Prediction Of Similarities Among Rheumatic Diseases
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Date
2012
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Publisher
Springer
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Abstract
We introduce a method for extracting hidden patterns seen in rheumatic diseases by using articles from the widely used biomedical database MEDLINE. Rheumatic diseases affect hundreds of millions of people worldwide and lead to substantial loss of functioning and mobility. Diagnosing rheumatic diseases can be difficult because some symptoms are common to many of them. We use Facta system as a biomedical text mining tool for finding symptoms and then create a dataset with the frequencies of symptoms for each disease and apply hierarchical clustering analysis to find similarities between diseases. Clustering analysis yields four distinct types or groups of rheumatic diseases. Although our results cannot remove all the uncertainty for the diagnosis of rheumatic diseases, we believe they can contribute to the diagnosis of rheumatic diseases to a certain extent. We hope that some similarities exposed can provide additional information at the stage of decision-making.
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Keywords
Biomedical Text Mining, Rheumatic Diseases, Hierarchical Cluster Analysis, Information Extraction
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Citation
Yildirim, Pinar...et al. "Prediction of Similarities Among Rheumatic Diseases", Journal Of Medıcal Systems, Vol. 36, No. 3, pp. 1485-1490, (2012)
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Source
Journal Of Medıcal Systems
Volume
36
Issue
3
Start Page
1485
End Page
1490