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用于牙髓炎预测的疼痛相关长链非编码RNA的鉴定

Identification of pain-related long non-coding RNAs for pulpitis prediction.

作者信息

Tan Yongjie, He Ying, Xu Yuexuan, Qiu Xilin, Liu Guanru, Liu Lingxian, Jiang Ye, Li Mingyue, Sun Weijun, Xie Ziqiang, Huang Yonghui, Chen Xin, Yang Xuechao

机构信息

School of Automation, Guangdong University of Technology, Guangzhou Higher Education Mega Center, No. 100 Waihuan Xi Road Panyu District, Guangzhou, 510006, China.

Department of Endodontics, Guangdong Engineering Research Center of Oral Restoration and Reconstruction, Guangzhou Key Laboratory of Basic and Applied Research of Oral Regenerative Medicine, Affiliated Stomatology Hospital of Guangzhou Medical University, Guangzhou, China.

出版信息

Clin Oral Investig. 2025 Jan 22;29(1):75. doi: 10.1007/s00784-025-06164-0.

Abstract

OBJECTIVES

We investigated the recently generated RNA-sequencing dataset of pulpitis to identify the potential pain-related lncRNAs for pulpitis prediction.

MATERIALS AND METHODS

Differential analysis was performed on the gene expression profile between normal and pulpitis samples to obtain pulpitis-related genes. The co-expressed gene modules were identified by weighted gene coexpression network analysis (WGCNA). Then the hypergeometric test was utilized to screen pain-related core modules. The functional enrichment analysis was performed on the up- and down-regulated genes in the core module of pulpitis pain to explore the underlying mechanisms. A pain-related lncRNA-based classification model was constructed using LASSO. Consensus clustering and gene set variation analysis (GSVA) on the infiltrating immunocytes was used for pulpitis subtyping. miRanda predicts miRNA-target relationship, which was filtered by expression correlation. Hallmark pathway and enrichment analysis was performed to investigate the candidate target pathways of the lncRNAs.

RESULTS

A total of 1830 differential RNAs were identified in pulpitis. WGCNA explored seven co-expressed modules, among which the turquoise module is pain-related with hypergeometric test. The up-regulated genes were significantly enriched in immune response related pathways. Down-regulated genes were significantly enriched in differentiation pathways. Eight lncRNAs in the pain-related module were related to inflammation. Among them, MIR181A2HG was downregulated while other seven lncRNAs were upregulated in pulpitis. The LASSO classification model revealed that MIR181A2HG and LINC00426 achieved outstanding predictive performances with perfect ROC-AUC score (AUC = 1). We differentiated the pulpitis samples into two progression subtypes and MIR181A2HG is a progressive marker for pulpitis. The miRNA-mRNA-lncRNA regulatory network of pulpitis pain was constructed, with GATA3 as a key transcription factor. NF-kappa B signaling pathway is a candidate pathway impacted by these lncRNAs.

CONCLUSIONS

PCED1B-AS1, MIAT, MIR181A2HG, LINC00926, LINC00861, LINC00528, LINC00426 and ITGB2-AS1 may be potential markers of pulpitis pain. A two-lncRNA signature of LINC00426 and MIR181A2HG can accurately predict pulpitis, which could facilitate the molecular diagnosis of pulpitis. GATA3 might regulate these lncRNAs and downstream NF-kappa B signaling pathway.

CLINICAL RELEVANCE

This study identified potential pain-related lncRNAs with underlying molecular mechanism analysis for the prediction of pulpitis. The classification model based on lncRNAs will facilitate the early diagnosis of pulpitis.

摘要

目的

我们研究了最近生成的牙髓炎RNA测序数据集,以确定用于牙髓炎预测的潜在疼痛相关长链非编码RNA(lncRNA)。

材料与方法

对正常样本和牙髓炎样本的基因表达谱进行差异分析,以获得牙髓炎相关基因。通过加权基因共表达网络分析(WGCNA)识别共表达基因模块。然后利用超几何检验筛选疼痛相关核心模块。对牙髓炎疼痛核心模块中上调和下调的基因进行功能富集分析,以探索潜在机制。使用套索回归(LASSO)构建基于疼痛相关lncRNA的分类模型。对浸润免疫细胞进行一致性聚类和基因集变异分析(GSVA)用于牙髓炎亚型分类。miRanda预测miRNA-靶标关系,并通过表达相关性进行筛选。进行特征通路和富集分析以研究lncRNA的候选靶标通路。

结果

在牙髓炎中总共鉴定出1830个差异RNA。WGCNA探索了7个共表达模块,其中绿松石模块通过超几何检验与疼痛相关。上调基因在免疫反应相关通路中显著富集。下调基因在分化通路中显著富集。疼痛相关模块中的8个lncRNA与炎症相关。其中,MIR181A2HG在牙髓炎中下调,而其他7个lncRNA上调。LASSO分类模型显示,MIR181A2HG和LINC00426具有出色的预测性能,ROC-AUC评分完美(AUC = 1)。我们将牙髓炎样本分为两种进展亚型,MIR181A2HG是牙髓炎的进展标志物。构建了牙髓炎疼痛的miRNA-mRNA-lncRNA调控网络,GATA3作为关键转录因子。核因子κB信号通路是受这些lncRNA影响的候选通路。

结论

PCED1B-AS1、MIAT、MIR181A/HG、LINC00926、LINC00861、LINC00528、LINC00426和ITGB2-AS1可能是牙髓炎疼痛的潜在标志物。LINC00426和MIR1A/HG的双lncRNA特征可以准确预测牙髓炎,这有助于牙髓炎的分子诊断。GATA3可能调节这些lncRNA和下游核因子κB信号通路。

临床意义

本研究鉴定了潜在的疼痛相关lncRNA,并对其进行了潜在分子机制分析以用于牙髓炎的预测。基于lncRNA的分类模型将有助于牙髓炎的早期诊断。

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