| Literature DB >> 31625950 |
Tiantian Ye1,2, Jiaolong Xue3,4, Mingguang He5,6, Jing Gu7, Haotian Lin5, Bin Xu8, Yu Cheng1,9.
Abstract
BACKGROUND: Poor quality primary health care is a major issue in China, particularly in blindness prevention. Artificial intelligence (AI) could provide early screening and accurate auxiliary diagnosis to improve primary care services and reduce unnecessary referrals, but the application of AI in medical settings is still an emerging field.Entities:
Keywords: adoption; artificial intelligence; intention; moderation; structural equation model; subjective norms; technology acceptance model; trust
Mesh:
Year: 2019 PMID: 31625950 PMCID: PMC6913088 DOI: 10.2196/14316
Source DB: PubMed Journal: J Med Internet Res ISSN: 1438-8871 Impact factor: 5.428
Figure 1Variables from relevant theories and development of our model for ophthalmic artificial intelligence device acceptance. DFT: Dual Factor Theory; HBM: health belief model; SQB: status quo bias; TAM: Technology Acceptance Model; TPB: Theory of Planned Behavior.
Constructs, items, and references of the measurements.
| Construct | Definition and items | References | |
|
| The degree to which a person believes that the use of ophthalmic AIa devices would enhance his or her personal or job performance | [ | |
|
| PU1 | Ophthalmic AI devices would help me to cope with preventable eye diseases at an early stage | [ |
|
| PU2 | Ophthalmic AI devices would provide detailed information and images of my eyes, which would be very useful for me | [ |
|
| PU3 | Ophthalmic AI devices would help the medical institutions to recognize more treatable eye patients | [ |
|
| PU4 | Ophthalmic AI devices would improve primary health care for health departments and save money | [ |
|
| PU5 | Ophthalmic AI devices would be a good supplement to traditional health care approaches and fit with my medical philosophy | [ |
|
| PU6 | Ophthalmic AI devices would fit my demand for eye health management | [ |
|
| PU7 | Ophthalmic AI devices would achieve the same results as face-to-face diagnosis with an ophthalmologist | [ |
|
| The degree to which a person believes that ophthalmic AI devices would be easy to use | [ | |
|
| PEOU1 | I find the instructions for ophthalmic AI devices easy, clear, and understandable | [ |
|
| PEOU2 | Ophthalmic AI devices would offer a more convenient way for me to cope with my eye disease without queuing for registration in hospitals and would save me time and money | [ |
|
| Perception of internal and external resource constraints to using ophthalmic AI devices, or the availability of skills, resources, and opportunities necessary to use them | [ | |
|
| PBC1 | I have enough knowledge to recognize whether the results of the report are reliable | [ |
|
| PBC2 | I would receive appropriate technical assistance when encountering any difficulties in using ophthalmic AI devices or understanding the report | [ |
|
| PBC3 | I would be able to use ophthalmic AI devices independently as long as I had enough time and made an effort to learn | [ |
|
| Perception of important (or relevant) others’ beliefs about my use of ophthalmic AI devices | [ | |
|
| SN1 | People who are important to me (family members, relatives, and close friends) think that I should use ophthalmic AI devices | [ |
|
| SN2 | My colleagues or peers think that I should use ophthalmic AI devices | [ |
|
| SN3 | My leaders or superiors think that I should use ophthalmic AI devices | [ |
|
| The extent to which an individual believes that using ophthalmic AI devices is secure, reliable, effective, and poses no privacy threats | [ | |
|
| TR1 | I would trust that with big data and deep learning, ophthalmic AI devices could deliver a reliable report after analyzing my eye health images | [ |
|
| TR2 | I would trust that ophthalmic AI devices are more accurate and reliable than human ophthalmologists, because they do not make subjective or empirical errors | [ |
|
