Recognizing artery segments on carotid ultrasonography using embedding concatenation of deep image and vision-language models.
Authors
Affiliations (2)
Affiliations (2)
- National Chengchi University, No. 64, Sec. 2, ZhiNan Road, Wenshan, Taipei, 11605, TAIWAN.
- Department of Internal Medicine, Ditmanson Medical Foundation Chia-Yi Christian Hospital, Ditmanson Medical Foundation Chia-Yi Christian Hospital, Chiayi, 60002, TAIWAN.
Abstract
Evaluating large artery atherosclerosis is critical for predicting and preventing ischemic strokes. Ultrasonographic assessment of the carotid arteries is the preferred first-line examination due to its ease of use, noninvasive, and absence of radiation exposure. This study proposed an automated classification model for the common carotid artery (CCA), carotid bulb, internal carotid artery (ICA), and external carotid artery (ECA) to enhance the quantification of carotid artery examinations.
Approach: A total of 2,943 B-mode ultrasound images (CCA: 1,563; bulb: 611; ICA: 476; ECA: 293) from 288 patients were collected. Three distinct sets of embedding features were extracted from artificial intelligence networks including pre-trained DenseNet201, vision Transformer (ViT), and echo contrastive language-image pre-training (EchoCLIP) models using deep learning architectures for pattern recognition. These features were then combined in a support vector machine (SVM) classifier to interpret the anatomical structures in B-mode images.
Main results: After ten-fold cross-validation, the model achieved an accuracy of 82.3%, which was significantly better than using individual feature sets, with a p-value of <0.001.
Significance: The proposed model could make carotid artery examinations more accurate and consistent with the achieved classification accuracy. The source code is available at https://github.com/buddykeywordw/Artery-Segments-Recognition
.