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Predicting the tumor response to chemoradiotherapy for rectal cancer: Model development and external validation using MRI radiomics

•MRI radiomics predict the response to chemoradiation in patients with rectal cancer.•RMRI-based radiomics models do not outperform a four-feature semantic MRI model.•MRI models provide the potential for non-invasive selection of responding patients.•These findings can be used to tailor the treatmen...

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Published in:Radiotherapy and oncology 2020-01, Vol.142, p.246-252
Main Authors: Bulens, Philippe, Couwenberg, Alice, Intven, Martijn, Debucquoy, Annelies, Vandecaveye, Vincent, Van Cutsem, Eric, D'Hoore, André, Wolthuis, Albert, Mukherjee, Pritam, Gevaert, Olivier, Haustermans, Karin
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container_title Radiotherapy and oncology
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creator Bulens, Philippe
Couwenberg, Alice
Intven, Martijn
Debucquoy, Annelies
Vandecaveye, Vincent
Van Cutsem, Eric
D'Hoore, André
Wolthuis, Albert
Mukherjee, Pritam
Gevaert, Olivier
Haustermans, Karin
description •MRI radiomics predict the response to chemoradiation in patients with rectal cancer.•RMRI-based radiomics models do not outperform a four-feature semantic MRI model.•MRI models provide the potential for non-invasive selection of responding patients.•These findings can be used to tailor the treatment for patients with rectal cancer. In well-responding patients to chemoradiotherapy for locally advanced rectal cancer (LARC), a watch-and-wait strategy can be considered. To implement organ-sparing strategies, accurate patient selection is needed. We investigate the use of MRI-based radiomics models to predict tumor response to improve patient selection. Models were developed in a cohort of 70 patients and validated in an external cohort of 55 patients. Patients received chemoradiation followed by surgery and underwent T2-weighted and diffusion-weighted MRI (DW-MRI) before and after chemoradiation. The outcome measure was (near-)complete pathological tumor response (ypT0-1N0). Tumor segmentation was done on T2-images and transferred to b800-images and ADC maps, after which quantitative and four semantic features were extracted. We combined features using principal component analysis and built models using LASSO regression analysis. The best models based on precision and performance were selected for validation. 21/70 patients (30%) achieved ypT0-1N0 in the development cohort versus 13/55 patients (24%) in the validation cohort. Three models (t2_dwi_pre_post, semantic_dwi_adc_pre, semantic_dwi_post) were identified with an area-under-the-curve (AUC) of 0.83 (95% CI 0.70–0.95), 0.86 (95% CI 0.75–0.98) and 0.84 (95% CI 0.75–0.94) respectively. Two models (t2_dwi_pre_post, semantic_dwi_post) validated well in the external cohort with AUCs of 0.83 (95% CI 0.70–0.95) and 0.86 (95% CI 0.76–0.97). These models however did not outperform a previously established four-feature semantic model. Prediction models based on MRI radiomics non-invasively predict tumor response after chemoradiation for rectal cancer and can be used as an additional tool to identify patients eligible for an organ-preserving treatment.
doi_str_mv 10.1016/j.radonc.2019.07.033
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In well-responding patients to chemoradiotherapy for locally advanced rectal cancer (LARC), a watch-and-wait strategy can be considered. To implement organ-sparing strategies, accurate patient selection is needed. We investigate the use of MRI-based radiomics models to predict tumor response to improve patient selection. Models were developed in a cohort of 70 patients and validated in an external cohort of 55 patients. Patients received chemoradiation followed by surgery and underwent T2-weighted and diffusion-weighted MRI (DW-MRI) before and after chemoradiation. The outcome measure was (near-)complete pathological tumor response (ypT0-1N0). Tumor segmentation was done on T2-images and transferred to b800-images and ADC maps, after which quantitative and four semantic features were extracted. We combined features using principal component analysis and built models using LASSO regression analysis. The best models based on precision and performance were selected for validation. 21/70 patients (30%) achieved ypT0-1N0 in the development cohort versus 13/55 patients (24%) in the validation cohort. Three models (t2_dwi_pre_post, semantic_dwi_adc_pre, semantic_dwi_post) were identified with an area-under-the-curve (AUC) of 0.83 (95% CI 0.70–0.95), 0.86 (95% CI 0.75–0.98) and 0.84 (95% CI 0.75–0.94) respectively. Two models (t2_dwi_pre_post, semantic_dwi_post) validated well in the external cohort with AUCs of 0.83 (95% CI 0.70–0.95) and 0.86 (95% CI 0.76–0.97). These models however did not outperform a previously established four-feature semantic model. 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In well-responding patients to chemoradiotherapy for locally advanced rectal cancer (LARC), a watch-and-wait strategy can be considered. To implement organ-sparing strategies, accurate patient selection is needed. We investigate the use of MRI-based radiomics models to predict tumor response to improve patient selection. Models were developed in a cohort of 70 patients and validated in an external cohort of 55 patients. Patients received chemoradiation followed by surgery and underwent T2-weighted and diffusion-weighted MRI (DW-MRI) before and after chemoradiation. The outcome measure was (near-)complete pathological tumor response (ypT0-1N0). Tumor segmentation was done on T2-images and transferred to b800-images and ADC maps, after which quantitative and four semantic features were extracted. We combined features using principal component analysis and built models using LASSO regression analysis. 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In well-responding patients to chemoradiotherapy for locally advanced rectal cancer (LARC), a watch-and-wait strategy can be considered. To implement organ-sparing strategies, accurate patient selection is needed. We investigate the use of MRI-based radiomics models to predict tumor response to improve patient selection. Models were developed in a cohort of 70 patients and validated in an external cohort of 55 patients. Patients received chemoradiation followed by surgery and underwent T2-weighted and diffusion-weighted MRI (DW-MRI) before and after chemoradiation. The outcome measure was (near-)complete pathological tumor response (ypT0-1N0). Tumor segmentation was done on T2-images and transferred to b800-images and ADC maps, after which quantitative and four semantic features were extracted. We combined features using principal component analysis and built models using LASSO regression analysis. 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source Elsevier
subjects Aged
Chemoradiotherapy
Clinical Trials as Topic
Cohort Studies
Diffusion Magnetic Resonance Imaging - methods
Female
Humans
Magnetic resonance imaging
Male
Middle Aged
Models, Statistical
Neoplasm Staging
Predictive Value of Tests
Radiomics
Rectal cancer
Rectal Neoplasms - diagnostic imaging
Rectal Neoplasms - drug therapy
Rectal Neoplasms - radiotherapy
Rectal Neoplasms - therapy
Response prediction
Treatment Outcome
title Predicting the tumor response to chemoradiotherapy for rectal cancer: Model development and external validation using MRI radiomics
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