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Variable RBE in proton therapy: comparison of different model predictions and their influence on clinical-like scenarios

Background: In proton radiation therapy a constant relative biological effectiveness (RBE) of 1.1 is usually assumed. However, biological experiments have evidenced RBE dependencies on dose level, proton linear energy transfer (LET) and tissue type. This work compares the predictions of three of the...

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Autores principales: Giovannini, Giulia, Böhlen, Till, Cabal, Gonzalo, Bauer, Julia, Tessonnier, Thomas, Frey, Kathrin, Debus, Jürgen, Mairani, Andrea, Parodi, Katia
Lenguaje:eng
Publicado: 2016
Materias:
Acceso en línea:https://dx.doi.org/10.1186/s13014-016-0642-6
http://cds.cern.ch/record/2268402
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author Giovannini, Giulia
Böhlen, Till
Cabal, Gonzalo
Bauer, Julia
Tessonnier, Thomas
Frey, Kathrin
Debus, Jürgen
Mairani, Andrea
Parodi, Katia
author_facet Giovannini, Giulia
Böhlen, Till
Cabal, Gonzalo
Bauer, Julia
Tessonnier, Thomas
Frey, Kathrin
Debus, Jürgen
Mairani, Andrea
Parodi, Katia
author_sort Giovannini, Giulia
collection CERN
description Background: In proton radiation therapy a constant relative biological effectiveness (RBE) of 1.1 is usually assumed. However, biological experiments have evidenced RBE dependencies on dose level, proton linear energy transfer (LET) and tissue type. This work compares the predictions of three of the main radio-biological models proposed in the literature by Carabe-Fernandez, Wedenberg, Scholz and coworkers. Methods: Using the chosen models, a spread-out Bragg peak (SOBP) as well as two exemplary clinical cases (single field and two fields) for cranial proton irradiation, all delivered with state-of-the-art pencil-beam scanning, have been analyzed in terms of absorbed dose, dose-averaged LET $(LET_D)$, RBE-weighted dose $(D_{RBE})$ and biological range shift distributions. Results: In the systematic comparison of RBE predictions by the three models we could show different levels of agreement depending on $(α/β) x$ and LET values. The SOBP study emphasizes the variation of LET D and RBE not only as a function of depth but also of lateral distance from the central beam axis. Application to clinical-like scenario shows consistent discrepancies from the values obtained for a constant RBE of 1.1, when using a variable RBE scheme for proton irradiation in tissues with low $(α/β) x$ , regardless of the model. Biological range shifts of 0.6– 2.4 mm (for high $(α/β) x )$ and 3.0 – 5.4 mm (for low $(α/β) x )$ were found from the fall-off analysis of individual profiles of RBE-weighted fraction dose along the beam penetration depth. Conclusions: Although more experimental evidence is needed to validate the accuracy of the investigated models and their input parameters, their consistent trend suggests that their main RBE dependencies (dose, LET and $(α/β) x )$ should be included in treatment planning systems. In particular, our results suggest that simpler models based on the linear-quadratic formalism and $LET_D$ might already be sufficient to reproduce important RBE dependencies for re-evaluation of plans optimized with the current RBE = 1.1 approximation. This approach would be a first step forward to consider RBE variations in proton therapy, thus enabling a more robust choice of biological dose delivery. The latter could in turn impact clinical outcome, especially in terms of reduced toxicities for tumors adjacent to organs at risk.
id oai-inspirehep.net-1603399
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2016
record_format invenio
spelling oai-inspirehep.net-16033992019-09-30T06:29:59Zdoi:10.1186/s13014-016-0642-6http://cds.cern.ch/record/2268402engGiovannini, GiuliaBöhlen, TillCabal, GonzaloBauer, JuliaTessonnier, ThomasFrey, KathrinDebus, JürgenMairani, AndreaParodi, KatiaVariable RBE in proton therapy: comparison of different model predictions and their influence on clinical-like scenariosOtherBackground: In proton radiation therapy a constant relative biological effectiveness (RBE) of 1.1 is usually assumed. However, biological experiments have evidenced RBE dependencies on dose level, proton linear energy transfer (LET) and tissue type. This work compares the predictions of three of the main radio-biological models proposed in the literature by Carabe-Fernandez, Wedenberg, Scholz and coworkers. Methods: Using the chosen models, a spread-out Bragg peak (SOBP) as well as two exemplary clinical cases (single field and two fields) for cranial proton irradiation, all delivered with state-of-the-art pencil-beam scanning, have been analyzed in terms of absorbed dose, dose-averaged LET $(LET_D)$, RBE-weighted dose $(D_{RBE})$ and biological range shift distributions. Results: In the systematic comparison of RBE predictions by the three models we could show different levels of agreement depending on $(α/β) x$ and LET values. The SOBP study emphasizes the variation of LET D and RBE not only as a function of depth but also of lateral distance from the central beam axis. Application to clinical-like scenario shows consistent discrepancies from the values obtained for a constant RBE of 1.1, when using a variable RBE scheme for proton irradiation in tissues with low $(α/β) x$ , regardless of the model. Biological range shifts of 0.6– 2.4 mm (for high $(α/β) x )$ and 3.0 – 5.4 mm (for low $(α/β) x )$ were found from the fall-off analysis of individual profiles of RBE-weighted fraction dose along the beam penetration depth. Conclusions: Although more experimental evidence is needed to validate the accuracy of the investigated models and their input parameters, their consistent trend suggests that their main RBE dependencies (dose, LET and $(α/β) x )$ should be included in treatment planning systems. In particular, our results suggest that simpler models based on the linear-quadratic formalism and $LET_D$ might already be sufficient to reproduce important RBE dependencies for re-evaluation of plans optimized with the current RBE = 1.1 approximation. This approach would be a first step forward to consider RBE variations in proton therapy, thus enabling a more robust choice of biological dose delivery. The latter could in turn impact clinical outcome, especially in terms of reduced toxicities for tumors adjacent to organs at risk.oai:inspirehep.net:16033992016
spellingShingle Other
Giovannini, Giulia
Böhlen, Till
Cabal, Gonzalo
Bauer, Julia
Tessonnier, Thomas
Frey, Kathrin
Debus, Jürgen
Mairani, Andrea
Parodi, Katia
Variable RBE in proton therapy: comparison of different model predictions and their influence on clinical-like scenarios
title Variable RBE in proton therapy: comparison of different model predictions and their influence on clinical-like scenarios
title_full Variable RBE in proton therapy: comparison of different model predictions and their influence on clinical-like scenarios
title_fullStr Variable RBE in proton therapy: comparison of different model predictions and their influence on clinical-like scenarios
title_full_unstemmed Variable RBE in proton therapy: comparison of different model predictions and their influence on clinical-like scenarios
title_short Variable RBE in proton therapy: comparison of different model predictions and their influence on clinical-like scenarios
title_sort variable rbe in proton therapy: comparison of different model predictions and their influence on clinical-like scenarios
topic Other
url https://dx.doi.org/10.1186/s13014-016-0642-6
http://cds.cern.ch/record/2268402
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