Cargando…

Small Gene Networks Delineate Immune Cell States and Characterize Immunotherapy Response in Melanoma

Single-cell technologies have elucidated mechanisms responsible for immune checkpoint inhibitor (ICI) response, but are not amenable to a clinical diagnostic setting. In contrast, bulk RNA sequencing (RNA-seq) is now routine for research and clinical applications. Our workflow uses transcription fac...

Descripción completa

Detalles Bibliográficos
Autores principales: Egan, Donagh, Kreileder, Martina, Nabhan, Myriam, Iglesias-Martinez, Luis F., Dovedi, Simon J., Valge-Archer, Viia, Grover, Amit, Wilkinson, Robert W., Slidel, Timothy, Bendtsen, Claus, Barrett, Ian P., Brennan, Donal J., Kolch, Walter, Zhernovkov, Vadim
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Association for Cancer Research 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10398358/
https://www.ncbi.nlm.nih.gov/pubmed/37229623
http://dx.doi.org/10.1158/2326-6066.CIR-22-0563
_version_ 1785084038996819968
author Egan, Donagh
Kreileder, Martina
Nabhan, Myriam
Iglesias-Martinez, Luis F.
Dovedi, Simon J.
Valge-Archer, Viia
Grover, Amit
Wilkinson, Robert W.
Slidel, Timothy
Bendtsen, Claus
Barrett, Ian P.
Brennan, Donal J.
Kolch, Walter
Zhernovkov, Vadim
author_facet Egan, Donagh
Kreileder, Martina
Nabhan, Myriam
Iglesias-Martinez, Luis F.
Dovedi, Simon J.
Valge-Archer, Viia
Grover, Amit
Wilkinson, Robert W.
Slidel, Timothy
Bendtsen, Claus
Barrett, Ian P.
Brennan, Donal J.
Kolch, Walter
Zhernovkov, Vadim
author_sort Egan, Donagh
collection PubMed
description Single-cell technologies have elucidated mechanisms responsible for immune checkpoint inhibitor (ICI) response, but are not amenable to a clinical diagnostic setting. In contrast, bulk RNA sequencing (RNA-seq) is now routine for research and clinical applications. Our workflow uses transcription factor (TF)–directed coexpression networks (regulons) inferred from single-cell RNA-seq data to deconvolute immune functional states from bulk RNA-seq data. Regulons preserve the phenotypic variation in CD45(+) immune cells from metastatic melanoma samples (n = 19, discovery dataset) treated with ICIs, despite reducing dimensionality by >100-fold. Four cell states, termed exhausted T cells, monocyte lineage cells, memory T cells, and B cells were associated with therapy response, and were characterized by differentially active and cell state–specific regulons. Clustering of bulk RNA-seq melanoma samples from four independent studies (n = 209, validation dataset) according to regulon-inferred scores identified four groups with significantly different response outcomes (P < 0.001). An intercellular link was established between exhausted T cells and monocyte lineage cells, whereby their cell numbers were correlated, and exhausted T cells predicted prognosis as a function of monocyte lineage cell number. The ligand–receptor expression analysis suggested that monocyte lineage cells drive exhausted T cells into terminal exhaustion through programs that regulate antigen presentation, chronic inflammation, and negative costimulation. Together, our results demonstrate how regulon-based characterization of cell states provide robust and functionally informative markers that can deconvolve bulk RNA-seq data to identify ICI responders.
format Online
Article
Text
id pubmed-10398358
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher American Association for Cancer Research
record_format MEDLINE/PubMed
spelling pubmed-103983582023-08-04 Small Gene Networks Delineate Immune Cell States and Characterize Immunotherapy Response in Melanoma Egan, Donagh Kreileder, Martina Nabhan, Myriam Iglesias-Martinez, Luis F. Dovedi, Simon J. Valge-Archer, Viia Grover, Amit Wilkinson, Robert W. Slidel, Timothy Bendtsen, Claus Barrett, Ian P. Brennan, Donal J. Kolch, Walter Zhernovkov, Vadim Cancer Immunol Res Research Articles Single-cell technologies have elucidated mechanisms responsible for immune checkpoint inhibitor (ICI) response, but are not amenable to a clinical diagnostic setting. In contrast, bulk RNA sequencing (RNA-seq) is now routine for research and clinical applications. Our workflow uses transcription factor (TF)–directed coexpression networks (regulons) inferred from single-cell RNA-seq