医学影像学
医学
放射科
计算机断层摄影术
基础(证据)
医学物理学
断层摄影术
临床实习
人工智能
模态(人机交互)
计算机科学
光学相干层析成像
图像配准
疾病
血管造影
图像质量
肺癌
作者
Zebin Gao,Guoxun Zhang,Hengrui Liang,Jiaxin Liu,Liangdi Ma,Tianyun Wang,Yanchen Guo,Ye Chen,Zeping Yan,Xiangru Chen,Jianxing He,Feng Xu,Tien Yin Wong,Yuchen Guo,Qionghai Dai
标识
DOI:10.1038/s41467-025-66620-z
摘要
The concomitant development and evolution of lung computed tomography (CT) and artificial intelligence (AI) have made non-invasive lung imaging a key component of clinical care of patients. However, the scarcity of labeled CT data and the limited generative capacity of existing models have constrained their clinical utility. Here, we present LCTfound, a large-scale vision foundation model designed to overcome these limitations. Trained on a multi-center dataset comprising 105,184 CT scans, LCTfound leverages diffusion-based pretraining and joint encoding of imaging and clinical information to support 8 tasks, including CT enhancement, virtual computed tomography angiography (CTA), sparse-view reconstruction, lesion segmentation, diagnosis, prognosis, cancer pathological response prediction, and three-dimensional surgical navigation. In comprehensive multicenter evaluations, LCTfound consistently outperforms leading baseline models, delivering a unified, broadly deployable solution that both augments clinical decision-making and elevates CT image quality across diverse practice settings. LCTfound establishes a scalable foundation for next-generation clinical imaging intelligence, uniting large AI model with precision healthcare.
科研通智能强力驱动
Strongly Powered by AbleSci AI