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EyeWorld: A Generative World Model of Ocular State and Dynamics

2026-03-14Unverified0· sign in to hype

Ziyu Gao, Xinyuan Wu, Xiaolan Chen, Zhuoran Liu, Ruoyu Chen, Bowen Liu, Bingjie Yan, Zhenhan Wang, Kai Jin, Jiancheng Yang, Yih Chung Tham, Mingguang He, Danli Shi

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Abstract

Ophthalmic decision-making depends on subtle lesion-scale cues interpreted across multimodal imaging and over time, yet most medical foundation models remain static and degrade under modality and acquisition shifts. Here we introduce EyeWorld, a generative world model that conceptualizes the eye as a partially observed dynamical system grounded in clinical imaging. EyeWorld learns an observation-stable latent ocular state shared across modalities, unifying fine-grained parsing, structure-preserving cross-modality translation and quality-robust enhancement within a single framework. Longitudinal supervision further enables time-conditioned state transitions, supporting forecasting of clinically meaningful progression while preserving stable anatomy. By moving from static representation learning to explicit dynamical modeling, EyeWorld provides a unified approach to robust multimodal interpretation and prognosis-oriented simulation in medicine.

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