Sergio Wagno Leão, Ströele Victor, Braga Regina
Computer Science Department, Federal University of Juiz de Fora, Juiz de Fora 36036-900, Brazil.
J Pers Med. 2025 Jul 19;15(7):325. doi: 10.3390/jpm15070325.
BACKGROUND/OBJECTIVES: Electronic medical record systems play a crucial role in the operation of modern healthcare institutions, enabling the foundational data necessary for advancements in personalized medicine. Despite their importance, the software supporting these systems frequently experiences data availability and integrity issues, particularly concerning patients' personal information. This study aims to present a decentralized architecture that integrates both clinical and personal patient data, with a provenance mechanism to enable data tracing and auditing, ultimately supporting more precise and personalized healthcare decisions.
A system implementation based on the solution was developed, and a feasibility study was conducted with synthetic medical records data.
The system was able to correctly receive data of 190 instances of the entities designed, which included different types of medical records, and generate 573 provenance entries that captured in detail the context of the associated medical information.
For the first cycle of the research, the system developed served to validate the main features of the solution, and through that, it was possible to infer the feasibility of a decentralized EHR and PHR health system with formal provenance data tracking. Such a system lays a robust foundation for secure and reliable data management, which is essential for the effective implementation and future development of personalized medicine initiatives.
背景/目的:电子病历系统在现代医疗机构的运营中发挥着关键作用,为个性化医疗进步提供必要的基础数据。尽管其很重要,但支持这些系统的软件经常出现数据可用性和完整性问题,尤其是涉及患者个人信息方面。本研究旨在提出一种去中心化架构,该架构整合临床和患者个人数据,并具备溯源机制以实现数据追踪和审计,最终支持更精确和个性化的医疗决策。
基于该解决方案开发了一个系统实现,并使用合成医疗记录数据进行了可行性研究。
该系统能够正确接收所设计实体的190个实例的数据,其中包括不同类型的医疗记录,并生成573条溯源记录,详细记录了相关医疗信息的背景。
在研究的第一个周期中,所开发的系统用于验证该解决方案的主要特性,通过验证可以推断出具有正式溯源数据追踪功能的去中心化电子健康记录(EHR)和个人健康记录(PHR)系统的可行性。这样的系统为安全可靠的数据管理奠定了坚实基础,这对于个性化医疗计划的有效实施和未来发展至关重要。