Artificial Intelligence in Medicine
Volume 37, Issue 1 , Pages 31-42, May 2006

Case-based retrieval to support the treatment of end stage renal failure patients

  • Stefania Montani

      Affiliations

    • Dipartimento di Informatica, Università del Piemonte Orientale, Via Bellini 25/g, 15100 Alessandria, Italy
  • ,
  • Luigi Portinale

      Affiliations

    • Dipartimento di Informatica, Università del Piemonte Orientale, Via Bellini 25/g, 15100 Alessandria, Italy
    • Corresponding Author InformationCorresponding author. Tel.: +39 0131 360 184; fax: +39 0131 360 198.
  • ,
  • Giorgio Leonardi

      Affiliations

    • Dipartimento di Informatica e Sistemistica, Università di Pavia, Italy
    • G. Leonardi is currently a PhD student at Università di Pavia, but this work was realized while he was graduating at Università del Piemonte Orientale.
  • ,
  • Riccardo Bellazzi

      Affiliations

    • Dipartimento di Informatica e Sistemistica, Università di Pavia, Italy
  • ,
  • Roberto Bellazzi

      Affiliations

    • Unità Operativa di Nefrologia e Dialisi, S.O. Vigevano, A.O. Pavia, Italy

Received 22 July 2004; received in revised form 11 May 2005; accepted 2 June 2005.

Summary 

Objective

In the present paper, we describe an application of case-based retrieval to the domain of end stage renal failure patients, treated with hemodialysis.

Materials and methods

Defining a dialysis session as a case, retrieval of past similar cases has to operate both on static and on dynamic features, since most of the monitoring variables of a dialysis session are time series. Retrieval is then articulated as a two-step procedure: (1) classification, based on static features and (2) intra-class retrieval, in which dynamic features are considered. As regards step (2), we concentrate on a classical dimensionality reduction technique for time series allowing for efficient indexing, namely discrete Fourier transform (DFT). Thanks to specific index structures (i.e. kd trees), range queries (on local feature similarity) can be efficiently performed on our case base, allowing the physician to examine the most similar stored dialysis sessions with respect to the current one.

Results

The retrieval tool has been positively tested on real patients’ data, coming from the nephrology and dialysis unit of the Vigevano hospital, in Italy.

Conclusions

The overall system can be seen as a means for supporting quality assessment of the hemodialysis service, providing a useful input from the knowledge management perspective.

Keywords: Case-based retrieval, Time-series similarity, Hemodialysis

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PII: S0933-3657(05)00087-4

doi:10.1016/j.artmed.2005.06.003

Artificial Intelligence in Medicine
Volume 37, Issue 1 , Pages 31-42, May 2006