Automatic segmentation for magnetic resonance imaging guided individual elective lymph node irradiation in head and neck cancer patients

Publication date

2024-10

Authors

Reinders, Floris C.J.
Savenije, Mark H.F.
de Ridder, MischaORCID 0000-0002-2530-3038
Maspero, MatteoORCID 0000-0003-0347-3375
Doornaert, Patricia A.H.ISNI 0000000392515134
Terhaard, Chris H.J.ORCID 0000-0001-6062-5457ISNI 0000000388691821
Raaijmakers, C. P JORCID 0000-0002-9462-9277ISNI 0000000395945906
Zakeri, Kaveh
Lee, Nancy Y.
Aliotta, Eric

Editors

Advisors

Supervisors

Document Type

Article

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License

cc_by_nc_nd

Abstract

Background and purpose: In head and neck squamous cell carcinoma (HNSCC) patients, the radiation dose to nearby organs at risk can be reduced by restricting elective neck irradiation from lymph node levels to individual lymph nodes. However, manual delineation of every individual lymph node is time-consuming and error prone. Therefore, automatic magnetic resonance imaging (MRI) segmentation of individual lymph nodes was developed and tested using a convolutional neural network (CNN). Materials and methods: In 50 HNSCC patients (UMC-Utrecht), individual lymph nodes located in lymph node levels Ib-II-III-IV-V were manually segmented on MRI by consensus of two experts, obtaining ground truth segmentations. A 3D CNN (nnU-Net) was trained on 40 patients and tested on 10. Evaluation metrics were Dice Similarity Coefficient (DSC), recall, precision, and F1-score. The segmentations of the CNN was compared to segmentations of two observers. Transfer learning was used with 20 additional patients to re-train and test the CNN in another medical center. Results: nnU-Net produced automatic segmentations of elective lymph nodes with median DSC: 0.72, recall: 0.76, precision: 0.78, and F1-score: 0.78. The CNN had higher recall compared to both observers (p = 0.002). No difference in evaluation scores of the networks in both medical centers was found after re-training with 5 or 10 patients. Conclusion: nnU-Net was able to automatically segment individual lymph nodes on MRI. The detection rate of lymph nodes using nnU-Net was higher than manual segmentations. Re-training nnU-Net was required to successfully transfer the network to the other medical center.

Keywords

Artificial intelligence, Deep learning, Elective neck irradiation, Lymph nodes, Magnetic resonance imaging, Radiotherapy, Squamous cell carcinoma of head and neck, Radiation, Oncology, Radiology Nuclear Medicine and imaging, Journal Article

Citation

Reinders, F C J, Savenije, M H F, de Ridder, M, Maspero, M, Doornaert, P A H, Terhaard, C H J, Raaijmakers, C P J, Zakeri, K, Lee, N Y, Aliotta, E, Rangnekar, A, Veeraraghavan, H & Philippens, M E P 2024, 'Automatic segmentation for magnetic resonance imaging guided individual elective lymph node irradiation in head and neck cancer patients', Physics and Imaging in Radiation Oncology, vol. 32, 100655. https://doi.org/10.1016/j.phro.2024.100655