| TR3 | I would trust that stakeholders and reliable third parties would ensure the security and privacy of my personal data, health information, and images | [ |
|
| Resistance to a new technology owing to biases such as regret avoidance, inertia, and resistance to change | [ | |
|
| RB1 | I don’t want ophthalmic AI devices to change how I deal with eye diseases because I can’t be bothered and they are unfamiliar to me | [ |
|
| RB2 | I don’t want to use ophthalmic AI devices because from past experience, these new high-tech products always fall flat during practical applications | [ |
|
| RB3 | I might regret trying to use these ophthalmic devices because they could waste my time and effort | [ |
|
| Awareness and care of eye health conditions, and the degree to which eye health concerns are integrated into a person’s daily activities | [ | |
|
| EHC1 | I am aware of and very concerned about my eye health | [ |
|
| EHC2 | I would make efforts to manage my eye health | [ |
|
| A combination of uncertainty and seriousness of an outcome in relation to performance, safety, psychological or social uncertainties | [ | |
|
| PR1 | There is a possibility of malfunction and performance failure, so they might fail to deliver accurate diagnoses or recommendations and could increase conflicts between members of the public and medical institutions | [ |
|
| PR2 | I am concerned that my personal information and health details would be insecure and could be accessed by stakeholders or unauthorized persons, leading to misuse and discrimination | [ |
|
| PR3 | Considering the difficulties involved in taking high-quality images for AI analysis, I think there is a risk of incorrect screening results | [ |
|
| PR4 | Given the vision problems I possibly already have, such as visual fatigue, dry eye, or presbyopia, I might find it hard to read the printed or electronic report from ophthalmic AI devices | [ |
|
| PR5 | Because I might have difficulty understanding the screening report correctly by myself, it might increase my anxiety about my eye health | [ |
|
| PR6 | Because practitioners with little ophthalmic knowledge might find it difficult to understand the screening report and explain the terminology and results to me, they might increase my anxiety of about my eye health | [ |
|
| An individual’s motivation or willingness to exert effort to use ophthalmic AI devices | [ | |
|
| IU1 | I intend to use ophthalmic AI devices as my first choice if I feel eye discomfort | [ |
|
| IU2 | I will encourage my friends/relatives to use ophthalmic AI devices first if they feel eye discomfort | [ |
|
| IU3 | I will encourage healthy people to use ophthalmic AI devices for eye health path screening | [ |
aAI: artificial intelligence.
Demographic results.
| Characteristics | Values, n (%) | ||
|
| |||
|
| Male | 169 (35.7) | |
|
| Female | 305 (64.3) | |
|
| |||
|
| <18 | 3 (0.6) | |
|
| 18-25 | 128 (27.0) | |
|
| 26-30 | 132 (27.8) | |
|
| 31-40 | 175 (36.9) | |
|
| 41-50 | 23 (4.9) | |
|
| 51-60 | 11 (2.3) | |
|
| >60 | 2 (0.4) | |
|
| |||
|
| Middle school | 4 (0.8) | |
|
| High school | 8 (1.7) | |
|
| Three-year college | 64 (13.5) | |
|
| Bachelor’s degree | 341 (71.9) | |
|
| Master’s degree | 54 (11.4) | |
|
| Doctoral degree | 3(0.6) | |
Geographical origins of participants (N=474).
| Province | Value, n (%) |
| Guangdong | 80 (16.9) |
| Beijing | 67 (14.1) |
| Shanghai | 38 (8.0) |
| Jiangsu | 37 (7.8) |
| Shandong | 28 (5.9) |
| Zhejiang | 26 (5.5) |
| Sichuan | 22 (4.6) |
| Henan | 17 (3.6) |
| Hubei | 17 (3.6) |
| Liaoning | 17 (3.6) |
| Chongqing | 16 (3.4) |
| Anhui | 15 (3.2) |
| Hunan | 13 (2.7) |
| Shaanxi | 13 (2.7) |
| Hebei | 10 (2.1) |
| Fujian | 9 (1.9) |
| Heilongjiang | 8 (1.7) |
| Jiangxi | 8 (1.7) |
| Shanxi | 8 (1.7) |
| Jilin | 5 (1.1) |
| Tianjin | 5 (1.1) |
| Guangxi | 4 (0.8) |
| Yunnan | 4 (0.8) |
| Guizhou | 2 (0.4) |
| Gansu | 1 (0.2) |
| Hainan | 1 (0.2) |
| Inner Mongolia | 1 (0.2) |
| Ningxia | 1 (0.2) |
| Xinjiang | 1 (0.2) |
Descriptive statistics of the effect of education on intention to use.
