IVCVLGAug 25, 2023

An investigation into the impact of deep learning model choice on sex and race bias in cardiac MR segmentation

arXiv:2308.13415v115 citationsh-index: 39
Originality Synthesis-oriented
AI Analysis

This addresses bias in medical imaging AI for healthcare, but is incremental as it compares existing models without proposing new solutions.

The study investigated how different deep learning models affect sex and race bias in cardiac MR segmentation, finding significant biases in most models with varying severity.

In medical imaging, artificial intelligence (AI) is increasingly being used to automate routine tasks. However, these algorithms can exhibit and exacerbate biases which lead to disparate performances between protected groups. We investigate the impact of model choice on how imbalances in subject sex and race in training datasets affect AI-based cine cardiac magnetic resonance image segmentation. We evaluate three convolutional neural network-based models and one vision transformer model. We find significant sex bias in three of the four models and racial bias in all of the models. However, the severity and nature of the bias varies between the models, highlighting the importance of model choice when attempting to train fair AI-based segmentation models for medical imaging tasks.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes