DocumentCode :
3802375
Title :
Improving corrective maintenace efficiency in clinical engineering departments - Multiple Linear Regression and Clustering Techniques for Analyzing Quality and Effectiveness of Technical Services
Author :
Antonio Miguel Cruz;Cameron Barr;Elsa P. Pozo Punales
Author_Institution :
Rosario Univ.
Volume :
26
Issue :
3
fYear :
2007
Firstpage :
60
Lastpage :
65
Abstract :
Multiple linear regression and clustering techniques are tools that have been extensively applied in several financial, technical, and biomedical arenas, where vast quantities of data are produced and stored. These techniques show promise in analyzing the performance of departments responsible for and related to hospital equipment maintenance and, thereafter, identifying and improving areas of concern. As a contributory measure, this research is focused on the analysis of quality and effectiveness of corrective (nonscheduled) maintenance tasks in the healthcare environment and the improvement of those processes. The two main objectives of this research are to build a predictor for a TAT indicator to estimate its values and to use a numeric clustering technique to find possible causes of undesirable values of TAT.
Keywords :
"Clinical diagnosis","Linear regression","Clustering algorithms","Testing","Hospitals","Medical services","Costs","Performance analysis","Biomedical measurements","Support vector machines"
Journal_Title :
IEEE Engineering in Medicine and Biology Magazine
Publisher :
ieee
ISSN :
0739-5175
Type :
jour
DOI :
10.1109/MEMB.2007.364931
Filename :
4213103
Link To Document :
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