Review Article

Current Status and Future Perspectives of Artificial Intelligence in Magnetic Resonance Breast Imaging

Table 2

Segmentation applications in breast MRI.

DL techniqueEvaluation resultsUsed datasetReference

2D U-net applied slice-by-sliceDice = 95.90 ± 0.74
Acc = 98.93 ± 0.15 Sn = 95.95 ± 0.69
Sp = 99.34 ± 0.17
42 patients DCE-MRI[69]
3TP U-netDice = 61 ± 11.84
Acc = 99 ± 0.01
Sn = 68.28 ± 9.73
Sp = 100 ± 9.73
35 DCE-MRI 4D data[60]
GOCS-DLP shape prior based on semantic segmentation based on DLDice = 77 ± 13117 patients DCE-MRI, T2- and T1-weighted images[70]
2D U-net applied slice-by-sliceDice = 9750 DCE-MR images[71]
Hierarchical multistage U-net with dice lossDice = 72 ± 24
Sn = 75 ± 23
Training set: 224 DCE-MRI cases; test set: 48 DCE-MRI cases[72]
Comparison of 2D U-net and 2D SegNet models with transfer learning from DCE-MRI to DWIDice = 72 ± 16Training: 39 DCE-MR cases and 15 DWI-MR cases; testing: 10 representative DWI-MR slices[73]
2D U-net applied slice-by-slice to multiplanar sections followed by voxel-level fusionDice = 96 ± 0.3
Acc = 99.16 ± 0.13
Sn = 96.85 ± 0.47
Sp = 96.85 ± 0.47
Training: 42 + 88 T1-weighted MRI series (10-fold cross-validation)[61]

The most common performance measures are the Dice coefficient and the by-voxel accuracy (ACC), sensitivity (Sn), and specificity (Sp). All performance values reported are percentages.