In silico, biologically-inspired modelling of genomic variation generation in surface proteins of Trypanosoma cruzi.

Francisco J Azuaje, Jose L Ramirez, Jose F Da Silveira
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Abstract

Background: Protozoan parasites improve the likelihood of invading or adapting to the host through their capacity to present a large repertoire of surface molecules. The understanding of the mechanisms underlying the generation of antigenic diversity is crucial to aid in the development of therapies and the study of evolution. Despite advances driven by molecular biology and genomics, there is a need to gain a deeper understanding of key properties that may facilitate variation generation, models for explaining the role of genomic re-arrangements and the characterisation of surface protein families on the basis of their capacity to generate variation. Computer models may be implemented to explore, visualise and estimate the variation generation capacity of gene families in a dynamic fashion. In this paper we report the dynamic simulation of genomic variation using real T. cruzi coding sequences as inputs to a computational simulation system. The effects of random, multiple-point mutations and gene conversions on genomic variation generation were quantitatively estimated and visualised. Simulations were also implemented to investigate the potential role of pseudogenes as a source of antigenic variation in T. cruzi.

Results: Computational models of variation generation were applied to real coding sequences from surface proteins in T. cruzi: trans-sialidase-like proteins and putative surface protein dispersed gene family-1. In the simulations the sequences self-replicated, mutated and re-arranged during thousands of generations. Simulations were implemented for different mutation rates to estimate the relative robustness of the protein families in the face of DNA multiple-point mutations and sequence re-arrangements. The gene super-families and families showed distinguishing evolutionary responses, which may be used to characterise them on the basis of their capacity to generate variability. The simulations showed that sequences from T. cruzi nuclear genes tend to be relatively more robust against random, multiple-point mutations than those obtained from surface protein genes. Simulations also showed that a gene conversion model may act as an effective variation generation mechanism. Differential variation responses can be used to characterise the sequence groups under study. For example, unlike other families, sequences from the DGF1 family have the capacity to maximise variation at the amino acid level under relatively low mutation rates and through gene conversion. However, in relation to the other protein families, they exhibit more robust behaviour in response to more severe modifications through intra-family genomic sequence exchange. Independent simulations indicate that DGF1 pseudogenes might play a role in the generation of greater genomic variation in the DFG1 gene family through gene conversion under different experimental conditions.

Conclusion: Digital, dynamic simulations may be implemented to characterise gene families on the basis of their capacity to generate variation in the face of genomic perturbations. Such simulations may be useful to explore antigenic variation mechanisms and hypotheses about robustness at the genomic level. This investigation illustrated how sequences derived from surface protein genes and computer simulations can be used to investigate variation generation mechanisms. Such in silico experiments of self-replicating sequences undergoing random mutations and genomic re-arrangements can offer insights into the diversity generation potential of the genes under study. Biologically-inspired simulations may support the study of genomic variation mechanisms in pathogens whose genomes have been recently sequenced.

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克氏锥虫表面蛋白基因组变异生成的硅学、生物启发模型。
背景:原生动物寄生虫能够提供大量的表面分子,从而提高入侵或适应宿主的可能性。了解抗原多样性的产生机制对于帮助开发疗法和研究进化至关重要。尽管在分子生物学和基因组学的推动下取得了进展,但仍有必要深入了解可能促进变异产生的关键特性、解释基因组重排作用的模型,以及根据表面蛋白家族产生变异的能力对其进行特征描述。计算机模型可用于以动态方式探索、可视化和估计基因家族的变异生成能力。在本文中,我们报告了利用真实的克鲁斯绦虫编码序列作为计算模拟系统的输入,对基因组变异进行动态模拟的情况。随机、多点突变和基因转换对基因组变异产生的影响得到了定量估计和可视化。此外还进行了模拟,以研究假基因作为 T. cruzi 抗原变异来源的潜在作用:结果:变异产生的计算模型被应用于克鲁斯绦虫表面蛋白的真实编码序列:反式-丝氨酸酶样蛋白和推定表面蛋白分散基因家族-1。在模拟中,序列在数千代的过程中自我复制、变异和重新排列。对不同的突变率进行了模拟,以估计蛋白质家族在 DNA 多点突变和序列重新排列情况下的相对稳健性。基因超家族和家族表现出不同的进化反应,可根据其产生变异的能力来描述它们的特征。模拟结果表明,与从表面蛋白基因中获得的序列相比,来自克柔病毒核基因的序列对随机多点突变的抵抗力相对较强。模拟还表明,基因转换模型可以作为一种有效的变异生成机制。差异变异反应可用于描述所研究序列组的特征。例如,与其他家族不同,DGF1 家族的序列有能力在相对较低的突变率下通过基因转换最大限度地提高氨基酸水平的变异。然而,与其他蛋白家族相比,它们通过家族内部基因组序列交换,在应对更严重的修饰时表现得更为稳健。独立模拟结果表明,在不同的实验条件下,DGF1 伪基因可能会通过基因转换在 DFG1 基因家族中产生更大的基因组变异:结论:可以进行数字动态模拟,根据基因家族在面对基因组扰动时产生变异的能力来确定基因家族的特征。这种模拟可能有助于在基因组水平上探索抗原变异机制和稳健性假设。这项研究说明了如何利用表面蛋白基因序列和计算机模拟来研究变异的产生机制。这种对经历随机突变和基因组重新排列的自我复制序列进行的硅学实验,可以让人们深入了解所研究基因产生变异的潜力。受生物学启发的模拟可能有助于研究最近完成基因组测序的病原体的基因组变异机制。
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Consultation meeting on the development of therapeutic vaccines for post kala azar dermal leishmaniasis. In silico, biologically-inspired modelling of genomic variation generation in surface proteins of Trypanosoma cruzi. Genetic diversity of Leishmania amazonensis strains isolated in northeastern Brazil as revealed by DNA sequencing, PCR-based analyses and molecular karyotyping. Dynamics of infection and competition between two strains of Trypanosoma brucei brucei in the tsetse fly observed using fluorescent markers. Consultative meeting to develop a strategy for treatment of cutaneous leishmaniasis. Institute Pasteur, Paris. 13-15 June, 2006.
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