Please use this identifier to cite or link to this item: http://hdl.handle.net/20.500.12188/28181
Title: Effects of data transformation on multivariate analyses in intracerebral hemorrhage
Authors: Rendevski, Vladimir 
Aleksovski, Boris
Kolevska, Milena
Stojanov, Dragan
Dimitrovski, Kocho 
Mihajlovska Rendevska, Ana
Aleksovski, Vasko
Petlichkovski, Aleksandar 
Trajkov, Dejan 
Stojanoski, Kiro 
Issue Date: 2016
Publisher: Macedonian Pharmaceutical Association
Journal: Macedonian Pharmaceutical Bulletin
Abstract: <jats:p>Multivariate statistical approaches have been increasingly applied in hemorrhagic stroke data analysis. Nevertheless, several aspects regarding their relevance and validity in respect of the application of data transformations have not been studied in details. This paper examines the effects of different data transformations in the standard statistical methods of the multivariate analysis of the intracerebral hemorrhage (ICH) parameters in small group samples. Two different methods for data transformations (log transformation (log(Xi )), square root transformation (√Xi ))have been carried out. The initial volume of the ICH have been studied using several test for skewness, kurtosis, histogram distribution method and different quartile-quartile (Q-Q) and probability-probability (P-P) plots as criteria for normal distribution. Multivariate analyses for the prediction of the perifocal edema was performed using raw and transformed data. Our results indicate that the data transformation operations should be performed very carefully because different analytical outputs lead to different scientific conclusions.</jats:p>
URI: http://hdl.handle.net/20.500.12188/28181
DOI: 10.33320/maced.pharm.bull.2016.62.02.004
Appears in Collections:Faculty of Medicine: Journal Articles

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