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Simultaneous Prediction of Wheat Yield and Grain Protein Content Using Multitask Deep Learning from Time-Series Proximal Sensing

Wheat yield and grain protein content (GPC) are two main optimization targets for breeding and cultivation. Remote sensing provides nondestructive and early predictions of yield and GPC, respectively. However, whether it is possible to simultaneously predict yield and GPC in one model and the accura...

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Autores principales: Sun, Zhuangzhuang, Li, Qing, Jin, Shichao, Song, Yunlin, Xu, Shan, Wang, Xiao, Cai, Jian, Zhou, Qin, Ge, Yan, Zhang, Ruinan, Zang, Jingrong, Jiang, Dong
Formato: Online Artículo Texto
Lenguaje:English
Publicado: AAAS 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8988204/
https://www.ncbi.nlm.nih.gov/pubmed/35441150
http://dx.doi.org/10.34133/2022/9757948
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author Sun, Zhuangzhuang
Li, Qing
Jin, Shichao
Song, Yunlin
Xu, Shan
Wang, Xiao
Cai, Jian
Zhou, Qin
Ge, Yan
Zhang, Ruinan
Zang, Jingrong
Jiang, Dong
author_facet Sun, Zhuangzhuang
Li, Qing
Jin, Shichao
Song, Yunlin
Xu, Shan
Wang, Xiao
Cai, Jian
Zhou, Qin
Ge, Yan
Zhang, Ruinan
Zang, Jingrong
Jiang, Dong
author_sort Sun, Zhuangzhuang
collection PubMed
description Wheat yield and grain protein content (GPC) are two main optimization targets for breeding and cultivation. Remote sensing provides nondestructive and early predictions of yield and GPC, respectively. However, whether it is possible to simultaneously predict yield and GPC in one model and the accuracy and influencing factors are still unclear. In this study, we made a systematic comparison of different deep learning models in terms of data fusion, time-series feature extraction, and multitask learning. The results showed that time-series data fusion significantly improved yield and GPC prediction accuracy with R(2) values of 0.817 and 0.809. Multitask learning achieved simultaneous prediction of yield and GPC with comparable accuracy to the single-task model. We further proposed a two-to-two model that combines data fusion (two kinds of data sources for input) and multitask learning (two outputs) and compared different feature extraction layers, including RNN (recurrent neural network), LSTM (long short-term memory), CNN (convolutional neural network), and attention module. The two-to-two model with the attention module achieved the best prediction accuracy for yield (R(2) = 0.833) and GPC (R(2) = 0.846). The temporal distribution of feature importance was visualized based on the attention feature values. Although the temporal patterns of structural traits and spectral traits were inconsistent, the overall importance of both structural traits and spectral traits at the postanthesis stage was more important than that at the preanthesis stage. This study provides new insights into the simultaneous prediction of yield and GPC using deep learning from time-series proximal sensing, which may contribute to the accurate and efficient predictions of agricultural production.
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spelling pubmed-89882042022-04-18 Simultaneous Prediction of Wheat Yield and Grain Protein Content Using Multitask Deep Learning from Time-Series Proximal Sensing Sun, Zhuangzhuang Li, Qing Jin, Shichao Song, Yunlin Xu, Shan Wang, Xiao Cai, Jian Zhou, Qin Ge, Yan Zhang, Ruinan Zang, Jingrong Jiang, Dong Plant Phenomics Research Article Wheat yield and grain protein content (GPC) are two main optimization targets for breeding and cultivation. Remote sensing provides nondestructive and early predictions of yield and GPC, respectively. However, whether it is possible to simultaneously predict yield and GPC in one model and the accuracy and influencing factors are still unclear. In this study, we made a systematic comparison of different deep learning models in terms of data fusion, time-series feature extraction, and multitask learning. The results showed that time-series data fusion significantly improved yield and GPC prediction accuracy with R(2) values of 0.817 and 0.809. Multitask learning achieved simultaneous prediction of yield and GPC with comparable accuracy to the single-task model. We further proposed a two-to-two model that combines data fusion (two kinds of data sources for input) and multitask learning (two outputs) and compared different feature extraction layers, including RNN (recurrent neural network), LSTM (long short-term memory), CNN (convolutional neural network), and attention module. The two-to-two model with the attention module achieved the best prediction accuracy for yield (R(2) = 0.833) and GPC (R(2) = 0.846). The temporal distribution of feature importance was visualized based on the attention feature values. Although the temporal patterns of structural traits and spectral traits were inconsistent, the overall importance of both structural traits and spectral traits at the postanthesis stage was more important than that at the preanthesis stage. This study provides new insights into the simultaneous prediction of yield and GPC using deep learning from time-series proximal sensing, which may contribute to the accurate and efficient predictions of agricultural production. AAAS 2022-03-29 /pmc/articles/PMC8988204/ /pubmed/35441150 http://dx.doi.org/10.34133/2022/9757948 Text en Copyright © 2022 Zhuangzhuang Sun et al. https://creativecommons.org/licenses/by/4.0/Exclusive Licensee Nanjing Agricultural University. Distributed under a Creative Commons Attribution License (CC BY 4.0).
spellingShingle Research Article
Sun, Zhuangzhuang
Li, Qing
Jin, Shichao
Song, Yunlin
Xu, Shan
Wang, Xiao
Cai, Jian
Zhou, Qin
Ge, Yan
Zhang, Ruinan
Zang, Jingrong
Jiang, Dong
Simultaneous Prediction of Wheat Yield and Grain Protein Content Using Multitask Deep Learning from Time-Series Proximal Sensing
title Simultaneous Prediction of Wheat Yield and Grain Protein Content Using Multitask Deep Learning from Time-Series Proximal Sensing
title_full Simultaneous Prediction of Wheat Yield and Grain Protein Content Using Multitask Deep Learning from Time-Series Proximal Sensing
title_fullStr Simultaneous Prediction of Wheat Yield and Grain Protein Content Using Multitask Deep Learning from Time-Series Proximal Sensing
title_full_unstemmed Simultaneous Prediction of Wheat Yield and Grain Protein Content Using Multitask Deep Learning from Time-Series Proximal Sensing
title_short Simultaneous Prediction of Wheat Yield and Grain Protein Content Using Multitask Deep Learning from Time-Series Proximal Sensing
title_sort simultaneous prediction of wheat yield and grain protein content using multitask deep learning from time-series proximal sensing
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8988204/
https://www.ncbi.nlm.nih.gov/pubmed/35441150
http://dx.doi.org/10.34133/2022/9757948
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