Metabolic and Genetic Markers Improve Prediction of Incident Type 2 Diabetes: A Nested Case-Control Study in Chinese.

Jia Liu, Lu Wang, Yun Qian, Qian Shen, Man Yang, Yunqiu Dong, Hai Chen, Zhijie Yang, Yaqi Liu, Xuan Cui, Hongxia Ma, Guangfu Jin
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引用次数: 3

Abstract

Context: It is essential to improve the current predictive ability for type 2 diabetes (T2D) risk.

Objective: We aimed to identify novel metabolic markers for future T2D in Chinese individuals of Han ethnicity and to determine whether the combined effect of metabolic and genetic markers improves the accuracy of prediction models containing clinical factors.

Methods: A nested case-control study containing 220 incident T2D patients and 220 age- and sex- matched controls from normoglycemic Chinese individuals of Han ethnicity was conducted within the Wuxi Non-Communicable Disease cohort with a 12-year follow-up. Metabolic profiling detection was performed by high-performance liquid chromatography‒mass spectrometry (HPLC-MS) by an untargeted strategy and 20 single nucleotide polymorphisms (SNPs) associated with T2D were genotyped using the Iplex Sequenom MassARRAY platform. Machine learning methods were used to identify metabolites associated with future T2D risk.

Results: We found that abnormal levels of 5 metabolites were associated with increased risk of future T2D: riboflavin, cnidioside A, 2-methoxy-5-(1H-1, 2, 4-triazol-5-yl)- 4-(trifluoromethyl) pyridine, 7-methylxanthine, and mestranol. The genetic risk score (GRS) based on 20 SNPs was significantly associated with T2D risk (OR = 1.35; 95% CI, 1.08-1.70 per SD). The area under the receiver operating characteristic curve (AUC) was greater for the model containing metabolites, GRS, and clinical traits than for the model containing clinical traits only (0.960 vs 0.798, P = 7.91 × 10-16).

Conclusion: In individuals with normal fasting glucose levels, abnormal levels of 5 metabolites were associated with future T2D. The combination of newly discovered metabolic markers and genetic markers could improve the prediction of incident T2D.

Abstract Image

Abstract Image

代谢和遗传标记提高2型糖尿病发病率预测:一项嵌套病例-对照研究。
背景:提高目前对2型糖尿病(T2D)风险的预测能力至关重要。目的:我们旨在鉴定中国汉族个体未来T2D的新代谢标志物,并确定代谢和遗传标志物的联合作用是否提高了包含临床因素的预测模型的准确性。方法:在无锡非传染性疾病队列中进行了一项巢式病例对照研究,其中包括220例T2D事件患者和220例年龄和性别匹配的正常血糖的汉族对照,随访12年。采用高效液相色谱-质谱(HPLC-MS)非靶向方法进行代谢谱检测,并使用Iplex Sequenom MassARRAY平台对与T2D相关的20个单核苷酸多态性(snp)进行基因分型。使用机器学习方法识别与未来T2D风险相关的代谢物。结果:我们发现5种代谢产物的异常水平与未来T2D的风险增加有关:核黄素、针叶苷A、2-甲氧基-5-(1h - 1,2,4 -三唑-5-基)- 4-(三氟甲基)吡啶、7-甲基黄嘌呤和美甲醇。基于20个snp的遗传风险评分(GRS)与T2D风险显著相关(OR = 1.35;95% CI, 1.08-1.70 / SD)。包含代谢物、GRS和临床特征的模型的受试者工作特征曲线下面积(AUC)大于仅包含临床特征的模型(0.960 vs 0.798, P = 7.91 × 10-16)。结论:在空腹血糖水平正常的个体中,5种代谢物的异常水平与未来的T2D有关。新发现的代谢标记物与遗传标记物的结合可以提高对T2D发生的预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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