Overcoming Medical Overuse with AI Assistance: An Experimental Investigation

Ziyi Wang, Lijia Wei, Lian Xue
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Abstract

This study evaluates the effectiveness of Artificial Intelligence (AI) in mitigating medical overtreatment, a significant issue characterized by unnecessary interventions that inflate healthcare costs and pose risks to patients. We conducted a lab-in-the-field experiment at a medical school, utilizing a novel medical prescription task, manipulating monetary incentives and the availability of AI assistance among medical students using a three-by-two factorial design. We tested three incentive schemes: Flat (constant pay regardless of treatment quantity), Progressive (pay increases with the number of treatments), and Regressive (penalties for overtreatment) to assess their influence on the adoption and effectiveness of AI assistance. Our findings demonstrate that AI significantly reduced overtreatment rates by up to 62% in the Regressive incentive conditions where (prospective) physician and patient interests were most aligned. Diagnostic accuracy improved by 17% to 37%, depending on the incentive scheme. Adoption of AI advice was high, with approximately half of the participants modifying their decisions based on AI input across all settings. For policy implications, we quantified the monetary (57%) and non-monetary (43%) incentives of overtreatment and highlighted AI's potential to mitigate non-monetary incentives and enhance social welfare. Our results provide valuable insights for healthcare administrators considering AI integration into healthcare systems.
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利用人工智能辅助克服过度医疗:实验研究
过度治疗是一个重大问题,其特点是不必要的干预会增加医疗成本并给患者带来风险。我们在一所医学院校开展了一项实验室现场实验,利用一项新颖的医疗处方任务,采用三乘二的因子设计,在医学生中操纵货币激励和人工智能协助的可用性。我们测试了三种激励方案:统一方案(无论治疗数量多少,报酬不变)、累进方案(报酬随治疗数量增加而增加)和递减方案(对过度治疗进行惩罚),以评估它们对采用人工智能协助及其有效性的影响。我们的研究结果表明,在(未来)医生和患者利益最为一致的递减激励条件下,人工智能大大降低了过度治疗率,降幅高达 62%。诊断准确率提高了 17% 至 37%,具体取决于激励方案。人工智能建议的采用率很高,大约一半的参与者在所有情况下都会根据人工智能的输入修改他们的决定。在政策影响方面,我们量化了过度治疗的货币(57%)和非货币(43%)激励,并强调了人工智能在减轻非货币激励和提高社会福利方面的潜力。我们的研究结果为考虑将人工智能融入医疗系统的医疗管理者提供了宝贵的见解。
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