2021
DOI: 10.1016/j.phro.2021.06.005
|View full text |Cite
|
Sign up to set email alerts
|

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

Abstract: Background and purpose: Segmentation of oropharyngeal squamous cell carcinoma (OPSCC) is needed for radiotherapy planning. We aimed to segment the primary tumor for OPSCC on MRI using convolutional neural networks (CNNs). We investigated the effect of multiple MRI sequences as input and we proposed a semiautomatic approach for tumor segmentation that is expected to save time in the clinic. Materials and methods: We included 171 OPSCC patients retrospectively from 2010 until 2015. For all patients the following… Show more

Help me understand this report

Search citation statements

Order By: Relevance

Paper Sections

Select...
2
2
1

Citation Types

0
28
0

Year Published

2021
2021
2023
2023

Publication Types

Select...
7
1

Relationship

0
8

Authors

Journals

citations
Cited by 31 publications
(28 citation statements)
references
References 18 publications
(21 reference statements)
0
28
0
Order By: Relevance
“…DL = deep learning, N = number of images sets used in study, GTVp = primary gross tumor volume, DSC = Dice similarity coefficient, OPC = oropharyngeal cancer, NPC = nasopharyngeal cancer, HNSCC = head and neck squamous cell carcinoma, T2 = T2-weighted MRI, T1 = T1-weighted MRI, DCE = dynamic contrast enhanced MRI, DWI = diffusion weighted imaging MRI, LOOCV = leave-one-out cross-validation, CV = cross-validation, CNN = convolutional neural network. Author, Year Site Modality DL Architecture N (Train, Test) GTVp DSC (average) This study, 2021 OPC MRI (T1, T2, DCE, DWI) 3D Residual Unet 30 (LOOCV) 0.73 (best model, T2 + T1) Outeiral et al, 2021 [ 27 ] OPC MRI (T1, T2) 3D Unet 171 (151, 20) 0.55 Andrearczyk et al, 2020 [ 32 ] OPC CT, PET 2D Unet 202 (LOOCV) 0.48 (CT), 0.58 (PET), 0.6 (CT + PET) Moe et al, 2019 [ 33 ] OPC CT, PET 2D Unet 197 (157, 40) 0.65 (CT), 0.71 (PET), 0.75 (CT + PET) Naser et al, 2020 [ 35 ] OPC CT, PET 3D Unet 201 (5-fold CV) 0.69 Iantsen et al, 2020 [ 36 ] OPC CT, PET 3D Unet 201 (4-fold CV) 0.75 Ma et al, 2018 [ 19 ] NPC MRI (T1) 3D CNN + graph-cut 30 (LOOCV) 0.85 Ye et al, 2020 [ 18 ] NPC MRI (T1, T2) 3D Unet 44 (10-fold CV) 0.62 (T1), 0.64 (T2), 0.72 (T1 + T2) Chen et al, 2020 [ 21 ] NPC MRI (T1, T2) 3D Encoder-decoder network 149 (5-fold CV) 0.72 Huang et al, 2019 [ 26 ] …”
Section: Discussionmentioning
confidence: 97%
See 2 more Smart Citations
“…DL = deep learning, N = number of images sets used in study, GTVp = primary gross tumor volume, DSC = Dice similarity coefficient, OPC = oropharyngeal cancer, NPC = nasopharyngeal cancer, HNSCC = head and neck squamous cell carcinoma, T2 = T2-weighted MRI, T1 = T1-weighted MRI, DCE = dynamic contrast enhanced MRI, DWI = diffusion weighted imaging MRI, LOOCV = leave-one-out cross-validation, CV = cross-validation, CNN = convolutional neural network. Author, Year Site Modality DL Architecture N (Train, Test) GTVp DSC (average) This study, 2021 OPC MRI (T1, T2, DCE, DWI) 3D Residual Unet 30 (LOOCV) 0.73 (best model, T2 + T1) Outeiral et al, 2021 [ 27 ] OPC MRI (T1, T2) 3D Unet 171 (151, 20) 0.55 Andrearczyk et al, 2020 [ 32 ] OPC CT, PET 2D Unet 202 (LOOCV) 0.48 (CT), 0.58 (PET), 0.6 (CT + PET) Moe et al, 2019 [ 33 ] OPC CT, PET 2D Unet 197 (157, 40) 0.65 (CT), 0.71 (PET), 0.75 (CT + PET) Naser et al, 2020 [ 35 ] OPC CT, PET 3D Unet 201 (5-fold CV) 0.69 Iantsen et al, 2020 [ 36 ] OPC CT, PET 3D Unet 201 (4-fold CV) 0.75 Ma et al, 2018 [ 19 ] NPC MRI (T1) 3D CNN + graph-cut 30 (LOOCV) 0.85 Ye et al, 2020 [ 18 ] NPC MRI (T1, T2) 3D Unet 44 (10-fold CV) 0.62 (T1), 0.64 (T2), 0.72 (T1 + T2) Chen et al, 2020 [ 21 ] NPC MRI (T1, T2) 3D Encoder-decoder network 149 (5-fold CV) 0.72 Huang et al, 2019 [ 26 ] …”
Section: Discussionmentioning
confidence: 97%
“…Notably, compared to previous fully-automated primary tumor segmentation studies of HNSCC patients, we achieved promising average DSC performance ( Table 2 ). While it is difficult to directly compare DSCs between studies due to different datasets and model training, our models seemingly improve upon the only other fully-automated OPC tumor segmentation study to our knowledge, which exclusively investigated anatomical MRI [ 27 ].…”
Section: Discussionmentioning
confidence: 99%
See 1 more Smart Citation
“…The first was to implement a fully automated 2-stage approach, where first a UNet was trained to localize a bounding box around the GTV, followed by training a UNet to segment the GTV using cropped data. The authors earlier published on the use of observer defined bounding boxes to improve segmentation results in a subset of this dataset [14] . The second approach was to compare four different loss functions, Dice-loss, Generalized-Dice-loss, Tversky-loss, and Unified-Focal-loss.…”
Section: Gtv Segmentation In Hncmentioning
confidence: 99%
“…Notably, the increasing use of MRI-guided technology for adaptive HNC radiotherapy will likely increase the clinical integration of MRI quantitative analysis [12] . While several recent HNC studies have implemented cohort-level quantitative analysis of conventional weighted MRI [13] , [14] , [15] , [16] , [17] , [18] , [19] , [20] , [21] , [22] , relatively few have investigated incorporating intensity standardization into processing pipelines [16] , [17] , [18] , [19] , [20] , [22] , and even fewer have tested multiple standardization methods [20] . Furthermore, while rigorous studies have tested MRI intensity standardization methods for various anatomical regions, chiefly the brain [5] , [23] , such methods for the head and neck region have yet to be systematically investigated.…”
Section: Introductionmentioning
confidence: 99%