Literature DB >> 31514173

Gross tumor volume segmentation for head and neck cancer radiotherapy using deep dense multi-modality network.

Zhe Guo1, Ning Guo, Kuang Gong, Shun'an Zhong, Quanzheng Li.   

Abstract

In radiation therapy, the accurate delineation of gross tumor volume (GTV) is crucial for treatment planning. However, it is challenging for head and neck cancer (HNC) due to the morphology complexity of various organs in the head, low targets to background contrast and potential artifacts on conventional planning CT images. Thus, manual delineation of GTV on anatomical images is extremely time consuming and suffers from inter-observer variability that leads to planning uncertainty. With the wide use of PET/CT imaging in oncology, complementary functional and anatomical information can be utilized for tumor contouring and bring a significant advantage for radiation therapy planning. In this study, by taking advantage of multi-modality PET and CT images, we propose an automatic GTV segmentation framework based on deep learning for HNC. The backbone of this segmentation framework is based on 3D convolution with dense connections which enables a better information propagation and takes full advantage of the features extracted from multi-modality input images. We evaluate our proposed framework on a dataset including 250 HNC patients. Each patient receives both planning CT and PET/CT imaging before radiation therapy (RT). Manually delineated GTV contours by radiation oncologists are used as ground truth in this study. To further investigate the advantage of our proposed Dense-Net framework, we also compared with the framework using 3D U-Net which is the state-of-the-art in segmentation tasks. Meanwhile, for each frame, the performance comparison between single modality input (PET or CT image) and multi-modality input (both PET/CT) is conducted. Dice coefficient, mean surface distance (MSD), 95th-percentile Hausdorff distance (HD95) and displacement of mass centroid (DMC) are calculated for quantitative evaluation. The dataset is split into train (140 patients), validation (35 patients) and test (75 patients) groups to optimize the network. Based on the results on independent test group, our proposed multi-modality Dense-Net (Dice 0.73) shows better performance than the compared network (Dice 0.71). Furthermore, the proposed Dense-Net structure has less trainable parameters than the 3D U-Net, which reduces the prediction variability. In conclusion, our proposed multi-modality Dense-Net can enable satisfied GTV segmentation for HNC using multi-modality images and yield superior performance than conventional methods. Our proposed method provides an automatic, fast and consistent solution for GTV segmentation and shows potentials to be generally applied for radiation therapy planning of a variety of cancer (e.g. lung, sarcoma, liver and so on).

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Mesh:

Year:  2019        PMID: 31514173      PMCID: PMC7186044          DOI: 10.1088/1361-6560/ab440d

Source DB:  PubMed          Journal:  Phys Med Biol        ISSN: 0031-9155            Impact factor:   3.609


  17 in total

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2.  Variability of gross tumor volume delineation in head-and-neck cancer using CT and PET/CT fusion.

Authors:  Adam C Riegel; Anthony M Berson; Sylvie Destian; Tracy Ng; Lawrence B Tena; Robin J Mitnick; Ping S Wong
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4.  Joint segmentation of anatomical and functional images: applications in quantification of lesions from PET, PET-CT, MRI-PET, and MRI-PET-CT images.

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7.  Automated radiation targeting in head-and-neck cancer using region-based texture analysis of PET and CT images.

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8.  Optimal co-segmentation of tumor in PET-CT images with context information.

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9.  Semiautomated segmentation of head and neck cancers in 18F-FDG PET scans: A just-enough-interaction approach.

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10.  Fully Automated Delineation of Gross Tumor Volume for Head and Neck Cancer on PET-CT Using Deep Learning: A Dual-Center Study.

Authors:  Bin Huang; Zhewei Chen; Po-Man Wu; Yufeng Ye; Shi-Ting Feng; Ching-Yee Oliver Wong; Liyun Zheng; Yong Liu; Tianfu Wang; Qiaoliang Li; Bingsheng Huang
Journal:  Contrast Media Mol Imaging       Date:  2018-10-24       Impact factor: 3.161

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  12 in total

Review 1.  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

2.  Deep learning-based GTV contouring modeling inter- and intra- observer variability in sarcomas.

Authors:  Thibault Marin; Yue Zhuo; Rita Maria Lahoud; Fei Tian; Xiaoyue Ma; Fangxu Xing; Maryam Moteabbed; Xiaofeng Liu; Kira Grogg; Nadya Shusharina; Jonghye Woo; Ruth Lim; Chao Ma; Yen-Lin E Chen; Georges El Fakhri
Journal:  Radiother Oncol       Date:  2021-11-19       Impact factor: 6.280

3.  Deep learning-based auto-delineation of gross tumour volumes and involved nodes in PET/CT images of head and neck cancer patients.

Authors:  Yngve Mardal Moe; Aurora Rosvoll Groendahl; Oliver Tomic; Einar Dale; Eirik Malinen; Cecilia Marie Futsaether
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4.  Automatic segmentation of head and neck primary tumors on MRI using a multi-view CNN.

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5.  Convolutional neural networks for PET functional volume fully automatic segmentation: development and validation in a multi-center setting.

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6.  Rapid Segmentation of Renal Tumours to Calculate Volume Using 3D Interpolation.

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Review 7.  Applications of artificial intelligence in oncologic 18F-FDG PET/CT imaging: a systematic review.

Authors:  Mohammad S Sadaghiani; Steven P Rowe; Sara Sheikhbahaei
Journal:  Ann Transl Med       Date:  2021-05

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Review 9.  Medical Imaging Biomarker Discovery and Integration Towards AI-Based Personalized Radiotherapy.

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Journal:  Front Oncol       Date:  2022-01-17       Impact factor: 6.244

10.  Oropharyngeal primary tumor segmentation for radiotherapy planning on magnetic resonance imaging using deep learning.

Authors:  Roque Rodríguez Outeiral; Paula Bos; Abrahim Al-Mamgani; Bas Jasperse; Rita Simões; Uulke A van der Heide
Journal:  Phys Imaging Radiat Oncol       Date:  2021-07-02
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