| Diploma | Total | Mean (SD) | SE | 95% CI for mean | Minimum | Maximum |
| Middle school | 4 | 4.750 (1.912) | 0.956 | 1.707 to 7.793 | 3.000 | 7.000 |
| High school | 8 | 5.375 (1.408) | 0.498 | 4.198 to 6.552 | 2.333 | 6.667 |
| Three-year college | 64 | 5.167 (0.914) | 0.114 | 4.938 to 5.395 | 2.333 | 7.000 |
| Bachelor’s degree | 341 | 5.199 (1.000) | 0.054 | 5.093 to 5.306 | 1.000 | 7.000 |
| Master’s degree | 54 | 5.204 (1.084) | 0.148 | 4.908 to 5.500 | 2.333 | 6.667 |
| Doctoral degree | 3 | 4.778 (1.347) | 0.778 | 1.431 to 8.124 | 3.333 | 6.000 |
Post hoc multiple comparisons of the effect of education on intention to use (IU; dependent variable: IU Method: Scheffe).
| Diploma (I), diploma (J) | Mean difference (I-J) | SE | 95% CI | ||
|
| |||||
|
| High school | –0.625 | 0.622 | .96 | –2.704 to 1.454 |
|
| Three-year college | –0.417 | 0.524 | .99 | –2.167 to 1.333 |
|
| Bachelor’s degree | –0.449 | 0.511 | .98 | –2.157 to 1.258 |
|
| Master’s degree | –0.454 | 0.527 | .98 | –2.213 to 1.306 |
|
| Doctoral degree | –0.028 | 0.776 | >.99 | –2.621 to 2.566 |
|
| |||||
|
| Middle school | 0.625 | 0.622 | .96 | –1.454 to 2.704 |
|
| Three-year college | 0.208 | 0.381 | >.99 | –1.065 to 1.482 |
|
| Bachelor’s degree | 0.176 | 0.363 | >.99 | –1.039 to 1.390 |
|
| Master’s degree | 0.171 | 0.385 | >.99 | –1.115 to 1.458 |
|
| Doctoral degree | 0.597 | 0.688 | .98 | –1.702 to 2.896 |
|
| |||||
|
| Middle school | 0.417 | 0.524 | .99 | –1.333 to 2.167 |
|
| High school | –0.208 | 0.381 | >.99 | –1.482 to 1.065 |
|
| Bachelor’s degree | –0.033 | 0.138 | >.99 | –.495 to .430 |
|
| Master’s degree | –0.037 | 0.188 | >.99 | –.664 to .590 |
|
| Doctoral degree | 0.389 | 0.600 | >.99 | –1.617 to 2.395 |
|
| |||||
|
| Middle school | 0.449 | 0.511 | .98 | –1.258 to 2.157 |
|
| High school | –0.176 | 0.363 | >.99 | –1.390 to 1.039 |
|
| Three-year college | 0.033 | 0.138 | >.99 | –.430 to .495 |
|
| Master’s degree | –0.004 | 0.149 | >.99 | –.502 to .493 |
|
| Doctoral degree | 0.422 | 0.589 | >.99 | –1.547 to 2.391 |
|
| |||||
|
| Middle school | 0.454 | 0.527 | .98 | –1.306 to 2.213 |
|
| High school | –0.171 | 0.385 | >.99 | –1.458 to 1.115 |
|
| Three-year college | 0.037 | 0.188 | >.99 | –.590 to .664 |
|
| Bachelor’s degree | 0.004 | 0.149 | >.99 | –.493 to .502 |
|
| Doctoral degree | 0.426 | 0.603 | >.99 | –1.588 to 2.440 |
|
| |||||
|
| Middle school | 0.028 | 0.776 | >.99 | –2.566 to 2.621 |
|
| High school | –0.597 | 0.688 | .98 | –2.896 to 1.702 |
|
| Three-year college | –0.389 | 0.600 | >.99 | –2.395 to 1.617 |
|
| Bachelor’s degree | –0.422 | 0.589 | >.99 | –2.391 to 1.547 |
|
| Master’s degree | –0.426 | 0.603 | >.99 | –2.440 to 1.588 |
Descriptive statistics of variables, items, and convergent validity.
