The plasma metabolome of juvenile idiopathic arthritis varies according to subtype and underlying inflammatory status.

IF 2.8 3区 医学 Q1 PEDIATRICS
Jooa Kwon, Melanie R Neeland, Justine A Ellis, Jane Munro, Richard Saffery, Boris Novakovic, Toby Mansell
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引用次数: 0

Abstract

Background: Juvenile idiopathic arthritis (JIA) is challenging to classify and effectively monitor due to the lack of disease- and subtype-specific biomarkers. A robust molecular signature that tracks with specific JIA features over time is urgently required, and targeted plasma metabolomics may reveal such a signature. The primary aim of this study was to characterise the differences in the plasma metabolome between JIA patients and non-JIA controls and identify specific markers of JIA subtype. We also assessed the extent to which these signatures are due to underlying inflammation as assessed by glycoprotein acetyls (GlycA) and high-sensitivity C-Reactive Protein (hsCRP) levels.

Methods: Targeted nuclear magnetic resonance (NMR) metabolomic profiles of plasma of 72 children with JIA and 18 controls were assessed cross-sectionally. Associations between 71 metabolomic biomarkers and JIA, JIA subtype, disease activity status, and inflammation markers (GlycA and hsCRP) were assessed using multivariable linear regression models.

Results: JIA was associated with higher GlycA (mean difference = 0.93 standard deviations, 95% confidence interval = [0.370, 1.494], Padj = 0.039) and docosahexaenoic acid (1.06, [0.51, 1.60], Padj = 0.021), and lower acetate (-0.92, [-1.43, -0.41], Padj = 0.024) relative to controls. This variation was largely driven by systemic JIA (sJIA), with 24 of 71 total biomarkers significantly different (Padj <0.05) relative to controls. There were no specific differences identified in oligoarticular (oJIA) or polyarticular (rheumatoid factor positive or negative) JIA relative to controls. Despite being generally highly correlated with hsCRP (r > 0.70), GlycA, but not hsCRP, was positively associated with active disease in sJIA (0.22, [-0.40, -0.04], Padj = 0.018), and 6 of 24 sJIA-associated markers were associated with GlycA levels. Only 1 sJIA-associated biomarker, histidine, was associated with hsCRP levels.

Conclusion: Differences in the plasma NMR metabolomic profiles are apparent in children with sJIA, but not other JIA subtypes, relative to non-JIA controls. These findings suggest a potential utility for classifying and monitoring JIA through metabolomic profiling, with chronic inflammation, measured by GlycA, potentially playing a role in at least some of these metabolomic differences.

幼年特发性关节炎的血浆代谢组因亚型和潜在炎症状态而异。
背景:由于缺乏疾病特异性和亚型特异性的生物标志物,青少年特发性关节炎(JIA)的分类和有效监测具有挑战性。迫切需要一种强大的分子特征,随着时间的推移跟踪特定的JIA特征,而靶向血浆代谢组学可能揭示这样的特征。本研究的主要目的是表征JIA患者和非JIA对照之间血浆代谢组的差异,并确定JIA亚型的特异性标志物。我们还通过糖蛋白乙酰基(GlycA)和高敏c反应蛋白(hsCRP)水平评估了这些特征是由潜在炎症引起的程度。方法:对72例JIA患儿和18例对照者的血浆靶向核磁共振(NMR)代谢组学进行横断面分析。使用多变量线性回归模型评估71种代谢组学生物标志物与JIA、JIA亚型、疾病活动状态和炎症标志物(GlycA和hsCRP)之间的相关性。结果:与对照组相比,JIA与较高的GlycA(平均差异= 0.93标准差,95%可信区间= [0.370,1.494],Padj = 0.039)和二十二碳六烯酸(1.06,[0.51,1.60],Padj = 0.021)和较低的乙酸(-0.92,[-1.43,-0.41],Padj = 0.024)相关。这种差异主要是由系统性JIA (sJIA)驱动的,71个生物标志物中有24个显著不同(Padj = 0.70), GlycA与sJIA的活动性疾病呈正相关,但不包括hsCRP (0.22, [-0.40, -0.04], Padj = 0.018), 24个sJIA相关标志物中有6个与GlycA水平相关。只有1种sjia相关的生物标志物组氨酸与hsCRP水平相关。结论:与非JIA对照相比,sJIA患儿的血浆核磁共振代谢组学特征存在明显差异,而其他JIA亚型患儿的差异不明显。这些发现表明,通过代谢组学分析对JIA进行分类和监测具有潜在的效用,通过GlycA测量的慢性炎症可能至少在这些代谢组学差异中发挥作用。
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来源期刊
Pediatric Rheumatology
Pediatric Rheumatology PEDIATRICS-RHEUMATOLOGY
CiteScore
4.10
自引率
8.00%
发文量
95
审稿时长
>12 weeks
期刊介绍: Pediatric Rheumatology is an open access, peer-reviewed, online journal encompassing all aspects of clinical and basic research related to pediatric rheumatology and allied subjects. The journal’s scope of diseases and syndromes include musculoskeletal pain syndromes, rheumatic fever and post-streptococcal syndromes, juvenile idiopathic arthritis, systemic lupus erythematosus, juvenile dermatomyositis, local and systemic scleroderma, Kawasaki disease, Henoch-Schonlein purpura and other vasculitides, sarcoidosis, inherited musculoskeletal syndromes, autoinflammatory syndromes, and others.
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