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首页> 外文期刊>BMC Systems Biology >Constraints on signaling network logic reveal functional subgraphs on Multiple Myeloma OMIC data
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Constraints on signaling network logic reveal functional subgraphs on Multiple Myeloma OMIC data

机译:信号网络逻辑的约束揭示了多发性骨髓瘤OMIC数据的功能子图

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摘要

The integration of gene expression profiles (GEPs) and large-scale biological networks derived from pathways databases is a subject which is being widely explored. Existing methods are based on network distance measures among significantly measured species. Only a small number of them include the directionality and underlying logic existing in biological networks. In this study we approach the GEP-networks integration problem by considering the network logic, however our approach does not require a prior species selection according to their gene expression level. We start by modeling the biological network representing its underlying logic using Logic Programming. This model points to reachable network discrete states that maximize a notion of harmony between the molecular species active or inactive possible states and the directionality of the pathways reactions according to their activator or inhibitor control role. Only then, we confront these network states with the GEP. From this confrontation independent graph components are derived, each of them related to a fixed and optimal assignment of active or inactive states. These components allow us to decompose a large-scale network into subgraphs and their molecular species state assignments have different degrees of similarity when compared to the same GEP. We apply our method to study the set of possible states derived from a subgraph from the NCI-PID Pathway Interaction Database. This graph links Multiple Myeloma (MM) genes to known receptors for this blood cancer. We discover that the NCI-PID MM graph had 15 independent components, and when confronted to 611 MM GEPs, we find 1 component as being more specific to represent the difference between cancer and healthy profiles.
机译:基因表达谱(GEPs)和从路径数据库派生的大规模生物网络的整合是一个正在广泛探索的主题。现有方法基于显着测量物种之间的网络距离度量。它们中只有少数包含生物网络中存在的方向性和基本逻辑。在本研究中,我们通过考虑网络逻辑来解决GEP网络集成问题,但是我们的方法不需要根据其基因表达水平来选择先前的物种。我们首先使用逻辑编程对代表其底层逻辑的生物网络进行建模。该模型指出了可达的网络离散状态,该状态使分子种类的活跃或不活跃可能状态与途径反应的方向性(根据其激活剂或抑制剂控制作用)之间的和谐概念最大化。只有这样,我们才能通过GEP面对这些网络状态。从这种对抗中,可以得出独立的图分量,每个分量都与活动状态或非活动状态的固定和最佳分配有关。这些组件使我们能够将大型网络分解为子图,并且与相同的GEP相比,它们的分子种类状态分配具有不同程度的相似性。我们应用我们的方法来研究从NCI-PID路径交互数据库的子图派生的可能状态集。此图将多发性骨髓瘤(MM)基因与该血液癌的已知受体相关联。我们发现NCI-PID MM图具有15个独立的组件,当面对611个MM GEP时,我们发现1个组件更能代表癌症和健康状况之间的差异。

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