发布者:抗性基因网 时间:2020-03-31 浏览量:810
摘要
背景:
建成环境和自然环境的相互联系可以作为抗生素耐药基因(ARGs)增殖和传播的管道。有几项研究比较了不同环境分区中ARG的广谱(即“抵抗性”),但需要确定每个环境的独特ARG发生模式(即“歧视性ARG”)。这种方法将有助于确定影响ARGs增殖的因素,促进ARGs在不同环境中的相对比较,并有助于为根据环境对临床相关抗生素耐药性的传播的可能性进行排名铺平道路。在这里,我们提出并展示了一种使用极端随机树(ERT)算法和贝叶斯优化技术相结合的方法来捕捉环境样本中ARG的变异性,并识别区分ARG。利用已知变异性的硅化亚基因组数据集(模拟亚基因组Illumina测序数据)首次评估了ERT识别鉴别ARGs的潜力。然后,通过使用与(1)不同水生生境(如河流、废水进水、医院废水和奶牛场废水)相关的公开和内部的亚基因组数据集进行分析,以比较不同环境和(2)不同河流样本(如亚马逊、Kalamas和Cam Rivers等),以比较类似环境的阻力特性。
结果:
发现该方法可以很容易地识别硅片数据集中的歧视性ARG。此外,它没有被发现偏向于相对丰度高的ARGs,这是特征投影方法的一个常见限制,而是只捕获那些引起显著轮廓的ARGs。对公开获得的亚基因组数据集的分析进一步表明,ERT方法可以有效地区分现实环境中的样本,并基于预定义的分类方案识别出具有歧视性的ARGs。
结论:
本文提出了一种新的方法来描述和比较来自相似/不同环境的亚基因组数据集之间ARGs分布的差异。具体来说,可以根据感兴趣的因素来识别代表不同环境的样本中的歧视性ARG。该方法可被证明是一个特别有用的工具,用于ARGs监测和评估减少抗生素耐药性传播的策略的有效性。
The interconnectivities of built and natural environments can serve as conduits for the proliferation and dissemination of antibiotic resistance genes (ARGs). Several studies have compared the broad spectrum of ARGs (i.e., "resistomes") in various environmental compartments, but there is a need to identify unique ARG occurrence patterns (i.e., "discriminatory ARGs"), characteristic of each environment. Such an approach will help to identify factors influencing ARG proliferation, facilitate development of relative comparisons of the ARGs distinguishing various environments, and help pave the way towards ranking environments based on their likelihood of contributing to the spread of clinically relevant antibiotic resistance. Here we formulate and demonstrate an approach using an extremely randomized tree (ERT) algorithm combined with a Bayesian optimization technique to capture ARG variability in environmental samples and identify the discriminatory ARGs. The potential of ERT for identifying discriminatory ARGs was first evaluated using in silico metagenomic datasets (simulated metagenomic Illumina sequencing data) with known variability. The application of ERT was then demonstrated through analyses using publicly available and in-house metagenomic datasets associated with (1) different aquatic habitats (e.g., river, wastewater influent, hospital effluent, and dairy farm effluent) to compare resistomes between distinct environments and (2) different river samples (i.e., Amazon, Kalamas, and Cam Rivers) to compare resistome characteristics of similar environments.
The approach was found to readily identify discriminatory ARGs in the in silico datasets. Also, it was not found to be biased towards ARGs with high relative abundance, which is a common limitation of feature projection methods, and instead only captured those ARGs that elicited significant profiles. Analyses of publicly available metagenomic datasets further demonstrated that the ERT approach can effectively differentiate real-world environmental samples and identify discriminatory ARGs based on pre-defined categorizing schemes.
Here a new methodology was formulated to characterize and compare variances in ARG profiles between metagenomic data sets derived from similar/dissimilar environments. Specifically, identification of discriminatory ARGs among samples representing various environments can be identified based on factors of interest. The methodology could prove to be a particularly useful tool for ARG surveillance and the assessment of the effectiveness of strategies for mitigating the spread of antibiotic resistance. The python package is hosted in the Git repository: https://github.com/gaarangoa/ExtrARG.
https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6716844/