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Diagnosis of intracranial aneurysms by computed tomography angiography using deep learning-based detection and segmentation

Authors :
You, Wei
Feng, Junqiang
Lu, Jing
Chen, Ting
Liu, Xinke
Wu, Zhenzhou
Gong, Guoyang
Sui, Yutong
Wang, Yanwen
Zhang, Yifan
Ye, Wanxing
Chen, Xiheng
Lv, Jian
Wei, Dachao
Tang, Yudi
Deng, Dingwei
Gui, Siming
Lin, Jun
Chen, Peike
Wang, Ziyao
Gong, Wentao
Wang, Yang
Zhu, Chengcheng
Zhang, Yue
Saloner, David A
Mitsouras, Dimitrios
Guan, Sheng
Li, Youxiang
Jiang, Yuhua
Wang, Yan
Source :
Journal of Neurointerventional Surgery; 2025, Vol. 17 Issue: 1 pe132-e138, 7p
Publication Year :
2025

Abstract

BackgroundDetecting and segmenting intracranial aneurysms (IAs) from angiographic images is a laborious task.ObjectiveTo evaluates a novel deep-learning algorithm, named vessel attention (VA)-Unet, for the efficient detection and segmentation of IAs.MethodsThis retrospective study was conducted using head CT angiography (CTA) examinations depicting IAs from two hospitals in China between 2010 and 2021. Training included cases with subarachnoid hemorrhage (SAH) and arterial stenosis, common accompanying vascular abnormalities. Testing was performed in cohorts with reference-standard digital subtraction angiography (cohort 1), with SAH (cohort 2), acquired outside the time interval of training data (cohort 3), and an external dataset (cohort 4). The algorithm’s performance was evaluated using sensitivity, recall, false positives per case (FPs/case), and Dice coefficient, with manual segmentation as the reference standard.ResultsThe study included 3190 CTA scans with 4124 IAs. Sensitivity, recall, and FPs/case for detection of IAs were, respectively, 98.58%, 96.17%, and 2.08 in cohort 1; 95.00%, 88.8%, and 3.62 in cohort 2; 96.00%, 93.77%, and 2.60 in cohort 3; and, 96.17%, 94.05%, and 3.60 in external cohort 4. The segmentation accuracy, as measured by the Dice coefficient, was 0.78, 0.71, 0.71, and 0.66 for cohorts 1–4, respectively. VA-Unet detection recall and FPs/case and segmentation accuracy were affected by several clinical factors, including aneurysm size, bifurcation aneurysms, and the presence of arterial stenosis and SAH.ConclusionsVA-Unet accurately detected and segmented IAs in head CTA comparably to expert interpretation. The proposed algorithm has significant potential to assist radiologists in efficiently detecting and segmenting IAs from CTA images.

Details

Language :
English
ISSN :
17598478 and 17598486
Volume :
17
Issue :
1
Database :
Supplemental Index
Journal :
Journal of Neurointerventional Surgery
Publication Type :
Periodical
Accession number :
ejs68424989
Full Text :
https://doi.org/10.1136/jnis-2023-021022