Metabolomics Signature in Prediabetes and Diabetes: Insights From Tandem Mass Spectrometry Analysis

IF 2.7 Q3 ENDOCRINOLOGY & METABOLISM
Saad Ayyal Jabbar Al-Rikabi, Ali Etemadi, Maher Mohammed Morad, Azin Nowrouzi, Ghodarollah Shayriyar Panahi, Mozhgan Mondeali, Mahsa Toorani-ghazvini, Ensieh Nasli-Esfahani, Farideh Razi, Fatemeh Bandarian
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Abstract

Objective

This study investigates the metabolic differences between normal, prediabetic and diabetic patients with good and poor glycaemic control (GGC and PGC).

Design

In this study, 1102 individuals were included, and 50 metabolites were analysed using tandem mass spectrometry. The diabetes diagnosis and treatment standards of the American Diabetes Association (ADA) were used to classify patients.

Methods

The nearest neighbour method was used to match controls and cases in each group on the basis of age, sex and BMI. Factor analysis was used to reduce the number of variables and find influential underlying factors. Finally, Pearson's correlation coefficient was used to check the correlation between both glucose and HbAc1 as independent factors with binary classes.

Results

Amino acids such as glycine, serine and proline, and acylcarnitines (AcylCs) such as C16 and C18 showed significant differences between the prediabetes and normal groups. Additionally, several metabolites, including C0, C5, C8 and C16, showed significant differences between the diabetes and normal groups. Moreover, the study found that several metabolites significantly differed between the GGC and PGC diabetes groups, such as C2, C6, C10, C16 and C18. The correlation analysis revealed that glucose and HbA1c levels significantly correlated with several metabolites, including glycine, serine and C16, in both the prediabetes and diabetes groups. Additionally, the correlation analysis showed that HbA1c significantly correlated with several metabolites, such as C2, C5 and C18, in the controlled and uncontrolled diabetes groups.

Conclusions

These findings could help identify new biomarkers or underlying markers for the early detection and management of diabetes.

Abstract Image

糖尿病前期和糖尿病的代谢组学特征:串联质谱分析的启示。
研究目的本研究探讨了正常人、糖尿病前期患者以及血糖控制良好和血糖控制不佳的糖尿病患者(GGC 和 PGC)之间的代谢差异:本研究共纳入 1102 人,使用串联质谱法分析了 50 种代谢物。采用美国糖尿病协会(ADA)的糖尿病诊断和治疗标准对患者进行分类:根据年龄、性别和体重指数,采用近邻法将每组中的对照组和病例进行匹配。采用因素分析法减少变量数量,找出有影响的潜在因素。最后,使用皮尔逊相关系数检验葡萄糖和 HbAc1 这两个独立因素与二元类之间的相关性:结果:甘氨酸、丝氨酸和脯氨酸等氨基酸以及 C16 和 C18 等酰基肉碱(AcylCs)在糖尿病前期组和正常组之间存在显著差异。此外,包括 C0、C5、C8 和 C16 在内的几种代谢物在糖尿病组和正常组之间存在显著差异。研究还发现,GGC 和 PGC 糖尿病组之间有几种代谢物存在显著差异,如 C2、C6、C10、C16 和 C18。相关性分析表明,在糖尿病前期组和糖尿病组中,葡萄糖和 HbA1c 水平与几种代谢物(包括甘氨酸、丝氨酸和 C16)有明显的相关性。此外,相关性分析表明,在糖尿病控制组和未控制组中,HbA1c 与 C2、C5 和 C18 等几种代谢物有明显的相关性:这些发现有助于确定新的生物标志物或潜在标志物,用于糖尿病的早期检测和管理。
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来源期刊
Endocrinology, Diabetes and Metabolism
Endocrinology, Diabetes and Metabolism Medicine-Endocrinology, Diabetes and Metabolism
CiteScore
5.00
自引率
0.00%
发文量
66
审稿时长
6 weeks
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