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Integration of Spatial PD-L1 Expression with the Tumor Immune Microenvironment Outperforms Standard PD-L1 Scoring in Outcome Prediction of Urothelial Cancer Patients

SIMPLE SUMMARY: Diagnostic PD-L1 assessment of urothelial cancer to predict a patient’s immune therapy response remains a matter of controversy. Several contributing factors have been discussed; however, systematic studies are lacking. The present study demonstrates that clinically applied PD-L1 sco...

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Autores principales: Weyerer, Veronika, Strissel, Pamela L., Strick, Reiner, Sikic, Danijel, Geppert, Carol I., Bertz, Simone, Lange, Fabienne, Taubert, Helge, Wach, Sven, Breyer, Johannes, Bolenz, Christian, Erben, Philipp, Schmitz-Draeger, Bernd J., Wullich, Bernd, Hartmann, Arndt, Eckstein, Markus
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8150350/
https://www.ncbi.nlm.nih.gov/pubmed/34066058
http://dx.doi.org/10.3390/cancers13102327
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author Weyerer, Veronika
Strissel, Pamela L.
Strick, Reiner
Sikic, Danijel
Geppert, Carol I.
Bertz, Simone
Lange, Fabienne
Taubert, Helge
Wach, Sven
Breyer, Johannes
Bolenz, Christian
Erben, Philipp
Schmitz-Draeger, Bernd J.
Wullich, Bernd
Hartmann, Arndt
Eckstein, Markus
author_facet Weyerer, Veronika
Strissel, Pamela L.
Strick, Reiner
Sikic, Danijel
Geppert, Carol I.
Bertz, Simone
Lange, Fabienne
Taubert, Helge
Wach, Sven
Breyer, Johannes
Bolenz, Christian
Erben, Philipp
Schmitz-Draeger, Bernd J.
Wullich, Bernd
Hartmann, Arndt
Eckstein, Markus
author_sort Weyerer, Veronika
collection PubMed
description SIMPLE SUMMARY: Diagnostic PD-L1 assessment of urothelial cancer to predict a patient’s immune therapy response remains a matter of controversy. Several contributing factors have been discussed; however, systematic studies are lacking. The present study demonstrates that clinically applied PD-L1 scoring algorithms are influenced by inter-algorithm variability and result in the selection of different “PD-L1” positive populations within the tumor immune microenvironment (TIME). The results further demonstrate that specific immune phenotypes of muscle-invasive urothelial cancer are associated with very different clinical outcomes, which cannot be resolved by PD-L1 testing. Thus, PD-L1 alone not only fails to reflect the TIME, but also has implications for patients. We conclude that a comprehensive integration of PD-L1 expression and immune phenotypes is superior to PD-L1 testing. This might be a novel strategy to predict a patient’s response to immune therapy. ABSTRACT: Background: Immune therapy has gained significant importance in managing urothelial cancer. The value of PD-L1 remains a matter of controversy, thus requiring an in-depth analysis of its biological and clinical relevance. Methods: A total of 193 tumors of muscle-invasive bladder cancer patients (MIBC) were assessed with four PD-L1 assays. PD-L1 scoring results were correlated with data from a comprehensive digital-spatial immune-profiling panel using descriptive statistics, hierarchical clustering and uni-/multivariable survival analyses. Results: PD-L1 scoring algorithms are heterogeneous (agreements from 63.1% to 87.7%), and stems from different constellations of immune and tumor cells (IC/TC). While Ventana IC5% algorithm identifies tumors with high inflammation and favorable baseline prognosis, CPS10 and the TCarea25%/ICarea25% algorithm identify tumors with TC and IC expression. Spatially organized immune phenotypes, which correlate either with high PD-L1 IC expression and favorable prognosis or constitutive PD-L1 TC expression and poor baseline prognosis, cannot be resolved properly by PD-L1 algorithms. PD-L1 negative tumors with relevant immune infiltration can be detected by sTILs scoring on HE slides and digital CD8(+) scoring. Conclusions: Contemporary PD-L1 scoring algorithms are not sufficient to resolve spatially distributed MIBC immune phenotypes and their clinical implications. A more comprehensive view of immune phenotypes along with the integration of spatial PD-L1 expression on IC and TC is necessary in order to stratify patients for ICI.
