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[ARTICLE · art-14039] src=arxiv.org pub= topic=artificial-intelligence verified=true sentiment=↑ positive

A World Model of Radiologist Reading for Medical Image Representation Learning

Researchers developed GazeWorld, a medical imaging model that learns from radiologists' eye-tracking data by treating their fixation sequences as trajectories through an image. The model autoregressively predicts latent representations of fixated patches and covers unvisited regions, achieving state-of-the-art diagnostic accuracy across nine supervised settings on three medical benchmarks. GazeWorld also outperformed purpose-built gaze prediction models by over 16% in ScanMatch and 22% in SED, demonstrating that modeling the process of expert image reading offers a promising pretraining paradigm for medical AI.

read1 min publishedMay 26, 2026

arXiv:2605.23992v1 Announce Type: new Abstract: Radiologist eye-tracking data provide a rich record of how experts search, compare, and accumulate evidence during image reading; yet, existing methods exploit this signal only partially, either as a static spatial prior or as an auxiliary prediction target decoupled from diagnosis. We propose GazeWorld, a medical imaging world model that treats the image as the world and the radiologist's fixation sequence as a trajectory through it. GazeWorld autoregressively predicts the latent representation of the next fixated patch from all previously visited ones, while a spatial-completion branch covers unvisited regions. At inference, GazeWorld generates a sequence of patch representations from the image alone without requiring real gaze data. Frozen GazeWorld features achieve state-of-the-art diagnostic accuracy across all nine supervised settings on CheXpert, RSNA Pneumonia, and SIIM-ACR Pneumothorax, as well as the highest zero-shot accuracy on all three benchmarks. On the GazeSearch benchmark, a generic decoder trained on the same frozen features outperforms the purpose-built LogitGaze-Med by over 16% in ScanMatch and 22% in SED, despite not being explicitly trained to predict gaze. GazeWorld demonstrates that modeling how experts read, not just what they conclude, offers a promising pretraining paradigm for medical imaging AI.

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