Leveraging machine learning for duration of surgery prediction in knee and hip arthroplasty - a development and validation study

被引:0
作者
Langenberger, Benedikt [1 ,2 ]
Schrednitzki, Daniel [3 ]
Halder, Andreas [4 ]
Busse, Reinhard [1 ]
Pross, Christoph [1 ]
机构
[1] Tech Univ Berlin, Dept Hlth Care Management, Berlin, Germany
[2] Hasso Plattner Inst, Chair Digital Hlth Econ & Policy, Potsdam, Germany
[3] Sana Klinikum Lichtenberg, Dept Orthopaed Trauma Hand & Reconstruct Surg, Berlin, Germany
[4] Sana Klinken Sommerfeld, Dept Orthoped Surg, Brandenburg, Germany
关键词
Duration of surgery; Machine learning; Patient-reported outcome measures; TIMES; RISK;
D O I
10.1186/s12911-025-02927-7
中图分类号
R-058 [];
学科分类号
摘要
BackgroundDuration of surgery (DOS) varies substantially for patients with hip and knee arthroplasty (HA/KA) and is a major risk factor for adverse events. We therefore aimed (1) to identify whether machine learning can predict DOS in HA/KA patients using retrospective data available before surgery with reasonable performance, (2) to compare whether machine learning is able to outperform multivariable regression in predictive performance and (3) to identify the most important predictor variables for DOS both in a multi- and single-hospital context.MethodseXtreme Gradient Boosting (XGBoost) and multivariable linear regression were used for predictions. Both models were applied to both the whole dataset which included multiple hospitals (3,704 patients), and a single-hospital dataset (1,815 patients) of the hospital with the highest case-volumes of our sample. Data was split into training (75%) and test data (25%) for both datasets. Models were trained using 5-fold cross-validation (CV) on the training datasets and applied to test data for performance comparison.ResultsOn test data in the multi-hospital setting, the mean absolute error (MAE) was 12.13 min (HA) / 13.61 min (KA) for XGBoost. In the single-hospital analysis, performance on test data was MAE 10.87 min (HA) / MAE 12.53 min (KA) for XGBoost. Predictive ability of XGBoost was tended to be better than of regression in all setting, however not statistically significantly. Important predictors for XGBoost were physician experience, age, body mass index, patient reported outcome measures and, for the multi-hospital analysis, the hospital.ConclusionMachine learning can predict DOS in both a multi-hospital and single-hospital setting with reasonable performance. Performance between regression and machine learning differed slightly, however insignificantly, while larger datasets may improve predictive performance. The study found that hospital indicators matter in the multi-hospital setting despite controlling for various variables, highlighting potential quality differences between hospitals.Trial registrationThe study was registered at the German Clinical Trials Register (DRKS) under DRKS00019916.
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页数:13
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