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Comparison of prediction models for coronary heart diseases in depression patients

Authors
Yang, JunggiLee, YounghoKang, Un-Gu
Issue Date
Mar-2015
Publisher
Science and Engineering Research Support Society
Keywords
Cardiovascular; Coronary heart disease; Depression; Neural networks
Citation
International Journal of Multimedia and Ubiquitous Engineering, v.10, no.3, pp.257 - 268
Journal Title
International Journal of Multimedia and Ubiquitous Engineering
Volume
10
Number
3
Start Page
257
End Page
268
URI
https://scholarworks.bwise.kr/gachon/handle/2020.sw.gachon/11003
DOI
10.14257/ijmue.2015.10.3.24
ISSN
1975-0080
Abstract
Globally, coronary heart diseases are one of the most common diseases and regarded as a cause of deaths. Prediction and management of such diseases with high mortality as well as occurrence rate (e.g., coronary heart diseases) are particularly critical. Often, coronary heart disease patients accompany depression symptoms hence, further accurate prediction and continuing management are warranted. Improper therapeutic treatments and failure of early detection of depression patients with coronary heart diseases may result serious clinical outcomes. Data mining, utilizing database, has been shown to aid for finding effective therapeutic patterns thereby pursuing qualitative improvement of medical treatments through diagnosis based on the dataset. In the current study therefore, we compared prediction models of coronary heart disease utilizing data-mining of depression patients data in order to develop the prediction model for coronary heart diseases of depression patients. In results, we demonstrated that the neural networks model predicted most accurately thus results herein may provide a basis of prediction model for coronary heart diseases in depression patients and be effective for the establishment of effective therapeutic treatments and management plans. © 2015 SERSC.
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