Segmentation of male pelvic organs on computed tomography with a deep neural network fine-tuned by a level-set method

被引:4
作者
Almeida, Goncalo [1 ]
Figueira, Ana Rita [2 ]
Lencart, Joana [3 ]
Tavares, Joao Manuel R. S. [4 ]
机构
[1] Univ Porto, Inst Ciencia Inovacao Engenharia Mecan & Engenhar, Fac Engn, Porto, Portugal
[2] Ctr Hosp Univ Sao Joao, Serv Radioterapia, Porto, Portugal
[3] Inst Portugues Oncol Porto CI IPOP, Serv Fis Med Grp Fis Med Radiobiol & Radiol, Ctr Invest, Porto, Portugal
[4] Univ Porto, Inst Ciencia Inovacao Engn Mecan Engn, Dept Engenharia Mecan, Fac Engn, Porto, Portugal
关键词
Deep learning; Convolutional neural networks; Deformable model; Radiation therapy; Prostate cancer; Computed tomography imaging; INTEROBSERVER VARIABILITY; PROSTATE;
D O I
10.1016/j.compbiomed.2021.105107
中图分类号
Q [生物科学];
学科分类号
07 ; 0710 ; 09 ;
摘要
Computed Tomography (CT) imaging is used in Radiation Therapy planning, where the treatment is carefully tailored to each patient in order to maximize radiation dose to the target while decreasing adverse effects to nearby healthy tissues. A crucial step in this process is manual organ contouring, which if performed automatically could considerably decrease the time to starting treatment and improve outcomes. Computerized segmentation of male pelvic organs has been studied for decades and deep learning models have brought considerable advances to the field, but improvements are still demanded. A two-step framework for automatic segmentation of the prostate, bladder and rectum is presented: a convolutional neural network enhanced with attention gates performs an initial segmentation, followed by a region-based active contour model to fine-tune the segmentations to each patient's specific anatomy. The framework was evaluated on a large collection of planning CTs of patients who had Radiation Therapy for prostate cancer. The Surface Dice Coefficient improved from 79.41 to 81.00% on segmentation of the prostate, 94.03-95.36% on the bladder and 82.17-83.68% on the rectum, comparing the proposed framework with the baseline convolutional neural network. This study shows that traditional image segmentation algorithms can help improve the immense gains that deep learning models have brought to the medical imaging segmentation field.
引用
收藏
页数:8
相关论文
共 46 条
[1]   A 2.5D Deep Learning-Based Approach for Prostate Cancer Detection on T2-Weighted Magnetic Resonance Imaging [J].
Alkadi, Ruba ;
El-Baz, Ayman ;
Taher, Fatma ;
Werghi, Naoufel .
COMPUTER VISION - ECCV 2018 WORKSHOPS, PT IV, 2019, 11132 :734-739
[2]  
American Cancer Society, 2019, TECHNICAL REPORT
[3]  
Barthold H.J., 2007, MALE PELVIS NORMAL T
[4]   Current concepts - Computed tomography - An increasing source of radiation exposure [J].
Brenner, David J. ;
Hall, Eric J. .
NEW ENGLAND JOURNAL OF MEDICINE, 2007, 357 (22) :2277-2284
[5]   Active contours without edges [J].
Chan, TF ;
Vese, LA .
IEEE TRANSACTIONS ON IMAGE PROCESSING, 2001, 10 (02) :266-277
[6]   Automatic MR Prostate Segmentation by Deep Learning with Holistically-Nested Networks [J].
Cheng, Ruida ;
Roth, Holger R. ;
Lay, Nathan ;
Lu, Le ;
Turkbey, Baris ;
Gandler, William ;
McCreedy, Evan S. ;
Choyke, Peter ;
Summers, Ronald M. ;
McAuliffe, Matthew J. .
MEDICAL IMAGING 2017: IMAGE PROCESSING, 2017, 10133
[7]   Can CT scan protocols used for radiotherapy treatment planning be adjusted to optimize image quality and patient dose? A systematic review [J].
Davis, Anne T. ;
Palmer, Antony L. ;
Nisbet, Andrew .
BRITISH JOURNAL OF RADIOLOGY, 2017, 90 (1076)
[8]   MEASURES OF THE AMOUNT OF ECOLOGIC ASSOCIATION BETWEEN SPECIES [J].
DICE, LR .
ECOLOGY, 1945, 26 (03) :297-302
[9]   Synthetic MRI-aided multi-organ segmentation on male pelvic CT using cycle consistent deep attention network [J].
Dong, Xue ;
Lei, Yang ;
Tian, Sibo ;
Wang, Tonghe ;
Patel, Pretesh ;
Curran, Walter J. ;
Jani, Ashesh B. ;
Liu, Tian ;
Yang, Xiaofeng .
RADIOTHERAPY AND ONCOLOGY, 2019, 141 :192-199
[10]   Intra- and inter-observer variability in contouring prostate and seminal vesicles: implications for conformal treatment planning [J].
Fiorino, C ;
Reni, M ;
Bolognesi, A ;
Cattaneo, GM ;
Calandrino, R .
RADIOTHERAPY AND ONCOLOGY, 1998, 47 (03) :285-292