CVAug 13, 2022

A Study of Demographic Bias in CNN-based Brain MR Segmentation

arXiv:2208.06613v126 citationsh-index: 65
Originality Incremental advance
AI Analysis

This work highlights a critical issue in medical AI for researchers and clinicians, as biased models could perpetuate health inequalities, though it is incremental in documenting bias in a specific domain.

The study investigated demographic bias in CNN-based brain MR segmentation models trained with imbalanced datasets, finding significant sex and race biases, with race bias being more pronounced and varying spatially across brain regions.

Convolutional neural networks (CNNs) are increasingly being used to automate the segmentation of brain structures in magnetic resonance (MR) images for research studies. In other applications, CNN models have been shown to exhibit bias against certain demographic groups when they are under-represented in the training sets. In this work, we investigate whether CNN models for brain MR segmentation have the potential to contain sex or race bias when trained with imbalanced training sets. We train multiple instances of the FastSurferCNN model using different levels of sex imbalance in white subjects. We evaluate the performance of these models separately for white male and white female test sets to assess sex bias, and furthermore evaluate them on black male and black female test sets to assess potential racial bias. We find significant sex and race bias effects in segmentation model performance. The biases have a strong spatial component, with some brain regions exhibiting much stronger bias than others. Overall, our results suggest that race bias is more significant than sex bias. Our study demonstrates the importance of considering race and sex balance when forming training sets for CNN-based brain MR segmentation, to avoid maintaining or even exacerbating existing health inequalities through biased research study findings.

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