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Knowledge-based three-dimensional dose prediction for tandem-and-ovoid brachytherapy.

Authors :
Cortes KG
Kallis K
Simon A
Mayadev J
Meyers SM
Moore KL
Source :
Brachytherapy [Brachytherapy] 2022 Jul-Aug; Vol. 21 (4), pp. 532-542. Date of Electronic Publication: 2022 May 11.
Publication Year :
2022

Abstract

Purpose: The purpose of this work was to develop a knowledge-based dose prediction system using a convolution neural network (CNN) for cervical brachytherapy treatments with a tandem-and-ovoid applicator.<br />Methods: A 3D U-NET CNN was utilized to make voxel-wise dose predictions based on organ-at-risk (OAR), high-risk clinical target volume (HRCTV), and possible source location geometry. The model comprised 395 previously treated cases: training (273), validation (61), test (61). To assess voxel prediction accuracy, we evaluated dose differences in all cohorts across the dose range of 20-130% of prescription, mean (SD) and standard deviation (σ), as well as isodose dice similarity coefficients for clinical and/or predicted dose distributions. We examined discrete Dose-Volume Histogram (DVH) metrics utilized for brachytherapy plan quality assessment (HRCTV D90%; bladder, rectum, and sigmoid D2cc) with ΔD <subscript>x</subscript> =D <subscript>x,actual</subscript> -D <subscript>x,predicted</subscript> mean, standard deviation, and Pearson correlation coefficient further quantifying model performance.<br />Results: Ranges of voxel-wise dose difference accuracy (δD¯±σ) for 20-130% dose interval in training (test) sets ranged from [-0.5% ± 2.0% to +2.0% ± 14.0%] ([-0.1% ± 4.0% to +4.0% ± 26.0%]) in all voxels, [-1.7% ± 5.1% to -3.5% ± 12.8%] ([-2.9% ± 4.8% to -2.6% ± 18.9%]) in HRCTV, [-0.02% ± 2.40% to +3.2% ± 12.0%] ([-2.5% ± 3.6% to +0.8% ± 12.7%]) in bladder, [-0.7% ± 2.4% to +15.5% ± 11.0%] ([-0.9% ± 3.2% to +27.8% ± 11.6%]) in rectum, and [-0.7% ± 2.3% to +10.7% ± 15.0%] ([-0.4% ± 3.0% to +18.4% ± 11.4%]) in sigmoid. Isodose dice similarity coefficients ranged from [0.96,0.91] for training and [0.94,0.87] for test cohorts. Relative DVH metric prediction in the training (test) set were HRCTV ΔD¯ <subscript>90</subscript> ±σ <subscript>ΔD</subscript>  = -0.19 ± 0.55Gy (-0.09 ± 0.67 Gy), bladder ΔD¯ <subscript>2cc</subscript> ±σ <subscript>ΔD</subscript> = -0.06 ± 0.54Gy (-0.17 ± 0.67 Gy), rectum ΔD¯ <subscript>2cc</subscript> ±σ <subscript>ΔD</subscript> = -0.03 ± 0.36Gy (-0.04 ± 0.46 Gy), and sigmoid ΔD¯ <subscript>2cc</subscript> ±σ <subscript>ΔD</subscript> = -0.01 ± 0.34Gy (0.00 ± 0.44 Gy).<br />Conclusions: A 3D knowledge-based dose predictions provide voxel-level and DVH metric estimates that could be used for treatment plan quality control and data-driven plan guidance.<br /> (Copyright © 2022 American Brachytherapy Society. Published by Elsevier Inc. All rights reserved.)

Details

Language :
English
ISSN :
1873-1449
Volume :
21
Issue :
4
Database :
MEDLINE
Journal :
Brachytherapy
Publication Type :
Academic Journal
Accession number :
35562285
Full Text :
https://doi.org/10.1016/j.brachy.2022.03.002