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SMARTS: reconstructing disease response networks from multiple individuals using time series gene expression data

机译:SMARTS:使用时间序列基因表达数据从多个个体重建疾病反应网络

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摘要

>Motivation: Current methods for reconstructing dynamic regulatory networks are focused on modeling a single response network using model organisms or cell lines. Unlike these models or cell lines, humans differ in their background expression profiles due to age, genetics and life factors. In addition, there are often differences in start and end times for time series human data and in the rate of progress based on the specific individual. Thus, new methods are required to integrate time series data from multiple individuals when modeling and constructing disease response networks.>Results: We developed Scalable Models for the Analysis of Regulation from Time Series (SMARTS), a method integrating static and time series data from multiple individuals to reconstruct condition-specific response networks in an unsupervised way. Using probabilistic graphical models, SMARTS iterates between reconstructing different regulatory networks and assigning individuals to these networks, taking into account varying individual start times and response rates. These models can be used to group different sets of patients and to identify transcription factors that differentiate the observed responses between these groups. We applied SMARTS to analyze human response to influenza and mouse brain development. In both cases, it was able to greatly improve baseline groupings while identifying key relevant TFs that differ between the groups. Several of these groupings and TFs are known to regulate the relevant processes while others represent novel hypotheses regarding immune response and development.>Availability and implementation: Software and Supplementary information are available at .>Contact: >Supplementary information: are available at Bioinformatics online.
机译:>动机:当前用于重建动态监管网络的方法着重于使用模型生物或细胞系对单个响应网络进行建模。与这些模型或细胞系不同,由于年龄,遗传和生活因素,人类的背景表达谱有所不同。此外,时间序列人类数据的开始时间和结束时间以及基于特定个体的进度通常会有所不同。因此,在建模和构建疾病反应网络时,需要新的方法来整合来自多个人的时间序列数据。>结果:我们开发了可扩展模型,用于分析时间序列的法规(SMARTS),该方法是来自多个人的静态和时间序列数据,以无人监督的方式重建条件特定的响应网络。使用概率图形模型,SMARTS在重构不同的监管网络与将个人分配给这些网络之间进行迭代,同时考虑到个人开始时间和响应率的变化。这些模型可用于对不同组的患者进行分组,并识别区分这些组之间观察到的反应的转录因子。我们应用SMARTS分析了人类对流感和小鼠大脑发育的反应。在这两种情况下,它都能极大地改善基线分组,同时识别出各组之间不同的关键相关TF。已知这些分组和TF中的一些可调节相关过程,而另一些则代表有关免疫应答和发育的新假设。>可用性和实现:可从以下网站获得软件和补充信息。>联系方式:>补充信息:可在线访问生物信息学。

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