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全身型幼年类风湿关节炎中Th2/Th17细胞相关基因的综合特征分析:来自孟德尔随机化和使用多种机器学习方法的转录组数据的证据

Comprehensive Characterization of Th2/Th17 Cells-Related Gene in Systemic Juvenile Rheumatoid Arthritis: Evidence from Mendelian Randomization and Transcriptome Data Using Multiple Machine Learning Approaches.

作者信息

Wang Mei, Wang Jing, Lv Fei, Song Aifeng, Bao Wurihan, Li Huiyun, Xu Yongsheng

机构信息

Department of Rheumatology and Immunology, Inner Mongolia Autonomous Region People's Hospital, Hohhot, Inner Mongolia, 010017, People's Republic of China.

Department of Rheumatology and Immunology, The Affiliated Hospital of Inner Mongolia Medical University, Hohhot, Inner Mongolia, 010050, People's Republic of China.

出版信息

Int J Gen Med. 2024 Dec 10;17:5973-5996. doi: 10.2147/IJGM.S482288. eCollection 2024.

Abstract

BACKGROUND

Growing research has demonstrated that alterations in Th2 and Th17 cell composition were linked to systemic juvenile rheumatoid arthritis (sJRA). Nevertheless, whether these associations indicate a causal link remains unclear, and the potential effects of Th2/Th17-related molecules have not been clarified.

METHODS

Mendelian randomization (MR) alongside transcriptome examination was implemented to ascertain the links between the Th2/Th17 cells and sJRA. Subsequently, we established an innovative machine learning (ML) framework encompassing 12 ML approaches and their 111 permutations to generate a unified Th2/Th17 classifier, which underwent verification across three separate cohorts. The hub Th2/Th17-related genes' level in the sJRA patients was substantiated via qRT-PCR. Lastly, the SHapley Additive exPlanations (SHAP) in conjunction with the XGBoost algorithm to pinpoint ideal Th2/Th17-linked genes.

RESULTS

Based on MR analyses of two sJRA GWAS, 2 immunophenotypes (lymphocyte and IgD+ B cell) were causally linked to sJRA. Based on IOBR algorithms, we revealed that lymphocyte Th2/Th17 proportion was markedly changed in sJRA from seven cohorts. WGCNA and differential analysis in two merged GEO cohorts identified 64 Th2/Th17-related genes. Based on the average AUC (0.844) and model stability in four cohorts, we converted 12 ML techniques into 111 combinations, from which we chose the optimal algorithm to generate an ML-derived diagnostic signature (Th2/Th17 classifier). qRT-PCR verified results. Moreover, immune cell infiltration and functional enrichment analysis suggested hub Th2/Th17-related gene potentially mediated sJRA onset. XGBoost algorithm and SHAP detected HRH2 as crucial genetic markers, which may be an important target for sJRA.

CONCLUSION

A diagnostic model (Th2/Th17 classifier) via 111 ML algorithm combinations in six independent cohorts was generated and validated, which stands as an effective instrument for sJRA detection. The identification of essential immune components and molecular cascades, along with HRH2, could emerge as vital therapeutic targets for sJRA intervention, providing an enhanced understanding of its fundamental processes.

摘要

背景

越来越多的研究表明,Th2和Th17细胞组成的改变与全身型幼年特发性关节炎(sJRA)有关。然而,这些关联是否表明存在因果关系仍不清楚,Th2/Th17相关分子的潜在作用也尚未阐明。

方法

实施孟德尔随机化(MR)并结合转录组检查,以确定Th2/Th17细胞与sJRA之间的联系。随后,我们建立了一个创新的机器学习(ML)框架,该框架包含12种ML方法及其111种排列组合,以生成一个统一的Th2/Th17分类器,并在三个独立队列中进行验证。通过qRT-PCR证实了sJRA患者中关键的Th2/Th17相关基因的水平。最后,结合XGBoost算法的SHapley加法解释(SHAP)来确定理想的Th2/Th17相关基因。

结果

基于两项sJRA全基因组关联研究(GWAS)的MR分析,2种免疫表型(淋巴细胞和IgD+B细胞)与sJRA存在因果关系。基于IOBR算法,我们发现来自七个队列的sJRA患者中淋巴细胞Th2/Th17比例有明显变化。在两个合并的GEO队列中进行加权基因共表达网络分析(WGCNA)和差异分析,确定了64个Th2/Th17相关基因。基于四个队列中的平均曲线下面积(AUC,0.844)和模型稳定性,我们将12种ML技术转换为111种组合,从中选择最佳算法生成一个基于ML的诊断特征(Th2/Th17分类器)。qRT-PCR验证了结果。此外,免疫细胞浸润和功能富集分析表明,关键的Th2/Th17相关基因可能介导了sJRA的发病。XGBoost算法和SHAP检测到组胺受体2(HRH2)是关键的遗传标志物,可能是sJRA的一个重要靶点。

结论

通过111种ML算法组合在六个独立队列中生成并验证了一个诊断模型(Th2/Th17分类器),它是sJRA检测的有效工具。确定关键的免疫成分和分子级联反应以及HRH2,可能成为sJRA干预的重要治疗靶点,有助于加深对其基本过程的理解。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/bbff/11645899/75c9a36e4074/IJGM-17-5973-g0001.jpg

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