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      High-Throughput Phenotyping of Soybean Biomass: Conventional Trait Estimation and Novel Latent Feature Extraction Using UAV Remote Sensing and Deep Learning Models

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          Abstract

          High-throughput phenotyping serves as a framework to reduce chronological costs and accelerate breeding cycles. In this study, we developed models to estimate the phenotypes of biomass-related traits in soybean ( Glycine max) using unmanned aerial vehicle (UAV) remote sensing and deep learning models. In 2018, a field experiment was conducted using 198 soybean germplasm accessions with known whole-genome sequences under 2 irrigation conditions: drought and control. We used a convolutional neural network (CNN) as a model to estimate the phenotypic values of 5 conventional biomass-related traits: dry weight, main stem length, numbers of nodes and branches, and plant height. We utilized manually measured phenotypes of conventional traits along with RGB images and digital surface models from UAV remote sensing to train our CNN models. The accuracy of the developed models was assessed through 10-fold cross-validation, which demonstrated their ability to accurately estimate the phenotypes of all conventional traits simultaneously. Deep learning enabled us to extract features that exhibited strong correlations with the output (i.e., phenotypes of the target traits) and accurately estimate the values of the features from the input data. We considered the extracted low-dimensional features as phenotypes in the latent space and attempted to annotate them based on the phenotypes of conventional traits. Furthermore, we validated whether these low-dimensional latent features were genetically controlled by assessing the accuracy of genomic predictions. The results revealed the potential utility of these low-dimensional latent features in actual breeding scenarios.

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          Most cited references46

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          Prediction of Total Genetic Value Using Genome-Wide Dense Marker Maps

          Recent advances in molecular genetic techniques will make dense marker maps available and genotyping many individuals for these markers feasible. Here we attempted to estimate the effects of ∼50,000 marker haplotypes simultaneously from a limited number of phenotypic records. A genome of 1000 cM was simulated with a marker spacing of 1 cM. The markers surrounding every 1-cM region were combined into marker haplotypes. Due to finite population size (Ne = 100), the marker haplotypes were in linkage disequilibrium with the QTL located between the markers. Using least squares, all haplotype effects could not be estimated simultaneously. When only the biggest effects were included, they were overestimated and the accuracy of predicting genetic values of the offspring of the recorded animals was only 0.32. Best linear unbiased prediction of haplotype effects assumed equal variances associated to each 1-cM chromosomal segment, which yielded an accuracy of 0.73, although this assumption was far from true. Bayesian methods that assumed a prior distribution of the variance associated with each chromosome segment increased this accuracy to 0.85, even when the prior was not correct. It was concluded that selection on genetic values predicted from markers could substantially increase the rate of genetic gain in animals and plants, especially if combined with reproductive techniques to shorten the generation interval.
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            Using Deep Learning for Image-Based Plant Disease Detection

            Crop diseases are a major threat to food security, but their rapid identification remains difficult in many parts of the world due to the lack of the necessary infrastructure. The combination of increasing global smartphone penetration and recent advances in computer vision made possible by deep learning has paved the way for smartphone-assisted disease diagnosis. Using a public dataset of 54,306 images of diseased and healthy plant leaves collected under controlled conditions, we train a deep convolutional neural network to identify 14 crop species and 26 diseases (or absence thereof). The trained model achieves an accuracy of 99.35% on a held-out test set, demonstrating the feasibility of this approach. Overall, the approach of training deep learning models on increasingly large and publicly available image datasets presents a clear path toward smartphone-assisted crop disease diagnosis on a massive global scale.
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              A One-Penny Imputed Genome from Next-Generation Reference Panels

