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Automated ontology generation framework powered by linked biomedical ontologies for disease-drug domain

机译:通过链接生物医学本体的自动本体生成框架用于疾病 - 药物结构域

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摘要

Objective and background: The exponential growth of the unstructured data available in biomedical literature, and Electronic Health Record (EHR), requires powerful novel technologies and architectures to unlock the information hidden in the unstructured data. The success of smart healthcare applications such as clinical decision support systems, disease diagnosis systems, and healthcare management systems depends on knowledge that is understandable by machines to interpret and infer new knowledge from it. In this regard, ontological data models are expected to play a vital role to organize, integrate, and make informative inferences with the knowledge implicit in that unstructured data and represent the resultant knowledge in a form that machines can understand. However, constructing such models is challenging because they demand intensive labor, domain experts, and ontology engineers. Such requirements impose a limit on the scale or scope of ontological data models. We present a framework that will allow mitigating the time-intensity to build ontologies and achieve machine interoperability.
机译:目标及背景:生物医学文献中可用的非结构化数据的指数增长,以及电子健康记录(EHR),需要强大的新颖技术和架构来解锁隐藏在非结构化数据中的信息。智能医疗保健应用的成功如临床决策支持系统,疾病诊断系统和医疗保健管理系统取决于机器可以理解的知识,以解释和推断出新知识。在这方面,预计本体论数据模型将对组织,整合和制作信息性的重要作用,并使该知识在非结构化数据中隐含,并以机器可以理解的形式代表所产生的知识。但是,构建此类模型是具有挑战性的,因为它们需要强化劳动,领域专家和本体工程师。这些要求对本体数据模型的规模或范围施加了限制。我们提出了一个框架,允许缓解建立本体的时间强度并实现机器互操作性。

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