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Determining the expected variability of immune responses using the cyton model

机译:使用细胞模型确定免疫反应的预期变异性

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During an adaptive immune response, lymphocytes proliferate for 5-20 cell divisions, then stop and die over a period of weeks. The cyton model for regulation of lymphocyte proliferation and survival was introduced by Hawkins et al. (Proc. Natl. Acad. Sci. USA 104, 5032-5037, 2007) to provide a framework for understanding this response and its regulation. The model assumes stochastic values for division and survival times for each cell in a responding population. Experimental evidence indicates that the choice of times is drawn from a skewed distribution such as the lognormal, with the fate of individual cells being potentially highly variable. For this reason we calculate the higher moments of the model so that the expected variability can be determined. To do this we formulate a new analytic framework for the cyton model by introducing a generalization to the Bellman-Harris branching process. We use this framework to introduce two distinct approaches to predicting variability in the immune response to a mitogenic signal. The first method enables explicit calculations for certain distributions and qualitatively exhibits the full range of observed immune responses. The second approach does not facilitate analytic solutions, but allows simple numerical schemes for distributions for which there is little prospect of analytic formulae. We compare the predictions derived from the second method to experimentally observed lymphocyte population sizes from in vivo and in vitro experiments. The model predictions for both data sets are remarkably accurate. The important biological conclusion is that there is limited variation around the expected value of the population size irrespective of whether the response is mediated by small numbers of cells undergoing many divisions or for many cells pursuing a small number of divisions. Therefore, we conclude the immune response is robust and predictable despite the potential for great variability in the experience of each individual cell.
机译:在适应性免疫应答过程中,淋巴细胞增殖5-20个细胞分裂,然后在数周内停下来死亡。 Hawkins等人介绍了调节淋巴细胞增殖和存活的细胞模型。 (Proc.Natl.Acad.Sci.USA 104,5032-5037,2007)提供了用于理解这种反应及其调节的框架。该模型假设响应种群中每个细胞的分裂和存活时间为随机值。实验证据表明,时间的选择是从偏态分布(例如对数正态)得出的,单个细胞的命运可能高度可变。因此,我们计算模型的较高矩,以便可以确定预期的可变性。为此,我们通过向Bellman-Harris分支过程引入一般化,为细胞模型建立新的分析框架。我们使用此框架来介绍两种不同的方法来预测对有丝分裂信号的免疫反应的变异性。第一种方法可以对某些分布进行显式计算,并定性显示观察到的免疫反应的全部范围。第二种方法不利于解析解,但允许使用简单的数值方案进行分布,而解析公式的前景很小。我们将第二种方法得出的预测与体内和体外实验中观察到的淋巴细胞群体大小进行比较。两个数据集的模型预测都非常准确。重要的生物学结论是,无论响应是由少量经历多次分裂的细胞还是对于经历少量分裂的许多细胞介导的,在群体大小的预期值附近变化有限。因此,我们得出结论,尽管每个单个细胞的经验可能存在很大的变异性,但免疫反应是强有力的和可预测的。

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