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Main Authors: Sharma, Sonali, Long, Jin, Shih, George, Eid, Sarah, Bluethgen, Christian, Jacobson, Francine L., Tsai, Emily B., Consortium, Global Radiology, Alaa, Ahmed M., Langlotz, Curtis P.
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2604.26288
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author Sharma, Sonali
Long, Jin
Shih, George
Eid, Sarah
Bluethgen, Christian
Jacobson, Francine L.
Tsai, Emily B.
Consortium, Global Radiology
Alaa, Ahmed M.
Langlotz, Curtis P.
author_facet Sharma, Sonali
Long, Jin
Shih, George
Eid, Sarah
Bluethgen, Christian
Jacobson, Francine L.
Tsai, Emily B.
Consortium, Global Radiology
Alaa, Ahmed M.
Langlotz, Curtis P.
contents Chest X-ray interpretation is one of the most frequently performed diagnostic tasks in medicine and a primary target for AI development, yet current vision-language models are primarily trained on datasets of paired images and reports, not the cognitive processes and visual attention that underlie clinical reasoning. Here, we present CheXthought, a global, multimodal resource containing 103,592 chain-of-thought reasoning traces and 6,609,082 synchronized visual attention annotations across 50,312 multi-read chest X-rays from 501 radiologists in 71 countries. Our analysis reveals clinical reasoning patterns in how experts deploy distinct visual search strategies, integrate clinical context, and communicate uncertainty. We demonstrate the clinical utility of CheXthought across four dimensions. First, CheXthought reasoning significantly outperforms state-of-the-art vision-language model chain-of-thought in factual accuracy and spatial grounding. Second, visual attention data used as an inference-time hint recovers missed findings and significantly reduces hallucinations. Third, vision-language models trained on CheXthought data achieve significantly stronger pathology classification, visual faithfulness, temporal reasoning and uncertainty communication. Fourth, leveraging CheXthought's multi-reader annotations, we predict both human-human and human-AI disagreement directly from an image, enabling transparent communication of case difficulty, uncertainty and model reliability. These findings establish CheXthought as a resource for advancing multimodal clinical reasoning and the development of more transparent, interpretable vision-language models.
format Preprint
id arxiv_https___arxiv_org_abs_2604_26288
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle CheXthought: A global multimodal dataset of clinical chain-of-thought reasoning and visual attention for chest X-ray interpretation
Sharma, Sonali
Long, Jin
Shih, George
Eid, Sarah
Bluethgen, Christian
Jacobson, Francine L.
Tsai, Emily B.
Consortium, Global Radiology
Alaa, Ahmed M.
Langlotz, Curtis P.
Computer Vision and Pattern Recognition
Artificial Intelligence
Chest X-ray interpretation is one of the most frequently performed diagnostic tasks in medicine and a primary target for AI development, yet current vision-language models are primarily trained on datasets of paired images and reports, not the cognitive processes and visual attention that underlie clinical reasoning. Here, we present CheXthought, a global, multimodal resource containing 103,592 chain-of-thought reasoning traces and 6,609,082 synchronized visual attention annotations across 50,312 multi-read chest X-rays from 501 radiologists in 71 countries. Our analysis reveals clinical reasoning patterns in how experts deploy distinct visual search strategies, integrate clinical context, and communicate uncertainty. We demonstrate the clinical utility of CheXthought across four dimensions. First, CheXthought reasoning significantly outperforms state-of-the-art vision-language model chain-of-thought in factual accuracy and spatial grounding. Second, visual attention data used as an inference-time hint recovers missed findings and significantly reduces hallucinations. Third, vision-language models trained on CheXthought data achieve significantly stronger pathology classification, visual faithfulness, temporal reasoning and uncertainty communication. Fourth, leveraging CheXthought's multi-reader annotations, we predict both human-human and human-AI disagreement directly from an image, enabling transparent communication of case difficulty, uncertainty and model reliability. These findings establish CheXthought as a resource for advancing multimodal clinical reasoning and the development of more transparent, interpretable vision-language models.
title CheXthought: A global multimodal dataset of clinical chain-of-thought reasoning and visual attention for chest X-ray interpretation
topic Computer Vision and Pattern Recognition
Artificial Intelligence
url https://arxiv.org/abs/2604.26288