Prediction of in-hospital mortality from administrative data: A sequential pattern mining approach

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Abstract

Study of trajectory of care is attractive for predicting medical outcome. Models based on machine learning (ML) techniques have proven their efficiency for sequence prediction modeling compared to other models. Introducing pattern mining techniques contributed to reduce model complexity. In this respect, we explored methods for medical events' prediction based on the extraction of sets of relevant event sequences of a national hospital discharge database. It is illustrated to predict the risk of in-hospital mortality in acute coronary syndrome (ACS). We mined sequential patterns from the French Hospital Discharge Database. We compared several predictive models using a text string distance to measure the similarity between patients' patterns of care. We computed combinations of similarity measurements and ML models commonly used. A Support Vector Machine model coupled with edit-based distance appeared as the most effective model. Indeed discrimination ranged from 0.71 to 0.99, together with a good overall accuracy. Thus, sequential patterns mining appear motivating for event prediction in medical settings as described here for ACS. © 2021 European Federation for Medical Informatics (EFMI) and IOS Press.

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APA

Pinaire, J., Chabert, E., Azé, J., Bringay, S., Poncelet, P., & Landais, P. (2021). Prediction of in-hospital mortality from administrative data: A sequential pattern mining approach. In Public Health and Informatics: Proceedings of MIE 2021 (pp. 293–297). IOS Press. https://doi.org/10.3233/SHTI210167

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