基于贝叶斯网络的医疗系统风险评估

B. Zoullouti, M. Amghar, S. Nawal
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引用次数: 4

摘要

为确保患者安全,医疗保健服务必须是高质量、安全、有效的。本研究旨在提出医院系统风险管理的综合方法。为了提高病人的安全,我们应该开发出考虑到不同方面的风险和信息类型的方法。第一种方法是为可获得风险事件数据的上下文中设计的。它使用贝叶斯网络对医院进行定量风险分析。贝叶斯网络提供了一个框架来呈现因果关系,并使一组变量之间的概率推理成为可能。该方法用于分析患者在手术室的安全风险,手术室是不良事件的高风险区域。第二种方法是利用模糊贝叶斯网络对风险进行建模和分析。模糊逻辑允许在缺乏定量数据,只能做出定性或模糊的陈述时使用专家的意见。这种方法提供了一个可操作的模型,准确地支持使用语言变量的人类认知。以手术室患者安全风险为例,说明了该方法的应用。年代
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Using Bayesian Networks for Risk Assessment in Healthcare System
To ensure patient safety, the healthcare service must be of a high quality, safe and effective. This work aims to propose integrated approaches to risk management for a hospital system. To improve patient ’ s safety, we should develop methods where different aspects of risk and type of information are taken into consideration. The first approach is designed for a context where data about risk events are available. It uses Bayesian networks for quantitative risk analysis in the hospital. Bayesian networks provide a framework for presenting causal relationships and enable probabilistic inference among a set of variables. The methodology is used to analyze the patient ’ s safety risk in the operating room, which is a high risk area for adverse event. The second approach uses the fuzzy Bayesian network to model and analyze risk. Fuzzy logic allows using the expert ’ s opinions when quantitative data are lacking and only qualitative or vague statements can be made. This approach provides an actionable model that accurately supports human cognition using linguistic variables. A case study of the patient ’ s safety risk in the operating room is used to illustrate the application of the proposed method. s
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