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Table 4 Evaluation of the optimal logistic regression model for ten-fold cross-validation

From: A potential predictive model based on machine learning and CPD parameters in elderly patients with aplastic anemia and myelodysplastic neoplasms

Cohorts

AUC

Cut off

Accuracy

Sensitivity

Specificity

Positive predictive value

Negative predictive value

F1

Training cohort

0.852

0.525

0.796

0.718

0.873

0.812

0.787

0.762

Testing cohort

0.791

0.532

0.73

0.706

0.850

0.818

0.692

0.758