Literature DB >> 32533857

SeedGerm: a cost-effective phenotyping platform for automated seed imaging and machine-learning based phenotypic analysis of crop seed germination.

Joshua Colmer1, Carmel M O'Neill2, Rachel Wells2, Aaron Bostrom1, Daniel Reynolds1, Danny Websdale1, Gagan Shiralagi2, Wei Lu3, Qiaojun Lou4, Thomas Le Cornu1, Joshua Ball1, Jim Renema5, Gema Flores Andaluz5, Rene Benjamins5, Steven Penfield2, Ji Zhou6,7.   

Abstract

Efficient seed germination and establishment are important traits for field and glasshouse crops. Large-scale germination experiments are laborious and prone to observer errors, leading to the necessity for automated methods. We experimented with five crop species, including tomato, pepper, Brassica, barley, and maize, and concluded an approach for large-scale germination scoring. Here, we present the SeedGerm system, which combines cost-effective hardware and open-source software for seed germination experiments, automated seed imaging, and machine-learning based phenotypic analysis. The software can process multiple image series simultaneously and produce reliable analysis of germination- and establishment-related traits, in both comma-separated values (CSV) and processed images (PNG) formats. In this article, we describe the hardware and software design in detail. We also demonstrate that SeedGerm could match specialists' scoring of radicle emergence. Germination curves were produced based on seed-level germination timing and rates rather than a fitted curve. In particular, by scoring germination across a diverse panel of Brassica napus varieties, SeedGerm implicates a gene important in abscisic acid (ABA) signalling in seeds. We compared SeedGerm with existing methods and concluded that it could have wide utilities in large-scale seed phenotyping and testing, for both research and routine seed technology applications.
© 2020 The Authors. New Phytologist © 2020 New Phytologist Trust.

Entities:  

Keywords:  big data biology; crop seeds; germination scoring; machine learning; phenotypic analysis; seed germination; seed imaging

Mesh:

Substances:

Year:  2020        PMID: 32533857     DOI: 10.1111/nph.16736

Source DB:  PubMed          Journal:  New Phytol        ISSN: 0028-646X            Impact factor:   10.151


  9 in total

Review 1.  Capturing crop adaptation to abiotic stress using image-based technologies.

Authors:  Nadia Al-Tamimi; Patrick Langan; Villő Bernád; Jason Walsh; Eleni Mangina; Sónia Negrão
Journal:  Open Biol       Date:  2022-06-22       Impact factor: 7.124

Review 2.  Seed germination and vigor: ensuring crop sustainability in a changing climate.

Authors:  Reagan C Reed; Kent J Bradford; Imtiyaz Khanday
Journal:  Heredity (Edinb)       Date:  2022-01-10       Impact factor: 3.832

3.  Objective Phenotyping of Root System Architecture Using Image Augmentation and Machine Learning in Alfalfa (Medicago sativa L.).

Authors:  Zhanyou Xu; Larry M York; Anand Seethepalli; Bruna Bucciarelli; Hao Cheng; Deborah A Samac
Journal:  Plant Phenomics       Date:  2022-04-07

4.  ScreenSeed as a novel high throughput seed germination phenotyping method.

Authors:  Nicolas Merieux; Pierre Cordier; Marie-Hélène Wagner; Sylvie Ducournau; Sophie Aligon; Dominique Job; Philippe Grappin; Edwin Grappin
Journal:  Sci Rep       Date:  2021-01-14       Impact factor: 4.379

5.  SeedQuant: a deep learning-based tool for assessing stimulant and inhibitor activity on root parasitic seeds.

Authors:  Justine Braguy; Merey Ramazanova; Silvio Giancola; Muhammad Jamil; Boubacar A Kountche; Randa Zarban; Abrar Felemban; Jian You Wang; Pei-Yu Lin; Imran Haider; Matias Zurbriggen; Bernard Ghanem; Salim Al-Babili
Journal:  Plant Physiol       Date:  2021-07-06       Impact factor: 8.340

6.  High-Throughput in situ Root Image Segmentation Based on the Improved DeepLabv3+ Method.

Authors:  Chen Shen; Liantao Liu; Lingxiao Zhu; Jia Kang; Nan Wang; Limin Shao
Journal:  Front Plant Sci       Date:  2020-10-19       Impact factor: 5.753

7.  CBM: An IoT Enabled LiDAR Sensor for In-Field Crop Height and Biomass Measurements.

Authors:  Bikram Pratap Banerjee; German Spangenberg; Surya Kant
Journal:  Biosensors (Basel)       Date:  2021-12-29

Review 8.  Advances in "Omics" Approaches for Improving Toxic Metals/Metalloids Tolerance in Plants.

Authors:  Ali Raza; Javaria Tabassum; Zainab Zahid; Sidra Charagh; Shanza Bashir; Rutwik Barmukh; Rao Sohail Ahmad Khan; Fernando Barbosa; Chong Zhang; Hua Chen; Weijian Zhuang; Rajeev K Varshney
Journal:  Front Plant Sci       Date:  2022-01-04       Impact factor: 5.753

9.  Large-scale field phenotyping using backpack LiDAR and CropQuant-3D to measure structural variation in wheat.

Authors:  Yulei Zhu; Gang Sun; Guohui Ding; Jie Zhou; Mingxing Wen; Shichao Jin; Qiang Zhao; Joshua Colmer; Yanfeng Ding; Eric S Ober; Ji Zhou
Journal:  Plant Physiol       Date:  2021-10-05       Impact factor: 8.340

  9 in total

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