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. 2019 Mar 14;21:18. doi: 10.1186/s12968-019-0523-x

Table 3.

Analysis of 4800 Random Forest segmentations with available ground truth

Class Acc. TPR FPR MAE
DSC MSD RMS HD
mm mm mm
LVC 0.968 0.997 0.330 0.042 0.906 2.514 11.09
0.975 0.962 0.011
LVM 0.454 0.956 0.571 0.125 0.963 2.141 11.83
0.972 0.962 0.012
RVC 0.868 0.957 0.352 0.057 1.140 2.790 15.23
0.969 0.977 0.040
Av. 0.763 0.970 0.418 0.075 1.003 2.482 12.72
0.972 0.967 0.032
WH 0.954 0.966 0.148 0.035 1.156 2.762 12.52
0.978 0.984 0.027

4800 RF segmentation at various depths [5 40] and 500 trees. Manual contours were available through Biobank Application 2964. Classes are LV Cavity (LVC), LV Myocardium (LVM), RV Cavity (RVC), an average over the classes (Av.) and a binary segmentation of the whole heart (WH). First row for each class shows the binary classification accuracy for ‘poor’ and ‘good’ segmentations in the Dice Similarity Coefficient (DSC) ranges [0.0 0.7) and [0.7 1.0] respectively. Second row for each class shows the binary classification accuracy for ‘poor’ and ‘good’ segmentations in the Mean Surface Distance (MSD) ranges [>2.0mm] and [0.0mm 2.0mm] respectively. True-positive and false-positive rates are also shown. We report mean absolute errors (MAE) on the predictions of DSC and additional surface-distance metrics: root-mean-squared surface distance (RMS) and Hausdorff distance (HD)