Patient selection for proton therapy using Normal Tissue Complication Probability with deep learning dose prediction for oropharyngeal cancer

BACKGROUND: In cancer care, determining the most beneficial treatment technique is a key decision affecting the patient's survival and quality of life. Patient selection for proton therapy (PT) over conventional radiotherapy (XT) currently entails comparing manually generated treatment plans, w...

Ausführliche Beschreibung

Gespeichert in:
Bibliographische Detailangaben
Veröffentlicht in:MEDICAL PHYSICS 2023-10, Vol.50 (10), p.6201-6214
Hauptverfasser: Huet-Dastarac, Margerie, Michiels, Steven, Rivas, Sara Teruel, Ozan, Hamdiye, Sterpin, Edmond, Lee, John A.A, Barragan-Montero, Ana
Format: Artikel
Sprache:eng
Online-Zugang:Volltext
Tags: Tag hinzufügen
Keine Tags, Fügen Sie den ersten Tag hinzu!
container_end_page 6214
container_issue 10
container_start_page 6201
container_title MEDICAL PHYSICS
container_volume 50
creator Huet-Dastarac, Margerie
Michiels, Steven
Rivas, Sara Teruel
Ozan, Hamdiye
Sterpin, Edmond
Lee, John A.A
Barragan-Montero, Ana
description BACKGROUND: In cancer care, determining the most beneficial treatment technique is a key decision affecting the patient's survival and quality of life. Patient selection for proton therapy (PT) over conventional radiotherapy (XT) currently entails comparing manually generated treatment plans, which requires time and expertise. PURPOSE: We developed an automatic and fast tool, AI-PROTIPP (Artificial Intelligence Predictive Radiation Oncology Treatment Indication to Photons/Protons), that assesses quantitatively the benefits of each therapeutic option. Our method uses deep learning (DL) models to directly predict the dose distributions for a given patient for both XT and PT. By using models that estimate the Normal Tissue Complication Probability (NTCP), namely the likelihood of side effects to occur for a specific patient, AI-PROTIPP can propose a treatment selection quickly and automatically. METHODS: A database of 60 patients presenting oropharyngeal cancer, obtained from the Cliniques Universitaires Saint Luc in Belgium, was used in this study. For every patient, a PT plan and an XT plan were generated. The dose distributions were used to train the two dose DL prediction models (one for each modality). The model is based on U-Net architecture, a type of convolutional neural network currently considered as the state of the art for dose prediction models. A NTCP protocol used in the Dutch model-based approach, including grades II and III xerostomia and grades II and III dysphagia, was later applied in order to perform automatic treatment selection for each patient. The networks were trained using a nested cross-validation approach with 11-folds. We set aside three patients in an outer set and each fold consists of 47 patients in training, five in validation and five for testing. This method allowed us to assess our method on 55 patients (five patients per test times the number of folds). RESULTS: The treatment selection based on the DL-predicted doses reached an accuracy of 87.4% for the threshold parameters set by the Health Council of the Netherlands. The selected treatment is directly linked with these threshold parameters as they express the minimal gain brought by the PT treatment for a patient to be indicated to PT. To validate the performance of AI-PROTIPP in other conditions, we modulated these thresholds, and the accuracy was above 81% for all the considered cases. The difference in average cumulative NTCP per patient of predicted and clinical dos
format Article
fullrecord <record><control><sourceid>kuleuven</sourceid><recordid>TN_cdi_kuleuven_dspace_20_500_12942_721860</recordid><sourceformat>XML</sourceformat><sourcesystem>PC</sourcesystem><sourcerecordid>20_500_12942_721860</sourcerecordid><originalsourceid>FETCH-kuleuven_dspace_20_500_12942_7218603</originalsourceid><addsrcrecordid>eNqVjbFOAzEQRF2AlAD5h62Rgja-u0DqCESFUqS3Nr5NbhPHtmwfcB_BP3MgJFqoZop5by7UFHFVz3WNzURd5XxExGXV4FR9bKgI-wKZHdsiwcM-JIgplLGWjhPFAfos_gAvIZ3JwVZy7hnW4RydWPpmNinsaCdOygBvUjpomSM4puS_yDZkHp3cyu9FSCF2lAZ_4FFqyVtON-pyTy7z7Cev1e3T43b9PD_1jvtX9qbNkSwbjaZBNAu9qrW514uHJVb_HN_9eWzKe6k-ASiJZ6c</addsrcrecordid><sourcetype>Institutional Repository</sourcetype><iscdi>true</iscdi><recordtype>article</recordtype></control><display><type>article</type><title>Patient selection for proton therapy using Normal Tissue Complication Probability with deep learning dose prediction for oropharyngeal cancer</title><source>Lirias (KU Leuven Association)</source><source>Wiley Online Library Journals Frontfile Complete</source><source>Alma/SFX Local Collection</source><creator>Huet-Dastarac, Margerie ; Michiels, Steven ; Rivas, Sara Teruel ; Ozan, Hamdiye ; Sterpin, Edmond ; Lee, John A.A ; Barragan-Montero, Ana</creator><creatorcontrib>Huet-Dastarac, Margerie ; Michiels, Steven ; Rivas, Sara Teruel ; Ozan, Hamdiye ; Sterpin, Edmond ; Lee, John A.A ; Barragan-Montero, Ana</creatorcontrib><description>BACKGROUND: In cancer care, determining the most beneficial treatment technique is a key decision affecting the patient's survival and quality of life. Patient selection for proton therapy (PT) over conventional radiotherapy (XT) currently entails comparing manually generated treatment plans, which requires time and expertise. PURPOSE: We developed an automatic and fast tool, AI-PROTIPP (Artificial Intelligence Predictive Radiation Oncology Treatment Indication to Photons/Protons), that assesses quantitatively the benefits of each therapeutic option. Our method uses deep learning (DL) models to directly predict the dose distributions for a given patient for both XT and PT. By using models that estimate the Normal Tissue Complication Probability (NTCP), namely the likelihood of side effects to occur for a specific patient, AI-PROTIPP can propose a treatment selection quickly and automatically. METHODS: A database of 60 patients presenting oropharyngeal cancer, obtained from the Cliniques Universitaires Saint Luc in Belgium, was used in this study. For every patient, a PT plan and an XT plan were generated. The dose distributions were used to train the two dose DL prediction models (one for each modality). The model is based on U-Net architecture, a type of convolutional neural network currently considered as the state of the art for dose prediction models. A NTCP protocol used in the Dutch model-based approach, including grades II and III xerostomia and grades II and III dysphagia, was later applied in order to perform automatic treatment selection for each patient. The networks were trained using a nested cross-validation approach with 11-folds. We set aside three patients in an outer set and each fold consists of 47 patients in training, five in validation and five for testing. This method allowed us to assess our method on 55 patients (five patients per test times the number of folds). RESULTS: The treatment selection based on the DL-predicted doses reached an accuracy of 87.4% for the threshold parameters set by the Health Council of the Netherlands. The selected treatment is directly linked with these threshold parameters as they express the minimal gain brought by the PT treatment for a patient to be indicated to PT. To validate the performance of AI-PROTIPP in other conditions, we modulated these thresholds, and the accuracy was above 81% for all the considered cases. The difference in average cumulative NTCP per patient of predicted and clinical dose distributions is very similar (less than 1% difference). CONCLUSIONS: AI-PROTIPP shows that using DL dose prediction in combination with NTCP models to select PT for patients is feasible and can help to save time by avoiding the generation of treatment plans only used for the comparison. Moreover, DL models are transferable, allowing, in the future, experience to be shared with centers that would not have PT planning expertise.</description><identifier>ISSN: 0094-2405</identifier><language>eng</language><publisher>WILEY</publisher><ispartof>MEDICAL PHYSICS, 2023-10, Vol.50 (10), p.6201-6214</ispartof><lds50>peer_reviewed</lds50><oa>free_for_read</oa><woscitedreferencessubscribed>false</woscitedreferencessubscribed></display><links><openurl>$$Topenurl_article</openurl><openurlfulltext>$$Topenurlfull_article</openurlfulltext><thumbnail>$$Tsyndetics_thumb_exl</thumbnail><link.rule.ids>314,315,776,780,27837</link.rule.ids></links><search><creatorcontrib>Huet-Dastarac, Margerie</creatorcontrib><creatorcontrib>Michiels, Steven</creatorcontrib><creatorcontrib>Rivas, Sara Teruel</creatorcontrib><creatorcontrib>Ozan, Hamdiye</creatorcontrib><creatorcontrib>Sterpin, Edmond</creatorcontrib><creatorcontrib>Lee, John A.A</creatorcontrib><creatorcontrib>Barragan-Montero, Ana</creatorcontrib><title>Patient selection for proton therapy using Normal Tissue Complication Probability with deep learning dose prediction for oropharyngeal cancer</title><title>MEDICAL PHYSICS</title><description>BACKGROUND: In cancer care, determining the most beneficial treatment technique is a key decision affecting the patient's survival and quality of life. Patient selection for proton therapy (PT) over conventional radiotherapy (XT) currently entails comparing manually generated treatment plans, which requires time and expertise. PURPOSE: We developed an automatic and fast tool, AI-PROTIPP (Artificial Intelligence Predictive