Clustering Barotrauma Patients in ICU-A Data Mining Based Approach Using Ventilator Variables

نویسندگان

  • Sérgio Oliveira
  • Filipe Portela
  • Manuel Filipe Santos
  • José Machado
  • António Abelha
  • Álvaro M. Silva
  • Fernando Rua
چکیده

Abstract: Predicting barotrauma occurrence in intensive care patients is a difficult task. Data Mining modelling can contribute significantly to the identification of patients who will suffer barotrauma. This can be achieved by grouping patient data, considering a set of variables collected from ventilators directly related with barotrauma, and identifying similarities among them. For clustering have been considered k-means and k-medoids algortihms (Partitioning Around Medoids). The best model induced presented a Davies-Bouldin Index of 0.64. This model identifies the variables that have more similarity among the variables monitored by the ventilators and the occurrence of barotrauma.

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تاریخ انتشار 2015