Characterization of coronary artery pathological formations from OCT imaging using deep learning

Coronary artery disease is the number one health hazard leading to the pathological formations in coronary artery tissues. In severe cases, they can lead to myocardial infarction and sudden death. Optical Coherence Tomography (OCT) is an interferometric imaging modality, which has been recently used...

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Veröffentlicht in:Biomedical optics express 2018-10, Vol.9 (10), p.4936-4960
Hauptverfasser: Abdolmanafi, Atefeh, Duong, Luc, Dahdah, Nagib, Adib, Ibrahim Ragui, Cheriet, Farida
Format: Artikel
Sprache:eng
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Zusammenfassung:Coronary artery disease is the number one health hazard leading to the pathological formations in coronary artery tissues. In severe cases, they can lead to myocardial infarction and sudden death. Optical Coherence Tomography (OCT) is an interferometric imaging modality, which has been recently used in cardiology to characterize coronary artery tissues providing high resolution ranging from 10 to 20 . In this study, we investigate different deep learning models for robust tissue characterization to learn the various intracoronary pathological formations caused by Kawasaki disease (KD) from OCT imaging. The experiments are performed on 33 retrospective cases comprising of pullbacks of intracoronary cross-sectional images obtained from different pediatric patients with KD. Our approach evaluates deep features computed from three different pre-trained convolutional networks. Then, a majority voting approach is applied to provide the final classification result. The results demonstrate high values of accuracy, sensitivity, and specificity for each tissue (up to 0.99 ± 0.01). Hence, deep learning models and especially, majority voting method are robust for automatic interpretation of the OCT images.
ISSN:2156-7085
2156-7085
DOI:10.1364/BOE.9.004936