Table 2.
AI applications in CCTA.
| Method | Tasks | Data | Measure | Value | Calculate time or cost | Paper |
|---|---|---|---|---|---|---|
| ML | Modifications to the reconstructed coronary tree | 122 | Average quality score | 93 ± 4 | Within 2 minutes | [24] |
| Identification of the degree of coronary stenosis | 42 | AUC | 0.94 | Less than 1 second | [25] | |
| Characterization of coronary plaques | 32 | DSC | 83.2% | — | [26] | |
| DL | Coronary plaque characterization and detection of coronary stenosis | 163 | Accuracy | 77% | — | [27] |
| Calculation of coronary functional parameters | 1052 | AUC | 0.78 | A few seconds | [28] | |
| Segmentation of left ventricular myocardium and calculation of coronary functional parameters | 126 | AUC | 0.74 ± 0.02 | — | [30] | |
| Segmentation of left ventricular myocardium and calculation of coronary functional parameters | 126 | AUC | 0.76 | — | [31] |