2020
DOI: 10.1002/mp.13978
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Synthetic CT generation from CBCT images via deep learning

Abstract: Purpose Cone‐beam computed tomography (CBCT) scanning is used daily or weekly (i.e., on‐treatment CBCT) for accurate patient setup in image‐guided radiotherapy. However, inaccuracy of CT numbers prevents CBCT from performing advanced tasks such as dose calculation and treatment planning. Motivated by the promising performance of deep learning in medical imaging, we propose a deep U‐net‐based approach that synthesizes CT‐like images with accurate numbers from planning CT, while keeping the same anatomical struc… Show more

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Cited by 136 publications
(164 citation statements)
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“…In fact, pCT generated from CBCT are used to monitor delivered doses or to estimate the cumulative delivered dose during the treatment course in the context of dose-guided adaptive radiotherapy. Studies using DL for pCT generation from CBCT are scarce for brain, 55 H&N, [13][14][15] pancreas, 38 or prostate cancer. [35][36][37]55,56 The studies involved an imaging analysis (pCT vs. reference CT), but only half of them evaluated the dose accuracy.…”
Section: Discussionmentioning
confidence: 99%
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“…In fact, pCT generated from CBCT are used to monitor delivered doses or to estimate the cumulative delivered dose during the treatment course in the context of dose-guided adaptive radiotherapy. Studies using DL for pCT generation from CBCT are scarce for brain, 55 H&N, [13][14][15] pancreas, 38 or prostate cancer. [35][36][37]55,56 The studies involved an imaging analysis (pCT vs. reference CT), but only half of them evaluated the dose accuracy.…”
Section: Discussionmentioning
confidence: 99%
“…[35][36][37]55,56 The studies involved an imaging analysis (pCT vs. reference CT), but only half of them evaluated the dose accuracy. Among the three H&N studies using DL for pCT generation from CBCT, [13][14][15] one involved training a U-Net neural network on 50 coregistered CBCT/CT images and performing a test based on data from 10 patients. 13 MAEs from 6 to 27 HU were obtained for the pCTs generated from Varian CBCTs.…”
Section: Discussionmentioning
confidence: 99%
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“…32 Generation of synthetic CT images from CBCT images has been proposed using various deep-learning-based frameworks. 33,34 Kurz et al recently published a deep-learning-based CBCT correction method, which they validated on photon and proton treatments for prostate cancer. 35 The goal of these studies has been to synthesize a CT image that can be used for treatment planning based on the patient's current setup on the treatment table.…”
Section: Introductionmentioning
confidence: 99%