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Target dose conversion modeling from pencil beam (PB) to Monte Carlo (MC) for lung SBRT

BACKGROUND: A challenge preventing routine clinical implementation of Monte Carlo (MC)-based lung SBRT is the difficulty of reinterpreting historical outcome data calculated with inaccurate dose algorithms, because the target dose was found to decrease to varying degrees when recalculated with MC. T...

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Autores principales: Zheng, Dandan, Zhu, Xiaofeng, Zhang, Qinghui, Liang, Xiaoying, Zhen, Weining, Lin, Chi, Verma, Vivek, Wang, Shuo, Wahl, Andrew, Lei, Yu, Zhou, Sumin, Zhang, Chi
Formato: Online Artículo Texto
Lenguaje:English
Publicado: BioMed Central 2016
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4912806/
https://www.ncbi.nlm.nih.gov/pubmed/27316922
http://dx.doi.org/10.1186/s13014-016-0661-3
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author Zheng, Dandan
Zhu, Xiaofeng
Zhang, Qinghui
Liang, Xiaoying
Zhen, Weining
Lin, Chi
Verma, Vivek
Wang, Shuo
Wahl, Andrew
Lei, Yu
Zhou, Sumin
Zhang, Chi
author_facet Zheng, Dandan
Zhu, Xiaofeng
Zhang, Qinghui
Liang, Xiaoying
Zhen, Weining
Lin, Chi
Verma, Vivek
Wang, Shuo
Wahl, Andrew
Lei, Yu
Zhou, Sumin
Zhang, Chi
author_sort Zheng, Dandan
collection PubMed
description BACKGROUND: A challenge preventing routine clinical implementation of Monte Carlo (MC)-based lung SBRT is the difficulty of reinterpreting historical outcome data calculated with inaccurate dose algorithms, because the target dose was found to decrease to varying degrees when recalculated with MC. The large variability was previously found to be affected by factors such as tumour size, location, and lung density, usually through sub-group comparisons. We hereby conducted a pilot study to systematically and quantitatively analyze these patient factors and explore accurate target dose conversion models, so that large-scale historical outcome data can be correlated with more accurate MC dose without recalculation. METHODS: Twenty-one patients that underwent SBRT for early-stage lung cancer were replanned with 6MV 360° dynamic conformal arcs using pencil-beam (PB) and recalculated with MC. The percent D95 difference (PB-MC) was calculated for the PTV and GTV. Using single linear regression, this difference was correlated with the following quantitative patient indices: maximum tumour diameter (MaxD); PTV and GTV volumes; minimum distance from tumour to soft tissue (dmin); and mean density and standard deviation of the PTV, GTV, PTV margin, lung, and 2 mm, 15 mm, 50 mm shells outside the PTV. Multiple linear regression and artificial neural network (ANN) were employed to model multiple factors and improve dose conversion accuracy. RESULTS: Single linear regression with PTV D95 deficiency identified the strongest correlation on mean-density (location) indices, weaker on lung density, and the weakest on size indices, with the following R(2) values in decreasing orders: shell2mm (0.71), PTV (0.68), PTV margin (0.65), shell15mm (0.62), shell50mm (0.49), lung (0.40), dmin (0.22), GTV (0.19), MaxD (0.17), PTV volume (0.15), and GTV volume (0.08). A multiple linear regression model yielded the significance factor of 3.0E-7 using two independent features: mean density of shell2mm (P = 1.6E-7) and PTV volume (P = 0.006). A 4-feature ANN model slightly improved the modeling accuracy. CONCLUSION: Quantifiable density features were proposed, replacing simple central/peripheral location designation, which showed strong correlations with PB-to-MC target dose conversion magnitude, followed by lung density and target size. Density in the immediate outer and inner areas of the PTV showed the strongest correlations. A multiple linear regression model with one such feature and PTV volume established a high significance factor, improving dose conversion accuracy.
