Table 3.
Combination of CE and F sequences | ||
---|---|---|
Model | Feature reduction | ROC AUC mean (SD) |
ada | Full | 0.951 (0.040) |
Lasso | Full | 0.950 (0.042) |
GBRM | Corr | 0.950 (0.040) |
Enet | Full | 0.948 (0.041) |
MLP | Full | 0.948 (0.042) |
GBRM | Full | 0.944 (0.043) |
RF | Full | 0.943 (0.044) |
ada | Corr | 0.941 (0.037) |
RF | Corr | 0.939 (0.039) |
SVMRad | Full | 0.936 (0.042) |
ada: boosting of classification trees with adaBoost; Lasso (least absolute shrinkage and selection operator; GBRM: generalized boosted regression model; Enet: elastic net; MLP: multi-layer perceptron; rf: random forest;; SVMRad: SVM with a radial kernel; full: full feature set; corr: High correlation filter; F: FLAIR; CE: T1-CE.