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Personalized Treatment Planning Automation in Prostate Cancer Radiation Oncology: A Comprehensive Dosimetric Study

BACKGROUND: In radiation oncology, automation of treatment planning has reported the potential to improve plan quality and increase planning efficiency. We performed a comprehensive dosimetric evaluation of the new Personalized algorithm implemented in Pinnacle(3) for full planning automation of VMA...

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Autores principales: Cilla, Savino, Romano, Carmela, Morabito, Vittoria E., Macchia, Gabriella, Buwenge, Milly, Dinapoli, Nicola, Indovina, Luca, Strigari, Lidia, Morganti, Alessio G., Valentini, Vincenzo, Deodato, Francesco
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8204695/
https://www.ncbi.nlm.nih.gov/pubmed/34141608
http://dx.doi.org/10.3389/fonc.2021.636529
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author Cilla, Savino
Romano, Carmela
Morabito, Vittoria E.
Macchia, Gabriella
Buwenge, Milly
Dinapoli, Nicola
Indovina, Luca
Strigari, Lidia
Morganti, Alessio G.
Valentini, Vincenzo
Deodato, Francesco
author_facet Cilla, Savino
Romano, Carmela
Morabito, Vittoria E.
Macchia, Gabriella
Buwenge, Milly
Dinapoli, Nicola
Indovina, Luca
Strigari, Lidia
Morganti, Alessio G.
Valentini, Vincenzo
Deodato, Francesco
author_sort Cilla, Savino
collection PubMed
description BACKGROUND: In radiation oncology, automation of treatment planning has reported the potential to improve plan quality and increase planning efficiency. We performed a comprehensive dosimetric evaluation of the new Personalized algorithm implemented in Pinnacle(3) for full planning automation of VMAT prostate cancer treatments. MATERIAL AND METHODS: Thirteen low-risk prostate (without lymph-nodes irradiation) and 13 high-risk prostate (with lymph-nodes irradiation) treatments were retrospectively taken from our clinical database and re-optimized using two different automated engines implemented in the Pinnacle treatment system. These two automated engines, the currently used Autoplanning and the new Personalized are both template-based algorithms that use a wish-list to formulate the planning goals and an iterative approach able to mimic the planning procedure usually adopted by experienced planners. In addition, the new Personalized module integrates a new engine, the Feasibility module, able to generate an “a priori” DVH prediction of the achievability of planning goals. Comparison between clinically accepted manually generated (MP) and automated plans generated with both Autoplanning (AP) and Personalized engines (Pers) were performed using dose-volume histogram metrics and conformity indexes. Three different normal tissue complication probabilities (NTCPs) models were used for rectal toxicity evaluation. The planning efficiency and the accuracy of dose delivery were assessed for all plans. RESULTS: For similar targets coverage, Pers plans reported a significant increase of dose conformity and less irradiation of healthy tissue, with significant dose reduction for rectum, bladder, and femurs. On average, Pers plans decreased rectal mean dose by 11.3 and 8.3 Gy for low-risk and high-risk cohorts, respectively. Similarly, the Pers plans decreased the bladder mean doses by 7.3 and 7.6 Gy for low-risk and high-risk cohorts, respectively. The integral dose was reduced by 11–16% with respect to MP plans. Overall planning times were dramatically reduced to about 7 and 15 min for Pers plans. Despite the increased complexity, all plans passed the 3%/2 mm γ-analysis for dose verification. CONCLUSIONS: The Personalized engine provided an overall increase of plan quality, in terms of dose conformity and sparing of normal tissues for prostate cancer patients. The Feasibility “a priori” DVH prediction module provided OARs dose sparing well beyond the clinical objectives. The new Pinnacle Personalized algorithms outperformed the currently used Autoplanning ones as solution for treatment planning automation.
