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利用血浆代谢组学的预测性 OPLS-DA 模型识别蔓越莓汁消费者,并在一项双盲、随机、安慰剂对照、交叉研究中验证蔓越莓汁摄入的生物标志物。

Identifying Cranberry Juice Consumers with Predictive OPLS-DA Models of Plasma Metabolome and Validation of Cranberry Juice Intake Biomarkers in a Double-Blinded, Randomized, Placebo-Controlled, Cross-Over Study.

机构信息

Food Science and Human Nutrition Department, Institute of Food and Agricultural Sciences, University of Florida, Gainesville, FL, 32611, USA.

Ocean Spray Cranberries, Inc., Lakeville-Middleboro, MA, 02349, USA.

出版信息

Mol Nutr Food Res. 2020 Jun;64(11):e1901242. doi: 10.1002/mnfr.201901242. Epub 2020 Apr 24.

Abstract

SCOPE

Methods to verify cranberry juice consumption are lacking. Predictive multivariate models built upon validated biomarkers may help to verify human consumption of a food using a nutrimetabolomics approach.

METHODS

A 21-day double-blinded, randomized, placebo-controlled, cross-over study was conducted among healthy young women aged 1829. Plasma was collected at baseline and after 3-day and 21-day consumption of cranberry or placebo juice. Plasma metabolome was analyzed using UHPLC coupled with high resolution mass spectrometry.

RESULTS

18 discriminant metabolites in positive mode and 18 discriminant metabolites in negative mode from a previous 3-day open-label study were re-discovered in the present blinded study. Predictive orthogonal partial least squares discriminant analysis (OPLS-DA) models were able to identify cranberry juice consumers over a placebo juice group with 96.9% correction rates after 3-day consumption in both positive and negative mode. This present study revealed 84 and 109 additional discriminant metabolites in positive and negative mode, respectively. Twelve of them were tentatively identified.

CONCLUSION

Cranberry juice consumers were classified with high correction rates using predictive OPLS-DA models built upon validated plasma biomarkers. Additional biomarkers were tentatively identified. These OPLS-DA models and biomarkers provided an objective approach to verify participant compliance in future clinical trials.

摘要

范围

缺乏验证蔓越莓汁消费的方法。基于经过验证的生物标志物构建的预测多元模型可能有助于通过营养代谢组学方法来验证人类对食物的消费。

方法

在健康的年轻女性(18-29 岁)中进行了为期 21 天的双盲、随机、安慰剂对照、交叉研究。在基线和 3 天和 21 天饮用蔓越莓或安慰剂果汁后采集血浆。使用 UHPLC 结合高分辨率质谱法分析血浆代谢组。

结果

在本次盲法研究中重新发现了来自先前 3 天开放标签研究的正模式下的 18 个判别代谢物和负模式下的 18 个判别代谢物。预测正交偏最小二乘判别分析(OPLS-DA)模型能够在 3 天的正、负模式下以 96.9%的校正率识别出蔓越莓汁消费者,而不是安慰剂汁组。本研究分别在正、负模式下发现了 84 个和 109 个额外的判别代谢物。其中 12 个被暂定识别。

结论

使用基于经过验证的血浆生物标志物构建的预测 OPLS-DA 模型,可以以高校正率对蔓越莓汁消费者进行分类。暂定鉴定了其他生物标志物。这些 OPLS-DA 模型和生物标志物为未来临床试验中验证参与者的依从性提供了一种客观方法。

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