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Biomedical Big Data: New Models of Control Over Access Use and Governance

机译:生物医学大数据:访问使用和治理的新控制模型

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摘要

Empirical evidence suggests that while people hold the capacity to control their data in high regard, they increasingly experience a loss of control over their data in the online world. The capacity to exert control over the generation and flow of personal information is a fundamental premise to important values such as autonomy, privacy, and trust. In healthcare and clinical research this capacity is generally achieved indirectly, by agreeing to specific conditions of informational exposure. Such conditions can be openly stated in informed consent documents or be implicit in the norms of confidentiality that govern the relationships of patients and healthcare professionals. However, with medicine becoming a data-intense enterprise, informed consent and medical confidentiality, as mechanisms of control, are put under pressure. In this paper we explore emerging models of informational control in data-intense healthcare and clinical research, which can compensate for the limitations of currently available instruments. More specifically, we discuss three approaches that hold promise in increasing individual control: the emergence of data portability rights as means to control data access, new mechanisms of informed consent as tools to control data use, and finally, new participatory governance schemes that allow individuals to control their data through direct involvement in data governance. We conclude by suggesting that, despite the impression that biomedical big data diminish individual control, the synergistic effect of new data management models can in fact improve it.
机译:经验证据表明,尽管人们拥有高度重视地控制数据的能力,但他们越来越多地失去对在线世界中数据的控制权。对个人信息的生成和流进行控制的能力是诸如自治,隐私和信任之类的重要价值的基本前提。在医疗保健和临床研究中,这种能力通常是通过同意特定的信息暴露条件间接实现的。这些条件可以在知情同意书中公开声明,也可以隐含在控制患者与医疗保健专业人员之间关系的保密规范中。但是,随着医药成为数据密集型企业,作为控制机制的知情同意和医疗保密性受到压力。在本文中,我们探索了数据密集型医疗保健和临床研究中新兴的信息控制模型,这些模型可以弥补当前可用仪器的局限性。更具体地说,我们讨论了在增强个人控制能力方面有望实现的三种方法:作为数据控制手段的数据可移植性权利的出现,作为控制数据使用的工具的知情同意的新机制,最后是允许个人使用的新的参与性治理方案。通过直接参与数据治理来控制其数据。我们的结论是,尽管有人认为生物医学大数据会减少个人控制,但新数据管理模型的协同效应实际上可以改善它。

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