On the Use of Time Series Kernel and Dimensionality Reduction to Identify the Acquisition of Antimicrobial Multidrug Resistance in the Intensive Care Unit
Author
Escudero-Arnanz, Oscar; Rodríguez-Álvarez, Joaquín; Mikalsen, Karl Øyvind; Jenssen, Robert; Soguero-Ruiz, CristinaAbstract
The acquisition of Antimicrobial Multidrug Resistance (AMR) in
patients admitted to the Intensive Care Units (ICU) is a major global
concern. This study analyses data in the form of multivariate time
series (MTS) from 3476 patients recorded at the ICU of University
Hospital of Fuenlabrada (Madrid) from 2004 to 2020. 18% of the
patients acquired AMR during their stay in the ICU. The goal of this
paper is an early prediction of the development of AMR. Towards
that end, we leverage the time-series cluster kernel (TCK) to learn
similarities between MTS. To evaluate the effectiveness of TCK as
a kernel, we applied several dimensionality reduction techniques
for visualization and classification tasks. The experimental results
show that TCK allows identifying a group of patients that acquire
the AMR during the first 48 hours of their ICU stay, and it also
provides good classification capabilities.
Description
Presentation at the 2021 KDD Workshop on Applied Data Science for Healthcare, 15.08.21 - 16.08.21. https://dshealthkdd.github.io/dshealth-2021/
Citation
Escudero-Arnanz, O., Rodríguez-Álvarez, J., Mikalsen, K.Ø., Jenssen, R. (2021). On the Use of Time Series Kernel and Dimensionality Reduction to Identify the Acquisition of Antimicrobial Multidrug Resistance in the Intensive Care Unit. 2021 KDD Workshop on Applied Data Science for Healthcare, 15.08.21 - 16.08.21.Metadata
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