data to deconvolute immune functional states from bulk RNA-seq data. Regulons preserve the phenotypic variation in CD45(+) immune cells from metastatic melanoma samples (n = 19, discovery dataset) treated with ICIs, despite reducing dimensionality by >100-fold. Four cell states, termed exhausted T cells, monocyte lineage cells, memory T cells, and B cells were associated with therapy response, and were characterized by differentially active and cell state–specific regulons. Clustering of bulk RNA-seq melanoma samples from four independent studies (n = 209, validation dataset) according to regulon-inferred scores identified four groups with significantly different response outcomes (P < 0.001). An intercellular link was established between exhausted T cells and monocyte lineage cells, whereby their cell numbers were correlated, and exhausted T cells predicted prognosis as a function of monocyte lineage cell number. The ligand–receptor expression analysis suggested that monocyte lineage cells drive exhausted T cells into terminal exhaustion through programs that regulate antigen presentation, chronic inflammation, and negative costimulation. Together, our results demonstrate how regulon-based characterization of cell states provide robust and functionally informative markers that can deconvolve bulk RNA-seq data to identify ICI responders. American Association for Cancer Research 2023-08-03 2023-05-25 /pmc/articles/PMC10398358/ /pubmed/37229623 http://dx.doi.org/10.1158/2326-6066.CIR-22-0563 Text en ©2023 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
Egan, Donagh
Kreileder, Martina
Nabhan, Myriam
Iglesias-Martinez, Luis F.
Dovedi, Simon J.
Valge-Archer, Viia
Grover, Amit
Wilkinson, Robert W.
Slidel, Timothy
Bendtsen, Claus
Barrett, Ian P.
Brennan, Donal J.
Kolch, Walter
Zhernovkov, Vadim
Small Gene Networks Delineate Immune Cell States and Characterize Immunotherapy Response in Melanoma
title Small Gene Networks Delineate Immune Cell States and Characterize Immunotherapy Response in Melanoma
title_full Small Gene Networks Delineate Immune Cell States and Characterize Immunotherapy Response in Melanoma
title_fullStr Small Gene Networks Delineate Immune Cell States and Characterize Immunotherapy Response in Melanoma
title_full_unstemmed Small Gene Networks Delineate Immune Cell States and Characterize Immunotherapy Response in Melanoma
title_short Small Gene Networks Delineate Immune Cell States and Characterize Immunotherapy Response in Melanoma
title_sort small gene networks delineate immune cell states and characterize immunotherapy response in melanoma
topic Research Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10398358/
https://www.ncbi.nlm.nih.gov/pubmed/37229623
http://dx.doi.org/10.1158/2326-6066.CIR-22-0563
work_keys_str_mv AT egandonagh smallgenenetworksdelineateimmunecellstatesandcharacterizeimmunotherapyresponseinmelanoma
AT kreiledermartina smallgenenetworksdelineateimmunecellstatesandcharacterizeimmunotherapyresponseinmelanoma
AT nabhanmyriam smallgenenetworksdelineateimmunecellstatesandcharacterizeimmunotherapyresponseinmelanoma
AT iglesiasmartinezluisf smallgenenetworksdelineateimmunecellstatesandcharacterizeimmunotherapyresponseinmelanoma
AT dovedisimonj smallgenenetworksdelineateimmunecellstatesandcharacterizeimmunotherapyresponseinmelanoma
AT valgearcherviia smallgenenetworksdelineateimmunecellstatesandcharacterizeimmunotherapyresponseinmelanoma
AT groveramit smallgenenetworksdelineateimmunecellstatesandcharacterizeimmunotherapyresponseinmelanoma
AT wilkinsonrobertw smallgenenetworksdelineateimmunecellstatesandcharacterizeimmunotherapyresponseinmelanoma
AT slideltimothy smallgenenetworksdelineateimmunecellstatesandcharacterizeimmunotherapyresponseinmelanoma
AT bendtsenclaus smallgenenetworksdelineateimmunecellstatesandcharacterizeimmunotherapyresponseinmelanoma
AT barrettianp smallgenenetworksdelineateimmunecellstatesandcharacterizeimmunotherapyresponseinmelanoma
AT brennandonalj smallgenenetworksdelineateimmunecellstatesandcharacterizeimmunotherapyresponseinmelanoma
AT kolchwalter smallgenenetworksdelineateimmunecellstatesandcharacterizeimmunotherapyresponseinmelanoma
AT zhernovkovvadim smallgenenetworksdelineateimmunecellstatesandcharacterizeimmunotherapyresponseinmelanoma