| Construct, item | Mean | Significant test of parameter estimation | Item reliability | Composite reliability, CRd | Convergence validity, AVEe | |||||
| Unstda | SE | Unstd/SE | STDb | SMCc | ||||||
|
| 0.841 | 0.431 | ||||||||
|
| PU1 | 6.095 | 1 | —f | — | — | 0.663 | 0.44 |
|
|
|
| PU2 | 6.171 | 1.076 | 0.09 | 11.972 | <.001 | 0.638 | 0.407 |
|
|
|
| PU3 | 6.118 | 1.118 | 0.094 | 11.926 | <.001 | 0.629 | 0.396 |
|
|
|
| PU4 | 5.859 | 1.344 | 0.118 | 11.386 | <.001 | 0.605 | 0.366 |
|
|
|
| PU5 | 5.873 | 1.419 | 0.116 | 12.222 | <.001 | 0.656 | 0.43 |
|
|
|
| PU6 | 5.77 | 1.518 | 0.115 | 13.149 | <.001 | 0.727 | 0.529 |
|
|
|
| PU7 | 5.091 | 1.958 | 0.156 | 12.512 | <.001 | 0.672 | 0.452 |
|
|
|
| 0.68 | 0.516 | ||||||||
|
| PEOU1 | 5.715 | 1 | — | — | — | 0.685 | 0.469 |
|
|
|
| PEOU2 | 5.762 | 1.109 | 0.119 | 9.313 | <.001 | 0.75 | 0.562 |
|
|
|
| 0.673 | 0.408 | ||||||||
|
| PBC1 | 4.62 | 1 | — | — | — | 0.71 | 0.504 |
|
|
|
| PBC2 | 5.38 | 0.748 | 0.073 | 10.318 | <.001 | 0.605 | 0.366 |
|
|
|
| PBC3 | 5.015 | 0.935 | 0.092 | 10.178 | <.001 | 0.596 | 0.355 |
|
|
|
| 0.758 | 0.512 | ||||||||
|
| SN1 | 5.16 | 1 | — | — | — | 0.704 | 0.496 |
|
|
|
| SN2 | 5.2 | 1.122 | 0.085 | 13.162 | <.001 | 0.764 | 0.584 |
|
|
|
| SN3 | 5.023 | 1.009 | 0.085 | 11.884 | <.001 | 0.675 | 0.456 |
|
|
|
| 0.691 | 0.429 | ||||||||
|
| TR1 | 5.359 | 1 | — | — | — | 0.583 | 0.34 |
|
|
|
| TR2 | 4.595 | 1.697 | 0.166 | 10.228 | <.001 | 0.732 | 0.536 |
|
|
|
| TR3 | 4.975 | 1.349 | 0.141 | 9.551 | <.001 | 0.642 | 0.412 |
|
|
|
| 0.767 | 0.524 | ||||||||
|
| RB1 | 2.319 | 1 | — | — | — | 0.683 | 0.466 |
|
|
|
| RB2 | 2.479 | 1.368 | 0.109 | 12.567 | <.001 | 0.762 | 0.581 |
|
|
|
| RB3 | 2.259 | 1.133 | 0.093 | 12.123 | <.001 | 0.724 | 0.524 |
|
|
|
| 0.766 | 0.625 | ||||||||
|
| EHC1 | 6.051 | 1 | — | — | — | 0.876 | 0.767 |
|
|
|
| EHC2 | 5.724 | 0.859 | 0.136 | 6.317 | <.001 | 0.694 | 0.482 |
|
|
|
| 0.837 | 0.461 | ||||||||
|
| PR1 | 3.962 | 1 | — | — | — | 0.711 | 0.506 |
|
|
|
| PR2 | 3.979 | 0.932 | 0.073 | 12.814 | <.001 | 0.639 | 0.408 |
|
|
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| PR3 | 3.804 | 1.081 | 0.075 | 14.468 | <.001 | 0.738 | 0.545 |
|
|
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| PR4 | 3.308 | 0.968 | 0.081 | 12.025 | <.001 | 0.621 | 0.386 |
|
