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Cluster-Based Toxicity Estimation of Osteoradionecrosis via Unsupervised Machine Learning: Moving Beyond Single Dose-Parameter Normal Tissue Complication Probability by Using Whole Dose-Volume Histograms for Cohort Risk Stratification

PURPOSE: Given the limitations of extant models for normal tissue complication probability estimation for osteoradionecrosis (ORN) of the mandible, the purpose of this study was to enrich statistical inference by exploiting structural properties of data and provide a clinically reliable model for OR...

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Autores principales: Hosseinian, Seyedmohammadhossein, Hemmati, Mehdi, Dede, Cem, Salzillo, Travis C., van Dijk, Lisanne V., Mohamed, Abdallah S. R., Lai, Stephen Y., Schaefer, Andrew J., Fuller, Clifton D.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Cold Spring Harbor Laboratory 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10081413/
https://www.ncbi.nlm.nih.gov/pubmed/37034700
http://dx.doi.org/10.1101/2023.03.24.23287710
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author Hosseinian, Seyedmohammadhossein
Hemmati, Mehdi
Dede, Cem
Salzillo, Travis C.
van Dijk, Lisanne V.
Mohamed, Abdallah S. R.
Lai, Stephen Y.
Schaefer, Andrew J.
Fuller, Clifton D.
author_facet Hosseinian, Seyedmohammadhossein
Hemmati, Mehdi
Dede, Cem
Salzillo, Travis C.
van Dijk, Lisanne V.
Mohamed, Abdallah S. R.
Lai, Stephen Y.
Schaefer, Andrew J.
Fuller, Clifton D.
author_sort Hosseinian, Seyedmohammadhossein
collection PubMed
description PURPOSE: Given the limitations of extant models for normal tissue complication probability estimation for osteoradionecrosis (ORN) of the mandible, the purpose of this study was to enrich statistical inference by exploiting structural properties of data and provide a clinically reliable model for ORN risk evaluation through an unsupervised-learning analysis. MATERIALS AND METHODS: The analysis was conducted on retrospective data of 1,259 head and neck cancer (HNC) patients treated at the University of Texas MD Anderson Cancer Center between 2005 and 2015. The (structural) clusters of mandibular dose-volume histograms (DVHs) were identified through the K-means clustering method. A soft-margin support vector machine (SVM) was used to determine the cluster borders and partition the dose-volume space. The risk of ORN for each dose-volume region was calculated based on the clinical risk factors and incidence rates. RESULTS: The K-means clustering method identified six clusters among the DVHs. Based on the first five clusters, the dose-volume space was partitioned almost perfectly by the soft-margin SVM into distinct regions with different risk indices. The sixth cluster overlapped the others entirely; the region of this cluster was determined by its envelops. These regions and the associated risk indices provide a range of constraints for dose optimization under different risk levels. CONCLUSION: This study presents an unsupervised-learning analysis of a large-scale data set to evaluate the risk of mandibular ORN among HNC patients. The results provide a visual risk-assessment tool (based on the whole DVH) and a spectrum of dose constraints for radiation planning.
