| Literature DB >> 34982038 |
Alex Mariakakis1, Ravi Karkar2, Shwetak N Patel2, Julie A Kientz3, James Fogarty2, Sean A Munson3.
Abstract
BACKGROUND: Developers, designers, and researchers use rapid prototyping methods to project the adoption and acceptability of their health intervention technology (HIT) before the technology becomes mature enough to be deployed. Although these methods are useful for gathering feedback that advances the development of HITs, they rarely provide usable evidence that can contribute to our broader understanding of HITs.Entities:
Keywords: digital health; health belief model; health intervention technology; health screening; health technology; mobile health; mobile phone; path analysis; survey instrument; user design
Year: 2022 PMID: 34982038 PMCID: PMC8764610 DOI: 10.2196/30474
Source DB: PubMed Journal: JMIR Hum Factors ISSN: 2292-9495
Figure 1The structure of the survey instrument for health concept surveying comprises four stages: (1) preintervention, (2) intervention, (3) postintervention, and (4) end of survey. HBM: Health Belief Model; HIT: health intervention technology.
Figure 2The basic path diagrams used to disentangle the effects that health intervention technology design decisions and user-intrinsic factors have on the measured outcome variables: TechnologyInterest (left) and ActionChange (right). HIT: health intervention technology.
Demographic information for the people who completed the survey in case study 1 (N=54).
| Survey demographics | Values, n (%) | |
|
| ||
|
| 6 (11) | |
|
| ITHSa | 48 (89) |
|
| ||
|
| Female | 41 (76) |
|
| Male | 11 (20) |
|
| Gender variant/nonconforming | 2 (4) |
|
| ||
|
| 18-24 | 31 (57) |
|
| 25-34 | 13 (24) |
|
| 35-44 | 7 (13) |
|
| 45-54 | 1 (2) |
|
| 55-64 | 2 (4) |
|
| ||
|
| iOS | 34 (63) |
|
| Android | 20 (37) |
|
| ||
|
| Expert or advanced | 32 (59) |
|
| Intermediate | 21 (39) |
|
| Novice or beginner | 1 (2) |
aITHS: Institute of Translational Health Sciences.
Figure 3The survey structure for case study 1. The inclusion of an incentive in the health intervention technology description was randomized across respondents. HBM: Health Belief Model; HIT: health intervention technology.
Path analysis coefficients for ActionChangePositive in case study 1 (CFIa=0.951; SRMRb=0.079).c
| Variables | ActionChange | Seriousness | Susceptibility | Benefits | Barriers |
| AppResult | 6.874d | −0.002 | 0.636e | 0.024 | −0.035 |
| Incentive | 1.138 | −0.406 | 0.275 | 0.598 | −0.361e |
| Convenience | 0.128e | −0.492 | 0.055 | −0.168 | −0.384f |
| Seriousness | −0.005 | N/Ag | N/A | N/A | N/A |
| Susceptibility | 0.482e | N/A | N/A | N/A | N/A |
| Benefits | 0.402e | N/A | N/A | N/A | N/A |
| Barriers | −0.791d | N/A | N/A | N/A | N/A |
aCFI: comparative fit index.
bSRMR: standardized root mean square residual.
cThe columns indicate dependent variables, whereas the rows indicate independent variables.
dP<.001.
eP<.05.
fP<.01.
gN/A: not applicable.
Demographic information for the people who completed the survey in case study 2 (N=54).
| Survey demographics | Values, n (%) | |
|
| ||
|
| 3 (6) | |
|
| ITHSa | 51 (94) |
|
| ||
|
| Female | 45 (83) |
|
| Male | 8 (15) |
|
| Undisclosed | 1 (2) |
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|
| 18-24 | 34 (63) |
|
| 25-34 | 13 (24) |
|
| 35-44 | 2 (4) |
|
| 45-54 | 2 (4) |
|
| 55-64 | 2 (4) |
|
| Undisclosed | 1 (2) |
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|
| iOS | 39 (72) |
|
| Android | 15 (28) |
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|
| Expert or advanced | 28 (52) |
|
| Intermediate | 26 (48) |
aITHS: Institute of Translational Health Sciences.
Figure 4The 2 possible interface options that respondents could have been shown in case study 2 when presented with a positive test result: the interface with text descriptions only (left) and the interface with text and visuals to illustrate how the results were obtained (right). The interfaces were primarily inspired by the DermoScreen app by Wadhawan et al [47]. HBM: Health Belief Model; HIT: health intervention technology.
Figure 5The two possible interface options that respondents could have been shown in Case Study 2 when presented with a positive test result: (left) the interface with text descriptions only and (right) the interface with text and visuals to illustrate how the results were obtained. The interfaces were primarily inspired by Wadhawan et al.’s [47] DermoScreen app.
Path analysis coefficients for ActionChangeNegative in case study 2 (CFIa=0.961; SRMRb=0.078).c
| Variables | ActionChange | Seriousness | Susceptibility | Benefits | Barriers |
| AppResult | 6.588d | 0.000 | −0.222e | 0.000 | −0.342 |
| Visuals | 0.231 | 0.235 | −0.961f | −0.591 | −0.610 |
| Education | 0.087 | 0.086 | 0.037 | 0.107 | 0.055 |
| Seriousness | −0.220e | N/Ag | N/A | N/A | N/A |
| Susceptibility | −0.056 | N/A | N/A | N/A | N/A |
| Benefits | −0.233e | N/A | N/A | N/A | N/A |
| Barriers | 0.223 | N/A | N/A | N/A | N/A |
aCFI: comparative fit index.
bSRMR: standardized root mean square residual.
cThe columns indicate dependent variables, whereas the rows indicate independent variables.
dP<.001.
eP<.05.
fP<.01.
gN/A: not applicable.
