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血清代谢组学鉴定高尿酸血症和痛风的失调途径和潜在代谢生物标志物。

Serum Metabolomics Identifies Dysregulated Pathways and Potential Metabolic Biomarkers for Hyperuricemia and Gout.

机构信息

ShanghaiTech University, Chinese Academy of Sciences Key Laboratory of Nutrition, Metabolism, and Food Safety, Shanghai Institute of Nutrition and Health, Chinese Academy of Sciences, Shanghai, China, and University of Chinese Academy of Sciences, Beijing, China.

Shandong Provincial Key Laboratory of Metabolic Diseases, Qingdao Key Laboratory of Gout, Affiliated Hospital of Qingdao University Medical College, and Institute of Metabolic Diseases, Qingdao University, Qingdao, China.

出版信息

Arthritis Rheumatol. 2021 Sep;73(9):1738-1748. doi: 10.1002/art.41733. Epub 2021 Aug 6.

Abstract

OBJECTIVE

To systematically profile metabolic alterations and dysregulated metabolic pathways in hyperuricemia and gout, and to identify potential metabolite biomarkers to discriminate gout from asymptomatic hyperuricemia.

METHODS

Serum samples from 330 participants, including 109 with gout, 102 with asymptomatic hyperuricemia, and 119 normouricemic controls, were analyzed by high-resolution mass spectrometry-based metabolomics. Multivariate principal components analysis and orthogonal partial least squares discriminant analysis were performed to explore differential metabolites and pathways. A multivariate methods with Unbiased Variable selection in R (MUVR) algorithm was performed to identify potential biomarkers and build multivariate diagnostic models using 3 machine learning algorithms: random forest, support vector machine, and logistic regression.

RESULTS

Univariate analysis demonstrated that there was a greater difference between the metabolic profiles of patients with gout and normouricemic controls than between the metabolic profiles of individuals with hyperuricemia and normouricemic controls, while gout and hyperuricemia showed clear metabolomic differences. Pathway enrichment analysis found diverse significantly dysregulated pathways in individuals with hyperuricemia and patients with gout compared to normouricemic controls, among which arginine metabolism appeared to play a critical role. The multivariate diagnostic model using MUVR found 13 metabolites as potential biomarkers to differentiate hyperuricemia and gout from normouricemia. Two-thirds of the samples were randomly selected as a training set, and the remainder were used as a validation set. Receiver operating characteristic analysis of 7 metabolites yielded an area under the curve of 0.83-0.87 in the training set and 0.78-0.84 in the validation set for distinguishing gout from asymptomatic hyperuricemia by 3 machine learning algorithms.

CONCLUSION

Gout and hyperuricemia have distinct serum metabolomic signatures. This diagnostic model has the potential to improve current gout care through early detection or prediction of progression to gout from hyperuricemia.

摘要

目的

系统分析高尿酸血症和痛风患者的代谢变化和失调代谢途径,并鉴定潜在的代谢物生物标志物以区分痛风和无症状高尿酸血症。

方法

采用基于高分辨质谱的代谢组学方法对 330 名参与者的血清样本进行分析,包括 109 例痛风患者、102 例无症状高尿酸血症患者和 119 名血尿酸正常对照者。采用多元主成分分析和正交偏最小二乘判别分析方法探讨差异代谢物和途径。采用无偏变量选择在 R 中的方法(MUVR)算法对潜在生物标志物进行鉴定,并使用 3 种机器学习算法(随机森林、支持向量机和逻辑回归)构建多元诊断模型。

结果

单变量分析表明,痛风患者和血尿酸正常对照者的代谢谱差异大于高尿酸血症患者和血尿酸正常对照者的代谢谱差异,而痛风和高尿酸血症表现出明显的代谢组学差异。通路富集分析发现,与血尿酸正常对照者相比,高尿酸血症和痛风患者的差异表达通路存在广泛的代谢失调,其中精氨酸代谢似乎发挥着关键作用。使用 MUVR 的多元诊断模型发现 13 种代谢物可作为潜在的生物标志物,将高尿酸血症和痛风与血尿酸正常区分开来。将三分之二的样本随机选择作为训练集,其余样本作为验证集。7 种代谢物的受试者工作特征分析在训练集中区分痛风和无症状高尿酸血症的曲线下面积为 0.83-0.87,在验证集中为 0.78-0.84,3 种机器学习算法均可用于区分痛风和无症状高尿酸血症。

结论

痛风和高尿酸血症具有明显的血清代谢组学特征。该诊断模型具有通过早期检测或预测高尿酸血症向痛风进展,改善当前痛风治疗的潜力。

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