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Simple Radiology VLLM Test-time Scaling with Thought Graph Traversal

13 June 2025
Yue Yao
Zelin Wen
Yan Tong
Xinyu Tian
Xuqing Li
Xiao Ma
Dongliang Xu
Tom Gedeon
    LRM
ArXiv (abs)PDFHTML
Main:13 Pages
7 Figures
Bibliography:4 Pages
4 Tables
Abstract

Test-time scaling offers a promising way to improve the reasoning performance of vision-language large models (VLLMs) without additional training. In this paper, we explore a simple but effective approach for applying test-time scaling to radiology report generation. Specifically, we introduce a lightweight Thought Graph Traversal (TGT) framework that guides the model to reason through organ-specific findings in a medically coherent order. This framework integrates structured medical priors into the prompt, enabling deeper and more logical analysis with no changes to the underlying model. To further enhance reasoning depth, we apply a reasoning budget forcing strategy that adjusts the model's inference depth at test time by dynamically extending its generation process. This simple yet powerful combination allows a frozen radiology VLLM to self-correct and generate more accurate, consistent chest X-ray reports. Our method outperforms baseline prompting approaches on standard benchmarks, and also reveals dataset biases through traceable reasoning paths. Code and prompts are open-sourced for reproducibility atthis https URL.

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