Multiple signal integration by decision tree induction to detect artifacts in the neonatal intensive care unit
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摘要
The high incidence of false alarms in the intensive care unit (ICU) necessitates the development of improved alarming techniques. This study aimed to detect artifact patterns across multiple physiologic data signals from a neonatal ICU using decision tree induction. Approximately 200 h of bedside data were analyzed. Artifacts in the data streams were visually located and annotated retrospectively by an experienced clinician. Derived values were calculated for successively overlapping time intervals of raw values, and then used as feature attributes for the induction of models trying to classify ‘artifact’ versus ‘not artifact’ cases. The results are very promising, indicating that integration of multiple signals by applying a classification system to sets of values derived from physiologic data streams may be a viable approach to detecting artifacts in neonatal ICU data.
论文关键词:False alarms,Artifact detection,Decision trees,Intensive care monitoring,Patient monitoring,Machine learning
论文评审过程:Received 20 November 1999, Revised 20 February 2000, Accepted 18 March 2000, Available online 20 July 2000.
论文官网地址:https://doi.org/10.1016/S0933-3657(00)00045-2