Enhancing Surgery Scheduling in Health Care Settings With Metaheuristic Optimization Models: Algorithm Validation Study

被引:0
作者
Lopes, Joao [1 ]
Guimaraes, Tiago [1 ]
Duarte, Julio [1 ]
Santos, Manuel [1 ]
机构
[1] Univ Minho, Algoritmi Res Ctr, Rua Univ, P-4800058 Braga, Portugal
关键词
health care; surgery scheduling problem; metaheuristic model; model optimization; surgery scheduling; artificial intelligence; IMPLEMENTATION;
D O I
10.2196/57231
中图分类号
R-058 [];
学科分类号
摘要
Background: Health care is facing many challenges. The recent pandemic has caused a global reflection on how clinical and organizational processes should be organized, which requires the optimization of decision-making among managers and health care professionals to deliver care that is increasingly patient-centered. The efficiency of surgical scheduling is particularly critical, as it affects waiting list management and is susceptible to suboptimal decisions due to its complexity and constraints. Objective: In this study, in collaboration with one of the leading hospitals in Portugal, Centro Hospitalar e Universit & aacute;rio de Santo Ant & oacute;nio (CHUdSA), a heuristic approach is proposed to optimize the management of the surgical center. Methods: CHUdSA's surgical scheduling process was analyzed over a specific period. By testing an optimization approach, the research team was able to prove the potential of artificial intelligence (AI)-based heuristic models in minimizing scheduling penalties-the financial costs incurred by procedures that were not scheduled on time. Results: The application of this approach demonstrated potential for significant improvements in scheduling efficiency. Notably, the implementation of the hill climbing (HC) and simulated annealing (SA) algorithms stood out in this implementation and minimized the scheduling penalty, scheduling 96.7% (415/429) and 84.4% (362/429) of surgeries, respectively. For the HC algorithm, the penalty score was 0 in the urology, obesity, and pediatric plastic surgery medical specialties. For the SA algorithm, the penalty score was 5100 in urology, 1240 in obesity, and 30 in pediatric plastic surgery. Together, this highlighted the ability of AI-heuristics to optimize the efficiency of this process and allowed for the scheduling of surgeries at closer dates compared to the manual method used by hospital professionals. Conclusions: Integrating these solutions into the surgical scheduling process increases efficiency and reduces costs. The practical implications are significant. By implementing these AI-driven strategies, hospitals can minimize patient wait times, maximize resource use, and enhance surgical outcomes through improved planning. This development highlights how AI algorithms can effectively adapt to changing health care environments, having a transformative impact.
引用
收藏
页数:11
相关论文
共 34 条
  • [1] Sun TQ, Medaglia R., Mapping the challenges of artificial intelligence in the public sector: evidence from public healthcare, Gov Inf Q, 36, 2, pp. 368-383, (2019)
  • [2] Cutillo CM, Sharma KR, Foschini L, Et al., Machine intelligence in healthcare-perspectives on trustworthiness, explainability, usability, and transparency, NPJ Digit Med, 3, (2020)
  • [3] Sharma M, Savage C, Nair M, Larsson I, Svedberg P, Nygren JM., Artificial intelligence applications in health care practice: scoping review, J Med Internet Res, 24, 10, (2022)
  • [4] Jayaratne M, Nallaperuma D, De Silva D, Et al., A data integration platform for patient-centered e-healthcare and clinical decision support, Future Generation Computer Systems, 92, pp. 996-1008, (2019)
  • [5] Feldman K, Johnson RA, Chawla NV., The state of data in healthcare: path towards standardization, J Healthc Inform Res, 2, 3, pp. 248-271, (2018)
  • [6] Xin J H., Business intelligence and big data analytics: an overview, Commun IIMA, 14, 3, (2014)
  • [7] Sharda R, Delen D, Turban E., Business Intelligence and Analytics: Systems for Decision Support, (2013)
  • [8] Lopes J, Guimaraes T, Santos MF., Predictive and prescriptive analytics in healthcare: a survey, Procedia Comput Sci, 170, pp. 1029-1034, (2020)
  • [9] Moon JD, Galea MP, Improving Health Management through Clinical Decision Support Systems, IGI Global, (2016)
  • [10] Michalewicz Z., Schmidt M, Michalewicz M, Chiriac C, Adaptive Business Intelligence, (2010)