Shamini Hemandhar Kumar, Katharina Brandt, Peter Claus, Klaus Jung
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Although several studies have examined the transcriptomic profile of SMA, the difference in experimental settings across these studies highlight the need for a comparative meta-analysis to better understand these differences.</p><p><strong>Methods and data: </strong>We conducted a systematic comparative meta-analysis of publicly available gene expression data from six selected studies to elucidate variations in the transcriptomic landscape across different experimental conditions, including tissue types and mouse models. We used both microarray and RNA-seq datasets, retrieved from Gene Expression Omnibus (GEO) and ArrayExpress (AE). Methods included normalization, differential expression analysis, gene-set enrichment analysis (GSEA), network reconstruction and co-expression analysis.</p><p><strong>Results: </strong>Differential expression analysis revealed varying numbers of differentially expressed genes ranging between zero and 1,655 across the selected studies. Notably, the Metallothionein gene Mt2 was common in several of the eight comparisons. This highlights its role in oxidative stress and detoxification. Additionally, genes such as Hspb1, St14 and Sult1a1 were among the top ten differentially expressed genes in more than one comparison. The Snrpa1 gene, involved in pre-mRNA splicing, was upregulated in the spinal cord and has a strong correlation with other differentially expressed genes from other comparisons in our network reconstruction analysis. Gene-set enrichment analysis identified significant GO terms such as contractile fibers and myosin complexes in more than one comparison which highlights its significant role in SMA.</p><p><strong>Conclusions: </strong>Our comparative meta-analysis identified only few genes and pathways that were consistently dysregulated in SMA across different tissues and experimental settings. Conversely, many genes and pathways appeared to play a tissue-specific role in SMA. 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引用次数: 0
摘要
背景:脊髓性肌肉萎缩症(SMA脊髓性肌肉萎缩症(SMA)是一种神经肌肉疾病,由于运动神经元退化而导致肌肉无力。存活运动神经元 1(SMN1)基因突变导致 SMN 蛋白缺乏,从而引发 SMA。与 SMA 相关的分子改变遍及转录组和蛋白质组。虽然已有多项研究对 SMA 的转录组概况进行了研究,但这些研究的实验环境各不相同,因此需要进行比较荟萃分析,以更好地了解这些差异:我们对来自六项选定研究的公开基因表达数据进行了系统的比较荟萃分析,以阐明不同实验条件(包括组织类型和小鼠模型)下转录组的变化。我们使用了从基因表达总库(GEO)和 ArrayExpress(AE)检索到的微阵列和 RNA-seq 数据集。方法包括归一化、差异表达分析、基因组富集分析(GSEA)、网络重建和共表达分析:结果:差异表达分析显示,所选研究中差异表达基因的数量不等,从零到 1,655 个不等。值得注意的是,金属硫蛋白基因 Mt2 在八项比较中的几项中都很常见。这突显了它在氧化应激和解毒中的作用。此外,Hspb1、St14 和 Sult1a1 等基因在不止一次比较中跻身前十大差异表达基因之列。在我们的网络重建分析中,参与前核糖核酸剪接的 Snrpa1 基因在脊髓中上调,并与其他比较中的其他差异表达基因有很强的相关性。基因集富集分析在多个比较中发现了重要的GO术语,如收缩纤维和肌球蛋白复合物,这突显了其在SMA中的重要作用:我们的比较荟萃分析发现,在不同组织和实验环境中,只有少数基因和通路在 SMA 中持续失调。相反,许多基因和通路似乎在 SMA 中发挥着组织特异性的作用。与原始研究相比,可重复性较弱。
Comparative meta-analysis of transcriptomic studies in spinal muscular atrophy: comparison between tissues and mouse models.
Background: Spinal Muscular Atrophy (SMA), a neuromuscular disorder that leads to weakness in the muscles due to degeneration of motor neurons. Mutations in the survival motor neuron 1 (SMN1) gene leads to the deficiency of SMN protein that causes SMA. The molecular alterations associated with SMA extends across the transcriptome and proteome. Although several studies have examined the transcriptomic profile of SMA, the difference in experimental settings across these studies highlight the need for a comparative meta-analysis to better understand these differences.
Methods and data: We conducted a systematic comparative meta-analysis of publicly available gene expression data from six selected studies to elucidate variations in the transcriptomic landscape across different experimental conditions, including tissue types and mouse models. We used both microarray and RNA-seq datasets, retrieved from Gene Expression Omnibus (GEO) and ArrayExpress (AE). Methods included normalization, differential expression analysis, gene-set enrichment analysis (GSEA), network reconstruction and co-expression analysis.
Results: Differential expression analysis revealed varying numbers of differentially expressed genes ranging between zero and 1,655 across the selected studies. Notably, the Metallothionein gene Mt2 was common in several of the eight comparisons. This highlights its role in oxidative stress and detoxification. Additionally, genes such as Hspb1, St14 and Sult1a1 were among the top ten differentially expressed genes in more than one comparison. The Snrpa1 gene, involved in pre-mRNA splicing, was upregulated in the spinal cord and has a strong correlation with other differentially expressed genes from other comparisons in our network reconstruction analysis. Gene-set enrichment analysis identified significant GO terms such as contractile fibers and myosin complexes in more than one comparison which highlights its significant role in SMA.
Conclusions: Our comparative meta-analysis identified only few genes and pathways that were consistently dysregulated in SMA across different tissues and experimental settings. Conversely, many genes and pathways appeared to play a tissue-specific role in SMA. In comparison with the original studies, reproducibility was rather weak.
期刊介绍:
BMC Medical Genomics is an open access journal publishing original peer-reviewed research articles in all aspects of functional genomics, genome structure, genome-scale population genetics, epigenomics, proteomics, systems analysis, and pharmacogenomics in relation to human health and disease.