Contour attention network for cerebrovascular segmentation from TOF‐MRA volumetric images

Author:

Yang Chaozhi1,Zhang Haiyan2,Chi Dianwei3,Li Yachuan1,Xiao Qian1,Bai Yun1,Li Zongmin14,Li Hongyi5,Li Hua6

Affiliation:

1. College of Computer Science and Technology China University of Petroleum (EastChina) Qingdao China

2. Weihai Chest Hospital Weihai China

3. School of Artificial Intelligence Yantai Institute of Technology Yantai China

4. Shengli College of China University of Petroleum Dongying China

5. Beijing Hospital, National Center of Gerontology Institute of Geriatric Medicine Chinese Academy of Medical Science Beijing China

6. Key Laboratory of Intelligent Information Processing Institute of Computing Technology Chinese Academy of Sciences Beijing China

Abstract

AbstractBackgroundCerebrovascular segmentation is a crucial step in the computer‐assisted diagnosis of cerebrovascular pathologies. However, accurate extraction of cerebral vessels from time‐of‐flight magnetic resonance angiography (TOF‐MRA) data is still challenging due to the complex topology and slender shape.PurposeThe existing deep learning‐based approaches pay more attention to the skeleton and ignore the contour, which limits the segmentation performance of the cerebrovascular structure. We aim to weight the contour of brain vessels in shallow features when concatenating with deep features. It helps to obtain more accurate cerebrovascular details and narrows the semantic gap between multilevel features.MethodsThis work proposes a novel framework for priority extraction of contours in cerebrovascular structures. We first design a neighborhood‐based algorithm to generate the ground truth of the cerebrovascular contour from original annotations, which can introduce useful shape information for the segmentation network. Moreover, We propose an encoder‐dual decoder‐based contour attention network (CA‐Net), which consists of the dilated asymmetry convolution block (DACB) and the Contour Attention Module (CAM). The ancillary decoder uses the DACB to obtain cerebrovascular contour features under the supervision of contour annotations. The CAM transforms these features into a spatial attention map to increase the weight of the contour voxels in main decoder to better restored the vessel contour details.ResultsThe CA‐Net is thoroughly validated using two publicly available datasets, and the experimental results demonstrate that our network outperforms the competitors for cerebrovascular segmentation. We achieved the average dice similarity coefficient () of 68.15 and 99.92% in natural and synthetic datasets. Our method segments cerebrovascular structures with better completeness.ConclusionsWe propose a new framework containing contour annotation generation and cerebrovascular segmentation network that better captures the tiny vessels and improve vessel connectivity.

Funder

National Basic Research Program of China

National Natural Science Foundation of China

Natural Science Foundation of Shandong Province

Publisher

Wiley

Subject

General Medicine

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