PhLeGrA:生命科学关联开放数据网上的药理学图谱分析。

Maulik R Kamdar, Mark A Musen
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摘要

要对因同时服用多种药物而出现的药物不良反应进行基于机理的预测,就需要采用药理学综合方法。这些方法需要整合和分析来自多种异构来源的生物医学数据和知识,这些来源的模式、实体符号和格式各不相同。为了应对这些整合性挑战,语义网社区已在生命科学关联开放数据(LSLOD)云中发布了多个数据集,并利用已建立的万维网联盟(W3C)标准进行了链接。我们在本文中介绍了用于药理学关联图分析的 PhLeGrA 平台。通过查询联合,我们整合了来自 LSLOD 云的四个数据源,并提取了由不同实体组成的药物反应网络。我们将该图表示为隐藏条件随机场(HCRF),这是一种用于结构化输出预测的判别潜变量模型。我们利用美国食品和药物管理局不良事件报告系统的数据集计算药物反应 HCRF 的基本概率分布。我们预测了因多种药物摄入导致的 146 种不良反应的发生率,其 AUROC 统计量大于 0.75。PhLeGrA平台可以扩展到使用语义网技术发布的其他数据源,以及发现其他类型的药理关联。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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PhLeGrA: Graph Analytics in Pharmacology over the Web of Life Sciences Linked Open Data.

Integrated approaches for pharmacology are required for the mechanism-based predictions of adverse drug reactions that manifest due to concomitant intake of multiple drugs. These approaches require the integration and analysis of biomedical data and knowledge from multiple, heterogeneous sources with varying schemas, entity notations, and formats. To tackle these integrative challenges, the Semantic Web community has published and linked several datasets in the Life Sciences Linked Open Data (LSLOD) cloud using established W3C standards. We present the PhLeGrA platform for Linked Graph Analytics in Pharmacology in this paper. Through query federation, we integrate four sources from the LSLOD cloud and extract a drug-reaction network, composed of distinct entities. We represent this graph as a hidden conditional random field (HCRF), a discriminative latent variable model that is used for structured output predictions. We calculate the underlying probability distributions in the drug-reaction HCRF using the datasets from the U.S. Food and Drug Administration's Adverse Event Reporting System. We predict the occurrence of 146 adverse reactions due to multiple drug intake with an AUROC statistic greater than 0.75. The PhLeGrA platform can be extended to incorporate other sources published using Semantic Web technologies, as well as to discover other types of pharmacological associations.

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