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Network trade-offs and homeostasis in Arabidopsis shoot architectures.

Accepted version
Peer-reviewed

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Abstract

Understanding the optimization objectives that shape shoot architectures remains a critical problem in plant biology. Here, we performed 3D scanning of 152 Arabidopsis shoot architectures, including wildtype and 10 mutant strains, and we uncovered a design principle that describes how architectures make trade-offs between competing objectives. First, we used graph-theoretic analysis to show that Arabidopsis shoot architectures strike a Pareto optimal that can be captured as maximizing performance in transporting nutrients and minimizing costs in building the architecture. Second, we identify small sets of genes that can be mutated to shift the weight prioritizing one objective over the other. Third, we show that this prioritization weight feature is significantly less variable across replicates of the same genotype compared to other common plant traits (e.g., number of rosette leaves, total volume occupied). This suggests that this feature is a robust descriptor of a genotype, and that local variability in structure may be compensated for globally in a homeostatic manner. Overall, our work provides a framework to understand optimization trade-offs made by shoot architectures and provides evidence that these trade-offs can be modified genetically, which may aid plant breeding and selection efforts.

Description

Keywords

Algorithms, Arabidopsis, Computational Biology, Genes, Plant, Genotype, Homeostasis, Models, Biological, Mutation, Plant Leaves, Plant Shoots

Journal Title

PLoS Comput Biol

Conference Name

Journal ISSN

1553-734X
1553-7358

Volume Title

15

Publisher

Public Library of Science (PLoS)

Rights

All rights reserved
Sponsorship
Gatsby Charitable Foundation (unknown)
Gatsby Charitable Foundation Grant number GAT3272C