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Main Authors: Myronenko, Andriy, Yang, Dong, Turkbey, Baris, Aboian, Mariam, Azamat, Sena, Akcicek, Esra, Yin, Hongxu, Molchanov, Pavlo, Edgar, Marc, He, Yufan, Guo, Pengfei, Tang, Yucheng, Xu, Daguang
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2510.23968
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author Myronenko, Andriy
Yang, Dong
Turkbey, Baris
Aboian, Mariam
Azamat, Sena
Akcicek, Esra
Yin, Hongxu
Molchanov, Pavlo
Edgar, Marc
He, Yufan
Guo, Pengfei
Tang, Yucheng
Xu, Daguang
author_facet Myronenko, Andriy
Yang, Dong
Turkbey, Baris
Aboian, Mariam
Azamat, Sena
Akcicek, Esra
Yin, Hongxu
Molchanov, Pavlo
Edgar, Marc
He, Yufan
Guo, Pengfei
Tang, Yucheng
Xu, Daguang
contents Vision-language models (VLMs) have shown strong promise for medical image analysis, but most remain opaque, offering predictions without the transparent, stepwise reasoning clinicians rely on. We present a framework that brings chain-of-thought (CoT) reasoning to chest X-ray interpretation. Inspired by reasoning-first training paradigms, our approach is designed to learn how experts reason, not just what they conclude, by aligning intermediate steps with observable image evidence and radiology workflow. Beyond accuracy, the explicit reasoning traces support clinical auditability: they reveal why a conclusion was reached, which alternatives were considered, and where uncertainty remains, enabling quality assurance, error analysis, and safer human-AI collaboration. Our model couples high-fidelity visual encoding with a two-stage training recipe: a reasoning-style supervised fine-tuning (SFT) followed by reinforcement learning (RL) that uses verifiable rewards over a list of X-ray abnormalities. The model outputs reasoning that mirrors radiologists systematic thought process, uncertainty, and differential diagnosis. In out-of-distribution evaluation, the approach achieves competitive multi-label classification while improving interpretability. In a reader study with expert radiologists, full reasoning traces increased confidence, supported error auditing, and reduced time to finalize reports. We release code and the model NV-Reason-CXR-3B to support community progress toward trustworthy, explainable AI in chest radiography and other medical imaging tasks where reasoning quality is as critical as prediction quality.
format Preprint
id arxiv_https___arxiv_org_abs_2510_23968
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Reasoning Visual Language Model for Chest X-Ray Analysis
Myronenko, Andriy
Yang, Dong
Turkbey, Baris
Aboian, Mariam
Azamat, Sena
Akcicek, Esra
Yin, Hongxu
Molchanov, Pavlo
Edgar, Marc
He, Yufan
Guo, Pengfei
Tang, Yucheng
Xu, Daguang
Computer Vision and Pattern Recognition
Vision-language models (VLMs) have shown strong promise for medical image analysis, but most remain opaque, offering predictions without the transparent, stepwise reasoning clinicians rely on. We present a framework that brings chain-of-thought (CoT) reasoning to chest X-ray interpretation. Inspired by reasoning-first training paradigms, our approach is designed to learn how experts reason, not just what they conclude, by aligning intermediate steps with observable image evidence and radiology workflow. Beyond accuracy, the explicit reasoning traces support clinical auditability: they reveal why a conclusion was reached, which alternatives were considered, and where uncertainty remains, enabling quality assurance, error analysis, and safer human-AI collaboration. Our model couples high-fidelity visual encoding with a two-stage training recipe: a reasoning-style supervised fine-tuning (SFT) followed by reinforcement learning (RL) that uses verifiable rewards over a list of X-ray abnormalities. The model outputs reasoning that mirrors radiologists systematic thought process, uncertainty, and differential diagnosis. In out-of-distribution evaluation, the approach achieves competitive multi-label classification while improving interpretability. In a reader study with expert radiologists, full reasoning traces increased confidence, supported error auditing, and reduced time to finalize reports. We release code and the model NV-Reason-CXR-3B to support community progress toward trustworthy, explainable AI in chest radiography and other medical imaging tasks where reasoning quality is as critical as prediction quality.
title Reasoning Visual Language Model for Chest X-Ray Analysis
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2510.23968