Université de Lyon, Lyon, France.
PLoS One. 2012;7(1):e29618. doi: 10.1371/journal.pone.0029618. Epub 2012 Jan 3.
Multiple infections are common in natural host populations and interspecific parasite interactions are therefore likely within a host individual. As they may seriously impact the circulation of certain parasites and the emergence and management of infectious diseases, their study is essential. In the field, detecting parasite interactions is rendered difficult by the fact that a large number of co-infected individuals may also be observed when two parasites share common risk factors. To correct for these "false interactions", methods accounting for parasite risk factors must be used.
METHODOLOGY/PRINCIPAL FINDINGS: In the present paper we propose such a method for presence-absence data (i.e., serology). Our method enables the calculation of the expected frequencies of single and double infected individuals under the independence hypothesis, before comparing them to the observed ones using the chi-square statistic. The method is termed "the corrected chi-square." Its robustness was compared to a pre-existing method based on logistic regression and the corrected chi-square proved to be much more robust for small sample sizes. Since the logistic regression approach is easier to implement, we propose as a rule of thumb to use the latter when the ratio between the sample size and the number of parameters is above ten. Applied to serological data for four viruses infecting cats, the approach revealed pairwise interactions between the Feline Herpesvirus, Parvovirus and Calicivirus, whereas the infection by FIV, the feline equivalent of HIV, did not modify the risk of infection by any of these viruses.
CONCLUSIONS/SIGNIFICANCE: This work therefore points out possible interactions that can be further investigated in experimental conditions and, by providing a user-friendly R program and a tutorial example, offers new opportunities for animal and human epidemiologists to detect interactions of interest in the field, a crucial step in the challenge of multiple infections.
在自然宿主群体中,多种感染很常见,因此种间寄生虫相互作用在宿主个体中很可能发生。由于它们可能严重影响某些寄生虫的传播以及传染病的出现和管理,因此研究它们至关重要。在野外,由于当两种寄生虫具有共同的危险因素时,也可能观察到大量的混合感染个体,因此检测寄生虫相互作用变得很困难。为了纠正这些“虚假相互作用”,必须使用考虑寄生虫危险因素的方法。
方法/主要发现:在本文中,我们针对存在-缺失数据(即血清学)提出了一种方法。我们的方法使我们能够在独立假设下计算单感染和双感染个体的预期频率,然后使用卡方统计量将它们与观察到的频率进行比较。该方法称为“校正卡方”。与基于逻辑回归的已有方法相比,该方法在小样本量下的稳健性更强。由于逻辑回归方法更容易实现,因此我们建议当样本量与参数数量的比值大于十时,使用后者。将该方法应用于感染猫的四种病毒的血清学数据,结果显示,猫疱疹病毒、细小病毒和杯状病毒之间存在两两相互作用,而猫免疫缺陷病毒(FIV)的感染不会改变任何这些病毒的感染风险。
结论/意义:因此,这项工作指出了可能的相互作用,可以在实验条件下进一步研究,并通过提供用户友好的 R 程序和教程示例,为动物和人类流行病学家提供了在野外检测感兴趣相互作用的新机会,这是应对多种感染的关键步骤。