Department of Biochemistry, University of Nebraska-Lincoln , Lincoln, NE , USA.
Department of Mathematics, University of Nebraska at Omaha , Omaha, NE , USA.
Front Bioeng Biotechnol. 2016 Feb 11;4:10. doi: 10.3389/fbioe.2016.00010. eCollection 2016.
Dysregulation in signal transduction pathways can lead to a variety of complex disorders, including cancer. Computational approaches such as network analysis are important tools to understand system dynamics as well as to identify critical components that could be further explored as therapeutic targets. Here, we performed perturbation analysis of a large-scale signal transduction model in extracellular environments that stimulate cell death, growth, motility, and quiescence. Each of the model's components was perturbed under both loss-of-function and gain-of-function mutations. Using 1,300 simulations under both types of perturbations across various extracellular conditions, we identified the most and least influential components based on the magnitude of their influence on the rest of the system. Based on the premise that the most influential components might serve as better drug targets, we characterized them for biological functions, housekeeping genes, essential genes, and druggable proteins. The most influential components under all environmental conditions were enriched with several biological processes. The inositol pathway was found as most influential under inactivating perturbations, whereas the kinase and small lung cancer pathways were identified as the most influential under activating perturbations. The most influential components were enriched with essential genes and druggable proteins. Moreover, known cancer drug targets were also classified in influential components based on the affected components in the network. Additionally, the systemic perturbation analysis of the model revealed a network motif of most influential components which affect each other. Furthermore, our analysis predicted novel combinations of cancer drug targets with various effects on other most influential components. We found that the combinatorial perturbation consisting of PI3K inactivation and overactivation of IP3R1 can lead to increased activity levels of apoptosis-related components and tumor-suppressor genes, suggesting that this combinatorial perturbation may lead to a better target for decreasing cell proliferation and inducing apoptosis. Finally, our approach shows a potential to identify and prioritize therapeutic targets through systemic perturbation analysis of large-scale computational models of signal transduction. Although some components of the presented computational results have been validated against independent gene expression data sets, more laboratory experiments are warranted to more comprehensively validate the presented results.
信号转导通路的失调可导致多种复杂疾病,包括癌症。计算方法,如网络分析,是理解系统动力学以及识别可进一步探索作为治疗靶点的关键组件的重要工具。在这里,我们对刺激细胞死亡、生长、迁移和静止的细胞外环境中的大规模信号转导模型进行了扰动分析。模型的每个组件都在功能丧失和功能获得突变下进行了扰动。使用这两种类型的扰动下的 1300 次模拟,针对各种细胞外条件,我们根据其对系统其余部分的影响程度,确定了最有影响力和最没有影响力的组件。基于最有影响力的组件可能作为更好的药物靶点的前提,我们对它们的生物学功能、管家基因、必需基因和可用药蛋白进行了特征描述。在所有环境条件下,最有影响力的组件都富含几个生物学过程。在失活扰动下,肌醇途径被发现是最有影响力的,而在激活扰动下,激酶和小细胞肺癌途径被确定为最有影响力的。最有影响力的组件富含必需基因和可用药蛋白。此外,已知的癌症药物靶点也根据网络中受影响的组件分类到有影响力的组件中。此外,模型的系统扰动分析揭示了一个最有影响力的组件的网络基元,这些组件相互影响。此外,我们的分析预测了具有各种对其他最有影响力组件影响的新型癌症药物靶点组合。我们发现,由 PI3K 失活和 IP3R1 过度激活组成的组合扰动可导致与凋亡相关的组件和肿瘤抑制基因的活性水平增加,这表明这种组合扰动可能成为降低细胞增殖和诱导凋亡的更好靶点。最后,我们的方法通过对信号转导的大规模计算模型进行系统扰动分析,显示了识别和优先考虑治疗靶点的潜力。虽然所提出的计算结果的一些组件已经针对独立的基因表达数据集进行了验证,但还需要更多的实验室实验来更全面地验证所提出的结果。