Effects of neural network feedback to physicians on admit/discharge decision for emergency department patients with chest pain
Autor: | Keara L. Sease, Frances S. Shofer, Frank D. Sites, Dina M. Sparano, William G. Baxt, Judd E. Hollander |
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Rok vydání: | 2004 |
Předmět: |
Adult
Male Chest Pain Acute coronary syndrome medicine.medical_specialty Resuscitation Chest pain Angina Pectoris Patient Admission Intensive care medicine Humans Myocardial infarction Intensive care medicine Aged Artificial neural network business.industry Emergency department Middle Aged medicine.disease Patient Discharge Confidence interval Emergency medicine Emergency Medicine Female Neural Networks Computer medicine.symptom Emergency Service Hospital business |
Zdroj: | Annals of Emergency Medicine. 44:199-205 |
ISSN: | 0196-0644 |
DOI: | 10.1016/j.annemergmed.2004.02.037 |
Popis: | Study objective Neural networks can risk-stratify emergency department (ED) patients with potential acute coronary syndromes with a high specificity, potentially facilitating ED discharge of patients to home. We hypothesized that the use of "real-time" neural networks would decrease the admission rate for ED chest pain patients. Methods We conducted a before-and-after trial. Consecutive ED patients with chest pain were evaluated before and after implementation of a neural network in an urban university ED. Data included 40 variables used in neural networks for acute myocardial infarction and acute coronary syndrome. Data were obtained in real time, and neural network outputs were provided to the treating physician while patients were in the ED. On hospital discharge, attending physicians received feedback, including neural network output, their initial clinical impression, cardiac test results, and final diagnosis. The main outcome was the actual admit/discharge decision made before versus after the implementation of the neural network. Results Before implementation, 4,492 patients were enrolled; after implementation, 432 patients were enrolled. Implementation of the neural network did not decrease the hospital admission rate (before: 62.7% [95% confidence interval (CI) 61.3% to 64.1%] versus after: 66.6% [95% CI 62.2% to 71.0%]). Additionally, the ICU admission rates were not different (11.4% [95% CI 10.5% to 12.3%] versus 9.3% [95% CI 6.6% to 12.0%]). Physician query found that the neural network changed management in only 2 cases ( Conclusion The use of real-time neural network feedback did not influence the admission decision for ED patients with chest pain, most likely because the neural network output was delayed until the return of cardiac markers, and the disposition decision had already been made by that time. |
Databáze: | OpenAIRE |
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