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FairCLIP: Harnessing Fairness in Vision-Language Learning

About

Fairness is a critical concern in deep learning, especially in healthcare, where these models influence diagnoses and treatment decisions. Although fairness has been investigated in the vision-only domain, the fairness of medical vision-language (VL) models remains unexplored due to the scarcity of medical VL datasets for studying fairness. To bridge this research gap, we introduce the first fair vision-language medical dataset Harvard-FairVLMed that provides detailed demographic attributes, ground-truth labels, and clinical notes to facilitate an in-depth examination of fairness within VL foundation models. Using Harvard-FairVLMed, we conduct a comprehensive fairness analysis of two widely-used VL models (CLIP and BLIP2), pre-trained on both natural and medical domains, across four different protected attributes. Our results highlight significant biases in all VL models, with Asian, Male, Non-Hispanic, and Spanish being the preferred subgroups across the protected attributes of race, gender, ethnicity, and language, respectively. In order to alleviate these biases, we propose FairCLIP, an optimal-transport-based approach that achieves a favorable trade-off between performance and fairness by reducing the Sinkhorn distance between the overall sample distribution and the distributions corresponding to each demographic group. As the first VL dataset of its kind, Harvard-FairVLMed holds the potential to catalyze advancements in the development of machine learning models that are both ethically aware and clinically effective. Our dataset and code are available at https://ophai.hms.harvard.edu/datasets/harvard-fairvlmed10k.

Yan Luo, Min Shi, Muhammad Osama Khan, Muhammad Muneeb Afzal, Hao Huang, Shuaihang Yuan, Yu Tian, Luo Song, Ava Kouhana, Tobias Elze, Yi Fang, Mengyu Wang• 2024

Related benchmarks

TaskDatasetResultRank
Medical Image ClassificationHarvard-FairVLMed Linear Probing (test)
Overall F1 Score68.07
24
Glaucoma DetectionHarvard-FairVLMed
DPD10.15
12
CXR DiagnosisCheXpert Plus Race attribute (test)
Accuracy60.89
10
CXR DiagnosisCheXpert Plus Gender attribute (test)
Accuracy59.34
10
Medical Image ClassificationFairFundus
F1 Score71.17
6
Vision-Language Medical ClassificationHarvard-FairVLMed Race (test)
F163.45
6
Vision-Language Medical ClassificationHarvard-FairVLMed Language (test)
F1 Score (Overall)62.94
6
Glaucoma DetectionFairFundus Age Partition (5 Fold Cross-Validation)
DPD3.15
6
Vision-Language Medical ClassificationHarvard-FairVLMed Gender (test)
F162.52
6
Vision-Language Medical ClassificationHarvard-FairVLMed Ethnicity (test)
F1 Score61.31
6
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