Radiation Oncology Treatment Indication to Photons/Protons), that assesses quantitatively the benefits of each therapeutic option. Our method uses deep learning (DL) models to directly predict the dose distributions for a given patient for both XT and PT. By using models that estimate the Normal Tissue Complication Probability (NTCP), namely the likelihood of side effects to occur for a specific patient, AI-PROTIPP can propose a treatment selection quickly and automatically. METHODS: A database of 60 patients presenting oropharyngeal cancer, obtained from the Cliniques Universitaires Saint Luc in Belgium, was used in this study. For every patient, a PT plan and an XT plan were generated. The dose distributions were used to train the two dose DL prediction models (one for each modality). The model is based on U-Net architecture, a type of convolutional neural network currently considered as the state of the art for dose prediction models. A NTCP protocol used in the Dutch model-based approach, including grades II and III xerostomia and grades II and III dysphagia, was later applied in order to perform automatic treatment selection for each patient. The networks were trained using a nested cross-validation approach with 11-folds. We set aside three patients in an outer set and each fold consists of 47 patients in training, five in validation and five for testing. This method allowed us to assess our method on 55 patients (five patients per test times the number of folds). RESULTS: The treatment selection based on the DL-predicted doses reached an accuracy of 87.4% for the threshold parameters set by the Health Council of the Netherlands. The selected treatment is directly linked with these threshold parameters as they express the minimal gain brought by the PT treatment for a patient to be indicated to PT. To validate the performance of AI-PROTIPP in other conditions, we modulated these thresholds, and the accuracy was above 81% for all the considered cases. The difference in average cumulative NTCP per patient of predicted and clinical dose distributions is very similar (less than 1% difference). CONCLUSIONS: AI-PROTIPP shows that using DL dose prediction in combination with NTCP models to select PT for patients is feasible and can help to save time by avoiding the generation of treatment plans only used for the comparison. Moreover, DL models are transferable, allowing, in the future, experience to be shared with centers that would not have PT planning expertise.</description><issn>0094-2405</issn><fulltext>true</fulltext><rsrctype>article</rsrctype><creationdate>2023</creationdate><recordtype>article</recordtype><sourceid>FZOIL</sourceid><recordid>eNqVjbFOAzEQRF2AlAD5h62Rgja-u0DqCESFUqS3Nr5NbhPHtmwfcB_BP3MgJFqoZop5by7UFHFVz3WNzURd5XxExGXV4FR9bKgI-wKZHdsiwcM-JIgplLGWjhPFAfos_gAvIZ3JwVZy7hnW4RydWPpmNinsaCdOygBvUjpomSM4puS_yDZkHp3cyu9FSCF2lAZ_4FFqyVtON-pyTy7z7Cev1e3T43b9PD_1jvtX9qbNkSwbjaZBNAu9qrW514uHJVb_HN_9eWzKe6k-ASiJZ6c</recordid><startdate>202310</startdate><enddate>202310</enddate><creator>Huet-Dastarac, Margerie</creator><creator>Michiels, Steven</creator><creator>Rivas, Sara Teruel</creator><creator>Ozan, Hamdiye</creator><creator>Sterpin, Edmond</creator><creator>Lee, John A.A</creator><creator>Barragan-Montero, Ana</creator><general>WILEY</general><scope>FZOIL</scope></search><sort><creationdate>202310</creationdate><title>Patient selection for proton therapy using Normal Tissue Complication Probability with deep learning dose prediction for oropharyngeal cancer</title><author>Huet-Dastarac, Margerie ; Michiels, Steven ; Rivas, Sara Teruel ; Ozan, Hamdiye ; Sterpin, Edmond ; Lee, John A.A ; Barragan-Montero, Ana</author></sort><facets><frbrtype>5</frbrtype><frbrgroupid>cdi_FETCH-kuleuven_dspace_20_500_12942_7218603</frbrgroupid><rsrctype>articles</rsrctype><prefilter>articles</prefilter><language>eng</language><creationdate>2023</creationdate><toplevel>peer_reviewed</toplevel><toplevel>online_resources</toplevel><creatorcontrib>Huet-Dastarac, Margerie</creatorcontrib><creatorcontrib>Michiels, Steven</creatorcontrib><creatorcontrib>Rivas, Sara Teruel</creatorcontrib><creatorcontrib>Ozan, Hamdiye</creatorcontrib><creatorcontrib>Sterpin, Edmond</creatorcontrib><creatorcontrib>Lee, John A.A</creatorcontrib><creatorcontrib>Barragan-Montero, Ana</creatorcontrib><collection>Lirias (KU Leuven Association)</collection><jtitle>MEDICAL PHYSICS</jtitle></facets><delivery><delcategory>Remote Search Resource</delcategory><fulltext>fulltext</fulltext></delivery><addata><au>Huet-Dastarac, Margerie</au><au>Michiels, Steven</au><au>Rivas, Sara Teruel</au><au>Ozan, Hamdiye</au><au>Sterpin, Edmond</au><au>Lee, John