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Foundation Models for Quantitative Biomarker Discovery in Cancer Imaging

Foundation models represent a recent paradigm shift in deep learning, where a single large-scale model trained on vast amounts of data can serve as the foundation for various downstream tasks. Foundation models are generally trained using self-supervised learning and excel in reducing the demand for...

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Autores principales: Pai, Suraj, Bontempi, Dennis, Prudente, Vasco, Hadzic, Ibrahim, Sokač, Mateo, Chaunzwa, Tafadzwa L., Bernatz, Simon, Hosny, Ahmed, Mak, Raymond H, Birkbak, Nicolai J, Aerts, Hugo JWL
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Cold Spring Harbor Laboratory 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10508804/
https://www.ncbi.nlm.nih.gov/pubmed/37732237
http://dx.doi.org/10.1101/2023.09.04.23294952
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author Pai, Suraj
Bontempi, Dennis
Prudente, Vasco
Hadzic, Ibrahim
Sokač, Mateo
Chaunzwa, Tafadzwa L.
Bernatz, Simon
Hosny, Ahmed
Mak, Raymond H
Birkbak, Nicolai J
Aerts, Hugo JWL
author_facet Pai, Suraj
Bontempi, Dennis
Prudente, Vasco
Hadzic, Ibrahim
Sokač, Mateo
Chaunzwa, Tafadzwa L.
Bernatz, Simon
Hosny, Ahmed
Mak, Raymond H
Birkbak, Nicolai J
Aerts, Hugo JWL
author_sort Pai, Suraj
collection PubMed
description Foundation models represent a recent paradigm shift in deep learning, where a single large-scale model trained on vast amounts of data can serve as the foundation for various downstream tasks. Foundation models are generally trained using self-supervised learning and excel in reducing the demand for training samples in downstream applications. This is especially important in medicine, where large labeled datasets are often scarce. Here, we developed a foundation model for imaging biomarker discovery by training a convolutional encoder through self-supervised learning using a comprehensive dataset of 11,467 radiographic lesions. The foundation model was evaluated in distinct and clinically relevant applications of imaging-based biomarkers. We found that they facilitated better and more efficient learning of imaging biomarkers and yielded task-specific models that significantly outperformed their conventional supervised counterparts on downstream tasks. The performance gain was most prominent when training dataset sizes were very limited. Furthermore, foundation models were more stable to input and inter-reader variations and showed stronger associations with underlying biology. Our results demonstrate the tremendous potential of foundation models in discovering novel imaging biomarkers that may extend to other clinical use cases and can accelerate the widespread translation of imaging biomarkers into clinical settings.
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spelling pubmed-105088042023-09-20 Foundation Models for Quantitative Biomarker Discovery in Cancer Imaging Pai, Suraj Bontempi, Dennis Prudente, Vasco Hadzic, Ibrahim Sokač, Mateo Chaunzwa, Tafadzwa L. Bernatz, Simon Hosny, Ahmed Mak, Raymond H Birkbak, Nicolai J Aerts, Hugo JWL medRxiv Article Foundation models represent a recent paradigm shift in deep learning, where a single large-scale model trained on vast amounts of data can serve as the foundation for various downstream tasks. Foundation models are generally trained using self-supervised learning and excel in reducing the demand for training samples in downstream applications. This is especially important in medicine, where large labeled datasets are often scarce. Here, we developed a foundation model for imaging biomarker discovery by training a convolutional encoder through self-supervised learning using a comprehensive dataset of 11,467 radiographic lesions. The foundation model was evaluated in distinct and clinically relevant applications of imaging-based biomarkers. We found that they facilitated better and more efficient learning of imaging biomarkers and yielded task-specific models that significantly outperformed their conventional supervised counterparts on downstream tasks. The performance gain was most prominent when training dataset sizes were very limited. Furthermore, foundation models were more stable to input and inter-reader variations and showed stronger associations with underlying biology. Our results demonstrate the tremendous potential of foundation models in discovering novel imaging biomarkers that may extend to other clinical use cases and can accelerate the widespread translation of imaging biomarkers into clinical settings. Cold Spring Harbor Laboratory 2023-09-05 /pmc/articles/PMC10508804/ /pubmed/37732237 http://dx.doi.org/10.1101/2023.09.04.23294952 Text en https://creativecommons.org/licenses/by-nc/4.0/This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License (https://creativecommons.org/licenses/by-nc/4.0/) , which allows reusers to distribute, remix, adapt, and build upon the material in any medium or format for noncommercial purposes only, and only so long as attribution is given to the creator.
spellingShingle Article
Pai, Suraj
Bontempi, Dennis
Prudente, Vasco
Hadzic, Ibrahim
Sokač, Mateo
Chaunzwa, Tafadzwa L.
Bernatz, Simon
Hosny, Ahmed
Mak, Raymond H
Birkbak, Nicolai J
Aerts, Hugo JWL
Foundation Models for Quantitative Biomarker Discovery in Cancer Imaging
title Foundation Models for Quantitative Biomarker Discovery in Cancer Imaging
title_full Foundation Models for Quantitative Biomarker Discovery in Cancer Imaging
title_fullStr Foundation Models for Quantitative Biomarker Discovery in Cancer Imaging
title_full_unstemmed Foundation Models for Quantitative Biomarker Discovery in Cancer Imaging
title_short Foundation Models for Quantitative Biomarker Discovery in Cancer Imaging
title_sort foundation models for quantitative biomarker discovery in cancer imaging
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10508804/
https://www.ncbi.nlm.nih.gov/pubmed/37732237
http://dx.doi.org/10.1101/2023.09.04.23294952
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