Literature DB >> 31000221

Highly geographical specificity of metabolomic traits among Korean domestic soybeans (Glycine max).

Eun Mi Lee1, Soo Jin Park1, Jung-Eun Lee1, Bo Mi Lee1, Byeung Kon Shin2, Dong Jin Kang2, Hyung-Kyoon Choi3, Young-Suk Kim4, Do Yup Lee5.   

Abstract

Classification and characterization of agricultural products at molecular levels are important but often impractical with genotyping, particularly for soybeans that have numerous types of variety and landraces. Alternatively, metabolic signature, a determinant for nutritional value, can be the good molecular indicator, which reflects cultivation region-dependent factors such as climate and soil. Accordingly, we analyzed the integrative metabolic profiles of Korean soybeans cultivated in 7 different provinces (representative production areas), and explored the potential association with geographic traits. A total of 210 primary and secondary metabolites were profiled using gas-chromatography time-of-flight mass spectrometry (GC-TOF MS) and liquid-chromatography Orbitrap mass spectrometry (LC-Orbitrap MS). Despite the partial heterogeneity of the soybean varieties, the metabolomic phenotypic analysis based on multivariate statistics inferred the chemical compositional characteristics was primarily governed by the regional specificity. The OPLS-DA model proposed biomarker cluster re-composed with 5 metabolites (tryptophan, malonylgenistin, malonyldaidzin, N-acetylornithine, and allysine) (AUCs = 0.870-1.0). The most distinctive metabolic profiles were identified with the soybeans of Gunsan (middle-western coast) and Daegu (east-southern inland area), which were best characterized by the highest contents of isoflavones and amino acids, respectively. Further interrogation on geographic data suggested the combinatorial association of region-specific metabolic features with general soil texture and climate traits (total rainfall and average annual temperature).
Copyright © 2019. Published by Elsevier Ltd.

Entities:  

Keywords:  Geography-discriminant metabolic signature; Glycine max; Primary metabolites; Secondary metabolites; Soil texture

Year:  2019        PMID: 31000221     DOI: 10.1016/j.foodres.2019.02.021

Source DB:  PubMed          Journal:  Food Res Int        ISSN: 0963-9969            Impact factor:   6.475


  8 in total

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Journal:  Gut Microbes       Date:  2020-01-22

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4.  Discrimination of Cultivated Regions of Soybeans (Glycine max) Based on Multivariate Data Analysis of Volatile Metabolite Profiles.

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6.  Lactobacillus lactis and Pediococcus pentosaceus-driven reprogramming of gut microbiome and metabolome ameliorates the progression of non-alcoholic fatty liver disease.

Authors:  Jeong Seok Yu; Gi Soo Youn; Jieun Choi; Chang-Ho Kim; Byung Yong Kim; Seung-Jo Yang; Je Hee Lee; Tae-Sik Park; Byoung Kook Kim; Yeon Bee Kim; Seong Woon Roh; Byeong Hyun Min; Hee Jin Park; Sang Jun Yoon; Na Young Lee; Ye Rin Choi; Hyeong Seob Kim; Haripriya Gupta; Hotaik Sung; Sang Hak Han; Ki Tae Suk; Do Yup Lee
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7.  Metabolomic biomarkers in midtrimester maternal plasma can accurately predict the development of preeclampsia.

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Journal:  Sci Rep       Date:  2020-09-30       Impact factor: 4.379

8.  Supervised Statistical Learning Prediction of Soybean Varieties and Cultivation Sites Using Rapid UPLC-MS Separation, Method Validation, and Targeted Metabolomic Analysis of 31 Phenolic Compounds in the Leaves.

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  8 in total

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