工作量
医学
胰腺癌
诊断准确性
深度学习
计算机断层摄影术
胰腺疾病
放射科
医学物理学
人工智能
无线电技术
医学影像学
临床实习
前瞻性队列研究
多中心研究
临床试验
机器学习
癌症
作者
Xiaohan Yuan,Cheng‐Wei Chen,Zhang Shi,Wenbin Liu,Xinyue Zhang,Ming Yang,Mengmeng Zhu,Jieyu Yu,Fang Liu,Jing Li,Yunshuo Zhang,Hui Jiang,Bozhu Chen,Jianping Lu,Chengwei Shao,Yun Bian
标识
DOI:10.1038/s41746-025-01970-y
摘要
Pancreatic cystic neoplasms (PCN) are critical precursors for early pancreatic cancer detection, yet current diagnostic methods lack accuracy and consistency. This multicenter study developed and validated an artificial intelligence (AI)-powered CT model (PCN-AI) for improved assessment. Using contrast-enhanced CT images from 1835 patients, PCN-AI extracted 63 quantitative features to classify PCN subtypes through four hierarchical tasks. A multi-reader, multi-case (MRMC) study demonstrated that AI assistance significantly improved radiologists' diagnostic accuracy (AUC: 0.786 to 0.845; p < 0.05) and reduced interpretation time by 23.7% (5.28 vs. 4.03 minutes/case). Radiologists accepted AI recommendations in 87.14% of cases. In a prospective real-world cohort, PCN-AI outperformed radiologist double-reading, providing actionable diagnostic benefits to 45.45% of patients (5/11) by correctly identifying missed malignant PCN cases, enabling timely intervention, and simultaneously reducing clinical workload by 39.3%. PCN-AI achieved robust performance across tasks (AUCs: 0.845-0.988), demonstrating its potential to enhance early detection, precision management, and diagnostic efficiency in clinical practice.
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