AI Risks and Benefits Scale

AI Risks and Benefits Scale

CategoryDetails
DescriptionThe AI Risks and Benefits Scale (Kerstan, Bienefeld, & Grote, 2024) was developed to assess perceptions of risks and benefits associated with artificial intelligence (AI)-based technologies in healthcare, without reference to specific AI applications. This questionnaire was designed for a study examining the preference for human doctors versus AI-based treatment recommendations in an online sample of adults recruited via Prolific. The scale consists of 19 items derived from themes identified in prior research (e.g., Blease et al., 2019) and a pretest. Factor analysis and reliability assessments were conducted.
Test TypeOriginal
Instrument TypeInventory/Questionnaire
ConstructAttitudes toward Artificial Intelligence in Healthcare
PurposeTo measure the likelihood of risks or benefits related to artificial intelligence occurring in healthcare practice.
Test Year2024
AuthorKerstan, Sophie; Bienefeld, Nadine; Grote, Gudela
AffiliationETH Zurich, Department of Management, Technology, and Economics
Author IdentifierSophie Kerstan: ORCID; Nadine Bienefeld: ORCID; Gudela Grote: ORCID
EmailSophie Kerstan: [email protected]
Correspondence AddressSophie Kerstan, ETH Zurich, Department of Management, Technology, and Economics, Work and Organizational Psychology, Weinbergstrasse 56/58, Zurich, Switzerland, 8092, [email protected]
Web SiteCreative Commons License
FormatParticipants rate items on a 7-point scale (1 = Very Unlikely to 7 = Very Likely).
Administration MethodElectronic
Number of Items19 items
Factors and SubscalesSubscales: Risk Perceptions; Benefit Perceptions
ReliabilityInternal Consistency: Cronbach’s alpha = 0.87 (risk perceptions), 0.84 (benefit perceptions).
ValidityNo validity indicated.
Factor AnalysisExploratory Factor Analysis (EFA): A 2-factor solution was identified for risk perception items, while a 1-factor solution was found for benefit perception items. One benefit perception item was excluded due to loading on a separate factor. Confirmatory Factor Analysis (CFA): A five-factor model showed acceptable fit (χ² = 1008.46, df = 547, p < 0.001, χ²/df = 1.84, CFI = 0.91, TLI = 0.90, RMSEA = 0.04, SRMR = 0.06). A four-factor model combining risk and benefit perceptions into one factor showed significantly poorer fit.
Test MethodologyTest Reliability; Internal Consistency; Factor Analysis; Confirmatory Factor Analysis; Exploratory Factor Analysis
ClassificationHuman-Computer Interaction; Treatment, Rehabilitation, and Therapeutic Processes
Age GroupAdulthood (18 yrs & older)
Population GroupHuman; Male; Female
Population DetailsLocation: United States; Respondents: Adult Participants
KeywordsArtificial Intelligence; Benefit Perceptions; Healthcare Practice; Risk Perceptions; Treatment
Index TermsArtificial Intelligence; Client Attitudes; Health Care Delivery; Risk Perception; Telemedicine; Therapeutic Processes; Treatment Process and Outcome Measures; Health Attitude Measures; Human-Computer Interaction Measures
FilesNo file available for download.
ReferenceKerstan, S., Bienefeld, N., & Grote, G. (2024). AI Risks and Benefits Scale: Measuring risk-benefit perceptions of AI-based technologies in healthcare. ETH Zurich, Department of Management, Technology, and Economics.

 

Al Risks and Benefits Scale

Variable: Risk-benefit perceptions (self-developed)

Items/Stimuli: In your opinion, how likely are the following risks or benefits to occur? Al in healthcare might …

Risks:

Item NumberItem Description
R1… fail to recognize the uniqueness of each patient’s condition
R2… result in a loss of jobs for healthcare professionals
R3… increase patient data security breaches
R4… lead to ethical problems
R5… introduce new bugs and equipment failures
R6… result in overreliance on technology
R7… dehumanize care
R8… increase medical errors
R9… provide unreliable information
R10… measure patient parameters inaccurately

Benefits:

Item NumberItem Description
B1… reduce medical errors
B2… enable a more personalized care
B3… facilitate the prediction of negative health events
B4… improve information sharing between patients and healthcare providers
B5… improve the accessibility of care
B6… provide more accurate health data measurements
B7… help in monitoring treatment efficiency
B8… help in diagnosing health problems
B9… help in choosing adequate treatments

Response Options

ResponseNumerical Value
Very unlikely1
Unlikely2
Somewhat unlikely3
Neutral4
Somewhat likely5
Likely6
Very likely7

Cite this article

Mohammed looti (2026). AI Risks and Benefits Scale. PSYCHOLOGICAL SCALES. Retrieved from https://scales.arabpsychology.com/s/ai-risks-and-benefits-scale-2/

Mohammed looti. "AI Risks and Benefits Scale." PSYCHOLOGICAL SCALES, 4 Apr. 2026, https://scales.arabpsychology.com/s/ai-risks-and-benefits-scale-2/.

Mohammed looti. "AI Risks and Benefits Scale." PSYCHOLOGICAL SCALES, 2026. https://scales.arabpsychology.com/s/ai-risks-and-benefits-scale-2/.

Mohammed looti (2026) 'AI Risks and Benefits Scale', PSYCHOLOGICAL SCALES. Available at: https://scales.arabpsychology.com/s/ai-risks-and-benefits-scale-2/.

[1] Mohammed looti, "AI Risks and Benefits Scale," PSYCHOLOGICAL SCALES, vol. X, no. Y, ص Z-Z, April, 2026.

Mohammed looti. AI Risks and Benefits Scale. PSYCHOLOGICAL SCALES. 2026;vol(issue):pages.

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