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Machine learning for normal tissue complication probability prediction: Predictive power with versatility and easy implementation

BACKGROUND AND PURPOSE: A popular Normal tissue Complication (NTCP) model deployed to predict radiotherapy (RT) toxicity is the Lyman-Burman Kutcher (LKB) model of tissue complication. Despite the LKB model’s popularity, it can suffer from numerical instability and considers only the generalized mea...

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Autores principales: Samant, Pratik, Ruysscher, Dirk de, Hoebers, Frank, Canters, Richard, Hall, Emma, Nutting, Chris, Maughan, Tim, Van den Heuvel, Frank
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9984444/
https://www.ncbi.nlm.nih.gov/pubmed/36880063
http://dx.doi.org/10.1016/j.ctro.2023.100595
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author Samant, Pratik
Ruysscher, Dirk de
Hoebers, Frank
Canters, Richard
Hall, Emma
Nutting, Chris
Maughan, Tim
Van den Heuvel, Frank
author_facet Samant, Pratik
Ruysscher, Dirk de
Hoebers, Frank
Canters, Richard
Hall, Emma
Nutting, Chris
Maughan, Tim
Van den Heuvel, Frank
author_sort Samant, Pratik
collection PubMed
description BACKGROUND AND PURPOSE: A popular Normal tissue Complication (NTCP) model deployed to predict radiotherapy (RT) toxicity is the Lyman-Burman Kutcher (LKB) model of tissue complication. Despite the LKB model’s popularity, it can suffer from numerical instability and considers only the generalized mean dose (GMD) to an organ. Machine learning (ML) algorithms can potentially offer superior predictive power of the LKB model, and with fewer drawbacks. Here we examine the numerical characteristics and predictive power of the LKB model and compare these with those of ML. MATERIALS AND METHODS: Both an LKB model and ML models were used to predict G2 Xerostomia on patients following RT for head and neck cancer, using the dose volume histogram of parotid glands as the input feature. Model speed, convergence characteristics and predictive power was evaluated on an independent training set. RESULTS: We found that only global optimization algorithms could guarantee a convergent and predictive LKB model. At the same time our results showed that ML models remained unconditionally convergent and predictive, while staying robust to gradient descent optimization. ML models outperform LKB in Brier score and accuracy but compare to LKB in ROC-AUC. CONCLUSION: We have demonstrated that ML models can quantify NTCP better than or as well as LKB models, even for a toxicity that the LKB model is particularly well suited to predict. ML models can offer this performance while offering fundamental advantages in model convergence, speed, and flexibility, and so could offer an alternative to the LKB model that could potentially be used in clinical RT planning decisions.
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spelling pubmed-99844442023-03-05 Machine learning for normal tissue complication probability prediction: Predictive power with versatility and easy implementation Samant, Pratik Ruysscher, Dirk de Hoebers, Frank Canters, Richard Hall, Emma Nutting, Chris Maughan, Tim Van den Heuvel, Frank Clin Transl Radiat Oncol Article BACKGROUND AND PURPOSE: A popular Normal tissue Complication (NTCP) model deployed to predict radiotherapy (RT) toxicity is the Lyman-Burman Kutcher (LKB) model of tissue complication. Despite the LKB model’s popularity, it can suffer from numerical instability and considers only the generalized mean dose (GMD) to an organ. Machine learning (ML) algorithms can potentially offer superior predictive power of the LKB model, and with fewer drawbacks. Here we examine the numerical characteristics and predictive power of the LKB model and compare these with those of ML. MATERIALS AND METHODS: Both an LKB model and ML models were used to predict G2 Xerostomia on patients following RT for head and neck cancer, using the dose volume histogram of parotid glands as the input feature. Model speed, convergence characteristics and predictive power was evaluated on an independent training set. RESULTS: We found that only global optimization algorithms could guarantee a convergent and predictive LKB model. At the same time our results showed that ML models remained unconditionally convergent and predictive, while staying robust to gradient descent optimization. ML models outperform LKB in Brier score and accuracy but compare to LKB in ROC-AUC. CONCLUSION: We have demonstrated that ML models can quantify NTCP better than or as well as LKB models, even for a toxicity that the LKB model is particularly well suited to predict. ML models can offer this performance while offering fundamental advantages in model convergence, speed, and flexibility, and so could offer an alternative to the LKB model that could potentially be used in clinical RT planning decisions. Elsevier 2023-02-10 /pmc/articles/PMC9984444/ /pubmed/36880063 http://dx.doi.org/10.1016/j.ctro.2023.100595 Text en © 2023 The Author(s) 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 Article
Samant, Pratik
Ruysscher, Dirk de
Hoebers, Frank
Canters, Richard
Hall, Emma
Nutting, Chris
Maughan, Tim
Van den Heuvel, Frank
Machine learning for normal tissue complication probability prediction: Predictive power with versatility and easy implementation
title Machine learning for normal tissue complication probability prediction: Predictive power with versatility and easy implementation
title_full Machine learning for normal tissue complication probability prediction: Predictive power with versatility and easy implementation
title_fullStr Machine learning for normal tissue complication probability prediction: Predictive power with versatility and easy implementation
title_full_unstemmed Machine learning for normal tissue complication probability prediction: Predictive power with versatility and easy implementation
title_short Machine learning for normal tissue complication probability prediction: Predictive power with versatility and easy implementation
title_sort machine learning for normal tissue complication probability prediction: predictive power with versatility and easy implementation
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9984444/
https://www.ncbi.nlm.nih.gov/pubmed/36880063
http://dx.doi.org/10.1016/j.ctro.2023.100595
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