Synthesizing tree biodiversity data to understand global patterns and processes of vegetation

Aims Trees dominate the biomass in many ecosystems and are essential for ecosystem functioning and human well‐being. They are also one of the best‐studied functional groups of plants, with vast amounts of biodiversity data available in scattered sources. We here aim to illustrate that an efficient i...

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Veröffentlicht in:Journal of vegetation science 2021-05, Vol.32 (3), p.n/a
Hauptverfasser: Keppel, Gunnar, Craven, Dylan, Weigelt, Patrick, Smith, Stephen A., van der Sande, Masha T., Sandel, Brody, Levin, Sam C., Kreft, Holger, Knight, Tiffany M., Pärtel, Meelis
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container_issue 3
container_start_page
container_title Journal of vegetation science
container_volume 32
creator Keppel, Gunnar
Craven, Dylan
Weigelt, Patrick
Smith, Stephen A.
van der Sande, Masha T.
Sandel, Brody
Levin, Sam C.
Kreft, Holger
Knight, Tiffany M.
Pärtel, Meelis
description Aims Trees dominate the biomass in many ecosystems and are essential for ecosystem functioning and human well‐being. They are also one of the best‐studied functional groups of plants, with vast amounts of biodiversity data available in scattered sources. We here aim to illustrate that an efficient integration of these data could produce a more holistic understanding of vegetation. Methods To assess the extent of potential data integration, we use key databases of plant biodiversity to: (a) obtain a list of tree species and their distributions; (b) identify coverage of and gaps in different aspects of tree biodiversity data; and (c) discuss large‐scale patterns of tree biodiversity in relation to vegetation. Results Our global list of trees included 58,044 species. Taxonomic coverage varies in three key databases, with data on the distribution, functional traits, and molecular sequences for about 84%, 45% and 44% of all tree species, which is >10% greater than for plants overall. For 28% of all tree species, data are available in all three databases. However, less data are digitally accessible about the demography, ecological interactions, and socio‐economic role of tree species. Integrating and imputing existing tree biodiversity data, mobilization of non‐digitized resources and targeted data collection, especially in tropical countries, could help closing some of the remaining data gaps. Conclusions Due to their key ecosystem roles and having large amounts of accessible data, trees are a good model group for understanding vegetation patterns. Indeed, tree biodiversity data are already beginning to elucidate the community dynamics, functional diversity, evolutionary history and ecological interactions of vegetation, with great potential for future applications. An interoperable and openly accessible framework linking various databases would greatly benefit future macroecological studies and should be linked to a platform that makes information readily accessible to end users in biodiversity conservation and management. Trees are one of the best‐studied plant groups. We show that integrating and imputing available biodiversity data for trees can produce a more holistic understanding of vegetation patterns and processes. Closing remaining data gaps and making data more accessible could further enhance the great potential of trees as a model group for macroecological studies.
doi_str_mv 10.1111/jvs.13021
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They are also one of the best‐studied functional groups of plants, with vast amounts of biodiversity data available in scattered sources. We here aim to illustrate that an efficient integration of these data could produce a more holistic understanding of vegetation. Methods To assess the extent of potential data integration, we use key databases of plant biodiversity to: (a) obtain a list of tree species and their distributions; (b) identify coverage of and gaps in different aspects of tree biodiversity data; and (c) discuss large‐scale patterns of tree biodiversity in relation to vegetation. Results Our global list of trees included 58,044 species. Taxonomic coverage varies in three key databases, with data on the distribution, functional traits, and molecular sequences for about 84%, 45% and 44% of all tree species, which is &gt;10% greater than for plants overall. For 28% of all tree species, data are available in all three databases. However, less data are digitally accessible about the demography, ecological interactions, and socio‐economic role of tree species. Integrating and imputing existing tree biodiversity data, mobilization of non‐digitized resources and targeted data collection, especially in tropical countries, could help closing some of the remaining data gaps. Conclusions Due to their key ecosystem roles and having large amounts of accessible data, trees are a good model group for understanding vegetation patterns. Indeed, tree biodiversity data are already beginning to elucidate the community dynamics, functional diversity, evolutionary history and ecological interactions of vegetation, with great potential for future applications. An interoperable and openly accessible framework linking various databases would greatly benefit future macroecological studies and should be linked to a platform that makes information readily accessible to end users in biodiversity conservation and management. Trees are one of the best‐studied plant groups. We show that integrating and imputing available biodiversity data for trees can produce a more holistic understanding of vegetation patterns and processes. Closing remaining data gaps and making data more accessible could further enhance the great potential of trees as a model group for macroecological studies.