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spelling pubmed-100814132023-04-08 Cluster-Based Toxicity Estimation of Osteoradionecrosis via Unsupervised Machine Learning: Moving Beyond Single Dose-Parameter Normal Tissue Complication Probability by Using Whole Dose-Volume Histograms for Cohort Risk Stratification Hosseinian, Seyedmohammadhossein Hemmati, Mehdi Dede, Cem Salzillo, Travis C. van Dijk, Lisanne V. Mohamed, Abdallah S. R. Lai, Stephen Y. Schaefer, Andrew J. Fuller, Clifton D. medRxiv Article PURPOSE: Given the limitations of extant models for normal tissue complication probability estimation for osteoradionecrosis (ORN) of the mandible, the purpose of this study was to enrich statistical inference by exploiting structural properties of data and provide a clinically reliable model for ORN risk evaluation through an unsupervised-learning analysis. MATERIALS AND METHODS: The analysis was conducted on retrospective data of 1,259 head and neck cancer (HNC) patients treated at the University of Texas MD Anderson Cancer Center between 2005 and 2015. The (structural) clusters of mandibular dose-volume histograms (DVHs) were identified through the K-means clustering method. A soft-margin support vector machine (SVM) was used to determine the cluster borders and partition the dose-volume space. The risk of ORN for each dose-volume region was calculated based on the clinical risk factors and incidence rates. RESULTS: The K-means clustering method identified six clusters among the DVHs. Based on the first five clusters, the dose-volume space was partitioned almost perfectly by the soft-margin SVM into distinct regions with different risk indices. The sixth cluster overlapped the others entirely; the region of this cluster was determined by its envelops. These regions and the associated risk indices provide a range of constraints for dose optimization under different risk levels. CONCLUSION: This study presents an unsupervised-learning analysis of a large-scale data set to evaluate the risk of mandibular ORN among HNC patients. The results provide a visual risk-assessment tool (based on the whole DVH) and a spectrum of dose constraints for radiation planning. Cold Spring Harbor Laboratory 2023-03-29 /pmc/articles/PMC10081413/ /pubmed/37034700 http://dx.doi.org/10.1101/2023.03.24.23287710 Text en https://creativecommons.org/licenses/by-nc-nd/4.0/This work is licensed under a Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License (https://creativecommons.org/licenses/by-nc-nd/4.0/) , which allows reusers to copy and distribute the material in any medium or format in unadapted form only, for noncommercial purposes only, and only so long as attribution is given to the creator.
spellingShingle Article
Hosseinian, Seyedmohammadhossein
Hemmati, Mehdi
Dede, Cem
Salzillo, Travis C.
van Dijk, Lisanne V.
Mohamed, Abdallah S. R.
Lai, Stephen Y.
Schaefer, Andrew J.
Fuller, Clifton D.
Cluster-Based Toxicity Estimation of Osteoradionecrosis via Unsupervised Machine Learning: Moving Beyond Single Dose-Parameter Normal Tissue Complication Probability by Using Whole Dose-Volume Histograms for Cohort Risk Stratification
title Cluster-Based Toxicity Estimation of Osteoradionecrosis via Unsupervised Machine Learning: Moving Beyond Single Dose-Parameter Normal Tissue Complication Probability by Using Whole Dose-Volume Histograms for Cohort Risk Stratification
title_full Cluster-Based Toxicity Estimation of Osteoradionecrosis via Unsupervised Machine Learning: Moving Beyond Single Dose-Parameter Normal Tissue Complication Probability by Using Whole Dose-Volume Histograms for Cohort Risk Stratification
title_fullStr Cluster-Based Toxicity Estimation of Osteoradionecrosis via Unsupervised Machine Learning: Moving Beyond Single Dose-Parameter Normal Tissue Complication Probability by Using Whole Dose-Volume Histograms for Cohort Risk Stratification
title_full_unstemmed Cluster-Based Toxicity Estimation of Osteoradionecrosis via Unsupervised Machine Learning: Moving Beyond Single Dose-Parameter Normal Tissue Complication Probability by Using Whole Dose-Volume Histograms for Cohort Risk Stratification
title_short Cluster-Based Toxicity Estimation of Osteoradionecrosis via Unsupervised Machine Learning: Moving Beyond Single Dose-Parameter Normal Tissue Complication Probability by Using Whole Dose-Volume Histograms for Cohort Risk Stratification
title_sort cluster-based toxicity estimation of osteoradionecrosis via unsupervised machine learning: moving beyond single dose-parameter normal tissue complication probability by using whole dose-volume histograms for cohort risk stratification
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10081413/
https://www.ncbi.nlm.nih.gov/pubmed/37034700
http://dx.doi.org/10.1101/2023.03.24.23287710
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