将生物医学大数据转化为可操作知识的语义数据集成技术

Maria-Esther Vidal, S. Jozashoori
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引用次数: 6

摘要

公平原则和开放数据倡议推动了大量数据的发布。具体来说,在生物医学领域,数据的规模在过去十年中呈指数级增长,随着收集和生成数据技术的进步,预计未来几年的增长速度将更快。可用的数据集合的特点是大数据的主要维度,即它们不仅体积大,而且可能是异构的,并且存在质量问题。这些数据复杂性问题影响了典型的数据管理任务,特别是集成生物医学大数据源的任务。我们解决了大数据集成的问题,并提出了一个知识驱动的框架,能够从结构化和非结构化数据源中提取和集成数据。该框架利用自然语言处理技术从非结构化数据和短文本中提取知识。此外,本体和受控词汇表(例如UMLS)被用来用本体或受控词汇表中的术语来注释提取的实体和关系。将标注的数据集成到知识图中。使用统一的模式来描述集成数据的含义以及主要属性和关系。作为概念的证明,我们展示了应用所提出的框架将肺癌患者的临床记录与从Drugbank和PubMed等开放数据源提取的数据整合在一起的结果。所创建的知识图谱能够发现用于肺癌患者治疗的药物之间的相互作用。
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Semantic Data Integration Techniques for Transforming Big Biomedical Data into Actionable Knowledge
FAIR principles and the Open Data initiatives have motivated the publication of large volumes of data. Specifically, in the biomedical domain, the size of the data has increased exponentially in the last decade, and with the advances in the technologies to collect and generate data, a faster growth rate is expected for the next years. The available collections of data are characterized by the dominant dimensions of big data, i.e., they are not only large in volume, but they can be also heterogeneous and present quality issues. These data complexity problems impact on the typical tasks of data management, and particularly, in the task of integrating big biomedical data sources. We tackle the problem of big data integration and present a knowledge-driven framework able to extract and integrate data collected from structured and unstructured data sources. The proposed framework resorts to Natural Language Processing techniques to extract knowledge from unstructured data and short text. Furthermore, ontologies and controlled vocabularies, e.g., UMLS, are utilized to annotate the extracted entities and relations with terms from the ontology or controlled vocabulary. The annotated data is integrated into a knowledge graph. A unified schema is used to describe the meaning of the integrated data as well as the main properties and relations. As proof of concept, we show the results of applying the proposed framework to integrate clinical records from lung cancer patients with data extracted from open data sources like Drugbank and PubMed. The created knowledge graph enables the discovery of interactions between drugs in the treatments prescribed to lung cancer patients.
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