CheXclusion: Fairness gaps in deep chest X-ray classifiers.

Journal: Pacific Symposium on Biocomputing. Pacific Symposium on Biocomputing
Published Date:

Abstract

Machine learning systems have received much attention recently for their ability to achieve expert-level performance on clinical tasks, particularly in medical imaging. Here, we examine the extent to which state-of-the-art deep learning classifiers trained to yield diagnostic labels from X-ray images are biased with respect to protected attributes. We train convolution neural networks to predict 14 diagnostic labels in 3 prominent public chest X-ray datasets: MIMIC-CXR, Chest-Xray8, CheXpert, as well as a multi-site aggregation of all those datasets. We evaluate the TPR disparity - the difference in true positive rates (TPR) - among different protected attributes such as patient sex, age, race, and insurance type as a proxy for socioeconomic status. We demonstrate that TPR disparities exist in the state-of-the-art classifiers in all datasets, for all clinical tasks, and all subgroups. A multi-source dataset corresponds to the smallest disparities, suggesting one way to reduce bias. We find that TPR disparities are not significantly correlated with a subgroup's proportional disease burden. As clinical models move from papers to products, we encourage clinical decision makers to carefully audit for algorithmic disparities prior to deployment. Our supplementary materials can be found at, http://www.marzyehghassemi.com/chexclusion-supp-3/.

Authors

  • Laleh Seyyed-Kalantari
    Computer Science, University of Toronto, Toronto, Ontario, Canada2Vector Institute, Toronto, Ontario, Canada* Corresponding author, laleh@cs.toronto.edu.
  • Guanxiong Liu
  • Matthew McDermott
    MIT Computer Science and Artificial Intelligence Lab, Boston, Massachusetts.
  • Irene Y Chen
    Computational Precision Health, University of California San Francisco, San Francisco, CA, University of California Berkeley, Berkeley, CA.
  • Marzyeh Ghassemi
    Electrical Engineering and Computer Science, Institute for Medical Engineering and Science, Massachusetts Institute of Technology, Cambridge, MA, United States.