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Reading Race: AI Recognises Patient's Racial Identity In Medical Images

Authors :
Banerjee, Imon
Bhimireddy, Ananth Reddy
Burns, John L.
Celi, Leo Anthony
Chen, Li-Ching
Correa, Ramon
Dullerud, Natalie
Ghassemi, Marzyeh
Huang, Shih-Cheng
Kuo, Po-Chih
Lungren, Matthew P
Palmer, Lyle
Price, Brandon J
Purkayastha, Saptarshi
Pyrros, Ayis
Oakden-Rayner, Luke
Okechukwu, Chima
Seyyed-Kalantari, Laleh
Trivedi, Hari
Wang, Ryan
Zaiman, Zachary
Zhang, Haoran
Gichoya, Judy W
Publication Year :
2021

Abstract

Background: In medical imaging, prior studies have demonstrated disparate AI performance by race, yet there is no known correlation for race on medical imaging that would be obvious to the human expert interpreting the images. Methods: Using private and public datasets we evaluate: A) performance quantification of deep learning models to detect race from medical images, including the ability of these models to generalize to external environments and across multiple imaging modalities, B) assessment of possible confounding anatomic and phenotype population features, such as disease distribution and body habitus as predictors of race, and C) investigation into the underlying mechanism by which AI models can recognize race. Findings: Standard deep learning models can be trained to predict race from medical images with high performance across multiple imaging modalities. Our findings hold under external validation conditions, as well as when models are optimized to perform clinically motivated tasks. We demonstrate this detection is not due to trivial proxies or imaging-related surrogate covariates for race, such as underlying disease distribution. Finally, we show that performance persists over all anatomical regions and frequency spectrum of the images suggesting that mitigation efforts will be challenging and demand further study. Interpretation: We emphasize that model ability to predict self-reported race is itself not the issue of importance. However, our findings that AI can trivially predict self-reported race -- even from corrupted, cropped, and noised medical images -- in a setting where clinical experts cannot, creates an enormous risk for all model deployments in medical imaging: if an AI model secretly used its knowledge of self-reported race to misclassify all Black patients, radiologists would not be able to tell using the same data the model has access to.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2107.10356
Document Type :
Working Paper
Full Text :
https://doi.org/10.1016/S2589-7500(22)00063-2