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Multi-centre radiomics for prediction of recurrence following radical radiotherapy for head and neck cancers: Consequences of feature selection, machine learning classifiers and batch-effect harmonization
BACKGROUND AND PURPOSE: Radiomics models trained with limited single institution data are often not reproducible and generalisable. We developed radiomics models that predict loco-regional recurrence within two years of radiotherapy with private and public datasets and their combinations, to simulat...
Autores principales: | , , , , , , , , , , , , , , , , |
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Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
Elsevier
2023
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Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10227455/ https://www.ncbi.nlm.nih.gov/pubmed/37260438 http://dx.doi.org/10.1016/j.phro.2023.100450 |
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author | Varghese, Amal Joseph Gouthamchand, Varsha Sasidharan, Balu Krishna Wee, Leonard Sidhique, Sharief K Rao, Julia Priyadarshini Dekker, Andre Hoebers, Frank Devakumar, Devadhas Irodi, Aparna Balasingh, Timothy Peace Godson, Henry Finlay Joel, T Mathew, Manu Gunasingam Isiah, Rajesh Pavamani, Simon Pradeep Thomas, Hannah Mary T |
author_facet | Varghese, Amal Joseph Gouthamchand, Varsha Sasidharan, Balu Krishna Wee, Leonard Sidhique, Sharief K Rao, Julia Priyadarshini Dekker, Andre Hoebers, Frank Devakumar, Devadhas Irodi, Aparna Balasingh, Timothy Peace Godson, Henry Finlay Joel, T Mathew, Manu Gunasingam Isiah, Rajesh Pavamani, Simon Pradeep Thomas, Hannah Mary T |
author_sort | Varghese, Amal Joseph |
collection | PubMed |
description | BACKGROUND AND PURPOSE: Radiomics models trained with limited single institution data are often not reproducible and generalisable. We developed radiomics models that predict loco-regional recurrence within two years of radiotherapy with private and public datasets and their combinations, to simulate small and multi-institutional studies and study the responsiveness of the models to feature selection, machine learning algorithms, centre-effect harmonization and increased dataset sizes. MATERIALS AND METHODS: 562 patients histologically confirmed and treated for locally advanced head-and-neck cancer (LA-HNC) from two public and two private datasets; one private dataset exclusively reserved for validation. Clinical contours of primary tumours were not recontoured and were used for Pyradiomics based feature extraction. ComBat harmonization was applied, and LASSO-Logistic Regression (LR) and Support Vector Machine (SVM) models were built. 95% confidence interval (CI) of 1000 bootstrapped area-under-the-Receiver-operating-curves (AUC) provided predictive performance. Responsiveness of the models’ performance to the choice of feature selection methods, ComBat harmonization, machine learning classifier, single and pooled data was evaluated. RESULTS: LASSO and SelectKBest selected 14 and 16 features, respectively; three were overlapping. Without ComBat, the LR and SVM models for three institutional data showed AUCs (CI) of 0.513 (0.481–0.559) and 0.632 (0.586–0.665), respectively. Performances following ComBat revealed AUCs of 0.559 (0.536–0.590) and 0.662 (0.606–0.690), respectively. Compared to single cohort AUCs (0.562–0.629), SVM models from pooled data performed significantly better at AUC = 0.680. CONCLUSIONS: Multi-institutional retrospective data accentuates the existing variabilities that affect radiomics. Carefully designed prospective, multi-institutional studies and data sharing are necessary for clinically relevant head-and-neck cancer prognostication models. |
format | Online Article Text |
id | pubmed-10227455 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2023 |
publisher | Elsevier |
record_format | MEDLINE/PubMed |
