High‐throughput monitoring of wild bee diversity and abundance via mitogenomics
Autor: | Ellen D. Moss, Guanliang Meng, Simon G. Potts, Chenxue Yang, Yinqiu Ji, Xin Zhou, Chloe J. Hardman, Shenzhou Yang, Meihua Tan, Douglas W. Yu, Catharine Bruce, Min Tang, Timothy D. Nevard, Jingxin Wang, Shanlin Liu |
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Rok vydání: | 2015 |
Předmět: |
Species complex
pollination Pollination genome skimming Population Biology farmland biodiversity Pollinator Abundance (ecology) education Ecology Evolution Behavior and Systematics metagenomics education.field_of_study mitogenomes Ecology Ecological Modeling agri‐environment schemes Community structure Hymenoptera Evolutionary biology Metagenomics Biomonitoring metabarcoding neonicotinoids Species richness Research Article biodiversity and ecosystem services |
Zdroj: | Methods in Ecology and Evolution |
ISSN: | 2041-210X |
DOI: | 10.1111/2041-210x.12416 |
Popis: | 1. Bee populations and other pollinators face multiple, synergistically acting threats, which have led to population declines, loss of local species richness and pollination services, and extinctions. However, our understanding of the degree, distribution and causes of declines is patchy, in part due to inadequate monitoring systems, with the challenge of taxonomic identification posing a major logistical barrier. Pollinator conservation would benefit from a high-throughput identification pipeline.\ud \ud 2. We show that the metagenomic mining and resequencing of mitochondrial genomes (mitogenomics) can be applied successfully to bulk samples of wild bees. We assembled the mitogenomes of 48 UK bee species and then shotgun-sequenced total DNA extracted from 204 whole bees that had been collected in 10 pan-trap samples from farms in England and been identified morphologically to 33 species. Each sample data set was mapped\ud against the 48 reference mitogenomes.\ud \ud 3. The morphological and mitogenomic data sets were highly congruent. Out of 63 total species detections in the morphological data set, the mitogenomic data set made 59 correct detections (93�7% detection rate) and detected\ud six more species (putative false positives). Direct inspection and an analysis with species-specific primers suggested that these putative false positives were most likely due to incorrect morphological IDs. Read frequency\ud significantly predicted species biomass frequency (R2 = 24�9%). Species lists, biomass frequencies, extrapolated\ud species richness and community structure were recovered with less error than in a metabarcoding pipeline.\ud \ud 4. Mitogenomics automates the onerous task of taxonomic identification, even for cryptic species, allowing the\ud tracking of changes in species richness and istributions. A mitogenomic pipeline should thus be able to contain\ud costs, maintain consistently high-quality data over long time series, incorporate retrospective taxonomic revisions and provide an auditable evidence trail. Mitogenomic data sets also provide estimates of species counts within samples and thus have potential for tracking population trajectories. |
Databáze: | OpenAIRE |
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