首页> 外文期刊>International Journal of Population Data Science >Secure data analysis environments: can we agree on criteria for “Appropriate secure access” to linked health data?
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Secure data analysis environments: can we agree on criteria for “Appropriate secure access” to linked health data?

机译:安全数据分析环境:我们可以同意“适当的安全访问”标准,以连接健康数据?

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Overall objectives or goalMany health data linkage ecosystems across the world have designed and implemented secure data analysis environments as one of their controls to protect patient privacy and confidentiality. These have been shaped by local legislation and data governance policies, available IT infrastructure and resources, and the skills and imagination of their architects. However, at present their various features and functionalities have not been reviewed, synthesised or contrasted. Burton et al [1] have proposed 12 criteria for Data Safe Havens in health and healthcare, which they conceptualise broadly as encompassing data governance and ethics, quality and curation of data repositories, and data security. Under this definition, secure analysis environments, which may or may not be integrated with data repositories, are a component of a Data Safe Haven, addressing the criterion “Appropriate secure access to individually identifying data”. To guide those building and operating these environments, and data custodians and stewards who need to assess their fitness-for-purpose, it would be of great value to discuss and agree an aggregate term (e.g. “Secure Data Lab”) that describes them, and to develop a more detailed set of criteria for what entails “Appropriate secure access” to linked health data. The goal of this session is to describe and document the approaches that have been taken by flagship secure data analysis environments internationally, including their approaches to authentication, assigning permissions, managing the ingress and egress of files and auditing transactions, and their responses to emerging opportunities, including cloud computing and national and international data sharing. We will explore how the interplay of physical, technical and procedural controls have been combined to create existing models, and the extent to which these can balance each other and be applied with flexibility depending on perceived risk and regimes. Session structurePrior to the session, we will develop a draft set of criteria for “Appropriate secure access” to linked health data. The session will comprise presentations describing existing secure analysis environments against the draft criteria, followed by a facilitated discussion. The secure data analysis environments that will be presented include: UNSW Sydney E-Research Institutional Cloud Architecture (ERICA) PopData BC Secure Research Environment (SRE) Institute for Clinical Evaluative Sciences (ICES) Data and Analytic Virtual Environment (IDAVE) Secure Anonymised Information Linkage (SAIL) Gateway Intended output or outcomeWe will write up the outcomes of the session as a scientific paper that proposes an aggregate term for secure data analysis environments for linked health data and a set of criteria for what entails “Appropriate secure access” to linked health data. Presenters and Facilitators Professor Louisa Jorm, Centre for Big Data Research in Health, UNSW Sydney, Australia Dr Tim Churches, South Western Sydney Clinical School, UNSW Sydney, Australia Professor Kim McGrail, Population Data BC, The University of British Columbia, Vancouver, Canada J. Charles Victor, Institute for Clinical Evaluative Sciences, Toronto, Canada Dr Kerina Jones, Swansea University Medical School, Wales, United Kingdom Professor David Ford, Swansea University Medical School, Wales, United Kingdom 1. Burton PR, Murtagh MJ, Boyd A, et al. Data Safe Havens in health research and healthcare. Bioinformatics 2015; 31(20): 3241–3248.
机译:全球的整体目标或目标健康数据联动生态系统已经设计和实施了安全的数据分析环境,作为保护患者隐私和机密性的控制之一。这些已由本地立法和数据治理政策,可用IT基础设施和资源以及其建筑师的技能和想象力。然而,目前他们的各种特征和功能尚未审查,合成或对比。 Burton等人[1]提出了健康和医疗保健中的数据安全避风港的12个标准,它们广泛地概括为数据治理和伦理,质量和数据存储库和数据安全性。在此定义下,可以与数据存储库集成的安全分析环境是数据安全避风港的组件,解决了标准“适当的安全访问对单独识别数据”。为了引导这些建筑物和经营这些环境,以及需要评估其健康目的的数据托管人和管家,它将具有很大的讨论和同意汇总期限(例如“安全数据实验室”),这将描述它们,并为需要“适当的安全访问”链接的健康数据开发更详细的一组标准。本次会议的目标是描述和记录旗舰安全数据分析环境的方法,包括他们的身份验证,分配权限,管理文件和审计交易的方法以及他们对新兴机会的回答,包括云计算和国家和国际数据共享。我们将探讨物理,技术和程序控制的相互作用如何组合以创建现有模型,以及这些模型可以相互平衡,并根据感知风险和制度应用灵活性。会话结构进行会话,我们将开发一个标准的草案,以便“适当的安全访问”链接的健康数据。会议将包括描述针对标准草案的现有安全分析环境的演示文稿,其次是促进讨论。将提出的安全数据分析环境包括:UNSW悉尼电子研究机构云架构(ERICA)POPDATA BC安全研究环境(SRE)临床评估科学研究所(ICES)数据和分析虚拟环境(IDAVE)安全匿名信息链接(帆)网关预期输出或extomewe将将会话结果写成为科学论文,为链接健康数据的安全数据分析环境提出了一组汇总术语,以及一组需要“适当的安全访问”链接健康的标准数据。演示者和协调人教授Louisa Jorm,健康数据研究中心,UNSW悉尼,澳大利亚蒂姆·蒂姆教堂,悉尼临床学校,UNSW悉尼,澳大利亚教授Kim McGil,英国哥伦比亚大学,温哥华,加拿大。 J.查尔斯维克多临床评价科学研究所,加拿大多伦多,加拿大博士琼斯博士,斯旺西大学医学院,威尔士,英国教授David Ford,Swansea大学医学院,威尔士,英国1. Burton Pr,Murtagh Mj,Boyd A等等。数据安全研究和医疗保健的避风港。生物信息学2015; 31(20):3241-3248。

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