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Predicting response to cancer immunotherapy using noninvasive radiomic biomarkers

INTRODUCTION: Immunotherapy is regarded as one of the major breakthroughs in cancer treatment. Despite its success, only a subset of patients responds—urging the quest for predictive biomarkers. We hypothesize that artificial intelligence (AI) algorithms can automatically quantify radiographic chara...

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Autores principales: Trebeschi, S, Drago, S G, Birkbak, N J, Kurilova, I, Cǎlin, A M, Delli Pizzi, A, Lalezari, F, Lambregts, D M J, Rohaan, M W, Parmar, C, Rozeman, E A, Hartemink, K J, Swanton, C, Haanen, J B A G, Blank, C U, Smit, E F, Beets-Tan, R G H, Aerts, H J W L
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Oxford University Press 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6594459/
https://www.ncbi.nlm.nih.gov/pubmed/30895304
http://dx.doi.org/10.1093/annonc/mdz108
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author Trebeschi, S
Drago, S G
Birkbak, N J
Kurilova, I
Cǎlin, A M
Delli Pizzi, A
Lalezari, F
Lambregts, D M J
Rohaan, M W
Parmar, C
Rozeman, E A
Hartemink, K J
Swanton, C
Haanen, J B A G
Blank, C U
Smit, E F
Beets-Tan, R G H
Aerts, H J W L
author_facet Trebeschi, S
Drago, S G
Birkbak, N J
Kurilova, I
Cǎlin, A M
Delli Pizzi, A
Lalezari, F
Lambregts, D M J
Rohaan, M W
Parmar, C
Rozeman, E A
Hartemink, K J
Swanton, C
Haanen, J B A G
Blank, C U
Smit, E F
Beets-Tan, R G H
Aerts, H J W L
author_sort Trebeschi, S
collection PubMed
description INTRODUCTION: Immunotherapy is regarded as one of the major breakthroughs in cancer treatment. Despite its success, only a subset of patients responds—urging the quest for predictive biomarkers. We hypothesize that artificial intelligence (AI) algorithms can automatically quantify radiographic characteristics that are related to and may therefore act as noninvasive radiomic biomarkers for immunotherapy response. PATIENTS AND METHODS: In this study, we analyzed 1055 primary and metastatic lesions from 203 patients with advanced melanoma and non-small-cell lung cancer (NSCLC) undergoing anti-PD1 therapy. We carried out an AI-based characterization of each lesion on the pretreatment contrast-enhanced CT imaging data to develop and validate a noninvasive machine learning biomarker capable of distinguishing between immunotherapy responding and nonresponding. To define the biological basis of the radiographic biomarker, we carried out gene set enrichment analysis in an independent dataset of 262 NSCLC patients. RESULTS: The biomarker reached significant performance on NSCLC lesions (up to 0.83 AUC, P < 0.001) and borderline significant for melanoma lymph nodes (0.64 AUC, P = 0.05). Combining these lesion-wide predictions on a patient level, immunotherapy response could be predicted with an AUC of up to 0.76 for both cancer types (P < 0.001), resulting in a 1-year survival difference of 24% (P = 0.02). We found highly significant associations with pathways involved in mitosis, indicating a relationship between increased proliferative potential and preferential response to immunotherapy. CONCLUSIONS: These results indicate that radiographic characteristics of lesions on standard-of-care imaging may function as noninvasive biomarkers for response to immunotherapy, and may show utility for improved patient stratification in both neoadjuvant and palliative settings.
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spelling pubmed-65944592019-07-01 Predicting response to cancer immunotherapy using noninvasive radiomic biomarkers Trebeschi, S Drago, S G Birkbak, N J Kurilova, I Cǎlin, A M Delli Pizzi, A Lalezari, F Lambregts, D M J Rohaan, M W Parmar, C Rozeman, E A Hartemink, K J Swanton, C Haanen, J B A G Blank, C U Smit, E F Beets-Tan, R G H Aerts, H J W L Ann Oncol Original articles INTRODUCTION: Immunotherapy is regarded as one of the major breakthroughs in cancer treatment. Despite its success, only a subset of patients responds—urging the quest for predictive biomarkers. We hypothesize that artificial intelligence (AI) algorithms can automatically quantify radiographic characteristics that are related to and may therefore act as noninvasive radiomic biomarkers for immunotherapy response. PATIENTS AND METHODS: In this study, we analyzed 1055 primary and metastatic lesions from 203 patients with advanced melanoma and non-small-cell lung cancer (NSCLC) undergoing anti-PD1 therapy. We carried out an AI-based characterization of each lesion on the pretreatment contrast-enhanced CT imaging data to develop and validate a noninvasive machine learning biomarker capable of distinguishing between immunotherapy responding and nonresponding. To define the biological basis of the radiographic biomarker, we carried out gene set enrichment analysis in an independent dataset of 262 NSCLC patients. RESULTS: The biomarker reached significant performance on NSCLC lesions (up to 0.83 AUC, P < 0.001) and borderline significant for melanoma lymph nodes (0.64 AUC, P = 0.05). Combining these lesion-wide predictions on a patient level, immunotherapy response could be predicted with an AUC of up to 0.76 for both cancer types (P < 0.001), resulting in a 1-year survival difference of 24% (P = 0.02). We found highly significant associations with pathways involved in mitosis, indicating a relationship between increased proliferative potential and preferential response to immunotherapy. CONCLUSIONS: These results indicate that radiographic characteristics of lesions on standard-of-care imaging may function as noninvasive biomarkers for response to immunotherapy, and may show utility for improved patient stratification in both neoadjuvant and palliative settings. Oxford University Press 2019-06 2019-03-21 /pmc/articles/PMC6594459/ /pubmed/30895304 http://dx.doi.org/10.1093/annonc/mdz108 Text en © The Author(s) 2019. Published by Oxford University Press on behalf of the European Society for Medical Oncology. http://creativecommons.org/licenses/by-nc/4.0/ This is an Open Access article distributed under the terms of the Creative Commons Attribution Non-Commercial License (http://creativecommons.org/licenses/by-nc/4.0/), which permits non-commercial re-use, distribution, and reproduction in any medium, provided the original work is properly cited. For commercial re-use, please contact journals.permissions@oup.com
spellingShingle Original articles
Trebeschi, S
Drago, S G
Birkbak, N J
Kurilova, I
Cǎlin, A M
Delli Pizzi, A
Lalezari, F
Lambregts, D M J
Rohaan, M W
Parmar, C
Rozeman, E A
Hartemink, K J
Swanton, C
Haanen, J B A G
Blank, C U
Smit, E F
Beets-Tan, R G H
Aerts, H J W L
Predicting response to cancer immunotherapy using noninvasive radiomic biomarkers
title Predicting response to cancer immunotherapy using noninvasive radiomic biomarkers
title_full Predicting response to cancer immunotherapy using noninvasive radiomic biomarkers
title_fullStr Predicting response to cancer immunotherapy using noninvasive radiomic biomarkers
title_full_unstemmed Predicting response to cancer immunotherapy using noninvasive radiomic biomarkers
title_short Predicting response to cancer immunotherapy using noninvasive radiomic biomarkers
title_sort predicting response to cancer immunotherapy using noninvasive radiomic biomarkers
topic Original articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6594459/
https://www.ncbi.nlm.nih.gov/pubmed/30895304
http://dx.doi.org/10.1093/annonc/mdz108
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