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Publikační činnost
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Record type:
stať ve sborníku (D)
Home Department:
Centrum klinických neurověd (11704)
Title:
Atherosclerotic Plaque Stability Prediction from Longitudinal Ultrasound Images
Citace
Kybic, J., PAKIZER, D., KOZEL, J., Michalčová, P., Charvát, F. a Školoudík, D. Atherosclerotic Plaque Stability Prediction from Longitudinal Ultrasound Images.
In:
15th International Workshop, MLMI 2024: Machine Learning in Medical Imaging I 2024-10-06 Marrakesh.
Cham: Springer, 2025. s. 124-132. ISBN 978-3-031-73284-3.
Subtitle
Publication year:
2025
Obor:
Number of pages:
9
Page from:
124
Page to:
132
Form of publication:
Elektronická verze
ISBN code:
978-3-031-73284-3
ISSN code:
0302-9743
Proceedings title:
Machine Learning in Medical Imaging I
Proceedings:
Mezinárodní
Publisher name:
Springer
Place of publishing:
Cham
Country of Publication:
Sborník vydaný v zahraničí
Název konference:
15th International Workshop, MLMI 2024
Conference venue:
Marrakesh
Datum zahájení konference:
Typ akce podle státní
příslušnosti účastníků:
Celosvětová akce
WoS code:
001424557900013
EID:
2-s2.0-85208223317
Key words in English:
atherosclerosis; ultrasound; progression; risk factor; carotid artery; deep learning; biomedical image processing; regression analysis
Annotation in original language:
We aim to predict the stability of carotid artery plaques from longitudinal ultrasound images. This is important since atherosclerosis is the primary cause of heart disease and stroke. Accurately predicting plaque stability would allow for more targeted follow-up and treatment, saving healthcare costs.We analyze data from over 400 patients followed for 3 years, exceeding the size of previous studies. We first localize the carotid artery and segment the plaque within the images. A self-supervised learning approach was used for plaque segmentation, leveraging the power of unlabeled data. The plaque stability predictor uses three image channels derived from the ultrasound image and its segmentation. As an auxiliary task, we predict the plaque width, which helps to prevent overfitting. The balance between the criteria is maintained automatically.Our estimate of the plaque width correlated well with expert measurements (p = 0.56). We confirmed that there is a relationship between the plaque ultrasound appearance in longitudinal images and their stability. However, the future width correlation and the plaque stability prediction performance remained modest (AUC = 0.61), similar to previous studies.
Annotation in english language:
We aim to predict the stability of carotid artery plaques from longitudinal ultrasound images. This is important since atherosclerosis is the primary cause of heart disease and stroke. Accurately predicting plaque stability would allow for more targeted follow-up and treatment, saving healthcare costs.We analyze data from over 400 patients followed for 3 years, exceeding the size of previous studies. We first localize the carotid artery and segment the plaque within the images. A self-supervised learning approach was used for plaque segmentation, leveraging the power of unlabeled data. The plaque stability predictor uses three image channels derived from the ultrasound image and its segmentation. As an auxiliary task, we predict the plaque width, which helps to prevent overfitting. The balance between the criteria is maintained automatically.Our estimate of the plaque width correlated well with expert measurements (p = 0.56). We confirmed that there is a relationship between the plaque ultrasound appearance in longitudinal images and their stability. However, the future width correlation and the plaque stability prediction performance remained modest (AUC = 0.61), similar to previous studies.
References
Reference
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