Developing a ceRNA-based lncRNA-miRNA-mRNA regulatory network to uncover roles in skeletal muscle development.

IF 3.9 Q2 MATHEMATICAL & COMPUTATIONAL BIOLOGY Frontiers in bioinformatics Pub Date : 2025-01-15 eCollection Date: 2024-01-01 DOI:10.3389/fbinf.2024.1494717
Wang Wenlun, Yu Chaohang, Huang Yan, Li Wenbin, Zhou Nanqing, Hu Qianmin, Wu Shengcai, Yuan Qing, Yu Shirui, Zhang Feng, Zhu Lingyun
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Abstract

The precise role of lncRNAs in skeletal muscle development and atrophy remain elusive. We conducted a bioinformatic analysis of 26 GEO datasets from mouse studies, encompassing embryonic development, postnatal growth, regeneration, cell proliferation, and differentiation, using R and relevant packages (limma et al.). LncRNA-miRNA relationships were predicted using miRcode and lncBaseV2, with miRNA-mRNA pairs identified via miRcode, miRDB, and Targetscan7. Based on the ceRNA theory, we constructed and visualized the lncRNA-miRNA-mRNA regulatory network using ggalluvial among other R packages. GO, Reactome, KEGG, and GSEA explored interactions in muscle development and regeneration. We identified five candidate lncRNAs (Xist, Gas5, Pvt1, Airn, and Meg3) as potential mediators in these processes and microgravity-induced muscle wasting. Additionally, we created a detailed lncRNA-miRNA-mRNA regulatory network, including interactions such as lncRNA Xist/miR-126/IRS1, lncRNA Xist/miR-486-5p/GAB2, lncRNA Pvt1/miR-148/RAB34, and lncRNA Gas5/miR-455-5p/SOCS3. Significant signaling pathway changes (PI3K/Akt, MAPK, NF-κB, cell cycle, AMPK, Hippo, and cAMP) were observed during muscle development, regeneration, and atrophy. Despite bioinformatics challenges, our research underscores the significant roles of lncRNAs in muscle protein synthesis, degradation, cell proliferation, differentiation, function, and metabolism under both normal and microgravity conditions. This study offers new insights into the molecular mechanisms governing skeletal muscle development and regeneration.

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开发基于cerna的lncRNA-miRNA-mRNA调控网络,揭示骨骼肌发育中的作用。
lncrna在骨骼肌发育和萎缩中的确切作用仍然难以捉摸。我们对来自小鼠研究的26个GEO数据集进行了生物信息学分析,包括胚胎发育、出生后生长、再生、细胞增殖和分化,使用R和相关软件包(limma等)。使用miRcode和lncBaseV2预测LncRNA-miRNA关系,通过miRcode、miRDB和Targetscan7鉴定miRNA-mRNA对。基于ceRNA理论,我们利用ggalluvial等R包构建并可视化了lncRNA-miRNA-mRNA调控网络。GO、Reactome、KEGG和GSEA研究了肌肉发育和再生中的相互作用。我们确定了五个候选lncrna (Xist, Gas5, Pvt1, Airn和Meg3)作为这些过程和微重力诱导的肌肉萎缩的潜在介质。此外,我们创建了一个详细的lncRNA- mirna - mrna调控网络,包括lncRNA Xist/miR-126/IRS1、lncRNA Xist/miR-486-5p/GAB2、lncRNA Pvt1/miR-148/RAB34和lncRNA Gas5/miR-455-5p/SOCS3等相互作用。在肌肉发育、再生和萎缩过程中,观察到显著的信号通路变化(PI3K/Akt、MAPK、NF-κB、细胞周期、AMPK、Hippo和cAMP)。尽管存在生物信息学方面的挑战,但我们的研究强调了lncRNAs在正常和微重力条件下肌肉蛋白合成、降解、细胞增殖、分化、功能和代谢中的重要作用。这项研究为骨骼肌发育和再生的分子机制提供了新的见解。
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