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幼嫩、水分充足的鹰嘴豆植株的代谢谱可作为预测终末期干旱下种子数量的生物标志物。

The Metabolic Profile of Young, Watered Chickpea Plants Can Be Used as a Biomarker to Predict Seed Number under Terminal Drought.

作者信息

Purdy Sarah J, Fuentes David, Ramamoorthy Purushothaman, Nunn Christopher, Kaiser Brent N, Merchant Andrew

机构信息

New South Wales Department of Primary Industries, 4 Marsden Park Road, Calala, NSW 2340, Australia.

Charles Perkins Centre, Sydney Mass Spectrometry, The University of Sydney, John Hopkins Drive, Sydney, NSW 2000, Australia.

出版信息

Plants (Basel). 2023 May 30;12(11):2172. doi: 10.3390/plants12112172.

Abstract

Chickpea is the second-most-cultivated legume globally, with India and Australia being the two largest producers. In both of these locations, the crop is sown on residual summer soil moisture and left to grow on progressively depleting water content, finally maturing under terminal drought conditions. The metabolic profile of plants is commonly, correlatively associated with performance or stress responses, e.g., the accumulation of osmoprotective metabolites during cold stress. In animals and humans, metabolites are also prognostically used to predict the likelihood of an event (usually a disease) before it occurs, e.g., blood cholesterol and heart disease. We sought to discover metabolic biomarkers in chickpea that could be used to predict grain yield traits under terminal drought, from the leaf tissue of young, watered, healthy plants. The metabolic profile (GC-MS and enzyme assays) of field-grown chickpea leaves was analysed over two growing seasons, and then predictive modelling was applied to associate the most strongly correlated metabolites with the final seed number plant. Pinitol (negatively), sucrose (negatively) and GABA (positively) were significantly correlated with seed number in both years of study. The feature selection algorithm of the model selected a larger range of metabolites including carbohydrates, sugar alcohols and GABA. The correlation between the predicted seed number and actual seed number was R adj = 0.62, demonstrating that the metabolic profile could be used to predict a complex trait with a high degree of accuracy. A previously unknown association between D-pinitol and hundred-kernel weight was also discovered and may provide a single metabolic marker with which to predict large seeded chickpea varieties from new crosses. The use of metabolic biomarkers could be used by breeders to identify superior-performing genotypes before maturity is reached.

摘要

鹰嘴豆是全球种植面积第二大的豆类,印度和澳大利亚是两大生产国。在这两个地方,作物都利用夏季土壤残留水分播种,随着土壤含水量逐渐减少而生长,最终在终末期干旱条件下成熟。植物的代谢谱通常与性能或应激反应相关,例如在冷胁迫期间渗透保护代谢物的积累。在动物和人类中,代谢物也被用于预测事件(通常是疾病)发生前的可能性,例如血液胆固醇与心脏病。我们试图从浇水良好、健康的幼嫩植物叶片组织中发现鹰嘴豆的代谢生物标志物,以预测终末期干旱条件下的籽粒产量性状。在两个生长季节分析了田间种植的鹰嘴豆叶片的代谢谱(气相色谱-质谱联用仪和酶分析),然后应用预测模型将相关性最强的代谢物与单株最终种子数联系起来。在两年的研究中,肌醇(负相关)、蔗糖(负相关)和γ-氨基丁酸(正相关)与种子数显著相关。该模型的特征选择算法选择了更广泛的代谢物,包括碳水化合物、糖醇和γ-氨基丁酸。预测种子数与实际种子数之间的相关性为调整后R=0.62,表明代谢谱可用于高精度预测复杂性状。还发现了肌醇与百粒重之间以前未知的关联,这可能提供一个单一的代谢标记,用于从新杂交种中预测大粒鹰嘴豆品种。育种者可以在达到成熟之前利用代谢生物标志物来鉴定表现优异的基因型。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/297e/10255890/e9914203e4ad/plants-12-02172-g001.jpg

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