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spelling pubmed-81503502021-05-27 Integration of Spatial PD-L1 Expression with the Tumor Immune Microenvironment Outperforms Standard PD-L1 Scoring in Outcome Prediction of Urothelial Cancer Patients Weyerer, Veronika Strissel, Pamela L. Strick, Reiner Sikic, Danijel Geppert, Carol I. Bertz, Simone Lange, Fabienne Taubert, Helge Wach, Sven Breyer, Johannes Bolenz, Christian Erben, Philipp Schmitz-Draeger, Bernd J. Wullich, Bernd Hartmann, Arndt Eckstein, Markus Cancers (Basel) Article SIMPLE SUMMARY: Diagnostic PD-L1 assessment of urothelial cancer to predict a patient’s immune therapy response remains a matter of controversy. Several contributing factors have been discussed; however, systematic studies are lacking. The present study demonstrates that clinically applied PD-L1 scoring algorithms are influenced by inter-algorithm variability and result in the selection of different “PD-L1” positive populations within the tumor immune microenvironment (TIME). The results further demonstrate that specific immune phenotypes of muscle-invasive urothelial cancer are associated with very different clinical outcomes, which cannot be resolved by PD-L1 testing. Thus, PD-L1 alone not only fails to reflect the TIME, but also has implications for patients. We conclude that a comprehensive integration of PD-L1 expression and immune phenotypes is superior to PD-L1 testing. This might be a novel strategy to predict a patient’s response to immune therapy. ABSTRACT: Background: Immune therapy has gained significant importance in managing urothelial cancer. The value of PD-L1 remains a matter of controversy, thus requiring an in-depth analysis of its biological and clinical relevance. Methods: A total of 193 tumors of muscle-invasive bladder cancer patients (MIBC) were assessed with four PD-L1 assays. PD-L1 scoring results were correlated with data from a comprehensive digital-spatial immune-profiling panel using descriptive statistics, hierarchical clustering and uni-/multivariable survival analyses. Results: PD-L1 scoring algorithms are heterogeneous (agreements from 63.1% to 87.7%), and stems from different constellations of immune and tumor cells (IC/TC). While Ventana IC5% algorithm identifies tumors with high inflammation and favorable baseline prognosis, CPS10 and the TCarea25%/ICarea25% algorithm identify tumors with TC and IC expression. Spatially organized immune phenotypes, which correlate either with high PD-L1 IC expression and favorable prognosis or constitutive PD-L1 TC expression and poor baseline prognosis, cannot be resolved properly by PD-L1 algorithms. PD-L1 negative tumors with relevant immune infiltration can be detected by sTILs scoring on HE slides and digital CD8(+) scoring. Conclusions: Contemporary PD-L1 scoring algorithms are not sufficient to resolve spatially distributed MIBC immune phenotypes and their clinical implications. A more comprehensive view of immune phenotypes along with the integration of spatial PD-L1 expression on IC and TC is necessary in order to stratify patients for ICI. MDPI 2021-05-12 /pmc/articles/PMC8150350/ /pubmed/34066058 http://dx.doi.org/10.3390/cancers13102327 Text en © 2021 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Weyerer, Veronika
Strissel, Pamela L.
Strick, Reiner
Sikic, Danijel
Geppert, Carol I.
Bertz, Simone
Lange, Fabienne
Taubert, Helge
Wach, Sven
Breyer, Johannes
Bolenz, Christian
Erben, Philipp
Schmitz-Draeger, Bernd J.
Wullich, Bernd
Hartmann, Arndt
Eckstein, Markus
Integration of Spatial PD-L1 Expression with the Tumor Immune Microenvironment Outperforms Standard PD-L1 Scoring in Outcome Prediction of Urothelial Cancer Patients
title Integration of Spatial PD-L1 Expression with the Tumor Immune Microenvironment Outperforms Standard PD-L1 Scoring in Outcome Prediction of Urothelial Cancer Patients
title_full Integration of Spatial PD-L1 Expression with the Tumor Immune Microenvironment Outperforms Standard PD-L1 Scoring in Outcome Prediction of Urothelial Cancer Patients
title_fullStr Integration of Spatial PD-L1 Expression with the Tumor Immune Microenvironment Outperforms Standard PD-L1 Scoring in Outcome Prediction of Urothelial Cancer Patients
title_full_unstemmed Integration of Spatial PD-L1 Expression with the Tumor Immune Microenvironment Outperforms Standard PD-L1 Scoring in Outcome Prediction of Urothelial Cancer Patients
title_short Integration of Spatial PD-L1 Expression with the Tumor Immune Microenvironment Outperforms Standard PD-L1 Scoring in Outcome Prediction of Urothelial Cancer Patients
title_sort integration of spatial pd-l1 expression with the tumor immune microenvironment outperforms standard pd-l1 scoring in outcome prediction of urothelial cancer patients
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8150350/
https://www.ncbi.nlm.nih.gov/pubmed/34066058
http://dx.doi.org/10.3390/cancers13102327
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