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Fast and Easy Mapping of Relational Data to RDF for Rapid Learning Health Care

机译:快速轻松地将关系数据映射到RDF,用于快速学习保健

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I. INTRODUCTION This abstract describes a system that supports the creation and validation of relational data to ontologies. The proposed system is developed for rapid learning health care (RLHC), i.e., an evidence based approach to train cancer prediction models on clinical care data that is stored in multiple networked hospitals. Since clinical care data cannot leave the hospital due to privacy issues, distributed (machine) learning can be used [1], [2], where the models are transferred, rather than the actual patient data. This requires clinical care data to be represented in a findable, accessible, inter-operable and reusable (FAIR) [3] manner. The proposed system uses an approach called Ontology Based Data Access (OBDA) to query the hospital data. To this end the relational data is mapped to a conceptual layer in the form of ontologies, i.e., shared vocabularies. These ontologies represent the meaning and values of the data while hiding the complicated structure of the original data sources. Currently, the creation of these mappings forms an obstacle in RLHC, as it requires considerable effort and knowledge from users, and validation of the mappings is difficult.
机译:I.简介本摘要描述了一个支持创建和验证关系数据到本体的系统。该拟议的系统是为快速学习医疗保健(RLHC)开发的,即基于证据的方法,用于培训癌症预测模型的临床护理数据,这些模型存储在多个网络医院的临床护理数据中。由于临床护理数据不能由于隐私问题离开医院,因此可以使用分布式(机器)学习[1],[2],其中模型被传输,而不是实际的患者数据。这需要临床护理数据以可取的,可访问,可操作,可重复使用(公平)[3]方式表示。所提出的系统使用一种名为本体的数据访问(OBDA)的方法来查询医院数据。为此,关系数据以本体的形式映射到概念图层,即共享词汇表。这些本体代表了数据的含义和值,同时隐藏了原始数据源的复杂结构。目前,这些映射的创建在RLHC中形成了一个障碍,因为它需要来自用户的相当大的努力和知识,并且难以验证映射。

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