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Optimizing methods and dodging pitfalls in microbiome research

机译:微生物组研究的优化方法和规避陷阱

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Research on the human microbiome has yielded numerous insights into health and disease, but also has resulted in a wealth of experimental artifacts. Here, we present suggestions for optimizing experimental design and avoiding known pitfalls, organized in the typical order in which studies are carried out. We first review best practices in experimental design and introduce common confounders such as age, diet, antibiotic use, pet ownership, longitudinal instability, and microbial sharing during cohousing in animal studies. Typically, samples will need to be stored, so we provide data on best practices for several sample types. We then discuss design and analysis of positive and negative controls, which should always be run with experimental samples. We introduce a convenient set of non-biological DNA sequences that can be useful as positive controls for high-volume analysis. Careful analysis of negative and positive controls is particularly important in studies of samples with low microbial biomass, where contamination can comprise most or all of a sample. Lastly, we summarize approaches to enhancing experimental robustness by careful control of multiple comparisons and to comparing discovery and validation cohorts. We hope the experimental tactics summarized here will help researchers in this exciting field advance their studies efficiently while avoiding errors.
机译:对人类微生物组的研究已经获得了许多有关健康和疾病的见解,但也导致了大量的实验制品。在这里,我们提出了优化实验设计和避免已知陷阱的建议,这些建议按研究的典型顺序进行了组织。我们首先回顾实验设计中的最佳实践,并介绍常见混杂因素,例如年龄,饮食,抗生素使用,宠物所有权,纵向不稳定性以及在动物研究中的饲养过程中的微生物共享。通常,样本将需要存储,因此我们提供了几种样本类型的最佳实践数据。然后,我们讨论阳性和阴性对照的设计和分析,应始终与实验样品一起运行。我们介绍了一组方便的非生物DNA序列,可用作高容量分析的阳性对照。在研究微生物量低的样品时,仔细分析阴性和阳性对照尤为重要,因为污染可能占样品的大部分或全部。最后,我们总结了通过仔细控制多个比较以及比较发现和验证队列来增强实验鲁棒性的方法。我们希望这里总结的实验策略能够帮助这一激动人心的领域的研究人员有效地推进研究,同时避免出现错误。

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