Abstract—Patient monitors in intensive care units trigger alarms if the state of the patient deteriorates or if there is a technical problem, e.g. loose sensors. Monitoring systems have a high sensitivity in order to detect relevant changes in the patient state. However, multiple studies revealed a high rate of either false or clinically not relevant alarms. It was found that the high rate of false alarms has a negative impact on both patients and staff. In this study we apply data mining methods to reduce the false alarm rate of monitoring systems. We follow a multi-parameter approach where multiple signals of a monitoring system are used to classify given alarm situations. In particular we focus on five alarm types and let our system deci...
Patient monitoring generates a large number of alarms, the vast majority of which are false. Excessi...
International audienceThis paper presents an alarm validation system dedicated to patient monitoring...
Alarm fatigue, the progressive desensitization of clinical staff to audible alarms in their environm...
Monitoring systems in intensive care units have a high false alarm rate. Machine learn-ing technique...
Patient monitoring in intensive care units requires collection and processing of high volumes of dat...
AbstractBedside monitors are ubiquitous in acute care units of modern healthcare enterprises. Howeve...
Several variables are usually recorded on line in Intensive Care Units (ICU) to detect changes in a ...
We present a novel algorithm for classifying true and false alarms of five life-threatening arrhythm...
In this paper, we propose an algorithm that classifies whether a generated cardiac arrhythmia alarm ...
Due to a lack of integration between different sensors, false alarms (FA) in the intensive care unit...
Medical device alarms are a mechanism for notifying clinicians about deterioration patient condition...
Due to a lack of integration between different sensors, false alarms (FA) in the intensive care unit...
We present a novel algorithm for classifying true and false alarms of five life-threatening arrhythm...
Much of the work in the ICU revolves around information that is recorded by electronic devices. Such...
Patient monitoring generates a large number of alarms, the vast majority of which are false. Excessi...
International audienceThis paper presents an alarm validation system dedicated to patient monitoring...
Alarm fatigue, the progressive desensitization of clinical staff to audible alarms in their environm...
Monitoring systems in intensive care units have a high false alarm rate. Machine learn-ing technique...
Patient monitoring in intensive care units requires collection and processing of high volumes of dat...
AbstractBedside monitors are ubiquitous in acute care units of modern healthcare enterprises. Howeve...
Several variables are usually recorded on line in Intensive Care Units (ICU) to detect changes in a ...
We present a novel algorithm for classifying true and false alarms of five life-threatening arrhythm...
In this paper, we propose an algorithm that classifies whether a generated cardiac arrhythmia alarm ...
Due to a lack of integration between different sensors, false alarms (FA) in the intensive care unit...
Medical device alarms are a mechanism for notifying clinicians about deterioration patient condition...
Due to a lack of integration between different sensors, false alarms (FA) in the intensive care unit...
We present a novel algorithm for classifying true and false alarms of five life-threatening arrhythm...
Much of the work in the ICU revolves around information that is recorded by electronic devices. Such...
Patient monitoring generates a large number of alarms, the vast majority of which are false. Excessi...
International audienceThis paper presents an alarm validation system dedicated to patient monitoring...
Alarm fatigue, the progressive desensitization of clinical staff to audible alarms in their environm...