Metabolome Profiling and Predictive Modeling of Dark Green Leaf Trait in Bunching Onion Varieties.

IF 3.4 3区 生物学 Q2 BIOCHEMISTRY & MOLECULAR BIOLOGY
Metabolites Pub Date : 2025-03-26 DOI:10.3390/metabo15040226
Tetsuya Nakajima, Mari Kobayashi, Masato Fuji, Kouei Fujii, Mostafa Abdelrahman, Yasumasa Matsuoka, Jun'ichi Mano, Muneo Sato, Masami Yokota Hirai, Naoki Yamauchi, Masayoshi Shigyo
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引用次数: 0

Abstract

Background: The dark green coloration of bunching onion leaf blades is a key determinant of market value, nutritional quality, and visual appeal. This trait is regulated by a complex network of pigment interactions, which not only determine coloration but also serve as critical indicators of plant growth dynamics and stress responses. This study aimed to elucidate the mechanisms regulating the dark green trait and develop a predictive model for accurately assessing pigment composition. These advancements enable the efficient selection of dark green varieties and facilitate the establishment of optimal growth environments through plant growth monitoring. Methods: Seven varieties and lines of heat-tolerant bunching onions were analyzed, including two commercial F1 cultivars, along with two purebred varieties and three F1 hybrid lines bred in Yamaguchi Prefecture. The analysis was conducted on visible spectral reflectance data (400-700 nm at 20 nm intervals) and pigment compounds (chlorophyll a, chlorophyll b and pheophytin a, lutein, and β-carotene), whereas primary and secondary metabolites were assessed by using widely targeted metabolomics. In addition, a random forest regression model was constructed by using spectral reflectance data and pigment compound contents. Results: Principal component analysis based on spectral reflectance data and the comparative profiling of 186 metabolites revealed characteristic metabolite accumulation associated with each green color pattern. The "green" group showed greater accumulation of sugars, the "gray green" group was characterized by the accumulation of phenolic compounds, and the "dark green" group exhibited accumulation of cyanidins. These metabolites are suggested to accumulate in response to environmental stress, and these differences are likely to influence green coloration traits. Furthermore, among the regression models for estimating pigment compound contents, the one for chlorophyll a content achieved high accuracy, with an R2 value of 0.88 in the test dataset and 0.78 in Leave-One-Out Cross-Validation, demonstrating its potential for practical application in trait evaluation. However, since the regression model developed in this study is based on data obtained from greenhouse conditions, it is necessary to incorporate field trial results and reconstruct the model to enhance its adaptability. Conclusions: This study revealed that cyanidin is involved in the characteristics of dark green varieties. Additionally, it was demonstrated that chlorophyll a can be predicted using visible spectral reflectance. These findings suggest the potential for developing markers for the dark green trait, selecting high-pigment-accumulating varieties, and facilitating the simple real-time diagnosis of plant growth conditions and stress status, thereby enabling the establishment of optimal environmental conditions. Future studies will aim to elucidate the genetic factors regulating pigment accumulation, facilitating the breeding of dark green varieties with enhanced coloration traits for summer cultivation.

葱花品种深绿色叶片性状的代谢组学分析及预测模型。
背景:洋葱叶片的深绿色是市场价值、营养质量和视觉吸引力的关键决定因素。这一性状受色素相互作用的复杂网络调控,色素相互作用不仅决定着植物的颜色,而且是植物生长动态和胁迫反应的关键指标。本研究旨在阐明深绿色性状的调控机制,并建立准确评估色素组成的预测模型。这些进展使深绿色品种的高效选择和通过植物生长监测建立最佳生长环境成为可能。方法:对7个耐热洋葱品种和系进行分析,包括2个商品F1品种、2个纯种品种和3个山口县的F1杂交种。利用可见光光谱反射数据(400-700 nm,间隔20 nm)和色素化合物(叶绿素a、叶绿素b和叶绿素a、叶黄素和β-胡萝卜素)进行分析,利用广泛靶向的代谢组学方法评估初级和次级代谢物。此外,利用光谱反射率数据和色素化合物含量构建随机森林回归模型。结果:基于光谱反射率数据的主成分分析和186种代谢物的比较分析揭示了每种绿色模式相关的特征性代谢物积累。“绿色”组糖积累较多,“灰绿色”组酚类化合物积累较多,“深绿色”组花青素积累较多。这些代谢物被认为是在环境胁迫下积累的,这些差异可能会影响绿色性状。此外,在色素化合物含量估算模型中,叶绿素a含量的回归模型具有较高的准确性,测试数据集的R2值为0.88,留一交叉验证的R2值为0.78,显示了其在性状评价中的实际应用潜力。然而,由于本研究建立的回归模型是基于温室条件下的数据,因此有必要结合田间试验结果对模型进行重构,以增强模型的适应性。结论:本研究揭示了花青素与深绿色品种的性状有关。此外,叶绿素a可以用可见光谱反射率来预测。这些发现提示了开发深绿色性状的标记物,选择高色素积累品种,促进植物生长条件和胁迫状态的简单实时诊断,从而建立最佳环境条件的潜力。今后的研究将致力于阐明色素积累的遗传因素,为选育夏栽培着色性状增强的深绿色品种提供依据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Metabolites
Metabolites Biochemistry, Genetics and Molecular Biology-Molecular Biology
CiteScore
5.70
自引率
7.30%
发文量
1070
审稿时长
17.17 days
期刊介绍: Metabolites (ISSN 2218-1989) is an international, peer-reviewed open access journal of metabolism and metabolomics. Metabolites publishes original research articles and review articles in all molecular aspects of metabolism relevant to the fields of metabolomics, metabolic biochemistry, computational and systems biology, biotechnology and medicine, with a particular focus on the biological roles of metabolites and small molecule biomarkers. Metabolites encourages scientists to publish their experimental and theoretical results in as much detail as possible. Therefore, there is no restriction on article length. Sufficient experimental details must be provided to enable the results to be accurately reproduced. Electronic material representing additional figures, materials and methods explanation, or supporting results and evidence can be submitted with the main manuscript as supplementary material.
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