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基于融合技术的小麦(Triticum aestivum L.)幼苗盐碱胁迫无损检测

Nondestructive detection of saline-alkali stress in wheat (Triticum aestivum L.) seedlings via fusion technology.

作者信息

Gu Ying, Feng Guoqing, Hou Peichen, Zhou Yanan, Zhang He, Wang Xiaodong, Luo Bin, Chen Liping

机构信息

College of Information and Electrical Engineering, Shenyang Agricultural University, Shenyang, 110866, China.

Intelligent Equipment Research Center, Beijing Academy of Agriculture and Forestry Sciences, Beijing, 100089, China.

出版信息

Plant Methods. 2024 Sep 5;20(1):136. doi: 10.1186/s13007-024-01248-6.

Abstract

BACKGROUND

Wheat (Triticum aestivum L.) is an important grain crops in the world, and its growth and development in different stages is seriously affected by saline-alkali stress, especially in seedling stage. Therefore, nondestructive detection of wheat seedlings under saline-alkali stress can provide more comprehensive technical support for wheat breeding, cultivation and management.

RESULTS

This research focused on moisture signal prediction and classification of saline-alkali stress in wheat seedlings using fusion techniques. After collecting and analyzing transverse relaxation time and Multispectral imaging (MSI) information of wheat seedlings, four regression models were used to predict the moisture signal. K-Nearest Neighbor (KNN) and Gaussian-Naïve Bayes (GNB) models were combined with fivefold cross validation to classify the prediction of wheat seedling stress. The results showed that wheat seedlings would increase the bound water content through a certain mechanism to enhance their saline-alkali stress. Under the same Na concentration, the effect of alkali stress on moisture, growth and spectrum of wheat seedlings is stronger than salt stress. The Gradient Boosting Decision Regression Tree model performs the best in predicting wheat moisture signals, with a coefficient of determination (R2P) of 0.98 and a root mean square error of 109.60. It also had a short training time (1.48 s) and an efficient prediction speed (1300 obs/s). The KNN and GNB demonstrated significantly enhanced predictive performance when classifying the fused dataset, compared to using single datasets individually. In particular, the GNB model performing best on the fused dataset, with Precision, Recall, Accuracy, and F1-score of 90.30, 88.89%, 88.90%, and 0.90, respectively.

CONCLUSIONS

Under the same Na concentration, the effects of alkali stress on water content, spectrum, and growth of wheat were stronger than that of salt stress, which was more unfavorable to the growth of wheat. The fusion of low-field nuclear magnetic resonance and MSI technology can improve the classification of wheat stress, and provide an effective technical method for rapid and accurate monitoring of wheat seedlings under saline-alkali stress.

摘要

背景

小麦(Triticum aestivum L.)是世界上重要的粮食作物,其在不同生长阶段的生长发育受到盐碱胁迫的严重影响,尤其是在幼苗期。因此,对盐碱胁迫下的小麦幼苗进行无损检测可为小麦育种、栽培和管理提供更全面的技术支持。

结果

本研究聚焦于利用融合技术对小麦幼苗盐碱胁迫的水分信号进行预测和分类。在收集并分析小麦幼苗的横向弛豫时间和多光谱成像(MSI)信息后,使用四种回归模型预测水分信号。将K近邻(KNN)和高斯朴素贝叶斯(GNB)模型与五折交叉验证相结合,对小麦幼苗胁迫预测进行分类。结果表明,小麦幼苗会通过一定机制增加束缚水含量以增强其对盐碱胁迫的耐受性。在相同钠浓度下,碱胁迫对小麦幼苗水分、生长和光谱的影响强于盐胁迫。梯度提升决策回归树模型在预测小麦水分信号方面表现最佳,决定系数(R2P)为0.98,均方根误差为109.60。其训练时间也较短(1.48秒),预测速度高效(1300观测值/秒)。与单独使用单个数据集相比,KNN和GNB在对融合数据集进行分类时表现出显著增强的预测性能。特别是,GNB模型在融合数据集上表现最佳,精确率、召回率、准确率和F1分数分别为90.30、88.89%、88.90%和0.90。

结论

在相同钠浓度下,碱胁迫对小麦水分含量、光谱和生长的影响强于盐胁迫,对小麦生长更为不利。低场核磁共振与MSI技术的融合可提高小麦胁迫分类效果,为盐碱胁迫下小麦幼苗的快速准确监测提供有效技术方法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/325e/11375829/c15c5876b26e/13007_2024_1248_Fig1_HTML.jpg

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