Deep Local Global Refinement Network for Stent Analysis in IVOCT Images
Yuyu Guo

TL;DR
This paper introduces a deep local-global refinement network that significantly improves the automatic detection of stent strut points in IVOCT images, aiding faster and more accurate cardiovascular assessments.
Contribution
The study presents a novel deep neural network that combines local patch analysis with global appearance constraints for enhanced strut detection in IVOCT images.
Findings
Achieved 0.92 recall in strut detection
Achieved 0.91 precision in strut detection
Outperformed existing state-of-the-art methods
Abstract
Implantation of stents into coronary arteries is a common treatment option for patients with cardiovascular disease. Assessment of safety and efficacy of the stent implantation occurs via manual visual inspection of the neointimal coverage from intravascular optical coherence tomography (IVOCT) images. However, such manual assessment requires the detection of thousands of strut points within the stent. This is a challenging, tedious, and time-consuming task because the strut points usually appear as small, irregular shaped objects with inhomogeneous textures, and are often occluded by shadows, artifacts, and vessel walls. Conventional methods based on textures, edge detection, or simple classifiers for automated detection of strut points in IVOCT images have low recall and precision as they are, unable to adequately represent the visual features of the strut point for detection. In this…
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Taxonomy
TopicsCoronary Interventions and Diagnostics · Retinal Imaging and Analysis · Optical Coherence Tomography Applications
