Yang Wei, Liu Chenglin, Li Zhenhua, Cui Miao
College of Traditional Chinese Medicine, Changchun University of Chinese Medicine, 1035 Boshuo Road, Changchun, China.
The Affiliated Hospital of Changchun University of Chinese Medicine, Changchun, 130117, Jilin, China.
Sci Rep. 2025 Mar 19;15(1):9421. doi: 10.1038/s41598-025-94303-8.
Currently, the treatment and prevention of multiple sclerosis (MS) continue to encounter significant challenges. Mendelian randomization (MR) analysis has emerged as a crucial research method in the pursuit of new therapeutic strategies. Accordingly, we hypothesize that there exists a causal association between genetic variants of specific plasma proteins and MS through MR mechanisms, and that key therapeutic targets can be precisely identified by integrating multi-omics analytical approaches. In this study, we developed a comprehensive analytical framework aimed at identifying and validating potential therapeutic targets for MS. The framework commenced with a two-sample Mendelian randomization (MR) study utilizing two large plasma protein quantitative trait locus (pQTL) datasets. Building on this foundation, we performed Bayesian co-localization analysis of coding genes, followed by a full phenotype-wide association study (PheWAS) on the co-positive genes identified through both analytical methods. This approach allowed us to explore the functions of key genes and the mechanisms of co-morbidity associated with the disease. Subsequently, we integrated protein-protein interaction (PPI) network analysis, gene ontology (GO) analysis, and Kyoto Encyclopedia of Genes and Genomes (KEGG) pathway analysis to facilitate drug prediction and molecular docking studies. This study conducted a systematic analysis between two large plasma pQTLs datasets and MS. In the MR analysis, the MR analysis of Icelandic plasma pQTLs and MS identified 88 positive plasma proteins, while the MR analysis of the UK Biobank database pQTLs and MS identified 122 positive plasma proteins. By comparison, uroporphyrinogen III synthase (UROS) and glutathione S-transferase theta 2B (GSTT2B) were found to be the positive proteins shared by the two datasets. After false discovery rate (FDR) correction, signal transducer and activator of transcription 3 (STAT3) was a significantly positive protein in the analysis of Icelandic plasma pQTLs. In the analysis of the UK Biobank database pQTLs, advanced glycosylation end product-specific receptor (AGER), allograft inflammatory factor 1 (AIF1), butyrophilin subfamily 1 member A1 (BTN1A1), cluster of differentiation 58 (CD58), desmoglein 4 (DSG4), ecotropic viral integration site 5 (EVI5), tumor necrosis factor (TNF), and tumor necrosis factor receptor superfamily member 14 (TNFRSF14) were significantly positive proteins. After Bonferroni correction, AGER, CD58, EVI5, and TNF remained significantly positive proteins in the analysis of the UK Biobank database pQTLs. In the Bayesian colocalization analysis, EVI5 (PPH4 = 0.9800), O-GlcNAcase (OGA) (PPH4 = 0.8569), and TNFRSF14 (PPH4 = 0.8904) were the common positive genes in the two analysis methods. In conclusion, EVI5, OGA, and TNFRSF14 may be potential therapeutic targets for MS. Through the comprehensive application of MR analysis and Bayesian colocalization analysis, we have successfully identified that EVI5, OGA, and TNFRSF14 may be key therapeutic targets for MS. These findings may provide a scientific basis for the development of novel immunotherapies, combination treatment regimens, or targeted intervention strategies.
目前,多发性硬化症(MS)的治疗和预防仍然面临重大挑战。孟德尔随机化(MR)分析已成为寻求新治疗策略的关键研究方法。因此,我们假设特定血浆蛋白的基因变异与MS之间存在通过MR机制的因果关联,并且可以通过整合多组学分析方法精确识别关键治疗靶点。在本研究中,我们开发了一个综合分析框架,旨在识别和验证MS的潜在治疗靶点。该框架首先进行了一项双样本孟德尔随机化(MR)研究,利用了两个大型血浆蛋白数量性状位点(pQTL)数据集。在此基础上,我们对编码基因进行了贝叶斯共定位分析,随后对通过两种分析方法确定的共阳性基因进行了全表型关联研究(PheWAS)。这种方法使我们能够探索关键基因的功能以及与该疾病相关的共病机制。随后,我们整合了蛋白质-蛋白质相互作用(PPI)网络分析、基因本体(GO)分析和京都基因与基因组百科全书(KEGG)通路分析,以促进药物预测和分子对接研究。本研究对两个大型血浆pQTL数据集与MS进行了系统分析。在MR分析中,冰岛血浆pQTL与MS的MR分析确定了88种阳性血浆蛋白,而英国生物银行数据库pQTL与MS的MR分析确定了122种阳性血浆蛋白。相比之下,尿卟啉原III合酶(UROS)和谷胱甘肽S-转移酶θ2B(GSTT2B)被发现是两个数据集共有的阳性蛋白。经过错误发现率(FDR)校正后,信号转导和转录激活因子3(STAT3)在冰岛血浆pQTL分析中是显著阳性蛋白。在英国生物银行数据库pQTL分析中,晚期糖基化终产物特异性受体(AGER)、同种异体移植炎症因子1(AIF1)、嗜乳脂蛋白亚家族1成员A1(BTN1A1)、分化簇58(CD58)、桥粒芯糖蛋白4(DSG4)、亲嗜性病毒整合位点5(EVI5)、肿瘤坏死因子(TNF)和肿瘤坏死因子受体超家族成员14(TNFRSF14)是显著阳性蛋白。经过Bonferroni校正后,AGER、CD58、EVI5和TNF在英国生物银行数据库pQTL分析中仍然是显著阳性蛋白。在贝叶斯共定位分析中,EVI5(PPH4 = 0.9800)、O-连接N-乙酰葡糖胺酶(OGA)(PPH4 = 0.8569)和TNFRSF14(PPH4 = 0.8904)是两种分析方法中的共同阳性基因。总之,EVI5、OGA和TNFRSF14可能是MS的潜在治疗靶点。通过MR分析和贝叶斯共定位分析的综合应用,我们成功确定EVI5、OGA和TNFRSF14可能是MS的关键治疗靶点。这些发现可能为开发新型免疫疗法、联合治疗方案或靶向干预策略提供科学依据。