论文标题

通过设计知识综合隐私在医疗保健中设计应用程序的应用程序设计

Synthesising Privacy by Design Knowledge Towards Explainable Internet of Things Application Designing in Healthcare

论文作者

Alkhariji, Lamya, Alhirabi, Nada, Alraja, Mansour Naser, Barhamgi, Mahmoud, Rana, Omer, Perera, Charith

论文摘要

设计(PBD)的隐私是最常见的方法,其后是软件开发人员,他们旨在降低其应用程序设计中的风险,但是对于开发人员来说,对隐私的含义几乎没有概念上的理解仍然很普遍。一个愿景是开发一个智能隐私助理,开发人员可以轻松地提出问题,以了解如何将不同的隐私想法纳入其物联网应用程序设计。本文通过综合现有的PBD知识以引发要求来开发这种隐私助理的基础。人们认为,这样的隐私助理不仅应规定开发人员应纳入其设计中的隐私想法的清单。相反,它应该解释如何在给定应用程序设计上下文中保护隐私的每个规定的想法如何定义为“可解释的隐私”。使用十种不同的PBD计划对总共分析和审查了74种隐私模式,以了解如何构建每个隐私模式以及如何帮助确保隐私。由于页面限制,我们在[3]中提出了详细的分析。此外,使用不同的现实世界互联网(IoT)用例(包括医疗保健应用程序)来证明如何将每个隐私模式应用于给定的应用程序设计。通过这样做,确定了一些知识工程要求在开发隐私助理时需要考虑这些要求。还发现,与其他物联网应用领域相比,隐私模式可以显着受益于医疗保健应用。总之,本文确定了如果要建立一个可以在设计阶段真正增强软件开发人员的能力的智能隐私助手,必须解决的研究挑战。

Privacy by Design (PbD) is the most common approach followed by software developers who aim to reduce risks within their application designs, yet it remains commonplace for developers to retain little conceptual understanding of what is meant by privacy. A vision is to develop an intelligent privacy assistant to whom developers can easily ask questions in order to learn how to incorporate different privacy-preserving ideas into their IoT application designs. This paper lays the foundations toward developing such a privacy assistant by synthesising existing PbD knowledge so as to elicit requirements. It is believed that such a privacy assistant should not just prescribe a list of privacy-preserving ideas that developers should incorporate into their design. Instead, it should explain how each prescribed idea helps to protect privacy in a given application design context-this approach is defined as 'Explainable Privacy'. A total of 74 privacy patterns were analysed and reviewed using ten different PbD schemes to understand how each privacy pattern is built and how each helps to ensure privacy. Due to page limitations, we have presented a detailed analysis in [3]. In addition, different real-world Internet of Things (IoT) use-cases, including a healthcare application, were used to demonstrate how each privacy pattern could be applied to a given application design. By doing so, several knowledge engineering requirements were identified that need to be considered when developing a privacy assistant. It was also found that, when compared to other IoT application domains, privacy patterns can significantly benefit healthcare applications. In conclusion, this paper identifies the research challenges that must be addressed if one wishes to construct an intelligent privacy assistant that can truly augment software developers' capabilities at the design phase.

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