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Prediction of red blood cell transfusion after orthopedic surgery using an interpretable machine learning framework
10
Zitationen
14
Autoren
2023
Jahr
Abstract
By 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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