Cargando…

A live-cell platform to isolate phenotypically defined subpopulations for spatial multi-omic profiling

Numerous techniques have been employed to deconstruct the heterogeneity observed in normal and diseased cellular populations, including single cell RNA sequencing, in situ hybridization, and flow cytometry. While these approaches have revolutionized our understanding of heterogeneity, in isolation t...

Descripción completa

Detalles Bibliográficos
Autores principales: Khatib, Tala O., Amanso, Angelica M., Knippler, Christina M., Pedro, Brian, Summerbell, Emily R., Zohbi, Najdat M., Konen, Jessica M., Mouw, Janna K., Marcus, Adam I.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10566726/
https://www.ncbi.nlm.nih.gov/pubmed/37819930
http://dx.doi.org/10.1371/journal.pone.0292554
_version_ 1785118973333864448
author Khatib, Tala O.
Amanso, Angelica M.
Knippler, Christina M.
Pedro, Brian
Summerbell, Emily R.
Zohbi, Najdat M.
Konen, Jessica M.
Mouw, Janna K.
Marcus, Adam I.
author_facet Khatib, Tala O.
Amanso, Angelica M.
Knippler, Christina M.
Pedro, Brian
Summerbell, Emily R.
Zohbi, Najdat M.
Konen, Jessica M.
Mouw, Janna K.
Marcus, Adam I.
author_sort Khatib, Tala O.
collection PubMed
description Numerous techniques have been employed to deconstruct the heterogeneity observed in normal and diseased cellular populations, including single cell RNA sequencing, in situ hybridization, and flow cytometry. While these approaches have revolutionized our understanding of heterogeneity, in isolation they cannot correlate phenotypic information within a physiologically relevant live-cell state with molecular profiles. This inability to integrate a live-cell phenotype—such as invasiveness, cell:cell interactions, and changes in spatial positioning—with multi-omic data creates a gap in understanding cellular heterogeneity. We sought to address this gap by employing lab technologies to design a detailed protocol, termed Spatiotemporal Genomic and Cellular Analysis (SaGA), for the precise imaging-based selection, isolation, and expansion of phenotypically distinct live cells. This protocol requires cells expressing a photoconvertible fluorescent protein and employs live cell confocal microscopy to photoconvert a user-defined single cell or set of cells displaying a phenotype of interest. The total population is then extracted from its microenvironment, and the optically highlighted cells are isolated using fluorescence activated cell sorting. SaGA-isolated cells can then be subjected to multi-omics analysis or cellular propagation for in vitro or in vivo studies. This protocol can be applied to a variety of conditions, creating protocol flexibility for user-specific research interests. The SaGA technique can be accomplished in one workday by non-specialists and results in a phenotypically defined cellular subpopulations for integration with multi-omics techniques. We envision this approach providing multi-dimensional datasets exploring the relationship between live cell phenotypes and multi-omic heterogeneity within normal and diseased cellular populations.
format Online
Article
Text
id pubmed-10566726
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher Public Library of Science
record_format MEDLINE/PubMed
spelling pubmed-105667262023-10-12 A live-cell platform to isolate phenotypically defined subpopulations for spatial multi-omic profiling Khatib, Tala O. Amanso, Angelica M. Knippler, Christina M. Pedro, Brian Summerbell, Emily R. Zohbi, Najdat M. Konen, Jessica M. Mouw, Janna K. Marcus, Adam I. PLoS One Lab Protocol Numerous techniques have been employed to deconstruct the heterogeneity observed in normal and diseased cellular populations, including single cell RNA sequencing, in situ hybridization, and flow cytometry. While these approaches have revolutionized our understanding of heterogeneity, in isolation they cannot correlate phenotypic information within a physiologically relevant live-cell state with molecular profiles. This inability to integrate a live-cell phenotype—such as invasiveness, cell:cell interactions, and changes in spatial positioning—with multi-omic data creates a gap in understanding cellular heterogeneity. We sought to address this gap by employing lab technologies to design a detailed protocol, termed Spatiotemporal Genomic and Cellular Analysis (SaGA), for the precise imaging-based selection, isolation, and expansion of phenotypically distinct live cells. This protocol requires cells expressing a photoconvertible