E2 feng xie 2016 apr12

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Transforming latent utilities to health utilities: East doesn’t meet West Feng Xie Department of Clinical Epidemiology and Biostatistics McMaster University

Transcript of E2 feng xie 2016 apr12

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Transforming latent utilities to health utilities:

East doesn’t meet WestFeng Xie

Department of Clinical Epidemiology and BiostatisticsMcMaster University

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Acknowledgements Coauthors: Eleanor Pullenayegum, Simon Pickard, Juan

Manuel Ramos Goni, Min-Woo Jo, Ataru Igarashi We thank Drs. Ben Van Hout, Elly Stolk, Nan Luo, Juntana

Pattanaphesaj, Juan Manuel Ramos Goñi, Min-Woo Jo, and Ataru Igarashi for sharing their data

This project was sponsored by a fast-track research grant from the EuroQol Research Foundation (#2013180)

Drs. Feng Xie is funded by the Canadian Institutes for Health Research New Investigator Award (MSH #122801). Dr. Feng Xie is also supported by McMaster University and St. Joseph’s Healthcare Hamilton.

None of the sponsors had any involvement in the design and conduct of the study, collection, analysis, and interpretation of the data, preparation, review and approval of the work.

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EQ-5D-5L Valuation Study An international initiative by the EuroQol

Group Standardized protocol – EuroQol

Valuation Technology (EQ-VT) Canada, Spain, UK, the Netherlands,

Japan, Thailand, Korea, and China More countries…

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Discrete choice experiment (DCE)

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DCE vs TTO

Full healthDead State 1State 2

1.00.0

health utility

DCElatentutility

Cognitive challenge Online vs face-to-face interview Health utilities from TTO vs latent

utilities from DCE

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The motivation Feasibility issues in conducting

interviews with a national representative sample in geographically-spread countries or those with resource constraint

DCE could be a practical alternative if an existing transforming function can be used

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Hypothesis and objective The relationship between different

methods in eliciting health preference may be similar across countries given the same underlying construct being elicited

To compare generic functions with country-specific functions in transforming latent utilities to health utilities

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The data sets Valuation study data from the 8 countries TTO –derived health utilities for 86 health

states 196 state pairs using DCE Each participant was asked to value 10 health

states using TTO and 7 pairs of states using DCE

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Transforming L to U

1• Conditional logit model to derive latent utilities using DCE data

2• Calculating mean TTO-derived health utility for each of 86 states

3• fractional polynomial models to transform L to U (e.g. E(U|L)=β0 + β1La)

4

• Calculating mean absolute error (MAE) between predicted and observed health utility for each state without including the data from that state in modeling

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Criteria for MAEs The standard deviations (SDs) of the

MAEs from 18 EQ-5D (3 level) TTO-based valuation studies

≤1 SD (0.02): acceptable; 1 SD<~<2 SDs (0.02 to 0.04): applied

with caution ≥2 SDs (0.04): unacceptable.

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Study and respondent characteristics

  Canada U.K. Spain Netherlands China Thailand Korea Japan

No of respondents*

1209 1221 1000 983 1299 1216 1080 1026

No of interviewers 11 60 33 19 21 6 27 31

Use of commercial survey company

N  Y Y N N N Y Y

Age, years, mean±SD

47.5± 17.4  51.0 ± 17.9 43.8 ± 17.3

47.2 ± 16.8 42.3 ± 16.2

43.5 ± 15.1

45.0 ± 14.3

44.9 ± 14.9

Female, n(%) 667 (55.0%)

710 (58,2%) 

525 (52.5%)

507 (51.6%)

649 (50.0%)

630 (51.8%)

548 (50.7%)

511 (49.8%)

EQ-VAS, mean±SD 82.3 ± 14.2

78.6 ± 19.0 

82.3 ± 14.5

80.5 ± 14.8 86.0 ± 11.4

83.1 ± 11.9

83.0 ± 10.0

84.9 ± 11.2

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-10 -8 -6 -4 -2 0

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Latent Utility (SD units)

Obs

erve

d TT

O m

ean

CanadaUnited KingdomChinaNetherlandsSpainThailandKoreaJapan

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Latent Utility (SD units)

Obs

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ean

CanadaUnited KingdomChinaNetherlandsSpainThailandKoreaJapan

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Country-specific functions

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Regional functions

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Global function

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The findings The differences were larger in the four

eastern countries than those in the four western countries

A global generic transforming function was associated with large increase in prediction errors

A generic function for western countries may work

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Discussion DCE could be used as the sole technique

in western countries where using TTO is not feasible

Provincial value set could be derived using the national transforming function applied to provincial DCE data

Trade-off between prediction precision for health state utilities and amount of research resources to spend must be made