首页> 美国卫生研究院文献>International Journal of Environmental Research and Public Health >Efficacy of Artificial-Intelligence-Driven Differential-Diagnosis List on the Diagnostic Accuracy of Physicians: An Open-Label Randomized Controlled Study
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Efficacy of Artificial-Intelligence-Driven Differential-Diagnosis List on the Diagnostic Accuracy of Physicians: An Open-Label Randomized Controlled Study

机译:人工智能驱动鉴别诊断列表对医生诊断准确性的疗效:开放标签随机对照研究

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摘要

Background: The efficacy of artificial intelligence (AI)-driven automated medical-history-taking systems with AI-driven differential-diagnosis lists on physicians’ diagnostic accuracy was shown. However, considering the negative effects of AI-driven differential-diagnosis lists such as omission (physicians reject a correct diagnosis suggested by AI) and commission (physicians accept an incorrect diagnosis suggested by AI) errors, the efficacy of AI-driven automated medical-history-taking systems without AI-driven differential-diagnosis lists on physicians’ diagnostic accuracy should be evaluated. Objective: The present study was conducted to evaluate the efficacy of AI-driven automated medical-history-taking systems with or without AI-driven differential-diagnosis lists on physicians’ diagnostic accuracy. Methods: This randomized controlled study was conducted in January 2021 and included 22 physicians working at a university hospital. Participants were required to read 16 clinical vignettes in which the AI-driven medical history of real patients generated up to three differential diagnoses per case. Participants were divided into two groups: with and without an AI-driven differential-diagnosis list. Results: There was no significant difference in diagnostic accuracy between the two groups (57.4% vs. 56.3%, respectively; p = 0.91). Vignettes that included a correct diagnosis in the AI-generated list showed the greatest positive effect on physicians’ diagnostic accuracy (adjusted odds ratio 7.68; 95% CI 4.68–12.58; p < 0.001). In the group with AI-driven differential-diagnosis lists, 15.9% of diagnoses were omission errors and 14.8% were commission errors. Conclusions: Physicians’ diagnostic accuracy using AI-driven automated medical history did not differ between the groups with and without AI-driven differential-diagnosis lists.
机译:背景:显示了人工智能(AI)驱动的自动化医疗历史与AI驱动的差异诊断列表对医生诊断准确度的疗效。然而,考虑到AI驱动的差异诊断列表的负面影响,例如遗漏(医生拒绝AI)和委员会(ISICA接受AI)的错误诊断)误差,AI驱动自动化的疗效 - 应评估没有AI驱动的差异诊断列表的历史,应评估医生诊断准确性。目的:进行本研究,以评估AI驱动的自动化历史 - 采用和没有AI驱动的差异诊断列表对医生诊断准确性的疗效。方法:该研究于2021年1月进行了随机对照研究,包括在大学医院工作的22名医生。参与者被要求阅读16个临床渐进虫,其中AI驱动的真实患者的病史,每个案例产生了最多三种差异诊断。参与者分为两组:没有AI驱动的差异诊断列表。结果:两组诊断准确性没有显着差异(分别为57.4%,分别为56.3%; P = 0.91)。包括在AI生成的列表中的正确诊断的小插管对医生的诊断准确性显示出最大的积极影响(调整的赔率比7.68; 95%CI 4.68-12.58; P <0.001)。在具有AI驱动的差异诊断清单的组中,15.9%的诊断是遗漏误差,14.8%是佣金错误。结论:医生使用AI驱动的自动化病史的诊断准确性在没有AI驱动的差异诊断列表的组之间没有区别。

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