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New interpretable machine-learning method for single-cell data reveals correlates of clinical response to cancer immunotherapy

We introduce a new method for single-cell cytometry studies, FAUST, which performs unbiased cell population discovery and annotation. FAUST processes experimental data on a per-sample basis and returns biologically interpretable cell phenotypes, making it well suited for the analysis of complex data...

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Autores principales: Greene, Evan, Finak, Greg, D'Amico, Leonard A., Bhardwaj, Nina, Church, Candice D., Morishima, Chihiro, Ramchurren, Nirasha, Taube, Janis M., Nghiem, Paul T., Cheever, Martin A., Fling, Steven P., Gottardo, Raphael
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8672150/
https://www.ncbi.nlm.nih.gov/pubmed/34950900
http://dx.doi.org/10.1016/j.patter.2021.100372
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author Greene, Evan
Finak, Greg
D'Amico, Leonard A.
Bhardwaj, Nina
Church, Candice D.
Morishima, Chihiro
Ramchurren, Nirasha
Taube, Janis M.
Nghiem, Paul T.
Cheever, Martin A.
Fling, Steven P.
Gottardo, Raphael
author_facet Greene, Evan
Finak, Greg
D'Amico, Leonard A.
Bhardwaj, Nina
Church, Candice D.
Morishima, Chihiro
Ramchurren, Nirasha
Taube, Janis M.
Nghiem, Paul T.
Cheever, Martin A.
Fling, Steven P.
Gottardo, Raphael
author_sort Greene, Evan
collection PubMed
description We introduce a new method for single-cell cytometry studies, FAUST, which performs unbiased cell population discovery and annotation. FAUST processes experimental data on a per-sample basis and returns biologically interpretable cell phenotypes, making it well suited for the analysis of complex datasets. We provide simulation studies that compare FAUST with existing methodology, exemplifying its strength. We apply FAUST to data from a Merkel cell carcinoma anti-PD-1 trial and discover pre-treatment effector memory T cell correlates of outcome co-expressing PD-1, HLA-DR, and CD28. Using FAUST, we then validate these correlates in cryopreserved peripheral blood mononuclear cell samples from the same study, as well as an independent CyTOF dataset from a published metastatic melanoma trial. Finally, we show how FAUST's phenotypes can be used to perform cross-study data integration in the presence of diverse staining panels. Together, these results establish FAUST as a powerful new approach for unbiased discovery in single-cell cytometry.
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spelling pubmed-86721502021-12-22 New interpretable machine-learning method for single-cell data reveals correlates of clinical response to cancer immunotherapy Greene, Evan Finak, Greg D'Amico, Leonard A. Bhardwaj, Nina Church, Candice D. Morishima, Chihiro Ramchurren, Nirasha Taube, Janis M. Nghiem, Paul T. Cheever, Martin A. Fling, Steven P. Gottardo, Raphael Patterns (N Y) Article We introduce a new method for single-cell cytometry studies, FAUST, which performs unbiased cell population discovery and annotation. FAUST processes experimental data on a per-sample basis and returns biologically interpretable cell phenotypes, making it well suited for the analysis of complex datasets. We provide simulation studies that compare FAUST with existing methodology, exemplifying its strength. We apply FAUST to data from a Merkel cell carcinoma anti-PD-1 trial and discover pre-treatment effector memory T cell correlates of outcome co-expressing PD-1, HLA-DR, and CD28. Using FAUST, we then validate these correlates in cryopreserved peripheral blood mononuclear cell samples from the same study, as well as an independent CyTOF dataset from a published metastatic melanoma trial. Finally, we show how FAUST's phenotypes can be used to perform cross-study data integration in the presence of diverse staining panels. Together, these results establish FAUST as a powerful new approach for unbiased discovery in single-cell cytometry. Elsevier 2021-10-27 /pmc/articles/PMC8672150/ /pubmed/34950900 http://dx.doi.org/10.1016/j.patter.2021.100372 Text en © 2021 The Authors https://creativecommons.org/licenses/by/4.0/This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Greene, Evan
Finak, Greg
D'Amico, Leonard A.
Bhardwaj, Nina
Church, Candice D.
Morishima, Chihiro
Ramchurren, Nirasha
Taube, Janis M.
Nghiem, Paul T.
Cheever, Martin A.
Fling, Steven P.
Gottardo, Raphael
New interpretable machine-learning method for single-cell data reveals correlates of clinical response to cancer immunotherapy
title New interpretable machine-learning method for single-cell data reveals correlates of clinical response to cancer immunotherapy
title_full New interpretable machine-learning method for single-cell data reveals correlates of clinical response to cancer immunotherapy
title_fullStr New interpretable machine-learning method for single-cell data reveals correlates of clinical response to cancer immunotherapy
title_full_unstemmed New interpretable machine-learning method for single-cell data reveals correlates of clinical response to cancer immunotherapy
title_short New interpretable machine-learning method for single-cell data reveals correlates of clinical response to cancer immunotherapy
title_sort new interpretable machine-learning method for single-cell data reveals correlates of clinical response to cancer immunotherapy
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8672150/
https://www.ncbi.nlm.nih.gov/pubmed/34950900
http://dx.doi.org/10.1016/j.patter.2021.100372
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