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用于水果摄入量评估的生物标志物组学分析:巴西 ELSA 研究中的代谢组学分析。

Biomarker panels for fruit intake assessment: a metabolomics analysis in the ELSA-Brasil study.

机构信息

Department of Nutrition, Faculty of Public Health, University of São Paulo, São Paulo, SP, Brazil.

Department of Food Science and Experimental Nutrition, Faculty of Pharmaceutical Sciences, Food Research Center (FoRC), University of São Paulo, São Paulo, SP, Brazil.

出版信息

Metabolomics. 2024 Jul 29;20(4):88. doi: 10.1007/s11306-024-02145-8.

Abstract

INTRODUCTION

Food intake biomarkers are used to estimate dietary exposure; however, selecting a single biomarker to evaluate a specific dietary component is difficult due to the overlap of diverse compounds from different foods. Therefore, combining two or more biomarkers can increase the sensitivity and specificity of food intake estimates.

OBJECTIVE

This study aimed to evaluate the ability of metabolite panels to distinguish between self-reported fruit consumers and non-consumers among participants in the Longitudinal Study of Adult Health.

MATERIALS AND METHODS

A total of 93 healthy adults of both sexes were selected from the Longitudinal Study of Adult Health. A 24-h dietary recall was obtained using the computer-assisted 24-h food recall GloboDiet software, and 24-h urine samples were collected from each participant. Metabolites were identified in urine using liquid chromatography coupled with high-resolution mass spectrometry by comparing their exact mass and fragmentation patterns using free-access databases. Multivariate receiver operating characteristic curve (ROC) analysis and partial least squares discriminant analysis were used to verify the ability of the metabolite combination to classify daily and non-daily fruit consumers. Fruit intake was identified using a 24 h dietary recall (24 h-DR).

RESULTS

Bananas, grapes, and oranges are included in the summary. The panel of biomarkers exhibited an area under the curve (AUC) > 0.6 (Orange AUC = 0.665; Grape AUC = 0.622; Bananas AUC = 0.602; All fruits AUC = 0.679; Citrus AUC = 0.693) and variable importance projection score > 1.0, and these were useful for assessing the sensitivity and predictability of food intake in our population.

CONCLUSION

A panel of metabolites was able to classify self-reported fruit consumers with strong predictive power and high specificity and sensitivity values except for banana and total fruit intake.

摘要

简介

食物摄入量生物标志物用于估计膳食暴露;然而,由于来自不同食物的多种化合物的重叠,选择单一的生物标志物来评估特定的膳食成分是困难的。因此,结合两种或更多的生物标志物可以提高食物摄入量估计的灵敏度和特异性。

目的

本研究旨在评估代谢物谱在评估成人健康纵向研究参与者中自我报告的水果消费者与非消费者之间的能力。

材料和方法

从成人健康纵向研究中选择了总共 93 名健康的男女参与者。使用计算机辅助的 24 小时食物回忆 GloboDiet 软件获得 24 小时膳食回忆,从每个参与者收集 24 小时尿液样本。使用液相色谱-高分辨率质谱联用技术,通过比较其精确质量和碎片模式,在尿液中鉴定代谢物,并使用免费访问数据库。多变量接收器操作特性曲线(ROC)分析和偏最小二乘判别分析用于验证代谢物组合分类日常和非日常水果消费者的能力。使用 24 小时膳食回忆(24 h-DR)确定水果摄入量。

结果

总结包括香蕉、葡萄和橙子。该生物标志物谱表现出曲线下面积(AUC)>0.6(橙子 AUC=0.665;葡萄 AUC=0.622;香蕉 AUC=0.602;所有水果 AUC=0.679;柑橘 AUC=0.693)和变量重要性投影得分>1.0,这些对于评估我们人群中食物摄入的灵敏度和可预测性非常有用。

结论

除了香蕉和总水果摄入量外,一组代谢物能够分类自我报告的水果消费者,具有较强的预测能力和较高的灵敏度和特异性值。

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