Bhowmick Rupa, Sarkar Ram Rup
Chemical Engineering and Process Development Division, CSIR-National Chemical Laboratory, Pune, Maharashtra, 411008, India.
Academy of Scientific and Innovative Research (AcSIR), Ghaziabad, 201002, India.
Mol Genet Genomics. 2023 Jan;298(1):161-181. doi: 10.1007/s00438-022-01966-3. Epub 2022 Nov 11.
MicroRNAs (miRNAs) play important role in regulating cellular metabolism, and are currently being explored in cancer. As metabolic reprogramming in cancer is a major mediator of phenotypic plasticity, understanding miRNA-regulated metabolism will provide opportunities to identify miRNA targets that can regulate oncogenic phenotypes by taking control of cellular metabolism. In the present work, we studied the effect of differentially expressed miRNAs on metabolism, and associated oncogenic phenotypes in glioblastoma (GBM) using patient-derived data. Networks of differentially expressed miRNAs and metabolic genes were created and analyzed to identify important miRNAs that regulate major metabolism in GBM. Graph network-based approaches like network diffusion, backbone extraction, and different centrality measures were used to analyze these networks for identification of potential miRNA targets. Important metabolic processes and cellular phenotypes were annotated to trace the functional responses associated with these miRNA-regulated metabolic genes and associated phenotype networks. miRNA-regulated metabolic gene subnetworks of cellular phenotypes were extracted, and important miRNAs regulating these phenotypes were identified. The most important outcome of the study is the target miRNA combinations predicted for five different oncogenic phenotypes that can be tested experimentally for miRNA-based therapeutic design in GBM. Strategies implemented in the study can be used to generate testable hypotheses in other cancer types as well, and design context-specific miRNA-based therapy for individual patient. Their usability can be further extended to other gene regulatory networks in cancer and other genetic diseases.
微小RNA(miRNA)在调节细胞代谢中发挥着重要作用,目前正在癌症研究中进行探索。由于癌症中的代谢重编程是表型可塑性的主要介导因素,了解miRNA调节的代谢将为识别通过控制细胞代谢来调节致癌表型的miRNA靶点提供机会。在本研究中,我们使用患者来源的数据研究了差异表达的miRNA对胶质母细胞瘤(GBM)代谢及相关致癌表型的影响。构建并分析了差异表达的miRNA和代谢基因网络,以识别调节GBM主要代谢的重要miRNA。使用基于图网络的方法,如网络扩散、主干提取和不同的中心性度量,来分析这些网络以识别潜在的miRNA靶点。对重要的代谢过程和细胞表型进行注释,以追踪与这些miRNA调节的代谢基因及相关表型网络相关的功能反应。提取了细胞表型的miRNA调节的代谢基因子网,并识别了调节这些表型的重要miRNA。该研究最重要的成果是预测了五种不同致癌表型的靶向miRNA组合,可在GBM中基于miRNA的治疗设计中进行实验测试。该研究中实施的策略也可用于在其他癌症类型中生成可测试的假设,并为个体患者设计针对特定背景的基于miRNA的治疗方案。它们的实用性可以进一步扩展到癌症和其他遗传疾病中的其他基因调控网络。