Xing Dong, Wang Yulin, Sun Penghui, Huang Huahong, Lin Erpei
State Key Laboratory of Subtropical Silviculture, Zhejiang A&F University, Hangzhou, 311300, Zhejiang, China.
Plant Methods. 2023 Jul 3;19(1):66. doi: 10.1186/s13007-023-01044-8.
Cunninghamia lanceolata (Chinese fir), is one of the most important timber trees in China. With the global warming, to develop new resistant varieties to drought or heat stress has become an essential task for breeders of Chinese fir. However, classification and evaluation of growth status of Chinese fir under drought or heat stress are still labor-intensive and time-consuming.
In this study, we proposed a CNN-LSTM-att hybrid model for classification of growth status of Chinese fir seedlings under drought and heat stress, respectively. Two RGB image datasets of Chinese fir seedling under drought and heat stress were generated for the first time, and utilized in this study. By comparing four base CNN models with LSTM, the Resnet50-LSTM was identified as the best model in classification of growth status, and LSTM would dramatically improve the classification performance. Moreover, attention mechanism further enhanced performance of Resnet50-LSTM, which was verified by Grad-CAM. By applying the established Resnet50-LSTM-att model, the accuracy rate and recall rate of classification was up to 96.91% and 96.79% for dataset of heat stress, and 96.05% and 95.88% for dataset of drought, respectively. Accordingly, the R value and RMSE value for evaluation on growth status under heat stress were 0.957 and 0.067, respectively. And, the R value and RMSE value for evaluation on growth status under drought were 0.944 and 0.076, respectively.
In summary, our proposed model provides an important tool for stress phenotyping in Chinese fir, which will be a great help for selection and breeding new resistant varieties in future.
杉木是中国最重要的用材树种之一。随着全球变暖,培育耐旱或耐热的新抗性品种已成为杉木育种者的一项重要任务。然而,干旱或热胁迫下杉木生长状况的分类和评估仍然是一项劳动强度大且耗时的工作。
在本研究中,我们分别提出了一种CNN-LSTM-att混合模型,用于对干旱和热胁迫下杉木幼苗的生长状况进行分类。首次生成了干旱和热胁迫下杉木幼苗的两个RGB图像数据集,并在本研究中加以利用。通过将四个基础CNN模型与LSTM进行比较,确定Resnet50-LSTM是生长状况分类中的最佳模型,并且LSTM能显著提高分类性能。此外,注意力机制进一步提升了Resnet50-LSTM的性能,这通过Grad-CAM得到了验证。通过应用所建立的Resnet50-LSTM-att模型,热胁迫数据集的分类准确率和召回率分别达到96.91%和96.79%,干旱数据集的分类准确率和召回率分别达到96.05%和95.88%。相应地,热胁迫下生长状况评估的R值和RMSE值分别为0.957和0.067。并且,干旱下生长状况评估的R值和RMSE值分别为0.944和0.076。
总之,我们提出的模型为杉木的胁迫表型分析提供了一个重要工具,这将对未来抗性新品种的选育有很大帮助。