              Genotype imputation is commonly performed in genome-wide association studies because it greatly increases the number of markers that can be tested for association with a trait. In general, one should perform genotype imputation using the largest reference panel that is available because the number of accurately imputed variants increases with reference panel size. However, one impediment to using larger reference panels is the increased computational cost of imputation. We present a new genotype imputation method, Beagle 5.0, which greatly reduces the computational cost of imputation from large reference panels. We compare Beagle 5.0 with Beagle 4.1, Impute4, Minimac3, and Minimac4 using 1000 Genomes Project data, Haplotype Reference Consortium data, and simulated data for 10k, 100k, 1M, and 10M reference samples. All methods produce nearly identical accuracy, but Beagle 5.0 has the lowest computation time and the best scaling of computation time with increasing reference panel size. For 10k, 100k, 1M, and 10M reference samples and 1,000 phased target samples, Beagle 5.0’s computation time is 3× (10k), 12× (100k), 43× (1M), and 533× (10M) faster than the fastest alternative method. Cost data from the Amazon Elastic Compute Cloud show that Beagle 5.0 can perform genome-wide imputation from 10M reference samples into 1,000 phased target samples at a cost of less than one US cent per sample.
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                Author and article information

                Journal
                Plant Phenomics
                Plant Phenomics
                PLANTPHENOMICS
                Plant Phenomics
                AAAS
                2643-6515
                09 September 2024
                2024
                : 6
                : 0244
                Affiliations
                [ 1 ]Graduated School of Agricultural and Life Sciences, The University of Tokyo , Tokyo, Japan.
                [ 2 ] Center for Advanced Intelligence Project, RIKEN, Kashiwa , Chiba, Japan.
                [ 3 ]Arid Land Research Center, Tottori University , Tottori, Japan.
                [ 4 ]Graduated School of Bioagricultural Sciences, Nagoya University , Nagoya, Japan.
                [ 5 ]Faculty of Food and Nutritional Sciences, Toyo University , Saitama, Japan.
                [ 6 ] RIKEN Center for Sustainable Resource Science, Yokohama, Japan.
                [ 7 ]Institute of Crop Science, National Agriculture and Food Research Organization , Tsukuba, Japan.
                Author notes
                [*] [* ]Address correspondence to: hiroiwata@ 123456g.ecc.u-tokyo.ac.jp
                [†]

                Present affiliation: Institute for Agro-Environmental Sciences, The National Agriculture and Food Research Organization, Tsukuba, Japan.

                [‡]

                Present affiliation: Graduated School of Agricultural and Life Sciences, The University of Tokyo, Tokyo, Japan.

                Author information
                https://orcid.org/0000-0002-4286-9076
                https://orcid.org/0009-0002-8002-424X
                https://orcid.org/0000-0002-9462-6412
                https://orcid.org/0000-0002-7486-7438
                https://orcid.org/0000-0002-8649-5061
                https://orcid.org/0000-0001-8943-3256
                https://orcid.org/0000-0001-6182-3236
                https://orcid.org/0000-0003-2251-8508
                https://orcid.org/0000-0001-8534-1987
                https://orcid.org/0000-0003-0802-6208
                https://orcid.org/0000-0003-0203-0759
                https://orcid.org/0000-0002-8388-3616
                https://orcid.org/0000-0001-7119-2052
                https://orcid.org/0000-0002-5363-6040
                https://orcid.org/0000-0002-6747-7036
                Article
                0244
                10.34133/plantphenomics.0244
                11382017
                39252878
                e2cd0390-482a-422f-9b87-b64149b9a3f8
                Copyright © 2024 Mashiro Okada et al.

                Exclusive licensee Nanjing Agricultural University. No claim to original U.S. Government Works. Distributed under a Creative Commons Attribution License 4.0 (CC BY 4.0).

                History
                : 12 May 2024
                : 11 August 2024
                : 09 September 2024
                Page count
                Figures: 7, Tables: 0, References: 50, Pages: 0
                Funding
                Funded by: JST-CREST;
                Award ID: JPMJCR16O2
                Award Recipient : Hiroyoshi Iwata
                Funded by: MEXT-KAKENHI;
                Award ID: JP22H02306
                Award Recipient : Hiroyoshi Iwata
                Categories
                Research Article

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