Sharma Prakriti, Thilakarathna Imasha, Fennell Anne
Agronomy, Horticulture, and Plant Science, South Dakota State University, Brookings, SD, United States.
Front Plant Sci. 2024 Sep 19;15:1409821. doi: 10.3389/fpls.2024.1409821. eCollection 2024.
Rootstocks are gaining importance in viticulture as a strategy to combat abiotic challenges, as well as enhancing scion physiology. Photosynthetic parameters such as maximum rate of carboxylation of RuBP (V) and the maximum rate of electron transport driving RuBP regeneration (J) have been identified as ideal targets for potential influence by rootstock and breeding. However, leaf specific direct measurement of these photosynthetic parameters is time consuming, limiting the information scope and the number of individuals that can be screened. This study aims to overcome these limitations by employing hyperspectral imaging combined with artificial intelligence (AI) to predict these key photosynthetic traits at the canopy level. Hyperspectral imaging captures detailed optical properties across a broad range of wavelengths (400 to 1000 nm), enabling use of all wavelengths in a comprehensive analysis of the entire vine's photosynthetic performance (V and J). Artificial intelligence-based prediction models that blend the strength of deep learning and machine learning were developed using two growing seasons data measured post-solstice at 15 h, 14 h, 13 h and 12 h daylengths for 'Marquette' grafted to five commercial rootstocks and 'Marquette' grafted to 'Marquette'. Significant differences in photosynthetic efficiency (V and J) were noted for both direct and indirect measurements for the six rootstocks, indicating that rootstock genotype and daylength have a significant influence on scion photosynthesis. Evaluation of multiple feature-extraction algorithms indicated the proposed base model incorporating a 1D-Convolutional neural Network (CNN) had the best prediction performance with a R of 0.60 for V and J. Inclusion of weather and chlorophyll parameters slightly improved model performance for both photosynthetic parameters. Integrating AI with hyperspectral remote phenotyping provides potential for high-throughput whole vine assessment of photosynthetic performance and selection of rootstock genotypes that confer improved photosynthetic performance potential in the scion.
砧木在葡萄栽培中愈发重要,它是应对非生物胁迫以及改善接穗生理机能的一种策略。诸如核酮糖-1,5-二磷酸羧化最大速率(V)和驱动核酮糖-1,5-二磷酸再生的电子传递最大速率(J)等光合参数,已被确定为砧木和育种可能产生影响的理想目标。然而,对这些光合参数进行叶片特异性直接测量耗时较长,限制了可筛选的信息范围和个体数量。本研究旨在通过采用高光谱成像结合人工智能(AI)来克服这些限制,以便在冠层水平预测这些关键光合特性。高光谱成像可在广泛的波长范围(400至1000纳米)内捕捉详细的光学特性,从而能够在对整个葡萄树光合性能(V和J)的全面分析中使用所有波长。利用冬至后在15小时、14小时、13小时和12小时日长下测量的两个生长季数据,针对嫁接到五种商业砧木上的“马凯特”以及自根砧“马凯特”,开发了融合深度学习和机器学习优势的基于人工智能的预测模型。对于这六种砧木的直接和间接测量,光合效率(V和J)均存在显著差异,这表明砧木基因型和日长对接穗光合作用有显著影响。对多种特征提取算法的评估表明,所提出的包含一维卷积神经网络(CNN)的基础模型具有最佳预测性能,V和J的决定系数R均为0.60。纳入天气和叶绿素参数后,两种光合参数的模型性能略有改善。将人工智能与高光谱遥感表型分析相结合,为高通量全株葡萄光合性能评估以及选择能够赋予接穗更好光合性能潜力的砧木基因型提供了可能。