Fast contour propagation for MR-guided prostate radiotherapy using convolutional neural networks

Publication date

2020-03-01

Authors

Eppenhof, K A J
Maspero, MatteoORCID 0000-0003-0347-3375
Savenije, Mark H.F.
de Boer, Hans C.J.
van der Voort van der Zyp, Jochem R NISNI 0000000393775683
Raaymakers, BasORCID 0000-0002-8036-6808ISNI 0000000392005337
Raaijmakers, AJEISNI 0000000396109782
Veta, Mitko
van den Berg, Cornelis A TORCID 0000-0002-5565-6889
Pluim, Josien P.W.ORCID 0000-0001-7327-9178ISNI 000000014097262X

Editors

Advisors

Supervisors

Document Type

Article

Collections

Open Access logo

License

Abstract

PURPOSE: To quickly and automatically propagate organ contours from pretreatment to fraction images in magnetic resonance (MR)-guided prostate external-beam radiotherapy. METHODS: Five prostate cancer patients underwent 20 fractions of image-guided external-beam radiotherapy on a 1.5 T MR-Linac system. For each patient, a pretreatment T2-weighted three-dimensional (3D) MR imaging (MRI) scan was used to delineate the clinical target volume (CTV) contours. The same scan was repeated during each fraction, with the CTV contour being manually adapted if necessary. A convolutional neural network (CNN) was trained for combined image registration and contour propagation. The network estimated the propagated contour and a deformation field between the two input images. The training set consisted of a synthetically generated ground truth of randomly deformed images and prostate segmentations. We performed a leave-one-out cross-validation on the five patients and propagated the prostate segmentations from the pretreatment to the fraction scans. Three variants of the CNN, aimed at investigating supervision based on optimizing segmentation overlap, optimizing the registration, and a combination of the two were compared to results of the open-source deformable registration software package Elastix. RESULTS: The neural networks trained on segmentation overlap or the combined objective achieved significantly better Hausdorff distances between predicted and ground truth contours than Elastix, at the much faster registration speed of 0.5 s. The CNN variant trained to optimize both the prostate overlap and deformation field, and the variant trained to only maximize the prostate overlap, produced the best propagation results. CONCLUSIONS: A CNN trained on maximizing prostate overlap and minimizing registration errors provides a fast and accurate method for deformable contour propagation for prostate MR-guided radiotherapy.

Keywords

radiotherapy, image registration, medical imaging, Magnetic Resonance Imaging, contour propagation, deep learning, MR-guided radiotherapy, prostate, Biophysics, Radiology Nuclear Medicine and imaging, Journal Article

Citation

Eppenhof, K A J, Maspero, M, Savenije, M H F, de Boer, J C J, van der Voort van Zyp, J R N, Raaymakers, B W, Raaijmakers, A J E, Veta, M, van den Berg, C A T & Pluim, J P W 2020, 'Fast contour propagation for MR-guided prostate radiotherapy using convolutional neural networks', Medical Physics, vol. 47, no. 3, pp. 1238-1248. https://doi.org/10.1002/mp.13994