Department of Ecology and Evolutionary Biology, University of Toronto, Toronto, ON, Canada;
Division of Transfusion Medicine, Department of Medicine, University of Massachusetts, Worcester, MA, USA; Program in Bioinformatics and Integrative Biology, University of Massachusetts, Worcester, MA, USA;
Evol Med Public Health. 2016 Jan 27;2016(1):21-36. doi: 10.1093/emph/eov036.
Current tools struggle to detect drug-resistant malaria parasites when infections contain multiple parasite clones, which is the norm in high transmission settings in Africa. Our aim was to develop and apply an approach for detecting resistance that overcomes the challenges of polyclonal infections without requiring a genetic marker for resistance.
Clinical samples from patients treated with artemisinin combination therapy were collected from Tanzania and Cambodia. By deeply sequencing a hypervariable locus, we quantified the relative abundance of parasite subpopulations (defined by haplotypes of that locus) within infections and revealed evolutionary dynamics during treatment. Slow clearance is a phenotypic, clinical marker of artemisinin resistance; we analyzed variation in clearance rates within infections by fitting parasite clearance curves to subpopulation data.
In Tanzania, we found substantial variation in clearance rates within individual patients. Some parasite subpopulations cleared as slowly as resistant parasites observed in Cambodia. We evaluated possible explanations for these data, including resistance to drugs. Assuming slow clearance was a stable phenotype of subpopulations, simulations predicted that modest increases in their frequency could substantially increase time to cure.
By characterizing parasite subpopulations within patients, our method can detect rare, slow clearing parasites in vivo whose phenotypic effects would otherwise be masked. Since our approach can be applied to polyclonal infections even when the genetics underlying resistance are unknown, it could aid in monitoring the emergence of artemisinin resistance. Our application to Tanzanian samples uncovers rare subpopulations with worrying phenotypes for closer examination.
当感染包含多个寄生虫克隆时,当前的工具难以检测到耐药性疟原虫,而这在非洲高传播地区是常态。我们的目标是开发和应用一种方法来检测耐药性,该方法克服了多克隆感染的挑战,而无需针对耐药性的遗传标记。
从坦桑尼亚和柬埔寨接受青蒿素联合疗法治疗的患者中采集临床样本。通过深度测序一个高变异位点,我们量化了感染内寄生虫亚群(由该位点的单倍型定义)的相对丰度,并揭示了治疗过程中的进化动态。清除缓慢是青蒿素耐药的表型、临床标志物;我们通过将寄生虫清除曲线拟合到亚群数据来分析感染内清除率的变化。
在坦桑尼亚,我们发现个体患者内清除率存在很大差异。一些寄生虫亚群的清除速度与在柬埔寨观察到的耐药寄生虫一样缓慢。我们评估了这些数据的可能解释,包括对药物的耐药性。假设清除缓慢是亚群的稳定表型,模拟预测其频率的适度增加会大大延长治愈时间。
通过对患者体内的寄生虫亚群进行特征描述,我们的方法可以检测到体内罕见的、清除缓慢的寄生虫,否则这些寄生虫的表型效应会被掩盖。由于我们的方法甚至可以应用于遗传背景未知的多克隆感染,因此它可以帮助监测青蒿素耐药性的出现。我们对坦桑尼亚样本的应用揭示了具有令人担忧表型的罕见亚群,需要进一步检查。