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Computational Image Analysis of T-Cell Infiltrates in Resectable Gastric Cancer: Association with Survival and Molecular Subtypes

BACKGROUND: Gastric and gastro-esophageal junction cancers (GCs) frequently recur after resection, but markers to predict recurrence risk are missing. T-cell infiltrates have been validated as prognostic markers in other cancer types, but not in GC because of methodological limitations of past studi...

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Autores principales: Challoner, Benjamin R, von Loga, Katharina, Woolston, Andrew, Griffiths, Beatrice, Sivamanoharan, Nanna, Semiannikova, Maria, Newey, Alice, Barber, Louise J, Mansfield, David, Hewitt, Lindsay C, Saito, Yuichi, Davarzani, Naser, Starling, Naureen, Melcher, Alan, Grabsch, Heike I, Gerlinger, Marco
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Oxford University Press 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7781469/
https://www.ncbi.nlm.nih.gov/pubmed/32324860
http://dx.doi.org/10.1093/jnci/djaa051
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author Challoner, Benjamin R
von Loga, Katharina
Woolston, Andrew
Griffiths, Beatrice
Sivamanoharan, Nanna
Semiannikova, Maria
Newey, Alice
Barber, Louise J
Mansfield, David
Hewitt, Lindsay C
Saito, Yuichi
Davarzani, Naser
Starling, Naureen
Melcher, Alan
Grabsch, Heike I
Gerlinger, Marco
author_facet Challoner, Benjamin R
von Loga, Katharina
Woolston, Andrew
Griffiths, Beatrice
Sivamanoharan, Nanna
Semiannikova, Maria
Newey, Alice
Barber, Louise J
Mansfield, David
Hewitt, Lindsay C
Saito, Yuichi
Davarzani, Naser
Starling, Naureen
Melcher, Alan
Grabsch, Heike I
Gerlinger, Marco
author_sort Challoner, Benjamin R
collection PubMed
description BACKGROUND: Gastric and gastro-esophageal junction cancers (GCs) frequently recur after resection, but markers to predict recurrence risk are missing. T-cell infiltrates have been validated as prognostic markers in other cancer types, but not in GC because of methodological limitations of past studies. We aimed to define and validate the prognostic role of major T-cell subtypes in GC by objective computational quantification. METHODS: Surgically resected chemotherapy-naïve GCs were split into discovery (n = 327) and validation (n = 147) cohorts. CD8 (cytotoxic), CD45RO (memory), and FOXP3 (regulatory) T-cell densities were measured through multicolor immunofluorescence and computational image analysis. Cancer-specific survival (CSS) was assessed. All statistical tests were two-sided. RESULTS: CD45RO-cell and FOXP3-cell densities statistically significantly predicted CSS in both cohorts. Stage, CD45RO-cell, and FOXP3-cell densities were independent predictors of CSS in multivariable analysis; mismatch repair (MMR) and Epstein–Barr virus (EBV) status were not statistically significant. Combining CD45RO-cell and FOXP3-cell densities into the Stomach Cancer Immune Score showed highly statistically significant (all P ≤ .002) CSS differences (0.9 years median CSS to not reached). T-cell infiltrates were highest in EBV-positive GCs and similar in MMR-deficient and MMR-proficient GCs. CONCLUSION: The validation of CD45RO-cell and FOXP3-cell densities as prognostic markers in GC may guide personalized follow-up or (neo)adjuvant treatment strategies. Only those 20% of GCs with the highest T-cell infiltrates showed particularly good CSS, suggesting that a small subgroup of GCs is highly immunogenic. The potential for T-cell densities to predict immunotherapy responses should be assessed. The association of high FOXP3-cell densities with longer CSS warrants studies into the biology of regulatory T cells in GC.
