Abstract

BackgroundTo present an episodic random utility model that unifies time trade-off and discrete choice approaches in health state valuation.MethodsFirst, we introduce two alternative random utility models (RUMs) for health preferences: the episodic RUM and the more common instant RUM. For the interpretation of time trade-off (TTO) responses, we show that the episodic model implies a coefficient estimator, and the instant model implies a mean slope estimator. Secondly, we demonstrate these estimators and the differences between the estimates for 42 health states using TTO responses from the seminal Measurement and Valuation in Health (MVH) study conducted in the United Kingdom. Mean slopes are estimates with and without Dolan's transformation of worse-than-death (WTD) responses. Finally, we demonstrate an exploded probit estimator, an extension of the coefficient estimator for discrete choice data that accommodates both TTO and rank responses.ResultsBy construction, mean slopes are less than or equal to coefficients, because slopes are fractions and, therefore, magnify downward errors in WTD responses. The Dolan transformation of WTD responses causes mean slopes to increase in similarity to coefficient estimates, yet they are not equivalent (i.e., absolute mean difference = 0.179). Unlike mean slopes, coefficient estimates demonstrate strong concordance with rank-based predictions (Lin's rho = 0.91). Combining TTO and rank responses under the exploded probit model improves the identification of health state values, decreasing the average width of confidence intervals from 0.057 to 0.041 compared to TTO only results.ConclusionThe episodic RUM expands upon the theoretical framework underlying health state valuation and contributes to health econometrics by motivating the selection of coefficient and exploded probit estimators for the analysis of TTO and rank responses. In future MVH surveys, sample size requirements may be reduced through the incorporation of multiple responses under a single estimator.

Highlights

  • To present an episodic random utility model that unifies time trade-off and discrete choice approaches in health state valuation

  • We show that the assumption of the episodic random utility models (RUMs) theoretically and econometrically unifies time trade-off (TTO) and other discrete choice approaches

  • The TTO-interview is complemented by a visual aid, a TTO-probe board that graphically displays the difference in life years between health states

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Summary

Introduction

To present an episodic random utility model that unifies time trade-off and discrete choice approaches in health state valuation. Health state valuation studies using the time trade-off (TTO) approach lack a sound theoretical framework for the incorporation of worse than death (WTD) responses. We introduce an episodic random utility model (RUM) and two novel estimators for health state valuation. We show that the assumption of the episodic RUM theoretically and econometrically unifies TTO and other discrete choice approaches. The kink in the line suggests that at around the third year, the person's health was poor, as represented by a shallow slope; her health improved, and after ten years, she accumulated around seven QALYs. In other words, the value assigned to her decade-long health episode is seven

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