Cargando…

Dynamical modelling of proliferative-invasive plasticity and IFNγ signaling in melanoma reveals mechanisms of PD-L1 expression heterogeneity

Phenotypic heterogeneity of melanoma cells contributes to drug tolerance, increased metastasis, and immune evasion in patients with progressive disease. Diverse mechanisms have been individually reported to shape extensive intra- and inter- tumoral phenotypic heterogeneity, such as IFNγ signaling an...

Descripción completa

Detalles Bibliográficos
Autores principales: Subhadarshini, Seemadri, Sahoo, Sarthak, Debnath, Shibjyoti, Somarelli, Jason A., Jolly, Mohit Kumar
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Cold Spring Harbor Laboratory 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10312429/
https://www.ncbi.nlm.nih.gov/pubmed/37398358
http://dx.doi.org/10.1101/2023.01.09.523355
_version_ 1785066930106793984
author Subhadarshini, Seemadri
Sahoo, Sarthak
Debnath, Shibjyoti
Somarelli, Jason A.
Jolly, Mohit Kumar
author_facet Subhadarshini, Seemadri
Sahoo, Sarthak
Debnath, Shibjyoti
Somarelli, Jason A.
Jolly, Mohit Kumar
author_sort Subhadarshini, Seemadri
collection PubMed
description Phenotypic heterogeneity of melanoma cells contributes to drug tolerance, increased metastasis, and immune evasion in patients with progressive disease. Diverse mechanisms have been individually reported to shape extensive intra- and inter- tumoral phenotypic heterogeneity, such as IFNγ signaling and proliferative to invasive transition, but how their crosstalk impacts tumor progression remains largely elusive. Here, we integrate dynamical systems modeling with transcriptomic data analysis at bulk and single-cell levels to investigate underlying mechanisms behind phenotypic heterogeneity in melanoma and its impact on adaptation to targeted therapy and immune checkpoint inhibitors. We construct a minimal core regulatory network involving transcription factors implicated in this process and identify the multiple “attractors” in the phenotypic landscape enabled by this network. Our model predictions about synergistic control of PD-L1 by IFNγ signaling and proliferative to invasive transition were validated experimentally in three melanoma cell lines – MALME3, SK-MEL-5 and A375. We demonstrate that the emergent dynamics of our regulatory network comprising MITF, SOX10, SOX9, JUN and ZEB1 can recapitulate experimental observations about the co-existence of diverse phenotypes (proliferative, neural crest-like, invasive) and reversible cell-state transitions among them, including in response to targeted therapy and immune checkpoint inhibitors. These phenotypes have varied levels of PD-L1, driving heterogeneity in immune- suppression. This heterogeneity in PD-L1 can be aggravated by combinatorial dynamics of these regulators with IFNγ signaling. Our model predictions about changes in proliferative to invasive transition and PD-L1 levels as melanoma cells evade targeted therapy and immune checkpoint inhibitors were validated in multiple data sets from in vitro and in vivo experiments. Our calibrated dynamical model offers a platform to test combinatorial therapies and provide rational avenues for the treatment of metastatic melanoma. This improved understanding of crosstalk among PD-L1 expression, proliferative to invasive transition and IFNγ signaling can be leveraged to improve the clinical management of therapy-resistant and metastatic melanoma.
format Online
Article
Text
id pubmed-10312429
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher Cold Spring Harbor Laboratory
record_format MEDLINE/PubMed
spelling pubmed-103124292023-07-01 Dynamical modelling of proliferative-invasive plasticity and IFNγ signaling in melanoma reveals mechanisms of PD-L1 expression heterogeneity Subhadarshini, Seemadri Sahoo, Sarthak Debnath, Shibjyoti Somarelli, Jason A. Jolly, Mohit Kumar bioRxiv Article Phenotypic heterogeneity of melanoma cells contributes to drug tolerance, increased metastasis, and immune evasion in patients with progressive disease. Diverse mechanisms have been individually reported to shape extensive intra- and inter- tumoral phenotypic heterogeneity, such as IFNγ signaling and proliferative to invasive transition, but how their crosstalk impacts tumor progression remains largely elusive. Here, we integrate dynamical systems modeling with transcriptomic data