零(语言学)
基础(证据)
放射科
弹丸
一次性
医学
医学物理学
核医学
计算机科学
工程类
材料科学
历史
哲学
考古
机械工程
语言学
冶金
作者
İbrahim Ethem Hamamcı,Sezgin Er,Furkan Almas,Abdülmuttalip Şimşek,Sevval Nil Esirgün,İrem Doğan,Muhammed Furkan Dasdelen,Bastian Wittmann,Enis Simsar,Mehmet Simsar,E Erdemir,Abdullah Alanbay,Anjany Sekuboyina,Berkan Lafci,Mehmet Kemal Özdemir,Bjoern Menze
出处
期刊:Cornell University - arXiv
日期:2024-03-26
被引量:1
标识
DOI:10.48550/arxiv.2403.17834
摘要
A major challenge in computational research in 3D medical imaging is the lack of comprehensive datasets. Addressing this issue, our study introduces CT-RATE, the first 3D medical imaging dataset that pairs images with textual reports. CT-RATE consists of 25,692 non-contrast chest CT volumes, expanded to 50,188 through various reconstructions, from 21,304 unique patients, along with corresponding radiology text reports. Leveraging CT-RATE, we developed CT-CLIP, a CT-focused contrastive language-image pre-training framework. As a versatile, self-supervised model, CT-CLIP is designed for broad application and does not require task-specific training. Remarkably, CT-CLIP outperforms state-of-the-art, fully supervised methods in multi-abnormality detection across all key metrics, thus eliminating the need for manual annotation. We also demonstrate its utility in case retrieval, whether using imagery or textual queries, thereby advancing knowledge dissemination. The open-source release of CT-RATE and CT-CLIP marks a significant advancement in medical AI, enhancing 3D imaging analysis and fostering innovation in healthcare.
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