Vessel Segmentation and Catheter Detection in X-Ray Angiograms Using Superpixels
Hamid R. Fazlali, Nader Karimi, S.M. Reza Soroushmehr, Shahram, Shirani, Brahmajee.K. Nallamothu, Kevin R. Ward, Shadrokh Samavi, Kayvan, Najarian

TL;DR
This paper presents an automated superpixel-based framework for coronary artery segmentation, catheter detection, and centerline extraction in X-ray angiograms, improving accuracy and speed over previous methods.
Contribution
It introduces a multi-scale superpixel segmentation approach combined with vesselness measures and orthogonal line refinement, along with a novel catheter detection and tracking method.
Findings
Achieved better segmentation accuracy than previous methods.
Reduced false positive rate in catheter detection.
Performed faster in processing challenging datasets.
Abstract
Coronary artery disease (CAD) is the leading causes of death around the world. One of the most common imaging methods for diagnosing this disease is X-ray angiography. Diagnosing using these images is usually challenging due to non-uniform illumination, low contrast, presence of other body tissues, presence of catheter etc. These challenges make the diagnoses task of cardiologists tougher and more prone to misdiagnosis. In this paper we propose a new automated framework for coronary arteries segmentation, catheter detection and center-line extraction in x-ray angiography images. Our proposed segmentation method is based on superpixels. In this method at first three different superpixel scales are exploited and a measure for vesselness probability of each superpixel is determined. A majority voting is used for obtaining an initial segmentation map from these three superpixel scales. This…
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Taxonomy
TopicsRetinal Imaging and Analysis · Medical Image Segmentation Techniques · Cerebrovascular and Carotid Artery Diseases
