Mol Milsee, Patole Milind S, Singh Shailza
National Centre for Cell Science, NCCS Complex, Ganeshkhind, Pune University Campus, Pune, India.
Syst Synth Biol. 2013 Dec;7(4):185-95. doi: 10.1007/s11693-013-9111-9. Epub 2013 Jul 4.
Network of signaling proteins and functional interaction between the infected cell and the leishmanial parasite, though are not well understood, may be deciphered computationally by reconstructing the immune signaling network. As we all know signaling pathways are well-known abstractions that explain the mechanisms whereby cells respond to signals, collections of pathways form networks, and interactions between pathways in a network, known as cross-talk, enables further complex signaling behaviours. In silico perturbations can help identify sensitive crosstalk points in the network which can be pharmacologically tested. In this study, we have developed a model for immune signaling cascade in leishmaniasis and based upon the interaction analysis obtained through simulation, we have developed a model network, between four signaling pathways i.e., CD14, epidermal growth factor (EGF), tumor necrotic factor (TNF) and PI3 K mediated signaling. Principal component analysis of the signaling network showed that EGF and TNF pathways can be potent pharmacological targets to curb leishmaniasis. The approach is illustrated with a proposed workable model of epidermal growth factor receptor (EGFR) that modulates the immune response. EGFR signaling represents a critical junction between inflammation related signal and potent cell regulation machinery that modulates the expression of cytokines.
尽管感染细胞与利什曼原虫寄生虫之间的信号蛋白网络及其功能相互作用尚未完全清楚,但通过重建免疫信号网络可以进行计算解读。众所周知,信号通路是解释细胞对信号作出反应机制的著名抽象概念,通路的集合形成网络,网络中通路之间的相互作用(称为串扰)能够产生更复杂的信号行为。计算机模拟扰动有助于识别网络中可进行药理学测试的敏感串扰点。在本研究中,我们建立了利什曼病免疫信号级联模型,并基于模拟获得的相互作用分析,构建了四个信号通路(即CD14、表皮生长因子(EGF)、肿瘤坏死因子(TNF)和PI3 K介导的信号通路)之间的模型网络。信号网络的主成分分析表明,EGF和TNF通路可能是控制利什曼病的有效药理学靶点。通过一个拟议的可调节免疫反应的表皮生长因子受体(EGFR)可行模型对该方法进行了说明。EGFR信号代表炎症相关信号与调节细胞因子表达的有效细胞调节机制之间的关键连接点。