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Executable pathway analysis using ensemble discrete-state modeling for large-scale data

机译:使用集成离散状态建模进行大规模数据的可执行路径分析

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摘要

Pathway analysis is widely used to gain mechanistic insights from high-throughput omics data. However, most existing methods do not consider signal integration represented by pathway topology, resulting in enrichment of convergent pathways when downstream genes are modulated. Incorporation of signal flow and integration in pathway analysis could rank the pathways based on modulation in key regulatory genes. This implementation can be facilitated for large-scale data by discrete state network modeling due to simplicity in parameterization. Here, we model cellular heterogeneity using discrete state dynamics and measure pathway activities in cross-sectional data. We introduce a new algorithm, Boolean Omics Network Invariant-Time Analysis (BONITA), for signal propagation, signal integration, and pathway analysis. Our signal propagation approach models heterogeneity in transcriptomic data as arising from intercellular heterogeneity rather than intracellular stochasticity, and propagates binary signals repeatedly across networks. Logic rules defining signal integration are inferred by genetic algorithm and are refined by local search. The rules determine the impact of each node in a pathway, which is used to score the probability of the pathway’s modulation by chance. We have comprehensively tested BONITA for application to transcriptomics data from translational studies. Comparison with state-of-the-art pathway analysis methods shows that BONITA has higher sensitivity at lower levels of source node modulation and similar sensitivity at higher levels of source node modulation. Application of BONITA pathway analysis to previously validated RNA-sequencing studies identifies additional relevant pathways in in-vitro human cell line experiments and in-vivo infant studies. Additionally, BONITA successfully detected modulation of disease specific pathways when comparing relevant RNA-sequencing data with healthy controls. Most interestingly, the two highest impact score nodes identified by BONITA included known drug targets. Thus, BONITA is a powerful approach to prioritize not only pathways but also specific mechanistic role of genes compared to existing methods. BONITA is available at: .
机译:通路分析被广泛用于从高通量组学数据中获得机理的见解。但是,大多数现有方法并未考虑以途径拓扑结构表示的信号整合,从而在下游基因被调节时导致会聚途径的富集。信号流的整合和途径分析的整合可以根据关键调控基因的调控对途径进行排序。由于参数化的简单性,通过离散状态网络建模可以简化大规模数据的实现。在这里,我们使用离散状态动力学对细胞异质性进行建模,并在横截面数据中测量路径活动。我们介绍了一种新的算法,布尔Omics网络不变时间分析(BONITA),用于信号传播,信号集成和路径分析。我们的信号传播方法对转录组数据中的异质性进行建模,该异质性是由细胞间异质性而非细胞内随机性引起的,并在网络中重复传播二进制信号。定义信号集成的逻辑规则是通过遗传算法推断的,并通过局部搜索进行完善。规则确定路径中每个节点的影响,该影响用于偶然评估路径调制的可能性。我们已经对BONITA进行了全面的测试,以用于翻译研究的转录组学数据。与最新路径分析方法的比较表明,BONITA在较低级别的源节点调制下具有较高的灵敏度,而在较高级别的源节点调制下具有相似的灵敏度。 BONITA途径分析在先前已验证的RNA测序研究中的应用在体外人细胞系实验和体内婴儿研究中发现了其他相关途径。此外,当将相关的RNA测序数据与健康对照进行比较时,BONITA成功检测出疾病特异性途径的调节。最有趣的是,BONITA确定的两个最高影响评分节点包括已知的药物靶标。因此,与现有方法相比,BONITA是一种强大的方法,不仅可以优先考虑基因的途径,而且可以优先考虑基因的特定机械作用。 BONITA的网址为:。

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