CPHEN‐011: Comprehensive phenotyping of murine lung resident lymphocytes after recovery from pneumococcal pneumonia

生物 流式细胞术 免疫学 免疫系统 免疫 获得性免疫系统 肺炎 表型 计算生物学 医学 遗传学 基因 内科学
作者
A.T. Shenoy,C. Lyon De Ana,Kimberly A. Barker,E.I. Arafa,I.M.C. Martin,Joseph P. Mizgerd,Anna C. Belkina
出处
期刊:Cytometry Part A [Wiley]
卷期号:101 (11): 892-902
标识
DOI:10.1002/cyto.a.24522
摘要

Recovery from pneumococcal (Spn) pneumonia induces development of tissue resident memory CD4+ TRM cells, BRM cells, and antibody secreting plasma cells in experienced lungs. These tissue resident lymphocytes confer protection against subsequent lethal challenge by serotype mismatched Spn (termed as heterotypic immunity). While traditional flow cytometry and gating strategies support premeditated identification of cells using a limited set of markers, discovery of novel tissue resident lymphocytes necessitates stable platforms that can handle larger sets of phenotypic markers and lends itself to unbiased clustering approaches. In this report, we leverage the power of full spectrum flow cytometry (FSFC) to develop a comprehensive panel of phenotypic markers that allows identification of multiple subsets of tissue resident lymphocytes in Spn-experienced murine lungs. Using Phenograph algorithm on this multidimensional data, we identify unforeseen heterogeneity in lung resident adaptive immune landscape which includes unexpected subsets of TRM and BRM cells. Further, using conventional gating strategy informed by our unsupervised clustering data, we confirm their presence exquisitely in Spn-experienced lungs as potentially relevant to heterotypic immunity and define CD73 as a highly expressed marker on TRM cells. Thus, our study emphasizes the utility of FSFC for confirmatory and discovery studies relating to tissue resident adaptive immunity.

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