增强胸部x线分类人工智能公平性

AMIA ... Annual Symposium proceedings. AMIA Symposium Pub Date : 2025-05-22 eCollection Date: 2024-01-01
Nicholas J Jackson, Chao Yan, Bradley A Malin
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摘要

人工智能(AI)在医学领域的应用有望提高医疗保健决策的质量。然而,人工智能可能会以某种方式产生对某些人口统计子群体的不公平预测。MIMIC-CXR是一个公开的超过30万张胸部x射线图像数据集,在该数据集中,人工智能诊断对少数种族的假阴性率更高。我们评估了合成数据增强、过采样和基于人口统计的修正的能力,以提高人工智能预测的公平性。我们表明,调整人口统计属性(如种族)的不公平预测在提高公平性或预测性能方面是无效的。然而,使用过采样和合成数据增强来修改患病率,分别将这种差异缩小了74.7%和10.6%。此外,这种公平性的提高在不降低性能的情况下实现(95% CI AUC分别为基线、过采样和增强的[0.816,0.820]、[0.810,0.819]和[0.817,0.821])。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancement of Fairness in AI for Chest X-ray Classification.

The use of artificial intelligence (AI) in medicine has shown promise to improve the quality of healthcare decisions. However, AI can be biased in a manner that produces unfair predictions for certain demographic subgroups. In MIMIC-CXR, a publicly available dataset of over 300,000 chest X-ray images, diagnostic AI has been shown to have a higher false negative rate for racial minorities. We evaluated the capacity of synthetic data augmentation, oversampling, and demographic-based corrections to enhance the fairness of AI predictions. We show that adjusting unfair predictions for demographic attributes, such as race, is ineffective at improving fairness or predictive performance. However, using oversampling and synthetic data augmentation to modify disease prevalence reduced such disparities by 74.7% and 10.6%, respectively. Moreover, such fairness gains were accomplished without reduction in performance (95% CI AUC: [0.816, 0.820] versus [0.810, 0.819] versus [0.817, 0.821] for baseline, oversampling, and augmentation, respectively).

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