Literature DB >> 32064300

Anatomically consistent CNN-based segmentation of organs-at-risk in cranial radiotherapy.

Pawel Mlynarski1, Hervé Delingette1, Hamza Alghamdi2, Pierre-Yves Bondiau2, Nicholas Ayache1.   

Abstract

Planning of radiotherapy involves accurate segmentation of a large number of organs at risk (OAR), i.e., organs for which irradiation doses should be minimized to avoid important side effects of the therapy. We propose a deep learning method for segmentation of OAR inside the head, from magnetic resonance images (MRIs). Our system performs segmentation of eight structures: eye, lens, optic nerve, optic chiasm, pituitary gland, hippocampus, brainstem, and brain. We propose an efficient algorithm to train neural networks for an end-to-end segmentation of multiple and nonexclusive classes, addressing problems related to computational costs and missing ground truth segmentations for a subset of classes. We enforce anatomical consistency of the result in a postprocessing step. In particular, we introduce a graph-based algorithm for segmentation of the optic nerves, enforcing the connectivity between the eyes and the optic chiasm. We report cross-validated quantitative results on a database of 44 contrast-enhanced T1-weighted MRIs with provided segmentations of the considered OAR, which were originally used for radiotherapy planning. In addition, the segmentations produced by our model on an independent test set of 50 MRIs were evaluated by an experienced radiotherapist in order to qualitatively assess their accuracy. The mean distances between produced segmentations and the ground truth ranged from 0.1 to 0.7 mm across different organs. A vast majority (96%) of the produced segmentations were found acceptable for radiotherapy planning.
© 2020 Society of Photo-Optical Instrumentation Engineers (SPIE).

Keywords:  convolutional neural networks; magnetic resonance image; organs at risk; radiotherapy; segmentation

Year:  2020        PMID: 32064300      PMCID: PMC7016364          DOI: 10.1117/1.JMI.7.1.014502

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


  30 in total

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2.  Segmentation of vessel-like patterns using mathematical morphology and curvature evaluation.

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3.  Automatic model-based segmentation of the heart in CT images.

Authors:  Olivier Ecabert; Jochen Peters; Hauke Schramm; Cristian Lorenz; Jens von Berg; Matthew J Walker; Mani Vembar; Mark E Olszewski; Krishna Subramanyan; Guy Lavi; Jürgen Weese
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4.  Atlas-based segmentation in breast cancer radiotherapy: Evaluation of specific and generic-purpose atlases.

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Journal:  Breast       Date:  2016-12-26       Impact factor: 4.380

5.  Fully automatic multi-organ segmentation for head and neck cancer radiotherapy using shape representation model constrained fully convolutional neural networks.

Authors:  Nuo Tong; Shuiping Gou; Shuyuan Yang; Dan Ruan; Ke Sheng
Journal:  Med Phys       Date:  2018-09-19       Impact factor: 4.071

6.  Organ-At-Risk Segmentation in Brain MRI using Model-Based Segmentation: Benefits of Deep Learning-Based Boundary Detectors.

Authors:  Eliza Orasanu; Tom Brosch; Carri Glide-Hurst; Steffen Renisch
Journal:  Shape Med Imaging (2018)       Date:  2018-11-23

7.  Atlas-based delineation of lymph node levels in head and neck computed tomography images.

Authors:  Olivier Commowick; Vincent Grégoire; Grégoire Malandain
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Review 8.  Head and neck cancer.

Authors:  Athanassios Argiris; Michalis V Karamouzis; David Raben; Robert L Ferris
Journal:  Lancet       Date:  2008-05-17       Impact factor: 79.321

9.  3D Variation in delineation of head and neck organs at risk.

Authors:  Charlotte L Brouwer; Roel J H M Steenbakkers; Edwin van den Heuvel; Joop C Duppen; Arash Navran; Henk P Bijl; Olga Chouvalova; Fred R Burlage; Harm Meertens; Johannes A Langendijk; Aart A van 't Veld
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Review 10.  The Multimodal Brain Tumor Image Segmentation Benchmark (BRATS).

Authors:  Bjoern H Menze; Andras Jakab; Stefan Bauer; Jayashree Kalpathy-Cramer; Keyvan Farahani; Justin Kirby; Yuliya Burren; Nicole Porz; Johannes Slotboom; Roland Wiest; Levente Lanczi; Elizabeth Gerstner; Marc-André Weber; Tal Arbel; Brian B Avants; Nicholas Ayache; Patricia Buendia; D Louis Collins; Nicolas Cordier; Jason J Corso; Antonio Criminisi; Tilak Das; Hervé Delingette; Çağatay Demiralp; Christopher R Durst; Michel Dojat; Senan Doyle; Joana Festa; Florence Forbes; Ezequiel Geremia; Ben Glocker; Polina Golland; Xiaotao Guo; Andac Hamamci; Khan M Iftekharuddin; Raj Jena; Nigel M John; Ender Konukoglu; Danial Lashkari; José Antonió Mariz; Raphael Meier; Sérgio Pereira; Doina Precup; Stephen J Price; Tammy Riklin Raviv; Syed M S Reza; Michael Ryan; Duygu Sarikaya; Lawrence Schwartz; Hoo-Chang Shin; Jamie Shotton; Carlos A Silva; Nuno Sousa; Nagesh K Subbanna; Gabor Szekely; Thomas J Taylor; Owen M Thomas; Nicholas J Tustison; Gozde Unal; Flor Vasseur; Max Wintermark; Dong Hye Ye; Liang Zhao; Binsheng Zhao; Darko Zikic; Marcel Prastawa; Mauricio Reyes; Koen Van Leemput
Journal:  IEEE Trans Med Imaging       Date:  2014-12-04       Impact factor: 10.048

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2.  Deep Learning-Based Internal Target Volume (ITV) Prediction Using Cone-Beam CT Images in Lung Stereotactic Body Radiotherapy.

Authors:  Zhen Li; Shujun Zhang; Libo Zhang; Ya Li; Xiangpeng Zheng; Jie Fu; Jianjian Qiu
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