| Literature DB >> 32698869 |
Abstract
BACKGROUND: Several studies highlight the effects of artificial intelligence (AI) systems on healthcare delivery. AI-based tools may improve prognosis, diagnostics, and care planning. It is believed that AI will be an integral part of healthcare services in the near future and will be incorporated into several aspects of clinical care. Thus, many technology companies and governmental projects have invested in producing AI-based clinical tools and medical applications. Patients can be one of the most important beneficiaries and users of AI-based applications whose perceptions may affect the widespread use of AI-based tools. Patients should be ensured that they will not be harmed by AI-based devices, and instead, they will be benefited by using AI technology for healthcare purposes. Although AI can enhance healthcare outcomes, possible dimensions of concerns and risks should be addressed before its integration with routine clinical care.Entities:
Keywords: AI medical devices; Artificial intelligence (AI); Clinical decision support; Intention to use; Perceived benefits; Perceived risks
Mesh:
Year: 2020 PMID: 32698869 PMCID: PMC7376886 DOI: 10.1186/s12911-020-01191-1
Source DB: PubMed Journal: BMC Med Inform Decis Mak ISSN: 1472-6947 Impact factor: 2.796
Operationalization of variables
| Construct | Construct definition | Source |
|---|---|---|
| Perceived performance anxiety | The degree to which an individual believes that AI-based tools and their features exhibit pervasive technological uncertainties. | Sarin, Sego [ |
| Perceived communication barriers | The degree to which an individual feels that AI devices may reduce human aspects of relations in the treatment process. | Lu, Cai [ |
| Perceived social biases | The degree to which a person believes that data used in the AI devices may lead to societal discrimination to a certain patient group (e.g., minority groups). | Reddy, Allan [ |
| Perceived privacy concerns | The extent to which individuals concern about how AI-based devices collect, access, use, and protect their personal information | Stewart and Segars [ |
| Perceived mistrust in AI mechanisms | The degree to which an individual believes that AI models and AI-driven diagnostics and recommendations in health care are still not trustworthy. | Luxton [ |
| Perceived unregulated standard | The extent to which an individual believes that regulatory standards and guidelines to assess AI algorithmic safety are yet to be formalized. | Cath [ |
| Perceived liability issues | The extent to which an individual is concerned about the liability and responsibility of using AI clinical tools. | Laï, Brian [ |
| Perceived risks | The extent to which an individual believes that, in general, it would be risky for patients to use AI-based tools in health care. | Bansal, Zahedi [ |
| Perceived benefits | The extent to which an individual believes that AI-based tools can improve diagnostics and care planning for patients. | Lo, Lei [ |
| Intention to use AI-based tools | The extent to which an individual is willing to use AI-based services for diagnostics and treatments. | Turja, Aaltonen [ |
Fig. 1Research model
Results of convergent validity
