Rapid phenotypic differentiation in the iconic Japanese knotweed s.l. invading novel habitats

Author:

Yuan Wei,Pigliucci Massimo,Richards Christina L.

Abstract

AbstractUnderstanding the mechanisms that underlie plant invasions is critical for management and conservation of biodiversity. At the same time, invasive species also provide a unique opportunity to study rapid adaptation to complex environmental conditions. Using four replicate reciprocal transplant experiments across three habitats, we described patterns of phenotypic response and assessed the degree of local adaptation in knotweed populations. We found plants from beach habitats were generally smaller than plants from marsh and roadside habitats when grown in their home habitat. In the marsh habitat, marsh plants were generally larger than beach plants, but not different from roadside plants. There were no differences among plants grown in the roadside habitat. We found mixed evidence for local adaptation: plants from the marsh habitat had greater biomass in their “home” sites, while plants from beaches and roadsides had greater survival in their “home” sites compared to other plants. In sum, we found phenotypic differentiation and some support for the hypothesis of rapid local adaptation of plants from beach, marsh and roadside habitats. Identifying whether these patterns of differentiation result from genetic or heritable non-genetic mechanisms will require further work.

Funder

Research Foundation for the State University of New York

New York Sea Grant, State University of New York

German Federal Ministry of Education and Research

Eberhard Karls Universität Tübingen

Publisher

Springer Science and Business Media LLC

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