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spelling pubmed-82046952021-06-16 Personalized Treatment Planning Automation in Prostate Cancer Radiation Oncology: A Comprehensive Dosimetric Study Cilla, Savino Romano, Carmela Morabito, Vittoria E. Macchia, Gabriella Buwenge, Milly Dinapoli, Nicola Indovina, Luca Strigari, Lidia Morganti, Alessio G. Valentini, Vincenzo Deodato, Francesco Front Oncol Oncology BACKGROUND: In radiation oncology, automation of treatment planning has reported the potential to improve plan quality and increase planning efficiency. We performed a comprehensive dosimetric evaluation of the new Personalized algorithm implemented in Pinnacle(3) for full planning automation of VMAT prostate cancer treatments. MATERIAL AND METHODS: Thirteen low-risk prostate (without lymph-nodes irradiation) and 13 high-risk prostate (with lymph-nodes irradiation) treatments were retrospectively taken from our clinical database and re-optimized using two different automated engines implemented in the Pinnacle treatment system. These two automated engines, the currently used Autoplanning and the new Personalized are both template-based algorithms that use a wish-list to formulate the planning goals and an iterative approach able to mimic the planning procedure usually adopted by experienced planners. In addition, the new Personalized module integrates a new engine, the Feasibility module, able to generate an “a priori” DVH prediction of the achievability of planning goals. Comparison between clinically accepted manually generated (MP) and automated plans generated with both Autoplanning (AP) and Personalized engines (Pers) were performed using dose-volume histogram metrics and conformity indexes. Three different normal tissue complication probabilities (NTCPs) models were used for rectal toxicity evaluation. The planning efficiency and the accuracy of dose delivery were assessed for all plans. RESULTS: For similar targets coverage, Pers plans reported a significant increase of dose conformity and less irradiation of healthy tissue, with significant dose reduction for rectum, bladder, and femurs. On average, Pers plans decreased rectal mean dose by 11.3 and 8.3 Gy for low-risk and high-risk cohorts, respectively. Similarly, the Pers plans decreased the bladder mean doses by 7.3 and 7.6 Gy for low-risk and high-risk cohorts, respectively. The integral dose was reduced by 11–16% with respect to MP plans. Overall planning times were dramatically reduced to about 7 and 15 min for Pers plans. Despite the increased complexity, all plans passed the 3%/2 mm γ-analysis for dose verification. CONCLUSIONS: The Personalized engine provided an overall increase of plan quality, in terms of dose conformity and sparing of normal tissues for prostate cancer patients. The Feasibility “a priori” DVH prediction module provided OARs dose sparing well beyond the clinical objectives. The new Pinnacle Personalized algorithms outperformed the currently used Autoplanning ones as solution for treatment planning automation. Frontiers Media S.A. 2021-06-01 /pmc/articles/PMC8204695/ /pubmed/34141608 http://dx.doi.org/10.3389/fonc.2021.636529 Text en Copyright © 2021 Cilla, Romano, Morabito, Macchia, Buwenge, Dinapoli, Indovina, Strigari, Morganti, Valentini and Deodato https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Oncology
Cilla, Savino
Romano, Carmela
Morabito, Vittoria E.
Macchia, Gabriella
Buwenge, Milly
Dinapoli, Nicola
Indovina, Luca
Strigari, Lidia
Morganti, Alessio G.
Valentini, Vincenzo
Deodato, Francesco
Personalized Treatment Planning Automation in Prostate Cancer Radiation Oncology: A Comprehensive Dosimetric Study
title Personalized Treatment Planning Automation in Prostate Cancer Radiation Oncology: A Comprehensive Dosimetric Study
title_full Personalized Treatment Planning Automation in Prostate Cancer Radiation Oncology: A Comprehensive Dosimetric Study
title_fullStr Personalized Treatment Planning Automation in Prostate Cancer Radiation Oncology: A Comprehensive Dosimetric Study
title_full_unstemmed Personalized Treatment Planning Automation in Prostate Cancer Radiation Oncology: A Comprehensive Dosimetric Study
title_short Personalized Treatment Planning Automation in Prostate Cancer Radiation Oncology: A Comprehensive Dosimetric Study
title_sort personalized treatment planning automation in prostate cancer radiation oncology: a comprehensive dosimetric study
topic Oncology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8204695/
https://www.ncbi.nlm.nih.gov/pubmed/34141608
http://dx.doi.org/10.3389/fonc.2021.636529
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