Literature DB >> 21166962

Classification of patients by severity grades during triage in the emergency department using data mining methods.

Dror Zmiri1, Yuval Shahar, Meirav Taieb-Maimon.   

Abstract

OBJECTIVE: To test the feasibility of classifying emergency department patients into severity grades using data mining methods.
DESIGN: Emergency department records of 402 patients were classified into five severity grades by two expert physicians. The Naïve Bayes and C4.5 algorithms were applied to produce classifiers from patient data into severity grades. The classifiers' results over several subsets of the data were compared with the physicians' assessments, with a random classifier, and with a classifier that selects the maximal-prevalence class. MEASUREMENTS: Positive predictive value, multiple-class extensions of sensitivity and specificity combinations, and entropy change.
RESULTS: The mean accuracy of the data mining classifiers was 52.94 ± 5.89%, significantly better (P < 0.05) than the mean accuracy of a random classifier (34.60 ± 2.40%). The entropy of the input data sets was reduced through classification by a mean of 10.1%. Allowing for classification deviations of one severity grade led to mean accuracy of 85.42 ± 1.42%. The classifiers' accuracy in that case was similar to the physicians' consensus rate. Learning from consensus records led to better performance. Reducing the number of severity grades improved results in certain cases. The performance of the Naïve Bayes and C4.5 algorithms was similar; in unbalanced data sets, Naïve Bayes performed better.
CONCLUSIONS: It is possible to produce a computerized classification model for the severity grade of triage patients, using data mining methods. Learning from patient records regarding which there is a consensus of several physicians is preferable to learning from each physician's patients. Either Naïve Bayes or C4.5 can be used; Naïve Bayes is preferable for unbalanced data sets. An ambiguity in the intermediate severity grades seems to hamper both the physicians' agreement and the classifiers' accuracy.
© 2010 Blackwell Publishing Ltd.

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Year:  2010        PMID: 21166962     DOI: 10.1111/j.1365-2753.2010.01592.x

Source DB:  PubMed          Journal:  J Eval Clin Pract        ISSN: 1356-1294            Impact factor:   2.431


  7 in total

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  7 in total

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