Abstract

BackgroundAdvanced analytics, such as artificial intelligence (AI), increasingly gain relevance in medicine. However, patients’ responses to the involvement of AI in the care process remains largely unclear. The study aims to explore whether individuals were more likely to follow a recommendation when a physician used AI in the diagnostic process considering a highly (vs. less) severe disease compared to when the physician did not use AI or when AI fully replaced the physician.MethodsParticipants from the USA (n = 452) were randomly assigned to a hypothetical scenario where they imagined that they received a treatment recommendation after a skin cancer diagnosis (high vs. low severity) from a physician, a physician using AI, or an automated AI tool. They then indicated their intention to follow the recommendation. Regression analyses were used to test hypotheses. Beta coefficients (ß) describe the nature and strength of relationships between predictors and outcome variables; confidence intervals [CI] excluding zero indicate significant mediation effects.ResultsThe total effects reveal the inferiority of automated AI (ß = .47, p = .001 vs. physician; ß = .49, p = .001 vs. physician using AI). Two pathways increase intention to follow the recommendation. When a physician performs the assessment (vs. automated AI), the perception that the physician is real and present (a concept called social presence) is high, which increases intention to follow the recommendation (ß = .22, 95% CI [.09; 0.39]). When AI performs the assessment (vs. physician only), perceived innovativeness of the method is high, which increases intention to follow the recommendation (ß = .15, 95% CI [− .28; − .04]). When physicians use AI, social presence does not decrease and perceived innovativeness increases.ConclusionPairing AI with a physician in medical diagnosis and treatment in a hypothetical scenario using topical therapy and oral medication as treatment recommendations leads to a higher intention to follow the recommendation than AI on its own. The findings might help develop practice guidelines for cases where AI involvement benefits outweigh risks, such as using AI in pathology and radiology, to enable augmented human intelligence and inform physicians about diagnoses and treatments.

Highlights

  • Advanced analytics, such as artificial intelligence (AI), increasingly gain relevance in medicine

  • Differences in intentions and mediators depending on the diagnostic method and disease severity The model explains 23.4% of the variance in the intention to comply with the medical recommendation

  • Compared to the automated AI tool alone, the intention to comply with the medical recommendation was significantly greater for the physician (ß = 0.40, SE = 0.14, p = 0.005) and physician using AI

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Summary

Introduction

Advanced analytics, such as artificial intelligence (AI), increasingly gain relevance in medicine. Soellner and Koenigstorfer BMC Med Inform Decis Mak (2021) 21:236 intelligence (AI) techniques are used in big data analyses to make predictions based on a set of rules They run calculations from large datasets to estimate different possible solutions for a given problem, and enable data-driven decision making [4]. This is why AI might be beneficial in healthcare to help prevent and treat diseases that (1) require learning from large populations; (2) follow patterns that can be detected by technology; and (3) are accessible to physicians and patients. Examples of recent uses of AI in this context include the detection of skin and breast cancer as well as of cardiac arrest [6, 12, 13]

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