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. 2024 Mar 12;13:24. doi: 10.1186/s40249-024-01191-7

Table 4.

Parameters of model performance in the testing set

Model AUC Threshold Accuracy Kappa Sensitivity Specificity
LM 1 0.117 1 1 1 1
RF 1 0.117 1 1 1 1
GBM 1 0.117 1 1 1 1
DT 1 0.117 1 1 1 1
NNET 0.991 0.117 0.999 0.996 0.9964 1
XGBOOST 1 0.117 1 1 1 1

AUC, area under the receiver operating characteristic curve; Threshold, optimal probability threshold for model predictions; Accuracy, overall accuracy of model predictions; Kappa, Cohen's Kappa statistic measuring prediction agreement; Sensitivity, model sensitivity in predicting presence; Specificity, model specificity in predicting absence; RF, random forest model; XGBOOST, extreme gradient boosting model; GBM, gradient boosting machine model; LM, logistic regression model; DT, decision tree model; NNET, neural network model