Centre for Analytical Bioscience, Advanced Materials and Healthcare Technologies Division, School of Pharmacy, University of Nottingham, Nottingham, NG7 2RD, UK.
Nottingham BBSRC/EPSRC Synthetic Biology Research Centre (SBRC), School of Life Sciences, BioDiscovery Institute, University of Nottingham, Nottingham, NG7 2RD, UK.
Sci Rep. 2022 Jul 1;12(1):11189. doi: 10.1038/s41598-022-14721-w.
The manifestation of intra- and inter-tumor heterogeneity hinders the development of ubiquitous cancer treatments, thus requiring a tailored therapy for each cancer type. Specifically, the reprogramming of cellular metabolism has been identified as a source of potential drug targets. Drug discovery is a long and resource-demanding process aiming at identifying and testing compounds early in the drug development pipeline. While drug repurposing efforts (i.e., inspecting readily available approved drugs) can be supported by a mechanistic rationale, strategies to further reduce and prioritize the list of potential candidates are still needed to facilitate feasible studies. Although a variety of 'omics' data are widely gathered, a standard integration method with modeling approaches is lacking. For instance, flux balance analysis is a metabolic modeling technique that mainly relies on the stoichiometry of the metabolic network. However, exploring the network's topology typically neglects biologically relevant information. Here we introduce Transcriptomics-Informed Stoichiometric Modelling And Network analysis (TISMAN) in a recombinant innovation manner, allowing identification and validation of genes as targets for drug repurposing using glioblastoma as an exemplar.
肿瘤内和肿瘤间异质性的表现阻碍了普遍癌症治疗方法的发展,因此需要针对每种癌症类型进行量身定制的治疗。具体而言,细胞代谢的重编程已被确定为潜在药物靶点的来源。药物发现是一个漫长且资源密集型的过程,旨在在药物开发管道的早期识别和测试化合物。虽然药物再利用(即检查现成的已批准药物)可以得到机制合理性的支持,但仍需要进一步减少和优先考虑潜在候选药物的列表的策略,以促进可行的研究。尽管广泛收集了各种“组学”数据,但缺乏具有建模方法的标准整合方法。例如,通量平衡分析是一种代谢建模技术,主要依赖于代谢网络的化学计量。然而,探索网络的拓扑结构通常忽略了生物学上相关的信息。在这里,我们以重组创新的方式引入了转录组学信息代谢建模和网络分析(TISMAN),允许使用神经胶质瘤作为范例识别和验证作为药物再利用靶点的基因。