Shah Vaishali, Yung Halley C, Yang Jie, Zaslavsky Justin, Algarroba Gabriela N, Pullano Alyssa, Karpel Hannah C, Munoz Nicole, Aphinyanaphongs Yindalon, Saraceni Mark, Shah Paresh, Jones Simon, Huang Kathy
Department of Obstetrics and Gynecology, NYU Langone Health Grossman School of Medicine, New York, New York, USA. (Drs. V. Shah, Munoz, and Huang).
The City University of New York (CUNY) School of Medicine, New York, New York, USA. (Dr. Yung).
JSLS. 2024 Oct-Dec;28(4). doi: 10.4293/JSLS.2024.00040. Epub 2025 Jan 17.
Operating rooms (ORs) are critical for hospital revenue and cost management, with utilization efficiency directly affecting financial outcomes. Traditional surgical scheduling often results in suboptimal OR use. We aim to build a machine learning (ML) model to predict incision times for robotic-assisted hysterectomies, enhancing scheduling accuracy and hospital finances.
A retrospective study was conducted using data from robotic-assisted hysterectomy cases performed between January 2017 and April 2021 across 3 hospitals within a large academic health system. Cases were filtered for surgeries performed by high-volume surgeons and those with an incision time of under 3 hours (n = 2,702). Features influencing incision time were extracted from electronic medical records and used to train 5 ML models (linear ridge regression, random forest, XGBoost, CatBoost, and explainable boosting machine [EBM]). Model performance was evaluated using a dynamic monthly update process and novel metrics such as wait-time blocks and excess-time blocks.
The EBM model was selected for its superior performance compared to the other models. The model reduced the number of excess-time blocks from 1,113 to 905 ( < .001, 95% CI [-329 to -89]), translating to approximately 52-hours over the 51-month study period. The model predicted more surgeries within a 15% range of the true incision time compared to traditional methods. Influential features included surgeon experience, number of additional procedures, body mass index (BMI), and uterine size.
The ML model enhanced the prediction of incision times for robotic-assisted hysterectomies, providing a potential solution to reduce OR underutilization and increase surgical throughput and hospital revenue.
手术室对于医院的收入和成本管理至关重要,其利用效率直接影响财务结果。传统的手术排班往往导致手术室使用不理想。我们旨在构建一个机器学习(ML)模型来预测机器人辅助子宫切除术的切口时间,提高排班准确性和医院财务状况。
使用来自一个大型学术医疗系统内3家医院在2017年1月至2021年4月期间进行的机器人辅助子宫切除术病例的数据进行回顾性研究。病例筛选为高年资外科医生进行的手术以及切口时间在3小时以内的手术(n = 2702)。从电子病历中提取影响切口时间的特征,并用于训练5种ML模型(线性岭回归、随机森林、XGBoost、CatBoost和可解释增强机器[EBM])。使用动态月度更新过程和诸如等待时间块和超时间块等新指标评估模型性能。
与其他模型相比,EBM模型因其卓越性能而被选中。该模型将超时间块的数量从1113减少到905(P <.001,95% CI [-329至-89]),在51个月的研究期间相当于约52小时。与传统方法相比,该模型在真实切口时间的15%范围内预测了更多手术。有影响的特征包括外科医生经验、额外手术数量、体重指数(BMI)和子宫大小。
ML模型增强了对机器人辅助子宫切除术切口时间的预测,为减少手术室利用不足、提高手术通量和医院收入提供了一个潜在的解决方案。