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Tier 3 — Observational / field trialPeer-reviewed

Improving extinction projections across scales and habitats using the countryside species-area relationship

Martins IS; Pereira HM [0000-0003-1043-1675]

Scientific Reports · 2017

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Summary

Abstract The species-area relationship (SAR) has been often used to project species extinctions as a consequence of habitat loss. However, recent studies have suggested that the SAR may overestimate species extinctions, at least in the short-term. We argue that the main reason for this overestimation is that the classic SAR ignores the persistence of species in human-modified habitats. We use data collected worldwide to analyse what is the fraction of bird and plant species that remain in different human-modified habitats at the local scale after full habitat conversion. We observe that both taxa have consistent responses to the different land-use types, with strongest reductions in species richness in cropland across the globe, and in pasture in the tropics. We show that the results from these studies cannot be linearly scaled from plots to large regions, as this again overestimates the impacts of land-use change on biodiversity. The countryside SAR provides a unifying framework to incorporate both the effect of species persistence in the landscape matrix and the non-linear response of the proportion of species extinctions to sampling area, generating more realistic projections of biodiversity loss.

Outcomes reported

Referenced by Nature Communications British biodiversity scenarios as citation 171; likely supports topic area: biodiversity / conservation. Topics: biodiversity / conservation Evidence type: Modelling / projection Source report: Nature Communications British biodiversity scenarios Ref#: Nature Communications British biodiversity scenarios #171 Original: Martins, I. S. & Pereira, H. M. Improving extinction projections across scales and habitats using the countryside species-area relationship. Sci. Rep. 7, 12899 (2017).

Theme
Farming systems, soils & land use
Subject
Grassland & pasture systems
Study type
Research
Source type
Peer-reviewed research
Status
Published
Geography
United Kingdom
System type
Other
DOI
10.1038/s41598-017-13059-y
Catalogue ID
IRmoq83nfn-f6a4be
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