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Improving model fairness in image-based computer-aided diagnosis

Medicine and Health

Improving model fairness in image-based computer-aided diagnosis

M. Lin, T. Li, et al.

This innovative research by Mingquan Lin and colleagues addresses the critical issue of bias in deep learning models for medical image classification. By proposing an algorithm that enhances fairness while preserving diagnostic accuracy, this study provides valuable insights for future computer-aided diagnosis solutions.... show more
Abstract
Deep learning has become a popular tool for computer-aided diagnosis using medical images, sometimes matching or exceeding the performance of clinicians. However, these models can also reflect and amplify human bias, potentially resulting inaccurate missed diagnoses. Despite this concern, the problem of improving model fairness in medical image classification by deep learning has yet to be fully studied. To address this issue, we propose an algorithm that leverages the marginal pairwise equal opportunity to reduce bias in medical image classification. Our evaluations across four tasks using four independent large-scale cohorts demonstrate that our proposed algorithm not only improves fairness in individual and intersectional subgroups but also maintains overall performance. Specifically, the relative change in pairwise fairness difference between our proposed model and the baseline model was reduced by over 35%, while the relative change in AUC value was typically within 1%. By reducing the bias generated by deep learning models, our proposed approach can potentially alleviate concerns about the fairness and reliability of image-based computer-aided diagnosis.
Publisher
Nature Communications
Published On
Oct 06, 2023
Authors
Mingquan Lin, Tianhao Li, Yifan Yang, Gregory Holste, Ying Ding, Sarah H. Van Tassel, Kyle Kovacs, George Shih, Zhangyang Wang, Zhiyong Lu, Fei Wang, Yifan Peng
Tags
deep learning
medical image classification
algorithm
fairness
bias reduction
diagnosis
computer-aided diagnosis
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