Department of Medicine, Division of Infectious Diseases, University of California, Irvine, California 92697, United States.
J Proteome Res. 2011 Oct 7;10(10):4813-24. doi: 10.1021/pr200619r. Epub 2011 Sep 8.
A complete understanding of the factors that determine selection of antigens recognized by the humoral immune response following infectious agent challenge is lacking. Here we illustrate a systems biology approach to identify the antibody signature associated with Brucella melitensis (Bm) infection in humans and predict proteomic features of serodiagnostic antigens. By taking advantage of a full proteome microarray expressing previously cloned 1406 and newly cloned 1640 Bm genes, we were able to identify 122 immunodominant antigens and 33 serodiagnostic antigens. The reactive antigens were then classified according to annotated functional features (COGs), computationally predicted features (e.g., subcellular localization, physical properties), and protein expression estimated by mass spectrometry (MS). Enrichment analyses indicated that membrane association and secretion were significant enriching features of the reactive antigens, as were proteins predicted to have a signal peptide, a single transmembrane domain, and outer membrane or periplasmic location. These features accounted for 67% of the serodiagnostic antigens. An overlay of the seroreactive antigen set with proteomic data sets generated by MS identified an additional 24%, suggesting that protein expression in bacteria is an additional determinant in the induction of Brucella-specific antibodies. This analysis indicates that one-third of the proteome contains enriching features that account for 91% of the antigens recognized, and after B. melitensis infection the immune system develops significant antibody titers against 10% of the proteins with these enriching features. This systems biology approach provides an empirical basis for understanding the breadth and specificity of the immune response to B. melitensis and a new framework for comparing the humoral responses against other microorganisms.
对于决定在受到感染原挑战后体液免疫反应所识别的抗原的因素,我们还缺乏全面的了解。在这里,我们展示了一种系统生物学方法,用于鉴定与布鲁氏菌属(Bm)感染相关的抗体特征,并预测血清学诊断抗原的蛋白质组学特征。通过利用表达先前克隆的 1406 个和新克隆的 1640 个 Bm 基因的完整蛋白质组微阵列,我们能够鉴定出 122 个免疫显性抗原和 33 个血清学诊断抗原。然后,根据注释的功能特征(COG)、计算预测的特征(例如亚细胞定位、物理性质)以及通过质谱(MS)估计的蛋白质表达,将反应性抗原进行分类。富集分析表明,膜结合和分泌是反应性抗原的显著富集特征,具有信号肽、单一跨膜结构域以及外膜或周质位置的蛋白质预测也是如此。这些特征占血清学诊断抗原的 67%。将血清反应性抗原集与通过 MS 生成的蛋白质组数据集进行叠加,确定了另外 24%,表明细菌中的蛋白质表达是诱导布鲁氏菌特异性抗体的另一个决定因素。该分析表明,三分之一的蛋白质组包含丰富的特征,占识别出的抗原的 91%,在感染 B. melitensis 后,免疫系统针对具有这些丰富特征的 10%的蛋白质产生了显著的抗体滴度。这种系统生物学方法为理解针对 B. melitensis 的免疫反应的广度和特异性提供了一个经验基础,并为比较针对其他微生物的体液反应提供了一个新的框架。