LGCVCYJul 26, 2024

To which reference class do you belong? Measuring racial fairness of reference classes with normative modeling

arXiv:2407.19114v213 citationsh-index: 44
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AI Analysis

This work addresses fairness issues in healthcare AI for psychiatry and neurology, highlighting incremental insights into bias in normative modeling.

The study investigated racial bias in reference class models used for clinical interpretation of brain images, finding that including race in models does not eliminate disparities and that deviations may stem from demographic mismatches.

Reference classes in healthcare establish healthy norms, such as pediatric growth charts of height and weight, and are used to chart deviations from these norms which represent potential clinical risk. How the demographics of the reference class influence clinical interpretation of deviations is unknown. Using normative modeling, a method for building reference classes, we evaluate the fairness (racial bias) in reference models of structural brain images that are widely used in psychiatry and neurology. We test whether including race in the model creates fairer models. We predict self-reported race using the deviation scores from three different reference class normative models, to better understand bias in an integrated, multivariate sense. Across all of these tasks, we uncover racial disparities that are not easily addressed with existing data or commonly used modeling techniques. Our work suggests that deviations from the norm could be due to demographic mismatch with the reference class, and assigning clinical meaning to these deviations should be done with caution. Our approach also suggests that acquiring more representative samples is an urgent research priority.

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