Deep learning enables accurate diagnosis of acute cholecystitis and prediction of suppuration using noncontrast CT

2026-02-14

Bai-Qing Chen, Wei Zang, Jia-Xu Liu, Yue Yang, Xing-Long Zhang, Rong-Hui Ju,
Deep learning enables accurate diagnosis of acute cholecystitis and prediction of suppuration using noncontrast CT,
iScience,
Volume 28, Issue 12,
2025,
114180,
ISSN 2589-0042,
https://doi.org/10.1016/j.isci.2025.114180.
(https://www.sciencedirect.com/science/article/pii/S2589004225024411)
Abstract: Summary
To develop a deep learning model using abdominal noncontrast computed tomography (CT) for diagnosing acute cholecystitis (AC) and predicting progression to acute suppurative cholecystitis (ASC). A total of 641 patients from three medical centers were retrospectively analyzed. Deep learning models were constructed for AC diagnosis and ASC prediction. Model interpretability was assessed using gradient-weighted class activation mapping (Grad-CAM) and t-distributed stochastic neighbor embedding. Performance was compared with radiomics models and radiologist assessments. The deep learning model achieved accuracies of 89.81% (internal) and 81.83% (external) for AC and 84.52% (internal) and 85.60% (external) for ASC prediction. Grad-CAM visualizations showed focus on gallbladder regions and surrounding areas. The multimodal models integrating clinical information outperformed imaging-only models. Deep learning significantly surpassed radiomics models and radiologist assessments, with high computational efficiency (segmentation: 10.5 ± 3.8 s, inference: 1.3 ± 0.4 s). This efficient deep learning system accurately identifies AC and ASC from noncontrast CT, offering robust tools for time-sensitive clinical workflows.
Keywords: Bioinformatics; Human metabolism; Medical imaging