A novel approach for the automated segmentation and volume quantification of cardiac fats on computed tomography
About
The deposits of fat on the surroundings of the heart are correlated to several health risk factors such as atherosclerosis, carotid stiffness, coronary artery calcification, atrial fibrillation and many others. These deposits vary unrelated to obesity, which reinforces its direct segmentation for further quantification. However, manual segmentation of these fats has not been widely deployed in clinical practice due to the required human workload and consequential high cost of physicians and technicians. In this work, we propose a unified method for an autonomous segmentation and quantification of two types of cardiac fats. The segmented fats are termed epicardial and mediastinal, and stand apart from each other by the pericardium. Much effort was devoted to achieve minimal user intervention. The proposed methodology mainly comprises registration and classification algorithms to perform the desired segmentation. We compare the performance of several classification algorithms on this task, including neural networks, probabilistic models and decision tree algorithms. Experimental results of the proposed methodology have shown that the mean accuracy regarding both epicardial and mediastinal fats is 98.5% (99.5% if the features are normalized), with a mean true positive rate of 98.0%. In average, the Dice similarity index was equal to 97.6%.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Area Localization | instances 1024 x 1024 | Mean Visited Elements5.24e+5 | 28 | |
| Image content search | Synthetic 2048 x 2048 instances | Mean Visited Elements2.10e+6 | 21 | |
| Cardiac Fat Segmentation | Cardiac Fat CT Epicardial | F1 Score98.1 | 7 | |
| Cardiac Fat Segmentation | Cardiac Fat CT Dataset Mediastinal | Accuracy98.4 | 6 | |
| Cardiac Fat Segmentation | Cardiac Fat CT Dataset Pericardium | -- | 5 |