Department of Genetics, Faculty of Medicine of Ribeirão Preto, University of São Paulo - USP, Av. Bandeirantes 3900, Monte Alegre 14049-900, Ribeirão Preto, SP, Brazil.
Department of Genetics, Faculty of Medicine of Ribeirão Preto, University of São Paulo - USP, Av. Bandeirantes 3900, Monte Alegre 14049-900, Ribeirão Preto, SP, Brazil; Department of Biology, Faculty of Philosophy, Sciences and Letters of Ribeirão Preto, University of São Paulo - USP, Av. Bandeirantes 3900, Monte Alegre 14040-901, Ribeirão Preto, SP, Brazil.
Gene. 2014 Apr 15;539(2):213-23. doi: 10.1016/j.gene.2014.01.075. Epub 2014 Feb 11.
Type 1 diabetes mellitus (T1DM) results from an autoimmune attack against the insulin-producing pancreatic β-cells, leading to elimination of insulin production. The exact cause of this disorder is still unclear. Although the differential expression of microRNAs (miRNAs), small non-coding RNAs that control gene expression in a post-transcriptional manner, has been identified in many diseases, including T1DM, only scarce information exists concerning miRNA expression profile in T1DM. Thus, we employed the microarray technology to examine the miRNA expression profiles displayed by peripheral blood mononuclear cells (PBMCs) from T1DM patients compared with healthy subjects. Total RNA extracted from PBMCs from 11 T1DM patients and nine healthy subjects was hybridized onto Agilent human miRNA microarray slides (V3), 8x15K, and expression data were analyzed on R statistical environment. After applying the rank products statistical test, the receiver-operating characteristic (ROC) curves were generated and the areas under the ROC curves (AUC) were calculated. To examine the functions of the differentially expressed (p-value<0.01, percentage of false-positives <0.05) miRNAs that passed the AUC cutoff value ≥ 0.90, the database miRWalk was used to predict their potential targets, which were afterwards submitted to the functional annotation tool provided by the Database for Annotation, Visualization, and Integrated Discovery (DAVID), version 6.7, using annotations from the Kyoto Encyclopedia of Genes and Genomes (KEGG) pathway analysis. We found 57 probes, corresponding to 44 different miRNAs (35 up-regulated and 9 down-regulated), that were differentially expressed in T1DM and passed the AUC threshold of 0.90. The hierarchical clustering analysis indicated the discriminatory power of those miRNAs, since they were able to clearly distinguish T1DM patients from healthy individuals. Target prediction indicated that 47 candidate genes for T1DM are potentially regulated by the differentially expressed miRNAs. After performing functional annotation analysis of the predicted targets, we observed 22 and 12 annotated KEGG pathways for the induced and repressed miRNAs, respectively. Interestingly, many pathways were enriched for the targets of both up- and down-regulated miRNAs and the majority of those pathways have been previously associated with T1DM, including many cancer-related pathways. In conclusion, our study indicated miRNAs that may be potential biomarkers of T1DM as well as provided new insights into the molecular mechanisms involved in this disorder.
1 型糖尿病(T1DM)是由针对产生胰岛素的胰腺β细胞的自身免疫攻击引起的,导致胰岛素产生的消除。这种疾病的确切原因尚不清楚。虽然微小 RNA(miRNA)的差异表达,即小非编码 RNA 以转录后方式控制基因表达,已在包括 T1DM 在内的许多疾病中得到鉴定,但关于 T1DM 中 miRNA 表达谱的信息却很少。因此,我们采用微阵列技术检测了来自 T1DM 患者和健康对照者外周血单个核细胞(PBMCs)的 miRNA 表达谱。从 11 名 T1DM 患者和 9 名健康对照者的 PBMCs 中提取总 RNA,杂交到 Agilent 人类 miRNA 微阵列载玻片(V3)上,8x15K,并在 R 统计环境中分析表达数据。应用秩和检验统计后,生成接收者操作特征(ROC)曲线,并计算 ROC 曲线下的面积(AUC)。为了检查通过 AUC 截止值≥0.90 的差异表达(p 值<0.01,假阳性率<0.05)miRNA 的功能,使用 miRWalk 数据库预测其潜在靶标,然后将其提交给数据库注释、可视化和综合发现(DAVID)版本 6.7 的功能注释工具,使用京都基因和基因组百科全书(KEGG)途径分析的注释。我们发现 57 个探针,对应 44 个不同的 miRNA(35 个上调和 9 个下调),在 T1DM 中差异表达并通过 AUC 阈值 0.90。层次聚类分析表明了这些 miRNA 的区分能力,因为它们能够清楚地区分 T1DM 患者和健康个体。靶标预测表明,47 个候选基因可能受差异表达 miRNA 的调节。对预测靶标的功能注释分析后,我们观察到诱导和抑制 miRNA 的 22 个和 12 个注释 KEGG 途径。有趣的是,许多途径富含上调和下调 miRNA 的靶标,并且大多数这些途径以前与 T1DM 相关,包括许多与癌症相关的途径。总之,我们的研究表明,miRNA 可能是 T1DM 的潜在生物标志物,并为该疾病的分子机制提供了新的见解。