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Computing interaction probabilities in signaling networks. 信令网络中交互概率的计算。
Pub Date : 2015-11-11 eCollection Date: 2015-12-01 DOI: 10.1186/s13637-015-0031-8
Haitham Gabr, Juan Carlos Rivera-Mulia, David M Gilbert, Tamer Kahveci

Biological networks inherently have uncertain topologies. This arises from many factors. For instance, interactions between molecules may or may not take place under varying conditions. Genetic or epigenetic mutations may also alter biological processes like transcription or translation. This uncertainty is often modeled by associating each interaction with a probability value. Studying biological networks under this probabilistic model has already been shown to yield accurate and insightful analysis of interaction data. However, the problem of assigning accurate probability values to interactions remains unresolved. In this paper, we present a novel method for computing interaction probabilities in signaling networks based on transcription levels of genes. The transcription levels define the signal reachability probability between membrane receptors and transcription factors. Our method computes the interaction probabilities that minimize the gap between the observed and the computed signal reachability probabilities. We evaluate our method on four signaling networks from the Kyoto Encyclopedia of Genes and Genomes (KEGG). For each network, we compute its edge probabilities using the gene expression profiles for seven major leukemia subtypes. We use these values to analyze how the stress induced by different leukemia subtypes affects signaling interactions.

生物网络本质上具有不确定的拓扑结构。这是由许多因素引起的。例如,分子之间的相互作用在不同的条件下可能发生,也可能不发生。遗传或表观遗传突变也可能改变转录或翻译等生物过程。这种不确定性通常通过将每个交互作用与概率值相关联来建模。在这种概率模型下研究生物网络已经被证明可以对相互作用数据进行准确而深刻的分析。然而,为相互作用分配准确的概率值的问题仍然没有解决。在本文中,我们提出了一种基于基因转录水平计算信号网络中相互作用概率的新方法。转录水平决定了膜受体与转录因子之间信号可达的概率。我们的方法计算交互概率,使观测到的和计算得到的信号可达概率之间的差距最小化。我们在京都基因与基因组百科全书(KEGG)中的四个信号网络上评估了我们的方法。对于每个网络,我们使用七种主要白血病亚型的基因表达谱计算其边缘概率。我们使用这些值来分析不同白血病亚型诱导的应激如何影响信号相互作用。
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引用次数: 5
40-Hz ASSR fusion classification system for observing sleep patterns. 用于观察睡眠模式的40hz ASSR融合分类系统。
Pub Date : 2015-02-05 eCollection Date: 2015-12-01 DOI: 10.1186/s13637-014-0021-2
Gulzar A Khuwaja, Sahar Javaher Haghighi, Dimitrios Hatzinakos

This paper presents a fusion-based neural network (NN) classification algorithm for 40-Hz auditory steady state response (ASSR) ensemble averaged signals which were recorded from eight human subjects for observing sleep patterns (wakefulness W0 and deep sleep N3 or slow wave sleep SWS). In SWS, sensitivity to pain is the lowest relative to other sleep stages and arousal needs stronger stimuli. 40-Hz ASSR signals were extracted by averaging over 900 sweeps on a 30-s window. Signals generated during N3 deep sleep state show similarities to those produced when general anesthesia is given to patients during clinical surgery. Our experimental results show that the automatic classification system used identifies sleep states with an accuracy rate of 100% when the training and test signals come from the same subjects while its accuracy is reduced to 97.6%, on average, when signals are used from different training and test subjects. Our results may lead to future classification of consciousness and wakefulness of patients with 40-Hz ASSR for observing the depth and effects of general anesthesia (DGA).

本文提出了一种基于融合的神经网络(NN)分类算法,该算法对8名受试者的40 hz听觉稳态响应(ASSR)集合平均信号进行分类,这些信号来自于观察睡眠模式(清醒W0和深度睡眠N3或慢波睡眠SWS)。在SWS中,对疼痛的敏感性相对于其他睡眠阶段是最低的,唤醒需要更强的刺激。40 hz的ASSR信号通过在30秒的窗口上平均900次扫描来提取。N3深度睡眠时产生的信号与临床手术全麻时产生的信号相似。实验结果表明,当训练和测试信号来自同一受试者时,所使用的自动分类系统识别睡眠状态的准确率为100%,而当训练和测试信号来自不同受试者时,其准确率平均下降到97.6%。我们的研究结果可能为未来40 hz ASSR患者的意识和清醒分类提供依据,以观察全身麻醉(DGA)的深度和效果。
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引用次数: 5
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EURASIP journal on bioinformatics & systems biology
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