analysis at bulk and single-cell levels to investigate underlying mechanisms behind phenotypic heterogeneity in melanoma and its impact on adaptation to targeted therapy and immune checkpoint inhibitors. We construct a minimal core regulatory network involving transcription factors implicated in this process and identify the multiple “attractors” in the phenotypic landscape enabled by this network. Our model predictions about synergistic control of PD-L1 by IFNγ signaling and proliferative to invasive transition were validated experimentally in three melanoma cell lines – MALME3, SK-MEL-5 and A375. We demonstrate that the emergent dynamics of our regulatory network comprising MITF, SOX10, SOX9, JUN and ZEB1 can recapitulate experimental observations about the co-existence of diverse phenotypes (proliferative, neural crest-like, invasive) and reversible cell-state transitions among them, including in response to targeted therapy and immune checkpoint inhibitors. These phenotypes have varied levels of PD-L1, driving heterogeneity in immune- suppression. This heterogeneity in PD-L1 can be aggravated by combinatorial dynamics of these regulators with IFNγ signaling. Our model predictions about changes in proliferative to invasive transition and PD-L1 levels as melanoma cells evade targeted therapy and immune checkpoint inhibitors were validated in multiple data sets from in vitro and in vivo experiments. Our calibrated dynamical model offers a platform to test combinatorial therapies and provide rational avenues for the treatment of metastatic melanoma. This improved understanding of crosstalk among PD-L1 expression, proliferative to invasive transition and IFNγ signaling can be leveraged to improve the clinical management of therapy-resistant and metastatic melanoma. Cold Spring Harbor Laboratory 2023-06-12 /pmc/articles/PMC10312429/ /pubmed/37398358 http://dx.doi.org/10.1101/2023.01.09.523355 Text en https://creativecommons.org/licenses/by-nc-nd/4.0/This work is licensed under a Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License (https://creativecommons.org/licenses/by-nc-nd/4.0/) , which allows reusers to copy and distribute the material in any medium or format in unadapted form only, for noncommercial purposes only, and only so long as attribution is given to the creator.
spellingShingle Article
Subhadarshini, Seemadri
Sahoo, Sarthak
Debnath, Shibjyoti
Somarelli, Jason A.
Jolly, Mohit Kumar
Dynamical modelling of proliferative-invasive plasticity and IFNγ signaling in melanoma reveals mechanisms of PD-L1 expression heterogeneity
title Dynamical modelling of proliferative-invasive plasticity and IFNγ signaling in melanoma reveals mechanisms of PD-L1 expression heterogeneity
title_full Dynamical modelling of proliferative-invasive plasticity and IFNγ signaling in melanoma reveals mechanisms of PD-L1 expression heterogeneity
title_fullStr Dynamical modelling of proliferative-invasive plasticity and IFNγ signaling in melanoma reveals mechanisms of PD-L1 expression heterogeneity
title_full_unstemmed Dynamical modelling of proliferative-invasive plasticity and IFNγ signaling in melanoma reveals mechanisms of PD-L1 expression heterogeneity
title_short Dynamical modelling of proliferative-invasive plasticity and IFNγ signaling in melanoma reveals mechanisms of PD-L1 expression heterogeneity
title_sort dynamical modelling of proliferative-invasive plasticity and ifnγ signaling in melanoma reveals mechanisms of pd-l1 expression heterogeneity
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10312429/
https://www.ncbi.nlm.nih.gov/pubmed/37398358
http://dx.doi.org/10.1101/2023.01.09.523355
work_keys_str_mv AT subhadarshiniseemadri dynamicalmodellingofproliferativeinvasiveplasticityandifngsignalinginmelanomarevealsmechanismsofpdl1expressionheterogeneity
AT sahoosarthak dynamicalmodellingofproliferativeinvasiveplasticityandifngsignalinginmelanomarevealsmechanismsofpdl1expressionheterogeneity
AT debnathshibjyoti dynamicalmodellingofproliferativeinvasiveplasticityandifngsignalinginmelanomarevealsmechanismsofpdl1expressionheterogeneity
AT somarellijasona dynamicalmodellingofproliferativeinvasiveplasticityandifngsignalinginmelanomarevealsmechanismsofpdl1expressionheterogeneity
AT jollymohitkumar dynamicalmodellingofproliferativeinvasiveplasticityandifngsignalinginmelanomarevealsmechanismsofpdl1expressionheterogeneity