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Data Management within mHealth Environments: Patient Sensors, Mobile Devices, and Databases

机译:mHealth环境中的数据管理:患者传感器,移动设备和数据库

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Pervasive environments generate large quantities of data, originating from backend servers, portable devices, and wireless mobile sensors. Pervasive sensing devices that monitor properties of the environment (including human beings) can be a large data source. Unprocessed datasets may include data that is faulty and irrelevant, and data that is important and useful. If not managed correctly the large amount of data from a data-rich pervasive environment may result in information overload or delivery of incorrect information. Context-sensitive quality data management aims to gather, verify, process, and manage the multiple data sources in a pervasive environment in order to deliver high quality, relevant information to the end-user. Managing the quality of data from different sources, correlating related data, and making use of context, are all essential in providing end users with accurate and meaningful data in real time. This requirement is especially true for critical applications such as in a medical environment. This article presents the Data Management System (DMS) architecture. It is designed to deliver quality data service to its users. The DMS architecture employs an agent-based middleware to intelligently and effectively manage all pervasive data sources, and to make use of context to deliver relevant information to the end-user. Two of the DMS components are presented: (1) data validation and (2) data consistency. The DMS components have been rigorously evaluated using various medical-based test cases. This article demonstrates a careful, precise approach to data based on the quality of the data and the context of its use. It emphasises the DMS architecture and the role of software agents in providing quality data management.
机译:普适环境会生成大量数据,这些数据源自后端服务器,便携式设备和无线移动传感器。监视环境(包括人类)属性的无处不在的传感设备可能是大型数据源。未处理的数据集可能包含有缺陷和不相关的数据,以及重要且有用的数据。如果管理不当,则来自数据丰富的普适环境的大量数据可能导致信息过载或错误信息的传递。上下文相关的质量数据管理旨在在普适环境中收集,验证,处理和管理多个数据源,以便向最终用户提供高质量的相关信息。管理来自不同来源的数据质量,关联相关数据并利用上下文,对于向最终用户实时提供准确而有意义的数据都是至关重要的。对于诸如医学环境之类的关键应用,此要求尤其如此。本文介绍了数据管理系统(DMS)体系结构。它旨在为用户提供优质的数据服务。 DMS体系结构使用基于代理的中间件来智能,有效地管理所有普适数据源,并利用上下文将相关信息传递给最终用户。提出了两个DMS组件:(1)数据验证和(2)数据一致性。已使用各种基于医学的测试案例对DMS组件进行了严格评估。本文演示了一种基于数据质量及其使用环境的谨慎,精确的数据处理方法。它强调了DMS体系结构以及软件代理在提供高质量数据管理中的作用。

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