Demographic information for the people who completed the survey in case study 3 (N=263).
| Survey demographics | Values, n (%) | |
|
| ||
|
| 16 (6.1) | |
|
| ITHSa | 240 (91.3) |
|
| 3 (1.1) | |
|
| Other | 4 (1.5) |
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| ||
|
| Female | 202 (76.8) |
|
| Male | 45 (17.1) |
|
| Transgender male | 5 (1.9) |
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| Gender variant/nonconforming | 7 (2.7) |
|
| Self-identify | 1 (0.4) |
|
| Undisclosed | 3 (1.1) |
|
| ||
|
| 18-24 | 145 (55.1) |
|
| 25-34 | 84 (32) |
|
| 35-44 | 17 (6.5) |
|
| 45-54 | 8 (3.1) |
|
| 55-64 | 3 (1.1) |
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| ≥65 | 3 (1.1) |
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| Undisclosed | 3 (1.1) |
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| ||
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| iOS | 170 (64.6) |
|
| Android | 93 (35.4) |
|
| ||
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| Expert or advanced | 146 (55.5) |
|
| Intermediate | 115 (43.7) |
|
| Novice or beginner | 2 (0.8) |
aITHS: Institute of Translational Health Sciences.
Figure 6The survey structure for case study 3. Respondents were shown 3 different health intervention technologies (HITs)—1 for each ConditionType. The 3 HITs either had the same sensitivity and varied in specificity or had the same specificity and varied in sensitivity. Respondents were asked to react to positive and negative app results in a randomized order. Only PerceivedSusceptibility and ActionChange were remeasured in the postintervention stages to shorten the survey length. HBM: Health Belief Model; HIT: health intervention technology.
Path analysis coefficients for ActionChangeNegative in case study 3 (CFIa=0.956; SRMRb=0.075).c
| Variables | Technology Interest | ||
|
| Common | Serious | Stigmatizing |
| Seriousness | −0.120 | 0.101 | 0.129 |
| Susceptibility | 0.206d | 0.120e | 0.104 |
| Sensitivity | 0.416f | 0.357f | 0.268d |
| Specificity | 0.461f | 0.300d | 0.292f |
aCFI: comparative fit index.
bSRMR: standardized root mean square residual.
cThe columns indicate dependent variables, whereas the rows indicate independent variables.
dP<.01.
eP<.05.
fP<.001.
Path analysis coefficients for ActionChangePositive in case study 3 (CFIa=0.981; SRMRb=0.078).c
| Variables | Common | Serious | Stigmatizing | |||||
|
| ActionChange | Susceptibility | ActionChange | Susceptibility | ActionChange | Susceptibility | ||
| AppResult | 6.962d | 0.398d | 6.521d | 1.518d | 5.900d | 0.474e | ||
| Sensitivity | −0.262 | 0.283e | 0.011 | 0.014 | −0.004 | 0.204f | ||
| Specificity | −0.095 | 0.095 | −0.212 | −0.093 | 0.033 | −0.032 | ||
| Seriousness | −0.149 | N/Ag | −0.124 | N/A | 0.168 | N/A | ||
| Susceptibility | 0.426e | N/A | 0.509d | N/A | 0.474d | N/A | ||
| Benefits | 0.226e | N/A | 0.273 | N/A | 0.055 | N/A | ||
| Barriers | −0.137 | N/A | −0.061 | N/A | −0.038 | N/A | ||
aCFI: comparative fit index.
bSRMR: standardized root mean square residual.
cThe columns indicate dependent variables, whereas the rows indicate independent variables.
dP<.001.
eP<.01.
fP<.05.
gN/A: not applicable.
Path analysis coefficients for ActionChangeNegative in case study 3 (CFIa=0.925; SRMRb=0.077).c
| Variables | Common | Serious | Stigmatizing | |||||
|
| ActionChange | Susceptibility | ActionChange | Susceptibility | ActionChange | Susceptibility | ||
| AppResult | 6.230d | −1.999d | 6.144d | −0.970d | 6.833d | −2.191d | ||
| Sensitivity | 0.022 | −0.196 | −0.022 | −0.026 | 0.003 | 0.056 | ||
| Specificity | −0.103e | 0.094 | 0.063 | −0.185e | −0.192 | −0.119 | ||
| Seriousness | −0.451e | N/Af | −0.182 | N/A | −0.169 | N/A | ||
| Susceptibility | −0.311d | N/A | −0.358d | N/A | −0.212d | N/A | ||
| Benefits | 0.001 | N/A | 0.125 | N/A | −0.196 | N/A | ||
| Barriers | 0.105 | N/A | 0.083 | N/A | −0.176 | N/A | ||
aCFI: comparative fit index.
bSRMR: standardized root mean square residual.
cThe columns indicate dependent variables, whereas the rows indicate independent variables.
dP<.001.
eP<.05.
fN/A: not applicable.