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Are demographically invariant models and representations in medical imaging fair?

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arxiv 2305.01397 v3 pith:DJGXBWID submitted 2023-05-02 cs.LG cs.CYeess.IVstat.ML

Are demographically invariant models and representations in medical imaging fair?

classification cs.LG cs.CYeess.IVstat.ML
keywords demographicattributesfairnessmodelsmedicalencodeimaginginvariance
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Medical imaging models have been shown to encode information about patient demographics such as age, race, and sex in their latent representation, raising concerns about their potential for discrimination. Here, we ask whether requiring models not to encode demographic attributes is desirable. We point out that marginal and class-conditional representation invariance imply the standard group fairness notions of demographic parity and equalized odds, respectively. In addition, however, they require matching the risk distributions, thus potentially equalizing away important group differences. Enforcing the traditional fairness notions directly instead does not entail these strong constraints. Moreover, representationally invariant models may still take demographic attributes into account for deriving predictions, implying unequal treatment - in fact, achieving representation invariance may require doing so. In theory, this can be prevented using counterfactual notions of (individual) fairness or invariance. We caution, however, that properly defining medical image counterfactuals with respect to demographic attributes is fraught with challenges. Finally, we posit that encoding demographic attributes may even be advantageous if it enables learning a task-specific encoding of demographic features that does not rely on social constructs such as 'race' and 'gender.' We conclude that demographically invariant representations are neither necessary nor sufficient for fairness in medical imaging. Models may need to encode demographic attributes, lending further urgency to calls for comprehensive model fairness assessments in terms of predictive performance across diverse patient groups.

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Cited by 2 Pith papers

Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. Towards Fairness under Label Bias in Image Segmentation: Impact, Measurement and Mitigation

    cs.CV 2026-05 unverdicted novelty 6.0

    An adaptation of Confident Learning detects directional label errors in segmentation datasets without clean ground truth and leverages encoder feature separability to mitigate bias and equalize performance across subgroups.

  2. Causal Transfer in Medical Image Analysis

    cs.CV 2026-03 accept novelty 5.0

    Causal Transfer Learning unifies structural causal models, invariant risk minimisation and counterfactuals with transfer learning to produce domain-robust medical image models.