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Fig. 4 | BMC Medical Informatics and Decision Making

Fig. 4

From: Exploring the assessment of post-cardiac valve surgery pulmonary complication risks through the integration of wearable continuous physiological and clinical data

Fig. 4

ROC curves for different machine learning models using both physiological and clinical features as inputs. The ROC curves for machine learning models were the average score of the results of a five-fold cross-validation. XGB, XGBoost; LR, Logistic Regression; RF, Random Forests; SVM, Support Vector Machine; KNN, k-Nearest Neighbor

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