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A biological Bayesian network for prediction of adverse outcome in a population of acutely ill patients triaged in the Emergency Department
- Source :
- Scandinavian Journal of Trauma, Resuscitation and Emergency Medicine
- Publication Year :
- 2013
- Publisher :
- Springer Science and Business Media LLC, 2013.
-
Abstract
- Background We know from previous studies that increasing age, abnormal vital signs and abnormal acid-base status are strongly associated with in-hospital mortality in unselected patients admitted acutely to hospital. A model including this information will make us able to explore associations and predict the risk for future patients. Our aim was to describe a Bayesian model for prediction of adverse outcome in the acute ill adult patient admitted to hospital, based on already existing data from the ‘Acute Admission Database’. Methods The model is as tatic Bayesian network, i.e. as tochastic model where all interdependence is described by conditional probabilities. The net consists of nodes representing variables and pointed arrows of influence. The probabilities connected to the nodes and arrows are conditional probabilities showing how the state of a variable influences the probability distribution for the states of another variable. We based the model on already existing data from the ‘Acute Admission Database’ and imported data from 6279 patients consecutively admitted to Hillerod Hospital through the Emergency Department into the Bayesian net program, Netica “3.7” © Norsys Software Corp. We included the risk factors identified in this cohort in previous studies as nodes, and represented the known associations with directed arrows. Results We tested the use of the model by simulating the path of an acutely ill patient: a male patient, 70 years old and presenting with vomiting blood. By using this evidence in the nodes of relevance, we could assess the most probable distribution of the other nodes, including the outcome of interest. We simulated that more data became available for instance vitals signs and triage categories. This new evidence changed the nodes and finally we entered information about a venous blood gas, which changed the probability distribution of the outcome measures as more evidence was gained. Conclusion By using already existing data, we were able to build a Bayesian network, which can be used to estimate the risk of adverse outcome and serve as a decision support system in assessing future patients admitted acutely to hospital.
- Subjects :
- education.field_of_study
medicine.medical_specialty
business.industry
Bayesian probability
Population
Bayesian network
Conditional probability
Emergency department
Critical Care and Intensive Care Medicine
medicine.disease
Bayesian inference
Triage
Meeting Abstract
Emergency medicine
Cohort
Emergency Medicine
Medicine
Medical emergency
business
education
Subjects
Details
- ISSN :
- 17577241
- Volume :
- 21
- Database :
- OpenAIRE
- Journal :
- Scandinavian Journal of Trauma, Resuscitation and Emergency Medicine
- Accession number :
- edsair.doi.dedup.....0516b1e79b11686dcf88c46d3dfc3bc5