spelling | pubmed-102274552023-05-31 Multi-centre radiomics for prediction of recurrence following radical radiotherapy for head and neck cancers: Consequences of feature selection, machine learning classifiers and batch-effect harmonization Varghese, Amal Joseph Gouthamchand, Varsha Sasidharan, Balu Krishna Wee, Leonard Sidhique, Sharief K Rao, Julia Priyadarshini Dekker, Andre Hoebers, Frank Devakumar, Devadhas Irodi, Aparna Balasingh, Timothy Peace Godson, Henry Finlay Joel, T Mathew, Manu Gunasingam Isiah, Rajesh Pavamani, Simon Pradeep Thomas, Hannah Mary T Phys Imaging Radiat Oncol Original Research Article BACKGROUND AND PURPOSE: Radiomics models trained with limited single institution data are often not reproducible and generalisable. We developed radiomics models that predict loco-regional recurrence within two years of radiotherapy with private and public datasets and their combinations, to simulate small and multi-institutional studies and study the responsiveness of the models to feature selection, machine learning algorithms, centre-effect harmonization and increased dataset sizes. MATERIALS AND METHODS: 562 patients histologically confirmed and treated for locally advanced head-and-neck cancer (LA-HNC) from two public and two private datasets; one private dataset exclusively reserved for validation. Clinical contours of primary tumours were not recontoured and were used for Pyradiomics based feature extraction. ComBat harmonization was applied, and LASSO-Logistic Regression (LR) and Support Vector Machine (SVM) models were built. 95% confidence interval (CI) of 1000 bootstrapped area-under-the-Receiver-operating-curves (AUC) provided predictive performance. Responsiveness of the models’ performance to the choice of feature selection methods, ComBat harmonization, machine learning classifier, single and pooled data was evaluated. RESULTS: LASSO and SelectKBest selected 14 and 16 features, respectively; three were overlapping. Without ComBat, the LR and SVM models for three institutional data showed AUCs (CI) of 0.513 (0.481–0.559) and 0.632 (0.586–0.665), respectively. Performances following ComBat revealed AUCs of 0.559 (0.536–0.590) and 0.662 (0.606–0.690), respectively. Compared to single cohort AUCs (0.562–0.629), SVM models from pooled data performed significantly better at AUC = 0.680. CONCLUSIONS: Multi-institutional retrospective data accentuates the existing variabilities that affect radiomics. Carefully designed prospective, multi-institutional studies and data sharing are necessary for clinically relevant head-and-neck cancer prognostication models. Elsevier 2023-05-16 /pmc/articles/PMC10227455/ /pubmed/37260438 http://dx.doi.org/10.1016/j.phro.2023.100450 Text en © 2023 The Authors. Published by Elsevier B.V. on behalf of European Society of Radiotherapy & Oncology. https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/). |
spellingShingle | Original Research Article Varghese, Amal Joseph Gouthamchand, Varsha Sasidharan, Balu Krishna Wee, Leonard Sidhique, Sharief K Rao, Julia Priyadarshini Dekker, Andre Hoebers, Frank Devakumar, Devadhas Irodi, Aparna Balasingh, Timothy Peace Godson, Henry Finlay Joel, T Mathew, Manu Gunasingam Isiah, Rajesh Pavamani, Simon Pradeep Thomas, Hannah Mary T Multi-centre radiomics for prediction of recurrence following radical radiotherapy for head and neck cancers: Consequences of feature selection, machine learning classifiers and batch-effect harmonization |
title | Multi-centre radiomics for prediction of recurrence following radical radiotherapy for head and neck cancers: Consequences of feature selection, machine learning classifiers and batch-effect harmonization |
title_full | Multi-centre radiomics for prediction of recurrence following radical radiotherapy for head and neck cancers: Consequences of feature selection, machine learning classifiers and batch-effect harmonization |
title_fullStr | Multi-centre radiomics for prediction of recurrence following radical radiotherapy for head and neck cancers: Consequences of feature selection, machine learning classifiers and batch-effect harmonization |
title_full_unstemmed | Multi-centre radiomics for prediction of recurrence following radical radiotherapy for head and neck cancers: Consequences of feature selection, machine learning classifiers and batch-effect harmonization |
title_short | Multi-centre radiomics for prediction of recurrence following radical radiotherapy for head and neck cancers: Consequences of feature selection, machine learning classifiers and batch-effect harmonization |
title_sort | multi-centre radiomics for prediction of recurrence following radical radiotherapy for head and neck cancers: consequences of feature selection, machine learning classifiers and batch-effect harmonization |
topic | Original Research Article |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10227455/ https://www.ncbi.nlm.nih.gov/pubmed/37260438 http://dx.doi.org/10.1016/j.phro.2023.100450 |
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