|
|
| PR5 | 4.217 | 1.089 | 0.082 | 13.34 | <.001 | 0.705 | 0.497 |
|
|
|
| PR6 | 3.544 | 0.931 | 0.075 | 12.483 | <.001 | 0.654 | 0.428 |
|
|
|
| 0.753 | 0.506 | ||||||||
|
| IU1 | 4.977 | 1 | — | — | — | 0.743 | 0.552 |
|
|
|
| IU2 | 5.251 | 0.999 | 0.069 | 14.436 | <.001 | 0.769 | 0.591 |
|
|
|
| IU3 | 5.348 | 0.779 | 0.069 | 11.361 | <.001 | 0.612 | 0.375 |
|
|
aUnstd: unstandardized factor loadings.
bSTD: standardized factor loadings.
cSMC: square multiple correlations.
dCR: composite reliability.
eAVE: average variance extracted.
fNot applicable.
Discriminant validity.
| Constructs | AVEa | PU | PR | IU | RB | EHC | SN | PEOU | PBC | TR |
| Perceived usefulness (PU) | 0.431 |
| —c | — | — | — | — | — | — | — |
| Perceived risks (PR) | 0.462 | –0.266 |
| — | — | — | — | — | — | — |
| Intention to use (IU) | 0.506 | 0.458 | –0.364 |
| — | — | — | — | — | — |
| Resistance bias (RB) | 0.524 | –0.318 | 0.424 | –0.374 |
| — | — | — | — | — |
| Eye health consciousness (EHC) | 0.625 | 0.309 | –0.179 | 0.277 | –0.272 |
| — | — | — | — |
| Subjective norms (SN) | 0.512 | 0.432 | –0.289 | 0.471 | –0.236 | 0.179 |
| — | — | — |
| Perceived ease of use (PEOU) | 0.516 | 0.430 | –0.223 | 0.324 | –0.244 | 0.171 | 0.296 |
| — | — |
| Perceived behavioral control (PBC) | 0.408 | 0.383 | –0.360 | 0.374 | –0.116 | 0.181 | 0.453 | 0.380 |
| — |
| Trust (TR) | 0.429 | 0.343 | –0.332 | 0.422 | –0.152 | 0.126 | 0.458 | 0.247 | 0.411 |
|
aAVE: average variance extracted.
bThe items on the diagonal in italics represent the square root of the AVE; off-diagonal elements are the correlation estimates.
cNot applicable.
Model fit of the research model.
| Model fit | Criteria | Model fit of research model |
| χ2a | The smaller the better | 755.629 |
|
| The larger the better | 356.00 |
| Normed chi-square (χ2/ | 1<χ2/ | 2.123 |
| RMSEAb | <0.08 | 0.049 |
| SRMRc | <0.08 | 0.057 |
| CFId | >0.9 | 0.915 |
| GFIe | >0.9 | 0.896 |
| AGFIf | >0.8 | 0.873 |
aχ2: chi-square.
bRMSEA: root mean squared error of approximation.
cSRMR: standardized root mean square residual.
dCFI: comparative fit index.
eGFI: goodness-of-fit index.
fAGFI: adjusted goodness-of-fit index.
Figure 2Estimates of regression analysis. Note: Solid line indicates a significant path and dotted line indicates a nonsignificant path.
