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Autonomous Decentralized Privacy-Enabled Data Preparation Architecture for Multicenter Clinical Observational Research

机译:用于多中心临床观测研究的自动分散隐私的数据准备架构

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Tailoring treatment and clinical decision making to a person's unique characteristics is the next milestone for healthcare informatics, but for it to be accomplished, big data analytics for identifying risk factors and other hidden patterns among patients become paramount. In future these analytics will take the form of multicenter observational research, for which data preparation is vital. Specifically, quality data must be obtained in a timely manner while protecting the privacy of patients in the health records shared among researchers. Furthermore, the coordination and cooperation of a fluctuating number of medical data sources containing these records for clinical data distribution is an additional requirement in multicenter studies. Thus, we propose an autonomous decentralized, privacy-enabled data preparation architecture and novel SEDTM algorithm to meet these requirements, censuring sensitive information via filtration, and extracting relevant clinical data with a fully automated approach. Our evaluation demonstrates a 40% - 60% increase in the retrieval of quality patient data, compared to traditional semantic similarity, for our proposed SEDTM algorithm.
机译:对一个人的独特特征进行剪裁治疗和临床决策是医疗信息学的下一个里程碑,但是为了实现,为识别患者中的风险因素和其他隐藏模式的大数据分析成为最重要的。未来,这些分析将采用多中心观测研究的形式,数据准备至关重要。具体地,必须及时获得质量数据,同时保护研究人员共享的健康记录中患者的隐私。此外,含有这些临床数据分布记录的波动数量的医学数据来源的协调与合作是多中心研究的额外要求。因此,我们提出了一种自主分散的隐私的数据准备架构和新型SEDTM算法,以满足这些要求,通过过滤唤醒敏感信息,并用完全自动化的方法提取相关的临床数据。对于我们所提出的SedTM算法,我们的评估显示了与传统的语义相似性相比,在检索质量患者数据中增加了40 % - 60 %。

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