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Improved outcome prediction of oropharyngeal cancer by combining clinical and MRI features in machine learning models

Authors :
Jonas A. Castelijns
Hugo J.W.L. Aerts
Marjaneh Taghavi
Selam Waktola
Regina G. H. Beets-Tan
Abrahim Al-Mamgani
Michiel W. M. van den Brekel
Zeno A R Gouw
Bas Jasperse
Paula Bos
Maxillofacial Surgery (AMC)
RS: GROW - R3 - Innovative Cancer Diagnostics & Therapy
School Office GROW
Faculteit FHML Centraal
Oral and Maxillofacial Surgery
Oral and Maxillofacial Surgery / Oral Pathology
Radiology and nuclear medicine
CCA - Imaging and biomarkers
Source :
European Journal of Radiology, 139:109701. Elsevier Ireland Ltd, Bos, P, van den Brekel, M W M, Gouw, Z A R, Al-Mamgani, A, Taghavi, M, Waktola, S, Aerts, H J W L, Castelijns, J A, Beets-Tan, R G H & Jasperse, B 2021, ' Improved outcome prediction of oropharyngeal cancer by combining clinical and MRI features in machine learning models ', European Journal of Radiology, vol. 139, 109701 . https://doi.org/10.1016/j.ejrad.2021.109701, European journal of radiology, 139:109701. Elsevier Ireland Ltd, Bos, P, van den Brekel, M W M, Gouw, Z A R, Al-Mamgani, A, Taghavi, M, Waktola, S, Aerts, H J W L, Castelijns, J A, Beets-Tan, R G H & Jasperse, B 2021, ' Improved outcome prediction of oropharyngeal cancer by combining clinical and MRI features in machine learning models ', European Journal of Radiology, vol. 139, 109701, pp. 109701 . https://doi.org/10.1016/j.ejrad.2021.109701
Publication Year :
2021

Abstract

OBJECTIVES: New markers are required to predict chemoradiation response in oropharyngeal squamous cell carcinoma (OPSCC) patients. This study evaluated the ability of magnetic resonance (MR) radiomics to predict locoregional control (LRC) and overall survival (OS) after chemoradiation and aimed to determine whether this has added value to traditional clinical outcome predictors.METHODS: 177 OPSCC patients were eligible for this study. Radiomic features were extracted from the primary tumor region in T1-weighted postcontrast MRI acquired before chemoradiation. Logistic regression models were created using either clinical variables (clinical model), radiomic features (radiomic model) or clinical and radiomic features combined (combined model) to predict LRC and OS 2-years posttreatment. Model performance was evaluated using area under the curve (AUC), 95 % confidence intervals were calculated using 500 iterations of bootstrap. All analyses were performed for the total population and the Human papillomavirus (HPV) negative tumor subgroup.RESULTS: A combined model predicted treatment outcome with a higher AUC (LRC: 0.745 [0.734-0.757], OS: 0.744 [0.735-0.753]) than the clinical model (LRC: 0.607 [0.594-0.620], OS: 0.708 [0.697-0.719]). Performance of the radiomic model was comparable to the combined model for LRC (AUC: 0.740 [0.729-0.750]), but not for OS prediction (AUC: 0.654 [0.646-0.662]). In HPV negative patients, the performance of all models was not sufficient with AUCs ranging from 0.587 to 0.660 for LRC and 0.559 to 0.600 for OS prediction.CONCLUSION: Predictive models that include clinical variables and radiomic tumor features derived from MR images of OPSCC better predict LRC after chemoradiation than models based on only clinical variables. Predictive models that include clinical variables perform better than models based on only radiomic features for the prediction of OS.

Details

Language :
English
ISSN :
0720048X
Database :
OpenAIRE
Journal :
European Journal of Radiology, 139:109701. Elsevier Ireland Ltd, Bos, P, van den Brekel, M W M, Gouw, Z A R, Al-Mamgani, A, Taghavi, M, Waktola, S, Aerts, H J W L, Castelijns, J A, Beets-Tan, R G H & Jasperse, B 2021, ' Improved outcome prediction of oropharyngeal cancer by combining clinical and MRI features in machine learning models ', European Journal of Radiology, vol. 139, 109701 . https://doi.org/10.1016/j.ejrad.2021.109701, European journal of radiology, 139:109701. Elsevier Ireland Ltd, Bos, P, van den Brekel, M W M, Gouw, Z A R, Al-Mamgani, A, Taghavi, M, Waktola, S, Aerts, H J W L, Castelijns, J A, Beets-Tan, R G H & Jasperse, B 2021, ' Improved outcome prediction of oropharyngeal cancer by combining clinical and MRI features in machine learning models ', European Journal of Radiology, vol. 139, 109701, pp. 109701 . https://doi.org/10.1016/j.ejrad.2021.109701
Accession number :
edsair.doi.dedup.....e768cf45b5bf8ae98049b3ea6fd68cbc
Full Text :
https://doi.org/10.1016/j.ejrad.2021.109701