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. 2021 Feb 24;11(5):e02085. doi: 10.1002/brb3.2085

TABLE 1.

Sensitivity, specificity, and overall accuracy of different machine learning algorithm prediction models for training set and validation set

Algorithms Training set (n = 215) Validation set (n = 55)
Sensitivity Specificity Accuracy Sensitivity Specificity Accuracy
KNN 86.8% 88.3% 87.9% 90.0% 82.2% 83.6%
SVM 81.8% 87.5% 86.0% 90.9% 84.1% 85.5%
XGBoost 96.0% 89.7% 91.2% 92.3% 88.1% 89.1%
RF 98.5% 99.3% 99.1% 93.3% 92.5% 92.7%
LR 75.9% 86.6% 83.7% 90.9% 84.1% 85.5%
DT 100% 100% 100% 80.0% 87.5% 85.5%

Abbreviations: DT, decision tree; KNN, k‐nearest neighbor; LR, logistic regression; RF, random forest; SVM, support vector machine; XGBoost, extreme gradient boosting.