A.A</au><au>Barragan-Montero, Ana</au><format>journal</format><genre>article</genre><ristype>JOUR</ristype><atitle>Patient selection for proton therapy using Normal Tissue Complication Probability with deep learning dose prediction for oropharyngeal cancer</atitle><jtitle>MEDICAL PHYSICS</jtitle><date>2023-10</date><risdate>2023</risdate><volume>50</volume><issue>10</issue><spage>6201</spage><epage>6214</epage><pages>6201-6214</pages><issn>0094-2405</issn><abstract>BACKGROUND: In cancer care, determining the most beneficial treatment technique is a key decision affecting the patient's survival and quality of life. Patient selection for proton therapy (PT) over conventional radiotherapy (XT) currently entails comparing manually generated treatment plans, which requires time and expertise. PURPOSE: We developed an automatic and fast tool, AI-PROTIPP (Artificial Intelligence Predictive Radiation Oncology Treatment Indication to Photons/Protons), that assesses quantitatively the benefits of each therapeutic option. Our method uses deep learning (DL) models to directly predict the dose distributions for a given patient for both XT and PT. By using models that estimate the Normal Tissue Complication Probability (NTCP), namely the likelihood of side effects to occur for a specific patient, AI-PROTIPP can propose a treatment selection quickly and automatically. METHODS: A database of 60 patients presenting oropharyngeal cancer, obtained from the Cliniques Universitaires Saint Luc in Belgium, was used in this study. For every patient, a PT plan and an XT plan were generated. The dose distributions were used to train the two dose DL prediction models (one for each modality). The model is based on U-Net architecture, a type of convolutional neural network currently considered as the state of the art for dose prediction models. A NTCP protocol used in the Dutch model-based approach, including grades II and III xerostomia and grades II and III dysphagia, was later applied in order to perform automatic treatment selection for each patient. The networks were trained using a nested cross-validation approach with 11-folds. We set aside three patients in an outer set and each fold consists of 47 patients in training, five in validation and five for testing. This method allowed us to assess our method on 55 patients (five patients per test times the number of folds). RESULTS: The treatment selection based on the DL-predicted doses reached an accuracy of 87.4% for the threshold parameters set by the Health Council of the Netherlands. The selected treatment is directly linked with these threshold parameters as they express the minimal gain brought by the PT treatment for a patient to be indicated to PT. To validate the performance of AI-PROTIPP in other conditions, we modulated these thresholds, and the accuracy was above 81% for all the considered cases. The difference in average cumulative NTCP per patient of predicted and clinical dose distributions is very similar (less than 1% difference). CONCLUSIONS: AI-PROTIPP shows that using DL dose prediction in combination with NTCP models to select PT for patients is feasible and can help to save time by avoiding the generation of treatment plans only used for the comparison. Moreover, DL models are transferable, allowing, in the future, experience to be shared with centers that would not have PT planning expertise.</abstract><pub>WILEY</pub><oa>free_for_read</oa></addata></record>
fulltext fulltext
identifier ISSN: 0094-2405
ispartof MEDICAL PHYSICS, 2023-10, Vol.50 (10), p.6201-6214
issn 0094-2405
language eng
recordid cdi_kuleuven_dspace_20_500_12942_721860
source Lirias (KU Leuven Association); Wiley Online Library Journals Frontfile Complete; Alma/SFX Local Collection
title Patient selection for proton therapy using Normal Tissue Complication Probability with deep learning dose prediction for oropharyngeal cancer
url https://sfx.bib-bvb.de/sfx_tum?ctx_ver=Z39.88-2004&ctx_enc=info:ofi/enc:UTF-8&ctx_tim=2025-01-29T01%3A15%3A32IST&url_ver=Z39.88-2004&url_ctx_fmt=infofi/fmt:kev:mtx:ctx&rfr_id=info:sid/primo.exlibrisgroup.com:primo3-Article-kuleuven&rft_val_fmt=info:ofi/fmt:kev:mtx:journal&rft.genre=article&rft.atitle=Patient%20selection%20for%20proton%20therapy%20using%20Normal%20Tissue%20Complication%20Probability%20with%20deep%20learning%20dose%20prediction%20for%20oropharyngeal%20cancer&rft.jtitle=MEDICAL%20PHYSICS&rft.au=Huet-Dastarac,%20Margerie&rft.date=2023-10&rft.volume=50&rft.issue=10&rft.spage=6201&rft.epage=6214&rft.pages=6201-6214&rft.issn=0094-2405&rft_id=info:doi/&rft_dat=%3Ckuleuven%3E20_500_12942_721860%3C/kuleuven%3E%3Curl%3E%3C/url%3E&disable_directlink=true&sfx.directlink=off&sfx.report_link=0&rft_id=info:oai/&rft_id=info:pmid/&rfr_iscdi=true