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SMILE: smart monitoring intelligent learning engine. An ontology-based context-aware system for supporting patients subjected to severe emergencies

机译:SMILE:智能监控智能学习引擎。基于本体的上下文感知系统,用于支持严重紧急情况下的患者

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摘要

Remote healthcare has made a revolution in the healthcare domain. However, an important problem this field is facing is supporting patients who are subjected to severe emergencies (as heart attacks) to be both monitored and protected while being at home. In this paper, we present a conceptual framework with the main objectives of: 1) emergency handling through monitoring patients, detecting emergencies and insuring fast emergency responses; 2) preventing an emergency from happening in the first place through protecting patients by organising their lifestyles and habits. To achieve these objectives, we propose a layered middleware. Our context model combines two modelling methods: probabilistic modelling to capture uncertain information and ontology to ease knowledge sharing and reuse. In addition, our system uses a two-level reasoning approach (ontology-based reasoning and Bayesian-based reasoning) to manage both certain and uncertain contextual parameters in an adaptive manner. Bayesian network is learned from ontology. Moreover, to ensure a more sophisticated decision-making for service presentation, influence diagram and analytic hierarchy process are used along with regular probabilistic rules (confidence level) and basic semantic logic rules.
机译:远程医疗保健在医疗保健领域掀起了一场革命。但是,该领域面临的一个重要问题是支持在家中应对严重紧急情况(例如心脏病发作)的患者进行监视和保护。在本文中,我们提出了一个概念框架,其主要目标是:1)通过监视患者,发现紧急情况和确保快速的紧急响应来进行应急处理; 2)首先通过组织患者的生活方式和习惯来保护患者,从而预防突发事件的发生。为了实现这些目标,我们提出了一个分层的中间件。我们的上下文模型结合了两种建模方法:概率建模以捕获不确定的信息和本体以简化知识共享和重用。此外,我们的系统使用两级推理方法(基于本体的推理和基于贝叶斯的推理)以自适应方式管理某些和不确定的上下文参数。贝叶斯网络是从本体中学习的。而且,为了确保服务表示的决策更加复杂,将影响图和层次分析过程与常规概率规则(置信度)和基本语义逻辑规则一起使用。

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