Interdisciplinary Program in Bioengineering, Wallace H. Coulter Department of Biomedical Engineering, Georgia Institute of Technology & Emory University, School of Biomolecular Engineering, Atlanta, GA 30332-0363, USA.
Mol Cell Proteomics. 2011 Mar;10(3):M110.003921. doi: 10.1074/mcp.M110.003921. Epub 2010 Dec 30.
Adoptive T-cell transfer therapy relies upon in vitro expansion of autologous cytotoxic T cells that are capable of tumor recognition. The success of this cell-based therapy depends on the specificity and responsiveness of the T cell clones before transfer. During ex vivo expansion, CD8+ T cells present signs of replicative senescence and loss of function. The transfer of nonresponsive senescent T cells is a major bottleneck for the success of adoptive T-cell transfer therapy. Quantitative methods for assessing cellular age and responsiveness will facilitate the development of appropriate cell expansion and selection protocols. Although several biomarkers of lymphocyte senescence have been identified, these proteins in isolation are not sufficient to determine the age-dependent responsiveness of T cells. We have developed a multivariate model capable of extracting combinations of markers that are the most informative to predict cellular age. To acquire signaling information with high temporal resolution, we designed a microfluidic chip enabling parallel lysis and fixation of stimulated cell samples on-chip. The acquisition of 25 static biomarkers and 48 dynamic signaling measurements at different days in culture, integrating single-cell and population based information, allowed the multivariate regression model to accurately predict CD8+ T-cell age. From surface marker expression and early phosphorylation events following T-cell receptor stimulation, the model successfully predicts days in culture and number of population doublings with R2=0.91 and 0.98, respectively. Furthermore, we found that impairment of early signaling events following T cell receptor stimulation because of long term culture allows prediction of costimulatory molecules CD28 and CD27 expression levels and the number of population divisions in culture from a limited subset of signaling proteins. The multivariate analysis highlights the information content of both averaged biomarker values and heterogeneity metrics for prediction of cellular age within a T cell population.
过继性 T 细胞转移疗法依赖于能够识别肿瘤的自体细胞毒性 T 细胞的体外扩增。这种基于细胞的疗法的成功取决于转移前 T 细胞克隆的特异性和反应性。在体外扩增过程中,CD8+T 细胞表现出复制衰老和功能丧失的迹象。无反应性衰老 T 细胞的转移是过继性 T 细胞转移治疗成功的主要瓶颈。评估细胞年龄和反应性的定量方法将有助于制定适当的细胞扩增和选择方案。尽管已经确定了几种淋巴细胞衰老的生物标志物,但这些蛋白质单独使用不足以确定 T 细胞的年龄依赖性反应性。我们开发了一种多变量模型,能够提取出最能预测细胞年龄的标志物组合。为了以高时间分辨率获取信号信息,我们设计了一种微流控芯片,能够在芯片上并行裂解和固定刺激的细胞样本。在培养的不同天数获取 25 个静态生物标志物和 48 个动态信号测量值,整合单细胞和群体信息,使多元回归模型能够准确预测 CD8+T 细胞的年龄。从 T 细胞受体刺激后的表面标志物表达和早期磷酸化事件,该模型成功地预测了培养天数和群体倍增次数,R2 分别为 0.91 和 0.98。此外,我们发现由于长期培养导致 T 细胞受体刺激后的早期信号事件受损,可通过有限数量的信号蛋白预测共刺激分子 CD28 和 CD27 的表达水平以及培养中的群体分裂次数。多元分析突出了平均生物标志物值和异质性指标在预测 T 细胞群体中细胞年龄方面的信息含量。