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Published in: Journal of Medical Systems 2/2011

01-04-2011 | Original Paper

Using Data Mining Techniques in Monitoring Diabetes Care. The Simpler the Better?

Authors: Dario Gregori, Michele Petrinco, Simona Bo, Rosalba Rosato, Eva Pagano, Paola Berchialla, Franco Merletti

Published in: Journal of Medical Systems | Issue 2/2011

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Abstract

We aim at evaluating how data-mining statistical techniques can be applied on medical records and administrative data of diabetes and how they differ in terms of capabilities of predicting outcomes (e.g. death). Data on 3,892 outpatient patients with a diagnosis of type 2 diabetes from the San Giovanni Battista Hospital in Torino. Six statistical classifiers were applied: Logistic regression (LR), Generalized Additive Model (GAM), Projection pursuit Regression (PPR), Linear Discriminant Analysis (LDA), Quadratic Discriminant Analysis (QDA), Artificial Neural Networks (ANN). All models selected the same subset of covariates. ANN is the model performing worse, whereas simpler models, like LR, GAM and LDA seem to perform better. GAM is associated with a very small misclassification rate. The agreement in predicting individual outcomes among models is 0.23 (SE 0.06, Kappa). Monitoring on the basis of patients’ characteristics is highly dependent from the statistical properties of the chosen statistical model.
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Metadata
Title
Using Data Mining Techniques in Monitoring Diabetes Care. The Simpler the Better?
Authors
Dario Gregori
Michele Petrinco
Simona Bo
Rosalba Rosato
Eva Pagano
Paola Berchialla
Franco Merletti
Publication date
01-04-2011
Publisher
Springer US
Published in
Journal of Medical Systems / Issue 2/2011
Print ISSN: 0148-5598
Electronic ISSN: 1573-689X
DOI
https://doi.org/10.1007/s10916-009-9363-9

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