Bioresorbable Scaffold Visualization in IVOCT Images Using CNNs and Weakly Supervised Localization
Nils Gessert, Sarah Latus, Youssef S. Abdelwahed, David M., Leistner, Matthias Lutz, Alexander Schlaefer

TL;DR
This paper introduces a deep learning approach using CNNs and weakly supervised localization to automatically visualize bioresorbable scaffolds in IVOCT images, reducing manual effort and improving detection accuracy.
Contribution
It presents a novel patch-based, weakly supervised localization method for bioresorbable scaffold visualization using only image-level labels, avoiding extensive pixel-level annotations.
Findings
Achieved 99.0% accuracy in stent classification
Enabled high-resolution visualization and 3D rendering
Reduced need for detailed pixel-level labels
Abstract
Bioresorbable scaffolds have become a popular choice for treatment of coronary heart disease, replacing traditional metal stents. Often, intravascular optical coherence tomography is used to assess potential malapposition after implantation and for follow-up examinations later on. Typically, the scaffold is manually reviewed by an expert, analyzing each of the hundreds of image slices. As this is time consuming, automatic stent detection and visualization approaches have been proposed, mostly for metal stent detection based on classic image processing. As bioresorbable scaffolds are harder to detect, recent approaches have used feature extraction and machine learning methods for automatic detection. However, these methods require detailed, pixel-level labels in each image slice and extensive feature engineering for the particular stent type which might limit the approaches'…
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