Division of Infectious Diseases, School of Medicine, University of North Carolina, Chapel Hill, NC 27514, USA.
Proc Natl Acad Sci U S A. 2010 Nov 16;107(46):20138-43. doi: 10.1073/pnas.1007068107. Epub 2010 Nov 1.
Malaria infections commonly contain multiple genetically distinct variants. Mathematical and animal models suggest that interactions among these variants have a profound impact on the emergence of drug resistance. However, methods currently used for quantifying parasite diversity in individual infections are insensitive to low-abundance variants and are not quantitative for variant population sizes. To more completely describe the in-host complexity and ecology of malaria infections, we used massively parallel pyrosequencing to characterize malaria parasite diversity in the infections of a group of patients. By individually sequencing single strands of DNA in a complex mixture, this technique can quantify uncommon variants in mixed infections. The in-host diversity revealed by this method far exceeded that described by currently recommended genotyping methods, with as many as sixfold more variants per infection. In addition, in paired pre- and posttreatment samples, we show a complex milieu of parasites, including variants likely up-selected and down-selected by drug therapy. As with all surveys of diversity, sampling limitations prevent full discovery and differences in sampling effort can confound comparisons among samples, hosts, and populations. Here, we used ecological approaches of species accumulation curves and capture-recapture to estimate the number of variants we failed to detect in the population, and show that these methods enable comparisons of diversity before and after treatment, as well as between malaria populations. The combination of ecological statistics and massively parallel pyrosequencing provides a powerful tool for studying the evolution of drug resistance and the in-host ecology of malaria infections.
疟疾感染通常包含多种遗传上不同的变体。数学和动物模型表明,这些变体之间的相互作用对耐药性的出现有深远的影响。然而,目前用于量化个体感染中寄生虫多样性的方法对低丰度变体不敏感,并且不能对变体种群大小进行定量。为了更全面地描述疟疾感染的宿主内复杂性和生态学,我们使用大规模平行焦磷酸测序技术来描述一组患者感染中的疟原虫多样性。通过在复杂混合物中单独测序单链 DNA,该技术可以量化混合感染中的罕见变体。这种方法揭示的宿主内多样性远远超过目前推荐的基因分型方法所描述的多样性,每个感染的变体数量多达六倍。此外,在配对的治疗前和治疗后样本中,我们展示了一个复杂的寄生虫环境,包括可能被药物治疗选择和淘汰的变体。与所有多样性调查一样,采样限制阻止了对种群中未检测到的变体的全面发现,并且采样努力的差异可能会混淆样本、宿主和种群之间的比较。在这里,我们使用物种积累曲线和捕获-再捕获的生态学方法来估计我们在种群中未能检测到的变体数量,并表明这些方法能够比较治疗前后以及疟疾种群之间的多样性。生态统计学和大规模平行焦磷酸测序的结合为研究耐药性的进化和疟疾感染的宿主内生态学提供了强大的工具。