Malala Mulavu , Cynthia Sipho Khumalo , Lavel Moonga , Kyoko Hayashida , Benjamin Mubemba , Katendi Changula , Edgar Simulundu , Walter Muleya , Simbarashe Chitanga
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引用次数: 0
Abstract
Background
The microbiome composition of an arthropod vector may impede the growth of some pathogens, aid colonisation by pathogens or affect vector behaviour in ways that impact the transmission of pathogens. In Zambia, little is known of the microbial communities hosted by ticks and how pathogens like Rickettsia play a role in the microbiome composition.
Objective
This study sought to determine the microbiome of Rickettsia-negative and Rickettsia-positive ticks in selected districts of Zambia.
Methods
This was a cross-sectional study carried out on 94 ticks collected from cattle in Chongwe and Chisamba districts. The overall prevalence of Rickettsia spp. was detected using PCR amplification of the ompB gene. Thereafter, both Rickettsia-negative and positive ticks underwent 16S rRNA gene amplification and Illumina high-throughput sequencing. Data was analysed using QIIME2 analysis pipeline.
Results
The prevalence of Rickettsia was found to be 47.9% (45/94) with prevalence in Amblyomma at 78.5% (22/28), Hyalomma at 68.9% (20/29) and Rhipicephalus having the lowest at 8.1% (3/37). Proteobacteria, Firmicutes, Actinobacteriota and Euryachaeota were the most common phyla, while endosymbionts were uncommonly detected in the ticks. Further analysis showed significant differences in microbiome composition based on Rickettsia detection status (p=0.001) and location (p=0.001), based on the alpha diversity Shannon index, Bray Curtis beta diversity and PERMANOVA, whilst differences according to life stage, tick species and genus was only shown based on the Bray Curtis beta diversity and PERMANOVA analysis.
Conclusion
Ultimately, this study provides valuable insights into the structure of the tick microbiome in parts of Zambia and how it is affected by the presence of Rickettsia.
背景节肢动物载体的微生物组组成可能会阻碍某些病原体的生长、帮助病原体定植或以影响病原体传播的方式影响载体行为。在赞比亚,人们对蜱寄居的微生物群落以及立克次体等病原体如何在微生物组组成中发挥作用知之甚少。 Objective This study sought to determine the microbiome of Rickettsia negative and Rickettsia-positive ticks in selected districts of Zambia.Methods This was a cross-sectional study conducted on 94 ticks collected from cattle in Chongwe and Chisamba districts.这项研究是一项横断面研究,从Chongwe和Chisamba地区的牛身上采集了94只蜱。采用 PCR 扩增 ompB 基因的方法检测立克次体的总体流行率。随后,对立克次体阴性和阳性蜱进行了 16S rRNA 基因扩增和 Illumina 高通量测序。结果发现立克次体的感染率为 47.9%(45/94),其中 Amblyomma 感染率为 78.5%(22/28),Hyalomma 感染率为 68.9%(20/29),Rhipicephalus 感染率最低,为 8.1%(3/37)。蛋白细菌、固着菌、放线菌群和极鞭毛菌群是最常见的菌群,而内共生菌在蜱体内很少被检测到。进一步分析表明,根据α多样性香农指数、布雷-柯蒂斯β多样性和PERMANOVA分析,立克次体检测状态(p=0.001)和地点(p=0.001)在微生物组组成方面存在显著差异,而根据生命阶段、蜱种和属的差异仅在布雷-柯蒂斯β多样性和PERMANOVA分析中显示出来。