Mezghani Emna, Exposito Ernesto, Drira Khalil, Da Silveira Marcos, Pruski Cédric
CNRS; LAAS, 7 av. du Colonel Roche, F-31400, Toulouse, France.
Univ de Toulouse; INSA; LAAS, F-31400, Toulouse, France.
J Med Syst. 2015 Dec;39(12):185. doi: 10.1007/s10916-015-0344-x. Epub 2015 Oct 21.
Advances supported by emerging wearable technologies in healthcare promise patients a provision of high quality of care. Wearable computing systems represent one of the most thrust areas used to transform traditional healthcare systems into active systems able to continuously monitor and control the patients' health in order to manage their care at an early stage. However, their proliferation creates challenges related to data management and integration. The diversity and variety of wearable data related to healthcare, their huge volume and their distribution make data processing and analytics more difficult. In this paper, we propose a generic semantic big data architecture based on the "Knowledge as a Service" approach to cope with heterogeneity and scalability challenges. Our main contribution focuses on enriching the NIST Big Data model with semantics in order to smartly understand the collected data, and generate more accurate and valuable information by correlating scattered medical data stemming from multiple wearable devices or/and from other distributed data sources. We have implemented and evaluated a Wearable KaaS platform to smartly manage heterogeneous data coming from wearable devices in order to assist the physicians in supervising the patient health evolution and keep the patient up-to-date about his/her status.
新兴可穿戴技术在医疗保健领域的进展有望为患者提供高质量的护理。可穿戴计算系统是将传统医疗系统转变为能够持续监测和控制患者健康状况以便在早期阶段管理其护理的主动系统的最热门领域之一。然而,它们的激增带来了与数据管理和集成相关的挑战。与医疗保健相关的可穿戴数据的多样性、种类繁多、数量庞大及其分布使得数据处理和分析更加困难。在本文中,我们提出了一种基于“知识即服务”方法的通用语义大数据架构,以应对异构性和可扩展性挑战。我们的主要贡献集中在通过语义丰富美国国家标准与技术研究院(NIST)的大数据模型,以便智能地理解收集到的数据,并通过关联来自多个可穿戴设备或/和其他分布式数据源的分散医疗数据来生成更准确和有价值的信息。我们已经实现并评估了一个可穿戴知识即服务(Wearable KaaS)平台,以智能地管理来自可穿戴设备的异构数据,从而协助医生监督患者的健康状况变化,并让患者随时了解自己的健康状况。