Zhou Yibo, Wang Xiaohui, Chen Keming, Han Chaoyue, Guan Hongpu, Wang Yan, Zhao Yanru
College of Mechanical and Electronic Engineering, Northwest A & F University, Yangling, Shaanxi 712100, China.
College of Plant Protection, Northwest A & F University, Yangling, Shaanxi 712100, China.
Spectrochim Acta A Mol Biomol Spectrosc. 2025 Feb 15;327:125308. doi: 10.1016/j.saa.2024.125308. Epub 2024 Oct 22.
Apple Valsa canker (AVC) caused by the Ascomycete Valsa mali, seriously constrains the production and quality of apple fruits. The symptomless incubation characteristics of Valsa mali make it highly challenging to detect AVC at an early infection stage. After infecting the wound of apple bark, the pathogenic hyphae of AVC will expand and colonize the phloem tissue. Meanwhile, various enzymes and toxic substances released by hyphae cause the decomposition of cellulose and lignin, and the generation of poisonous secondary metabolites in bark tissue. However, these early symptoms of AVC are invisible from the bark's appearance. Fortunately, Terahertz Spectral Imaging (ThzSI) technology with the advantage of penetrating, and fingerprinting is promising for detecting hidden or slight symptoms of the fungal infection. This study is a preliminary investigation of terahertz frequency-domain spectra for AVC in the early stage of infection. Healthy and two-week-infected apple tree branches were prepared for capturing ThzS images, and the spectral data were preprocessed by Multivariate scattering correction (MSC), Savitzky-Golay convolution smoothing (SG), and standard normal variate (SNV) respectively to remove data noise and improve data quality. Principal component analysis (PCA), competitive adaptive reweighted sampling (CARS), and random frog (RFROG) were employed to extract the spectral feature bands to eliminate redundant data and improve computational efficiency. Machine learning models were established based on the spectral features to detect AVC at an early infection stage, where 11 of them exhibited the best performance with F1-score of 99.72%. To further explore disease information in spatial spectra, imaging data were acquired using terahertz imaging technology. Based on imaging data, pseudo-color imaging, histogram equalization, and Otsu segmentation were employed to visualize early infection areas in apple barks. Furthermore, histogram feature (HF), shape feature (SF), and local binary pattern (LBP) extracted from terahertz spectral images were utilized to establish the SVM, RF, and KNN models. HF-SF-KNN and HF-SF-LBP-KNN with the best performance achieved F1-score of 98.82%. This study presents a preliminary application of terahertz spectral and imaging technology for early-stage AVC detection and demonstrates its feasibility. Additionally, it provides a new way to detect AVC, which expands the application of ThzSI technology in tree disease detection in orchards and lays the foundation for further research.
由子囊菌苹果黑腐皮壳菌引起的苹果轮纹病,严重制约了苹果果实的产量和品质。苹果黑腐皮壳菌无症状潜伏的特性使得在感染早期检测苹果轮纹病极具挑战性。感染苹果树皮伤口后,苹果轮纹病的致病菌丝会扩展并在韧皮部组织中定殖。同时,菌丝释放的各种酶和有毒物质会导致纤维素和木质素分解,并在树皮组织中产生有毒的次生代谢产物。然而,苹果轮纹病的这些早期症状从树皮外观上是看不见的。幸运的是,具有穿透和指纹识别优势的太赫兹光谱成像(ThzSI)技术有望检测出真菌感染的隐藏或轻微症状。本研究是对苹果轮纹病感染早期太赫兹频域光谱的初步研究。准备了健康的和感染两周的苹果树枝条用于采集太赫兹光谱图像,光谱数据分别通过多元散射校正(MSC)、Savitzky-Golay卷积平滑(SG)和标准正态变量变换(SNV)进行预处理,以去除数据噪声并提高数据质量。采用主成分分析(PCA)、竞争性自适应重加权采样(CARS)和随机蛙跳(RFROG)提取光谱特征波段,以消除冗余数据并提高计算效率。基于光谱特征建立机器学习模型,用于在感染早期检测苹果轮纹病,其中11个模型表现最佳,F1分数为99.72%。为了进一步探索空间光谱中的病害信息,使用太赫兹成像技术采集成像数据。基于成像数据,采用伪彩色成像、直方图均衡化和大津分割来可视化苹果树皮中的早期感染区域。此外,从太赫兹光谱图像中提取的直方图特征(HF)、形状特征(SF)和局部二值模式(LBP)被用于建立支持向量机(SVM)、随机森林(RF)和K近邻(KNN)模型。性能最佳的HF-SF-KNN和HF-SF-LBP-KNN的F1分数达到了98.82%。本研究展示了太赫兹光谱和成像技术在苹果轮纹病早期检测中的初步应用,并证明了其可行性。此外,它为检测苹果轮纹病提供了一种新方法,扩展了太赫兹光谱成像技术在果园树木病害检测中的应用,并为进一步研究奠定了基础。