4.5 Article

Extracting new patterns for cardiovascular disease prognosis

Journal

EXPERT SYSTEMS
Volume 26, Issue 5, Pages 364-377

Publisher

WILEY
DOI: 10.1111/j.1468-0394.2009.00498.x

Keywords

cardiovascular diseases; machine learning; blood pressure variability; classification; medical decision support; prognosis

Funding

  1. Venezuelan [FONACIT G-97000876]

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Cardiovascular diseases constitute one of the main causes of mortality in the world, and machine learning has become a powerful tool for analysing medical data in the last few years. In this paper we present an interdisciplinary work based on an ambulatory blood pressure study and the development of a new classification algorithm named REMED. We focused on the discovery of new patterns for abnormal blood pressure variability as a possible cardiovascular risk factor. We compared our results with other classification algorithms based on Bayesian methods, decision trees, and rule induction techniques. In the comparison, REMED showed similar accuracy to these algorithms but it has the advantage of being superior in its capacity to classify sick people correctly. Therefore, our method could represent an innovative approach that might be useful in medical decision support for cardiovascular disease prognosis.

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