The Australian e-Health Research Centre, CSIRO, Brisbane, QLD, Australia.
Level 7, Surgical, Treatment and Rehabilitation Service-STARS, 296 Herston Road, Herston, QLD, Australia.
BMC Med Inform Decis Mak. 2022 Jun 7;22(1):151. doi: 10.1186/s12911-022-01893-8.
In many hospitals, operating theatres are not used to their full potential due to the dynamic nature of demand and the complexity of theatre scheduling. Theatre inefficiencies may lead to access block and delays in treating patients requiring critical care. This study aims to employ operating theatre data to provide decision support for improved theatre management.
Historical observations are used to predict long-term daily surgery caseload in various levels of granularity, from emergency versus elective surgeries to clinical specialty-level demands. A statistical modelling and a machine learning-based approach are developed to estimate daily surgery demand. The statistical model predicts daily demands based on historical observations through weekly rolling windows and calendar variables. The machine learning approach, based on regression algorithms, learns from a combination of temporal and sequential features. A de-identified data extract of elective and emergency surgeries at a major 783-bed metropolitan hospital over four years was used. The first three years of data were used as historical observations for training the models. The models were then evaluated on the final year of data.
Daily counts of overall surgery at a hospital-level could be predicted with approximately 90% accuracy, though smaller subgroups of daily demands by medical specialty are less predictable. Predictions were generated on a daily basis a year in advance with consistent predictive performance across the forecast horizon.
Predicting operating theatre demand is a viable component in theatre management, enabling hospitals to provide services as efficiently and effectively as possible to obtain the best health outcomes. Due to its consistent predictive performance over various forecasting ranges, this approach can inform both short-term staffing choices as well as long-term strategic planning.
在许多医院,由于需求的动态性质和手术安排的复杂性,手术室未充分发挥其潜力。手术室效率低下可能导致通道阻塞,并延迟治疗需要重症监护的患者。本研究旨在利用手术室数据为改善手术室管理提供决策支持。
历史观察结果用于以不同的粒度预测长期每日手术量,从急诊手术与择期手术到临床专科级别的需求。开发了一种统计建模和基于机器学习的方法来估计每日手术需求。统计模型通过每周滚动窗口和日历变量基于历史观察结果预测每日需求。基于回归算法的机器学习方法从时间和顺序特征的组合中学习。使用了一家主要的 783 床大都市医院四年的择期和急诊手术的匿名数据提取。前三年的数据用于训练模型,然后在最后一年的数据上评估模型。
可以以大约 90%的准确度预测医院级别的整体手术日计数,但医疗专业的更小的每日需求亚组的预测能力较低。预测结果可提前一年每日生成,在整个预测范围内具有一致的预测性能。
预测手术室需求是手术室管理的一个可行组成部分,使医院能够尽可能高效和有效地提供服务,以获得最佳的健康结果。由于其在各种预测范围内具有一致的预测性能,这种方法可以为短期人员配备决策以及长期战略规划提供信息。