基于代谢组-转录组整合的不同生境大豆分类

IF 2.3 3区 农林科学 Q3 FOOD SCIENCE & TECHNOLOGY Applied Biological Chemistry Pub Date : 2024-03-16 DOI:10.1186/s13765-024-00882-x
Jinghui Wang, Qiyou Zheng, Chenxu Wang, Ao Zhou
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引用次数: 0

摘要

大豆是中国的重要农产品,某些地理位置的大豆往往品质更高,因此价格也更贵。本研究采用非靶向液相色谱-质谱(LC-MS)和 Illumina 测序技术,对黑龙江省和辽宁省九个地区的大豆样品进行了代谢组学和转录组学分析。主要目的是设计一种有效且无偏见的方法来确定每个大豆品种的地理来源,以减少潜在的欺诈行为。通过多维和单维分析,成功鉴定了差异表达代谢物(DEMs)和差异表达基因(DEGs),并得出了具有统计学意义的结果。代谢组学和转录组学数据集的整合促进了相关网络模型的构建,该模型能够区分来自不同地理位置的大豆,从而识别出体现显著区别的重要生物标记物。为了验证这种方法在实际应用中的可行性,采用了偏最小二乘判别分析来区分来自九个地区的大豆样本。结果令人信服地证明了这种方法在准确定位大豆地理来源方面的适用性和可靠性。有别于以往的大豆溯源研究,本研究结合了代谢组学和转录组学数据的综合分析,从而揭示了能更精确地区分大豆性状的生物标记物,弥补了大豆溯源领域的关键研究空白。这种创新的双数据整合分析方法有望提高大豆溯源工具的准确性,并为未来的农产品识别研究奠定新的基础。
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Classification of soybeans from different habitats based on metabolomic–transcriptomic integration

Soybeans are a significant agricultural product in China, with certain geographical locations often yielding higher quality, and thus more expensive, soybean crops. In this study, metabolomics and transcriptomics analyses were conducted on soybean samples from nine regions in Heilongjiang and Liaoning Provinces using untargeted liquid chromatography–mass spectrometry (LC–MS) and Illumina sequencing technologies. The primary objective was to devise an effective and unbiased method for determining the geographical origin of each soybean variety to mitigate potential fraudulent practices. Through multidimensional and unidimensional analyses, successful identification of differentially expressed metabolites (DEMs) and differentially expressed genes (DEGs) was achieved, yielding statistically significant outcomes. Integration of the metabolomics and transcriptomics datasets facilitated the construction of a correlation network model capable of distinguishing soybeans originating from different geographical locations, leading to the identification of significant biomarkers exemplifying noteworthy distinctions. To validate the feasibility of this method in practical applications, partial least squares discriminant analysis was employed to differentiate soybean samples from the nine regions. The results convincingly showcased the applicability and reliability of this approach in accurately pinpointing the geographical origin of soybeans. Distinguishing itself from prior research in soybean traceability, this study incorporates an integrated analysis of metabolomics and transcriptomics data, thereby unveiling biomarkers that offer a more precise differentiation of soybean traits across distinct regions, thereby bridging a critical research gap within the soybean traceability domain. This innovative dual-data integration analysis methodology is poised to enhance the accuracy of soybean traceability tools and lay a new foundation for future agricultural product identification research.

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来源期刊
Applied Biological Chemistry
Applied Biological Chemistry Chemistry-Organic Chemistry
CiteScore
5.40
自引率
6.20%
发文量
70
审稿时长
20 weeks
期刊介绍: Applied Biological Chemistry aims to promote the interchange and dissemination of scientific data among researchers in the field of agricultural and biological chemistry. The journal covers biochemistry and molecular biology, medical and biomaterial science, food science, and environmental science as applied to multidisciplinary agriculture.
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