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      Predictive Modeling of ICU Healthcare-Associated Infections from Imbalanced Data. Using Ensembles and a Clustering-Based Undersampling Approach

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          Abstract

          Early detection of patients vulnerable to infections acquired in the hospital environment is a challenge in current health systems given the impact that such infections have on patient mortality and healthcare costs. This work is focused on both the identification of risk factors and the prediction of healthcare-associated infections in intensive-care units by means of machine-learning methods. The aim is to support decision making addressed at reducing the incidence rate of infections. In this field, it is necessary to deal with the problem of building reliable classifiers from imbalanced datasets. We propose a clustering-based undersampling strategy to be used in combination with ensemble classifiers. A comparative study with data from 4616 patients was conducted in order to validate our proposal. We applied several single and ensemble classifiers both to the original dataset and to data preprocessed by means of different resampling methods. The results were analyzed by means of classic and recent metrics specifically designed for imbalanced data classification. They revealed that the proposal is more efficient in comparison with other approaches.

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          Author and article information

          Journal
          07 May 2020
          Article
          10.3390/app9245287
          2005.03582
          a7e76ab0-2c62-49f2-a82a-873cdf38f660

          http://creativecommons.org/licenses/by/4.0/

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          Custom metadata
          Applied Sciences 9(24),5287,2019
          cs.LG stat.ML

          Machine learning,Artificial intelligence
          Machine learning, Artificial intelligence

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