UCD School of Agriculture and Food Science, Institute of Food and Health, University College Dublin, Belfield, Dublin 4, Ireland.
UCD Conway Institute of Biomolecular and Biomedical Research, University College Dublin, Dublin, Ireland.
Food Funct. 2023 Sep 19;14(18):8586-8596. doi: 10.1039/d2fo03988e.
It is well-established that consumption of cruciferous and brassica vegetables has a correlation with reduced rates of many negative health outcomes. There is an increased interest in identifying food intake biomarkers to address limitations related to self-reported dietary assessment. The study aims to identify biomarkers of broccoli intake using metabolomic approaches, examine the dose-response relationship, and predict the intake by multimarker panel. Eighteen volunteers consumed cooked broccoli in A-Diet Discovery study and fasting and postprandial urine samples were collected at 2, 4 and 24 hours. Subsequently the A-Diet Dose-response study was performed where volunteers consumed different portions of broccoli (49, 101 or 153 g) and urine samples were collected at the end of each intervention week. Urine samples were analysed by H-NMR and LC-MS. Multivariate data analysis and one-way ANOVA were performed to identify discriminating biomarkers. A panel of putative biomarkers was examined for its ability to predict intake through a multiMarker model. Multivariate analysis revealed discriminatory spectral regions between fasting and fed metabolic profiles. Subsequent time-series plots revealed multiple features increased in concentration following the consumption. Urinary -methyl cysteine sulfoxide (SMCSO) increased as broccoli intake increased (0.17-0.24 μM per mOSM per kg, < 0.001). Similarly from LC-MS data genipin, dihydro-β-tubaic acid and sinapic acid increased with increasing portions of intake. A panel of 8 features displayed good ability to predict intake from biomarker data only. In conclusion, urinary SMCSO and several LC-MS features appeared as potentially promising biomarkers of broccoli consumption and demonstrated dose-response relationship. Future work should focus on validating these compounds as food intake biomarkers.
众所周知,食用十字花科和 Brassica 类蔬菜与许多负面健康结果的发生率降低有关。人们越来越感兴趣的是确定食物摄入生物标志物,以解决与自我报告的饮食评估相关的局限性。本研究旨在使用代谢组学方法鉴定西兰花摄入量的生物标志物,检验剂量-反应关系,并通过多标志物面板预测摄入量。18 名志愿者在 A-Diet Discovery 研究中食用煮熟的西兰花,并在 2、4 和 24 小时采集空腹和餐后尿样。随后进行了 A-Diet Dose-response 研究,志愿者食用不同量的西兰花(49、101 或 153 g),并在每个干预周结束时采集尿样。尿样通过 H-NMR 和 LC-MS 进行分析。采用多元数据分析和单因素方差分析来识别有区别的生物标志物。通过多标志物模型检验了一组假定的生物标志物预测摄入量的能力。多元分析显示空腹和进食代谢谱之间存在有区别的光谱区域。随后的时间序列图显示,在摄入后,多个特征的浓度增加。随着西兰花摄入量的增加,尿中 -甲基半胱氨酸亚砜(SMCSO)增加(每增加 1 毫渗摩尔每千克 0.17-0.24 μM, < 0.001)。同样,从 LC-MS 数据中,栀子苷、二氢-β-桐酸和芥子酸的含量随着摄入量的增加而增加。一组 8 个特征仅从生物标志物数据显示出良好的预测摄入量的能力。总之,尿中 SMCSO 和几种 LC-MS 特征似乎是西兰花摄入量的潜在有前途的生物标志物,并表现出剂量-反应关系。未来的工作应集中于验证这些化合物作为食物摄入量生物标志物的有效性。