Clinical data mining: a review.

Details

Serval ID
serval:BIB_BA34E9C26657
Type
Article: article from journal or magazin.
Publication sub-type
Review (review): journal as complete as possible of one specific subject, written based on exhaustive analyses from published work.
Collection
Publications
Title
Clinical data mining: a review.
Journal
Yearbook of medical informatics
Author(s)
Iavindrasana J., Cohen G., Depeursinge A., Müller H., Meyer R., Geissbuhler A.
ISSN
2364-0502 (Electronic)
ISSN-L
0943-4747
Publication state
Published
Issued date
2009
Peer-reviewed
Oui
Pages
121-133
Language
english
Notes
Publication types: Journal Article ; Research Support, Non-U.S. Gov't ; Review
Publication Status: ppublish
Abstract
Clinical data mining is the application of data mining techniques using clinical data. We review the literature in order to provide a general overview by identifying the status-of-practice and the challenges ahead.
The nine data mining steps proposed by Fayyad in 1996 [4] were used as the main themes of the review. MEDLINE was used as primary source and 84 papers were retained based on our inclusion criteria.
Clinical data mining has three objectives: understanding the clinical data, assist healthcare professionals, and develop a data analysis methodology suitable for medical data. Classification is the most frequently used data mining function with a predominance of the implementation of Bayesian classifiers, neural networks, and SVMs (Support Vector Machines). A myriad of quantitative performance measures were proposed with a predominance of accuracy, sensitivity, specificity, and ROC curves. The latter are usually associated with qualitative evaluation.
Clinical data mining respects its commitment to extracting new and previously unknown knowledge from clinical databases. More efforts are still needed to obtain a wider acceptance from the healthcare professionals and for generalization of the knowledge and reproducibility of its extraction process: better description of variables, systematic report of algorithm parameters including the method to obtain them, use of easy-to-understand models and comparisons of the efficiency of clinical data mining with traditional statistical analyses. More and more data will be available for data miners and they have to develop new methodologies and infrastructures to analyze the increasingly complex medical data.
Keywords
Algorithms, Bibliometrics, Clinical Medicine, Data Mining/methods, Data Mining/statistics & numerical data
Pubmed
Create date
29/08/2023 7:45
Last modification date
13/10/2023 14:35
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