Connecting the dots: rule-based decision support systems in the modern EMR era

被引:0
|
作者
Vitaly Herasevich
Daryl J. Kor
Arun Subramanian
Brian W. Pickering
机构
[1] Mayo Clinic,Division of Critical Care Medicine, Department of Anesthesiology
[2] Mayo Clinic,Multidisciplinary Epidemiology and Translational Research in Intensive Care (METRIC)
来源
Journal of Clinical Monitoring and Computing | 2013年 / 27卷
关键词
Alert; Decision support systems; Sniffers; Monitor; EMR; False-alert; ICU;
D O I
暂无
中图分类号
学科分类号
摘要
The intensive care unit (ICU) environment is rich in both medical device and electronic medical record (EMR) data. The ICU patient population is particularly vulnerable to medical error or delayed medical intervention both of which are associated with excess morbidity, mortality and cost. The development and deployment of smart alarms, computerized decision support systems (DSS) and “sniffers” within ICU clinical information systems has the potential to improve the safety and outcomes of critically ill hospitalized patients. However, the current generations of alerts, run largely through bedside monitors, are far from ideal and rarely support the clinician in the early recognition of complex physiologic syndromes or deviations from expected care pathways. False alerts and alert fatigue remain prevalent. In the coming era of widespread EMR implementation novel medical informatics methods may be adaptable to the development of next generation, rule-based DSS.
引用
收藏
页码:443 / 448
页数:5
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