Fang Shiyan, Zhao Yanru, Wang Yan, Li Junmeng, Zhu Fengle, Yu Keqiang
College of Mechanical and Electronic Engineering, Northwest A&F University, Yangling, China.
Key Laboratory of Agricultural Internet of Things, Ministry of Agriculture and Rural Affairs, Yangling, China.
Front Plant Sci. 2022 Mar 4;13:802761. doi: 10.3389/fpls.2022.802761. eCollection 2022.
Apple Valsa canker (AVC) with early incubation characteristics is a severe apple tree disease, resulting in significant orchards yield loss. Early detection of the infected trees is critical to prevent the disease from rapidly developing. Surface-enhanced Raman Scattering (SERS) spectroscopy with simplifies detection procedures and improves detection efficiency is a potential method for AVC detection. In this study, AVC early infected detection was proposed by combining SERS spectroscopy with the chemometrics methods and machine learning algorithms, and chemical distribution imaging was successfully applied to the analysis of disease dynamics. Results showed that the samples of healthy, early disease, and late disease sample datasets demonstrated significant clustering effects. The adaptive iterative reweighted penalized least squares (air-PLS) algorithm was used as the best baseline correction method to eliminate the interference of baseline shifts. The BP-ANN, ELM, Random Forest, and LS-SVM machine learning algorithms incorporating optimal spectral variables were utilized to establish discriminative models to detect of the AVC disease stage. The accuracy of these models was above 90%. SERS chemical imaging results showed that cellulose and lignin were significantly reduced at the phloem disease-health junction under AVC stress. These results suggested that SERS spectroscopy combined with chemical imaging analysis for early detection of the AVC disease was feasible and promising. This study provided a practical method for the rapidly diagnosing of apple orchard diseases.
具有早期潜伏特征的苹果轮纹病是一种严重的苹果树病害,会导致果园产量大幅损失。早期检测受感染的树木对于防止病害迅速蔓延至关重要。表面增强拉曼散射(SERS)光谱法简化了检测程序并提高了检测效率,是一种用于检测苹果轮纹病的潜在方法。在本研究中,通过将SERS光谱法与化学计量学方法及机器学习算法相结合,提出了对苹果轮纹病早期感染的检测方法,并成功将化学分布图应用于病害动态分析。结果表明,健康、早期病害和晚期病害样本数据集的样本呈现出显著的聚类效应。采用自适应迭代重加权惩罚最小二乘法(air-PLS)算法作为最佳基线校正方法,以消除基线漂移的干扰。利用结合最佳光谱变量的BP-人工神经网络(BP-ANN)、极限学习机(ELM)、随机森林和最小二乘支持向量机(LS-SVM)机器学习算法建立判别模型,以检测苹果轮纹病的病害阶段。这些模型的准确率均在90%以上。SERS化学成像结果表明,在苹果轮纹病胁迫下,韧皮部病害-健康交界处的纤维素和木质素显著减少。这些结果表明,SERS光谱法结合化学成像分析用于苹果轮纹病的早期检测是可行且有前景的。本研究为苹果园病害的快速诊断提供了一种实用方法。