Understanding Biases and Disparities in Radiology AI Datasets: A Review
- PMID: 37454752
- DOI: 10.1016/j.jacr.2023.06.015
Understanding Biases and Disparities in Radiology AI Datasets: A Review
Abstract
Artificial intelligence (AI) continues to show great potential in disease detection and diagnosis on medical imaging with increasingly high accuracy. An important component of AI model creation is dataset development for training, validation, and testing. Diverse and high-quality datasets are critical to ensure robust and unbiased AI models that maintain validity, especially in traditionally underserved populations globally. Yet publicly available datasets demonstrate problems with quality and inclusivity. In this literature review, the authors evaluate publicly available medical imaging datasets for demographic, geographic, genetic, and disease representation or lack thereof and call for an increase emphasis on dataset development to maximize the impact of AI models.
Keywords: Artificial intelligence; datasets; deep learning; health equity; radiology.
Copyright © 2023 American College of Radiology. Published by Elsevier Inc. All rights reserved.
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