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引用次数: 15

摘要

在过去的五十年里,信息技术已经发展到这样一个阶段:社会在媒体、商业、医疗保健、消费电子、能源和电力以及交通领域的每一项服务中都能感受到它的影响。在这一人类与技术互动的过程中,大量的数据和知识直接在服务提供商与其客户之间以及间接在客户之间转移。由于人类倾向于“分析”过去以预测“未来”,因此跟踪这种动态流动的海量异构数据(称为大数据),并对其进行分析以发现有意义的知识,从而导致增值业务成为一项重要的研究活动。正是在这种背景下,大数据(BD)计算研究应运而生。有意义的决策只能基于重要的知识发现,这反过来又需要对累积数据的特征有很好的理解,对这个庞大的集合进行适当的分类,并对其进行有效的分析。保健部门是一个关键的基础设施,因为它的服务影响到人类的生活,缺乏服务连续性可能对经济和人类生活造成灾难性的影响。该部门从其客户那里收集的大量数据被组织成电子健康记录(EHR),即BD,并与制药和监管数据一起用于提供卫生服务。在管理服务和在管理服务后衡量其对客户的影响时,会产生更多的业务发展。正是在这个大背景下,我们调查了医疗保健BD (HBD)的类型和来源,其特点,并给出了分类。
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Characteristics and classification of big data in health care sector
Information technology has advanced during the last five decades to the stage where its impact is being felt by the society in every service that it gets from media, business, health care, consumer electronics, energy and power, and transportation domains. During this course of human-technology interaction enormous amount of data and knowledge transfer takes place directly between service providers and their clients, as well as indirectly between clients. Because human tendency is to “analyze” its past in order to predict the “future”, keeping track of this dynamically streaming voluminous heterogeneous data, called Big Data (BD), and analyzing it for meaningful discovery of knowledge that leads to value-added business becomes an important research activity. It is in this context that research in Big Data (BD) computing has emerged. Meaningful decisions can be based only on significant knowledge discovery, which in turn requires a good understanding of the characteristics of the accumulated data, an appropriate classification of this huge collection, and an efficient analysis of it. Health care sector is a critical infrastructure because its services affect the lives of humans and the lack of service continuity may be disastrous to the economy and human lives. The large amount of data collected by this sector from its clients is structured into Electronic Health Records (EHR) which is BD, and is used along with pharmaceutical and regulatory data in providing health services. More BD is generated while administering services and measuring their impacts on clients after administering the services. It is in this larger context that we investigate the types and sources of Health Care BD (HBD), its characteristics, and give a classification of it.
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