IEEE J Biomed Health Inform. 2019 Mar;23(2):867-873. doi: 10.1109/JBHI.2018.2836138. Epub 2018 May 14.
Health information technology, applied to electronic health record (EHR), has evolved with the adoption of standards for defining patient health records. However, there are many standards for defining such data, hindering communication between different healthcare providers. Even with adopted standards, patients often need to repeatedly provide their health information when they are taken care of at different locations. This problem hinders the adoption of personal health record (PHR), with the patients' health records under their own control. Therefore, the purpose of this paper is to propose an interoperability model for PHR use. The methodology consisted prototyping an application model named OmniPHR, to evaluate the structuring of semantic interoperability and integration of different health standards, using a real database from anonymized patients. We evaluated health data from a hospital database with 38 645 adult patients' medical records processed using different standards, represented by openEHR, HL7 FHIR, and MIMIC-III reference models. OmniPHR demonstrated the feasibility to provide interoperability through a standard ontology and artificial intelligence with natural language processing (NLP). Although the first executions reached a 76.39% F1-score and required retraining of the machine-learning process, the final score was 87.9%, presenting a way to obtain the original data from different standards on a single format. Unlike other models, OmniPHR presents a unified, structural semantic and up-to-date vision of PHR for patients and healthcare providers. The results were promising and demonstrated the possibility of subsidizing the creation of inferences rules about possible patient health problems or preventing future problems.
健康信息技术应用于电子健康记录 (EHR),随着定义患者健康记录标准的采用而发展。然而,有许多用于定义此类数据的标准,这阻碍了不同医疗保健提供者之间的通信。即使采用了标准,患者在不同地点接受护理时通常也需要重复提供他们的健康信息。这个问题阻碍了个人健康记录 (PHR) 的采用,因为患者的健康记录由他们自己控制。因此,本文的目的是提出一种用于 PHR 使用的互操作性模型。该方法包括原型设计一个名为 OmniPHR 的应用模型,以评估语义互操作性的结构和不同健康标准的集成,使用来自匿名患者的真实数据库进行评估。我们使用来自医院数据库的健康数据进行评估,该数据库包含 38645 名成年患者的医疗记录,使用不同的标准进行表示,包括 openEHR、HL7 FHIR 和 MIMIC-III 参考模型。OmniPHR 通过标准本体和具有自然语言处理 (NLP) 的人工智能证明了提供互操作性的可行性。虽然第一次执行达到了 76.39%的 F1 分数,并需要重新训练机器学习过程,但最终分数为 87.9%,提供了一种从不同标准获取单个格式原始数据的方法。与其他模型不同,OmniPHR 为患者和医疗保健提供者提供了统一的、结构化的语义和最新的 PHR 视图。结果很有希望,证明了创建关于患者健康问题的可能推断规则或预防未来问题的可能性的可能性。