Название: Smart Healthcare System Design
Автор: Группа авторов
Издательство: John Wiley & Sons Limited
Жанр: Программы
isbn: 9781119792239
isbn:
In another fresh-taste study [20], the emphasis was on a muchdiscussed issue of workplace hazards, including protection and effectiveness of health workers against public abuse. To define and prioritize control measures of aggression, their innovative approach used fuzzy AHP and Fuzzy Additive Ratio Assessment. They described the solution as the best advice for controlling violence against health workers by increasing the number of security personnel and training staff.
Below, Part C of Table 2.1 presents some very recent related articles published in highly acclaimed journals. This way, above deliberations, find ample scopes of research on applications of fuzzy set theory on the health-care and medicine problems.
2.7 Conclusion
The IoT is a great blended domain for many fields such as mHealth application’s development. The mHealth application’s development is very trendy topic among the research community due to its direct involvement with the human’s life. These applications mostly focus on static patients but do not focus on the remote patient’s monitoring. The remote patient’s monitoring is getting fame due to fewer innovations and work is done in this domain. In this chapter we investigated different health issues. Additionally, the fuzzy logics work with a focus on their major components of the applications to develop for health monitoring is discussed. There is a strong need to address these all mentioned issues sot enhance the health sector both in eHealth and mHealth Environments.
References
1. Ren, P., Xu, Z., Liao, H., Zeng, X.-J., A thermodynamic method of intuitionistic fuzzy MCDM to assist the hierarchical medical system in China. Inf. Sci., 420, 490–504, 2017.
2. Ghorabaee, M.K., Developing an MCDM method for robot selection with interval type-2 fuzzy sets. Rob. Comput. Integr. Manuf., 1, 37, 221–232, 2016 Feb.
3. Sen, D.K., Datta, S., Mahapatra, S.S., Extension of PROMETHEE for robot selection decision making. Benchmarking: An Int. J., 23, 4, 983–1014, 2016.
4. Zhou, F., Wang, X., Goh, M., Fuzzy extended VIKOR-based mobile robot selection model for hospital pharmacy. Int. J. Adv. Rob. Syst., 15, 4, 1729881418787315, 2018 Dec.
5. Kumar, P.M., Lokesh, S., Varatharajan, R., Babu, G.C., Parthasarathy, P., Cloud and IoT based disease prediction and diagnosis system for healthcare using Fuzzy neural classifier. Future Gener. Comput. Syst., 1, 86, 527–534, 2018 Sep.
6. Omrani, H., Shafaat, K., Emrouznejad, A., An integrated fuzzy clustering cooperative game data envelopment analysis model with application in hospital efficiency. Expert Syst. Appl., 30, 114, 615–628, 2018 Dec.
7. Kumar, R., Pandey, A.K, Baz., A., Alhakami, H., Alhakami, W., Agrawal, A., Khan, R.A., Fuzzy-based symmetrical multi-criteria decision-making procedure for evaluating the impact of harmful factors of healthcare information security. Symmetry. 12, 4, 664, 2020 Apr.
8. Tolga, C., Parlak, I.B., Castillo, O., Finite-interval-valued Type-2 Gaussian fuzzy numbers applied to fuzzy TODIM in a healthcare problem. Eng. Appl. Artif. Intell., Id. 103352. 2020.
9. Lupo, T., A fuzzy framework to evaluate service quality in the healthcare industry: An empirical case of public hospital service evaluation in Sicily. Appl. Soft Comput., 1, 40, 468–478, 2016 Mar.
10. Sumathi, G., Akilandeswari, J., Improved fuzzy weighted‐iterative association rule based ontology postprocessing in data mining for query recommendation applications. Comput. Intell., 36, 2, 773–782, 2020 May.
11. Wang, L.-E., Liu, H.-C., Quan, M.-Y., Evaluating the risk of failure modes with a hybrid MCDM model under interval-valued intuitionistic fuzzy environment. Comput. Ind. Eng., 2016.
12. Samuel, O.W., Asogbon, G.M., Sangaiah, A.K., Guanglin Li, F.P., An integrated decision support system based on ANN and Fuzzy AHP for heart failure risk prediction. Expert Syst. Appl., 68, 163–172, 2017.
13. Mardani, A., Hooker, R., Ozkul, S., Yifan, S., Nilashi, M., Sabzi, H.Z., Fei, G., Application of decision making and fuzzy sets theory to evaluate the health-care and medical problems: A review of three decades of research with recent developments. Expert Syst. Appl., 137, 202–231, 2019.
14. Moya, A., Navarro, E., Jaén, J., González, P., Fuzzy‐description logic for supporting the rehabilitation of the elderly. Expert Systems. 37, 2, e12464, 2020 Apr.
15. Tucan, P., Gherman, B., Major, K., Vaida, C., Major, Z., Plitea, N., Carbone, G., Pisla, D., Fuzzy logic-based risk assessment of a parallel robot for elbow and wrist rehabilitation. Int. J. Environ. Res. Public Health, 17, 654, 2020.
16. Tüzün, S. and Topcu, Y.I., A taxonomy of operations research studies in healthcare management. Oper. Res. Appl. HealthCare Manage., 3–21, 2017.
17. Narayanamurthy, G., Gurumurthy, A., Is the hospital lean? A mathematical model for assessing the implementation of lean thinking in healthcare institutions. Oper. Res. HealthCare, 1, 18, 84–98, 2018 Sep.
18. Suresh, M., Vaishnavi, V., Pai, R.D., Leanness evaluation in healthcare organizations using fuzzy logic approach. Int. J. Org. Anal., 2020.
19. Akram, M., Dudek, W.A., Ilyas, F., Group decision-making based on pythagorean fuzzy TOPSIS method. Int. J. Intell. Syst., 1–21, 2019.
20. Rajabi, F., Jahangiri, M., Bagherifard, F., Banaee, S., Farhadi, P., Strategies for controlling violence against healthcare workers: Application of fuzzy analytical hierarchy process and fuzzy additive ratio assessment. J. Nurs. Manage., 28, 4, 777–786, 2020 May.
21. Garai, A., Roy, TK., Multi-objective optimization of cost-effective and customercentric closed-loop supply chain management model in T-environment. Soft Comput., 24, 1, 155–178, 2020 Jan.
22. Maghsoodi, A.I., Mosavat, M., Hafezalkotob, A., Hafezalkotob, A., Hybrid hierarchical fuzzy group decision-making based on information axioms and BWM: Prototype design selection. Comput. Ind. Eng., 1, 127, 788–804, 2019 Jan.
23. Ozsahin, I., Sharif, T., Ozsahin, D.U., Uzun, B., Evaluation of solid-state detectors in medical imaging with fuzzy PROMETHEE. J. Instrum., 14, 01, C01019, 2019 Jan.
24. Moreno-Cabezali, B.M., Fernandez-Crehuet, J.M., Application of a fuzzy-logic based model for risk assessment in additive manufacturing R&D projects. Comput. Ind. Eng., 1, 145, 106529, 2020 Jul.
25. AlZu’bi, S., Shehab, M., Al-Ayyoub, M., Jararweh, Y., Gupta, B., Parallel implementation for 3d medical volume fuzzy segmentation. Pattern Recognit. СКАЧАТЬ