Article ID Journal Published Year Pages File Type
383442 Expert Systems with Applications 2013 11 Pages PDF
Abstract

•We propose a Bayesian method to predict survival of patients with multiple injuries.•The proposed method provides the estimates of uncertainty in the predictions.•We compare the accuracy of the proposed and established prediction methods.•The proposed method outperforms the established one.•The performances are compared in terms of prediction accuracy.

Practitioners use Trauma and Injury Severity Score (TRISS) models for predicting the survival probability of an injured patient. The accuracy of TRISS predictions is acceptable for patients with up to three typical injuries, but unacceptable for patients with a larger number of injuries or with atypical injuries. Based on a regression model, the TRISS methodology does not provide the predictive density required for accurate assessment of risk. Moreover, the regression model is difficult to interpret. We therefore consider Bayesian inference for estimating the predictive distribution of survival. The inference is based on decision tree models which recursively split data along explanatory variables, and so practitioners can understand these models. We propose the Bayesian method for estimating the predictive density and show that it outperforms the TRISS method in terms of both goodness-of-fit and classification accuracy. The developed method has been made available for evaluation purposes as a stand-alone application.

Related Topics
Physical Sciences and Engineering Computer Science Artificial Intelligence
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