| Construct | Items | Standardized Factor loading (> 0.7) | Composite reliability (> 0.7) | AVE (> 0.5) |
|---|---|---|---|---|
| Perceived Performance Anxiety | PPA1 | 0.86 | 0.924 | 0.709 |
| PPA2 | 0.86 | |||
| PPA3 | 0.85 | |||
| PPA4 | 0.80 | |||
| PPA5 | 0.84 | |||
| Perceived Social Biases | PSB1 | 0.80 | 0.919 | 0.694 |
| PSB2 | 0.84 | |||
| PSB3 | 0.88 | |||
| PSB4 | 0.78 | |||
| PSB5 | 0.86 | |||
| Perceived Privacy Concerns | PPC1 | 0.80 | 0.952 | 0.767 |
| PPC2 | 0.89 | |||
| PPC3 | 0.90 | |||
| PPC4 | 0.87 | |||
| PPC5 | 0.92 | |||
| PPC6 | 0.87 | |||
| Perceived Mistrust in AI Mechanisms | PMT1 | 0.87 | 0.938 | 0.751 |
| PMT2 | 0.85 | |||
| PMT3 | 0.89 | |||
| PMT4 | 0.89 | |||
| PMT5 | 0.83 | |||
| Perceived Communication Barriers | PCB1 | 0.87 | 0.934 | 0.738 |
| PCB2 | 0.87 | |||
| PCB3 | 0.88 | |||
| PCB4 | 0.90 | |||
| PCB5 | 0.77 | |||
| Perceived Unregulated Standards | PUS1 | 0.86 | 0.944 | 0.771 |
| PUS2 | 0.89 | |||
| PUS3 | 0.88 | |||
| PUS4 | 0.90 | |||
| PUS5 | 0.86 | |||
| Perceived Liability Issues | PL1 | 0.89 | 0.945 | 0.742 |
| PL2 | 0.86 | |||
| PL3 | 0.90 | |||
| PL4 | 0.86 | |||
| PL5 | 0.86 | |||
| PL6 | 0.76 | |||
| Perceived Benefits | PB1 | 0.84 | 0.943 | 0.705 |
| PB2 | 0.85 | |||
| PB3 | 0.89 | |||
| PB4 | 0.84 | |||
| PB5 | 0.85 | |||
| PB6 | 0.74 | |||
| PB7 | 0.86 | |||
| Perceived Risks | PR1 | 0.8 | 0.910 | 0.670 |
| PR2 | 0.85 | |||
| PR3 | 0.84 | |||
| PR4 | 0.82 | |||
| PR5 | 0.78 | |||
| Intention to Use AI-based Tools | INT1 | 0.83 | 0.940 | 0.758 |
| INT2 | 0.87 | |||
| INT3 | 0.90 | |||
| INT4 | 0.89 | |||
| INT5 | 0.86 |
Results of discriminant validity
| Construct | Mean | SD. | PPA | PSB | PPC | PT | PCB | PUS | PL | PB | PR | INT |
|---|---|---|---|---|---|---|---|---|---|---|---|---|
| PPA | 3.48 | 0.99 | ||||||||||
| PSB | 3.19 | 1.03 | 0.499 | |||||||||
| PPC | 3.41 | 1.10 | 0.437 | 0.439 | ||||||||
| PMT | 3.14 | 0.98 | −0.328 | −0.177 | −0.127 | |||||||
| PCB | 3.62 | 1.08 | 0.377 | 0.403 | 0.320 | −0.168 | ||||||
| PUS | 3.67 | 1.04 | 0.437 | 0.438 | 0.446 | −0.160 | 0.459 | |||||
| PL | 3.69 | 1.06 | 0.455 | 0.396 | 0.399 | −0.235 | 0.555 | 0.526 | ||||
| PB | 3.76 | 1.03 | −0.186 | − 0.137 | − 0.048 | 0.495 | − 0.045 | 0.049 | − 0.045 | |||
| PR | 3.49 | 0.96 | 0.451 | 0.464 | 0.515 | −0.478 | 0.596 | 0.522 | 0.553 | −0.272 | ||
| INT | 3.33 | 1.08 | −0.338 | −0.192 | − 0.158 | 0.453 | − 0.214 | −0.156 | − 0.220 | 0.610 | − 0.338 |
Table legend: PPA Perceived Performance Anxiety, PSB Perceived Social Biases, PPC Perceived Privacy Concerns, PMT Perceived Mistrust in AI Mechanisms, PCB Perceived Communication Barriers, PUS Perceived Unregulated Standards, PL Perceived Liability Issues, PB Perceived Benefits, PR Perceived Risks, INT Intention to Use AI-based Tools
Sample characteristics
| Variable | Categories | Percentage (%) |
|---|---|---|
| Gender | Male | 51.1 |
| Female | 48.9 | |
| Age | Under 20 | 0.7 |
| 20–29 | 29.6 | |
| 30–39 | 36.8 | |
| 40–49 | 17.6 | |
| 50–59 | 8.5 | |
| 60 or older | 6.8 | |
| Annual household income | <$25,000 | 15.6 |
| $25,000–$49,999 | 24.8 | |
| $50,000–$74,999 | 23.1 | |
| $75,000–$99,999 | 17.3 | |
| $100,000- -$150,000 | 14.3 | |
| More than $150,000 | 4.9 | |
| Education | Less than high school | 1 |
| High school graduate | 9.1 | |
