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📄 Abstract
Abstract: This systematic review critically evaluates publicly available abdominal CT
datasets and their suitability for artificial intelligence (AI) applications in
clinical settings. We examined 46 publicly available abdominal CT datasets
(50,256 studies). Across all 46 datasets, we found substantial redundancy
(59.1\% case reuse) and a Western/geographic skew (75.3\% from North America
and Europe). A bias assessment was performed on the 19 datasets with >=100
cases; within this subset, the most prevalent high-risk categories were domain
shift (63\%) and selection bias (57\%), both of which may undermine model
generalizability across diverse healthcare environments -- particularly in
resource-limited settings. To address these challenges, we propose targeted
strategies for dataset improvement, including multi-institutional
collaboration, adoption of standardized protocols, and deliberate inclusion of
diverse patient populations and imaging technologies. These efforts are crucial
in supporting the development of more equitable and clinically robust AI models
for abdominal imaging.