The management of health data, from their gathering to their analysis, arises a number of challenging issues due to their highly confidential nature. In particular, this dissertation contributes to several security and privacy challenges within the smart health paradigm. More concretely, we firstly develop some contributions to context-aware environments enabling smart health scenarios. We present an extensive analysis on the security aspects of the underlying sensors and networks deployed in such environments, a novel user-centred privacy framework for analysing ubiquitous computing systems, and a complete analysis on the security and privacy challenges that need to be faced to implement cognitive cities properly. Second, we contribute to process mining, a popular analytical field that helps analyse business processes within organisations. Despite its popularity within the healthcare industry, we address two major issues: the high complexity of healthcare processes and the scarce research on privacy aspects. Regarding the first issue, we present a novel process discovery algorithm with a built-in heuristic that simplifies complex processes and, regarding the second, we propose two novel privacy-preserving process mining methods, which achieve a remarkable trade-off between accuracy and privacy. Last but not least, we present some smart health applications, namely a context-aware recommender system for routes, a platform supporting early mobilization programmes in hospital settings, and a health-oriented geographic information system. The results of this dissertation are intended to help the research community to enhance the security of the intelligent environments of the future as well as the privacy of the citizens regarding their personal and health data.
翻译:卫生数据的管理,从收集到分析,都因其高度保密性质而产生了若干具有挑战性的问题。特别是,这一论文有助于在智能健康范式内解决若干安全和隐私挑战。更具体地说,我们首先为环境意识环境做出一些贡献,以提供智能健康假设;我们广泛分析在这种环境中部署的基本传感器和网络的安全方面,为分析普遍存在的计算系统建立一个新的以用户为中心的隐私框架,并全面分析正确实施认知城市需要面对的安全和隐私挑战。第二,我们促进采矿,这是一个有助于分析组织内部业务流程的流行分析领域。尽管在保健行业中很受欢迎,但我们处理两个主要问题:保健过程的高度复杂性和对隐私方面的研究稀缺。关于第一个问题,我们提出了一个新的过程发现算法,其内含内涵的内涵性使复杂的计算系统变得简单化,关于我们建议两种新的隐私保护进程采矿方法,在准确性和隐私之间实现显著的交换。最后但并非最不重要的一点是,我们向一个明智的系统推荐一个面向健康的系统,即加强医院的早期环境的系统,即加强一个面向环境的系统,即一个面向环境的早期的系统,一个面向环境的系统,即一个面向环境的、一个面向环境的系统,一个面向一个面向环境的、一个面向环境的、一个面向环境的系统的一个结果的研究。