Maskeliūnas, R. and Damaševičius, R. (2018). Ann and fuzzy logic based model to evaluate Huntington disease symptoms, Journal of Healthcare Engineering 2018(1): 1–10.
- Lin, D. and Lin, H. (2020). Translating artificial intelligence into clinical practice, Annals of Translational Medicine 8(11): 715–715.
- Lourenço-Silva, J. and Oliveira, A.L. (2021). Using soft labels to model uncertainty in medical image segmentation, International MICCAI Brainlesion Workshop, Brno, Czech Republic, pp. 585–596.
- Morse, S.S. (1995). Factors in the emergence of infectious disease, Emerging Infectious Diseases 1(1): 7–15.
- Mumuni, A.N., Hasford, F., Udeme, N.I., Dada, M.O. and Awojoyogbe, B.O. (2024). A SWOT analysis of artificial intelligence in diagnostic imaging in the developing world: making a case for a paradigm shift, Physical Sciences Reviews 9(1): 443–476.
- Nagaraja Kumar, N., Jayachandra Prasad, T. and Satya Prasad, K. (2023). Multimodal medical image fusion with improved multi-objective meta-heuristic algorithm with fuzzy entropy, Journal of Information & Knowledge Management 22(01): 2250063.
- Omoregbe, N.A., Ndaman, I.O., Misra, S., Abayomi-Alli, O.O., Damaševičius, R. and Dogra, A. (2020). Text messaging-based medical diagnosis using natural language processing and fuzzy logic, Journal of Healthcare Engineering 2020(1): 1–14.
- Palanisami, D., Mohan, N. and Ganeshkumar, L. (2022). A new approach of multi-modal medical image fusion using intuitionistic fuzzy set, Biomedical Signal Processing and Control 77(2): 103762.
- Prashant (2020). Chest X-ray COVID19 pneumonia dataset, https://www.kaggle.com/datasets/prashant268/chest-xray-covid19-pneumonia.
- Rahman, T. (2020). Tuberculosis (TB) chest X-ray dataset, https://www.kaggle.com/datasets/tawsifurrahman/tuberculosis-tb-chest-xray-dataset.
- Ramu, B. and Bansal, S. (2024). Highly accurate tumour region segmentation from magnetic resonance images using customized convolutional neural networks, Multimedia Tools and Applications 83(5): 14423–14445.
- Ray, R.K., Chowdhury, F.R. and Hasan, M.R. (2024). Blockchain applications in retail cybersecurity: Enhancing supply chain integrity, secure transactions, and data protection, Journal of Business and Management Studies 6(1): 206–214.
- Sundus, H., Khan, S.A., Chhabra, C., Jain, S., Aziz, R. and Kaur, H. (2024). Artificial intelligence and medical research: Accelerating innovation in healthcare, in S.A. Bansal and C. Chhabra (Eds), AI Horizons: Exploring Multidisciplinary Frutiers, Vol. III, Redshine Publication, Lahore, pp. 105–123.
- Vemuri, N., Thaneeru, N. and Tatikonda, V.M. (2023a). Securing trust: Ethical considerations in AI for cybersecurity, Journal of Knowledge Learning and Science Technology 2(2): 167–175.
- Vemuri, N., Thaneeru, N. and Tatikonda, V.M. (2023b). Smart farming revolution: Harnessing IoT for enhanced agricultural yield and sustainability, Journal of Knowledge Learning and Science Technology 2(2): 143–148.
- Vemuri, N.V.N. (2023). Enhancing human-robot collaboration in industry 4.0 with AI-driven HRI, Power System Technology 47(4): 341–358.
- Zadeh, L.A. (1965). Fuzzy sets, Information and Control 8(3): 338–353.
- Yolcu, A., (2023). Intuitionistic fuzzy hypersoft topology and its applications to multi-criteria decision-making, Sigma Journal of Engineering and Natural Sciences 41(1): 106–118.