Literature DB >> 33856488

Classical phenotyping and deep learning concur on genetic control of stomatal density and area in sorghum.

Raju Bheemanahalli1, Chaoxin Wang2, Elfadil Bashir3, Anuj Chiluwal1, Meghnath Pokharel1, Ramasamy Perumal3, Naghmeh Moghimi1, Troy Ostmeyer1, Doina Caragea2, S V Krishna Jagadish1.   

Abstract

Stomatal density (SD) and stomatal complex area (SCA) are important traits that regulate gas exchange and abiotic stress response in plants. Despite sorghum (Sorghum bicolor) adaptation to arid conditions, the genetic potential of stomata-related traits remains unexplored due to challenges in available phenotyping methods. Hence, identifying loci that control stomatal traits is fundamental to designing strategies to breed sorghum with optimized stomatal regulation. We implemented both classical and deep learning methods to characterize genetic diversity in 311 grain sorghum accessions for stomatal traits at two different field environments. Nearly 12,000 images collected from abaxial (Ab) and adaxial (Ad) leaf surfaces revealed substantial variation in stomatal traits. Our study demonstrated significant accuracy between manual and deep learning methods in predicting SD and SCA. In sorghum, SD was 32%-39% greater on the Ab versus the Ad surface, while SCA on the Ab surface was 2%-5% smaller than on the Ad surface. Genome-Wide Association Study identified 71 genetic loci (38 were environment-specific) with significant genotype to phenotype associations for stomatal traits. Putative causal genes underlying the phenotypic variation were identified. Accessions with similar SCA but carrying contrasting haplotypes for SD were tested for stomatal conductance and carbon assimilation under field conditions. Our findings provide a foundation for further studies on the genetic and molecular mechanisms controlling stomata patterning and regulation in sorghum. An integrated physiological, deep learning, and genomic approach allowed us to unravel the genetic control of natural variation in stomata traits in sorghum, which can be applied to other plants. © American Society of Plant Biologists 2021. All rights reserved. For permissions, please email: journals.permissions@oup.com.

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Year:  2021        PMID: 33856488      PMCID: PMC8260133          DOI: 10.1093/plphys/kiab174

Source DB:  PubMed          Journal:  Plant Physiol        ISSN: 0032-0889            Impact factor:   8.340


  4 in total

1.  Deep learning-based high-throughput phenotyping accelerates gene discovery for stomatal traits.

Authors:  Wei Zhang; Bernarda Calla; Dhineshkumar Thiruppathi
Journal:  Plant Physiol       Date:  2021-11-03       Impact factor: 8.340

2.  Machine learning-enabled phenotyping for GWAS and TWAS of WUE traits in 869 field-grown sorghum accessions.

Authors:  John N Ferguson; Samuel B Fernandes; Brandon Monier; Nathan D Miller; Dylan Allen; Anna Dmitrieva; Peter Schmuker; Roberto Lozano; Ravi Valluru; Edward S Buckler; Michael A Gore; Patrick J Brown; Edgar P Spalding; Andrew D B Leakey
Journal:  Plant Physiol       Date:  2021-11-03       Impact factor: 8.005

3.  Knock-down of phosphoenolpyruvate carboxylase 3 negatively impacts growth, productivity, and responses to salt stress in sorghum (Sorghum bicolor L.).

Authors:  Clara de la Osa; Jesús Pérez-López; Ana-Belén Feria; Guillermo Baena; Daniel Marino; Inmaculada Coleto; Francisco Pérez-Montaño; Jacinto Gandullo; Cristina Echevarría; Sofía García-Mauriño; José A Monreal
Journal:  Plant J       Date:  2022-05-19       Impact factor: 7.091

4.  Deep learning based high-throughput phenotyping of chalkiness in rice exposed to high night temperature.

Authors:  Chaoxin Wang; Doina Caragea; Nisarga Kodadinne Narayana; Nathan T Hein; Raju Bheemanahalli; Impa M Somayanda; S V Krishna Jagadish
Journal:  Plant Methods       Date:  2022-01-22       Impact factor: 4.993

  4 in total

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