Methodological aspects of investigating the resistome in pig farm environments.

IF 1.7 4区 生物学 Q4 BIOCHEMICAL RESEARCH METHODS Journal of microbiological methods Pub Date : 2025-02-13 DOI:10.1016/j.mimet.2025.107103
Valeriia Ladyhina, Elisabeth Rajala, Susanna Sternberg-Lewerin, Leila Nazirzadeh, Erik Bongcam-Rudloff, Johan Dicksved
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Abstract

A typical One Health issue, antimicrobial resistance (AMR) development and its spread among people, animals, and the environment attracts significant research attention. The animal sector is one of the major contributors to the development and dissemination of AMR and accounts for more than 50 % of global antibiotics usage. The use of antibiotics exerts a selective pressure for resistant bacteria in the exposed microbiome, but many questions about the epidemiology of AMR in farm environments remain unanswered. This is connected to several methodological challenges and limitations, such as inconsistent sampling methods, complexity of farm environment samples and the lack of standardized protocols for sample collection, processing and bioinformatical analysis. In this project, we combined metagenomics and bioinformatics to optimise the methodology for reproducible research on the resistome in complex samples from the indoor farm environment. The work included optimizing sample collection, transportation, and storage, as well as DNA extraction, sequencing, and bioinformatic analysis, such as metagenome assembly and antibiotic resistance gene (ARG) detection. Our studies suggest that the current most optimal and cost-effective pipeline for ARG search should be based on Illumina sequencing of sock sample material at high depth (at least 25 M 250 bp PE for AMR gene families and 43 M for gene variants). We present a computational analysis utilizing MEGAHIT assembly to balance the identification of bacteria carrying ARGs with the potential loss of diversity and abundance of resistance genes. Our findings indicate that searching against multiple ARG databases is essential for detecting the highest diversity of ARGs.

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作为一个典型的 "一体健康 "问题,抗菌素耐药性(AMR)的发展及其在人类、动物和环境中的传播吸引了大量研究人员的关注。动物领域是导致 AMR 发展和传播的主要因素之一,占全球抗生素使用量的 50% 以上。抗生素的使用对暴露在微生物群中的耐药细菌产生了选择性压力,但有关农场环境中 AMR 流行病学的许多问题仍未得到解答。这与一些方法上的挑战和限制有关,如采样方法不一致、农场环境样本的复杂性以及缺乏样本采集、处理和生物信息学分析的标准化协议。在本项目中,我们结合了元基因组学和生物信息学,优化了对室内农场环境复杂样本中的抗性组进行可重复研究的方法。工作包括优化样本采集、运输和储存,以及 DNA 提取、测序和生物信息学分析,如元基因组组装和抗生素耐药基因 (ARG) 检测。我们的研究表明,目前最理想、最具成本效益的 ARG 搜索管道应该是基于 Illumina 对袜子样本材料进行高深度测序(AMR 基因家族至少 25 M 250 bp PE,基因变异至少 43 M)。我们利用 MEGAHIT 组装进行了计算分析,以平衡携带 ARGs 的细菌鉴定与潜在的抗性基因多样性和丰度损失。我们的研究结果表明,针对多个 ARG 数据库进行搜索对于检测出最高的 ARGs 多样性至关重要。
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来源期刊
Journal of microbiological methods
Journal of microbiological methods 生物-生化研究方法
CiteScore
4.30
自引率
4.50%
发文量
151
审稿时长
29 days
期刊介绍: The Journal of Microbiological Methods publishes scholarly and original articles, notes and review articles. These articles must include novel and/or state-of-the-art methods, or significant improvements to existing methods. Novel and innovative applications of current methods that are validated and useful will also be published. JMM strives for scholarship, innovation and excellence. This demands scientific rigour, the best available methods and technologies, correctly replicated experiments/tests, the inclusion of proper controls, calibrations, and the correct statistical analysis. The presentation of the data must support the interpretation of the method/approach. All aspects of microbiology are covered, except virology. These include agricultural microbiology, applied and environmental microbiology, bioassays, bioinformatics, biotechnology, biochemical microbiology, clinical microbiology, diagnostics, food monitoring and quality control microbiology, microbial genetics and genomics, geomicrobiology, microbiome methods regardless of habitat, high through-put sequencing methods and analysis, microbial pathogenesis and host responses, metabolomics, metagenomics, metaproteomics, microbial ecology and diversity, microbial physiology, microbial ultra-structure, microscopic and imaging methods, molecular microbiology, mycology, novel mathematical microbiology and modelling, parasitology, plant-microbe interactions, protein markers/profiles, proteomics, pyrosequencing, public health microbiology, radioisotopes applied to microbiology, robotics applied to microbiological methods,rumen microbiology, microbiological methods for space missions and extreme environments, sampling methods and samplers, soil and sediment microbiology, transcriptomics, veterinary microbiology, sero-diagnostics and typing/identification.
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