fluorescent protein and employs live cell confocal microscopy to photoconvert a user-defined single cell or set of cells displaying a phenotype of interest. The total population is then extracted from its microenvironment, and the optically highlighted cells are isolated using fluorescence activated cell sorting. SaGA-isolated cells can then be subjected to multi-omics analysis or cellular propagation for in vitro or in vivo studies. This protocol can be applied to a variety of conditions, creating protocol flexibility for user-specific research interests. The SaGA technique can be accomplished in one workday by non-specialists and results in a phenotypically defined cellular subpopulations for integration with multi-omics techniques. We envision this approach providing multi-dimensional datasets exploring the relationship between live cell phenotypes and multi-omic heterogeneity within normal and diseased cellular populations. Public Library of Science 2023-10-11 /pmc/articles/PMC10566726/ /pubmed/37819930 http://dx.doi.org/10.1371/journal.pone.0292554 Text en https://creativecommons.org/publicdomain/zero/1.0/This is an open access article, free of all copyright, and may be freely reproduced, distributed, transmitted, modified, built upon, or otherwise used by anyone for any lawful purpose. The work is made available under the Creative Commons CC0 (https://creativecommons.org/publicdomain/zero/1.0/) public domain dedication.
spellingShingle Lab Protocol
Khatib, Tala O.
Amanso, Angelica M.
Knippler, Christina M.
Pedro, Brian
Summerbell, Emily R.
Zohbi, Najdat M.
Konen, Jessica M.
Mouw, Janna K.
Marcus, Adam I.
A live-cell platform to isolate phenotypically defined subpopulations for spatial multi-omic profiling
title A live-cell platform to isolate phenotypically defined subpopulations for spatial multi-omic profiling
title_full A live-cell platform to isolate phenotypically defined subpopulations for spatial multi-omic profiling
title_fullStr A live-cell platform to isolate phenotypically defined subpopulations for spatial multi-omic profiling
title_full_unstemmed A live-cell platform to isolate phenotypically defined subpopulations for spatial multi-omic profiling
title_short A live-cell platform to isolate phenotypically defined subpopulations for spatial multi-omic profiling
title_sort live-cell platform to isolate phenotypically defined subpopulations for spatial multi-omic profiling
topic Lab Protocol
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10566726/
https://www.ncbi.nlm.nih.gov/pubmed/37819930
http://dx.doi.org/10.1371/journal.pone.0292554
work_keys_str_mv AT khatibtalao alivecellplatformtoisolatephenotypicallydefinedsubpopulationsforspatialmultiomicprofiling
AT amansoangelicam alivecellplatformtoisolatephenotypicallydefinedsubpopulationsforspatialmultiomicprofiling
AT knipplerchristinam alivecellplatformtoisolatephenotypicallydefinedsubpopulationsforspatialmultiomicprofiling
AT pedrobrian alivecellplatformtoisolatephenotypicallydefinedsubpopulationsforspatialmultiomicprofiling
AT summerbellemilyr alivecellplatformtoisolatephenotypicallydefinedsubpopulationsforspatialmultiomicprofiling
AT zohbinajdatm alivecellplatformtoisolatephenotypicallydefinedsubpopulationsforspatialmultiomicprofiling
AT konenjessicam alivecellplatformtoisolatephenotypicallydefinedsubpopulationsforspatialmultiomicprofiling
AT mouwjannak alivecellplatformtoisolatephenotypicallydefinedsubpopulationsforspatialmultiomicprofiling
AT marcusadami alivecellplatformtoisolatephenotypicallydefinedsubpopulationsforspatialmultiomicprofiling
AT khatibtalao livecellplatformtoisolatephenotypicallydefinedsubpopulationsforspatialmultiomicprofiling
AT amansoangelicam livecellplatformtoisolatephenotypicallydefinedsubpopulationsforspatialmultiomicprofiling
AT knipplerchristinam livecellplatformtoisolatephenotypicallydefinedsubpopulationsforspatialmultiomicprofiling
AT pedrobrian livecellplatformtoisolatephenotypicallydefinedsubpopulationsforspatialmultiomicprofiling
AT summerbellemilyr livecellplatformtoisolatephenotypicallydefinedsubpopulationsforspatialmultiomicprofiling
AT zohbinajdatm livecellplatformtoisolatephenotypicallydefinedsubpopulationsforspatialmultiomicprofiling
AT konenjessicam livecellplatformtoisolatephenotypicallydefinedsubpopulationsforspatialmultiomicprofiling
AT mouwjannak livecellplatformtoisolatephenotypicallydefinedsubpopulationsforspatialmultiomicprofiling
AT marcusadami livecellplatformtoisolatephenotypicallydefinedsubpopulationsforspatialmultiomicprofiling