Research Article | Open Access
Volume 2024 |Article ID 0127 | https://doi.org/10.34133/plantphenomics.0127

Bridging Time-series Image Phenotyping and Functional–Structural Plant Modeling to Predict Adventitious Root System Architecture

Sriram Parasurama,1,3 Darshi Banan,1 Kyungdahm Yun,2 Sharon Doty,1 and Soo-Hyung Kim 1

1School of Environmental and Forest Sciences, University of Washington, Seattle, USA.
2Department of Smart Farm, Jeonbuk National University, Jeonju, Korea.
3School of Integrative Plant Science, Cornell University, Ithaca, NY 14853, USA

Received 
29 Jun 2023
Accepted 
21 Nov 2023
Published
01 Dec 2023

Abstract

Root system architecture (RSA) is an important measure of how plants navigate and interact with the soil environment. However, current methods in studying RSA must make tradeoffs between precision of data and proximity to natural conditions, with root growth in germination papers providing accessibility and high data resolution. Functional–structural plant models (FSPMs) can overcome this tradeoff, though parameterization and evaluation of FSPMs are traditionally based in manual measurements and visual comparison. Here, we applied a germination paper system to study the adventitious RSA and root phenology of Populus trichocarpa stem cuttings using time-series image-based phenotyping augmented by FSPM. We found a significant correlation between timing of root initiation and thermal time at cutting collection (P value = 0.0061, R2 = 0.875), but little correlation with RSA. We also present a use of RhizoVision [1] for automatically extracting FSPM parameters from time series images and evaluating FSPM simulations. A high accuracy of the parameterization was achieved in predicting 2D growth with a sensitivity rate of 83.5%. This accuracy was lost when predicting 3D growth with sensitivity rates of 38.5% to 48.7%, while overall accuracy varied with phenotyping methods. Despite this loss in accuracy, the new method is amenable to high throughput FSPM parameterization and bridges the gap between advances in time-series phenotyping and FSPMs.

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