Literature DB >> 19745380

Dynamic data analysis and data mining for prediction of clinical stability.

Kristien Van Loon1, Fabian Guiza, Geert Meyfroidt, Jean-Marie Aerts, Jan Ramon, Hendrik Blockeel, Maurice Bruynooghe, Greet Van Den Berghe, Daniel Berckmans.   

Abstract

This work studies the impact of using dynamic information as features in a machine learning algorithm for the prediction task of classifying critically ill patients in two classes according to the time they need to reach a stable state after coronary bypass surgery: less or more than nine hours. On the basis of five physiological variables different dynamic features were extracted. These sets of features served subsequently as inputs for a Gaussian process and the prediction results were compared with the case where only admission data was used for the classification. The dynamic features, especially the cepstral coefficients (aROC: 0.749, Brier score: 0.206), resulted in higher performances when compared to static admission data (aROC: 0.547, Brier score: 0.247). In all cases, the Gaussian process classifier outperformed logistic regression.

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Year:  2009        PMID: 19745380

Source DB:  PubMed          Journal:  Stud Health Technol Inform        ISSN: 0926-9630


  1 in total

1.  Use of machine learning to analyse routinely collected intensive care unit data: a systematic review.

Authors:  Duncan Shillan; Jonathan A C Sterne; Alan Champneys; Ben Gibbison
Journal:  Crit Care       Date:  2019-08-22       Impact factor: 9.097

  1 in total

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