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A comparison of multivariable regression models to analyse cost data
Author(s) -
Dodd Susanna,
Bassi Asish,
Bodger Keith,
Williamson Paula
Publication year - 2006
Publication title -
journal of evaluation in clinical practice
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.737
H-Index - 73
eISSN - 1365-2753
pISSN - 1356-1294
DOI - 10.1111/j.1365-2753.2006.00610.x
Subject(s) - multivariable calculus , statistics , regression analysis , linear regression , regression , observational study , econometrics , computer science , bootstrapping (finance) , mathematics , engineering , control engineering
Rationale, aims and objectives  Analysis of cost data is important in providing reliable information to aid budgeting decisions. Certain features of cost data, such as its typically highly skewed distribution and the need to estimate arithmetic mean costs in order to allow inferences to be made on total costs, make it difficult to analyse. Multivariable regression analysis is useful for estimating the influence of explanatory variables on cost in order to predict costs of future patients and allows for the control of variables which influence cost but whose distributions differ between comparison groups. This is especially important in the case of observational studies, where there may be no control over the balance of characteristics between the comparison groups. Method  This paper compares the appropriateness of various multivariable models of cost data by examining regression diagnostics, using as an example data collected on costs incurred in the treatment of inflammatory bowel disease. The models compared are normal and bootstrapped multiple linear regression, median regression, gamma model with the log link and normal linear regression (NLR) of log costs. Results  Gamma modelling with the log link was found to be the most suitable model. Conclusions  Bootstrapping was found to make very little difference to conclusions from the NLR model.

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