Literature DB >> 31027636

Advances in Auto-Segmentation.

Carlos E Cardenas, Jinzhong Yang, Brian M Anderson, Laurence E Court, Kristy B Brock.   

Abstract

Manual image segmentation is a time-consuming task routinely performed in radiotherapy to identify each patient's targets and anatomical structures. The efficacy and safety of the radiotherapy plan requires accurate segmentations as these regions of interest are generally used to optimize and assess the quality of the plan. However, reports have shown that this process can be subject to significant inter- and intraobserver variability. Furthermore, the quality of the radiotherapy treatment, and subsequent analyses (ie, radiomics, dosimetric), can be subject to the accuracy of these manual segmentations. Automatic segmentation (or auto-segmentation) of targets and normal tissues is, therefore, preferable as it would address these challenges. Previously, auto-segmentation techniques have been clustered into 3 generations of algorithms, with multiatlas based and hybrid techniques (third generation) being considered the state-of-the-art. More recently, however, the field of medical image segmentation has seen accelerated growth driven by advances in computer vision, particularly through the application of deep learning algorithms, suggesting we have entered the fourth generation of auto-segmentation algorithm development. In this paper, the authors review traditional (nondeep learning) algorithms particularly relevant for applications in radiotherapy. Concepts from deep learning are introduced focusing on convolutional neural networks and fully-convolutional networks which are generally used for segmentation tasks. Furthermore, the authors provide a summary of deep learning auto-segmentation radiotherapy applications reported in the literature. Lastly, considerations for clinical deployment (commissioning and QA) of auto-segmentation software are provided.
Copyright © 2019 Elsevier Inc. All rights reserved.

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Year:  2019        PMID: 31027636     DOI: 10.1016/j.semradonc.2019.02.001

Source DB:  PubMed          Journal:  Semin Radiat Oncol        ISSN: 1053-4296            Impact factor:   5.934


  67 in total

1.  Improving accuracy and robustness of deep convolutional neural network based thoracic OAR segmentation.

Authors:  Xue Feng; Mark E Bernard; Thomas Hunter; Quan Chen
Journal:  Phys Med Biol       Date:  2020-03-31       Impact factor: 3.609

2.  Why imaging data alone is not enough: AI-based integration of imaging, omics, and clinical data.

Authors:  Andreas Holzinger; Benjamin Haibe-Kains; Igor Jurisica
Journal:  Eur J Nucl Med Mol Imaging       Date:  2019-06-15       Impact factor: 9.236

Review 3.  Automated Radiation Treatment Planning for Cervical Cancer.

Authors:  Dong Joo Rhee; Anuja Jhingran; Kelly Kisling; Carlos Cardenas; Hannah Simonds; Laurence Court
Journal:  Semin Radiat Oncol       Date:  2020-10       Impact factor: 5.934

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.  A slice classification model-facilitated 3D encoder-decoder network for segmenting organs at risk in head and neck cancer.

Authors:  Shuming Zhang; Hao Wang; Suqing Tian; Xuyang Zhang; Jiaqi Li; Runhong Lei; Mingze Gao; Chunlei Liu; Li Yang; Xinfang Bi; Linlin Zhu; Senhua Zhu; Ting Xu; Ruijie Yang
Journal:  J Radiat Res       Date:  2021-01-01       Impact factor: 2.724

7.  CT images with expert manual contours of thoracic cancer for benchmarking auto-segmentation accuracy.

Authors:  Jinzhong Yang; Harini Veeraraghavan; Wouter van Elmpt; Andre Dekker; Mark Gooding; Greg Sharp
Journal:  Med Phys       Date:  2020-03-28       Impact factor: 4.071

8.  Is it possible to estimate volume of bone defects formed on dry sheep mandibles more practically by secondarily reconstructing section thickness of cone beam computed tomography images?

Authors:  Alaettin Koç; Sema Kaya
Journal:  Dentomaxillofac Radiol       Date:  2020-10-15       Impact factor: 2.419

9.  Head and neck cancer patient images for determining auto-segmentation accuracy in T2-weighted magnetic resonance imaging through expert manual segmentations.

Authors:  Carlos E Cardenas; Abdallah S R Mohamed; Jinzhong Yang; Mark Gooding; Harini Veeraraghavan; Jayashree Kalpathy-Cramer; Sweet Ping Ng; Yao Ding; Jihong Wang; Stephen Y Lai; Clifton D Fuller; Greg Sharp
Journal:  Med Phys       Date:  2020-06       Impact factor: 4.071

10.  Tumor Segmentation in Patients with Head and Neck Cancers Using Deep Learning Based-on Multi-modality PET/CT Images.

Authors:  Mohamed A Naser; Lisanne V van Dijk; Renjie He; Kareem A Wahid; Clifton D Fuller
Journal:  Head Neck Tumor Segm (2020)       Date:  2021-01-13
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