</description><identifier>ISSN: 1100-9233</identifier><identifier>EISSN: 1654-1103</identifier><identifier>DOI: 10.1111/jvs.13021</identifier><language>eng</language><publisher>Hoboken: Wiley Subscription Services, Inc</publisher><subject>Accessibility ; Biodiversity ; biological databases ; conservation ; Coverage ; Data collection ; Data integration ; data integration and synthesis ; Demography ; Ecosystems ; End users ; forests ; Functional groups ; functional traits ; Integration ; IUCN Red List ; macroecology ; Plant species ; Species ; species distribution ; tree diversity ; Trees ; Vegetation ; Vegetation patterns ; Wildlife conservation ; woodlands</subject><ispartof>Journal of vegetation science, 2021-05, Vol.32 (3), p.n/a</ispartof><rights>2021 The Authors. published by John Wiley &amp; Sons Ltd on behalf of International Association for Vegetation Science</rights><rights>2021. 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They are also one of the best‐studied functional groups of plants, with vast amounts of biodiversity data available in scattered sources. We here aim to illustrate that an efficient integration of these data could produce a more holistic understanding of vegetation. Methods To assess the extent of potential data integration, we use key databases of plant biodiversity to: (a) obtain a list of tree species and their distributions; (b) identify coverage of and gaps in different aspects of tree biodiversity data; and (c) discuss large‐scale patterns of tree biodiversity in relation to vegetation. Results Our global list of trees included 58,044 species. Taxonomic coverage varies in three key databases, with data on the distribution, functional traits, and molecular sequences for about 84%, 45% and 44% of all tree species, which is &gt;10% greater than for plants overall. For 28% of all tree species, data are available in all three databases. 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They are also one of the best‐studied functional groups of plants, with vast amounts of biodiversity data available in scattered sources. We here aim to illustrate that an efficient integration of these data could produce a more holistic understanding of vegetation. Methods To assess the extent of potential data integration, we use key databases of plant biodiversity to: (a) obtain a list of tree species and their distributions; (b) identify coverage of and gaps in different aspects of tree biodiversity data; and (c) discuss large‐scale patterns of tree biodiversity in relation to vegetation. Results Our global list of trees included 58,044 species. Taxonomic coverage varies in three key databases, with data on the distribution, functional traits, and molecular sequences for about 84%, 45% and 44% of all tree species, which is &gt;10% greater than for plants overall. For 28% of all tree species, data are available in all three databases. However, less data are digitally accessible about the demography, ecological interactions, and socio‐economic role of tree species. Integrating and imputing existing tree biodiversity data, mobilization of non‐digitized resources and targeted data collection, especially in tropical countries, could help closing some of the remaining data gaps. Conclusions Due to their key ecosystem roles and having large amounts of accessible data, trees are a good model group for understanding vegetation patterns. Indeed, tree biodiversity data are already beginning to elucidate the community dynamics, functional diversity, evolutionary history and ecological interactions of vegetation, with great potential for future applications. An interoperable and openly accessible framework linking various databases would greatly benefit future macroecological studies and should be linked to a platform that makes information readily accessible to end users in biodiversity conservation and management. Trees are one of the best‐studied plant groups. We show that integrating and imputing available biodiversity data for trees can produce a more holistic understanding of vegetation patterns and processes. 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subjects Accessibility
Biodiversity
biological databases
conservation
Coverage
Data collection
Data integration
data integration and synthesis
Demography
Ecosystems
End users
forests
Functional groups
functional traits
Integration
IUCN Red List
macroecology
Plant species
Species
species distribution
tree diversity
Trees
Vegetation
Vegetation patterns
Wildlife conservation
woodlands
title Synthesizing tree biodiversity data to understand global patterns and processes of vegetation
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