Literature DB >> 31903406

Automatic segmentation of all lower limb muscles from high-resolution magnetic resonance imaging using a cascaded three-dimensional deep convolutional neural network.

Renkun Ni1, Craig H Meyer2, Silvia S Blemker2, Joseph M Hart3, Xue Feng1,2.   

Abstract

High-resolution magnetic resonance imaging with fat suppression can obtain accurate anatomical information of all 35 lower limb muscles and individual segmentation can facilitate quantitative analysis. However, due to limited contrast and edge information, automatic segmentation of the muscles is very challenging, especially for athletes whose muscles are all well developed and more compact than the average population. Deep convolutional neural network (DCNN)-based segmentation methods showed great promise in many clinical applications, however, a direct adoption of DCNN to lower limb muscle segmentation is challenged by the large three-dimensional (3-D) image size and lack of the direct usage of muscle location information. We developed a cascaded 3-D DCNN model with the first step to localize each muscle using low-resolution images and the second step to segment it using cropped high-resolution images with individually trained networks. The workflow was optimized to account for different characteristics of each muscle for improved accuracy and reduced training and testing time. A testing augmentation technique was proposed to smooth the segmentation contours. The segmentation performance of 14 muscles was within interobserver variability and 21 were slightly worse than humans.
© 2019 Society of Photo-Optical Instrumentation Engineers (SPIE).

Entities:  

Keywords:  3-D segmentation; cascaded network; deep convolutional neural network; lower limb muscle segmentation; magnetic resonance imaging

Year:  2019        PMID: 31903406      PMCID: PMC6935014          DOI: 10.1117/1.JMI.6.4.044009

Source DB:  PubMed          Journal:  J Med Imaging (Bellingham)        ISSN: 2329-4302


  15 in total

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Authors:  Benjamin Gilles; Dinesh K Pai
Journal:  Med Image Comput Comput Assist Interv       Date:  2008

4.  Prior knowledge, random walks and human skeletal muscle segmentation.

Authors:  P Y Baudin; N Azzabou; P G Carlier; Nikos Paragios
Journal:  Med Image Comput Comput Assist Interv       Date:  2012

5.  Adding muscle where you need it: non-uniform hypertrophy patterns in elite sprinters.

Authors:  G G Handsfield; K R Knaus; N M Fiorentino; C H Meyer; J M Hart; S S Blemker
Journal:  Scand J Med Sci Sports       Date:  2016-07-04       Impact factor: 4.221

6.  Faster R-CNN: Towards Real-Time Object Detection with Region Proposal Networks.

Authors:  Shaoqing Ren; Kaiming He; Ross Girshick; Jian Sun
Journal:  IEEE Trans Pattern Anal Mach Intell       Date:  2016-06-06       Impact factor: 6.226

7.  Leg power and hopping stiffness: relationship with sprint running performance.

Authors:  S M Chelly; C Denis
Journal:  Med Sci Sports Exerc       Date:  2001-02       Impact factor: 5.411

8.  N4ITK: improved N3 bias correction.

Authors:  Nicholas J Tustison; Brian B Avants; Philip A Cook; Yuanjie Zheng; Alexander Egan; Paul A Yushkevich; James C Gee
Journal:  IEEE Trans Med Imaging       Date:  2010-04-08       Impact factor: 10.048

9.  Relationships of peak leg power, 1 maximal repetition half back squat, and leg muscle volume to 5-m sprint performance of junior soccer players.

Authors:  Mohamed Souhaiel Chelly; Najet Chérif; Mohamed Ben Amar; Souhail Hermassi; Mourad Fathloun; Ezdine Bouhlel; Zouhair Tabka; Roy J Shephard
Journal:  J Strength Cond Res       Date:  2010-01       Impact factor: 3.775

10.  Inter-sport variability of muscle volume distribution identified by segmental bioelectrical impedance analysis in four ball sports.

Authors:  Yosuke Yamada; Yoshihisa Masuo; Eitaro Nakamura; Shingo Oda
Journal:  Open Access J Sports Med       Date:  2013-04-12
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  4 in total

1.  Automatic quadriceps and patellae segmentation of MRI with cascaded U2 -Net and SASSNet deep learning model.

Authors:  Ruida Cheng; Marion Crouzier; François Hug; Kylie Tucker; Paul Juneau; Evan McCreedy; William Gandler; Matthew J McAuliffe; Frances T Sheehan
Journal:  Med Phys       Date:  2021-11-22       Impact factor: 4.506

Review 2.  Overview of MR Image Segmentation Strategies in Neuromuscular Disorders.

Authors:  Augustin C Ogier; Marc-Adrien Hostin; Marc-Emmanuel Bellemare; David Bendahan
Journal:  Front Neurol       Date:  2021-03-25       Impact factor: 4.003

3.  Deep learning for automatic segmentation of thigh and leg muscles.

Authors:  Abramo Agosti; Enea Shaqiri; Matteo Paoletti; Francesca Solazzo; Niels Bergsland; Giulia Colelli; Giovanni Savini; Shaun I Muzic; Francesco Santini; Xeni Deligianni; Luca Diamanti; Mauro Monforte; Giorgio Tasca; Enzo Ricci; Stefano Bastianello; Anna Pichiecchio
Journal:  MAGMA       Date:  2021-10-19       Impact factor: 2.533

4.  Convolutional neural networks for the automatic segmentation of lumbar paraspinal muscles in people with low back pain.

Authors:  E O Wesselink; J M Elliott; M W Coppieters; M J Hancock; B Cronin; A Pool-Goudzwaard; K A Weber Ii
Journal:  Sci Rep       Date:  2022-08-05       Impact factor: 4.996

  4 in total

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