School of Chemical Engineering, Advanced Nanomaterials Structures and Applications Laboratories, College of Engineering and Physical Sciences, University of Birmingham, Edgbaston, Birmingham, B15 2TT, UK.
Birmingham Institute of Forest Research, University of Birmingham, Edgbaston, Birmingham, B15 2TT, UK.
Soft Matter. 2024 Jan 31;20(5):959-970. doi: 10.1039/d3sm01392h.
Oak powdery mildew, caused by the biotrophic fungus , is a prevalent disease affecting oak trees, such as English oak (). While mature oak populations are generally less susceptible to this disease, it can endanger young oak seedlings and new leaves on mature trees. Although disruptions of photosynthate and carbohydrate translocation have been observed, accurately detecting and understanding the specific biomolecular interactions between the fungus and the leaves of oak trees is currently lacking. Herein, hybrid Raman spectroscopy combined with an advanced artificial neural network algorithm, the underpinning biomolecular interactions between biological soft matter, , leaves and , are investigated and profiled, generating a spectral library and shedding light on the changes induced by fungal infection and the tree's defence response. The adaxial surfaces of oak leaves are categorised based on either the presence or absence of mildew and further distinguishing between covered or not covered infected leaf tissues, yielding three disease classes including healthy controls, non-mildew covered and mildew-covered. By analysing spectral changes between each disease category per tissue type, we identified important biomolecular interactions including disruption of chlorophyll in the non-vein and venule tissues, pathogen-induced degradation of cellulose and pectin and tree-initiated lignification of cell walls in response, amongst others, in lateral vein and mid-vein tissues. our developed computational algorithm, the underlying biomolecular differences between classes were identified and allowed accurate and rapid classification of disease with high accuracy of 69.6% for non-vein, 73.5% for venule, 82.1% for lateral vein and 85.6% for mid-vein tissues. Interfacial wetting differences between non-mildew covered and mildew-covered tissue were further analysed on the surfaces of non-vein and venule tissue. The overall results demonstrated the ability of Raman spectroscopy, combined with advanced AI, to act as a powerful and specific tool to probe foliar interactions between forest pathogens and host trees with the simultaneous potential to probe and catalogue molecular interactions between biological soft matter, paving the way for exploring similar relations in broader forest tree-pathogen systems.
橡树叶粉病由专性寄生真菌引起,是一种普遍影响橡树的疾病,如英国栎()。虽然成熟的橡树群体通常较少受到这种疾病的影响,但它可能危及年轻的橡树幼苗和成熟树上的新叶子。尽管已经观察到光合作用产物和碳水化合物转运的中断,但目前还缺乏准确检测和理解真菌与橡树叶片之间特定生物分子相互作用的方法。在此,结合先进的人工神经网络算法,我们使用混合拉曼光谱技术研究并描绘了生物软物质、、橡树叶片之间的生物分子相互作用,生成了一个光谱库,并阐明了由真菌感染和树木防御反应引起的变化。根据叶面上是否有粉病,将橡树叶的腹面分为有粉病和无粉病两类,进一步区分有粉病覆盖和无粉病覆盖的感染叶组织,从而产生了包括健康对照、无粉病覆盖和粉病覆盖在内的三个疾病类别。通过分析每种组织类型每个疾病类别的光谱变化,我们确定了重要的生物分子相互作用,包括非叶脉和小静脉组织中叶绿素的破坏、纤维素和果胶的病原体诱导降解以及细胞壁的树木起始木质化反应等,在侧脉和中脉组织中尤为明显。通过我们开发的计算算法,确定了类别之间的潜在生物分子差异,并实现了对疾病的准确和快速分类,非叶脉组织的分类准确率为 69.6%,小静脉组织为 73.5%,侧脉组织为 82.1%,中脉组织为 85.6%。进一步分析了非叶脉和小静脉组织表面无粉病覆盖和粉病覆盖组织之间的界面润湿性差异。总体结果表明,拉曼光谱结合先进的人工智能可以作为一种强大而特定的工具,用于探测森林病原体与宿主树木之间的叶片相互作用,同时具有探测和编目生物软物质之间分子相互作用的潜力,为探索更广泛的森林树木-病原体系统中的类似关系铺平了道路。