研究设计、污染和数据特征对微生物组研究结果和解释的影响。

IF 4.6 2区 生物学 Q1 MICROBIOLOGY
mSystems Pub Date : 2025-09-23 Epub Date: 2025-08-06 DOI:10.1128/msystems.00408-25
Jose Agudelo, Aaron W Miller
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引用次数: 0

摘要

高通量分子技术的进步使得在低生物量环境中进行微生物组研究成为可能,这对污染风险构成了独特的挑战。虽然最佳实践指南可以减少90%以上的污染,但残留污染和数据集可变性对统计结果的影响仍未得到充分研究。在这里,我们使用模拟和现实世界的数据集定量评估了研究设计因素如何影响微生物组分析。α多样性受样本数量和群落差异的影响,而不受独特分类群数量的影响。Beta多样性主要受独特分类群和类群差异的影响,受样本数的边际效应影响。差异丰富分类群的数量取决于独特分类群的数量,但也受样本数量的影响,具体取决于算法。值得注意的是,污染对加权β多样性的影响很小,但当污染物至少存在10种时,污染会改变差异丰富分类群的数量,随着污染的增加,影响更大。研究结果与七个现实世界低生物量数据集的结果密切相关。总体而言,类群差异和独特分类群的数量是统计结果的主要驱动因素。当暴露于随机分布的污染时,DESeq2算法优于ANCOM-BC,但当污染向一组加权时,算法是模棱两可的。在所有情况下,差异丰度分析的假阳性率为
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Impact of study design, contamination, and data characteristics on results and interpretation of microbiome studies.

Advances in high-throughput molecular techniques have enabled microbiome studies in low-biomass environments, which pose unique challenges due to contamination risks. While best-practice guidelines can reduce contamination by over 90%, the impact of residual contamination and data set variability on statistical outcomes remains understudied. Here, we quantitatively assessed how study design factors influence microbiome analyses using simulated and real-world data sets. Alpha diversity was affected by sample number and community dissimilarity, but not by the number of unique taxa. Beta diversity was influenced primarily by unique taxa and group dissimilarity, with a marginal effect of sample number. The number of differentially abundant taxa depended on the number of unique taxa but was also influenced by sample number, depending on thealgorithm. Notably, contamination had a marginal impact on weighted beta diversity but altered the number of differentially abundant taxa when at least 10 contaminants were present, with a greater effect as contamination increased. Findings closely mirrored results from seven real-world low-biomass data sets. Overall, group dissimilarity and the number of unique taxa were the primary drivers of statistical outcomes. The DESeq2 algorithm outperformed ANCOM-BC when exposed to stochastically distributed contamination, but algorithms were equivocal under contamination weighted toward one group. In all cases, the rate of false positives in differential abundance analyses was <15%. Importantly, in both simulated and real-world data, contamination rarely impacts whether microbiome differences were detected but did affect the number of differentially abundant taxa. Thus, when validated protocols with internal negative controls are used, residual contamination minimally impacts statistical outcomes. Alpha diversity was affected by sample number and community dissimilarity, but not by the number of unique taxa. Beta diversity was influenced primarily by unique taxa and group dissimilarity, with a marginal effect of sample number. The number of differentially abundant taxa depended on the number of unique taxa but was also influenced by sample number, depending on the algorithm. Notably, contamination had a marginal impact on weighted beta diversity but altered the number of differentially abundant taxa when at least 10 contaminants were present, with a greater effect as contamination increased. Findings closely mirrored results from seven real-world low-biomass data sets. Overall, group dissimilarity and the number of unique taxa were the primary drivers of statistical outcomes. The DESeq2 algorithm outperformed ANCOM-BC when exposed to stochastically distributed contamination, but algorithms were equivocal under contamination weighted toward one group. In all cases, the rate of false positives in differential abundance analyses was <15%. Importantly, in both simulated and real-world data, contamination rarely whether microbiome differences were detected but did affect the number of differentially abundant taxa. Thus, when validated protocols with internal negative controls are used, residual contamination minimally impacts statistical outcomes.IMPORTANCEMicrobiome studies in low-biomass environments face challenges due to contamination. However, even after implementing strict contamination prevention, control, and analysis measures, the impact of residual contamination on the validity of statistical outcomes in such studies remains a topic of ongoing discussion. Our analyses reveal that key drivers of microbiome study outcomes are group dissimilarity and the number of unique taxa, while contamination has minimal impact on statistical outcomes, primarily limited to the number of differentially abundant taxa detected. A common approach to contamination control involves removing taxa based on published contaminant lists. However, our analysis shows that these lists are highly inconsistent across studies, limiting reliability. Instead, our results support the use of internal negative controls as the most robust means of identifying and mitigating contamination. Collectively, data show that low-biomass microbiome studies have reduced power to detect differences between groups. However, when differences are observed, they are unlikely to be contamination-driven. By prioritizing validated protocols that prevent, assess, and eliminate contaminants through the use of internal negative controls, researchers can minimize the impact of contamination and improve the reliability of results.

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来源期刊
mSystems
mSystems Biochemistry, Genetics and Molecular Biology-Biochemistry
CiteScore
10.50
自引率
3.10%
发文量
308
审稿时长
13 weeks
期刊介绍: mSystems™ will publish preeminent work that stems from applying technologies for high-throughput analyses to achieve insights into the metabolic and regulatory systems at the scale of both the single cell and microbial communities. The scope of mSystems™ encompasses all important biological and biochemical findings drawn from analyses of large data sets, as well as new computational approaches for deriving these insights. mSystems™ will welcome submissions from researchers who focus on the microbiome, genomics, metagenomics, transcriptomics, metabolomics, proteomics, glycomics, bioinformatics, and computational microbiology. mSystems™ will provide streamlined decisions, while carrying on ASM''s tradition of rigorous peer review.
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