Zhong Fanyi, Xu Mengyang, Bruno Richard S, Ballard Kevin D, Zhu Jiangjiang
1 Department of Chemistry and Biochemistry, Miami University, Oxford, OH 45056, USA.
2 Human Nutrition Program, The Ohio State University, Columbus, OH 43210, USA.
Exp Biol Med (Maywood). 2017 Apr;242(7):773-780. doi: 10.1177/1535370217694098. Epub 2017 Jan 1.
Both obesity and the metabolic syndrome are risk factors for type 2 diabetes and cardiovascular disease. Identification of novel biomarkers are needed to distinguish metabolic syndrome from equally obese individuals in order to direct them to early interventions that reduce their risk of developing further health problems. We utilized mass spectrometry-based targeted metabolic profiling of 221 metabolites to evaluate the associations between metabolite profiles and established metabolic syndrome criteria (i.e. elevated waist circumference, hypertension, elevated fasting glucose, elevated triglycerides, and low high-density lipoprotein cholesterol) in plasma samples from obese men ( n = 29; BMI = 35.5 ± 5.2 kg/m) and women ( n = 40; 34.9 ± 6.7 kg/m), of which 26 met the criteria for metabolic syndrome (17 men and 9 women). Compared to obese individuals without metabolic syndrome, univariate statistical analysis and partial least squares discriminant analysis showed that a specific group of metabolites from multiple metabolic pathways (i.e. purine metabolism, valine, leucine and isoleucine degradation, and tryptophan metabolism) were associated with the presence of metabolic syndrome. Receiver operating characteristic curves generated based on the PLS-DA models showed excellent areas under the curve (0.85 and 0.96, for metabolites only model and enhanced metabolites model, respectively), high specificities (0.86 and 0.93), and good sensitivities (0.71 and 0.91). Moreover, principal component analysis revealed that metabolic profiles can be used to further differentiate metabolic syndrome with 3 versus 4-5 metabolic syndrome criteria. Collectively, these findings support targeted metabolomics approaches to distinguish metabolic syndrome from obesity alone, and to stratify metabolic syndrome status based on the number of criteria met. Impact statement We utilized mass spectrometry-based targeted metabolic profiling of 221 metabolites to evaluate the associations between metabolite profiles and established MetS criteria. To our best knowledge, the findings of this study provide the first evidence that metabolic profiles can be used to differentiate participants with MetS from similarly obese individuals who do not meet established criteria of MetS. Furthermore, the study demonstrated that within MetS participants, their unique metabolic profiles correlated to the number of criteria used for MetS determination. Taken together, this metabolic profiling approach can potentially serve as a novel tool for MetS detection and monitoring, and provide useful metabolic information for future interventions targeting obesity and MetS.
肥胖和代谢综合征都是2型糖尿病和心血管疾病的危险因素。需要识别新的生物标志物,以区分代谢综合征患者与同样肥胖的个体,从而指导他们进行早期干预,降低其出现进一步健康问题的风险。我们利用基于质谱的靶向代谢谱分析对221种代谢物进行分析,以评估肥胖男性(n = 29;BMI = 35.5±5.2kg/m²)和女性(n = 40;34.9±6.7kg/m²)血浆样本中代谢物谱与既定代谢综合征标准(即腰围增加、高血压、空腹血糖升高、甘油三酯升高和高密度脂蛋白胆固醇降低)之间的关联,其中26人符合代谢综合征标准(17名男性和9名女性)。与无代谢综合征的肥胖个体相比,单变量统计分析和偏最小二乘判别分析表明,来自多个代谢途径(即嘌呤代谢、缬氨酸、亮氨酸和异亮氨酸降解以及色氨酸代谢)的一组特定代谢物与代谢综合征的存在有关。基于PLS-DA模型生成的受试者工作特征曲线显示出优异的曲线下面积(仅代谢物模型和增强代谢物模型分别为0.85和0.96)、高特异性(0.86和0.93)和良好的敏感性(0.71和0.91)。此外,主成分分析表明,代谢谱可用于进一步区分符合3项与4 - 5项代谢综合征标准的代谢综合征患者。总体而言,这些发现支持靶向代谢组学方法,以单独区分代谢综合征与肥胖,并根据符合的标准数量对代谢综合征状态进行分层。影响声明我们利用基于质谱的靶向代谢谱分析对221种代谢物进行分析,以评估代谢物谱与既定代谢综合征标准之间的关联。据我们所知,本研究结果首次证明代谢谱可用于区分患有代谢综合征的参与者与未符合既定代谢综合征标准的同样肥胖的个体。此外,该研究表明,在代谢综合征参与者中,他们独特的代谢谱与用于确定代谢综合征的标准数量相关。综上所述,这种代谢谱分析方法有可能成为代谢综合征检测和监测的新工具,并为未来针对肥胖和代谢综合征的干预提供有用的代谢信息。