Macia Felicià Maviane, Possamai Tyrone, Dorne Marie-Annick, Lacombe Marie-Céline, Duchêne Eric, Merdinoglu Didier, Peeters Nemo, Rousseau David, Wiedemann-Merdinoglu Sabine
Laboratoire des Interactions Plantes Micro-organismes Environnement (LIPME), INRAE, CNRS, Université de Toulouse, Chem. de Borde Rouge, Castanet-Tolosan, France.
Université d'Angers, LARIS, INRAE, IRHS, Angers, France.
Plant Methods. 2024 Jun 13;20(1):90. doi: 10.1186/s13007-024-01220-4.
Downy mildew is a plant disease that affects all cultivated European grapevine varieties. The disease is caused by the oomycete Plasmopara viticola. The current strategy to control this threat relies on repeated applications of fungicides. The most eco-friendly and sustainable alternative solution would be to use bred-resistant varieties. During breeding programs, some wild Vitis species have been used as resistance sources to introduce resistance loci in Vitis vinifera varieties. To ensure the durability of resistance, resistant varieties are built on combinations of these loci, some of which are unfortunately already overcome by virulent pathogen strains. The development of a high-throughput machine learning phenotyping method is now essential for identifying new resistance loci.
Images of grapevine leaf discs infected with P. viticola were annotated with OIV 452-1 values, a standard scale, traditionally used by experts to assess resistance visually. This descriptor takes two variables into account the complete phenotype of the symptom: sporulation and necrosis. This annotated dataset was used to train neural networks. Various encoders were used to incorporate prior knowledge of the scale's ordinality. The best results were obtained with the Swin transformer encoder which achieved an accuracy of 81.7%. Finally, from a biological point of view, the model described the studied trait and identified differences between genotypes in agreement with human observers, with an accuracy of 97% but at a high-throughput 650% faster than that of humans.
This work provides a fast, full pipeline for image processing, including machine learning, to describe the symptoms of grapevine leaf discs infected with P. viticola using the OIV 452-1, a two-symptom standard scale that considers sporulation and necrosis. If symptoms are frequently assessed by visual observation, which is time-consuming, low-throughput, tedious, and expert dependent, the method developed sweeps away all these constraints. This method could be extended to other pathosystems studied on leaf discs where disease symptoms are scored with ordinal scales.
霜霉病是一种影响所有欧洲栽培葡萄品种的植物病害。该病害由卵菌葡萄生单轴霉引起。当前控制这一威胁的策略依赖于反复施用杀菌剂。最环保和可持续的替代解决方案是使用培育出的抗病品种。在育种计划中,一些野生葡萄品种已被用作抗性来源,以将抗性基因座引入酿酒葡萄品种中。为确保抗性的持久性,抗病品种基于这些基因座的组合构建,不幸的是,其中一些基因座已被毒性病原菌菌株克服。现在,开发一种高通量机器学习表型分析方法对于识别新的抗性基因座至关重要。
用国际葡萄与葡萄酒组织(OIV)452 - 1值对感染葡萄生单轴霉的葡萄叶片圆盘图像进行注释,这是一种标准量表,传统上由专家用于直观评估抗性。该描述符考虑了症状的两个变量:产孢和坏死,即症状的完整表型。这个注释数据集用于训练神经网络。使用了各种编码器来纳入量表序数的先验知识。使用Swin变压器编码器获得了最佳结果,其准确率达到81.7%。最后,从生物学角度来看,该模型描述了所研究的性状,并识别出与人类观察者一致的基因型之间的差异,准确率为97%,但高通量速度比人类快650%。
这项工作提供了一个快速、完整的图像处理流程,包括机器学习,以使用OIV 452 - 1描述感染葡萄生单轴霉的葡萄叶片圆盘的症状,OIV 452 - 1是一种考虑产孢和坏死的双症状标准量表。如果通过视觉观察频繁评估症状,这既耗时、通量低、繁琐又依赖专家,那么所开发的方法消除了所有这些限制。该方法可以扩展到其他在叶片圆盘上研究的病理系统,在这些系统中,疾病症状按序数量表评分。