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Gene network inference from incomplete expression data: transcriptional control of hematopoietic commitment.

机译:从不完整的表达数据推断基因网络:造血作用的转录控制。

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MOTIVATION: The topology and function of gene regulation networks are commonly inferred from time series of gene expression levels in cell populations. This strategy is usually invalid if the gene expression in different cells of the population is not synchronous. A promising, though technically more demanding alternative is therefore to measure the gene expression levels in single cells individually. The inference of a gene regulation network requires knowledge of the gene expression levels at successive time points, at least before and after a network transition. However, owing to experimental limitations a complete determination of the precursor state is not possible. RESULTS: We investigate a strategy for the inference of gene regulatory networks from incomplete expression data based on dynamic Bayesian networks. This permits prediction of the number of experiments necessary for network inference depending on parameters including noise in the data, prior knowledge and limited attainability of initial states. Our strategy combines a gradual 'Partial Learning' approach based solely on true experimental observations for the network topology with expectation maximization for the network parameters. We illustrate our strategy by extensive computer simulations in a high-dimensional parameter space in a simulated single-cell-based example of hematopoietic stem cell commitment and in random networks of different sizes. We find that the feasibility of network inferences increases significantly with the experimental ability to force the system into different initial network states, with prior knowledge and with noise reduction. AVAILABILITY: Source code is available under: www.izbi.uni-leipzig.de/services/NetwPartLearn.html SUPPLEMENTARY INFORMATION: Supplementary Data are available at Bioinformatics online.
机译:动机:基因调控网络的拓扑结构和功能通常是根据细胞群体中基因表达水平的时间序列来推断的。如果群体不同细胞中的基因表达不同步,则该策略通常无效。因此,尽管在技术上要求更高,但一种有前途的选择是单独测量单个细胞中的基因表达水平。基因调控网络的推论需要了解至少在网络过渡前后的连续时间点的基因表达水平。但是,由于实验限制,无法完全确定前体状态。结果:我们研究了基于动态贝叶斯网络从不完整表达数据推断基因调控网络的策略。这样就可以根据包括数据中的噪声,先验知识和有限的初始状态可获性在内的参数来预测网络推理所需的实验次数。我们的策略结合了仅基于对网络拓扑的真实实验观察和对网络参数的期望最大化的渐进式“部分学习”方法。我们通过在高维参数空间中进行大量计算机模拟来说明我们的策略,该模拟空间是在模拟的基于单细胞的造血干细胞承诺以及不同大小的随机网络中。我们发现,利用先验知识并通过降噪将系统强制为不同的初始网络状态的实验能力,网络推理的可行性大大提高。可用性:源代码可在以下网站获得:www.izbi.uni-leipzig.de/services/NetwPartLearn.html补充信息:补充数据可从在线生物信息学获得。

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