Literature DB >> 26724926

Segmentation of the human spinal cord.

Benjamin De Leener1,2, Manuel Taso3,4,5, Julien Cohen-Adad1,2, Virginie Callot6,7.   

Abstract

Segmenting the spinal cord contour is a necessary step for quantifying spinal cord atrophy in various diseases. Delineating gray matter (GM) and white matter (WM) is also useful for quantifying GM atrophy or for extracting multiparametric MRI metrics into specific WM tracts. Spinal cord segmentation in clinical research is not as developed as brain segmentation, however with the substantial improvement of MR sequences adapted to spinal cord MR investigations, the field of spinal cord MR segmentation has advanced greatly within the last decade. Segmentation techniques with variable accuracy and degree of complexity have been developed and reported in the literature. In this paper, we review some of the existing methods for cord and WM/GM segmentation, including intensity-based, surface-based, and image-based methods. We also provide recommendations for validating spinal cord segmentation techniques, as it is important to understand the intrinsic characteristics of the methods and to evaluate their performance and limitations. Lastly, we illustrate some applications in the healthy and pathological spinal cord. One conclusion of this review is that robust and automatic segmentation is clinically relevant, as it would allow for longitudinal and group studies free from user bias as well as reproducible multicentric studies in large populations, thereby helping to further our understanding of the spinal cord pathophysiology and to develop new criteria for early detection of subclinical evolution for prognosis prediction and for patient management. Another conclusion is that at the present time, no single method adequately segments the cord and its substructure in all the cases encountered (abnormal intensities, loss of contrast, deformation of the cord, etc.). A combination of different approaches is thus advised for future developments, along with the introduction of probabilistic shape models. Maturation of standardized frameworks, multiplatform availability, inclusion in large suite and data sharing would also ultimately benefit to the community.

Entities:  

Keywords:  Gray matter; MRI; Segmentation; Spinal cord; White matter

Mesh:

Year:  2016        PMID: 26724926     DOI: 10.1007/s10334-015-0507-2

Source DB:  PubMed          Journal:  MAGMA        ISSN: 0968-5243            Impact factor:   2.310


  99 in total

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Authors:  C Liu; S Edwards; Q Gong; N Roberts; L D Blumhardt
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Review 7.  The current state-of-the-art of spinal cord imaging: applications.

Authors:  C A Wheeler-Kingshott; P W Stroman; J M Schwab; M Bacon; R Bosma; J Brooks; D W Cadotte; T Carlstedt; O Ciccarelli; J Cohen-Adad; A Curt; N Evangelou; M G Fehlings; M Filippi; B J Kelley; S Kollias; A Mackay; C A Porro; S Smith; S M Strittmatter; P Summers; A J Thompson; I Tracey
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8.  In vivo DTI evaluation of white matter tracts in rat spinal cord.

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10.  A 3T MR imaging investigation of the topography of whole spinal cord atrophy in multiple sclerosis.

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Review 5.  Magnetic resonance imaging in immune-mediated myelopathies.

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6.  Automated Cervical Spinal Cord Segmentation in Real-World MRI of Multiple Sclerosis Patients by Optimized Hybrid Residual Attention-Aware Convolutional Neural Networks.

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7.  Multiple sclerosis lesions affect intrinsic functional connectivity of the spinal cord.

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8.  Fully automated grey and white matter spinal cord segmentation.

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9.  A 3D subject-specific model of the spinal subarachnoid space with anatomically realistic ventral and dorsal spinal cord nerve rootlets.

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Journal:  Fluids Barriers CNS       Date:  2017-12-19

10.  Spinal cord gray matter segmentation using deep dilated convolutions.

Authors:  Christian S Perone; Evan Calabrese; Julien Cohen-Adad
Journal:  Sci Rep       Date:  2018-04-13       Impact factor: 4.379

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