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spelling pubmed-77814692021-01-07 Computational Image Analysis of T-Cell Infiltrates in Resectable Gastric Cancer: Association with Survival and Molecular Subtypes Challoner, Benjamin R von Loga, Katharina Woolston, Andrew Griffiths, Beatrice Sivamanoharan, Nanna Semiannikova, Maria Newey, Alice Barber, Louise J Mansfield, David Hewitt, Lindsay C Saito, Yuichi Davarzani, Naser Starling, Naureen Melcher, Alan Grabsch, Heike I Gerlinger, Marco J Natl Cancer Inst Articles BACKGROUND: Gastric and gastro-esophageal junction cancers (GCs) frequently recur after resection, but markers to predict recurrence risk are missing. T-cell infiltrates have been validated as prognostic markers in other cancer types, but not in GC because of methodological limitations of past studies. We aimed to define and validate the prognostic role of major T-cell subtypes in GC by objective computational quantification. METHODS: Surgically resected chemotherapy-naïve GCs were split into discovery (n = 327) and validation (n = 147) cohorts. CD8 (cytotoxic), CD45RO (memory), and FOXP3 (regulatory) T-cell densities were measured through multicolor immunofluorescence and computational image analysis. Cancer-specific survival (CSS) was assessed. All statistical tests were two-sided. RESULTS: CD45RO-cell and FOXP3-cell densities statistically significantly predicted CSS in both cohorts. Stage, CD45RO-cell, and FOXP3-cell densities were independent predictors of CSS in multivariable analysis; mismatch repair (MMR) and Epstein–Barr virus (EBV) status were not statistically significant. Combining CD45RO-cell and FOXP3-cell densities into the Stomach Cancer Immune Score showed highly statistically significant (all P ≤ .002) CSS differences (0.9 years median CSS to not reached). T-cell infiltrates were highest in EBV-positive GCs and similar in MMR-deficient and MMR-proficient GCs. CONCLUSION: The validation of CD45RO-cell and FOXP3-cell densities as prognostic markers in GC may guide personalized follow-up or (neo)adjuvant treatment strategies. Only those 20% of GCs with the highest T-cell infiltrates showed particularly good CSS, suggesting that a small subgroup of GCs is highly immunogenic. The potential for T-cell densities to predict immunotherapy responses should be assessed. The association of high FOXP3-cell densities with longer CSS warrants studies into the biology of regulatory T cells in GC. Oxford University Press 2020-04-23 /pmc/articles/PMC7781469/ /pubmed/32324860 http://dx.doi.org/10.1093/jnci/djaa051 Text en © The Author(s) 2020. Published by Oxford University Press. 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 Articles
Challoner, Benjamin R
von Loga, Katharina
Woolston, Andrew
Griffiths, Beatrice
Sivamanoharan, Nanna
Semiannikova, Maria
Newey, Alice
Barber, Louise J
Mansfield, David
Hewitt, Lindsay C
Saito, Yuichi
Davarzani, Naser
Starling, Naureen
Melcher, Alan
Grabsch, Heike I
Gerlinger, Marco
Computational Image Analysis of T-Cell Infiltrates in Resectable Gastric Cancer: Association with Survival and Molecular Subtypes
title Computational Image Analysis of T-Cell Infiltrates in Resectable Gastric Cancer: Association with Survival and Molecular Subtypes
title_full Computational Image Analysis of T-Cell Infiltrates in Resectable Gastric Cancer: Association with Survival and Molecular Subtypes
title_fullStr Computational Image Analysis of T-Cell Infiltrates in Resectable Gastric Cancer: Association with Survival and Molecular Subtypes
title_full_unstemmed Computational Image Analysis of T-Cell Infiltrates in Resectable Gastric Cancer: Association with Survival and Molecular Subtypes
title_short Computational Image Analysis of T-Cell Infiltrates in Resectable Gastric Cancer: Association with Survival and Molecular Subtypes
title_sort computational image analysis of t-cell infiltrates in resectable gastric cancer: association with survival and molecular subtypes
topic Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7781469/
https://www.ncbi.nlm.nih.gov/pubmed/32324860
http://dx.doi.org/10.1093/jnci/djaa051
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