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Artificial neural network medical decision support tool: predicting transfusion requirements of ER patients.

作者信息

Walczak Steven

机构信息

University of Colorado at Denver, Denver, CO 80217-3364, USA.

出版信息

IEEE Trans Inf Technol Biomed. 2005 Sep;9(3):468-74. doi: 10.1109/titb.2005.847510.

DOI:10.1109/titb.2005.847510
PMID:16167701
Abstract

Blood product transfusion is a financial concern for hospitals and patients. Efficient utilization of this dwindling resource is a critical problem if hospitals are to maximize patient care while minimizing costs. Traditional statistical models do not perform well in this domain. An additional concern is the speed with which transfusion decisions and planning can be made. Rapid assessment in the emergency room (ER) necessarily limits the amount of usable information available (with respect to independent variables available). This study evaluates the efficacy of using artificial neural networks (ANNs) to predict the transfusion requirements of trauma patients using readily available information. A total of 1016 patient records are used to train and test a backpropagation neural network for predicting the transfusion requirements of these patients during the first 2, 2-6, and 6-24 h, and for total transfusions. Sensitivity and specificity analysis are used along with the mean absolute difference between blood units predicted and units transfused to demonstrate that ANNs can accurately predict most ER patient transfusion requirements, while only using information available at the time of entry into the ER.

摘要

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