Serum proteomics analysis of drug-naïve patients with generalised anxiety disorder: Tandem mass tags and multiple reaction monitoring.

IF 3 4区 医学 Q2 PSYCHIATRY
Xue Li, Sisi Zheng, Zhengtian Feng, Xinzi Liu, Ying Ding, Lina Zhang, Guofu Zhang, Min Liu, Hong Zhu, Hongxiao Jia
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引用次数: 0

Abstract

Objectives: The prevalence of generalised anxiety disorder (GAD) is high. However, the underlying mechanisms remain elusive. Proteomics techniques can be employed to assess the pathological mechanisms involved in GAD.

Methods: Twenty-two drug-naive GAD patients were recruited, their serum samples were used for protein quantification and identified using Tandem Mass Tag and Multiple Reaction Monitoring (MRM). Machine learning models were employed to construct predictive models for disease occurrence by using clinical scores and target proteins as input variables.

Results: A total of 991 proteins were differentially expressed between GAD and healthy participants. Gene Ontology analysis revealed that these proteins were significantly associated with stress response and biological regulation, suggesting a significant implication in anxiety disorders. MRM validation revealed evident disparities in 12 specific proteins. The machine learning model found a set of five proteins accurately predicting the occurrence of the disease at a rate of 87.5%, such as alpha 1B-glycoprotein, complement component 4 A, transferrin, V3-3, and defensin alpha 1. These proteins had a functional association with immune inflammation.

Conclusions: The development of generalised anxiety disorder might be closely linked to the immune inflammatory stress response.

对未经药物治疗的广泛性焦虑症患者进行血清蛋白质组学分析:串联质量标记和多反应监测。
目的:广泛性焦虑症(GAD)的发病率很高。然而,其潜在机制仍然难以捉摸。蛋白质组学技术可用于评估 GAD 的病理机制:方法:研究人员招募了 22 名未服药的 GAD 患者,利用串联质量标签和多重反应监测(MRM)技术对他们的血清样本进行蛋白质定量和鉴定。采用机器学习模型,以临床评分和目标蛋白为输入变量,构建疾病发生的预测模型:结果:共有 991 个蛋白质在 GAD 和健康参与者之间存在差异表达。基因本体分析表明,这些蛋白质与应激反应和生物调控密切相关,这表明这些蛋白质对焦虑症有重要影响。MRM 验证显示,12 种特定蛋白质存在明显差异。机器学习模型发现,甲型 1B 糖蛋白、补体成分 4 A、转铁蛋白、V3-3 和防御素 alpha 1 等五种蛋白质能准确预测疾病的发生,准确率高达 87.5%。这些蛋白质与免疫炎症有功能性关联:结论:广泛性焦虑症的发生可能与免疫炎症应激反应密切相关。
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来源期刊
CiteScore
7.00
自引率
3.20%
发文量
73
审稿时长
6-12 weeks
期刊介绍: The aim of The World Journal of Biological Psychiatry is to increase the worldwide communication of knowledge in clinical and basic research on biological psychiatry. Its target audience is thus clinical psychiatrists, educators, scientists and students interested in biological psychiatry. The composition of The World Journal of Biological Psychiatry , with its diverse categories that allow communication of a great variety of information, ensures that it is of interest to a wide range of readers. The World Journal of Biological Psychiatry is a major clinically oriented journal on biological psychiatry. The opportunity to educate (through critical review papers, treatment guidelines and consensus reports), publish original work and observations (original papers and brief reports) and to express personal opinions (Letters to the Editor) makes The World Journal of Biological Psychiatry an extremely important medium in the field of biological psychiatry all over the world.
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