Measuring stomatal and guard cell metrics for plant physiology and growth using StoManager1

Author:

Wang Jiaxin1ORCID,Renninger Heidi J1ORCID,Ma Qin2ORCID,Jin Shichao3ORCID

Affiliation:

1. Department of Forestry, Mississippi State University , Mississippi State, MS 39762 , USA

2. School of Geography, Nanjing Normal University , Nanjing 210023 , China

3. Plant Phenomics Research Centre, Academy for Advanced Interdisciplinary Studies, Collaborative Innovation Centre for Modern Crop Production co-sponsored by Province and Ministry, Nanjing Agricultural University , Nanjing 210095 , China

Abstract

Abstract Automated guard cell detection and measurement are vital for understanding plant physiological performance and ecological functioning in global water and carbon cycles. Most current methods for measuring guard cells and stomata are laborious, time-consuming, prone to bias, and limited in scale. We developed StoManager1, a high-throughput tool utilizing geometrical, mathematical algorithms, and convolutional neural networks to automatically detect, count, and measure over 30 guard cell and stomatal metrics, including guard cell and stomatal area, length, width, stomatal aperture area/guard cell area, orientation, stomatal evenness, divergence, and aggregation index. Combined with leaf functional traits, some of these StoManager1-measured guard cell and stomatal metrics explained 90% and 82% of tree biomass and intrinsic water use efficiency (iWUE) variances in hardwoods, making them substantial factors in leaf physiology and tree growth. StoManager1 demonstrated exceptional precision and recall (mAP@0.5 over 0.96), effectively capturing diverse stomatal properties across over 100 species. StoManager1 facilitates the automation of measuring leaf stomatal and guard cells, enabling broader exploration of stomatal control in plant growth and adaptation to environmental stress and climate change. This has implications for global gross primary productivity (GPP) modeling and estimation, as integrating stomatal metrics can enhance predictions of plant growth and resource usage worldwide. Easily accessible open-source code and standalone Windows executable applications are available on a GitHub repository (https://github.com/JiaxinWang123/StoManager1) and Zenodo (https://doi.org/10.5281/zenodo.7686022).

Funder

USDA National Institute of Food and Agriculture

McIntire Stennis

Department of Energy

Bioenergy Technologies Office

Southeast for Integrated Ecosystem Services

Publisher

Oxford University Press (OUP)

Reference68 articles.

1. Image processing with ImageJ;Abràmoff;Biophotonics Int,2004

2. The impact of atmospheric CO2 and temperature changes on stomatal density: observation from Quercus robur lammas leaves;Beerling;Ann Bot.,1993

3. The role of ecosystem-atmosphere interactions in simulated amazonian precipitation decrease and forest dieback under global climate warming;Betts;Theor Appl Climatol.,2004

4. Classical phenotyping and deep learning concur on genetic control of stomatal density and area in sorghum;Bheemanahalli;Plant Physiol.,2021

5. The surveyor's area formula;Braden;Coll Math J,1986

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