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Workflow for high-dimensional flow cytometry analysis of T cells from tumor metastases

Articolo
Data di Pubblicazione:
2022
Citazione:
Workflow for high-dimensional flow cytometry analysis of T cells from tumor metastases / Faccani, Cristina; Rotta, Gianluca; Clemente, Francesca; Fedeli, Maya; Abbati, Danilo; Manfredi, Francesco; Potenza, Alessia; Anselmo, Achille; Pedica, Federica; Fiorentini, Guido; Villa, Chiara; Protti, Maria P; Doglioni, Claudio; Aldrighetti, Luca; Bonini, Chiara; Casorati, Giulia; Dellabona, Paolo; de Lalla, Claudia. - In: LIFE SCIENCE ALLIANCE. - ISSN 2575-1077. - 3:5(2022), p. e202101316. [10.26508/lsa.202101316]
Abstract:
We describe a multi-step high-dimensional (HD) flow cytometry workflow for the deep phenotypic characterization of T cells infiltrating metastatic tumor lesions in the liver, particularly derived from colorectal cancer (CRC-LM). First, we applied a novel flow cytometer setting approach based on single positive cells rather than fluorescent beads, resulting in optimal sensitivity when compared with previously published protocols. Second, we set up a 26-color based antibody panel designed to assess the functional state of both conventional T-cell subsets and unconventional invariant natural killer T, mucosal associated invariant T, and gamma delta T (γδT)-cell populations, which are abundant in the liver. Third, the dissociation of the CRC-LM samples was accurately tuned to preserve both the viability and antigenic integrity of the stained cells. This combined procedure permitted the optimal capturing of the phenotypic complexity of T cells infiltrating CRC-LM. Hence, this study provides a robust tool for high-dimensional flow cytometry analysis of complex T-cell populations, which could be adapted to characterize other relevant pathological tissues.
Tipologia CRIS:
1.1 Articolo in rivista
Keywords:
Flow Cytometry; Workflow; Liver; T-Lymphocyte Subsets
Elenco autori:
Faccani, Cristina; Rotta, Gianluca; Clemente, Francesca; Fedeli, Maya; Abbati, Danilo; Manfredi, Francesco; Potenza, Alessia; Anselmo, Achille; Pedica, Federica; Fiorentini, Guido; Villa, Chiara; Protti, Maria P; Doglioni, Claudio; Aldrighetti, Luca; Bonini, Chiara; Casorati, Giulia; Dellabona, Paolo; de Lalla, Claudia
Autori di Ateneo:
BONINI MARIA CHIARA
PEDICA FEDERICA
Link alla scheda completa:
https://iris.unisr.it/handle/20.500.11768/132358
Pubblicato in:
LIFE SCIENCE ALLIANCE
Journal
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