Statistical discrimination using different machine learning models reveals dissimilar key compounds of soybean leaves in targeted polyphenol-metric metabolomics in terms of traits and cultivation

被引:3
作者
Rha, Chan-Su [1 ]
Jang, Eun Kyu [2 ]
Lee, Jong Suk [3 ]
Kim, Ji-Sung [1 ]
Ko, Min-Ji [4 ]
Lim, Sol [4 ]
Park, Gun Hwan [2 ]
Kim, Dae-Ok [4 ]
机构
[1] AMOREPACIF Res & Innovat Ctr, Yongin 17074, South Korea
[2] Gyeonggi do Agr Res & Extens Serv, Hwaseong 18388, South Korea
[3] Gyeonggido Business & Sci Accelerator, Biocenter, Suwon 16629, South Korea
[4] Kyung Hee Univ, Dept Food Sci & Biotechnol, Yongin 17104, South Korea
关键词
Chemometrics; Polyphenol; Machine learning; Multivariate analysis; Soybean leaf; Targeted metabolomics; SOY LEAF; ISOFLAVONES; ACCUMULATION; ANTIOXIDANT; GLYCOSIDES; EXTRACT;
D O I
10.1016/j.foodchem.2022.134454
中图分类号
O69 [应用化学];
学科分类号
081704 ;
摘要
Soybean (SB) leaves (SLs) contain diverse flavonoids with health-promoting properties. To investigate the chemical constituents of SB and their correlations across phenotypes, growing periods, and environmental factors, a validated separation method for mass detection was used with targeted metabolomics. Thirty-six polyphenols (1 coumestrol, 5 flavones, 18 flavonols, and 12 isoflavones) were identified in SLs, 31 of which were quantified. Machine learning (ML) modelling was used to differentiate between the variety, bean color, growing period, and cultivation area and identify the key compounds responsible for these differences. The isoflavone and flavonol profiles were influenced by the growing period and cultivation area based on bootstrap forest modelling. The neural model showed the best predictive capacity for SL differences among the various ML models. Discriminant polyphenols can differ depending on the ML method applied; therefore, a cautious approach should be ensured when using statistical ML outputs, including orthogonal partial least squares discriminant analysis.
引用
收藏
页数:11
相关论文
共 40 条
[1]   Application of Targeted Metabolomics to Investigate Optimum Growing Conditions to Enhance Bioactive Content of Strawberry [J].
Akhatou, Ikram ;
Sayago, Ana ;
Gonzalez-Dominguez, Raul ;
Fernandez-Recamales, Angeles .
JOURNAL OF AGRICULTURAL AND FOOD CHEMISTRY, 2017, 65 (43) :9559-9567
[2]   To target or not to target? Definitions and nomenclature for targeted versus non-targeted analytical food authentication [J].
Ballin, Nicolai Zederkopff ;
Laursen, Kristian Hoist .
TRENDS IN FOOD SCIENCE & TECHNOLOGY, 2019, 86 :537-543
[3]   Soya agricultural waste as a rich source of isoflavones [J].
Carneiro, Ariadne Magalhaes ;
Moreira, Eduarda Antunes ;
Bragagnolo, Felipe Sanchez ;
Borges, Maiara Stefanini ;
Pilon, Alan Cesar ;
Rinaldo, Daniel ;
Funari, Cristiano Soleo .
FOOD RESEARCH INTERNATIONAL, 2020, 130 (130)
[4]   Biochemical markers of bone metabolism: An overview [J].
Christenson, RH .
CLINICAL BIOCHEMISTRY, 1997, 30 (08) :573-593
[5]   Assessment of Genetically Modified Soybean in Relation to Natural Variation in the Soybean Seed Metabolome [J].
Clarke, Joseph D. ;
Alexander, Danny C. ;
Ward, Dennis P. ;
Ryals, John A. ;
Mitchell, Matthew W. ;
Wulff, Jacob E. ;
Guo, Lining .
SCIENTIFIC REPORTS, 2013, 3
[6]   Isoflavonoid biosynthesis and accumulation in developing soybean seeds [J].
Dhaubhadel, S ;
McGarvey, BD ;
Williams, R ;
Gijzen, M .
PLANT MOLECULAR BIOLOGY, 2003, 53 (06) :733-743
[7]   Phenolic compounds and multivariate analysis of antiradical properties of red fruits [J].
Gramza-Michalowska, Anna ;
Bueschke, Marzena ;
Kulczynski, Bartosz ;
Gliszczynska-Swiglo, Anna ;
Kmiecik, Dominik ;
Bilska, Agnieszka ;
Purlan, Malgorzata ;
Walesa, Lucyna ;
Ostrowski, Michal ;
Filipczuk, Magdalena ;
Jedrusek-Golinska, Anna .
JOURNAL OF FOOD MEASUREMENT AND CHARACTERIZATION, 2019, 13 (03) :1739-1747
[8]   Use of principal component analysis (PCA) and hierarchical cluster analysis (HCA) for multivariate association between bioactive compounds and functional properties in foods: A critical perspective [J].
Granato, Daniel ;
Santos, Janio S. ;
Escher, Graziela B. ;
Ferreira, Bruno L. ;
Maggio, Ruben M. .
TRENDS IN FOOD SCIENCE & TECHNOLOGY, 2018, 72 :83-90
[9]   Soy leaf lowers the ratio of non-HDL to HDL cholesterol in hamsters [J].
Ho, HM ;
Leung, LK ;
Chan, FL ;
Huang, Y ;
Chen, ZY .
JOURNAL OF AGRICULTURAL AND FOOD CHEMISTRY, 2003, 51 (16) :4554-4558
[10]   Metabolite changes in nine different soybean varieties grown under field and greenhouse conditions [J].
John, K. M. Maria ;
Natarajan, Savithiry ;
Luthria, Devanand L. .
FOOD CHEMISTRY, 2016, 211 :347-355