Wu Jun, Wang Bin, Zhou Ju, Ji Fajing
Department of Neurology, Xiangyang Central Hospital, Xianyang, Shanxi 712000, P.R. China.
Jinan ZhangQiu District Hospital of TCM, Jinan, Shandong 250200, P.R. China.
Exp Ther Med. 2019 Apr;17(4):2734-2740. doi: 10.3892/etm.2019.7262. Epub 2019 Feb 13.
MicroRNAs (miRNAs) as biomarkers of numerous diseases, are a novel group of single-stranded, non-coding small RNA molecules, which can regulate the gene expression and transcription or translation of target genes. Therefore, accurately identifying miRNAs and predicting their potential target genes correlated with ischemic stroke contribute to quick understanding and diagnosis of the pathogenesis of ischemic stroke. In order to identify the targets of miRNAs, the differential expression and expression profiling of mRNAs in genome are integrated by using the Gene Expression Omnibus (GEO) database and limma package. Furthermore, the probabilistic scoring approach called TargetScore, is proposed as a promising new technique combined with the expression and sequence information of the known genes. In this study, the priori and posterior probabilities of target genes were obtained by Variational Bayesian-Gaussian Mixture Model (VB-GMM). Consequently, the target genes of miR-124, miR-221 and miR-223, correlated with ischemic stroke, were predicted using the new target prediction algorithm. Ultimately, the comparable downregulation target genes were obtained by integrating the transcendental and posterior values.
微小RNA(miRNA)作为众多疾病的生物标志物,是一类新型的单链非编码小RNA分子,可调节靶基因的基因表达以及转录或翻译。因此,准确识别miRNA并预测其与缺血性中风相关的潜在靶基因,有助于快速了解和诊断缺血性中风的发病机制。为了识别miRNA的靶标,利用基因表达综合数据库(GEO)和limma软件包整合基因组中mRNA的差异表达和表达谱。此外,提出了一种名为TargetScore的概率评分方法,作为一种结合已知基因表达和序列信息的有前景的新技术。在本研究中,通过变分贝叶斯-高斯混合模型(VB-GMM)获得靶基因的先验概率和后验概率。因此,使用新的靶标预测算法预测了与缺血性中风相关的miR-124、miR-221和miR-223的靶基因。最终,通过整合先验值和后验值获得了具有可比性的下调靶基因。