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      A real-time phenotyping framework using machine learning for plant stress severity rating in soybean

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          Abstract

          Background

          Phenotyping is a critical component of plant research. Accurate and precise trait collection, when integrated with genetic tools, can greatly accelerate the rate of genetic gain in crop improvement. However, efficient and automatic phenotyping of traits across large populations is a challenge; which is further exacerbated by the necessity of sampling multiple environments and growing replicated trials. A promising approach is to leverage current advances in imaging technology, data analytics and machine learning to enable automated and fast phenotyping and subsequent decision support. In this context, the workflow for phenotyping (image capture → data storage and curation → trait extraction → machine learning/classification → models/apps for decision support) has to be carefully designed and efficiently executed to minimize resource usage and maximize utility. We illustrate such an end-to-end phenotyping workflow for the case of plant stress severity phenotyping in soybean, with a specific focus on the rapid and automatic assessment of iron deficiency chlorosis (IDC) severity on thousands of field plots. We showcase this analytics framework by extracting IDC features from a set of ~4500 unique canopies representing a diverse germplasm base that have different levels of IDC, and subsequently training a variety of classification models to predict plant stress severity. The best classifier is then deployed as a smartphone app for rapid and real time severity rating in the field.

          Results

          We investigated 10 different classification approaches, with the best classifier being a hierarchical classifier with a mean per-class accuracy of ~96%. We construct a phenotypically meaningful ‘population canopy graph’, connecting the automatically extracted canopy trait features with plant stress severity rating. We incorporated this image capture → image processing → classification workflow into a smartphone app that enables automated real-time evaluation of IDC scores using digital images of the canopy.

          Conclusion

          We expect this high-throughput framework to help increase the rate of genetic gain by providing a robust extendable framework for other abiotic and biotic stresses. We further envision this workflow embedded onto a high throughput phenotyping ground vehicle and unmanned aerial system that will allow real-time, automated stress trait detection and quantification for plant research, breeding and stress scouting applications.

          Electronic supplementary material

          The online version of this article (doi:10.1186/s13007-017-0173-7) contains supplementary material, which is available to authorized users.

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          Most cited references26

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          Machine Learning for High-Throughput Stress Phenotyping in Plants.

          Advances in automated and high-throughput imaging technologies have resulted in a deluge of high-resolution images and sensor data of plants. However, extracting patterns and features from this large corpus of data requires the use of machine learning (ML) tools to enable data assimilation and feature identification for stress phenotyping. Four stages of the decision cycle in plant stress phenotyping and plant breeding activities where different ML approaches can be deployed are (i) identification, (ii) classification, (iii) quantification, and (iv) prediction (ICQP). We provide here a comprehensive overview and user-friendly taxonomy of ML tools to enable the plant community to correctly and easily apply the appropriate ML tools and best-practice guidelines for various biotic and abiotic stress traits.
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            A review of advanced techniques for detecting plant diseases

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              Dissecting the phenotypic components of crop plant growth and drought responses based on high-throughput image analysis.

              Significantly improved crop varieties are urgently needed to feed the rapidly growing human population under changing climates. While genome sequence information and excellent genomic tools are in place for major crop species, the systematic quantification of phenotypic traits or components thereof in a high-throughput fashion remains an enormous challenge. In order to help bridge the genotype to phenotype gap, we developed a comprehensive framework for high-throughput phenotype data analysis in plants, which enables the extraction of an extensive list of phenotypic traits from nondestructive plant imaging over time. As a proof of concept, we investigated the phenotypic components of the drought responses of 18 different barley (Hordeum vulgare) cultivars during vegetative growth. We analyzed dynamic properties of trait expression over growth time based on 54 representative phenotypic features. The data are highly valuable to understand plant development and to further quantify growth and crop performance features. We tested various growth models to predict plant biomass accumulation and identified several relevant parameters that support biological interpretation of plant growth and stress tolerance. These image-based traits and model-derived parameters are promising for subsequent genetic mapping to uncover the genetic basis of complex agronomic traits. Taken together, we anticipate that the analytical framework and analysis results presented here will be useful to advance our views of phenotypic trait components underlying plant development and their responses to environmental cues. © 2014 American Society of Plant Biologists. All rights reserved.
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                Author and article information

                Contributors
                hsnaik@iastate.edu
                jiaoping@iastate.edu
                lofquist@iastate.edu
                tmamo@iastate.edu
                soumiks@iastate.edu
                ackerman@iastate.edu
                arti@iastate.edu
                singhak@iastate.edu
                baskarg@iastate.edu
                Journal
                Plant Methods
                Plant Methods
                Plant Methods
                BioMed Central (London )
                1746-4811
                8 April 2017
                8 April 2017
                2017
                : 13
                : 23
                Affiliations
                [1 ]GRID grid.34421.30, Department of Mechanical Engineering, , Iowa State University, ; Ames, IA 50011 USA
                [2 ]GRID grid.34421.30, Department of Agronomy, , Iowa State University, ; Ames, IA 50011 USA
                Article
                173
                10.1186/s13007-017-0173-7
                5385078
                28405214
                76926373-562b-4b7c-9a4c-4955ace79eee
                © The Author(s) 2017

                Open AccessThis article is distributed under the terms of the Creative Commons Attribution 4.0 International License ( http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons license, and indicate if changes were made. The Creative Commons Public Domain Dedication waiver ( http://creativecommons.org/publicdomain/zero/1.0/) applies to the data made available in this article, unless otherwise stated.

                History
                : 9 September 2016
                : 29 March 2017
                Funding
                Funded by: FundRef http://dx.doi.org/10.13039/100009227, Iowa State University;
                Award ID: PIIR award
                Award ID: Monsanto Chair in Soybean Breeding
                Award ID: Baker Center for Plant Breeding
                Award Recipient :
                Funded by: Iowa Soybean Association
                Funded by: Iowa State University (US)
                Award ID: Plant Science Institute Faculty Fellow
                Award Recipient :
                Categories
                Methodology
                Custom metadata
                © The Author(s) 2017

                Plant science & Botany
                high-throughput phenotyping,image analysis,machine learning,plant stress,smartphone

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