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牛奶奶源微生物组中试剂盒、环境和采样污染的影响。

The impact of kit, environment, and sampling contamination on the observed microbiome of bovine milk.

机构信息

Department of Veterinary Population Medicine, University of Minnesota, St. Paul, Minnesota, USA.

Department of Animal Science, University of Minnesota, St. Paul, Minnesota, USA.

出版信息

mSystems. 2024 Jun 18;9(6):e0115823. doi: 10.1128/msystems.01158-23. Epub 2024 May 24.

Abstract

In low-microbial biomass samples such as bovine milk, contaminants can outnumber endogenous bacteria. Because of this, milk microbiome research suffers from a critical knowledge gap, namely, does non-mastitis bovine milk contain a native microbiome? In this study, we sampled external and internal mammary epithelia and stripped and cisternal milk and used numerous negative controls, including air and sampling controls and extraction and library preparation blanks, to identify the potential sources of contamination. Two algorithms were used to mathematically remove contaminants and track the potential movement of microbes among samples. Results suggest that the majority (i.e., >75%) of sequence data generated from bovine milk and mammary epithelium samples represents contaminating DNA. Contaminants in milk samples were primarily sourced from DNA extraction kits and the internal and external skin of the teat, while teat canal and apex samples were mainly contaminated during the sampling process. After decontamination, the milk microbiome displayed a more dispersed, less diverse, and compositionally distinct bacterial profile compared with epithelial samples. Similar microbial compositions were observed between cisternal and stripped milk samples, as well as between teat apex and canal samples. and were the predominant genera detected in milk sample sequences, and bacterial culture showed growth of and spp. in 50% (7/14) of stripped milk samples and growth of spp. in 7% (1/14) of cisternal milk samples. Our study suggests that microbiome data generated from milk samples obtained from clinically healthy bovine udders may be heavily biased by contaminants that enter the sample during sample collection and processing workflows.IMPORTANCEObtaining a non-contaminated sample of bovine milk is challenging due to the nature of the sampling environment and the route by which milk is typically extracted from the mammary gland. Furthermore, the very low bacterial biomass of bovine milk exacerbates the impacts of contaminant sequences in downstream analyses, which can lead to severe biases. Our finding showed that bovine milk contains very low bacterial biomass and each contamination event (including sampling procedure and DNA extraction process) introduces bacteria and/or DNA fragments that easily outnumber the native bacterial cells. This finding has important implications for our ability to draw robust conclusions from milk microbiome data, especially if the data have not been subjected to rigorous decontamination procedures. Based on these findings, we strongly urge researchers to include numerous negative controls into their sampling and sample processing workflows and to utilize several complementary methods for identifying potential contaminants within the resulting sequence data. These measures will improve the accuracy, reliability, reproducibility, and interpretability of milk microbiome data and research.

摘要

在微生物生物量低的样本中,如牛 奶,污染物的数量可能超过内源性细菌。由于这一原因,牛奶微生物组研究存在一个关键的知识空白,即非乳腺炎牛 奶是否含有天然微生物组?在这项研究中,我们采样了外部和内部乳腺上皮细胞,并采集了挤奶和乳池奶,使用了大量的阴性对照,包括空气和采样对照以及提取和文库制备空白,以确定潜在的污染来源。我们使用了两种算法来数学去除污染物并跟踪微生物在样本间的潜在移动。结果表明,来自牛 奶和乳腺上皮细胞样本的大多数(即>75%)序列数据代表污染 DNA。牛奶样本中的污染物主要来自 DNA 提取试剂盒和乳头的内外皮肤,而乳管和乳头部份的样本主要在采样过程中受到污染。在去污后,与上皮样本相比,牛 奶微生物组显示出更分散、多样性更低、组成上更独特的细菌特征。乳池奶和挤奶样本之间以及乳管和乳头部份样本之间观察到相似的微生物组成。在牛 奶样本序列中检测到的主要属是 和 ,细菌培养显示 50%(7/14)的挤奶样本中有 和 spp.生长,7%(1/14)的乳池奶样本中有 spp.生长。我们的研究表明,来自临床健康奶牛乳房获得的牛奶样本的微生物组数据可能受到在样本采集和处理工作流程中进入样本的污染物的严重影响。

重要性

由于采样环境的性质以及牛奶通常从乳腺中提取的方式,获得牛 奶的无污染物样本具有挑战性。此外,牛 奶极低的细菌生物量加剧了下游分析中污染物序列的影响,这可能导致严重的偏差。我们的研究结果表明,牛 奶中含有非常低的细菌生物量,每次污染事件(包括采样程序和 DNA 提取过程)都会引入细菌和/或 DNA 片段,这些片段很容易超过天然细菌细胞的数量。这一发现对我们从牛 奶微生物组数据中得出可靠结论的能力具有重要意义,特别是如果这些数据没有经过严格的去污处理程序。基于这些发现,我们强烈敦促研究人员将大量阴性对照纳入其采样和样品处理工作流程,并利用几种互补方法来识别结果序列数据中的潜在污染物。这些措施将提高牛 奶微生物组数据和研究的准确性、可靠性、重现性和可解释性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7e95/11237780/bee850e7dd43/msystems.01158-23.f001.jpg

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