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Accounting for B-cell Behavior and Sampling Bias Predicts Anti–PD-L1 Response in Bladder Cancer

Cancer immunotherapy is predominantly based on T cell–centric approaches. At the same time, the adaptive immune response in the tumor environment also includes clonally produced immunoglobulins and clonal effector/memory B cells that participate in antigen-specific decisions through their interactio...

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Autores principales: Dyugay, Ilya A., Lukyanov, Daniil K., Turchaninova, Maria A., Serebrovskaya, Ekaterina O., Bryushkova, Ekaterina A., Zaretsky, Andrew R., Khalmurzaev, Oybek, Matveev, Vsevolod B., Shugay, Mikhail, Shelyakin, Pavel V., Chudakov, Dmitriy M.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Association for Cancer Research 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9381118/
https://www.ncbi.nlm.nih.gov/pubmed/35013004
http://dx.doi.org/10.1158/2326-6066.CIR-21-0489
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author Dyugay, Ilya A.
Lukyanov, Daniil K.
Turchaninova, Maria A.
Serebrovskaya, Ekaterina O.
Bryushkova, Ekaterina A.
Zaretsky, Andrew R.
Khalmurzaev, Oybek
Matveev, Vsevolod B.
Shugay, Mikhail
Shelyakin, Pavel V.
Chudakov, Dmitriy M.
author_facet Dyugay, Ilya A.
Lukyanov, Daniil K.
Turchaninova, Maria A.
Serebrovskaya, Ekaterina O.
Bryushkova, Ekaterina A.
Zaretsky, Andrew R.
Khalmurzaev, Oybek
Matveev, Vsevolod B.
Shugay, Mikhail
Shelyakin, Pavel V.
Chudakov, Dmitriy M.
author_sort Dyugay, Ilya A.
collection PubMed
description Cancer immunotherapy is predominantly based on T cell–centric approaches. At the same time, the adaptive immune response in the tumor environment also includes clonally produced immunoglobulins and clonal effector/memory B cells that participate in antigen-specific decisions through their interactions with T cells. Here, we investigated the role of infiltrating B cells in bladder cancer via patient dataset analysis of intratumoral immunoglobulin repertoires. We showed that the IgG1/IgA ratio is a prognostic indicator for several subtypes of bladder cancer and for the whole IMVigor210 anti–PD-L1 immunotherapy study cohort. A high IgG1/IgA ratio associated with the prominence of a cytotoxic gene signature, T-cell receptor signaling, and IL21-mediated signaling. Immunoglobulin repertoire analysis indicated that effector B-cell function, rather than clonally produced antibodies, was involved in antitumor responses. From the T-cell side, we normalized a cytotoxic signature against the extent of immune cell infiltration to neutralize the artificial sampling-based variability in immune gene expression. Resulting metrics reflected proportion of cytotoxic cells among tumor-infiltrating immune cells and improved prediction of anti–PD-L1 responses. At the same time, the IgG1/IgA ratio remained an independent prognostic factor. Integration of the B-cell, natural killer cell, and T-cell signatures allowed for the most accurate prediction of anti–PD-L1 therapy responses. On the basis of these findings, we developed a predictor called PRedIctive MolecUlar Signature (PRIMUS), which outperformed PD-L1 expression scores and known gene signatures. Overall, PRIMUS allows for reliable identification of responders among patients with muscle-invasive urothelial carcinoma, including the subcohort with the low-infiltrated “desert” tumor phenotype.
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spelling pubmed-93811182023-01-05 Accounting for B-cell Behavior and Sampling Bias Predicts Anti–PD-L1 Response in Bladder Cancer Dyugay, Ilya A. Lukyanov, Daniil K. Turchaninova, Maria A. Serebrovskaya, Ekaterina O. Bryushkova, Ekaterina A. Zaretsky, Andrew R. Khalmurzaev, Oybek Matveev, Vsevolod B. Shugay, Mikhail Shelyakin, Pavel V. Chudakov, Dmitriy M. Cancer Immunol Res Research Articles Cancer immunotherapy is predominantly based on T cell–centric approaches. At the same time, the adaptive immune response in the tumor environment also includes clonally produced immunoglobulins and clonal effector/memory B cells that participate in antigen-specific decisions through their interactions with T cells. Here, we investigated the role of infiltrating B cells in bladder cancer via patient dataset analysis of intratumoral immunoglobulin repertoires. We showed that the IgG1/IgA ratio is a prognostic indicator for several subtypes of bladder cancer and for the whole IMVigor210 anti–PD-L1 immunotherapy study cohort. A high IgG1/IgA ratio associated with the prominence of a cytotoxic gene signature, T-cell receptor signaling, and IL21-mediated signaling. Immunoglobulin repertoire analysis indicated that effector B-cell function, rather than clonally produced antibodies, was involved in antitumor responses. From the T-cell side, we normalized a cytotoxic signature against the extent of immune cell infiltration to neutralize the artificial sampling-based variability in immune gene expression. Resulting metrics reflected proportion of cytotoxic cells among tumor-infiltrating immune cells and improved prediction of anti–PD-L1 responses. At the same time, the IgG1/IgA ratio remained an independent prognostic factor. Integration of the B-cell, natural killer cell, and T-cell signatures allowed for the most accurate prediction of anti–PD-L1 therapy responses. On the basis of these findings, we developed a predictor called PRedIctive MolecUlar Signature (PRIMUS), which outperformed PD-L1 expression scores and known gene signatures. Overall, PRIMUS allows for reliable identification of responders among patients with muscle-invasive urothelial carcinoma, including the subcohort with the low-infiltrated “desert” tumor phenotype. American Association for Cancer Research 2022-03-01 2022-03-03 /pmc/articles/PMC9381118/ /pubmed/35013004 http://dx.doi.org/10.1158/2326-6066.CIR-21-0489 Text en ©2022 The Authors; Published by the American Association for Cancer Research https://creativecommons.org/licenses/by-nc-nd/4.0/This open access article is distributed under the Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International (CC BY-NC-ND 4.0) license.
spellingShingle Research Articles
Dyugay, Ilya A.
Lukyanov, Daniil K.
Turchaninova, Maria A.
Serebrovskaya, Ekaterina O.
Bryushkova, Ekaterina A.
Zaretsky, Andrew R.
Khalmurzaev, Oybek
Matveev, Vsevolod B.
Shugay, Mikhail
Shelyakin, Pavel V.
Chudakov, Dmitriy M.
Accounting for B-cell Behavior and Sampling Bias Predicts Anti–PD-L1 Response in Bladder Cancer
title Accounting for B-cell Behavior and Sampling Bias Predicts Anti–PD-L1 Response in Bladder Cancer
title_full Accounting for B-cell Behavior and Sampling Bias Predicts Anti–PD-L1 Response in Bladder Cancer
title_fullStr Accounting for B-cell Behavior and Sampling Bias Predicts Anti–PD-L1 Response in Bladder Cancer
title_full_unstemmed Accounting for B-cell Behavior and Sampling Bias Predicts Anti–PD-L1 Response in Bladder Cancer
title_short Accounting for B-cell Behavior and Sampling Bias Predicts Anti–PD-L1 Response in Bladder Cancer
title_sort accounting for b-cell behavior and sampling bias predicts anti–pd-l1 response in bladder cancer
topic Research Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9381118/
https://www.ncbi.nlm.nih.gov/pubmed/35013004
http://dx.doi.org/10.1158/2326-6066.CIR-21-0489
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