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首页> 外文期刊>BMC Medical Informatics and Decision Making >Using NLP in openEHR archetypes retrieval to promote interoperability: a feasibility study in China
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Using NLP in openEHR archetypes retrieval to promote interoperability: a feasibility study in China

机译:在Openehr原型中使用NLP检索促进互操作性:中国的可行性研究

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With the development and application of medical information system, semantic interoperability is essential for accurate and advanced health-related computing and electronic health record (EHR) information sharing. The openEHR approach can improve semantic interoperability. One key improvement of openEHR is that it allows for the use of existing archetypes. The crucial problem is how to improve the precision and resolve ambiguity in the archetype retrieval. Based on the query expansion technology and Word2Vec model in Nature Language Processing (NLP), we propose to find synonyms as substitutes for original search terms in archetype retrieval. Test sets in different medical professional level are used to verify the feasibility. Applying the approach to each original search term (n?=?120) in test sets, a total of 69,348 substitutes were constructed. Precision at 5 (P@5) was improved by 0.767, on average. For the best result, the P@5 was up to 0.975. We introduce a novel approach that using NLP technology and corpus to find synonyms as substitutes for original search terms. Compared to simply mapping the element contained in openEHR to an external dictionary, this approach could greatly improve precision and resolve ambiguity in retrieval tasks. This is helpful to promote the application of openEHR and advance EHR information sharing.
机译:随着医疗信息系统的开发和应用,语义互操作性对于准确和先进的健康相关的计算和电子健康记录(EHR)信息共享至关重要。 OpeneHR方法可以改善语义互操作性。 Openehr的一个关键改进是它允许使用现有的原型。至关重要的问题是如何提高原型检索中的精度和解决模糊性。基于查询扩展技术和Word2VEC模型在自然语言处理(NLP)中,我们建议在原型检索中查找原始搜索项的替代品。不同医疗专业水平的测试集用于验证可行性。将方法应用于测试集中的每个原始搜索项(n?=Δ120),共有69,348个替代品。 5(p @ 5)的精度平均提高0.767℃。最佳结果,P @ 5高达0.975。我们介绍了一种新的方法,即使用NLP技术和语料库来查找原始搜索项的同义词。与简单地将Openehr中包含的元素映射到外部字典相比,这种方法可以大大提高检索任务中的精度并解决歧义。这有助于促进Openehr的应用并提前EHR信息共享。

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