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Deep learning-based approach to the characterization and quantification of histopathology in mouse models of colitis

Inflammatory bowel disease (IBD) is a chronic immune-mediated disease of the gastrointestinal tract. While therapies exist, response can be limited within the patient population. Researchers have thus studied mouse models of colitis to further understand pathogenesis and identify new treatment targe...

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Autores principales: Kobayashi, Soma, Shieh, Jason, Ruiz de Sabando, Ainara, Kim, Julie, Liu, Yang, Zee, Sui Y., Prasanna, Prateek, Bialkowska, Agnieszka B., Saltz, Joel H., Yang, Vincent W.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9423669/
https://www.ncbi.nlm.nih.gov/pubmed/36037173
http://dx.doi.org/10.1371/journal.pone.0268954
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author Kobayashi, Soma
Shieh, Jason
Ruiz de Sabando, Ainara
Kim, Julie
Liu, Yang
Zee, Sui Y.
Prasanna, Prateek
Bialkowska, Agnieszka B.
Saltz, Joel H.
Yang, Vincent W.
author_facet Kobayashi, Soma
Shieh, Jason
Ruiz de Sabando, Ainara
Kim, Julie
Liu, Yang
Zee, Sui Y.
Prasanna, Prateek
Bialkowska, Agnieszka B.
Saltz, Joel H.
Yang, Vincent W.
author_sort Kobayashi, Soma
collection PubMed
description Inflammatory bowel disease (IBD) is a chronic immune-mediated disease of the gastrointestinal tract. While therapies exist, response can be limited within the patient population. Researchers have thus studied mouse models of colitis to further understand pathogenesis and identify new treatment targets. Flow cytometry and RNA-sequencing can phenotype immune populations with single-cell resolution but provide no spatial context. Spatial context may be particularly important in colitis mouse models, due to the simultaneous presence of colonic regions that are involved or uninvolved with disease. These regions can be identified on hematoxylin and eosin (H&E)-stained colonic tissue slides based on the presence of abnormal or normal histology. However, detection of such regions requires expert interpretation by pathologists. This can be a tedious process that may be difficult to perform consistently across experiments. To this end, we trained a deep learning model to detect ‘Involved’ and ‘Uninvolved’ regions from H&E-stained colonic tissue slides. Our model was trained on specimens from controls and three mouse models of colitis–the dextran sodium sulfate (DSS) chemical induction model, the recently established intestinal epithelium-specific, inducible Klf5(ΔIND) (Villin-CreER(T2);Klf5(fl/fl)) genetic model, and one that combines both induction methods. Image patches predicted to be ‘Involved’ and ‘Uninvolved’ were extracted across mice to cluster and identify histological classes. We quantified the proportion of ‘Uninvolved’ patches and ‘Involved’ patch classes in murine swiss-rolled colons. Furthermore, we trained linear determinant analysis classifiers on these patch proportions to predict mouse model and clinical score bins in a prospectively treated cohort of mice. Such a pipeline has the potential to reveal histological links and improve synergy between various colitis mouse model studies to identify new therapeutic targets and pathophysiological mechanisms.
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spelling pubmed-94236692022-08-30 Deep learning-based approach to the characterization and quantification of histopathology in mouse models of colitis Kobayashi, Soma Shieh, Jason Ruiz de Sabando, Ainara Kim, Julie Liu, Yang Zee, Sui Y. Prasanna, Prateek Bialkowska, Agnieszka B. Saltz, Joel H. Yang, Vincent W. PLoS One Research Article Inflammatory bowel disease (IBD) is a chronic immune-mediated disease of the gastrointestinal tract. While therapies exist, response can be limited within the patient population. Researchers have thus studied mouse models of colitis to further understand pathogenesis and identify new treatment targets. Flow cytometry and RNA-sequencing can phenotype immune populations with single-cell resolution but provide no spatial context. Spatial context may be particularly important in colitis mouse models, due to the simultaneous presence of colonic regions that are involved or uninvolved with disease. These regions can be identified on hematoxylin and eosin (H&E)-stained colonic tissue slides based on the presence of abnormal or normal histology. However, detection of such regions requires expert interpretation by pathologists. This can be a tedious process that may be difficult to perform consistently across experiments. To this end, we trained a deep learning model to detect ‘Involved’ and ‘Uninvolved’ regions from H&E-stained colonic tissue slides. Our model was trained on specimens from controls and three mouse models of colitis–the dextran sodium sulfate (DSS) chemical induction model, the recently established intestinal epithelium-specific, inducible Klf5(ΔIND) (Villin-CreER(T2);Klf5(fl/fl)) genetic model, and one that combines both induction methods. Image patches predicted to be ‘Involved’ and ‘Uninvolved’ were extracted across mice to cluster and identify histological classes. We quantified the proportion of ‘Uninvolved’ patches and ‘Involved’ patch classes in murine swiss-rolled colons. Furthermore, we trained linear determinant analysis classifiers on these patch proportions to predict mouse model and clinical score bins in a prospectively treated cohort of mice. Such a pipeline has the potential to reveal histological links and improve synergy between various colitis mouse model studies to identify new therapeutic targets and pathophysiological mechanisms. Public Library of Science 2022-08-29 /pmc/articles/PMC9423669/ /pubmed/36037173 http://dx.doi.org/10.1371/journal.pone.0268954 Text en © 2022 Kobayashi et al https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Kobayashi, Soma
Shieh, Jason
Ruiz de Sabando, Ainara
Kim, Julie
Liu, Yang
Zee, Sui Y.
Prasanna, Prateek
Bialkowska, Agnieszka B.
Saltz, Joel H.
Yang, Vincent W.
Deep learning-based approach to the characterization and quantification of histopathology in mouse models of colitis
title Deep learning-based approach to the characterization and quantification of histopathology in mouse models of colitis
title_full Deep learning-based approach to the characterization and quantification of histopathology in mouse models of colitis
title_fullStr Deep learning-based approach to the characterization and quantification of histopathology in mouse models of colitis
title_full_unstemmed Deep learning-based approach to the characterization and quantification of histopathology in mouse models of colitis
title_short Deep learning-based approach to the characterization and quantification of histopathology in mouse models of colitis
title_sort deep learning-based approach to the characterization and quantification of histopathology in mouse models of colitis
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9423669/
https://www.ncbi.nlm.nih.gov/pubmed/36037173
http://dx.doi.org/10.1371/journal.pone.0268954
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