Regression coefficient.
| Dependent variables and hypothesis (H) | Unstda | SE | Stdb | Supported | R2 | |||
|
| 0.515 | |||||||
|
| IU←PUd (H1) | 0.336 | 0.151 | 2.219 | .03 | 0.179 | ✓ |
|
|
| IU←PEOUe (H2a) | 0.05 | 0.093 | 0.544 | .59 | 0.057 | X |
|
|
| IU←SNf (H3a) | 0.408 | 0.098 | 4.146 | <.001 | 0.343 | ✓ |
|
|
| IU←PRg (H6) | –0.124 | 0.066 | –1.875 | .06 | –0.136 | X |
|
|
| IU←RBh (H7) | –0.237 | 0.102 | –2.328 | .02 | –0.169 | ✓ |
|
|
| IU←EHC (H5a) | 0.077 | 0.066 | 1.156 | .25 | 0.073 | X |
|
|
| IU←PBC (H4a) | 0.066 | 0.104 | 0.64 | .52 | 0.064 | X |
|
|
| 0.488 | |||||||
|
| PU←EHCi (H5b) | 0.159 | 0.031 | 5.14 | <.001 | 0.285 | ✓ |
|
|
| PU←PEOU (H2b) | 0.279 | 0.034 | 8.128 | <.001 | 0.591 | ✓ |
|
|
| 0.396 | |||||||
|
| PEOU←SN (H3b) | 0.354 | 0.116 | 3.051 | .002 | 0.263 | ✓ |
|
|
| PEOU←PBCj (H4b) | 0.506 | 0.11 | 4.59 | <.001 | 0.431 | ✓ |
|
aUnstd: unstandardized factor loadings.
bStd: standardized factor loadings.
cIU: intention to use.
dPU: perceived usefulness.
ePEOU: perceived ease of use.
fSN: subjective norms.
gPR: perceived risks
hRB: resistance bias.
iEHC: eye health consciousness.
jPBC: perceived behavioral control.
Analysis of indirect effects.
| Paths relationship | Direct effect (95% CI) | Indirect effect (95% CI) | Results | ||||
|
| Effect | LLCIa | ULCIb | Effect | LLCI | ULCI |
|
| EHCc→PUd→IUe | 0.0765 | –0.0636 | 0.2443 | 0.053 | 0.004 | 0.1361 | Fully |
| PBCf→PEOUg→PU→IU | 0.0663 | –0.202 | 0.3133 | 0.073 | 0.001 | 0.2322 | Fully |
| PBC→PEOU→IU | 0.0663 | 0.202 | 0.3133 | 0.073 | 0.001 | 0.2322 | Fully |
| PEOU→PU→IU | 0.0504 | –0.1868 | 0.3059 | 0.094 | 0.005 | 0.2398 | Fully |
| PBC→PEOU→PU | 0 | 0 | 0 | 0.141 | 0.057 | 0.2697 | Partial |
| SNh→PEOU→PU | 0 | 0 | 0 | 0.099 | 0.0004 | 0.2517 | Partial |
| SN→PEOU→PU→IU | 0.4083 | 0.1768 | 0.6509 | 0.051 | –0.0011 | 0.2 | No |
| SN→PEOU→IU | 0.4083 | 0.1768 | 0.6509 | 0.051 | –0.0011 | 0.2 | No |
aLLCI: lower limit confidence interval.
bULCI: upper limit confidence interval.
cEHC: eye health consciousness.
dPU: perceived usefulness.
eIU: intention to use.
fPBC: perceived behavioral control.
gPEOU: perceived ease of use.
hSN: subjective norms.
Figure 3Trust moderates the effect of PU on IU. a P<.01; b P<.05.
Moderation analysis.
| Dependent variable, independent variable | Unstda | Stdb | SE | Bootstrap 1000 times, bias-corrected 95% CI | ||
|
| ||||||
|
| Perceived usefulness | 0.934 | 0.462 | 0.237 | <.001 | 0.4691 to 1.3997 |
|
| Trust | 0.857 | 0.302 | 0.287 | .003 | 0.2937 to 1.4209 |
|
| Perceived usefulness×Trust | –0.095 | –0.095 | 0.048 | .049 | –0.1897 to –0.0001 |
aUnstd: unstandardized factor loading.
bStd: standardized factor loadings