应用机器学习方法开发手术病例持续时间预测模型。

IF 3.5 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES
Jung-Bin Park, Gyun-Ho Roh, Kwangsoo Kim, Hee-Soo Kim
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引用次数: 0

摘要

优化手术室利用率对提高医院管理水平和运营效率至关重要。准确的手术病例持续时间预测对于实现这一优化至关重要。我们的研究旨在通过开发针对特定外科部门的随机森林模型,提高这些预测的准确性,超越传统的估计方法。利用一个全面的数据集,我们应用了几种机器学习算法,包括RandomForest、XGBoost、Linear Regression、LightGBM和CatBoost,并使用平均绝对误差(MAE)、均方根误差(RMSE)和R-Squared (R2)指标评估了它们的性能。我们的研究结果突出表明,随机森林模型在特定部门的应用中表现出色,MAE为16.32,RMSE为31.19,R2为0.92,显著优于一般模型和传统估计。这种改进强调了定制模型以适应每个部门的不同特征和数据模式的优势。此外,我们基于shap的特征重要性分析确定了上午手术时间、ICU病房分配、手术代码和外科医生id是影响手术时间的关键因素。这表明模型开发的详细和细致的方法可以大大提高预测的准确性。通过提供更准确、更可靠的工具来预测手术病例持续时间,我们针对科室的随机森林模型有望加强手术安排,从而更有效地管理手术室。这种方法强调了利用量身定制的数据驱动模型来改善医疗保健结果和运营效率的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of Predictive Model of Surgical Case Durations Using Machine Learning Approach.

Optimizing operating room (OR) utilization is critical for enhancing hospital management and operational efficiency. Accurate surgical case duration predictions are essential for achieving this optimization. Our study aimed to refine the accuracy of these predictions beyond traditional estimation methods by developing Random Forest models tailored to specific surgical departments. Utilizing a comprehensive dataset, we applied several machine learning algorithms, including RandomForest, XGBoost, Linear Regression, LightGBM, and CatBoost, and assessed their performance using Mean Absolute Error (MAE), Root Mean Squared Error (RMSE), and R-Squared (R2) metrics. Our findings highlighted that Random Forest models excelled in department-specific applications, achieving an MAE of 16.32, an RMSE of 31.19, and an R2 of 0.92, significantly outperforming general models and conventional estimates. This improvement emphasizes the advantage of customizing models to fit the distinct characteristics and data patterns of each department. Additionally, our SHAP-based feature importance analysis identified morning operation timing, ICU ward assignments, operation codes, and surgeon IDs as key factors influencing surgical duration. This suggests that a detailed and nuanced approach to model development can substantially increase prediction accuracy. By providing a more accurate, reliable tool for predicting surgical case durations, our department-specific Random Forest models promise to enhance surgical scheduling, leading to more effective OR management. This approach underscores the importance of leveraging tailored, data-driven models to improve healthcare outcomes and operational efficiency.

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来源期刊
Journal of Medical Systems
Journal of Medical Systems 医学-卫生保健
CiteScore
11.60
自引率
1.90%
发文量
83
审稿时长
4.8 months
期刊介绍: Journal of Medical Systems provides a forum for the presentation and discussion of the increasingly extensive applications of new systems techniques and methods in hospital clinic and physician''s office administration; pathology radiology and pharmaceutical delivery systems; medical records storage and retrieval; and ancillary patient-support systems. The journal publishes informative articles essays and studies across the entire scale of medical systems from large hospital programs to novel small-scale medical services. Education is an integral part of this amalgamation of sciences and selected articles are published in this area. Since existing medical systems are constantly being modified to fit particular circumstances and to solve specific problems the journal includes a special section devoted to status reports on current installations.
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