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Missing.... presumed at random: cost-analysis of incomplete data

โœ Scribed by Andrew Briggs; Taane Clark; Jane Wolstenholme; Philip Clarke


Publisher
John Wiley and Sons
Year
2003
Tongue
English
Weight
157 KB
Volume
12
Category
Article
ISSN
1057-9230

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โœฆ Synopsis


Abstract

When collecting patientโ€level resource use data for statistical analysis, for some patients and in some categories of resource use, the required count will not be observed. Although this problem must arise in most reported economic evaluations containing patientโ€level data, it is rare for authors to detail how the problem was overcome. Statistical packages may default to handling missing data through a soโ€called โ€˜complete case analysisโ€™, while some recent costโ€analyses have appeared to favour an โ€˜available caseโ€™ approach. Both of these methods are problematic: complete case analysis is inefficient and is likely to be biased; available case analysis, by employing different numbers of observations for each resource use item, generates severe problems for standard statistical inference. Instead we explore imputation methods for generating โ€˜replacementโ€™ values for missing data that will permit complete case analysis using the whole data set and we illustrate these methods using two data sets that had incomplete resource use information. Copyright ยฉ 2002 John Wiley & Sons, Ltd.


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