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综合分子和生态方法,以识别虾病进展过程中的潜在多微生物病原体。

Integrating molecular and ecological approaches to identify potential polymicrobial pathogens over a shrimp disease progression.

机构信息

School of Marine Sciences, Ningbo University, Ningbo, 315211, China.

Collaborative Innovation Center for Zhejiang Marine High-Efficiency and Healthy Aquaculture, Ningbo, 315211, China.

出版信息

Appl Microbiol Biotechnol. 2018 Apr;102(8):3755-3764. doi: 10.1007/s00253-018-8891-y. Epub 2018 Mar 7.

Abstract

It is now recognized that some gut diseases attribute to polymicrobial pathogens infections. Thus, traditional isolation of single pathogen from disease subjects could bias the identification of causal agents. To fill this gap, using Illumina sequencing of the bacterial 16S rRNA gene, we explored the dynamics of gut bacterial communities over a shrimp disease progression. The results showed significant differences in the gut bacterial communities between healthy and diseased shrimp. Potential pathogens were inferred by a local pathogens database, of which two OTUs (affiliated with Vibrio tubiashii and Vibrio harveyi) exhibited significantly higher abundances in diseased shrimp as compared to healthy subjects. The two OTUs cumulatively contributed 64.5% dissimilarity in the gut microbiotas between shrimp health status. Notably, the random Forest model depicted that profiles of the two OTUs contributed 78.5% predicted accuracy of shrimp health status. Removal of the two OTUs from co-occurrence networks led to network fragmentation, suggesting their gatekeeper features. For these evidences, the two OTUs were inferred as candidate pathogens. Three virulence genes (bca, tlpA, and fdeC) that were coded by the two candidate pathogens were inferred by a virulence factor database, which were enriched significantly (P < 0.05 in the three cases, as validated by qPCR) in diseased shrimp as compared to healthy ones. The two candidate pathogens were repressed by Flavobacteriaceae, Garvieae, and Photobacrerium species in healthy shrimp, while these interactions shifted into synergy in disease cohorts. Collectively, our findings offer a frame to identify potential polymicrobial pathogen infections from an ecological perspective.

摘要

现在人们已经认识到,一些肠道疾病归因于多种微生物病原体感染。因此,传统的从疾病患者中单一病原体的分离可能会导致致病因子的鉴定出现偏差。为了弥补这一空白,我们使用 Illumina 测序技术对细菌 16S rRNA 基因进行测序,以探索虾病进展过程中肠道细菌群落的动态变化。结果表明,健康虾和患病虾的肠道细菌群落存在显著差异。通过本地病原体数据库推断出潜在的病原体,其中两个 OTU(与副溶血弧菌和哈维弧菌有关)在患病虾中的丰度明显高于健康虾。这两个 OTU 在虾的健康状况的肠道微生物群中累计贡献了 64.5%的差异。值得注意的是,随机森林模型表明,这两个 OTU 的分布特征对虾的健康状况的预测准确率为 78.5%。从共生网络中去除这两个 OTU 会导致网络碎片化,表明它们具有守门员的特征。基于这些证据,这两个 OTU 被推断为候选病原体。通过毒力因子数据库推断出这两个候选病原体编码的三个毒力基因(bca、tlpA 和 fdeC),在患病虾中显著富集(三个案例的 P 值均小于 0.05,通过 qPCR 验证),而在健康虾中则没有。在健康虾中,这两个候选病原体受到黄杆菌科、加氏菌科和噬光菌属的抑制,而在疾病组中,这些相互作用则转变为协同作用。总之,我们的研究结果提供了一个从生态角度识别潜在多微生物病原体感染的框架。

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