Exploratory and discriminant analysis of plant phenolic profiles obtained by UV-vis scanning spectroscopy.

IF 1.5 Q3 MATHEMATICAL & COMPUTATIONAL BIOLOGY
Monique Souza, Jucinei José Comin, Rodolfo Moresco, Marcelo Maraschin, Claudinei Kurtz, Paulo Emílio Lovato, Cledimar Rogério Lourenzi, Fernanda Kokowicz Pilatti, Arcângelo Loss, Shirley Kuhnen
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Abstract

Some species of cover crops produce phenolic compounds with allelopathic potential. The use of math, statistical and computational tools to analyze data obtained with spectrophotometry can assist in the chemical profile discrimination to choose which species and cultivation are the best for weed management purposes. The aim of this study was to perform exploratory and discriminant analysis using R package specmine on the phenolic profile of Secale cereale L., Avena strigosa L. and Raphanus sativus L. shoots obtained by UV-vis scanning spectrophotometry. Plants were collected at 60, 80 and 100 days after sowing and at 15 and 30 days after rolling in experiment in Brazil. Exploratory and discriminant analysis, namely principal component analysis, hierarchical clustering analysis, t-test, fold-change, analysis of variance and supervised machine learning analysis were performed. Results showed a stronger tendency to cluster phenolic profiles according to plant species rather than crop management system, period of sampling or plant phenologic stage. PCA analysis showed a strong distinction of S. cereale L. and A. strigosa L. 30 days after rolling. Due to the fast analysis and friendly use, the R package specmine can be recommended as a supporting tool to exploratory and discriminatory analysis of multivariate data.

Abstract Image

Abstract Image

Abstract Image

对紫外-可见扫描光谱法获得的植物酚谱进行探索和判别分析。
某些种类的覆盖作物会产生具有等位潜力的酚类化合物。使用数学、统计和计算工具分析分光光度法获得的数据,有助于对化学特征进行判别,从而选择最适合杂草管理的品种和种植方式。本研究的目的是使用 R 软件包 specmine,对紫外可见扫描分光光度法获得的山苍子(Secale cereale L.)、燕麦(Avena strigosa L.)和油菜(Raphanus sativus L.)嫩枝的酚类特征进行探索性分析和判别分析。在巴西的实验中,分别在播种后 60 天、80 天和 100 天,以及滚动后 15 天和 30 天采集植物。进行了探索性分析和判别分析,即主成分分析、层次聚类分析、t 检验、折变分析、方差分析和监督机器学习分析。结果表明,根据植物种类而不是作物管理系统、采样时期或植物物候期对酚类特征进行聚类的趋势更强。PCA 分析表明,轧制 30 天后的 S. cereale L. 和 A. strigosa L. 有很强的区别。由于 R 软件包 specmine 分析速度快、使用方便,建议将其作为多变量数据探索性和鉴别性分析的辅助工具。
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来源期刊
Journal of Integrative Bioinformatics
Journal of Integrative Bioinformatics Medicine-Medicine (all)
CiteScore
3.10
自引率
5.30%
发文量
27
审稿时长
12 weeks
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