Council for Agricultural Research and Economics (CREA), Research Centre for Vegetable and Ornamental Crops, via Salaria 1, 63077, Monsampolo del Tronto, Italy.
Council for Agricultural Research and Economics (CREA), Research Centre for Vegetable and Ornamental Crops, via Cavalleggeri 25, 84098, Pontecagnano Faiano, Italy.
Sci Rep. 2022 Mar 24;12(1):5098. doi: 10.1038/s41598-022-08969-5.
Wild rocket (Diplotaxis tenuifolia, Brassicaceae) is a baby-leaf vegetable crop of high economic interest, used in ready-to-eat minimally processed salads, with an appreciated taste and nutraceutical features. Disease management is key to achieving the sustainability of the entire production chain in intensive systems, where synthetic fungicides are limited or not permitted. In this context, soil-borne pathologies, much feared by growers, are becoming a real emergency. Digital screening of green beds can be implemented in order to optimize the use of sustainable means. The current study used a high-resolution hyperspectral array (spectroscopy at 350-2500 nm) to attempt to follow the progression of symptoms of Rhizoctonia, Sclerotinia, and Sclerotium disease across four different severity levels. A Random Forest machine learning model reduced dimensions of the training big dataset allowing to compute de novo vegetation indices specifically informative about canopy decay caused by all basal pathogenic attacks. Their transferability was also tested on the canopy dataset, which was useful for assessing the health status of wild rocket plants. Indeed, the progression of symptoms associated with soil-borne pathogens is closely related to the reduction of leaf absorbance of the canopy in certain ranges of visible and shortwave infrared spectral regions sensitive to reduction of chlorophyll and other pigments as well as to modifications of water content and turgor.
野生火箭菜(Diplotaxis tenuifolia,十字花科)是一种具有高经济价值的婴儿叶类蔬菜,用于即食的低加工沙拉,口感鲜美,具有营养保健功能。在集约化系统中,疾病管理是实现整个生产链可持续性的关键,因为在这些系统中,合成杀菌剂的使用受到限制或不被允许。在这种情况下,土传病害令种植者非常担忧,正成为一个真正的紧急问题。可以通过绿色床的数字筛选来优化可持续手段的使用。本研究使用高分辨率高光谱阵列(350-2500nm 光谱)来尝试跟踪 Rhizoctonia、Sclerotinia 和 Sclerotium 病害的症状在四个不同严重程度下的进展。随机森林机器学习模型降低了训练大数据集的维度,从而可以计算出新的植被指数,这些指数专门针对所有基础致病性攻击引起的冠层衰减提供信息。还在冠层数据集上测试了它们的可转移性,这对于评估野生火箭菜植物的健康状况非常有用。实际上,与土传病原体相关的症状进展与叶片对冠层的可见光和短波红外光谱区域的吸收率降低密切相关,这些区域对叶绿素和其他色素的减少以及含水量和膨压的变化敏感。