Intelligent Decision Support System for Osteoporosis Prediction

The healthcare environment is generally perceived as being information rich yet knowledge poor. The healthcare industry collects huge amounts of healthcare data which, unfortunately, are not “mined” to discover hidden information. However, there is a lack of effective analysis tools to discover hidd...

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Veröffentlicht in:International journal of intelligent information technologies 2012-01, Vol.8 (1), p.26-45
Hauptverfasser: Moudani, Walid, Shahin, Ahmad, Chakik, Fadi, Rajab, Dima
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container_issue 1
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container_title International journal of intelligent information technologies
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creator Moudani, Walid
Shahin, Ahmad
Chakik, Fadi
Rajab, Dima
description The healthcare environment is generally perceived as being information rich yet knowledge poor. The healthcare industry collects huge amounts of healthcare data which, unfortunately, are not “mined” to discover hidden information. However, there is a lack of effective analysis tools to discover hidden relationships and trends in data. The information technology may provide alternative approaches to Osteoporosis disease diagnosis. This study examines the potential use of classification techniques on a massive volume of healthcare data, particularly in prediction of patients that may have Osteoporosis Disease (OD) through its risk factors. The paper proposes to develop a dynamic rough sets solution approach in order to generate dynamic reduced subsets of features associated with a classification model using Random Forest (RF) decision tree to identify the osteoporosis cases. There has been no research in using the afore-mentioned algorithm for Osteoporosis patients’ prediction. The reduction of the attributes consists of enumerating dynamically the optimal subsets of the most relevant attributes by reducing the degree of complexity. An intelligent decision support system is developed for this purpose. The study population consisted of 2845 adults. The performance of the proposed model is analyzed and evaluated based on a set of benchmark techniques applied in this classification problem.
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subjects Algorithms
Classification
Decision support systems
Decision trees
Dynamics
Health care
Information systems
Mathematical models
Osteoporosis
Patients
title Intelligent Decision Support System for Osteoporosis Prediction
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