Cargando…

Throwing light on dark diversity of vascular plants in China: predicting the distribution of dark and threatened species under global climate change

BACKGROUND: As global climate change accelerates, ecologists and conservationists are increasingly investigating changes in biodiversity and predicting species distribution based on species observed at sites, but rarely consider those plant species that could potentially inhabit but are absent from...

Descripción completa

Detalles Bibliográficos
Autores principales: Tang, Lili, Wang, Runxi, He, Kate S., Shi, Cong, Yang, Tong, Huang, Yaping, Zheng, Pufan, Shi, Fuchen
Formato: Online Artículo Texto
Lenguaje:English
Publicado: PeerJ Inc. 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6461033/
https://www.ncbi.nlm.nih.gov/pubmed/30993048
http://dx.doi.org/10.7717/peerj.6731
_version_ 1783410431778357248
author Tang, Lili
Wang, Runxi
He, Kate S.
Shi, Cong
Yang, Tong
Huang, Yaping
Zheng, Pufan
Shi, Fuchen
author_facet Tang, Lili
Wang, Runxi
He, Kate S.
Shi, Cong
Yang, Tong
Huang, Yaping
Zheng, Pufan
Shi, Fuchen
author_sort Tang, Lili
collection PubMed
description BACKGROUND: As global climate change accelerates, ecologists and conservationists are increasingly investigating changes in biodiversity and predicting species distribution based on species observed at sites, but rarely consider those plant species that could potentially inhabit but are absent from these areas (i.e., the dark diversity and its distribution). Here, we estimated the dark diversity of vascular plants in China and picked up threatened dark species from the result, and applied maximum entropy (MaxEnt) model to project current and future distributions of those dark species in their potential regions (those regions that have these dark species). METHODS: We used the Beals probability index to estimate dark diversity in China based on available species distribution information and explored which environmental variables had significant impacts on dark diversity by incorporating bioclimatic data into the random forest (RF) model. We collected occurrence data of threatened dark species (Eucommia ulmoides, Liriodendron chinense, Phoebe bournei, Fagus longipetiolata, Amentotaxus argotaenia, and Cathaya argyrophylla) and related bioclimatic information that can be used to predict their distributions. In addition, we used MaxEnt modeling to project their distributions in suitable areas under future (2050 and 2070) climate change scenarios. RESULTS: We found that every study region’s dark diversity was lower than its observed species richness. In these areas, their numbers of dark species are ranging from 0 to 215, with a generally increasing trend from western regions to the east. RF results showed that temperature variables had a more significant effect on dark diversity than those associated with precipitation. The results of MaxEnt modeling showed that most threatened dark species were climatically suitable in their potential regions from current to 2070. DISCUSSIONS: The results of this study provide the first ever dark diversity patterns concentrated in China, even though it was estimated at the provincial scale. A combination of dark diversity and MaxEnt modeling is an effective way to shed light on the species that make up the dark diversity, such as projecting the distribution of specific dark species under global climate change. Besides, the combination of dark diversity and species distribution models (SDMs) may also be of value for ex situ conservation, ecological restoration, and species invasion prevention in the future.
format Online
Article
Text
id pubmed-6461033
institution National Center for Biotechnology Information
language English
publishDate 2019
publisher PeerJ Inc.
record_format MEDLINE/PubMed
spelling pubmed-64610332019-04-16 Throwing light on dark diversity of vascular plants in China: predicting the distribution of dark and threatened species under global climate change Tang, Lili Wang, Runxi He, Kate S. Shi, Cong Yang, Tong Huang, Yaping Zheng, Pufan Shi, Fuchen PeerJ Biodiversity BACKGROUND: As global climate change accelerates, ecologists and conservationists are increasingly investigating changes in biodiversity and predicting species distribution based on species observed at sites, but rarely consider those plant species that could potentially inhabit but are absent from these areas (i.e., the dark diversity and its distribution). Here, we estimated the dark diversity of vascular plants in China and picked up threatened dark species from the result, and applied maximum entropy (MaxEnt) model to project current and future distributions of those dark species in their potential regions (those regions that have these dark species). METHODS: We used the Beals probability index to estimate dark diversity in China based on available species distribution information and explored which environmental variables had significant impacts on dark diversity by incorporating bioclimatic data into the random forest (RF) model. We collected occurrence data of threatened dark species (Eucommia ulmoides, Liriodendron chinense, Phoebe bournei, Fagus longipetiolata, Amentotaxus argotaenia, and Cathaya argyrophylla) and related bioclimatic information that can be used to predict their distributions. In addition, we used MaxEnt modeling to project their distributions in suitable areas under future (2050 and 2070) climate change scenarios. RESULTS: We found that every study region’s dark diversity was lower than its observed species richness. In these areas, their numbers of dark species are ranging from 0 to 215, with a generally increasing trend from western regions to the east. RF results showed that temperature variables had a more significant effect on dark diversity than those associated with precipitation. The results of MaxEnt modeling showed that most threatened dark species were climatically suitable in their potential regions from current to 2070. DISCUSSIONS: The results of this study provide the first ever dark diversity patterns concentrated in China, even though it was estimated at the provincial scale. A combination of dark diversity and MaxEnt modeling is an effective way to shed light on the species that make up the dark diversity, such as projecting the distribution of specific dark species under global climate change. Besides, the combination of dark diversity and species distribution models (SDMs) may also be of value for ex situ conservation, ecological restoration, and species invasion prevention in the future. PeerJ Inc. 2019-04-09 /pmc/articles/PMC6461033/ /pubmed/30993048 http://dx.doi.org/10.7717/peerj.6731 Text en © 2019 Tang et al. http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, reproduction and adaptation in any medium and for any purpose provided that it is properly attributed. For attribution, the original author(s), title, publication source (PeerJ) and either DOI or URL of the article must be cited.
spellingShingle Biodiversity
Tang, Lili
Wang, Runxi
He, Kate S.
Shi, Cong
Yang, Tong
Huang, Yaping
Zheng, Pufan
Shi, Fuchen
Throwing light on dark diversity of vascular plants in China: predicting the distribution of dark and threatened species under global climate change
title Throwing light on dark diversity of vascular plants in China: predicting the distribution of dark and threatened species under global climate change
title_full Throwing light on dark diversity of vascular plants in China: predicting the distribution of dark and threatened species under global climate change
title_fullStr Throwing light on dark diversity of vascular plants in China: predicting the distribution of dark and threatened species under global climate change
title_full_unstemmed Throwing light on dark diversity of vascular plants in China: predicting the distribution of dark and threatened species under global climate change
title_short Throwing light on dark diversity of vascular plants in China: predicting the distribution of dark and threatened species under global climate change
title_sort throwing light on dark diversity of vascular plants in china: predicting the distribution of dark and threatened species under global climate change
topic Biodiversity
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6461033/
https://www.ncbi.nlm.nih.gov/pubmed/30993048
http://dx.doi.org/10.7717/peerj.6731
work_keys_str_mv AT tanglili throwinglightondarkdiversityofvascularplantsinchinapredictingthedistributionofdarkandthreatenedspeciesunderglobalclimatechange
AT wangrunxi throwinglightondarkdiversityofvascularplantsinchinapredictingthedistributionofdarkandthreatenedspeciesunderglobalclimatechange
AT hekates throwinglightondarkdiversityofvascularplantsinchinapredictingthedistributionofdarkandthreatenedspeciesunderglobalclimatechange
AT shicong throwinglightondarkdiversityofvascularplantsinchinapredictingthedistributionofdarkandthreatenedspeciesunderglobalclimatechange
AT yangtong throwinglightondarkdiversityofvascularplantsinchinapredictingthedistributionofdarkandthreatenedspeciesunderglobalclimatechange
AT huangyaping throwinglightondarkdiversityofvascularplantsinchinapredictingthedistributionofdarkandthreatenedspeciesunderglobalclimatechange
AT zhengpufan throwinglightondarkdiversityofvascularplantsinchinapredictingthedistributionofdarkandthreatenedspeciesunderglobalclimatechange
AT shifuchen throwinglightondarkdiversityofvascularplantsinchinapredictingthedistributionofdarkandthreatenedspeciesunderglobalclimatechange