解码线粒体连接:通过生物信息学和机器学习开发和验证用于分类和治疗系统性红斑狼疮的生物标志物。

IF 2.1 Q3 RHEUMATOLOGY
Haoguang Li, Lu Zhou, Wei Zhou, Xiuling Zhang, Jingjing Shang, Xueqin Feng, Le Yu, Jie Fan, Jie Ren, Rongwei Zhang, Xinwang Duan
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引用次数: 0

摘要

背景:系统性红斑狼疮(SLE)是一种以临床和病理多样性为特征的多层面自身免疫性疾病。线粒体功能障碍已被确定为SLE的一个关键致病因素。然而,这种功能障碍在SLE中的具体分子方面和调节作用尚不完全清楚。我们的研究旨在探索SLE中线粒体相关基因(MRGs)的分子特征,重点是确定可靠的生物标志物,用于分类和治疗目的。方法:我们从Gene Expression Omnibus (GEO)数据库中获取6个与sleb相关的微阵列数据集(GSE61635、GSE50772、GSE30153、GSE99967、GSE81622和GSE49454)。其中三个数据集(GSE61635, GSE50772, GSE30153)被整合到一个训练集中进行差异分析。差异表达基因与MRGs的交集产生了一组差异表达MRGs (DE-MRGs)。我们使用机器学习算法-随机森林(RF),支持向量机(SVM)和最小绝对收缩和选择算子(LASSO)逻辑回归-来选择关键的中心基因。在训练集和另外三个验证集(GSE99967、GSE81622和GSE49454)中验证这些基因的分类潜力。进一步的分析包括以这些枢纽基因为中心的差异表达、共表达、蛋白相互作用(PPI)、基因集富集分析(GSEA)和免疫浸润。我们还利用ChEA3、miRcode和PubChem数据库构建了基于这些中心基因的TF-mRNA、miRNA-mRNA和药物靶标网络。结果:我们的研究鉴定了761个差异表达基因(deg),主要与病毒感染、炎症和免疫相关的信号通路有关。这些deg和mrg之间的相互作用导致鉴定出27种不同的de - mrg。其中关键是FAM210B、MSRB2、LYRM7、IFI27和SCO2,它们通过机器学习分析被指定为枢纽基因。在训练集和验证集中都证实了它们在SLE分类中的重要作用。其他分析包括差异表达、共表达、PPI、GSEA、免疫浸润、TF-mRNA、miRNA-mRNA和药物靶点网络的构建。结论:本研究对SLE的MRGs进行了新的探索,确定了FAM210B、MSRB2、LYRM7、IFI27和SCO2作为分类和治疗靶向的重要候选者。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Decoding the mitochondrial connection: development and validation of biomarkers for classifying and treating systemic lupus erythematosus through bioinformatics and machine learning.

Background: Systemic lupus erythematosus (SLE) is a multifaceted autoimmune disease characterized by clinical and pathological diversity. Mitochondrial dysfunction has been identified as a critical pathogenetic factor in SLE. However, the specific molecular aspects and regulatory roles of this dysfunction in SLE are not fully understood. Our study aims to explore the molecular characteristics of mitochondria-related genes (MRGs) in SLE, with a focus on identifying reliable biomarkers for classification and therapeutic purposes.

Methods: We sourced six SLE-related microarray datasets (GSE61635, GSE50772, GSE30153, GSE99967, GSE81622, and GSE49454) from the Gene Expression Omnibus (GEO) database. Three of these datasets (GSE61635, GSE50772, GSE30153) were integrated into a training set for differential analysis. The intersection of differentially expressed genes with MRGs yielded a set of differentially expressed MRGs (DE-MRGs). We employed machine learning algorithms-random forest (RF), support vector machine (SVM), and least absolute shrinkage and selection operator (LASSO) logistic regression-to select key hub genes. These genes' classifying potential was validated in the training set and three other validation sets (GSE99967, GSE81622, and GSE49454). Further analyses included differential expression, co-expression, protein-protein interaction (PPI), gene set enrichment analysis (GSEA), and immune infiltration, centered on these hub genes. We also constructed TF-mRNA, miRNA-mRNA, and drug-target networks based on these hub genes using the ChEA3, miRcode, and PubChem databases.

Results: Our investigation identified 761 differentially expressed genes (DEGs), mainly related to viral infection, inflammatory, and immune-related signaling pathways. The interaction between these DEGs and MRGs led to the identification of 27 distinct DE-MRGs. Key among these were FAM210B, MSRB2, LYRM7, IFI27, and SCO2, designated as hub genes through machine learning analysis. Their significant role in SLE classification was confirmed in both the training and validation sets. Additional analyses included differential expression, co-expression, PPI, GSEA, immune infiltration, and the construction of TF-mRNA, miRNA-mRNA, and drug-target networks.

Conclusions: This research represents a novel exploration into the MRGs of SLE, identifying FAM210B, MSRB2, LYRM7, IFI27, and SCO2 as significant candidates for classifying and therapeutic targeting.

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来源期刊
BMC Rheumatology
BMC Rheumatology Medicine-Rheumatology
CiteScore
3.80
自引率
0.00%
发文量
73
审稿时长
15 weeks
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