Prediction of red blood cell transfusion after orthopedic surgery using an interpretable machine learning framework

被引:1
|
作者
Chen, Yifeng [1 ]
Cai, Xiaoyu [2 ]
Cao, Zicheng [1 ]
Lin, Jie [2 ]
Huang, Wenyu [1 ]
Zhuang, Yuan [2 ]
Xiao, Lehan [1 ]
Guan, Xiaozhen [2 ]
Wang, Ying [3 ]
Xia, Xingqiu [4 ]
Jiao, Feng [5 ]
Du, Xiangjun [1 ]
Jiang, Guozhi [1 ,6 ]
Wang, Deqing [2 ]
机构
[1] Sun Yat sen Univ, Sch Publ Hlth Shenzhen, Shenzhen Campus, Shenzhen, Peoples R China
[2] Chinese Peoples Liberat Army Gen Hosp, Med Ctr 1, Dept Transfus Med, Beijing, Peoples R China
[3] Guangdong Med Univ, Sch Clin Med 2, Dongguan, Peoples R China
[4] HealSci Technol Co Ltd, Beijing, Peoples R China
[5] Guangzhou Univ, Guangzhou Ctr Appl Math, Guangzhou, Peoples R China
[6] Sun Yat sen Univ, Sch Publ Hlth Shenzhen, Guangzhou, Peoples R China
来源
FRONTIERS IN SURGERY | 2023年 / 10卷
关键词
orthopedic surgery; RBC transfusion; prediction model; machine learning; interpretability; TOTAL HIP; ERYTHROPOIETIN; MANAGEMENT;
D O I
10.3389/fsurg.2023.1047558
中图分类号
R61 [外科手术学];
学科分类号
摘要
ObjectivePostoperative red blood cell (RBC) transfusion is widely used during the perioperative period but is often associated with a high risk of infection and complications. However, prediction models for RBC transfusion in patients with orthopedic surgery have not yet been developed. We aimed to identify predictors and constructed prediction models for RBC transfusion after orthopedic surgery using interpretable machine learning algorithms.MethodsThis retrospective cohort study reviewed a total of 59,605 patients undergoing orthopedic surgery from June 2013 to January 2019 across 7 tertiary hospitals in China. Patients were randomly split into training (80%) and test subsets (20%). The feature selection method of recursive feature elimination (RFE) was used to identify an optimal feature subset from thirty preoperative variables, and six machine learning algorithms were applied to develop prediction models. The Shapley Additive exPlanations (SHAP) value was employed to evaluate the contribution of each predictor towards the prediction of postoperative RBC transfusion. For simplicity of the clinical utility, a risk score system was further established using the top risk factors identified by machine learning models.ResultsOf the 59,605 patients with orthopedic surgery, 19,921 (33.40%) underwent postoperative RBC transfusion. The CatBoost model exhibited an AUC of 0.831 (95% CI: 0.824-0.836) on the test subset, which significantly outperformed five other prediction models. The risk of RBC transfusion was associated with old age (>60 years) and low RBC count (<4.0 x 10(12)/L) with clear threshold effects. Extremes of BMI, low albumin, prolonged activated partial thromboplastin time, repair and plastic operations on joint structures were additional top predictors for RBC transfusion. The risk score system derived from six risk factors performed well with an AUC of 0.801 (95% CI: 0.794-0.807) on the test subset.ConclusionBy applying an interpretable machine learning framework in a large-scale multicenter retrospective cohort, we identified novel modifiable risk factors and developed prediction models with good performance for postoperative RBC transfusion in patients undergoing orthopedic surgery. Our findings may allow more precise identification of high-risk patients for optimal control of risk factors and achieve personalized RBC transfusion for orthopedic patients.
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页数:11
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