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Ordering errors, objections and invariance in utility survey responses

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  • Eve Wittenberg
  • Lisa Prosser

Abstract

Background: Utilities are the quantification of the perceived quality of life associated with any health state. They are used to calculate QALYs, the outcome measure in cost-utility analysis. Generally measured through surveys of individuals, utilities often contain apparent or unapparent errors that can bias resulting values and QALYs calculated from these values. Objective: The aim of this study was to improve direct health utility elicitation methodology through the identification of the types of survey responses that indicate errors and objections, and the reasons underlying them. Methods: We conducted a systematic review of the medical (PubMed), economics (EconLit) and psychology (PsycINFO) literature from 1975 through June 2010 for articles describing the types and frequency of errors and objections in directly elicited utility survey responses, and strategies to address these responses. Primary data were collected through an internet-based utility survey (standard gamble) of community members to identify responses that indicate error or objections. A qualitative telephone survey was conducted among a subset of respondents with these types of responses using an open-ended protocol to elicit rationales for them. Results: A total of 11 papers specifically devoted to errors, objections and invariance in utility responses have been published since the mid-1990s. Error/objection responses can be broadly categorized into ordering errors (which include illogical and inconsistent responses) and objections/invariance (which include missing data, protest responses and refusals to trade time or risk in utility questions). Reported frequencies of respondents making ordering errors ranged from 5% to 100%, and up to 35% of respondents have been reported as objecting to the survey or task in some manner. Changes in the design, administration and analysis of surveys can address these potentially problematic responses. Survey data (n=398) showed that individuals who provided invariant responses (n=26) reported the lowest level of difficulty with the survey and often identified as religious (23% of invariant responders found the survey difficult vs 63% of all responders, and 77% of invariant responders identified as religious compared with 56% of entire sample; p > 0.05 for both). Respondents who provided illogical responses (n=50) were less likely to be college educated (56% of illogical responders vs 73% of entire sample; p > 0.05), and less likely to be confident in their responses (62% vs 75% of entire sample; p > 0.05). Qualitative interviews (n=42) following the survey revealed that the majority of ordering errors were a result of confusion, lack of attention or difficulty in responding to the survey on the part of the respondent, while invariant responses were often considered and thoughtful reactions to the premise of valuing health using the standard gamble task. Conclusions: Rationales for error/objection responses include difficulty in articulating preferences or misunderstanding with a complex survey task, and also thoughtful and considered protestations to the task. Mechanisms to correct unintentional errors may be useful, but cannot address intentional responses to elements of the measurement task. Identification and analysis of the prevalence of errors and objections in responses in utility data sets are essential to understanding the accuracy and precision of utility estimates and analyses that depend thereon. Copyright Adis Data Information BV 2011

