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Functional Plant Biology Functional Plant Biology Society
Plant function and evolutionary biology
INTRODUCTION

Phenotyping plants: genes, phenes and machines

Roland Pieruschka A B and Hendrik Poorter A
+ Author Affiliations
- Author Affiliations

A IBG-2 Plant Sciences, Forschungszentrum Jülich, D-52425, Germany.

B Corresponding author. Email: r.pieruschka@fz-juelich.de

Functional Plant Biology 39(11) 813-820 https://doi.org/10.1071/FPv39n11_IN
Published: 30 October 2012

Abstract

No matter how fascinating the discoveries in the field of molecular biology are, in the end it is the phenotype that matters. In this paper we pay attention to various aspects of plant phenotyping. The challenges to unravel the relationship between genotype and phenotype are discussed, as well as the case where ‘plants do not have a phenotype’. More emphasis has to be placed on automation to match the increased output in the molecular sciences with analysis of relevant traits under laboratory, greenhouse and field conditions. Currently, non-destructive measurements with cameras are becoming widely used to assess plant structural properties, but a wider range of non-invasive approaches and evaluation tools has to be developed to combine physiologically meaningful data with structural information of plants. Another field requiring major progress is the handling and processing of data. A better e-infrastructure will enable easier establishment of links between phenotypic traits and genetic data. In the final part of this paper we briefly introduce the range of contributions that form the core of a special issue of this journal on plant phenotyping.


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