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. 2020 Nov 13;7:592007. doi: 10.3389/fmed.2020.592007

Table 2.

Comparison of top-4 machine learning models and logistic regression model in validation group.

Models Observed CI-AKI (n = 57) Observed non-CI-AKI (n = 316) Cut-off
True positive False positive False negative True negative
RF10 42 15 91 225 0.50
73.7% 26.3% 28.8% 71.2%
RF15 41 16 83 233 0.50
71.9% 28.1% 26.3% 73.7%
RF20 37 20 84 232 0.50
64.9% 35.1% 26.6% 73.4%
SVM15 41 16 106 210 0.50
71.9% 28.1% 33.5% 66.5%
LR3 36 21 270 46 0.80
63.2% 36.8% 85.4% 14.6%
Precision Recall F1-score Specificity Accuracy
RF10 31.6% 73.7% 44.2% 71.2% 71.6%
RF15 33.1% 71.9% 45.3% 73.7% 73.5%
RF20 30.6% 64.9% 41.6% 73.4% 72.1%
SVM15 27.9% 71.9% 40.2% 66.5% 67.3%
LR3 11.8% 63.2% 19.8% 14.6% 22.0%

RF10, random forest model with top 10 variables; RF15, random forest model with top 15 variables; RF20, random forest model with top 20 variables; SVM15, support vector machine model with top 15 variables; LR3, logistic regression model 3.