Nature Human Behaviour, volume 5, issue 12, pages 1636-1642

Understanding, explaining, and utilizing medical artificial intelligence

Publication typeJournal Article
Publication date2021-06-28
scimago Q1
SJR6.097
CiteScore36.8
Impact factor21.4
ISSN23973374
Experimental and Cognitive Psychology
Behavioral Neuroscience
Social Psychology
Abstract
Medical artificial intelligence is cost-effective and scalable and often outperforms human providers, yet people are reluctant to use it. We show that resistance to the utilization of medical artificial intelligence is driven by both the subjective difficulty of understanding algorithms (the perception that they are a ‘black box’) and by an illusory subjective understanding of human medical decision-making. In five pre-registered experiments (1–3B: N = 2,699), we find that people exhibit an illusory understanding of human medical decision-making (study 1). This leads people to believe they better understand decisions made by human than algorithmic healthcare providers (studies 2A,B), which makes them more reluctant to utilize algorithmic than human providers (studies 3A,B). Fortunately, brief interventions that increase subjective understanding of algorithmic decision processes increase willingness to utilize algorithmic healthcare providers (studies 3A,B). A sixth study on Google Ads for an algorithmic skin cancer detection app finds that the effectiveness of such interventions generalizes to field settings (study 4: N = 14,013). Cadario et al. identify potential reasons underlying the resistance to use medical artificial intelligence and test interventions to overcome this resistance.
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