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Development and Validation of a Machine Learning Algorithm to Predict the Risk of Blood Transfusion after Total Hip Replacement in Patients with Femoral Neck Fractures: A Multicenter Retrospective Cohort Study.

Jieyang ZhuChenxi XuYi JiangJinyu ZhuMengyun TuXiaobing YanZeren ShenZhenqi Lou
Published in: Orthopaedic surgery (2024)
Utilizing a computer algorithm, a prediction model with a high discrimination accuracy (AUC > 0.5) was developed. The logistic regression model demonstrated superior differentiation and reliability, thereby successfully passing external validation. The model's strong generalizability and applicability have significant implications for clinicians, aiding in the identification of patients at high risk for postoperative blood transfusion.
Keyphrases
  • machine learning
  • total hip
  • deep learning
  • end stage renal disease
  • total knee arthroplasty
  • ejection fraction
  • newly diagnosed
  • chronic kidney disease
  • artificial intelligence
  • double blind
  • patient reported