从细胞器形态学到整株植物表型:基于深度学习的表型检测方法

Plants Pub Date : 2024-04-23 DOI:10.3390/plants13091177
Hang Liu, Hongfei Zhu, Fei Liu, Limiao Deng, Guangxia Wu, Zhongzhi Han, Longgang Zhao
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引用次数: 0

摘要

植物表型参数分析与育种密切相关,因此植物表型研究具有很强的现实意义。本文利用深度学习对拟南芥进行了从宏观(植株)到微观(细胞器)的分类。首先,多输出模型识别拟南芥入选品系并回归预测拟南芥22天的生长状况。实验结果表明,该模型在识别拟南芥品系方面表现出色,分类准确率达 99.92%。该模型在预测植物生长状况方面也有很好的表现,模型的回归预测均方根误差(RMSE)为 1.536。接下来,通过增加拟南芥图像的时间间隔获得了一个新的数据集,并验证了模型在不同时间间隔下的性能。最后,将模型应用于拟南芥细胞器的分类,以验证模型的普适性。研究表明,深度学习将拓宽植物表型检测方法。此外,该方法将促进植物表型高通量信息收集平台的设计和开发。
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From Organelle Morphology to Whole-Plant Phenotyping: A Phenotypic Detection Method Based on Deep Learning
The analysis of plant phenotype parameters is closely related to breeding, so plant phenotype research has strong practical significance. This paper used deep learning to classify Arabidopsis thaliana from the macro (plant) to the micro level (organelle). First, the multi-output model identifies Arabidopsis accession lines and regression to predict Arabidopsis’s 22-day growth status. The experimental results showed that the model had excellent performance in identifying Arabidopsis lines, and the model’s classification accuracy was 99.92%. The model also had good performance in predicting plant growth status, and the regression prediction of the model root mean square error (RMSE) was 1.536. Next, a new dataset was obtained by increasing the time interval of Arabidopsis images, and the model’s performance was verified at different time intervals. Finally, the model was applied to classify Arabidopsis organelles to verify the model’s generalizability. Research suggested that deep learning will broaden plant phenotype detection methods. Furthermore, this method will facilitate the design and development of a high-throughput information collection platform for plant phenotypes.
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