Literature DB >> 30176546

Spine-GAN: Semantic segmentation of multiple spinal structures.

Zhongyi Han1, Benzheng Wei2, Ashley Mercado3, Stephanie Leung3, Shuo Li4.   

Abstract

Spinal clinicians still rely on laborious workloads to conduct comprehensive assessments of multiple spinal structures in MRIs, in order to detect abnormalities and discover possible pathological factors. The objective of this work is to perform automated segmentation and classification (i.e., normal and abnormal) of intervertebral discs, vertebrae, and neural foramen in MRIs in one shot, which is called semantic segmentation that is extremely urgent to assist spinal clinicians in diagnosing neural foraminal stenosis, disc degeneration, and vertebral deformity as well as discovering possible pathological factors. However, no work has simultaneously achieved the semantic segmentation of intervertebral discs, vertebrae, and neural foramen due to three-fold unusual challenges: 1) Multiple tasks, i.e., simultaneous semantic segmentation of multiple spinal structures, are more difficult than individual tasks; 2) Multiple targets: average 21 spinal structures per MRI require automated analysis yet have high variety and variability; 3) Weak spatial correlations and subtle differences between normal and abnormal structures generate dynamic complexity and indeterminacy. In this paper, we propose a Recurrent Generative Adversarial Network called Spine-GAN for resolving above-aforementioned challenges. Firstly, Spine-GAN explicitly solves the high variety and variability of complex spinal structures through an atrous convolution (i.e., convolution with holes) autoencoder module that is capable of obtaining semantic task-aware representation and preserving fine-grained structural information. Secondly, Spine-GAN dynamically models the spatial pathological correlations between both normal and abnormal structures thanks to a specially designed long short-term memory module. Thirdly, Spine-GAN obtains reliable performance and efficient generalization by leveraging a discriminative network that is capable of correcting predicted errors and global-level contiguity. Extensive experiments on MRIs of 253 patients have demonstrated that Spine-GAN achieves high pixel accuracy of 96.2%, Dice coefficient of 87.1%, Sensitivity of 89.1% and Specificity of 86.0%, which reveals its effectiveness and potential as a clinical tool.
Copyright © 2018 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Autoencoder; Classification; Computer-aided detection and diagnosis; Generative adversarial network; LSTM; Magnetic resonance imaging; Segmentation; Spine

Mesh:

Year:  2018        PMID: 30176546     DOI: 10.1016/j.media.2018.08.005

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


  16 in total

1.  Active Appearance Model Induced Generative Adversarial Network for Controlled Data Augmentation.

Authors:  Jianfei Liu; Christine Shen; Tao Liu; Nancy Aguilera; Johnny Tam
Journal:  Med Image Comput Comput Assist Interv       Date:  2019-10-10

2.  Shape constrained fully convolutional DenseNet with adversarial training for multiorgan segmentation on head and neck CT and low-field MR images.

Authors:  Nuo Tong; Shuiping Gou; Shuyuan Yang; Minsong Cao; Ke Sheng
Journal:  Med Phys       Date:  2019-05-06       Impact factor: 4.071

Review 3.  Current development and prospects of deep learning in spine image analysis: a literature review.

Authors:  Biao Qu; Jianpeng Cao; Chen Qian; Jinyu Wu; Jianzhong Lin; Liansheng Wang; Lin Ou-Yang; Yongfa Chen; Liyue Yan; Qing Hong; Gaofeng Zheng; Xiaobo Qu
Journal:  Quant Imaging Med Surg       Date:  2022-06

4.  The current role and future directions of imaging in failed back surgery syndrome patients: an educational review.

Authors:  Richard L Witkam; Constantinus F Buckens; Johan W M van Goethem; Kris C P Vissers; Dylan J H A Henssen
Journal:  Insights Imaging       Date:  2022-07-15

5.  Automatic detection and voxel-wise mapping of lumbar spine Modic changes with deep learning.

Authors:  Kenneth T Gao; Radhika Tibrewala; Madeline Hess; Upasana U Bharadwaj; Gaurav Inamdar; Thomas M Link; Cynthia T Chin; Valentina Pedoia; Sharmila Majumdar
Journal:  JOR Spine       Date:  2022-06-08

6.  Learning-based fully automated prediction of lumbar disc degeneration progression with specified clinical parameters and preliminary validation.

Authors:  Jason Pui Yin Cheung; Xihe Kuang; Marcus Kin Long Lai; Kenneth Man-Chee Cheung; Jaro Karppinen; Dino Samartzis; Honghan Wu; Fengdong Zhao; Zhaomin Zheng; Teng Zhang
Journal:  Eur Spine J       Date:  2021-10-17       Impact factor: 2.721

7.  Active Cell Appearance Model Induced Generative Adversarial Networks for Annotation-Efficient Cell Segmentation and Identification on Adaptive Optics Retinal Images.

Authors:  Jianfei Liu; Christine Shen; Nancy Aguilera; Catherine Cukras; Robert B Hufnagel; Wadih M Zein; Tao Liu; Johnny Tam
Journal:  IEEE Trans Med Imaging       Date:  2021-09-30       Impact factor: 11.037

8.  A Review on the Use of Artificial Intelligence in Spinal Diseases.

Authors:  Parisa Azimi; Taravat Yazdanian; Edward C Benzel; Hossein Nayeb Aghaei; Shirzad Azhari; Sohrab Sadeghi; Ali Montazeri
Journal:  Asian Spine J       Date:  2020-04-24

Review 9.  AI musculoskeletal clinical applications: how can AI increase my day-to-day efficiency?

Authors:  YiRang Shin; Sungjun Kim; Young Han Lee
Journal:  Skeletal Radiol       Date:  2021-08-03       Impact factor: 2.199

10.  Detection of Degenerative Changes on MR Images of the Lumbar Spine with a Convolutional Neural Network: A Feasibility Study.

Authors:  Nils Christian Lehnen; Robert Haase; Jennifer Faber; Theodor Rüber; Hartmut Vatter; Alexander Radbruch; Frederic Carsten Schmeel
Journal:  Diagnostics (Basel)       Date:  2021-05-19
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