Title
Predictive combinations of monitor alarms preceding in-hospital code blue events.
Abstract
Bedside monitors are ubiquitous in acute care units of modern healthcare enterprises. However, they have been criticized for generating an excessive number of false positive alarms causing alarm fatigue among care givers and potentially compromising patient safety. We hypothesize that combinations of regular monitor alarms denoted as SuperAlarm set may be more indicative of ongoing patient deteriorations and hence predictive of in-hospital code blue events. The present work develops and assesses an alarm mining approach based on finding frequent combinations of single alarms that are also specific to code blue events to compose a SuperAlarm set. We use 4-way analysis of variance (ANOVA) to investigate the influence of four algorithm parameters on the performance of the data mining approach. The results are obtained from millions of monitor alarms from a cohort of 223 adult code blue and 1768 control patients using a multiple 10-fold cross-validation experiment setup. Using the optimal setting of parameters determined in the cross-validation experiment, final SuperAlarm sets are mined from the training data and used on an independent test data set to simulate running a SuperAlarm set against live regular monitor alarms. The ANOVA shows that the content of a SuperAlarm set is influenced by a subset of key algorithm parameters. Simulation of the extracted SuperAlarm set shows that it can predict code blue events one hour ahead with sensitivity between 66.7% and 90.9% while producing false SuperAlarms for control patients that account for between 2.2% and 11.2% of regular monitor alarms depending on user-supplied acceptable false positive rate. We conclude that even though the present work is still preliminary due to the usage of a moderately-sized database to test our hypothesis it represents an effort to develop algorithms to alleviate the alarm fatigue issue in a unique way.
Year
DOI
Venue
2012
10.1016/j.jbi.2012.03.001
Journal of Biomedical Informatics
Keywords
Field
DocType
predictive combination,final superalarm set,present work,adult code blue,superalarm set,bedside monitor,code blue event,control patient,regular monitor,blue event,in-hospital code,association rule mining
Training set,False positive rate,Data mining,Computer science,ALARM,Association rule learning,Test data
Journal
Volume
Issue
ISSN
45
5
1532-0480
Citations 
PageRank 
References 
4
0.39
16
Authors
8
Name
Order
Citations
PageRank
Xiao Hu17213.64
Monica Sapo240.39
Val Nenov340.39
Tod Barry440.39
Sunghan Kim5164.26
Duc H Do671.54
Noel Boyle771.54
Neil Martin8111.46