Literature DB >> 34352654

Automatic multiclass intramedullary spinal cord tumor segmentation on MRI with deep learning.

Andreanne Lemay1, Charley Gros1, Zhizheng Zhuo2, Jie Zhang2, Yunyun Duan2, Julien Cohen-Adad3, Yaou Liu4.   

Abstract

Spinal cord tumors lead to neurological morbidity and mortality. Being able to obtain morphometric quantification (size, location, growth rate) of the tumor, edema, and cavity can result in improved monitoring and treatment planning. Such quantification requires the segmentation of these structures into three separate classes. However, manual segmentation of three-dimensional structures is time consuming, tedious and prone to intra- and inter-rater variability, motivating the development of automated methods. Here, we tailor a model adapted to the spinal cord tumor segmentation task. Data were obtained from 343 patients using gadolinium-enhanced T1-weighted and T2-weighted MRI scans with cervical, thoracic, and/or lumbar coverage. The dataset includes the three most common intramedullary spinal cord tumor types: astrocytomas, ependymomas, and hemangioblastomas. The proposed approach is a cascaded architecture with U-Net-based models that segments tumors in a two-stage process: locate and label. The model first finds the spinal cord and generates bounding box coordinates. The images are cropped according to this output, leading to a reduced field of view, which mitigates class imbalance. The tumor is then segmented. The segmentation of the tumor, cavity, and edema (as a single class) reached 76.7 ± 1.5% of Dice score and the segmentation of tumors alone reached 61.8 ± 4.0% Dice score. The true positive detection rate was above 87% for tumor, edema, and cavity. To the best of our knowledge, this is the first fully automatic deep learning model for spinal cord tumor segmentation. The multiclass segmentation pipeline is available in the Spinal Cord Toolbox (https://spinalcordtoolbox.com/). It can be run with custom data on a regular computer within seconds.
Copyright © 2021 The Authors. Published by Elsevier Inc. All rights reserved.

Entities:  

Keywords:  Automatic segmentation; CNN; Deep learning; MRI; Multiclass; Spinal cord tumor

Year:  2021        PMID: 34352654     DOI: 10.1016/j.nicl.2021.102766

Source DB:  PubMed          Journal:  Neuroimage Clin        ISSN: 2213-1582            Impact factor:   4.881


  3 in total

Review 1.  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

2.  The value of quantitative magnetic resonance imaging signal intensity in distinguishing between spinal meningiomas and schwannomas.

Authors:  Nguyen Duy Hung; Le Thanh Dung; Dang Khanh Huyen; Ngo Quang Duy; Dong-Van He; Nguyen Minh Duc
Journal:  Int J Med Sci       Date:  2022-06-21       Impact factor: 3.642

Review 3.  Surgical approaches to intramedullary spinal cord astrocytomas in the age of genomics.

Authors:  Andrew M Hersh; George I Jallo; Nir Shimony
Journal:  Front Oncol       Date:  2022-09-06       Impact factor: 5.738

  3 in total

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