An empirical comparison of methods for analyzing correlated data from a discrete choice survey to elicit patient preference for colorectal cancer screening

<p>Abstract</p> <p>Background</p> <p>A discrete choice experiment (DCE) is a preference survey which asks participants to make a choice among product portfolios comparing the key product characteristics by performing several choice tasks. Analyzing DCE data needs to acc...

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Main Authors: Cheng Ji, Pullenayegum Eleanor, Marshall Deborah A, Marshall John K, Thabane Lehana
Format: Article
Language:English
Published: BMC 2012-02-01
Series:BMC Medical Research Methodology
Subjects:
Online Access:http://www.biomedcentral.com/1471-2288/12/15
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spelling doaj-766ccb5be81a4765b05302cd2a97613e2020-11-24T23:34:35ZengBMCBMC Medical Research Methodology1471-22882012-02-011211510.1186/1471-2288-12-15An empirical comparison of methods for analyzing correlated data from a discrete choice survey to elicit patient preference for colorectal cancer screeningCheng JiPullenayegum EleanorMarshall Deborah AMarshall John KThabane Lehana<p>Abstract</p> <p>Background</p> <p>A discrete choice experiment (DCE) is a preference survey which asks participants to make a choice among product portfolios comparing the key product characteristics by performing several choice tasks. Analyzing DCE data needs to account for within-participant correlation because choices from the same participant are likely to be similar. In this study, we empirically compared some commonly-used statistical methods for analyzing DCE data while accounting for within-participant correlation based on a survey of patient preference for colorectal cancer (CRC) screening tests conducted in Hamilton, Ontario, Canada in 2002.</p> <p>Methods</p> <p>A two-stage DCE design was used to investigate the impact of six attributes on participants' preferences for CRC screening test and willingness to undertake the test. We compared six models for clustered binary outcomes (logistic and probit regressions using cluster-robust standard error (SE), random-effects and generalized estimating equation approaches) and three models for clustered nominal outcomes (multinomial logistic and probit regressions with cluster-robust SE and random-effects multinomial logistic model). We also fitted a bivariate probit model with cluster-robust SE treating the choices from two stages as two correlated binary outcomes. The rank of relative importance between attributes and the estimates of <b><it>β </it></b>coefficient within attributes were used to assess the model robustness.</p> <p>Results</p> <p>In total 468 participants with each completing 10 choices were analyzed. Similar results were reported for the rank of relative importance and <b><it>β </it></b>coefficients across models for stage-one data on evaluating participants' preferences for the test. The six attributes ranked from high to low as follows: cost, specificity, process, sensitivity, preparation and pain. However, the results differed across models for stage-two data on evaluating participants' willingness to undertake the tests. Little within-patient correlation (ICC ≈ 0) was found in stage-one data, but substantial within-patient correlation existed (ICC = 0.659) in stage-two data.</p> <p>Conclusions</p> <p>When small clustering effect presented in DCE data, results remained robust across statistical models. However, results varied when larger clustering effect presented. Therefore, it is important to assess the robustness of the estimates via sensitivity analysis using different models for analyzing clustered data from DCE studies.</p> http://www.biomedcentral.com/1471-2288/12/15Discrete choice experimentIntra-class correlationStatistical modelPatient preference
collection DOAJ
language English
format Article
sources DOAJ
author Cheng Ji
Pullenayegum Eleanor
Marshall Deborah A
Marshall John K
Thabane Lehana
spellingShingle Cheng Ji
Pullenayegum Eleanor
Marshall Deborah A
Marshall John K
Thabane Lehana
An empirical comparison of methods for analyzing correlated data from a discrete choice survey to elicit patient preference for colorectal cancer screening
BMC Medical Research Methodology
Discrete choice experiment
Intra-class correlation
Statistical model
Patient preference
author_facet Cheng Ji
Pullenayegum Eleanor
Marshall Deborah A
Marshall John K
Thabane Lehana
author_sort Cheng Ji
title An empirical comparison of methods for analyzing correlated data from a discrete choice survey to elicit patient preference for colorectal cancer screening
title_short An empirical comparison of methods for analyzing correlated data from a discrete choice survey to elicit patient preference for colorectal cancer screening
title_full An empirical comparison of methods for analyzing correlated data from a discrete choice survey to elicit patient preference for colorectal cancer screening
title_fullStr An empirical comparison of methods for analyzing correlated data from a discrete choice survey to elicit patient preference for colorectal cancer screening
title_full_unstemmed An empirical comparison of methods for analyzing correlated data from a discrete choice survey to elicit patient preference for colorectal cancer screening
title_sort empirical comparison of methods for analyzing correlated data from a discrete choice survey to elicit patient preference for colorectal cancer screening
publisher BMC
series BMC Medical Research Methodology
issn 1471-2288
publishDate 2012-02-01
description <p>Abstract</p> <p>Background</p> <p>A discrete choice experiment (DCE) is a preference survey which asks participants to make a choice among product portfolios comparing the key product characteristics by performing several choice tasks. Analyzing DCE data needs to account for within-participant correlation because choices from the same participant are likely to be similar. In this study, we empirically compared some commonly-used statistical methods for analyzing DCE data while accounting for within-participant correlation based on a survey of patient preference for colorectal cancer (CRC) screening tests conducted in Hamilton, Ontario, Canada in 2002.</p> <p>Methods</p> <p>A two-stage DCE design was used to investigate the impact of six attributes on participants' preferences for CRC screening test and willingness to undertake the test. We compared six models for clustered binary outcomes (logistic and probit regressions using cluster-robust standard error (SE), random-effects and generalized estimating equation approaches) and three models for clustered nominal outcomes (multinomial logistic and probit regressions with cluster-robust SE and random-effects multinomial logistic model). We also fitted a bivariate probit model with cluster-robust SE treating the choices from two stages as two correlated binary outcomes. The rank of relative importance between attributes and the estimates of <b><it>β </it></b>coefficient within attributes were used to assess the model robustness.</p> <p>Results</p> <p>In total 468 participants with each completing 10 choices were analyzed. Similar results were reported for the rank of relative importance and <b><it>β </it></b>coefficients across models for stage-one data on evaluating participants' preferences for the test. The six attributes ranked from high to low as follows: cost, specificity, process, sensitivity, preparation and pain. However, the results differed across models for stage-two data on evaluating participants' willingness to undertake the tests. Little within-patient correlation (ICC ≈ 0) was found in stage-one data, but substantial within-patient correlation existed (ICC = 0.659) in stage-two data.</p> <p>Conclusions</p> <p>When small clustering effect presented in DCE data, results remained robust across statistical models. However, results varied when larger clustering effect presented. Therefore, it is important to assess the robustness of the estimates via sensitivity analysis using different models for analyzing clustered data from DCE studies.</p>
topic Discrete choice experiment
Intra-class correlation
Statistical model
Patient preference
url http://www.biomedcentral.com/1471-2288/12/15
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