Department of Joint Surgery, Tianjin Hospital, Tianjin, China.
Graduate School of Tianjin Medical University, Tianjin Medical University, Tianjin, China.
Orthop Surg. 2023 May;15(5):1333-1347. doi: 10.1111/os.13617. Epub 2022 Dec 13.
To identify key pathological hub genes, micro RNAs (miRNAs), and circular RNAs (circRNAs) of osteoporosis (OP) and construct their ceRNA network in an effort to explore the potential biomarkers and drug targets for OP therapy.
GSE7158, GSE201543, and GSE161361 microarray datasets were downloaded from Gene Expression Omnibus (GEO) database. Differentially expressed genes (DEGs) were identified by comparing OP patients with healthy controls and hub genes were screened by machine learning algorithms. Target miRNAs and circRNAs were predicted by FunRich and circbank, then ceRNA network were constructed by Cytoscape. Pathways affecting OP were identified by functional enrichment analysis. The hub genes were verified by receiver operating characteristic (ROC) curve and real time quantitative PCR (RT-qPCR). Potential drug molecules related to OP were predicted by DSigDB database and molecular docking was analyzed by autodock vina software.
A total of 179 DEGs were identified. By combining three machine learning algorithms, BAG2, MME, SLC14A1, and TRIM44 were identified as hub genes. Three OP-associated target miRNAs and 362 target circRNAs were predicted to establish ceRNA network. The ROC curves showed that these four hub genes had good diagnostic performance and their differential expression was statistically significant in OP animal model. Benzo[a]pyrene was predicted which could successfully bind to protein receptors related to the hub genes and it was served as the potential drug molecules.
An mRNA-miRNA-circRNA network is reported, which provides new ideas for exploring the pathogenesis of OP. Benzo[a]pyrene, as potential drug molecules for OP, may provide guidance for the clinical treatment.
鉴定骨质疏松症(OP)的关键病理枢纽基因、微小 RNA(miRNA)和环状 RNA(circRNA),构建它们的 ceRNA 网络,探索 OP 治疗的潜在生物标志物和药物靶点。
从基因表达综合数据库(GEO)下载 GSE7158、GSE201543 和 GSE161361 微阵列数据集。通过比较 OP 患者与健康对照者,采用机器学习算法鉴定差异表达基因(DEG)。通过 FunRich 和 circbank 预测靶 miRNAs 和 circRNAs,然后通过 Cytoscape 构建 ceRNA 网络。通过功能富集分析鉴定影响 OP 的途径。通过接收者操作特征(ROC)曲线和实时定量 PCR(RT-qPCR)验证枢纽基因。通过 DSigDB 数据库预测与 OP 相关的潜在药物分子,并通过 autodock vina 软件分析分子对接。
共鉴定出 179 个 DEG。通过结合三种机器学习算法,确定 BAG2、MME、SLC14A1 和 TRIM44 为枢纽基因。预测了三个与 OP 相关的靶 miRNA 和 362 个靶 circRNA 以建立 ceRNA 网络。ROC 曲线显示,这四个枢纽基因具有良好的诊断性能,在 OP 动物模型中差异表达具有统计学意义。预测苯并[a]芘可成功结合与枢纽基因相关的蛋白受体,作为潜在的药物分子。
报道了一个 mRNA-miRNA-circRNA 网络,为探索 OP 的发病机制提供了新的思路。苯并[a]芘作为 OP 的潜在药物分子,可能为临床治疗提供指导。