Treffer: An optimization protocol for MRI examination resource allocation based on demand forecasting and linear programming.
Emerg Med Australas. 2020 Aug;32(4):618-625. (PMID: 32067361)
PLoS One. 2017 Feb 21;12(2):e0172539. (PMID: 28222194)
Nutrients. 2019 Jan 02;11(1):. (PMID: 30609695)
BMC Public Health. 2019 Jun 13;19(Suppl 4):546. (PMID: 31196148)
Emerg Med Australas. 2019 Oct;31(5):750-755. (PMID: 30834651)
Math Biosci. 2017 Feb;284:32-39. (PMID: 27513728)
Environ Health Prev Med. 2023;28:68. (PMID: 37926526)
Entropy (Basel). 2020 Apr 30;22(5):. (PMID: 33286282)
Public Health Nutr. 2019 Apr;22(6):957-966. (PMID: 30767840)
Annu Int Conf IEEE Eng Med Biol Soc. 2020 Jul;2020:3767-3770. (PMID: 33018821)
PLoS One. 2020 Sep 17;15(9):e0237750. (PMID: 32941452)
Nutr J. 2019 Jul 20;18(1):40. (PMID: 31325970)
Int J Med Inform. 2019 Sep;129:167-174. (PMID: 31445251)
Public Health Nutr. 2023 Oct;26(10):2096-2107. (PMID: 37448219)
Acad Emerg Med. 2013 Aug;20(8):769-77. (PMID: 24033619)
Front Public Health. 2021 Oct 04;9:744100. (PMID: 34671588)
Sci Rep. 2022 Dec 20;12(1):22031. (PMID: 36539511)
J Crit Care. 2017 Aug;40:293. (PMID: 28647140)
BMC Infect Dis. 2020 Jul 2;20(1):468. (PMID: 32615923)
J Med Signals Sens. 2023 Mar 27;13(1):29-39. (PMID: 37292446)
Emerg Med J. 2012 May;29(5):358-65. (PMID: 21705374)
Weitere Informationen
The accessibility of medical services in Mainland China had been on the rise, leading to a surge in the number of Magnetic Resonance Imaging (MRI) scans. This increase had caused substantial delays in MRI examination queues at large hospitals. With MRI equipment and exams being costly, over-purchasing machines could lead to underutilization of resources. It was, therefore, crucial to devise a comprehensive method that could shorten patient wait times and optimize the use of medical resources within hospitals. The research had utilized daily MRI examination application data from a hospital covering the period from July 1, 2017, to November 30, 2022. The Autoregressive Integrated Moving Average (ARIMA) model and the AutoRegressive Integrated Moving Average with exogenous (ARIMAX) model were developed using SAS (version 9.3) software. Moreover, Non-AutoRegressive (NAR) and Non-AutoRegressive with exogenous (NARX) models were built using MATLAB (version R2015b) to forecast future MRI examination demands. Integrating the ARIMAX model with the NARX model, an ARIMAX-NARX model had been constructed.The predictive accuracy of these models was then assessed and compared. Based on the prediction outcomes, an Integer Linear Programming model was employed to calculate the optimal number of MRI examinations per machine per day, targeting cost reduction. An optimization flowchart for MRI examination resource allocation was developed by integrating critical process components, thus streamlining and systematizing the optimization process to improve efficiency. Analysis of the data revealed a weekly cyclical trend in MRI examination applications. Among the ARIMA, ARIMAX, NAR, NARX, ARIMAX-NARX models evaluated for their predictive skills, the NARX model emerged as the most accurate for forecasting. An Integer Linear Programming (ILP) model was utilized to plan the number of examinations for each MRI machine, effectively reducing costs. An optimization flowchart was developed to integrate key factors in MRI examination resource allocation, streamlining and systematizing the optimization process to enhance work efficiency. This study offers a comprehensive protocol for optimizing MRI examination resource allocation, combining the predictive power of the NARX model, the planning capabilities of the Integer Linear Programming model, and the integration of other relevant factors via an optimization flowchart.
(© 2025. The Author(s).)
Declarations. Ethics approval and consent to participate: The Medical Ethics Committee of the 6th Medical Center of PLA General Hospital waived informed consent given the lack of intervention and the anonymity of the data. Competing interests: The authors declare no competing interests.