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Fast, Automated, Knowledge-Based Treatment Planning for Selecting Patients for Proton Therapy Based on Normal Tissue Complication Probabilities

PURPOSE: Selecting patients who will benefit from proton therapy is laborious and subjective. We demonstrate a novel automated solution for creating high-quality knowledge-based plans (KBPs) using proton and photon beams to identify patients for proton treatment based on their normal tissue complica...

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Autores principales: Hytönen, Roni, Vergeer, Marije R., Vanderstraeten, Reynald, Koponen, Timo K., Smith, Christel, Verbakel, Wilko F.A.R.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8904224/
https://www.ncbi.nlm.nih.gov/pubmed/35282398
http://dx.doi.org/10.1016/j.adro.2022.100903
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author Hytönen, Roni
Vergeer, Marije R.
Vanderstraeten, Reynald
Koponen, Timo K.
Smith, Christel
Verbakel, Wilko F.A.R.
author_facet Hytönen, Roni
Vergeer, Marije R.
Vanderstraeten, Reynald
Koponen, Timo K.
Smith, Christel
Verbakel, Wilko F.A.R.
author_sort Hytönen, Roni
collection PubMed
description PURPOSE: Selecting patients who will benefit from proton therapy is laborious and subjective. We demonstrate a novel automated solution for creating high-quality knowledge-based plans (KBPs) using proton and photon beams to identify patients for proton treatment based on their normal tissue complication probabilities (NTCP). METHODS AND MATERIALS: Two previously validated RapidPlan PT models for locally advanced head and neck cancer were used in combination with scripting to automatically create proton and photon KBPs for 72 patients with recent oropharynx cancer. NTCPs were calculated for each patient based on the KBPs, and patient selection was simulated according to the current Dutch national protocol. RESULTS: The photon/proton KBP exhibited good correlation between predicted and achieved organ-at-risk mean doses, with a ≤5 Gy difference in 208/196 out of 215 structures relevant for the head and neck cancer NTCP model. The proton KBPs yielded on average 7.1/6.1/7.6 Gy lower dose to salivary/swallowing structures/oral cavity than the photon KBPs. This reduced average grade 2/3 dysphagia and xerostomia by 7.1/3.3 and 5.5/2.0 percentage points, resulting in 16 of 72 patients (22%) being indicated for proton treatment. The entire automated process took <30 minutes per patient. CONCLUSIONS: Automated support for decision making using KBP is feasible and fast. The planning solution has potential to speed up the planning and patient-selection process significantly without major compromises to the plan quality.
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spelling pubmed-89042242022-03-10 Fast, Automated, Knowledge-Based Treatment Planning for Selecting Patients for Proton Therapy Based on Normal Tissue Complication Probabilities Hytönen, Roni Vergeer, Marije R. Vanderstraeten, Reynald Koponen, Timo K. Smith, Christel Verbakel, Wilko F.A.R. Adv Radiat Oncol Scientific Article PURPOSE: Selecting patients who will benefit from proton therapy is laborious and subjective. We demonstrate a novel automated solution for creating high-quality knowledge-based plans (KBPs) using proton and photon beams to identify patients for proton treatment based on their normal tissue complication probabilities (NTCP). METHODS AND MATERIALS: Two previously validated RapidPlan PT models for locally advanced head and neck cancer were used in combination with scripting to automatically create proton and photon KBPs for 72 patients with recent oropharynx cancer. NTCPs were calculated for each patient based on the KBPs, and patient selection was simulated according to the current Dutch national protocol. RESULTS: The photon/proton KBP exhibited good correlation between predicted and achieved organ-at-risk mean doses, with a ≤5 Gy difference in 208/196 out of 215 structures relevant for the head and neck cancer NTCP model. The proton KBPs yielded on average 7.1/6.1/7.6 Gy lower dose to salivary/swallowing structures/oral cavity than the photon KBPs. This reduced average grade 2/3 dysphagia and xerostomia by 7.1/3.3 and 5.5/2.0 percentage points, resulting in 16 of 72 patients (22%) being indicated for proton treatment. The entire automated process took <30 minutes per patient. CONCLUSIONS: Automated support for decision making using KBP is feasible and fast. The planning solution has potential to speed up the planning and patient-selection process significantly without major compromises to the plan quality. Elsevier 2022-01-28 /pmc/articles/PMC8904224/ /pubmed/35282398 http://dx.doi.org/10.1016/j.adro.2022.100903 Text en © 2022 The Authors https://creativecommons.org/licenses/by/4.0/This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Scientific Article
Hytönen, Roni
Vergeer, Marije R.
Vanderstraeten, Reynald
Koponen, Timo K.
Smith, Christel
Verbakel, Wilko F.A.R.
Fast, Automated, Knowledge-Based Treatment Planning for Selecting Patients for Proton Therapy Based on Normal Tissue Complication Probabilities
title Fast, Automated, Knowledge-Based Treatment Planning for Selecting Patients for Proton Therapy Based on Normal Tissue Complication Probabilities
title_full Fast, Automated, Knowledge-Based Treatment Planning for Selecting Patients for Proton Therapy Based on Normal Tissue Complication Probabilities
title_fullStr Fast, Automated, Knowledge-Based Treatment Planning for Selecting Patients for Proton Therapy Based on Normal Tissue Complication Probabilities
title_full_unstemmed Fast, Automated, Knowledge-Based Treatment Planning for Selecting Patients for Proton Therapy Based on Normal Tissue Complication Probabilities
title_short Fast, Automated, Knowledge-Based Treatment Planning for Selecting Patients for Proton Therapy Based on Normal Tissue Complication Probabilities
title_sort fast, automated, knowledge-based treatment planning for selecting patients for proton therapy based on normal tissue complication probabilities
topic Scientific Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8904224/
https://www.ncbi.nlm.nih.gov/pubmed/35282398
http://dx.doi.org/10.1016/j.adro.2022.100903
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