Banoei Mohammad Mehdi, Hashemi Shahraki Abdulrazagh, Santos Kayo, Holt Gregory, Mirsaeidi Mehdi
Department of Critical Care Medicine, University of Calgary, Calgary, AB T2N 4Z6, Canada.
Department of Biomedical Engineering, Schulich School of Engineering, University of Calgary, Calgary, AB T2N 1N4, Canada.
Metabolites. 2024 Dec 31;15(1):7. doi: 10.3390/metabo15010007.
Sarcoidosis is a granulomatous disease affecting multiple organ systems and poses a diagnostic challenge due to its diverse clinical manifestations and absence of specific diagnostic tests. Currently, blood biomarkers such as ACE, sIL-2R, CD163, CCL18, serum amyloid A, and CRP are employed to aid in the diagnosis and monitoring of sarcoidosis. Metabolomics holds promise for identifying highly sensitive and specific biomarkers. This study aimed to leverage metabolomics for the early diagnosis of sarcoidosis and to identify metabolic phenotypes associated with disease progression. Serum samples from patients with sarcoidosis ( = 40, including stage 1 to stage 4), were analyzed for metabolite levels by semi-untargeted liquid chromatography-mass spectrometry (LC-MS). Metabolomics data from patients with sarcoidosis were compared with those from patients with COVID-19 and healthy controls to identify distinguishing metabolic biosignatures. Univariate and multivariate analyses were applied to obtain diagnostic and prognostic metabolic phenotypes. Significant changes in metabolic profiles distinguished stage 1 sarcoidosis from healthy controls, with potential biomarkers including azelaic acid, itaconate, and glutarate. Distinct metabolic phenotypes were observed across the stages of sarcoidosis, with stage 2 exhibiting greater heterogeneity compared with stages 1, 3, and 4. we explored immunometabolic phenotypes by comparing patients with sarcoidosis with patients with COVID-19 and healthy controls, revealing potential metabolic pathways associated with acute and chronic inflammation across the stages of sarcoidosis.
结节病是一种影响多个器官系统的肉芽肿性疾病,由于其临床表现多样且缺乏特异性诊断测试,因此在诊断方面具有挑战性。目前,血液生物标志物如血管紧张素转换酶(ACE)、可溶性白细胞介素-2受体(sIL-2R)、CD163、趋化因子配体18(CCL18)、血清淀粉样蛋白A和C反应蛋白(CRP)被用于辅助结节病的诊断和监测。代谢组学有望识别出高度敏感和特异的生物标志物。本研究旨在利用代谢组学实现结节病的早期诊断,并识别与疾病进展相关的代谢表型。对结节病患者(n = 40,包括1至4期)的血清样本进行半非靶向液相色谱-质谱联用(LC-MS)分析,以测定代谢物水平。将结节病患者的代谢组学数据与新冠肺炎患者及健康对照者的数据进行比较,以识别具有鉴别意义的代谢生物标志物。应用单变量和多变量分析来获得诊断和预后代谢表型。代谢谱的显著变化将1期结节病与健康对照区分开来,潜在生物标志物包括壬二酸、衣康酸和戊二酸。在结节病的各个阶段观察到了不同的代谢表型,与1、3和4期相比,2期表现出更大的异质性。通过将结节病患者与新冠肺炎患者及健康对照者进行比较,我们探索了免疫代谢表型,揭示了结节病各阶段与急性和慢性炎症相关的潜在代谢途径。