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Clustering of timed sequences -- Application to the analysis of care pathways

Authors
  • Guyet, Thomas
  • Pinson, Pierre
  • Gesny, Enoal
Type
Published Article
Publication Date
Dec 19, 2024
Submission Date
Apr 23, 2024
Identifiers
DOI: 10.1016/j.datak.2024.102401
Source
arXiv
License
Green
External links

Abstract

Improving the future of healthcare starts by better understanding the current actual practices in hospital settings. This motivates the objective of discovering typical care pathways from patient data. Revealing typical care pathways can be achieved through clustering. The difficulty in clustering care pathways, represented by sequences of timestamped events, lies in defining a semantically appropriate metric and clustering algorithms. In this article, we adapt two methods developed for time series to the clustering of timed sequences: the drop-DTW metric and the DBA approach for the construction of averaged time sequences. These methods are then applied in clustering algorithms to propose original and sound clustering algorithms for timed sequences. This approach is experimented with and evaluated on synthetic and real-world data.

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