Guertin Kristin A, Moore Steven C, Sampson Joshua N, Huang Wen-Yi, Xiao Qian, Stolzenberg-Solomon Rachael Z, Sinha Rashmi, Cross Amanda J
From the Nutritional Epidemiology Branch (KAG, SCM, QX, RZS-S, RS, and AJC), the Biostatistics Branch (JNS), and the Occupational and Environmental Epidemiology Branch (W-YH), Division of Cancer Epidemiology and Genetics, National Cancer Institute, NIH, Department of Health and Human Services, Bethesda, MD.
Am J Clin Nutr. 2014 Jul;100(1):208-17. doi: 10.3945/ajcn.113.078758. Epub 2014 Apr 16.
Metabolomics is an emerging field with the potential to advance nutritional epidemiology; however, it has not yet been applied to large cohort studies.
Our first aim was to identify metabolites that are biomarkers of usual dietary intake. Second, among serum metabolites correlated with diet, we evaluated metabolite reproducibility and required sample sizes to determine the potential for metabolomics in epidemiologic studies.
Baseline serum from 502 participants in the Prostate, Lung, Colorectal, and Ovarian (PLCO) Cancer Screening Trial was analyzed by using ultra-high-performance liquid-phase chromatography with tandem mass spectrometry and gas chromatography-mass spectrometry. Usual intakes of 36 dietary groups were estimated by using a food-frequency questionnaire. Dietary biomarkers were identified by using partial Pearson's correlations with Bonferroni correction for multiple comparisons. Intraclass correlation coefficients (ICCs) between samples collected 1 y apart in a subset of 30 individuals were calculated to evaluate intraindividual metabolite variability.
We detected 412 known metabolites. Citrus, green vegetables, red meat, shellfish, fish, peanuts, rice, butter, coffee, beer, liquor, total alcohol, and multivitamins were each correlated with at least one metabolite (P < 1.093 × 10(-6); r = -0.312 to 0.398); in total, 39 dietary biomarkers were identified. Some correlations (citrus intake with stachydrine) replicated previous studies; others, such as peanuts and tryptophan betaine, were novel findings. Other strong associations included coffee (with trigonelline-N-methylnicotinate and quinate) and alcohol (with ethyl glucuronide). Intraindividual variability in metabolite levels (1-y ICCs) ranged from 0.27 to 0.89. Large, but attainable, sample sizes are required to detect associations between metabolites and disease in epidemiologic studies, further emphasizing the usefulness of metabolomics in nutritional epidemiology.
We identified dietary biomarkers by using metabolomics in an epidemiologic data set. Given the strength of the associations observed, we expect that some of these metabolites will be validated in future studies and later used as biomarkers in large cohorts to study diet-disease associations. The PLCO trial was registered at clinicaltrials.gov as NCT00002540.
代谢组学是一个新兴领域,有潜力推动营养流行病学的发展;然而,它尚未应用于大型队列研究。
我们的首要目标是识别作为日常饮食摄入量生物标志物的代谢物。其次,在与饮食相关的血清代谢物中,我们评估了代谢物的可重复性以及确定代谢组学在流行病学研究中的潜力所需的样本量。
采用超高效液相色谱串联质谱法和气相色谱 - 质谱法对前列腺、肺、结肠和卵巢(PLCO)癌症筛查试验中502名参与者的基线血清进行分析。通过食物频率问卷估计36个饮食组的日常摄入量。使用偏Pearson相关性并采用Bonferroni校正进行多重比较来识别饮食生物标志物。计算30名个体亚组中相隔1年采集的样本之间的组内相关系数(ICC),以评估个体内代谢物变异性。
我们检测到412种已知代谢物。柑橘、绿色蔬菜、红肉、贝类、鱼类、花生、大米、黄油、咖啡、啤酒、白酒、总酒精摄入量和多种维生素各自与至少一种代谢物相关(P < 1.093×10⁻⁶;r = -0.312至0.398);总共识别出39种饮食生物标志物。一些相关性(如柑橘摄入量与水苏碱)重复了先前的研究;其他的,如花生与色氨酸甜菜碱,则是新发现。其他强关联包括咖啡(与N - 甲基烟酸葫芦巴碱和奎尼酸)和酒精(与葡萄糖醛酸乙酯)。代谢物水平的个体内变异性(1年ICC)范围为0.27至0.89。在流行病学研究中检测代谢物与疾病之间的关联需要大量但可行的样本量,这进一步强调了代谢组学在营养流行病学中的实用性。
我们在一个流行病学数据集中使用代谢组学识别了饮食生物标志物。鉴于观察到的关联强度,我们预计其中一些代谢物将在未来研究中得到验证,并随后用作大型队列中的生物标志物以研究饮食与疾病的关联。PLCO试验在clinicaltrials.gov上注册为NCT00002540。