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Pan-tumor T-lymphocyte detection using deep neural networks: Recommendations for transfer learning in immunohistochemistry

The success of immuno-oncology treatments promises long-term cancer remission for an increasing number of patients. The response to checkpoint inhibitor drugs has shown a correlation with the presence of immune cells in the tumor and tumor microenvironment. An in-depth understanding of the spatial l...

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Autores principales: Wilm, Frauke, Ihling, Christian, Méhes, Gábor, Terracciano, Luigi, Puget, Chloé, Klopfleisch, Robert, Schüffler, Peter, Aubreville, Marc, Maier, Andreas, Mrowiec, Thomas, Breininger, Katharina
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10040882/
https://www.ncbi.nlm.nih.gov/pubmed/36994311
http://dx.doi.org/10.1016/j.jpi.2023.100301
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author Wilm, Frauke
Ihling, Christian
Méhes, Gábor
Terracciano, Luigi
Puget, Chloé
Klopfleisch, Robert
Schüffler, Peter
Aubreville, Marc
Maier, Andreas
Mrowiec, Thomas
Breininger, Katharina
author_facet Wilm, Frauke
Ihling, Christian
Méhes, Gábor
Terracciano, Luigi
Puget, Chloé
Klopfleisch, Robert
Schüffler, Peter
Aubreville, Marc
Maier, Andreas
Mrowiec, Thomas
Breininger, Katharina
author_sort Wilm, Frauke
collection PubMed
description The success of immuno-oncology treatments promises long-term cancer remission for an increasing number of patients. The response to checkpoint inhibitor drugs has shown a correlation with the presence of immune cells in the tumor and tumor microenvironment. An in-depth understanding of the spatial localization of immune cells is therefore critical for understanding the tumor’s immune landscape and predicting drug response. Computer-aided systems are well suited for efficiently quantifying immune cells in their spatial context. Conventional image analysis approaches are often based on color features and therefore require a high level of manual interaction. More robust image analysis methods based on deep learning are expected to decrease this reliance on human interaction and improve the reproducibility of immune cell scoring. However, these methods require sufficient training data and previous work has reported low robustness of these algorithms when they are tested on out-of-distribution data from different pathology labs or samples from different organs. In this work, we used a new image analysis pipeline to explicitly evaluate the robustness of marker-labeled lymphocyte quantification algorithms depending on the number of training samples before and after being transferred to a new tumor indication. For these experiments, we adapted the RetinaNet architecture for the task of T-lymphocyte detection and employed transfer learning to bridge the domain gap between tumor indications and reduce the annotation costs for unseen domains. On our test set, we achieved human-level performance for almost all tumor indications with an average precision of 0.74 in-domain and 0.72–0.74 cross-domain. From our results, we derive recommendations for model development regarding annotation extent, training sample selection, and label extraction for the development of robust algorithms for immune cell scoring. By extending the task of marker-labeled lymphocyte quantification to a multi-class detection task, the pre-requisite for subsequent analyses, e.g., distinguishing lymphocytes in the tumor stroma from tumor-infiltrating lymphocytes, is met.
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spelling pubmed-100408822023-03-28 Pan-tumor T-lymphocyte detection using deep neural networks: Recommendations for transfer learning in immunohistochemistry Wilm, Frauke Ihling, Christian Méhes, Gábor Terracciano, Luigi Puget, Chloé Klopfleisch, Robert Schüffler, Peter Aubreville, Marc Maier, Andreas Mrowiec, Thomas Breininger, Katharina J Pathol Inform Original Research Article The success of immuno-oncology treatments promises long-term cancer remission for an increasing number of patients. The response to checkpoint inhibitor drugs has shown a correlation with the presence of immune cells in the tumor and tumor microenvironment. An in-depth understanding of the spatial localization of immune cells is therefore critical for understanding the tumor’s immune landscape and predicting drug response. Computer-aided systems are well suited for efficiently quantifying immune cells in their spatial context. Conventional image analysis approaches are often based on color features and therefore require a high level of manual interaction. More robust image analysis methods based on deep learning are expected to decrease this reliance on human interaction and improve the reproducibility of immune cell scoring. However, these methods require sufficient training data and previous work has reported low robustness of these algorithms when they are tested on out-of-distribution data from different pathology labs or samples from different organs. In this work, we used a new image analysis pipeline to explicitly evaluate the robustness of marker-labeled lymphocyte quantification algorithms depending on the number of training samples before and after being transferred to a new tumor indication. For these experiments, we adapted the RetinaNet architecture for the task of T-lymphocyte detection and employed transfer learning to bridge the domain gap between tumor indications and reduce the annotation costs for unseen domains. On our test set, we achieved human-level performance for almost all tumor indications with an average precision of 0.74 in-domain and 0.72–0.74 cross-domain. From our results, we derive recommendations for model development regarding annotation extent, training sample selection, and label extraction for the development of robust algorithms for immune cell scoring. By extending the task of marker-labeled lymphocyte quantification to a multi-class detection task, the pre-requisite for subsequent analyses, e.g., distinguishing lymphocytes in the tumor stroma from tumor-infiltrating lymphocytes, is met. Elsevier 2023-02-27 /pmc/articles/PMC10040882/ /pubmed/36994311 http://dx.doi.org/10.1016/j.jpi.2023.100301 Text en © 2023 The Authors https://creativecommons.org/licenses/by/4.0/This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Original Research Article
Wilm, Frauke
Ihling, Christian
Méhes, Gábor
Terracciano, Luigi
Puget, Chloé
Klopfleisch, Robert
Schüffler, Peter
Aubreville, Marc
Maier, Andreas
Mrowiec, Thomas
Breininger, Katharina
Pan-tumor T-lymphocyte detection using deep neural networks: Recommendations for transfer learning in immunohistochemistry
title Pan-tumor T-lymphocyte detection using deep neural networks: Recommendations for transfer learning in immunohistochemistry
title_full Pan-tumor T-lymphocyte detection using deep neural networks: Recommendations for transfer learning in immunohistochemistry
title_fullStr Pan-tumor T-lymphocyte detection using deep neural networks: Recommendations for transfer learning in immunohistochemistry
title_full_unstemmed Pan-tumor T-lymphocyte detection using deep neural networks: Recommendations for transfer learning in immunohistochemistry
title_short Pan-tumor T-lymphocyte detection using deep neural networks: Recommendations for transfer learning in immunohistochemistry
title_sort pan-tumor t-lymphocyte detection using deep neural networks: recommendations for transfer learning in immunohistochemistry
topic Original Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10040882/
https://www.ncbi.nlm.nih.gov/pubmed/36994311
http://dx.doi.org/10.1016/j.jpi.2023.100301
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