Ding Fu-Peng, Tian Jia-Yi, Wu Jing, Han Dong-Feng, Zhao Ding
Department of Orthopedics Surgery, The First Hospital of Jilin University, Changchun, 130021, China.
Department of Reproductive Medicine and Center for Prenatal Diagnosis, The First Hospital of Jilin University, Changchun, 130000, China.
Cancer Cell Int. 2021 Dec 2;21(1):640. doi: 10.1186/s12935-021-02308-w.
Osteosarcoma (OS) metastasis is the most common cause of cancer-related mortality, however, no sufficient clinical biomarkers have been identified. In this study, we identified five genes to help predict metastasis at diagnosis.
We performed weighted gene co-expression network analysis (WGCNA) to identify the most relevant gene modules associated with OS metastasis. An important machine learning algorithm, the support vector machine (SVM), was employed to predict key genes for classifying the OS metastasis phenotype. Finally, we investigated the clinical significance of key genes and their enriched pathways.
Eighteen modules were identified in WGCNA, among which the pink, red, brown, blue, and turquoise modules demonstrated good preservation. In the five modules, the brown and red modules were highly correlated with OS metastasis. Genes in the two modules closely interacted in protein-protein interaction networks and were therefore chosen for further analysis. Genes in the two modules were primarily enriched in the biological processes associated with tumorigenesis and development. Furthermore, 65 differentially expressed genes were identified as common hub genes in both WGCNA and protein-protein interaction networks. SVM classifiers with the maximum area under the curve were based on 30 and 15 genes in the brown and red modules, respectively. The clinical significance of the 45 hub genes was analyzed. Of the 45 genes, 17 were found to be significantly correlated with survival time. Finally, 5/17 genes, including ADAP2 (P = 0.0094), LCP2 (P = 0.013), ARHGAP25 (P = 0.0049), CD53 (P = 0.016), and TLR7 (P = 0.04) were significantly correlated with the metastatic phenotype. In vitro verification, western blotting, wound healing analyses, transwell invasion assays, proliferation assays, and colony formation assays indicated that ARHGAP25 promoted OS cell migration, invasion, proliferation, and epithelial-mesenchymal transition.
We identified five genes, namely ADAP2, LCP2, ARHGAP25, CD53, and TLR7, as candidate biomarkers for the prediction of OS metastasis; ARHGAP25 inhibits MG63 OS cell growth, migration, and invasion in vitro, indicating that ARHGAP25 can serve as a promising specific and prognostic biomarker for OS metastasis.
骨肉瘤(OS)转移是癌症相关死亡的最常见原因,然而,尚未发现足够的临床生物标志物。在本研究中,我们鉴定了五个基因以帮助预测诊断时的转移情况。
我们进行了加权基因共表达网络分析(WGCNA)以鉴定与OS转移相关的最相关基因模块。采用一种重要的机器学习算法——支持向量机(SVM)来预测用于分类OS转移表型的关键基因。最后,我们研究了关键基因的临床意义及其富集途径。
在WGCNA中鉴定出18个模块,其中粉色、红色、棕色、蓝色和绿松石色模块表现出良好的保守性。在这五个模块中,棕色和红色模块与OS转移高度相关。这两个模块中的基因在蛋白质 - 蛋白质相互作用网络中紧密相互作用,因此被选择进行进一步分析。这两个模块中的基因主要富集在与肿瘤发生和发展相关的生物学过程中。此外,65个差异表达基因被鉴定为WGCNA和蛋白质 - 蛋白质相互作用网络中的共同枢纽基因。曲线下面积最大的SVM分类器分别基于棕色和红色模块中的30个和15个基因。分析了45个枢纽基因的临床意义。在这45个基因中,发现17个与生存时间显著相关。最后,17个基因中的5个,包括ADAP2(P = 0.0094)、LCP2(P = 0.013)、ARHGAP25(P = 0.0049)、CD53(P = 0.016)和TLR7(P = 0.04)与转移表型显著相关。体外验证、蛋白质印迹、伤口愈合分析、Transwell侵袭试验、增殖试验和集落形成试验表明,ARHGAP25促进OS细胞迁移、侵袭、增殖和上皮 - 间质转化。
我们鉴定了五个基因,即ADAP2、LCP2、ARHGAP25、CD53和TLR7,作为预测OS转移的候选生物标志物;ARHGAP25在体外抑制MG63 OS细胞的生长、迁移和侵袭,表明ARHGAP25可作为OS转移的一种有前景的特异性和预后生物标志物。