Gas chromatography/mass spectrometry-based metabolite profiling of coffee beans obtained from different altitudes and origins with various postharvest processing.

Fitri Amalia, Pingkan Aditiawati, Yusianto, Sastia Prama Putri, Eiichiro Fukusaki
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引用次数: 14

Abstract

Introduction: Coffee is a popular beverage because of its pleasant aroma and distinctive flavor. The flavor of coffee results from chemical transformations influenced by various intrinsic and extrinsic factors, including altitude, geographical origin, and postharvest processing. Despite is the importance of grading coffee quality, there is no report on the dominant factor that influences the metabolomic profile of green coffee beans and the correlated metabolites for each factor.

Objective: This study investigated the total metabolite profile of coffees from different altitudes and coffees subjected to different postharvest processing.

Method: Arabica green coffee beans obtained from different geographical origins and different altitudes (400 and 800 m) and produced by different postharvest processes (dry, honey, and washed process) were used in this study. Coffee samples obtained from altitudes of 400-1600 m above sea level from various origins that were produced by the washed method were used for further study with regard to altitudes. Samples were subjected to gas chromatography/mass spectrometry (GC/MS) analysis and visualized using principal component analysis (PCA) and orthogonal partial least squares (OPLS) regression analysis.

Results: The PCA results showed sample separation based on postharvest processing in PC1 and sample separation based on altitude in PC2. A clear separation between samples from different altitudes was observed if the samples were subjected to the same postharvest processing method, and the samples were of the same origin. Based on this result, OPLS analysis was conducted using coffee samples obtained from various altitudes with the same postharvest processing. An OPLS model using altitude as a response variable and 79 metabolites annotated from the GC/MS analysis as an explanatory variable was constructed with good R2 and Q2 values.

Conclusion: Postharvest processing was found to be the dominant factor affecting coffee metabolite composition; this was followed by geographical origin and altitude. The metabolites glutamic acid and galactinol were associated with the washed and honey process, while glycine, lysine, sorbose, fructose, glyceric acid, and glycolic acid were associated with the dry process. Two metabolites with high variable influence on projection scores in the OPLS model for altitude were inositol and serotonin, which showed positive and negative correlations, respectively. This is the first study to report characteristic coffee metabolites obtained from different altitudes.

采用气相色谱/质谱法对不同海拔和产地、采收后加工方式的咖啡豆进行代谢物分析。
咖啡是一种受欢迎的饮料,因为它的香气宜人,味道独特。咖啡的风味是受各种内在和外在因素影响的化学转化的结果,包括海拔、地理来源和采收后的加工。尽管分级咖啡质量很重要,但没有关于影响绿咖啡豆代谢组学特征的主要因素以及每个因素的相关代谢物的报道。目的:研究不同海拔地区咖啡和采收后不同加工方式咖啡的总代谢物分布。方法:本研究使用来自不同地理产地和不同海拔高度(400和800米)的阿拉比卡绿咖啡豆,采用不同采后工艺(干燥、蜂蜜和水洗工艺)生产。从海拔400-1600米的不同产地通过水洗法生产的咖啡样品被用于进一步研究海拔。样品进行气相色谱/质谱(GC/MS)分析,并使用主成分分析(PCA)和正交偏最小二乘(ops)回归分析进行可视化分析。结果:主成分分析结果显示PC1中基于采后处理的样品分离,PC2中基于海拔的样品分离。如果样品采用相同的采后处理方法,并且样品来源相同,则不同海拔地区的样品之间存在明显的分离。在此基础上,对采后加工方式相同的不同海拔地区的咖啡样品进行了ops分析。以海拔为响应变量,GC/MS分析注释的79种代谢物为解释变量,构建了具有良好R2和Q2值的ops模型。结论:采后加工是影响咖啡代谢物组成的主要因素;其次是地理来源和海拔。代谢物谷氨酸和半乳糖醇与水洗和蜂蜜工艺有关,而甘氨酸、赖氨酸、山梨糖、果糖、甘油酸和乙醇酸与干法工艺有关。在海拔ops模型中,对海拔投影评分影响较大的两种代谢物是肌醇和血清素,两者分别呈正相关和负相关。这是第一个报道不同海拔地区咖啡代谢产物特征的研究。
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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