Literature DB >> 32248143

3-D RoI-Aware U-Net for Accurate and Efficient Colorectal Tumor Segmentation.

Yi-Jie Huang, Qi Dou, Zi-Xian Wang, Li-Zhi Liu, Ying Jin, Chao-Feng Li, Lisheng Wang, Hao Chen, Rui-Hua Xu.   

Abstract

Segmentation of colorectal cancerous regions from 3-D magnetic resonance (MR) images is a crucial procedure for radiotherapy. Automatic delineation from 3-D whole volumes is in urgent demand yet very challenging. Drawbacks of existing deep-learning-based methods for this task are two-fold: 1) extensive graphics processing unit (GPU) memory footprint of 3-D tensor limits the trainable volume size, shrinks effective receptive field, and therefore, degrades speed and segmentation performance and 2) in-region segmentation methods supported by region-of-interest (RoI) detection are either blind to global contexts, detail richness compromising, or too expensive for 3-D tasks. To tackle these drawbacks, we propose a novel encoder-decoder-based framework for 3-D whole volume segmentation, referred to as 3-D RoI-aware U-Net (3-D RU-Net). 3-D RU-Net fully utilizes the global contexts covering large effective receptive fields. Specifically, the proposed model consists of a global image encoder for global understanding-based RoI localization, and a local region decoder that operates on pyramid-shaped in-region global features, which is GPU memory efficient and thereby enables training and prediction with large 3-D whole volumes. To facilitate the global-to-local learning procedure and enhance contour detail richness, we designed a dice-based multitask hybrid loss function. The efficiency of the proposed framework enables an extensive model ensemble for further performance gain at acceptable extra computational costs. Over a dataset of 64 T2-weighted MR images, the experimental results of four-fold cross-validation show that our method achieved 75.5% dice similarity coefficient (DSC) in 0.61 s per volume on a GPU, which significantly outperforms competing methods in terms of accuracy and efficiency. The code is publicly available.

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Year:  2021        PMID: 32248143     DOI: 10.1109/TCYB.2020.2980145

Source DB:  PubMed          Journal:  IEEE Trans Cybern        ISSN: 2168-2267            Impact factor:   11.448


  7 in total

1.  Towards label-free 3D segmentation of optical coherence tomography images of the optic nerve head using deep learning.

Authors:  Sripad Krishna Devalla; Tan Hung Pham; Satish Kumar Panda; Liang Zhang; Giridhar Subramanian; Anirudh Swaminathan; Chin Zhi Yun; Mohan Rajan; Sujatha Mohan; Ramaswami Krishnadas; Vijayalakshmi Senthil; John Mark S De Leon; Tin A Tun; Ching-Yu Cheng; Leopold Schmetterer; Shamira Perera; Tin Aung; Alexandre H Thiéry; Michaël J A Girard
Journal:  Biomed Opt Express       Date:  2020-10-15       Impact factor: 3.732

2.  Skull Segmentation from CBCT Images via Voxel-Based Rendering.

Authors:  Qin Liu; Chunfeng Lian; Deqiang Xiao; Lei Ma; Han Deng; Xu Chen; Dinggang Shen; Pew-Thian Yap; James J Xia
Journal:  Mach Learn Med Imaging       Date:  2021-09-21

3.  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

4.  Artificial intelligence-based technology for semi-automated segmentation of rectal cancer using high-resolution MRI.

Authors:  Atsushi Hamabe; Masayuki Ishii; Rena Kamoda; Saeko Sasuga; Koichi Okuya; Kenji Okita; Emi Akizuki; Yu Sato; Ryo Miura; Koichi Onodera; Masamitsu Hatakenaka; Ichiro Takemasa
Journal:  PLoS One       Date:  2022-06-17       Impact factor: 3.752

5.  Automated Prediction of the Response to Neoadjuvant Chemoradiotherapy in Patients Affected by Rectal Cancer.

Authors:  Giuseppe Filitto; Francesca Coppola; Nico Curti; Enrico Giampieri; Daniele Dall'Olio; Alessandra Merlotti; Arrigo Cattabriga; Maria Adriana Cocozza; Makoto Taninokuchi Tomassoni; Daniel Remondini; Luisa Pierotti; Lidia Strigari; Dajana Cuicchi; Alessandra Guido; Karim Rihawi; Antonietta D'Errico; Francesca Di Fabio; Gilberto Poggioli; Alessio Giuseppe Morganti; Luigi Ricciardiello; Rita Golfieri; Gastone Castellani
Journal:  Cancers (Basel)       Date:  2022-04-29       Impact factor: 6.575

Review 6.  Radiomics and Magnetic Resonance Imaging of Rectal Cancer: From Engineering to Clinical Practice.

Authors:  Francesca Coppola; Valentina Giannini; Michela Gabelloni; Jovana Panic; Arianna Defeudis; Silvia Lo Monaco; Arrigo Cattabriga; Maria Adriana Cocozza; Luigi Vincenzo Pastore; Michela Polici; Damiano Caruso; Andrea Laghi; Daniele Regge; Emanuele Neri; Rita Golfieri; Lorenzo Faggioni
Journal:  Diagnostics (Basel)       Date:  2021-04-23

Review 7.  Artificial intelligence for assisting cancer diagnosis and treatment in the era of precision medicine.

Authors:  Zi-Hang Chen; Li Lin; Chen-Fei Wu; Chao-Feng Li; Rui-Hua Xu; Ying Sun
Journal:  Cancer Commun (Lond)       Date:  2021-10-06
  7 in total

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