医疗中心的点对点数据发现

M. Mirto, M. Cafaro, G. Aloisio
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引用次数: 1

摘要

医疗保健数据的共享和集成,如病史、病理、治疗、放射图像等,是提高患者诊断和总体患者护理的关键要求。今天,许多EPR(电子病历)系统存在于同一或不同的医疗中心,并记录有关患者的大量数据。在大多数情况下,病人的护理治疗涉及不同的保健设施,包括由家庭医生提供的护理。管理这些数据(通常是pb级或tb级),并为这些架构优化应用程序(图像分析、数据挖掘等)是必须解决的挑战之一。因此,显然需要设计和实现新的可伸缩方法来处理相关的信息过载和认知复杂性问题。一种可能的解决方案涉及考虑在结构化模式中简化来自不同epr的数据,通常称为元epr。由于患者数据的安全性,每个医疗中心管理自己的元epr,而框架在不同站点之间集成这些数据。这项工作解决了共享和整合医疗保健数据的问题,提出了一个基于点对点(P2P)数据融合技术的元epr。我们描述了一个分布式信息服务的实现,它共享meta- epr,并基于结构化的P2P覆盖提供有关患者的相关临床信息的聚合。
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Peer-to-peer data discovery in health centers
The sharing and integration of health care data such as medical history, pathology, therapy, radiology images, etc., is a key requirement for improving the patient diagnosis and in general the patient care. Today, many EPR (Electronic Patient Record) systems are present both in the same or different health centers and record a huge amount of data regarding a patient. In most cases the care treatment of a patient involves different healthcare facilities, including the cares provided by the family doctors. Managing these data, typically petabytes or terabytes in size, and optimizing the applications (image analysis, data mining, etc.) for these architectures is one of the challenges that must be tackled. Therefore, there is a clear need for the design and implementation of new scalable approaches to deal with the associated information overload and cognitive complexity issues. A possible solution involves considering a simplification of data coming from different EPRs, in a structured schema, typically called a meta-EPR. Owing to the security of patient data, each health center manages its own meta-EPR whereas a framework integrates these data among different sites. This work addresses the issue of sharing and integrating health care data, proposing a meta-EPR, based on Peer-to-peer (P2P) technology for data fusion. We describe an implementation of a distributed information service, that shares meta-EPRs and provides aggregation of relevant clinical information about patients based on a structured P2P overlay.
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