Shared environments complicate the use of strain-resolved metagenomics to infer microbiome transmission.

IF 13.8 1区 生物学 Q1 MICROBIOLOGY
Reena Debray, Carly C Dickson, Shasta E Webb, Elizabeth A Archie, Jenny Tung
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引用次数: 0

Abstract

Background: In humans and other social animals, social partners have more similar microbiomes than expected by chance, suggesting that social contact transfers microorganisms. Yet, social microbiome transmission can be difficult to identify based on compositional data alone. To overcome this challenge, recent studies have used information about microbial strain sharing (i.e., the shared presence of highly similar microbial sequences) to infer transmission. However, the degree to which strain sharing is influenced by shared traits and environments among social partners, rather than transmission per se, is not well understood.

Results: Here, we first use a fecal microbiota transplant dataset to show that strain sharing can recapitulate true transmission networks under ideal settings when donor-recipient pairs are unambiguous and recipients are sampled shortly after transmission. In contrast, in gut metagenomes from a wild baboon population, we find that demographic and environmental factors can override signals of strain sharing among social partners.

Conclusions: We conclude that strain-level analyses provide useful information about microbiome similarity, but other facets of study design, especially longitudinal sampling and careful consideration of host characteristics, are essential for inferring the underlying mechanisms of strain sharing and resolving true social transmission network. Video Abstract.

共享环境使菌株解析宏基因组学推断微生物群传播的使用复杂化。
背景:在人类和其他社会性动物中,社会伙伴拥有比偶然预期更多的相似微生物群,这表明社会接触会转移微生物。然而,仅根据组成数据很难确定社会微生物组的传播。为了克服这一挑战,最近的研究利用微生物菌株共享信息(即共享高度相似的微生物序列)来推断传播。然而,在多大程度上,菌株共享受到社会伙伴之间共有的特征和环境的影响,而不是传播本身的影响,目前还没有得到很好的理解。结果:在这里,我们首先使用粪便微生物群移植数据集来显示菌株共享可以在理想环境下概括真实的传播网络,当供体-受体对是明确的,并且在传播后不久对受体进行采样。相比之下,在野生狒狒种群的肠道宏基因组中,我们发现人口统计学和环境因素可以覆盖社会伙伴之间菌株共享的信号。结论:我们得出结论,菌株水平分析提供了有关微生物组相似性的有用信息,但研究设计的其他方面,特别是纵向抽样和仔细考虑宿主特征,对于推断菌株共享的潜在机制和解决真正的社会传播网络至关重要。视频摘要。
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来源期刊
Microbiome
Microbiome MICROBIOLOGY-
CiteScore
21.90
自引率
2.60%
发文量
198
审稿时长
4 weeks
期刊介绍: Microbiome is a journal that focuses on studies of microbiomes in humans, animals, plants, and the environment. It covers both natural and manipulated microbiomes, such as those in agriculture. The journal is interested in research that uses meta-omics approaches or novel bioinformatics tools and emphasizes the community/host interaction and structure-function relationship within the microbiome. Studies that go beyond descriptive omics surveys and include experimental or theoretical approaches will be considered for publication. The journal also encourages research that establishes cause and effect relationships and supports proposed microbiome functions. However, studies of individual microbial isolates/species without exploring their impact on the host or the complex microbiome structures and functions will not be considered for publication. Microbiome is indexed in BIOSIS, Current Contents, DOAJ, Embase, MEDLINE, PubMed, PubMed Central, and Science Citations Index Expanded.
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