Coronary Artery Plaque Characterization from CCTA Scans using Deep Learning and Radiomics
December 12, 2019 Β· Declared Dead Β· π International Conference on Medical Image Computing and Computer-Assisted Intervention
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Authors
Felix Denzinger, Michael Wels, Nishant Ravikumar, Katharina Breininger, Anika ReidelshΓΆfer, Joachim Eckert, Michael SΓΌhling, Axel Schmermund, Andreas Maier
arXiv ID
1912.06075
Category
eess.IV: Image & Video Processing
Cross-listed
cs.CV,
cs.LG,
stat.ML
Citations
22
Venue
International Conference on Medical Image Computing and Computer-Assisted Intervention
Last Checked
3 months ago
Abstract
Assessing coronary artery plaque segments in coronary CT angiography scans is an important task to improve patient management and clinical outcomes, as it can help to decide whether invasive investigation and treatment are necessary. In this work, we present three machine learning approaches capable of performing this task. The first approach is based on radiomics, where a plaque segmentation is used to calculate various shape-, intensity- and texture-based features under different image transformations. A second approach is based on deep learning and relies on centerline extraction as sole prerequisite. In the third approach, we fuse the deep learning approach with radiomic features. On our data the methods reached similar scores as simulated fractional flow reserve (FFR) measurements, which - in contrast to our methods - requires an exact segmentation of the whole coronary tree and often time-consuming manual interaction. In literature, the performance of simulated FFR reaches an AUC between 0.79-0.93 predicting an abnormal invasive FFR that demands revascularization. The radiomics approach achieves an AUC of 0.86, the deep learning approach 0.84 and the combined method 0.88 for predicting the revascularization decision directly. While all three proposed methods can be determined within seconds, the FFR simulation typically takes several minutes. Provided representative training data in sufficient quantities, we believe that the presented methods can be used to create systems for fully automatic non-invasive risk assessment for a variety of adverse cardiac events.
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