Machine Learning-Based Identification of Novel Exosome-Derived Metabolic Biomarkers for the Diagnosis of Systemic Lupus Erythematosus and Differentiation of Renal Involvement.

IF 2 4区 医学 Q3 MEDICINE, RESEARCH & EXPERIMENTAL
Current Medical Science Pub Date : 2025-04-01 Epub Date: 2025-02-28 DOI:10.1007/s11596-025-00023-5
Zhong-Yu Wang, Wen-Jing Liu, Qing-Yang Jin, Xiao-Shan Zhang, Xiao-Jie Chu, Adeel Khan, Shou-Bin Zhan, Han Shen, Ping Yang
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引用次数: 0

Abstract

Objective: This study aims to investigate the exosome-derived metabolomics profiles in systemic lupus erythematosus (SLE), identify differential metabolites, and analyze their potential as diagnostic markers for SLE and lupus nephritis (LN).

Methods: Totally, 91 participants were enrolled between February 2023 and January 2024 including 58 SLE patients [30 with nonrenal-SLE and 28 with Lupus nephritis (LN)] and 33 healthy controls (HC). Ultracentrifugation was used to isolate serum exosomes, which were analyzed for their metabolic profiles using liquid chromatography-tandem mass spectrometry (LC-MS/MS). Endogenous metabolites were identified via public metabolite databases. Random Forest, Lasso regression and Support Vector Machine Recursive Feature Elimination (SVM-RFE) algorithms were employed to screen key metabolites, and a prediction model was constructed for SLE diagnosis and LN discrimination. ROC curves were constructed to determine the potential of these differential exosome-derived metabolites for the diagnosis of SLE. Furthermore, Spearman's correlation was employed to evaluate the potential links between exosome-derived metabolites and the clinical parameters which reflect disease progression.

Results: A total of 586 endogenous serum exosome-derived metabolites showed differential expression, with 225 exosome-derived metabolites significantly upregulated, 88 downregulated and 273 exhibiting no notable changes in the HC and SLE groups. Machine learning algorithms revealed three differential metabolites: Pro-Asn-Gln-Met-Ser, C24:1 sphingolipid, and protoporphyrin IX, which exhibited AUC values of 0.998, 0.992 and 0.969 respectively, for distinguishing between the SLE and HC groups, with a combined AUC of 1.0. In distinguishing between the LN and SLE groups, the AUC values for these metabolites were 0.920, 0.893 and 0.865, respectively, with a combined AUC of 0.931, demonstrating excellent diagnostic performance. Spearman correlation analysis revealed that Pro-Asn-Gln-Met-Ser and protoporphyrin IX were positively correlated with the SLE Disease Activity Index (SLEDAI) scores, urinary protein/creatinine ratio (ACR) and urinary protein levels, while C24:1 sphingolipid exhibited a negative correlation.

Conclusions: This study provides the first comprehensive characterization of the exosome-derived metabolites in SLE and established a promising prediction model for SLE and LN discrimination. The correlation between exosome-derived metabolites and key clinical parameters strongly indicated their potential role in SLE pathological progression.

基于机器学习的新型外泌体衍生代谢生物标志物的识别用于系统性红斑狼疮的诊断和肾脏受累的鉴别。
目的:本研究旨在研究系统性红斑狼疮(SLE)患者的外泌体衍生代谢组学特征,识别差异代谢物,并分析其作为SLE和狼疮肾炎(LN)诊断标志物的潜力。方法:在2023年2月至2024年1月期间,共纳入91名参与者,包括58名SLE患者(30名非肾性SLE患者,28名狼疮肾炎患者)和33名健康对照(HC)。用超离心分离血清外泌体,用液相色谱-串联质谱(LC-MS/MS)分析其代谢谱。内源性代谢物通过公共代谢物数据库进行鉴定。采用随机森林、Lasso回归和支持向量机递归特征消除(SVM-RFE)算法筛选关键代谢物,构建SLE诊断和LN鉴别预测模型。构建ROC曲线以确定这些差异外泌体衍生代谢物对SLE诊断的潜力。此外,Spearman相关性被用于评估外泌体衍生代谢物与反映疾病进展的临床参数之间的潜在联系。结果:在HC组和SLE组中,共有586种内源性血清外泌体衍生代谢物出现差异表达,其中225种外泌体衍生代谢物显著上调,88种下调,273种无显著变化。机器学习算法发现了3种差异代谢物:Pro-Asn-Gln-Met-Ser, C24:1鞘脂和原卟啉IX,其AUC值分别为0.998,0.992和0.969,用于区分SLE和HC组,合并AUC为1.0。在区分LN组和SLE组时,这些代谢物的AUC值分别为0.920、0.893和0.865,综合AUC值为0.931,具有较好的诊断效能。Spearman相关分析显示,Pro-Asn-Gln-Met-Ser和protoporphyrin IX与SLE疾病活动性指数(SLEDAI)评分、尿蛋白/肌酐比(ACR)和尿蛋白水平呈正相关,而C24:1鞘脂呈负相关。结论:本研究首次全面表征了SLE的外泌体衍生代谢物,并建立了一个有前景的SLE和LN鉴别预测模型。外泌体衍生代谢物与关键临床参数之间的相关性强烈表明它们在SLE病理进展中的潜在作用。
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来源期刊
Current Medical Science
Current Medical Science Biochemistry, Genetics and Molecular Biology-Genetics
CiteScore
4.70
自引率
0.00%
发文量
126
期刊介绍: Current Medical Science provides a forum for peer-reviewed papers in the medical sciences, to promote academic exchange between Chinese researchers and doctors and their foreign counterparts. The journal covers the subjects of biomedicine such as physiology, biochemistry, molecular biology, pharmacology, pathology and pathophysiology, etc., and clinical research, such as surgery, internal medicine, obstetrics and gynecology, pediatrics and otorhinolaryngology etc. The articles appearing in Current Medical Science are mainly in English, with a very small number of its papers in German, to pay tribute to its German founder. This journal is the only medical periodical in Western languages sponsored by an educational institution located in the central part of China.
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