| Literature DB >> 31565784 |
Caroline M Vass1,2, Niall J Davison1,3, Geert Vander Stichele4, Katherine Payne5.
Abstract
BACKGROUND: Online survey-based methods are increasingly used to elicit preferences for healthcare. This digitization creates an opportunity for interactive survey elements, potentially improving respondents' understanding and/or engagement.Entities:
Mesh:
Substances:
Year: 2020 PMID: 31565784 PMCID: PMC7075825 DOI: 10.1007/s40271-019-00391-w
Source DB: PubMed Journal: Patient ISSN: 1178-1653 Impact factor: 3.883
Fig. 1Example choice set. NHS national health service
Summary of study sample characteristics
| Characteristic | Overall | Plain text | Animated storyline |
|---|---|---|---|
| Age group (years) | |||
| 18–24 | 3 (1.0) | 2 (1.3) | 1 (0.7) |
| 25–34 | 45 (15.0) | 22 (13.9) | 23 (16.2) |
| 35–44 | 76 (25.3) | 48 (30.4) | 28 (19.7) |
| 45–54 | 89 (29.7) | 43 (27.2) | 46 (32.38) |
| 55–64 | 68 (22.7) | 35 (22.2) | 33 (23.2) |
| ≥ 65 | 19 (6.3) | 8 (5.1) | 11 (7.8) |
| Female sex | 114 (38.0) | 52 (32.9) | 62 (43.66) |
| Occupational status | |||
| Employed full time | 234 (78.3) | 105 (74.5) | 129 (81.7) |
| Employed part time | 37 (12.4) | 22 (15.6) | 15 (9.5) |
| Self-employed | 5 (1.7) | 3 (2.1) | 2 (1.3) |
| Unemployed | 2 (0.7) | 1 (0.7) | 1 (0.6) |
| Retired | 14 (4.7) | 9 (6.4) | 5 (3.2) |
| Looking after home/family | 4 (1.3) | 1 (0.7) | 3 (1.9) |
| Student | 1 (0.3) | 0 (0.0) | 1 (0.6) |
| Freelance/temping | 1 (0.3) | 0 (0.0) | 1 (0.6) |
| Long-term sickness | 1 (0.3) | 0 (0.0) | 1 (0.6) |
| Choices in real life | |||
| Very confident same | 39 (13.0) | 16 (10.1) | 23 (16.2) |
| Quite confident same | 127 (42.3) | 75 (47.5) | 52 (36.6) |
| Neither confident/not | 75 (25.0) | 44 (27.9) | 31 (21.8) |
| Quite confident different | 49 (16.3) | 18 (11.4) | 31 (21.8) |
| Very confident different | 10 (3.3) | 5 (3.2) | 5 (3.5) |
| Task difficulty | |||
| Very easy | 32 (10.7) | 18 (11.4) | 14 (9.9) |
| Easy | 109 (36.3) | 60 (38.0) | 49 (34.5) |
| Neither easy nor difficult | 74 (24.7) | 38 (24.1) | 36 (25.4) |
| Difficult | 78 (26.0) | 39 (24.7) | 39 (27.5) |
| Very difficult | 7 (2.3) | 3 (1.9) | 4 (2.8) |
Data are presented as n (%)
Fig. 2Proportion of respondents self-reporting attribute non-attendance for each attribute by training materials received. NPV negative predictive value, PPV positive predictive value
Pooled and split-sample estimates of discrete-choice data using different model specifications
| Attribute | Animated storyline conditional logit | Plain text conditional logit | Heteroskedastic conditional logit |
|---|---|---|---|
| ASC (conventional prescribing) | − 1.063*** (0.29) | − 1.122*** (0.26) | − 1.205*** (0.22) |
| Delay | − 0.006 (0.00) | − 0.010** (0.00) | − 0.009** (0.00) |
| PPVa | 0.100*** (0.01) | 0.089*** (0.01) | 0.104*** (0.01) |
| NPVa | 0.153** (0.06) | 0.073 (0.05) | 0.126** (0.04) |
| Risk | − 0.060*** (0.01) | − 0.032** (0.01) | − 0.051*** (0.01) |
| Costb | 0.003 (0.01) | 0.019** (0.01) | 0.012* (0.01) |
| Scale term (plain text) | − 0.216** (0.08) | ||
| Log-likelihood | − 650.54746 | − 805.78534 | − 1459.4602 |
| Observations ( | 2556 | 2844 | 5400 |
Data are presented as estimated coefficient (standard error) unless otherwise indicated
ASC alternative-specific constant, NPV negative predictive value, PPV positive predictive value
*p < 0.05, **p < 0.01, ***p < 0.001
aAttribute scaled so 1% = 10% so coefficients represent the effect of a 10% change in the predictive value
bAttribute scaled so £1 = £100 so coefficient represents the effect of a £100 change in the cost saving
Marginal rates of substitution
| Unit of exchange | Training material | For a £100 saving | For a 10% increase in PPV | For a 10% increase in NPV | For a 1% decrease in risk | For a 1-day reduction in the delay |
|---|---|---|---|---|---|---|
| Willingness to delay treatment (days) | Storyline | 0.45a,b (− 1.82 to 2.71) | 15.45a (− 5.50 to 36.4) | 23.64a (− 15.31 to 62.60) | 9.29a (− 3.42 to 21.99) | – |
| Plain text | 1.86 (0.13 to 3.60) | 8.68 (2.11 to 15.25) | 7.08b (− 5.29 to 19.45) | 3.08 (0.13 to 6.02) | – | |
| Willingness to accept risk (%) | Storyline | 0.14b (− 0.02 to 0.31) | 1.66 (0.92 to 2.41) | 2.55 (0.33 to 4.76) | – | 0.11b (− 0.04 to 0.25) |
| Plain text | 0.61 (0.22 to 1.19) | 2.82 (0.74 to 4.90) | 2.30b (− 1.59 to 6.19) | – | 0.32 (0.01 to 0.64) |
Figures in parentheses are 95% confidence intervals
NPV negative predictive value, PPV positive predictive value
aDenominator not statistically significant
bNumerator not statistically significant
| This study found the error variance reduced when an animated storyline was used to inform respondents about the disease area and the intervention before completing a discrete-choice experiment. |
| As reduced error variance is related to choice consistency, the results suggest respondents were more able to complete the elicitation tasks, but the survey materials did not affect the stated preferences. |
| Having engaged and informed respondents is beneficial in all stated-preference studies, but the advantages may be particularly pronounced in research relating to complex healthcare interventions, with lesser reached populations (e.g., those with lower literacy), or when the research question requires a complex experiment. |