HIPAA控制临床过程中的患者信息交换和可追溯性

Intidhar Essefi, H. Boussi Rahmouni, T. Solomonides, Mohamed Fethi Ladeb
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引用次数: 0

摘要

医疗保健流程的数字化转型正在深刻地改变为患者提供的医疗保健服务的质量。虽然它通常被认为是非常有益的,但向数字连接医疗系统的转变使医疗服务提供者和个人面临许多风险,从隐私侵犯到医疗身份盗用。在整个数字化过程中,所有医疗保健利益相关者都必须确保隐私保护和系统遵守个人数据法规,如HIPAA和GDPR。这对于建立与合法处理敏感数据有关的立法框架所施加的边界和限制至关重要。在本文中,我们的目标是将隐私和安全控制表示为临床过程中突出显示的数据元素的标签/标签,并将其自动化表示为医疗保健信息系统用户界面层的数据的隐私保护过滤器。由于HL7-CDA标准在交换EHR数据时具有无缝和可扩展的数据集成功能,因此作为数据模型,我们依赖于HL7-CDA标准进行医疗文档体系结构。
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HIPAA Controlled Patient Information Exchange and Traceability in Clinical Processes
The digital transformation of healthcare processes is deeply changing the quality of healthcare services offered to the patient. Although it is often seen as highly beneficial, the move to digital connected health systems exposes both health providers and individuals to many risks ranging from privacy violations to medical identity usurpation Throughout this process of digitisation, it is essential that privacy protection and systemic compliance to personal data regulations such as HIPAA and GDPR are ensured by all healthcare stakeholders. This is essential to setup the boundaries and limitation imposed by the legislative framework with relation to the legitimate processing of sensitive data. In this paper, we are aiming to represent privacy and security controls as tags/labels to data elements highlighted in clinical processes and their automation as privacy protection filters to the data at user interface layers of the healthcare information system. As a data model we rely on the HL7-CDA standard for medical documents architecture thanks to its seamless and extensible data integration capabilities while exchanging EHR data.
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