Literature DB >> 30269345

A novel MRI segmentation method using CNN-based correction network for MRI-guided adaptive radiotherapy.

Yabo Fu1, Thomas R Mazur1, Xue Wu1, Shi Liu2, Xiao Chang1, Yonggang Lu3, H Harold Li1, Hyun Kim1, Michael C Roach1, Lauren Henke1, Deshan Yang1.   

Abstract

PURPOSE: The purpose of this study was to expedite the contouring process for MRI-guided adaptive radiotherapy (MR-IGART), a convolutional neural network (CNN) deep-learning (DL) model is proposed to accurately segment the liver, kidneys, stomach, bowel and duodenum in 3D MR images.
METHODS: Images and structure contours for 120 patients were collected retrospectively. Treatment sites included pancreas, liver, stomach, adrenal gland, and prostate. The proposed DL model contains a voxel-wise label prediction CNN and a correction network which consists of two sub-networks. The prediction CNN and sub-networks in the correction network each includes a dense block which consists of twelve densely connected convolutional layers. The correction network was designed to improve the voxel-wise labeling accuracy of a CNN by learning and enforcing implicit anatomical constraints in the segmentation process. Its sub-networks learn to fix the erroneous classification of its previous network by taking as input both the original images and the softmax probability maps generated from its previous sub-network. The parameters of each sub-network were trained independently using piecewise training. The model was trained on 100 datasets, validated on 10 datasets and tested on the remaining 10 datasets. Dice coefficient, Hausdorff distance (HD) were calculated to evaluate the segmentation accuracy.
RESULTS: The proposed DL model was able to segment the organs with good accuracy. The correction network outperformed the conditional random field (CRF), a most comparable method that is usually applied as a post-processing step. For the 10 testing patients, the average Dice coefficients were 95.3 ± 0.73, 93.1 ± 2.22, 85.0 ± 3.75, 86.6 ± 2.69, and 65.5 ± 8.90 for liver, kidneys, stomach, bowel, and duodenum, respectively. The mean Hausdorff Distance (HD) were 5.41 ± 2.34, 6.23 ± 4.59, 6.88 ± 4.89, 5.90 ± 4.05, and 7.99 ± 6.84 mm, respectively. Manual contouring, as to correct the automatic segmentation results, was four times as fast as manual contouring from scratch.
CONCLUSION: The proposed method can automatically segment the liver, kidneys, stomach, bowel, and duodenum in 3D MR images with good accuracy. It is useful to expedite the manual contouring for MR-IGART.
© 2018 American Association of Physicists in Medicine.

Entities:  

Keywords:  zzm321990MRIzzm321990; deep learning; image segmentation; image-guided radiation therapy

Mesh:

Year:  2018        PMID: 30269345     DOI: 10.1002/mp.13221

Source DB:  PubMed          Journal:  Med Phys        ISSN: 0094-2405            Impact factor:   4.071


  31 in total

1.  Automatic large quantity landmark pairs detection in 4DCT lung images.

Authors:  Yabo Fu; Xue Wu; Allan M Thomas; Harold H Li; Deshan Yang
Journal:  Med Phys       Date:  2019-08-07       Impact factor: 4.071

2.  CT-based multi-organ segmentation using a 3D self-attention U-net network for pancreatic radiotherapy.

Authors:  Yingzi Liu; Yang Lei; Yabo Fu; Tonghe Wang; Xiangyang Tang; Xiaojun Jiang; Walter J Curran; Tian Liu; Pretesh Patel; Xiaofeng Yang
Journal:  Med Phys       Date:  2020-08-02       Impact factor: 4.071

3.  Deep regression neural networks for collateral imaging from dynamic susceptibility contrast-enhanced magnetic resonance perfusion in acute ischemic stroke.

Authors:  Minh Nguyen Nhat To; Hyun Jeong Kim; Hong Gee Roh; Yoon-Sik Cho; Jin Tae Kwak
Journal:  Int J Comput Assist Radiol Surg       Date:  2019-09-03       Impact factor: 2.924

Review 4.  Artificial Intelligence: reshaping the practice of radiological sciences in the 21st century.

Authors:  Issam El Naqa; Masoom A Haider; Maryellen L Giger; Randall K Ten Haken
Journal:  Br J Radiol       Date:  2020-02-01       Impact factor: 3.039

5.  4D-CT deformable image registration using multiscale unsupervised deep learning.

Authors:  Yang Lei; Yabo Fu; Tonghe Wang; Yingzi Liu; Pretesh Patel; Walter J Curran; Tian Liu; Xiaofeng Yang
Journal:  Phys Med Biol       Date:  2020-04-20       Impact factor: 3.609

6.  Fully automated multiorgan segmentation in abdominal magnetic resonance imaging with deep neural networks.

Authors:  Yuhua Chen; Dan Ruan; Jiayu Xiao; Lixia Wang; Bin Sun; Rola Saouaf; Wensha Yang; Debiao Li; Zhaoyang Fan
Journal:  Med Phys       Date:  2020-08-30       Impact factor: 4.071

7.  Automatic multi-catheter detection using deeply supervised convolutional neural network in MRI-guided HDR prostate brachytherapy.

Authors:  Xianjin Dai; Yang Lei; Yupei Zhang; Richard L J Qiu; Tonghe Wang; Sean A Dresser; Walter J Curran; Pretesh Patel; Tian Liu; Xiaofeng Yang
Journal:  Med Phys       Date:  2020-06-15       Impact factor: 4.071

8.  Cardiac substructure segmentation with deep learning for improved cardiac sparing.

Authors:  Eric D Morris; Ahmed I Ghanem; Ming Dong; Milan V Pantelic; Eleanor M Walker; Carri K Glide-Hurst
Journal:  Med Phys       Date:  2019-12-29       Impact factor: 4.071

Review 9.  A review of deep learning based methods for medical image multi-organ segmentation.

Authors:  Yabo Fu; Yang Lei; Tonghe Wang; Walter J Curran; Tian Liu; Xiaofeng Yang
Journal:  Phys Med       Date:  2021-05-13       Impact factor: 2.685

Review 10.  Adaptive Radiation Therapy (ART) Strategies and Technical Considerations: A State of the ART Review From NRG Oncology.

Authors:  Carri K Glide-Hurst; Percy Lee; Adam D Yock; Jeffrey R Olsen; Minsong Cao; Farzan Siddiqui; William Parker; Anthony Doemer; Yi Rong; Amar U Kishan; Stanley H Benedict; X Allen Li; Beth A Erickson; Jason W Sohn; Ying Xiao; Evan Wuthrick
Journal:  Int J Radiat Oncol Biol Phys       Date:  2020-10-24       Impact factor: 7.038

View more

北京卡尤迪生物科技股份有限公司 © 2022-2023.