Department of Sports Medicine, Peking University Third Hospital, Institute of Sports Medicine of Peking University, Beijing, China.
Beijing Key Laboratory of Sports Injuries, Beijing, China.
J Am Med Inform Assoc. 2023 Sep 25;30(10):1684-1692. doi: 10.1093/jamia/ocad118.
Incorporating artificial intelligence (AI) into clinics brings the risk of automation bias, which potentially misleads the clinician's decision-making. The purpose of this study was to propose a potential strategy to mitigate automation bias.
This was a laboratory study with a randomized cross-over design. The diagnosis of anterior cruciate ligament (ACL) rupture, a common injury, on magnetic resonance imaging (MRI) was used as an example. Forty clinicians were invited to diagnose 200 ACLs with and without AI assistance. The AI's correcting and misleading (automation bias) effects on the clinicians' decision-making processes were analyzed. An ordinal logistic regression model was employed to predict the correcting and misleading probabilities of the AI. We further proposed an AI suppression strategy that retracted AI diagnoses with a higher misleading probability and provided AI diagnoses with a higher correcting probability.
The AI significantly increased clinicians' accuracy from 87.2%±13.1% to 96.4%±1.9% (P < .001). However, the clinicians' errors in the AI-assisted round were associated with automation bias, accounting for 45.5% of the total mistakes. The automation bias was found to affect clinicians of all levels of expertise. Using a logistic regression model, we identified an AI output zone with higher probability to generate misleading diagnoses. The proposed AI suppression strategy was estimated to decrease clinicians' automation bias by 41.7%.
Although AI improved clinicians' diagnostic performance, automation bias was a serious problem that should be addressed in clinical practice. The proposed AI suppression strategy is a practical method for decreasing automation bias.
将人工智能(AI)融入临床实践带来了自动化偏差的风险,这可能会误导临床医生的决策。本研究旨在提出一种减轻自动化偏差的潜在策略。
这是一项具有随机交叉设计的实验室研究。以常见的前交叉韧带(ACL)撕裂的磁共振成像(MRI)诊断为例。邀请了 40 名临床医生对 200 个带有和不带有 AI 辅助的 ACL 进行诊断。分析了 AI 对临床医生决策过程的纠正和误导(自动化偏差)作用。采用有序逻辑回归模型预测 AI 的纠正和误导概率。我们进一步提出了一种 AI 抑制策略,该策略撤回具有较高误导概率的 AI 诊断,并提供具有较高纠正概率的 AI 诊断。
AI 显著提高了临床医生的准确率,从 87.2%±13.1%提高到 96.4%±1.9%(P < 0.001)。然而,AI 辅助轮次中的临床医生错误与自动化偏差相关,占总错误的 45.5%。自动化偏差被发现会影响所有专业水平的临床医生。使用逻辑回归模型,我们确定了一个具有更高概率产生误导性诊断的 AI 输出区域。所提出的 AI 抑制策略估计可将临床医生的自动化偏差降低 41.7%。
尽管 AI 提高了临床医生的诊断性能,但自动化偏差是临床实践中应解决的严重问题。所提出的 AI 抑制策略是减少自动化偏差的一种实用方法。