Trans-NIH Center for Human Immunology, Autoimmunity and Inflammation, National Institutes of Health, Bethesda, MD 20892, USA; Systems Genomics and Bioinformatics Unit, Laboratory of Systems Biology, National Institute of Allergy and Infectious Diseases, National Institutes of Health, Bethesda, MD 20892, USA.
Trans-NIH Center for Human Immunology, Autoimmunity and Inflammation, National Institutes of Health, Bethesda, MD 20892, USA; Genetic Disease Research Branch, National Human Genome Research Institute, National Institutes of Health, Bethesda, MD 20892, USA.
Cell. 2014 Apr 10;157(2):499-513. doi: 10.1016/j.cell.2014.03.031.
A major goal of systems biology is the development of models that accurately predict responses to perturbation. Constructing such models requires the collection of dense measurements of system states, yet transformation of data into predictive constructs remains a challenge. To begin to model human immunity, we analyzed immune parameters in depth both at baseline and in response to influenza vaccination. Peripheral blood mononuclear cell transcriptomes, serum titers, cell subpopulation frequencies, and B cell responses were assessed in 63 individuals before and after vaccination and were used to develop a systematic framework to dissect inter- and intra-individual variation and build predictive models of postvaccination antibody responses. Strikingly, independent of age and pre-existing antibody titers, accurate models could be constructed using pre-perturbation cell populations alone, which were validated using independent baseline time points. Most of the parameters contributing to prediction delineated temporally stable baseline differences across individuals, raising the prospect of immune monitoring before intervention.
系统生物学的一个主要目标是开发能够准确预测系统对干扰响应的模型。构建此类模型需要收集系统状态的密集测量值,但将数据转化为预测结构仍然是一个挑战。为了开始对人类免疫进行建模,我们深入分析了 63 个人在流感疫苗接种前后的基线和免疫反应时的免疫参数。我们评估了外周血单核细胞转录组、血清效价、细胞亚群频率和 B 细胞反应,并利用这些数据开发了一个系统框架,以剖析个体间和个体内的变异性,并构建疫苗接种后抗体反应的预测模型。值得注意的是,无论年龄和预先存在的抗体效价如何,仅使用预扰动的细胞群就可以构建准确的模型,这些模型使用独立的基线时间点进行了验证。对预测有贡献的大多数参数划定了个体之间具有时间稳定性的基线差异,这为干预前的免疫监测提供了可能性。