Nonlinear models based on leaf architecture traits explain the variability of mesophyll conductance across plant species

Author:

Rahimi‐Majd Milad12ORCID,Leverett Alistair3ORCID,Neumann Arne1ORCID,Kromdijk Johannes34ORCID,Nikoloski Zoran12ORCID

Affiliation:

1. Bioinformatics Department, Institute of Biochemistry and Biology University of Potsdam Potsdam Germany

2. Systems Biology and Mathematical Modeling Group Max Planck Institute of Molecular Plant Physiology Potsdam Germany

3. Department of Plant Sciences University of Cambridge Cambridge Cambridgeshire UK

4. Carl R Woese Institute for Genomic Biology University of Illinois at Urbana‐Champaign Champaign Illinois USA

Abstract

AbstractMesophyll conductance () describes the efficiency with which moves from substomatal cavities to chloroplasts. Despite the stipulated importance of leaf architecture in affecting , there remains a considerable ambiguity about how and whether leaf anatomy influences . Here, we employed nonlinear machine‐learning models to assess the relationship between 10 leaf architecture traits and . These models used leaf architecture traits as predictors and achieved excellent predictability of . Dissection of the importance of leaf architecture traits in the models indicated that cell wall thickness and chloroplast area exposed to internal airspace have a large impact on interspecific variation in . Additionally, other leaf architecture traits, such as leaf thickness, leaf density and chloroplast thickness, emerged as important predictors of . We also found significant differences in the predictability between models trained on different plant functional types. Therefore, by moving beyond simple linear and exponential models, our analyses demonstrated that a larger suite of leaf architecture traits drive differences in than has been previously acknowledged. These findings pave the way for modulating by strategies that modify its leaf architecture determinants.

Publisher

Wiley

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