4.6 Article Proceedings Paper

The large genome constraint hypothesis: Evolution, ecology and phenotype

期刊

ANNALS OF BOTANY
卷 95, 期 1, 页码 177-190

出版社

OXFORD UNIV PRESS
DOI: 10.1093/aob/mci011

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evolvability; nucleotype; genome size; ecology; evolution; phenotype

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Background and Aims If large genomes are truly saturated with unnecessary 'Junk' DNA. it would seem natural that there would be costs associated with accumulation and replication of this excess DNA. Here we examine the available evidence to support this hypothesis, which we term the 'large genome constraint'. We examine the large genome constraint at three scales: evolution, ecology, and the plant phenotype. Scope In evolution, we tested the hypothesis that plant lineages with large genomes are diversifying more slowly. We found that genera with large genomes are less likely to be highly specious - suggesting a large genome constaint on speciation. In ecology, we found that species with large genomes are under-represented in extreme environments - again suggesting a large genome constraint for the distribution and abundance of species. Ultimately. if these ecological and evolutionary constraints are real, the genome size effect must be expressed, in the phenotype and confer selective disadvantages. Therefore, in phenotype, we review data on the physiological correlates of genome size, and present new analyses, involving Maximum photosynthetic rate and specific leaf area. most notably. we found that species with large genomes have reduced maxinium photosynthetic rates and again suggesting a large genome constraint on plant performance. Finally, we discuss whether these phenotypic correlations may help explain why species with large genomes are trimmed from the evolutionary tree and have restricted ecological distributions. Conclusion Our review tentatively supports the large genome constraint hypothesis. (C) 2005 Annals of Botany Company.

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