TY - JOUR
T1 - Automatic segmentation of head and neck primary tumors on MRI using a multi-view CNN
AU - Schouten, Jens P E
AU - Noteboom, Samantha
AU - Martens, Roland M
AU - Mes, Steven W
AU - Leemans, C René
AU - de Graaf, Pim
AU - Steenwijk, Martijn D
N1 - Funding Information:
This work is financially supported by a grant from the Amsterdam UMC, Cancer Center Amsterdam (CCA 2017-5-40).
Publisher Copyright:
© 2022, The Author(s).
PY - 2022/12
Y1 - 2022/12
N2 - Background : Accurate segmentation of head and neck squamous cell cancer (HNSCC) is important for radiotherapy treatment planning. Manual segmentation of these tumors is time-consuming and vulnerable to inconsistencies between experts, especially in the complex head and neck region. The aim of this study is to introduce and evaluate an automatic segmentation pipeline for HNSCC using a multi-view CNN (MV-CNN). Methods: The dataset included 220 patients with primary HNSCC and availability of T1-weighted, STIR and optionally contrast-enhanced T1-weighted MR images together with a manual reference segmentation of the primary tumor by an expert. A T1-weighted standard space of the head and neck region was created to register all MRI sequences to. An MV-CNN was trained with these three MRI sequences and evaluated in terms of volumetric and spatial performance in a cross-validation by measuring intra-class correlation (ICC) and dice similarity score (DSC), respectively. Results: The average manual segmented primary tumor volume was 11.8±6.70 cm 3 with a median [IQR] of 13.9 [3.22-15.9] cm 3. The tumor volume measured by MV-CNN was 22.8±21.1 cm 3 with a median [IQR] of 16.0 [8.24-31.1] cm 3. Compared to the manual segmentations, the MV-CNN scored an average ICC of 0.64±0.06 and a DSC of 0.49±0.19. Improved segmentation performance was observed with increasing primary tumor volume: the smallest tumor volume group (<3 cm 3) scored a DSC of 0.26±0.16 and the largest group (>15 cm 3) a DSC of 0.63±0.11 (p<0.001). The automated segmentation tended to overestimate compared to the manual reference, both around the actual primary tumor and in false positively classified healthy structures and pathologically enlarged lymph nodes. Conclusion: An automatic segmentation pipeline was evaluated for primary HNSCC on MRI. The MV-CNN produced reasonable segmentation results, especially on large tumors, but overestimation decreased overall performance. In further research, the focus should be on decreasing false positives and make it valuable in treatment planning.
AB - Background : Accurate segmentation of head and neck squamous cell cancer (HNSCC) is important for radiotherapy treatment planning. Manual segmentation of these tumors is time-consuming and vulnerable to inconsistencies between experts, especially in the complex head and neck region. The aim of this study is to introduce and evaluate an automatic segmentation pipeline for HNSCC using a multi-view CNN (MV-CNN). Methods: The dataset included 220 patients with primary HNSCC and availability of T1-weighted, STIR and optionally contrast-enhanced T1-weighted MR images together with a manual reference segmentation of the primary tumor by an expert. A T1-weighted standard space of the head and neck region was created to register all MRI sequences to. An MV-CNN was trained with these three MRI sequences and evaluated in terms of volumetric and spatial performance in a cross-validation by measuring intra-class correlation (ICC) and dice similarity score (DSC), respectively. Results: The average manual segmented primary tumor volume was 11.8±6.70 cm 3 with a median [IQR] of 13.9 [3.22-15.9] cm 3. The tumor volume measured by MV-CNN was 22.8±21.1 cm 3 with a median [IQR] of 16.0 [8.24-31.1] cm 3. Compared to the manual segmentations, the MV-CNN scored an average ICC of 0.64±0.06 and a DSC of 0.49±0.19. Improved segmentation performance was observed with increasing primary tumor volume: the smallest tumor volume group (<3 cm 3) scored a DSC of 0.26±0.16 and the largest group (>15 cm 3) a DSC of 0.63±0.11 (p<0.001). The automated segmentation tended to overestimate compared to the manual reference, both around the actual primary tumor and in false positively classified healthy structures and pathologically enlarged lymph nodes. Conclusion: An automatic segmentation pipeline was evaluated for primary HNSCC on MRI. The MV-CNN produced reasonable segmentation results, especially on large tumors, but overestimation decreased overall performance. In further research, the focus should be on decreasing false positives and make it valuable in treatment planning.
KW - Head and neck squamous cell cancer
KW - MRI
KW - Multi-view convolutional neural network
KW - Registration
KW - Segmentation
UR - http://www.scopus.com/inward/record.url?scp=85122982743&partnerID=8YFLogxK
U2 - 10.1186/s40644-022-00445-7
DO - 10.1186/s40644-022-00445-7
M3 - Article
C2 - 35033188
SN - 1470-7330
VL - 22
SP - 8
JO - Cancer imaging : the official publication of the International Cancer Imaging Society
JF - Cancer imaging : the official publication of the International Cancer Imaging Society
IS - 1
M1 - 8
ER -