1. Clinical Implementation of DeepVoxNet for Auto-Delineation of Organs at Risk in Head and Neck Cancer Patients in Radiotherapy
- Author
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Sandra Nuyts, David Robben, Julie van der Veen, Tom Depuydt, Karin Haustermans, S. Willems, Frederik Maes, Wouter Crijns, Agustina La Greca Saint-Esteven, Stoyanov, D, Taylor, Z, Sarikaya, D, McLeod, J, Ballester, MAG, Codella, NCF, Martel, A, Maier-Hein, L, Malpani, A, Zenati, MA, De Ribaupierre, S, Xiongbiao, L, Collins, T, Reichl, T, Drechsler, K, Erdt, M, Linguraru, MG, Laura, CO, Shekhar, R, Wesarg, S, Celebi, ME, Dana, K, and Halpern, A
- Subjects
medicine.medical_specialty ,business.industry ,Deep learning ,medicine.medical_treatment ,Head and neck cancer ,Clinical routine ,medicine.disease ,Convolutional neural network ,Accurate segmentation ,030218 nuclear medicine & medical imaging ,Radiation therapy ,03 medical and health sciences ,0302 clinical medicine ,030220 oncology & carcinogenesis ,Radiation oncology ,medicine ,Radiotherapy treatment ,Radiology ,Artificial intelligence ,business - Abstract
© Springer Nature Switzerland AG 2018. Delineation of organs at risk (OAR) on CT images is a crucial step in the planning of radiotherapy treatment. Manual delineation is time-consuming and high interrater variability is observed within and across radiotherapy centers. Automated delineation of OAR is fast and can lead to more consistent treatment plans. We developed an auto-delineation tool based on a 3D convolutional neural network (CNN) to automatically delineate 16 OAR structures in head and neck cancer (HNC) patients. The CNN was trained off-line using 70 previously collected patient datasets and implemented to be available on-line in clinical routine practice. The tool was applied prospectively for delineation of 20 consecutive new HNC cases within the department of Radiation Oncology, with subsequent manual editing and approval of the contours by the clinical expert. Validation based on the automatically proposed and edited contours shows that the auto-delineation tool is able to achieve highly accurate segmentation results for most OAR. As a result, 3D delineation time is reduced to less than 19 min on average (about 1 min/structure), compared to usually 1 h or more without auto-delineation tool. ispartof: pages:223-232 ispartof: Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics) vol:11041 LNCS pages:223-232 ispartof: 7th international workshop on clinical image-based procedures: Translational research in medical imaging - CLIP 2018, held in conjunction with MICCAI 2018 location:Granada, Spain date:16 Sep - 16 Sep 2018 status: published
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- 2018