Literature DB >> 34794095

DGMSNet: Spine segmentation for MR image by a detection-guided mixed-supervised segmentation network.

Shumao Pang1, Chunlan Pang2, Zhihai Su3, Liyan Lin1, Lei Zhao1, Yangfan Chen1, Yujia Zhou1, Hai Lu3, Qianjin Feng4.   

Abstract

Spine segmentation for magnetic resonance (MR) images is important for various spinal diseases diagnosis and treatment, yet is still a challenge due to the inter-class similarity, i.e., shape and appearance similarities appear in neighboring spinal structures. To reduce inter-class similarity, existing approaches focus on enhancing the semantic information of spinal structures in the supervised segmentation network, whose generalization is limited by the size of pixel-level annotated dataset. In this paper, we propose a novel detection-guided mixed-supervised segmentation network (DGMSNet) to achieve automated spine segmentation. DGMSNet consists of a segmentation path for generating the spine segmentation prediction and a detection path (i.e., regression network) for producing heatmaps prediction of keypoints. A detection-guided learner in the detection path is introduced to generate a dynamic parameter, which is employed to produce a semantic feature map for segmentation path by adaptive convolution. A mixed-supervised loss comprised of a weighted combination of segmentation loss and detection loss is utilized to train DGMSNet with a pixel-level annotated dataset and a keypoints-detection annotated dataset. During training, a series of models are trained with various loss weights. In inference, a detection-guided label fusion approach is proposed to integrate the segmentation predictions generated by those trained models according to the consistency of predictions from the segmentation path and detection path. Experiments on T2-weighted MR images show that DGMSNet achieves the state-of-the-art performance with mean Dice similarity coefficients of 94.39% and 87.21% for segmentations of 5 vertebral bodies and 5 intervertebral discs on the in-house and public datasets respectively.
Copyright © 2021 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Deep learning; Ensemble learning; Mixed-supervised segmentation; Spine

Mesh:

Year:  2021        PMID: 34794095     DOI: 10.1016/j.media.2021.102261

Source DB:  PubMed          Journal:  Med Image Anal        ISSN: 1361-8415            Impact factor:   8.545


  3 in total

Review 1.  Current and Future Applications of the Kambin's Triangle in Lumbar Spine Surgery.

Authors:  Romaric Waguia; Nithin Gupta; Katherine L Gamel; Alvan Ukachukwu
Journal:  Cureus       Date:  2022-06-06

2.  Tissue Recognition Based on Electrical Impedance Classified by Support Vector Machine in Spinal Operation Area.

Authors:  Bingrong Chen; Yongwang Shi; Jiahao Li; Jiliang Zhai; Liang Liu; Wenyong Liu; Lei Hu; Yu Zhao
Journal:  Orthop Surg       Date:  2022-08-01       Impact factor: 2.279

3.  Automated Magnetic Resonance Image Segmentation of Spinal Structures at the L4-5 Level with Deep Learning: 3D Reconstruction of Lumbar Intervertebral Foramen.

Authors:  Tao Chen; Zhi-Hai Su; Zheng Liu; Min Wang; Zhi-Fei Cui; Lei Zhao; Lian-Jun Yang; Wei-Cong Zhang; Xiang Liu; Jin Liu; Shu-Yuan Tan; Shao-Lin Li; Qian-Jin Feng; Shu-Mao Pang; Hai Lu
Journal:  Orthop Surg       Date:  2022-08-18       Impact factor: 2.279

  3 in total

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