Chaonan Li, Chi Liu, Hankang Li, Haijun Liao, Lin Xu, Minjie Yao, Xiangzhen Li
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引用次数: 0
摘要
许多 R 软件包都提供了阐明土壤微生物多样性的统计方法,但它们仍然难以在地理地图上直观地显示微生物的特征。这给解释区域范围内的微生物生物地理学带来了挑战,尤其是在空间尺度较大或采样点分布不均的情况下。在此,我们开发了一个名为 microgeo 的轻量级、灵活且用户友好的 R 软件包。该软件包集成了许多功能,包括读取、操作和可视化地理边界数据;下载空间数据集;计算微生物性状,并通过网格可视化、空间插值或机器学习将其呈现在地理地图上。使用该 R 软件包,用户可以在地图上可视化 microgeo 或其他工具计算出的任何性状,还可以结合从地理图中提取的元数据分析微生物组数据。与其他对微生物组数据进行统计分析的 R 软件包相比,microgeo 提供了更直观的方法来说明大地理尺度上土壤微生物的生物地理学,是对统计驱动的比较的重要补充,有助于以更方便、更高效的方式对大空间尺度上可公开获取的微生物组数据进行生物地理学分析。microgeo R 软件包可从 Gitee (https://gitee.com/bioape/microgeo) 和 GitHub (https://github.com/ChaonanLi/microgeo) 存储库中安装。有关 microgeo R 软件包的详细教程,请访问 https://chaonanli.github.io/microgeo。
The microgeo: an R package rapidly displays the biogeography of soil microbial community traits on maps.
Many R packages provide statistical approaches for elucidating the diversity of soil microbes, yet they still struggle to visualize microbial traits on a geographical map. This creates challenges in interpreting microbial biogeography on a regional scale, especially when the spatial scale is large or the distribution of sampling sites is uneven. Here, we developed a lightweight, flexible, and user-friendly R package called microgeo. This package integrates many functions involved in reading, manipulating, and visualizing geographical boundary data; downloading spatial datasets; and calculating microbial traits and rendering them onto a geographical map using grid-based visualization, spatial interpolation, or machine learning. Using this R package, users can visualize any trait calculated by microgeo or other tools on a map and can analyze microbiome data in conjunction with metadata derived from a geographical map. In contrast to other R packages that statistically analyze microbiome data, microgeo provides more-intuitive approaches in illustrating the biogeography of soil microbes on a large geographical scale, serving as an important supplement to statistically driven comparisons and facilitating the biogeographic analysis of publicly accessible microbiome data at a large spatial scale in a more convenient and efficient manner. The microgeo R package can be installed from the Gitee (https://gitee.com/bioape/microgeo) and GitHub (https://github.com/ChaonanLi/microgeo) repositories. Detailed tutorials for the microgeo R package are available at https://chaonanli.github.io/microgeo.
期刊介绍:
FEMS Microbiology Ecology aims to ensure efficient publication of high-quality papers that are original and provide a significant contribution to the understanding of microbial ecology. The journal contains Research Articles and MiniReviews on fundamental aspects of the ecology of microorganisms in natural soil, aquatic and atmospheric habitats, including extreme environments, and in artificial or managed environments. Research papers on pure cultures and in the areas of plant pathology and medical, food or veterinary microbiology will be published where they provide valuable generic information on microbial ecology. Papers can deal with culturable and non-culturable forms of any type of microorganism: bacteria, archaea, filamentous fungi, yeasts, protozoa, cyanobacteria, algae or viruses. In addition, the journal will publish Perspectives, Current Opinion and Controversy Articles, Commentaries and Letters to the Editor on topical issues in microbial ecology.
- Application of ecological theory to microbial ecology
- Interactions and signalling between microorganisms and with plants and animals
- Interactions between microorganisms and their physicochemical enviornment
- Microbial aspects of biogeochemical cycles and processes
- Microbial community ecology
- Phylogenetic and functional diversity of microbial communities
- Evolutionary biology of microorganisms