Department of Biotechnology and Bioinformatics, Padmashree Dr. D. Y. Patil University, Navi Mumbai, India.
PLoS One. 2013 Sep 9;8(9):e69724. doi: 10.1371/journal.pone.0069724. eCollection 2013.
Disease Systems Biology is an area of life sciences, which is not very well understood to date. Analyzing infections and their spread in healthy metabolite networks can be one of the focussed areas in this regard. We have proposed a theory based on the classical forest fire model for analyzing the path of infection spread in healthy metabolic pathways. The theory suggests that when fire erupts in a forest, it spreads, and the surrounding trees also catch fire. Similarly, when we consider a metabolic network, the infection caused in the metabolites of the network spreads like a fire. We have constructed a simulation model which is used to study the infection caused in the metabolic networks from the start of infection, to spread and ultimately combating it. For implementation, we have used two approaches, first, based on quantitative strategies using ordinary differential equations and second, using graph-theory based properties. Furthermore, we are using certain probabilistic scores to complete this task and for interpreting the harm caused in the network, given by a 'critical value' to check whether the infection can be cured or not. We have tested our simulation model on metabolic pathways involved in Type I Diabetes mellitus in Homo sapiens. For validating our results biologically, we have used sensitivity analysis, both local and global, as well as for identifying the role of feedbacks in spreading infection in metabolic pathways. Moreover, information in literature has also been used to validate the results. The metabolic network datasets have been collected from the Kyoto Encyclopedia of Genes and Genomes (KEGG).
疾病系统生物学是生命科学的一个领域,目前人们对它的了解还不是很清楚。在这方面,分析感染及其在健康代谢网络中的传播可以是一个重点领域。我们提出了一个基于经典森林火灾模型的理论,用于分析健康代谢途径中感染传播的途径。该理论表明,当森林火灾爆发时,火势会蔓延,周围的树木也会着火。同样,当我们考虑代谢网络时,网络中代谢物的感染会像火灾一样蔓延。我们构建了一个模拟模型,用于从感染开始,到传播,最终控制感染,来研究代谢网络中的感染。为了实现这一目标,我们使用了两种方法,第一种是基于使用常微分方程的定量策略,第二种是基于基于图论的特性。此外,我们还使用某些概率评分来完成这项任务,并解释网络中造成的损害,通过一个“临界值”来检查感染是否可以治愈。我们已经在涉及人类 1 型糖尿病的代谢途径上测试了我们的模拟模型。为了从生物学上验证我们的结果,我们使用了局部和全局敏感性分析,以及识别反馈在代谢途径中传播感染的作用。此外,还使用文献中的信息来验证结果。代谢网络数据集是从京都基因与基因组百科全书(KEGG)中收集的。