Missing value imputation strategies for metabolomics data

Armitage, E. G. , Godzien, J., Alonso-Herranz, V., López-Gonzálvez, Á. and Barbas, C. (2015) Missing value imputation strategies for metabolomics data. Electrophoresis, 36(24), pp. 3050-3060. (doi: 10.1002/elps.201500352) (PMID:26376450)

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Abstract

The origin of missing values can be caused by different reasons and depending on these origins missing values should be considered differently and dealt with in different ways. In this research, four methods of imputation have been compared with respect to revealing their effects on the normality and variance of data, on statistical significance and on the approximation of a suitable threshold to accept missing data as truly missing. Additionally, the effects of different strategies for controlling familywise error rate or false discovery and how they work with the different strategies for missing value imputation have been evaluated. Missing values were found to affect normality and variance of data and k-means nearest neighbour imputation was the best method tested for restoring this. Bonferroni correction was the best method for maximizing true positives and minimizing false positives and it was observed that as low as 40% missing data could be truly missing. The range between 40 and 70% missing values was defined as a “gray area” and therefore a strategy has been proposed that provides a balance between the optimal imputation strategy that was k-means nearest neighbor and the best approximation of positioning real zeros.

Item Type:Articles
Status:Published
Refereed:Yes
Glasgow Author(s) Enlighten ID:Armitage, Dr Emily Grace
Authors: Armitage, E. G., Godzien, J., Alonso-Herranz, V., López-Gonzálvez, Á., and Barbas, C.
College/School:College of Medical Veterinary and Life Sciences > School of Infection & Immunity
Journal Name:Electrophoresis
Publisher:Wiley-VHC Verlag
ISSN:0173-0835
Published Online:20 October 2015

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