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iALARM: An Intelligent Alert Language for Activation, Response, and Monitoring of Medical Alerts

机译:iALARM:用于激活,响应和监视医疗警报的智能警报语言

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Management of alerts triggered by unexpected or hazardous changes in a patient's state is a key task in continuous monitoring of patients. Using domain knowledge enables us to specify more sophisticated triggering patterns for alerts, based on temporal patterns detected in a stream of patient data, which include both the temporal element and significant domain knowledge, such as "rapidly increasing fever" instead of monitoring of only raw vital signals, such as "temperature higher than 39 C". In the current study, we introduce iALARM, a two-tier computational architecture, accompanied by a language for specification of intelligent alerts, which represents an additional computational [meta] level above the temporal-abstraction level. Alerts in the iALARM language consist of (a) the target population part (Who is to be monitored?); (b) a declarative part (What is the triggering pattern?), i.e., a set of time and value constraints, specifying the triggering pattern to be computed by the bottom tier; and (c) a procedural part (How should we raise the alarm? How should we continue the monitoring and follow-up?), i.e., an action or a whole plan to apply when the alert is triggered, and a list of meta-properties of the alert and action. One of our underlying principles is to avoid alert fatigue as much as possible; for instance, one can specify that a certain alert should be activated only the first time that the triggering pattern is detected, or only if it has not been raised over the past hour. Thus, we introduce a complete life cycle for alerts. Finally, we discuss the implied requirements for the knowledge-acquisition tool and for the alert monitoring and procedural application engines to support the iALARM language. We intend to evaluate our architecture in several clinical domains, within a large project for remote patient monitoring.
机译:由患者状态的意外或危险变化触发的警报的管理是持续监视患者的关键任务。利用领域知识,我们可以基于在患者数据流中检测到的时间模式来指定更复杂的警报触发模式,其中包括时间要素和重要的领域知识,例如“迅速增加的发烧”,而不是仅监控原始数据重要信号,例如“温度高于39 C”。在当前的研究中,我们介绍iALARM,这是一个两层的计算体系结构,并附带一种用于指定智能警报的语言,该语言表示在时间抽象级别之上的附加计算[元]级别。用iALARM语言发出的警报包括:(a)目标人群(要监视谁?); (b)声明性部分(什么是触发模式?),即一组时间和值约束,指定要由底层计算的触发模式; (c)程序性部分(我们应如何发出警报?我们应如何继续进行监视和跟进?),即触发警报时要应用的一项行动或整个计划,以及一个警报和操作的属性。我们的基本原则之一是尽可能避免警报疲劳。例如,可以指定仅在首次检测到触发模式时才应激活某个警报,或者仅在过去一个小时内未触发该警报时才应指定。因此,我们引入了完整的警报生命周期。最后,我们讨论了知识获取工具以及警报监视和程序应用程序引擎支持iALARM语言的隐含要求。我们打算在一个大型项目中对多个临床领域的体系结构进行评估,以进行远程患者监测。

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