| Literature DB >> 35727614 |
Lisa Cornelissen1, Claudia Egher1,2, Vincent van Beek3,4, Latoya Williamson3, Daniel Hommes3,4.
Abstract
BACKGROUND: The emergence of Artificial Intelligence (AI) has been proven beneficial in several health care areas. Nevertheless, the uptake of AI in health care delivery remains poor. Despite the fact that the acceptance of AI-based technologies among medical professionals is a key barrier to their implementation, knowledge about what informs such attitudes is scarce.Entities:
Keywords: artificial intelligence; health care providers; health innovation; machine learning; technology acceptance; technology adoption; user adoption
Year: 2022 PMID: 35727614 PMCID: PMC9384807 DOI: 10.2196/33368
Source DB: PubMed Journal: JMIR Form Res ISSN: 2561-326X
Definitions of the predictor variables for the behavioral intention to use artificial intelligence (AI)-powered care pathways.
| Construct | Operational definition |
| Medical performance expectancya | Degree to which an individual believes that using AI-powered care pathways will help him or her to attain gains in terms of the provided quality of care [ |
| Nonmedical performance expectancya | Degree to which an individual believes that using AI-powered care pathways will help him or her to attain gains in productivity, efficiency, and communication [ |
| Effort expectancy | Degree of ease associated with the use of the system [ |
| Social influence patientsb | Degree to which an individual perceives that patients believe that he or she should use the new system [ |
| Social influence medicalb | Degree to which an individual perceives that other medical organizations or colleagues believe that he or she should use the new system [ |
| Facilitating conditions | Degree to which an individual believes that an organizational and technical infrastructure exists to support the use of the system [ |
| Perceived trust | Users’ specific trust that AI-powered care pathways have the ability, integrity, and benevolence in providing their service [ |
| Anxiety | The fear (eg, sadness, perception, and stress caused by stress-creating situations) experienced by an individual during their interaction with AI-powered care pathways [ |
| Professional identity | The attitudes, values, knowledge, beliefs, and skills that are shared with others within a professional role being undertaken by the individual [ |
| Innovativeness | Degree to which an individual is relatively earlier in adopting an innovation than other members of his (social) system [ |
aThe original determinant in the Unified Theory of Acceptance and Use of Technology (UTAUT) model of performance expectancy was divided in two separate variables since performance expectancy for AI-powered care pathways can be viewed from a medical and nonmedical perspective.
bThe original determinant in the UTAUT model of social influence was divided in two separate variables since it is hypothesized that patients and medical organizations or colleagues have different influences.
Figure 1Overview of the conceptual model used in this study. The predictor variables (performance expectancy, effort expectancy, social influence, facilitating conditions, perceived trust, anxiety, professional identity, and innovativeness) are hypothesized to influence the variance the acceptance of AI-powered care pathways. The moderators (age, gender, experience, and profession) are hypothesized to influence the relationship between the predicator variables and the dependent variable. AI: artificial intelligence, UTAUT: Unified Theory of Acceptance and Use of Technology.
Participant demographics (N=67).
| Characteristics | Participants, n | Participants, % | |||
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| Male | 26 | 38.8 | ||
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| Female | 41 | 61.2 | ||
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| 18-24 | 5 | 7.5 | ||
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| 25-34 | 15 | 22.4 | ||
|
| 35-44 | 16 | 23.9 | ||
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| 45-54 | 11 | 16.4 | ||
|
| 55-64 | 17 | 25.4 | ||
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| ≥65 | 3 | 4.5 | ||
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| ≤2 | 5 | 7.5 | ||
|
| 3-5 | 10 | 14.9 | ||
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| 6-10 | 7 | 10.4 | ||
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| 11-20 | 19 | 28.4 | ||
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| 21-30 | 14 | 20.9 | ||
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| ≥31 | 12 | 17.9 | ||
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| Physician | 28 | 41.8 | ||
|
| Nurse specialist | 2 | 3.0 | ||
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| Nurse | 14 | 20.9 | ||
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| Management | 11 | 16.4 | ||
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| Consultant | 11 | 16.4 | ||
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| Other function in hospital | 13 | 19.4 | ||
Internal reliability of the constructs based on the 3 statements using Cronbach α values. Social influence medical experts (SIME) and facilitating conditions (FCs) showed unacceptable internal consistency (Cronbach α<.5). Item removal resulted in a better Cronbach α for facilitating conditions.
| Variable | Cronbach |
| Innovativeness | .706 |
| Anxiety | .701 |
| FC→FC1+FC2 (item removal of FC3) | .455 → .512 |
| Nonmedical performance expectancy | .662 |
| Social influence patients | .667 |
| Medical performance expectancy | .638 |
| Social influence medical experts | .244 |
| Professional identity | .748 |
| Perceived trust | .717 |
| Effect expectancy | .816 |
| Behavioral intention | .916 |
Figure 2Overview of the individual relationships of the predictor variables and the acceptance of artificial intelligence–powered care pathways. Medical performance expectancy (MEPE), nonmedical performance expectancy, effort expectancy, facilitating condition, perceived trust, and professional identity showed a significantly influential relationship on acceptance where MEPE had the largest impact. Social influence patient, anxiety, and innovativeness did not show a significant relationship on the variance in acceptance. The predicator variable social influence medical was excluded from the analysis since it showed a poor internal consistency. n.s.: not significant.
Figure 3Moderating effect of gender. Being a male had a positive moderating effect whereas being a female had a negative impact.