Abstract
Purpose: Health states that describe an investigated condition are a crucial component of valuation studies. The health states need to be distinct and comprehensible to those who appraise them. The objective of this study was to describe a novel application of Rasch and cluster analyses in the development of three rheumatoid arthritis health states. Methods: The Stanford Health Assessment Questionnaire (HAQ) was subjected to Rasch analysis to select the items that best represent disability. K-means cluster analysis produced health states with the levels of the selected items. The pain and discomfort dimension from the EuroQol-5D was also incorporated. Results: The results demonstrate a methodology for reducing a dataset containing individual disease-specific scores to generate health states. The four selected HAQ items were bending down, climbing steps, lifting a cup to your mouth, and standing up from a chair. Conclusions: The combined use of Rasch and k-means cluster analysis has proved to be an effective technique for identifying the most important items and levels for the construction of health states. © 2010, International Society for Pharmacoeconomics and Outcomes Research (ISPOR).
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McTaggart-Cowan, H. M., Brazier, J. E., & Tsuchiya, A. (2010). Clustering Rasch results: A novel method for developing rheumatoid arthritis states for use in valuation studies. Value in Health, 13(6), 787–795. https://doi.org/10.1111/j.1524-4733.2010.00757.x
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