| Some college | 15 | |
| 2-year degree | 11.1 | |
| Bachelor’s degree | 47.2 | |
| Master’s degree | 13.4 | |
| Doctorate | 3.3 | |
| Employment status | Employed- full time | 64.5 |
| Employed-part time | 15.3 | |
| Unemployed | 11.1 | |
| Retired | 3.9 | |
| Student | 5.2 | |
| Race/ethnicity | White | 69.7 |
| African American | 8.8 | |
| Asian | 15 | |
| Hispanic | 4.6 | |
| Mixed | 1.6 | |
| Other | 0.3 | |
| Have you ever used any AI-enabled services or devices for any reason except for healthcare? (Such as AI embedded in smart devices for any purposes such as financial decision-making) | Yes | 41 |
| No | 59 | |
| Generally, how familiar are you with an AI-based device (used for any purposes except for healthcare)? | Not familiar at all | 10.7 |
| Slightly experienced | 26.1 | |
| Moderately experienced | 37.1 | |
| Very experienced | 18.2 | |
| Extremely experienced | 7.8 | |
| Have you ever used any AI-enabled health services? (Such as AI embedded in smart medical devices) | Yes | 23.5 |
| No | 76.5 | |
| How familiar are you with these AI-based devices used for clinical purposes? | Not familiar at all | 30.6 |
| Slightly experienced | 30.0 | |
| Moderately experienced | 22.8 | |
| Very experienced | 8.8 | |
| Extremely experienced | 7.8 | |
| Have you ever experienced a data breach incident (i.e.., data loss, including personal, health, or financial information)? | Yes | 32.7 |
| No | 67.3 | |
| Overall, do you think your health information is .....? | Sensitive | 74.9 |
| Non-sensitive | 16.0 | |
| No idea | 9.1 | |
| How do you generally rate your computer skills? | Terrible | 0.7 |
| poor | 0,7 | |
| average | 18.6 | |
| Good | 45.0 | |
| Excellent | 35.2 | |
| How do you rate your technical knowledge about AI? | Terrible | 2.0 |
| poor | 14.3 | |
| average | 49.5 | |
| Good | 24.8 | |
| Excellent | 9.4 | |
| How did you gather information about general AI tools? | Articles in magazines/newspapers | 43.6 |
| Social media | 35.1 | |
| Friends and family | 16.7 | |
| Technical books | 4.6 | |
| How do you rate your health literacy? | Terrible | 0.3 |
| poor | 2.9 | |
| average | 26.7 | |
| Good | 47.2 | |
| Excellent | 22.8 |
Fig. 2Model paths *P < 0.05, ***P < 0.001
Results of hypotheses testing
| Hypothesis | Path | Standardized Coefficient | SE. | CR. | Results |
|---|---|---|---|---|---|
| H1 | PPA → PR | 0.22*** | 0.03 | 6.14 | Supported |
| H2 | PCB → PR | 0.36*** | 0.05 | 6.03 | Supported |
| H3 | PPC → PR | 0.06 | 0.05 | 1.06 | Not- Supported |
| H4 | PMT → PR | 0.20*** | 0.048 | 4.28 | Supported |
| H5 | PSB → PR | 0.07 | 0.10 | 0.69 | Not-Supported |
| H6 | PUS → PR | 0.19*** | 0.04 | 3.85 | Supported |
| H7 | PL → PR | 0.21* | 0.10 | 2.09 | Supported |
| H8 | PR → INT | −0.54*** | 0.05 | 9.73 | Supported |
| H9 | PB → INT | 0.83*** | 0.05 | 16.27 | Supported |
Perceived Risks R: 0.67
Intention to Use AI-based Tools R: 0.80
Table legend: PPA Perceived Performance Anxiety, PSB Perceived Social Biases, PPC Perceived Privacy Concerns, PMT Perceived Mistrust in AI Mechanisms, PCB Perceived Communication Barriers, PUS Perceived Unregulated Standards, PL Perceived Liability Issues, PB Perceived Benefits, PR Perceived Risks, INT Intention to Use AI-based Tools. ***P < 0.001, * P < 0.05