Abstract:Purpose and background: The magnetic resonance (MR)-only radiotherapy workflow is urged by the increasing use of MR image for the identification and delineation of tumors, while a fast generation of synthetic computer tomography (sCT) image from MR image for dose calculation remains one of the key challenges to the workflow. This study aimed to develop a neural network to generate the sCT in brain site and evaluate the dosimetry accuracy. Materials and methods: A generative adversarial network (GAN) was develo… Show more
“…Table III shows near minimum, near maximum, and average dose difference from CT based plan received by the planning target volume (PTV). The difference in average dose to the PTV relative to the prescribed dose was found to be 0.166 ± 0.18% which lies within a clinically acceptable range of dose difference of < 0.5% and comparable with multiple studies in literature [11], [12], [34], [35] IV. DISCUSSION…”
In this work, we present a method for synthetic CT (sCT) generation from zero-echo-time (ZTE) MRI aimed at structural and quantitative accuracies of the image, with a particular focus on the accurate bone density value prediction. We propose a loss function that favors a spatially sparse region in the image. We harness the ability of a multi-task network to produce correlated outputs as a framework to enable localization of region of interest (RoI) via classification, emphasize regression of values within RoI and still retain the overall accuracy via global regression. The network is optimized by a composite loss function that combines a dedicated loss from each task. We demonstrate how the multi-task network with RoI focused loss offers an advantage over other configurations of the network to achieve higher accuracy of performance. This is relevant to sCT where failure to accurately estimate high Hounsfield Unit values of bone could lead to impaired accuracy in clinical applications. We compare the dose calculation maps from the proposed sCT and the real CT in a radiation therapy treatment planning setup.
“…Table III shows near minimum, near maximum, and average dose difference from CT based plan received by the planning target volume (PTV). The difference in average dose to the PTV relative to the prescribed dose was found to be 0.166 ± 0.18% which lies within a clinically acceptable range of dose difference of < 0.5% and comparable with multiple studies in literature [11], [12], [34], [35] IV. DISCUSSION…”
In this work, we present a method for synthetic CT (sCT) generation from zero-echo-time (ZTE) MRI aimed at structural and quantitative accuracies of the image, with a particular focus on the accurate bone density value prediction. We propose a loss function that favors a spatially sparse region in the image. We harness the ability of a multi-task network to produce correlated outputs as a framework to enable localization of region of interest (RoI) via classification, emphasize regression of values within RoI and still retain the overall accuracy via global regression. The network is optimized by a composite loss function that combines a dedicated loss from each task. We demonstrate how the multi-task network with RoI focused loss offers an advantage over other configurations of the network to achieve higher accuracy of performance. This is relevant to sCT where failure to accurately estimate high Hounsfield Unit values of bone could lead to impaired accuracy in clinical applications. We compare the dose calculation maps from the proposed sCT and the real CT in a radiation therapy treatment planning setup.
“…HU for the whole brain (Figure 7). The PSNR values were above 24 dB for all brain studies [29,30,32,57,62,72,80,97,98,106] (Figure 8). The DSCs were above 0.96 for the body, 0.…”
Section: Brainmentioning
confidence: 96%
“…Twenty studies used a cGAN architecture to generate sCT from MRI [31,33,50,[56][57][58][59]89,90,[93][94][95][96][97][98][99][100][101][102].…”
Section: I) Ganmentioning
confidence: 99%
“…Twelve studies used a Pix2Pix architecture [31,50,56,89,90,[93][94][95]98,99,102,104]. Most of these…”
“…Deep learning-based synthetic-CT images generated from MRI data [13] , [14] , [15] , [16] could be used in combination with independent dose calculation algorithms for online ‘pre-treatment’ dosimetric verification of the adapted plans. Linac treatment log files, also combined with independent dose calculation algorithms and intrafraction MR imaging, have been used to estimate the daily delivered dose in prostate cancer treatments [17] , [18] .…”
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