Segmentation of organs-at-risks in head and neck CT images using convolutional neural networks

被引:415
作者
Ibragimov, Bulat [1 ]
Xing, Lei [1 ]
机构
[1] Stanford Univ, Sch Med, Dept Radiat Oncol, Stanford, CA 94305 USA
基金
美国国家卫生研究院;
关键词
convolutional neural networks; deep learning; head and neck; radiotherapy; segmentation; AUTOMATIC SEGMENTATION; INTEROBSERVER VARIATION; AUTO-SEGMENTATION; MR-IMAGES; DELINEATION; RADIOTHERAPY; REGISTRATION; FRAMEWORK; GLAND; VALIDATION;
D O I
10.1002/mp.12045
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
Purpose: Accurate segmentation of organs-at-risks (OARs) is the key step for efficient planning of radiation therapy for head and neck (HaN) cancer treatment. In the work, we proposed the first deep learning-based algorithm, for segmentation of OARs in HaN CT images, and compared its performance against state-of-the-art automated segmentation algorithms, commercial software, and interobserver variability. Methods: Convolutional neural networks (CNNs)-a concept from the field of deep learning-were used to study consistent intensity patterns of OARs from training CT images and to segment the OAR in a previously unseen test CT image. For CNN training, we extracted a representative number of positive intensity patches around voxels that belong to the OAR of interest in training CT images, and negative intensity patches around voxels that belong to the surrounding structures. These patches then passed through a sequence of CNN layers that captured local image features such as corners, end-points, and edges, and combined them into more complex high-order features that can efficiently describe the OAR. The trained network was applied to classify voxels in a region of interest in the test image where the corresponding OAR is expected to be located. We then smoothed the obtained classification results by using Markov random fields algorithm. We finally extracted the largest connected component of the smoothed voxels classified as the OAR by CNN, performed dilate-erode operations to remove cavities of the component, which resulted in segmentation of the OAR in the test image. Results: The performance of CNNs was validated on segmentation of spinal cord, mandible, parotid glands, submandibular glands, larynx, pharynx, eye globes, optic nerves, and optic chiasm using 50 CT images. The obtained segmentation results varied from 37.4% Dice coefficient (DSC) for chiasm to 89.5% DSC for mandible. We also analyzed the performance of state-of-the-art algorithms and commercial software reported in the literature, and observed that CNNs demonstrate similar or superior performance on segmentation of spinal cord, mandible, parotid glands, larynx, pharynx, eye globes, and optic nerves, but inferior performance on segmentation of submandibular glands and optic chiasm. Conclusion: We concluded that convolution neural networks can accurately segment most of OARs using a representative database of 50 HaN CT images. At the same time, inclusion of additional information, for example, MR images, may be beneficial to some OARs with poorly visible boundaries. (C) 2016 American Association of Physicists in Medicine
引用
收藏
页码:547 / 557
页数:11
相关论文
共 64 条
[1]  
Agarwal A, 2014, 2014112 MSRTR
[2]  
[Anonymous], ARXIV150502000CS
[3]   Geometrical model-based segmentation of the organs of sight on CT images [J].
Bekes, Gyoergy ;
Mate, Eoers ;
Nyul, Laszlo G. ;
Kuba, Attila ;
Fidrich, Marta .
MEDICAL PHYSICS, 2008, 35 (02) :735-743
[4]   Atlas-based automatic segmentation of MR images: Validation study on the brainstem in radiotherapy context [J].
Bondiau, PY ;
Malandain, G ;
Chanalet, S ;
Marcy, PY ;
Habrand, JL ;
Fauchon, F ;
Paquis, P ;
Courdi, A ;
Commowick, O ;
Rutten, I ;
Ayache, N .
INTERNATIONAL JOURNAL OF RADIATION ONCOLOGY BIOLOGY PHYSICS, 2005, 61 (01) :289-298
[5]   3D Variation in delineation of head and neck organs at risk [J].
Brouwer, Charlotte L. ;
Steenbakkers, Roel J. H. M. ;
van den Heuvel, Edwin ;
Duppen, Joop C. ;
Navran, Arash ;
Bijl, Henk P. ;
Chouvalova, Olga ;
Burlage, Fred R. ;
Meertens, Harm ;
Langendijk, Johannes A. ;
van 't Veld, Aart A. .
RADIATION ONCOLOGY, 2012, 7
[6]   Image-based modeling of tumor shrinkage in head and neck radiation therapy [J].
Chao, Ming ;
Xie, Yaoqin ;
Moros, Eduardo G. ;
Le, Quynh-Thu ;
Xing, Lei .
MEDICAL PHYSICS, 2010, 37 (05) :2351-2358
[7]   Evaluation of multiple-atlas-based strategies for segmentation of the thyroid gland in head and neck CT images for IMRT [J].
Chen, A. ;
Niermann, K. J. ;
Deeley, M. A. ;
Dawant, B. M. .
PHYSICS IN MEDICINE AND BIOLOGY, 2012, 57 (01) :93-111
[8]   Combining registration and active shape models for the automatic segmentation of the lymph node regions in head and neck CT images [J].
Chen, Antong ;
Deeley, Matthew A. ;
Niermann, Kenneth J. ;
Moretti, Luigi ;
Dawant, Benoit M. .
MEDICAL PHYSICS, 2010, 37 (12) :6338-6346
[9]   An efficient locally affine framework for the smooth registration of anatomical structures [J].
Commowick, O. ;
Arsigny, V. ;
Isambert, A. ;
Costa, J. ;
Dhermain, F. ;
Bidault, F. ;
Bondiau, P. -Y. ;
Ayache, N. ;
Malandain, G. .
MEDICAL IMAGE ANALYSIS, 2008, 12 (04) :427-441
[10]   Atlas-based delineation of lymph node levels in head and neck computed tomography images [J].
Commowick, Olivier ;
Gregoire, Vincent ;
Malandain, Gregoire .
RADIOTHERAPY AND ONCOLOGY, 2008, 87 (02) :281-289