Suggested Citation

  • Eve Wittenberg & Lisa Prosser, 2011. "Ordering errors, objections and invariance in utility survey responses," Applied Health Economics and Health Policy, Springer, vol. 9(4), pages 225-241, July.
  • Handle: RePEc:spr:aphecp:v:9:y:2011:i:4:p:225-241
    DOI: 10.2165/11590480-000000000-00000
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    1. Leslie A. Lenert & Ann Sturley & Marcia Rupnow, 2003. "Toward Improved Methods for Measurement of Utility: Automated Repair of Errors in Elicitations," Medical Decision Making, , vol. 23(1), pages 67-75, January.
    2. Benjamin M. Craig & Sulabha Ramachandran, 2006. "Relative risk of a shuffled deck: a generalizable logical consistency criterion for sample selection in health state valuation studies," Health Economics, John Wiley & Sons, Ltd., vol. 15(8), pages 835-848, August.
    3. Emily Lancsar & Jordan Louviere, 2008. "Conducting Discrete Choice Experiments to Inform Healthcare Decision Making," PharmacoEconomics, Springer, vol. 26(8), pages 661-677, August.
    4. Flynn, Terry Nicholas & Louviere, Jordan J. & Peters, Tim J. & Coast, Joanna, 2010. "Using discrete choice experiments to understand preferences for quality of life. Variance-scale heterogeneity matters," Social Science & Medicine, Elsevier, vol. 70(12), pages 1957-1965, June.
    5. William Fonta & H. Ichoku & Jane Kabubo-Mariara, 2010. "The effect of protest zeros on estimates of willingness to pay in healthcare contingent valuation analysis," Applied Health Economics and Health Policy, Springer, vol. 8(4), pages 225-237, July.
    6. Flynn, Terry N. & Louviere, Jordan J. & Peters, Tim J. & Coast, Joanna, 2007. "Best-worst scaling: What it can do for health care research and how to do it," Journal of Health Economics, Elsevier, vol. 26(1), pages 171-189, January.
    7. Corso, Phaedra S & Hammitt, James K & Graham, John D, 2001. "Valuing Mortality-Risk Reduction: Using Visual Aids to Improve the Validity of Contingent Valuation," Journal of Risk and Uncertainty, Springer, vol. 23(2), pages 165-184, September.
    8. Leslie A. Lenert & Jonathan R. Treadwell, 1999. "Effects on Preferences of Violations of Procedural Invariance," Medical Decision Making, , vol. 19(4), pages 473-481, October.
    9. Leida M. Lamers & Peep F. M. Stalmeier & Paul F. M. Krabbe & Jan J. V. Busschbach, 2006. "Inconsistencies in TTO and VAS Values for EQ-5D Health States," Medical Decision Making, , vol. 26(2), pages 173-181, March.
    10. Payne, John W & Bettman, James R & Schkade, David A, 1999. "Measuring Constructed Preferences: Towards a Building Code," Journal of Risk and Uncertainty, Springer, vol. 19(1-3), pages 243-270, December.
    11. Bansback, Nick & Brazier, John & Tsuchiya, Aki & Anis, Aslam, 2010. "Using a discrete choice experiment to estimate societal health state utility values," MPRA Paper 29933, University Library of Munich, Germany.
    12. Gregory, Robin & Lichtenstein, Sarah & Slovic, Paul, 1993. "Valuing Environmental Resources: A Constructive Approach," Journal of Risk and Uncertainty, Springer, vol. 7(2), pages 177-197, October.
    13. Badia, Xavier & Roset, Monserrat & Herdman, Michael, 1999. "Inconsistent responses in three preference-elicitation methods for health states," Social Science & Medicine, Elsevier, vol. 49(7), pages 943-950, October.
    14. Bansback, Nick & Brazier, John & Tsuchiya, Aki & Anis, Aslam, 2012. "Using a discrete choice experiment to estimate health state utility values," Journal of Health Economics, Elsevier, vol. 31(1), pages 306-318.
    15. Robinson, Angela & Dolan, Paul & Williams, Alan, 1997. "Valuing health status using VAS and TTO: What lies behind the numbers?," Social Science & Medicine, Elsevier, vol. 45(8), pages 1289-1297, October.
    16. Arthur E. Attema & Werner B. F. Brouwer, 2008. "Can we fix it? Yes we can! But what? A new test of procedural invariance in TTO‐measurement," Health Economics, John Wiley & Sons, Ltd., vol. 17(7), pages 877-885, July.
    17. L. A. Lenert & A. Sturley & M. E. Watson, 2002. "iMPACT3: Internet-Based Development and Administration of Utility Elicitation Protocols," Medical Decision Making, , vol. 22(6), pages 464-474, December.
    18. Han Bleichrodt & Jose Luis Pinto Prades, 2009. "New evidence of preference reversals in health utility measurement," Health Economics, John Wiley & Sons, Ltd., vol. 18(6), pages 713-726, June.
    19. Dolan, Paul & Kind, Paul, 1996. "Inconsistency and health state valuations," Social Science & Medicine, Elsevier, vol. 42(4), pages 609-615, February.
    20. Dena M. Bravata & Lorene M. Nelson & Alan M. Garber & Mary K. Goldstein, 2005. "Invariance and Inconsistency in Utility Ratings," Medical Decision Making, , vol. 25(2), pages 158-167, March.
    21. Floyd J. Fowler JR. & Paul D. Cleary & Michael P. Massagli & Joel Weissman & Arnold Epstein, 1995. "The Role of Reluctance to Give Up life in the Measurement of the Values of Health states," Medical Decision Making, , vol. 15(3), pages 195-200, August.
    22. Lisa Prosser & James Hammitt & Ron Keren, 2007. "Measuring Health Preferences for Use in Cost-Utility and Cost-Benefit Analyses of Interventions in Children," PharmacoEconomics, Springer, vol. 25(9), pages 713-726, September.
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    3. Richard Norman & Paula Cronin & Rosalie Viney, 2012. "Deriving utility weights for the EQ-5D-5L using a discrete choice experiment. CHERE Working Paper 2012/01," Working Papers 2012/01, CHERE, University of Technology, Sydney.

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