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spelling pubmed-49128062016-06-19 Target dose conversion modeling from pencil beam (PB) to Monte Carlo (MC) for lung SBRT Zheng, Dandan Zhu, Xiaofeng Zhang, Qinghui Liang, Xiaoying Zhen, Weining Lin, Chi Verma, Vivek Wang, Shuo Wahl, Andrew Lei, Yu Zhou, Sumin Zhang, Chi Radiat Oncol Research BACKGROUND: A challenge preventing routine clinical implementation of Monte Carlo (MC)-based lung SBRT is the difficulty of reinterpreting historical outcome data calculated with inaccurate dose algorithms, because the target dose was found to decrease to varying degrees when recalculated with MC. The large variability was previously found to be affected by factors such as tumour size, location, and lung density, usually through sub-group comparisons. We hereby conducted a pilot study to systematically and quantitatively analyze these patient factors and explore accurate target dose conversion models, so that large-scale historical outcome data can be correlated with more accurate MC dose without recalculation. METHODS: Twenty-one patients that underwent SBRT for early-stage lung cancer were replanned with 6MV 360° dynamic conformal arcs using pencil-beam (PB) and recalculated with MC. The percent D95 difference (PB-MC) was calculated for the PTV and GTV. Using single linear regression, this difference was correlated with the following quantitative patient indices: maximum tumour diameter (MaxD); PTV and GTV volumes; minimum distance from tumour to soft tissue (dmin); and mean density and standard deviation of the PTV, GTV, PTV margin, lung, and 2 mm, 15 mm, 50 mm shells outside the PTV. Multiple linear regression and artificial neural network (ANN) were employed to model multiple factors and improve dose conversion accuracy. RESULTS: Single linear regression with PTV D95 deficiency identified the strongest correlation on mean-density (location) indices, weaker on lung density, and the weakest on size indices, with the following R(2) values in decreasing orders: shell2mm (0.71), PTV (0.68), PTV margin (0.65), shell15mm (0.62), shell50mm (0.49), lung (0.40), dmin (0.22), GTV (0.19), MaxD (0.17), PTV volume (0.15), and GTV volume (0.08). A multiple linear regression model yielded the significance factor of 3.0E-7 using two independent features: mean density of shell2mm (P = 1.6E-7) and PTV volume (P = 0.006). A 4-feature ANN model slightly improved the modeling accuracy. CONCLUSION: Quantifiable density features were proposed, replacing simple central/peripheral location designation, which showed strong correlations with PB-to-MC target dose conversion magnitude, followed by lung density and target size. Density in the immediate outer and inner areas of the PTV showed the strongest correlations. A multiple linear regression model with one such feature and PTV volume established a high significance factor, improving dose conversion accuracy. BioMed Central 2016-06-17 /pmc/articles/PMC4912806/ /pubmed/27316922 http://dx.doi.org/10.1186/s13014-016-0661-3 Text en © The Author(s). 2016 Open AccessThis article is distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons license, and indicate if changes were made. The Creative Commons Public Domain Dedication waiver (http://creativecommons.org/publicdomain/zero/1.0/) applies to the data made available in this article, unless otherwise stated.
spellingShingle Research
Zheng, Dandan
Zhu, Xiaofeng
Zhang, Qinghui
Liang, Xiaoying
Zhen, Weining
Lin, Chi
Verma, Vivek
Wang, Shuo
Wahl, Andrew
Lei, Yu
Zhou, Sumin
Zhang, Chi
Target dose conversion modeling from pencil beam (PB) to Monte Carlo (MC) for lung SBRT
title Target dose conversion modeling from pencil beam (PB) to Monte Carlo (MC) for lung SBRT
title_full Target dose conversion modeling from pencil beam (PB) to Monte Carlo (MC) for lung SBRT
title_fullStr Target dose conversion modeling from pencil beam (PB) to Monte Carlo (MC) for lung SBRT
title_full_unstemmed Target dose conversion modeling from pencil beam (PB) to Monte Carlo (MC) for lung SBRT
title_short Target dose conversion modeling from pencil beam (PB) to Monte Carlo (MC) for lung SBRT
title_sort target dose conversion modeling from pencil beam (pb) to monte carlo (mc) for lung sbrt
topic Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4912806/
https://www.ncbi.nlm.nih.gov/pubmed/27316922
http://dx.doi.org/10.1186/s13014-016-0661-3
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