S-Net: a multiple cross aggregation convolutional architecture for automatic segmentation of small/thin structures for cardiovascular applications

Author:

Mu Nan,Lyu Zonghan,Rezaeitaleshmahalleh Mostafa,Bonifas Cassie,Gosnell Jordan,Haw Marcus,Vettukattil Joseph,Jiang Jingfeng

Abstract

With the success of U-Net or its variants in automatic medical image segmentation, building a fully convolutional network (FCN) based on an encoder-decoder structure has become an effective end-to-end learning approach. However, the intrinsic property of FCNs is that as the encoder deepens, higher-level features are learned, and the receptive field size of the network increases, which results in unsatisfactory performance for detecting low-level small/thin structures such as atrial walls and small arteries. To address this issue, we propose to keep the different encoding layer features at their original sizes to constrain the receptive field from increasing as the network goes deeper. Accordingly, we develop a novel S-shaped multiple cross-aggregation segmentation architecture named S-Net, which has two branches in the encoding stage, i.e., a resampling branch to capture low-level fine-grained details and thin/small structures and a downsampling branch to learn high-level discriminative knowledge. In particular, these two branches learn complementary features by residual cross-aggregation; the fusion of the complementary features from different decoding layers can be effectively accomplished through lateral connections. Meanwhile, we perform supervised prediction at all decoding layers to incorporate coarse-level features with high semantic meaning and fine-level features with high localization capability to detect multi-scale structures, especially for small/thin volumes fully. To validate the effectiveness of our S-Net, we conducted extensive experiments on the segmentation of cardiac wall and intracranial aneurysm (IA) vasculature, and quantitative and qualitative evaluations demonstrated the superior performance of our method for predicting small/thin structures in medical images.

Funder

National Institutes of Health

American Heart Association

Spectrum Health Foundation

Publisher

Frontiers Media SA

Subject

Physiology (medical),Physiology

Reference46 articles.

1. Recurrent residual U-Net for medical image segmentation;Alom;J. Med. Imaging,2019

2. Segnet: a deep convolutional encoder-decoder architecture for image segmentation;Badrinarayanan;IEEE Trans. Pattern Analysis Mach. Intell.,2017

3. Brain tumor segmentation based on 3D residual U-Net;Bhalerao,2019

4. Characterization of cerebral aneurysms for assessing risk of rupture by using patient-specific computational hemodynamics models;Cebral;Am. J. Neuroradiol.,2005

5. DRINet for medical image segmentation;Chen;IEEE Trans. Med. Imaging,2018

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