Vardaman Donald, Ali Md Akkas, Bolding Chase, Tidwell Harrison, Stephens Holly, Tyrrell Daniel J
Department of Pathology, University of Alabama at Birmingham, Birmingham, AL, 35205 USA.
Biochemistry and Structural Biology Theme, Graduate Biomedical Sciences, University of Alabama at Birmingham, Birmingham, AL, 35205 USA.
bioRxiv. 2024 Jun 22:2024.06.19.599633. doi: 10.1101/2024.06.19.599633.
Flow cytometry is a widely used technique for immune cell analysis, offering insights into cell composition and function. Spectral flow cytometry allows for high-dimensional analysis of immune cells, overcoming limitations of conventional flow cytometry. However, analyzing data from large antibody panels can be challenging using traditional bi-axial gating strategies. Here, we present a novel analysis pipeline designed to improve analysis of spectral flow cytometry. We employ this method to identify rare T cell populations in aging. We isolated splenocytes from young (2-3 months) and aged (18-19 months) female mice then stained these with a panel of 20 fluorescently labeled antibodies. Spectral flow cytometry was performed, followed by data processing and analysis using Python within a Jupyter Notebook environment to perform batch correction, unsupervised clustering, dimensionality reduction, and differential expression analysis. Our analysis of 3,776,804 T cells from 11 spleens revealed 34 distinct T cell clusters identified by surface marker expression. We observed significant differences between young and aged mice, with certain clusters enriched in one age group over the other. Naïve, effector memory, and central memory CD8 and CD4 T cell subsets exhibited age-associated changes in abundance and marker expression. Additionally, γδ T cell clusters showed differential abundance between age groups. By leveraging high-dimensional analysis methods borrowed from single-cell RNA sequencing analysis, we identified age-related differences in T cell subsets, providing insights into the immune aging process. This approach offers a robust, free, and easily implemented analysis pipeline for spectral flow cytometry data that may facilitate the discovery of novel therapeutic targets for age-related immune dysfunction.
流式细胞术是一种广泛用于免疫细胞分析的技术,可深入了解细胞组成和功能。光谱流式细胞术能够对免疫细胞进行高维分析,克服了传统流式细胞术的局限性。然而,使用传统的双轴门控策略分析来自大型抗体面板的数据可能具有挑战性。在此,我们提出了一种新颖的分析流程,旨在改进光谱流式细胞术的分析。我们采用这种方法来识别衰老过程中的罕见T细胞群体。我们从年轻(2 - 3个月)和年老(18 - 19个月)的雌性小鼠中分离出脾细胞,然后用一组20种荧光标记抗体对其进行染色。进行光谱流式细胞术检测,随后在Jupyter Notebook环境中使用Python进行数据处理和分析,以执行批次校正、无监督聚类、降维和差异表达分析。我们对来自11个脾脏的3,776,804个T细胞的分析揭示了通过表面标志物表达确定的34个不同的T细胞簇。我们观察到年轻和年老小鼠之间存在显著差异,某些簇在一个年龄组中比另一个年龄组更富集。幼稚、效应记忆和中枢记忆CD8和CD4 T细胞亚群在丰度和标志物表达方面表现出与年龄相关的变化。此外,γδ T细胞簇在年龄组之间显示出不同的丰度。通过利用从单细胞RNA测序分析借鉴的高维分析方法,我们确定了T细胞亚群中与年龄相关的差异,为免疫衰老过程提供了见解。这种方法为光谱流式细胞术数据提供了一种强大、免费且易于实施的分析流程,可能有助于发现与年龄相关的免疫功能障碍的新型治疗靶点。