A hybrid pipeline for carotid artery segmentation using YOLOv11n and contour models
Gerges M. Salama, Mohammed Safy, Dina A. Hassanin, Ashraf A. M. Khalaf, Mahmoud Khaled Abd-Ellah

TL;DR
This paper introduces a fast and accurate hybrid system for automatically segmenting carotid arteries in ultrasound images, improving detection of vascular disease.
Contribution
A novel hybrid pipeline combining YOLOv11n and contour models for automatic carotid artery segmentation in both transverse and longitudinal sections.
Findings
The pipeline achieved 94.9% Dice index and 97.7% accuracy for longitudinal carotid artery segmentation.
For transverse sections, the system reached 90.8% Dice index and 99.6% accuracy.
The system operates in near real-time (<1 second) on low-end hardware, showing computational efficiency.
Abstract
Carotid artery segmentation is critical for determining the degree of vascular disease, and for recommending treatment options. Early detection of carotid atherosclerosis is critical for preventing stroke. Stroke-related brain damage can cause deficits in speech or vision, and large strokes can be fatal. However, automatic segmentation of the carotid artery lumen remains difficult due to the low quality of US images, and the existence of stenosis, jugular veins, and abnormalities in carotid images. This article presents a hybrid pipeline for segmenting both carotid transverse and longitudinal lumens without any user interaction. This hybrid pipeline starts with automatically localizing the carotid artery lumen in the transverse and longitudinal sections via YOLOv11n. Then, a multistage preprocessing framework was applied to the transverse section before its lumen was segmented by the…
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Taxonomy
TopicsRetinal Imaging and Analysis · Cerebrovascular and Carotid Artery Diseases · Medical Image Segmentation Techniques
