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苏门答腊热带雨林转化景观中通过 DNA 代谢组学和光学显微镜对蜂花粉进行生物监测。

Biomonitoring via DNA metabarcoding and light microscopy of bee pollen in rainforest transformation landscapes of Sumatra.

机构信息

Department of Forest Genetics and Forest Tree Breeding, University of Göttingen, 37077, Göttingen, Germany.

Department of Palynology and Climate Dynamics, Albrecht-von-Haller-Institute for Plant Sciences, University of Göttingen, 37073, Göttingen, Germany.

出版信息

BMC Ecol Evol. 2022 Apr 26;22(1):51. doi: 10.1186/s12862-022-02004-x.

Abstract

BACKGROUND

Intense conversion of tropical forests into agricultural systems contributes to habitat loss and the decline of ecosystem functions. Plant-pollinator interactions buffer the process of forest fragmentation, ensuring gene flow across isolated patches of forests by pollen transfer. In this study, we identified the composition of pollen grains stored in pot-pollen of stingless bees, Tetragonula laeviceps, via dual-locus DNA metabarcoding (ITS2 and rbcL) and light microscopy, and compared the taxonomic coverage of pollen sampled in distinct land-use systems categorized in four levels of management intensity (forest, shrub, rubber, and oil palm) for landscape characterization.

RESULTS

Plant composition differed significantly between DNA metabarcoding and light microscopy. The overlap in the plant families identified via light microscopy and DNA metabarcoding techniques was low and ranged from 22.6 to 27.8%. Taxonomic assignments showed a dominance of pollen from bee-pollinated plants, including oil-bearing crops such as the introduced species Elaeis guineensis (Arecaceae) as one of the predominant taxa in the pollen samples across all four land-use types. Native plant families Moraceae, Euphorbiaceae, and Cannabaceae appeared in high proportion in the analyzed pollen material. One-way ANOVA (p > 0.05), PERMANOVA (R² values range from 0.14003 to 0.17684, for all tests p-value > 0.5), and NMDS (stress values ranging from 0.1515 to 0.1859) indicated a lack of differentiation between the species composition and diversity of pollen type in the four distinct land-use types, supporting the influx of pollen from adjacent areas.

CONCLUSIONS

Stingless bees collected pollen from a variety of agricultural crops, weeds, and wild plants. Plant composition detected at the family level from the pollen samples likely reflects the plant composition at the landscape level rather than the plot level. In our study, the plant diversity in pollen from colonies installed in land-use systems with distinct levels of forest transformation was highly homogeneous, reflecting a large influx of pollen transported by stingless bees through distinct land-use types. Dual-locus approach applied in metabarcoding studies and visual pollen identification showed great differences in the detection of the plant community, therefore a combination of both methods is recommended for performing biodiversity assessments via pollen identification.

摘要

背景

热带森林向农业系统的剧烈转化导致了栖息地丧失和生态系统功能下降。植物-传粉者相互作用缓冲了森林破碎化的过程,通过花粉传递确保了基因在隔离的森林斑块之间的流动。在这项研究中,我们通过双基因 DNA metabarcoding(ITS2 和 rbcL)和光学显微镜鉴定了无刺蜜蜂(Tetragonula laeviceps)储存在罐花粉中的花粉粒的组成,并通过比较不同土地利用系统中采集的花粉的分类学覆盖范围,对景观特征进行了分类,这些土地利用系统分为四个管理强度等级(森林、灌木、橡胶和油棕)。

结果

通过 DNA metabarcoding 和光学显微镜鉴定的植物组成有显著差异。通过光学显微镜和 DNA metabarcoding 技术鉴定的植物科之间的重叠率较低,范围为 22.6 到 27.8%。分类学分配显示,授粉植物的花粉占主导地位,包括油棕等外来物种(Arecaceae)在内的含油作物是所有四种土地利用类型中花粉样本的主要类群之一。本地植物科 Moraceae、Euphorbiaceae 和 Cannabaceae 在分析的花粉材料中占很大比例。单因素方差分析(p > 0.05)、PERMANOVA(所有测试的 R² 值范围为 0.14003 到 0.17684,p 值均大于 0.5)和 NMDS(应力值范围为 0.1515 到 0.1859)表明,四种不同土地利用类型之间的花粉类型的物种组成和多样性没有差异,这支持了来自相邻地区的花粉的涌入。

结论

无刺蜜蜂采集了各种农作物、杂草和野生植物的花粉。从花粉样本中检测到的科水平的植物组成可能反映了景观水平而不是斑块水平的植物组成。在我们的研究中,安装在具有不同森林转化水平的土地利用系统中的蜂群的花粉中的植物多样性高度同质,反映了无刺蜜蜂通过不同的土地利用类型运输的大量花粉的涌入。应用于 metabarcoding 研究的双基因方法和花粉的可视化鉴定在检测植物群落方面存在很大差异,因此建议将这两种方法结合起来进行花粉鉴定的生物多样性评估。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/66d1/9040256/a1ed910f586a/12862_2022_2004_Fig1_HTML.jpg

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