Department of Zoology, University of Oxford, Oxford, United Kingdom.
PLoS One. 2012;7(6):e39335. doi: 10.1371/journal.pone.0039335. Epub 2012 Jun 22.
Many vector-borne pathogens rely on antigenic variation to prolong infections and increase their likelihood of onward transmission. This immune evasion strategy often involves mutually exclusive switching between members of gene families that encode functionally similar but antigenically different variants during the course of a single infection. Studies of different pathogens have suggested that switching between variant genes is non-random and that genes have intrinsic probabilities of being activated or silenced. These factors could create a hierarchy of gene expression with important implications for both infection dynamics and the acquisition of protective immunity. Inferring complete switching networks from gene transcription data is problematic, however, because of the high dimensionality of the system and uncertainty in the data. Here we present a statistically rigorous method for analysing temporal gene transcription data to reconstruct an underlying switching network. Using artificially generated transcription profiles together with in vitro var gene transcript data from two Plasmodium falciparum laboratory strains, we show that instead of relying on data from long-term parasite cultures, accuracy can be greatly improved by using transcription time courses of several parasite populations from the same isolate, each starting with different variant distributions. The method further provides explicit indications about the reliability of the resulting networks and can thus be used to test competing hypotheses with regards to the underlying switching pathways. Our results demonstrate that antigenic switch pathways can be determined reliably from short gene transcription profiles assessing multiple time points, even when subject to moderate levels of experimental error. This should yield important new information about switching patterns in antigenically variable organisms and might help to shed light on the molecular basis of antigenic variation.
许多病媒传播病原体依赖于抗原变异来延长感染时间并增加其传播的可能性。这种免疫逃避策略通常涉及在单个感染过程中,功能相似但抗原不同的变异基因家族成员之间相互排斥的转换。对不同病原体的研究表明,变体基因之间的转换不是随机的,并且基因具有内在的激活或沉默概率。这些因素可能会产生基因表达的层次结构,这对感染动力学和保护性免疫的获得都有重要影响。然而,由于系统的高维性和数据的不确定性,从基因转录数据推断完整的转换网络是有问题的。在这里,我们提出了一种严格的统计方法来分析时间基因转录数据,以重建潜在的转换网络。我们使用人工生成的转录谱以及来自两种疟原虫实验室株的体外 var 基因转录数据,表明通过使用来自同一分离株的多个寄生虫群体的转录时间过程,而不是依赖于长期寄生虫培养的数据,可以大大提高准确性,每个群体的起始变体分布都不同。该方法还提供了关于所得网络可靠性的明确指示,因此可用于测试关于潜在转换途径的竞争假设。我们的结果表明,即使受到中等程度的实验误差的影响,也可以从评估多个时间点的短基因转录谱中可靠地确定抗原转换途径。这应该为抗原可变生物体中的转换模式提供重要的新信息,并有助于揭示抗原变异的分子基础。