CVLGSep 8, 2024

PatchAlign:Fair and Accurate Skin Disease Image Classification by Alignment with Clinical Labels

arXiv:2409.04975v18 citationsh-index: 3Has Code
Originality Highly original
AI Analysis

This work addresses fairness issues in medical AI for dermatology, benefiting diverse patient populations by reducing bias in skin disease classification.

The paper tackles the problem of ethnic disparity in skin lesion diagnosis models by introducing PatchAlign, which enhances accuracy and fairness through alignment with clinical text representations, achieving improvements of up to 6.2% in accuracy on skin type datasets compared to state-of-the-art methods.

Deep learning models have achieved great success in automating skin lesion diagnosis. However, the ethnic disparity in these models' predictions needs to be addressed before deploying them. We introduce a novel approach, PatchAlign, to enhance skin condition image classification accuracy and fairness by aligning with clinical text representations of skin conditions. PatchAlign uses Graph Optimal Transport (GOT) Loss as a regularizer to perform cross-domain alignment. The representations obtained are robust and generalize well across skin tones, even with limited training samples. To reduce the effect of noise and artifacts in clinical dermatology images, we propose a learnable Masked Graph Optimal Transport for cross-domain alignment that further improves fairness metrics. We compare our model to the state-of-the-art FairDisCo on two skin lesion datasets with different skin types: Fitzpatrick17k and Diverse Dermatology Images (DDI). PatchAlign enhances the accuracy of skin condition image classification by 2.8% (in-domain) and 6.2% (out-domain) on Fitzpatrick17k, and 4.2% (in-domain) on DDI compared to FairDisCo. Additionally, it consistently improves the fairness of true positive rates across skin tones. The source code for the implementation is available at the following GitHub repository: https://github.com/aayushmanace/PatchAlign24, enabling easy reproduction and further experimentation.

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