Clinical and Experimental Sciences, Sir Henry Wellcome Laboratories, Faculty of Medicine, University of Southampton, SO16 6YD, Southampton, UK.
Institute for Life Sciences, University of Southampton, SO17 1BJ, Southampton, UK.
Sci Rep. 2017 Apr 6;7(1):668. doi: 10.1038/s41598-017-00651-5.
Langerhans cells (LCs) are able to orchestrate adaptive immune responses in the skin by interpreting the microenvironmental context in which they encounter foreign substances, but the regulatory basis for this has not been established. Utilising systems immunology approaches combining in silico modelling of a reconstructed gene regulatory network (GRN) with in vitro validation of the predictions, we sought to determine the mechanisms of regulation of immune responses in human primary LCs. The key role of Interferon regulatory factors (IRFs) as controllers of the human Langerhans cell response to epidermal cytokines was revealed by whole transcriptome analysis. Applying Boolean logic we assembled a Petri net-based model of the IRF-GRN which provides molecular pathway predictions for the induction of different transcriptional programmes in LCs. In silico simulations performed after model parameterisation with transcription factor expression values predicted that human LC activation of antigen-specific CD8 T cells would be differentially regulated by epidermal cytokine induction of specific IRF-controlled pathways. This was confirmed by in vitro measurement of IFN-γ production by activated T cells. As a proof of concept, this approach shows that stochastic modelling of a specific immune networks renders transcriptome data valuable for the prediction of functional outcomes of immune responses.
郎格汉斯细胞 (LCs) 能够通过解读其遇到外来物质的微环境背景来协调皮肤中的适应性免疫反应,但尚未确定其调节基础。我们利用系统免疫学方法,将重建的基因调控网络 (GRN) 的计算机模拟与体外预测验证相结合,旨在确定人类原代 LCs 中免疫反应调节的机制。通过全转录组分析揭示了干扰素调节因子 (IRFs) 作为表皮细胞因子对人类 Langerhans 细胞反应的调控的关键作用。我们应用布尔逻辑,组装了基于 Petri 网的 IRF-GRN 模型,为 LC 中不同转录程序的诱导提供了分子途径预测。在使用转录因子表达值对模型参数化进行计算机模拟后,预测表皮细胞因子诱导的特定 IRF 控制途径会导致人类 LC 对特异性 CD8 T 细胞的激活产生不同的调节。通过体外测量激活的 T 细胞产生 IFN-γ 进行了验证。作为概念验证,该方法表明,对特定免疫网络的随机建模可使转录组数据有助于预测免疫反应的功能结果。