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CODA: Integrating multi-level context-oriented directed associations for analysis of drug effects

机译:CODA:集成多级面向上下文的定向协会以分析药物效果

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摘要

In silico network-based methods have shown promising results in the field of drug development. Yet, most of networks used in the previous research have not included context information even though biological associations actually do appear in the specific contexts. Here, we reconstruct an anatomical context-specific network by assigning contexts to biological associations using protein expression data and scientific literature. Furthermore, we employ the context-specific network for the analysis of drug effects with a proximity measure between drug targets and diseases. Distinct from previous context-specific networks, intercellular associations and phenomic level entities such as biological processes are included in our network to represent the human body. It is observed that performances in inferring drug-disease associations are increased by adding context information and phenomic level entities. In particular, hypertension, a disease related to multiple organs and associated with several phenomic level entities, is analyzed in detail to investigate how our network facilitates the inference of drug-disease associations. Our results indicate that the inclusion of context information, intercellular associations, and phenomic level entities can contribute towards a better prediction of drug-disease associations and provide detailed insight into understanding of how drugs affect diseases in the human body.
机译:基于计算机网络的方法已在药物开发领域显示出令人鼓舞的结果。然而,尽管生物学关联确实确实出现在特定的环境中,但先前研究中使用的大多数网络并未包括环境信息。在这里,我们通过使用蛋白质表达数据和科学文献将上下文分配给生物学关联来重建解剖上下文特定的网络。此外,我们采用特定于上下文的网络来分析药物效果,并在药物靶标和疾病之间进行接近度测量。与以前的特定于上下文的网络不同,我们的网络中包含细胞间关联和表观水平的实体(例如生物过程),以代表人体。可以观察到,通过添加上下文信息和表型水平实体,可以提高推断药物-疾病关联的性能。特别是,对高血压(一种与多个器官相关并与几个表观水平实体相关的疾病)进行了详细分析,以研究我们的网络如何促进药物-疾病关联的推断。我们的结果表明,包括背景信息,细胞间关联和表观性水平实体可以有助于更好地预测药物-疾病关联,并为了解药物如何影响人体疾病提供详细的见识。

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