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Demographic amplification is a predictor of invasiveness among plants

Version 4 2024-03-12, 18:16
Version 3 2023-10-29, 15:01
journal contribution
posted on 2024-03-12, 18:16 authored by Kim Jelbert, Danielle Buss, Matthew Silk, Francesca Sargent, Simon Rolph, Phil Wilson, Dave Hodgson, Jenni McDonald, Stuart Townley, Miguel Franco, Iain StottIain Stott, Owen Jones, Roberto Salguero-Gómez, Yvonne Buckley, Tiffany Knight

Invasive plant species threaten native biodiversity, ecosystems, agriculture, industry and human health worldwide, lending urgency to the search for predictors of plant invasiveness outside native ranges. There is much con?icting evidence about which plant characteristics best predict invasiveness. Here we use a global demographic survey for over 500 plant species to show that populations of invasive plants have better potential to recover from disturbance than non-invasives, even when measured in the native range. Invasives have high stable population growth rates in their invaded ranges, but this metric cannot be predicted based on measurements in the native ranges. Recovery from demographic disturbance is a measure of transient population ampli?cation, linked to high levels of reproduction, and shows phylogenetic signal. Our results demonstrate that transient population dynamics and reproductive capacity can help to predict invasiveness across the plant kingdom, and should guide international policy on trade and movement of plants.

History

School affiliated with

  • Department of Life Sciences (Research Outputs)

Publication Title

Nature Communications

Volume

10

Issue

1

Pages/Article Number

5602

Publisher

Springer

ISSN

2041-1723

Date Submitted

2019-12-23

Date Accepted

2019-10-31

Date of First Publication

2019-12-06

Date of Final Publication

2019-12-06

Date Document First Uploaded

2019-12-23

ePrints ID

39247

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