Using multivariate sequential patterns to improve survival prediction in intensive care burn unit

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Casanova, Isidro J.
Campos, Manuel
Juárez, José M.
Fernández Fernández-Arroyo, Antonio

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Springer International Publishing

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Resuscitation and stabilization are key issues in Intensive Care Burn Units and early survival predictions help to decide the best clinical action during these phases. Current survival scores of burns focus on clinical variables such as age or the body surface area. However, the evolution of other parameters (e.g. diuresis or fluid balance) during the first days is also valuable knowledge. In this work we suggest a methodology and we propose a Temporal Data Mining algorithm to estimate the survival condition from the patient’s evolution. Experiments conducted on 480 patients show the improvement of survival prediction.

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Casanova, I. J., Campos, M., Juárez, J. M., Fernández Fernández-Arroyo, A., & Lorente, J. Á. (2015). Using multivariate sequential patterns to improve survival prediction in intensive care burn unit. In Conference on Artificial Intelligence in Medicine in Europe (pp. 277-286). Lecture Notes in Computer Science, 9105. DOI: 10.1007/978-3-319-19551-3_36

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