Prediction models for deep vein thrombosis after knee/hip arthroplasty: A systematic review and network meta-analysis.
Qingqing ZengZhuolan LiSijie GuiJingjing WuCaijuan LiuTing WangDan PengGu-Qing ZengPublished in: Journal of orthopaedic surgery (Hong Kong) (2024)
Deep vein thrombosis (DVT) is one of the common complications after joint replacement, which seriously affects the quality of life of patients. We systematically searched nine databases, a total of eleven studies on prediction models to predict DVT after knee/hip arthroplasty were included, eight prediction models for DVT after knee/hip arthroplasty were chosen and compared. The results of network meta-analysis showed the XGBoost model (SUCRA 100.0%), LASSO (SUCRA 84.8%), ANN (SUCRA 72.1%), SVM (SUCRA 53.0%), ensemble model (SUCRA 40.8%), RF (SUCRA 25.6%), LR (SUCRA 21.8%), GBT (SUCRA 1.1%), and best prediction performance is XGB (SUCRA 100%). Results show that the XGBoost model has the best predictive performance. Our study provides suggestions and directions for future research on the DVT prediction model. In the future, well-designed studies are still needed to validate this model.
Keyphrases
- total knee arthroplasty
- systematic review
- end stage renal disease
- case control
- newly diagnosed
- total hip arthroplasty
- chronic kidney disease
- randomized controlled trial
- current status
- peritoneal dialysis
- anterior cruciate ligament
- prognostic factors
- big data
- anterior cruciate ligament reconstruction
- patient reported
- neural network