Beijing National Laboratory for Molecular Sciences, Key Laboratory of Analytical Chemistry for Living Biosystems, Institute of Chemistry, Chinese Academy of Sciences, Beijing 100190, China.
University of Chinese Academy of Sciences, Beijing 100049, China.
Analyst. 2023 Sep 11;148(18):4318-4330. doi: 10.1039/d3an01051a.
There is a wide variety of autoimmune diseases (ADs) with complex pathogenesis and their accurate diagnosis is difficult to achieve because of their vague symptoms. Metabolomics has been proven to be an efficient tool in the analysis of metabolic disorders to provide clues about the mechanism and diagnosis of diseases. Previous studies of the metabolomics analysis of ADs were not competent in their discrimination. Herein, a liquid chromatography tandem mass spectrometry (LC-MS) strategy combined with machine learning is proposed for the discrimination and classification of ADs. Urine and serum samples were collected from 267 subjects consisting of 127 healthy controls (HC) and 140 AD patients, including those with rheumatoid arthritis (RA), systemic lupus erythematosus (SLE), sicca syndrome (SS), ankylosing spondylitis (AS), systemic scleroderma (SSc) and connective tissue disease (CTD). Machine learning algorithms were encoded for the discrimination and classification of ADs with metabolomic patterns obtained by LC-MS, and satisfactory results were achieved. Notably, urine samples exhibited higher accuracy for disease differentiation and triage than serum samples. Apart from that, differential metabolites were selected and metabolite panels were evaluated to demonstrate their representativeness. Metabolic dysregulations were also investigated to gain more knowledge about the pathogenesis of ADs. This research provides a promising method for the application of metabolomics combined with machine learning in precision medicine.
有各种各样的自身免疫性疾病 (ADs),其发病机制复杂,由于症状模糊,难以准确诊断。代谢组学已被证明是分析代谢紊乱的有效工具,可以为疾病的机制和诊断提供线索。先前 ADs 的代谢组学分析研究在其区分能力方面并不胜任。在此,提出了一种液相色谱串联质谱 (LC-MS) 策略结合机器学习,用于 ADs 的区分和分类。从 267 名受试者中采集了尿液和血清样本,其中包括 127 名健康对照 (HC) 和 140 名 AD 患者,包括类风湿关节炎 (RA)、系统性红斑狼疮 (SLE)、干燥综合征 (SS)、强直性脊柱炎 (AS)、系统性硬皮病 (SSc) 和结缔组织疾病 (CTD)。使用 LC-MS 获得的代谢组学模式对 ADs 的鉴别和分类进行了机器学习算法编码,并取得了令人满意的结果。值得注意的是,与血清样本相比,尿液样本在疾病区分和分诊方面表现出更高的准确性。除此之外,还选择了差异代谢物并评估了代谢物谱,以证明其代表性。还研究了代谢失调,以获得更多关于 ADs 发病机制的知识。这项研究为将代谢组学与机器学习相结合应用于精准医学提供了一种很有前途的方法。