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Deep Expert Injection for Anchoring Retinal VLMs with Domain-Specific Knowledge

About

Large Vision Language Models (LVLMs) show immense potential for automated ophthalmic diagnosis. However, their clinical deployment is severely hindered by lacking domain-specific knowledge. In this work, we identify two structural deficiencies hindering reliable medical reasoning: 1) the Perception Gap, where general-purpose visual encoders fail to resolve fine-grained pathological cues (e.g., microaneurysms); and 2) the Reasoning Gap, where sparse visual evidence is progressively overridden by massive language priors in deeper transformer layers, leading to ungrounded hallucinations. To bridge these gaps, we propose EyExIn, a data-efficient framework designed to anchor retinal VLMs with expert knowledge via a Deep Expert Injection mechanism. Our architecture employs an Expert-Aware Dual-Stream encoding strategy that decouples visual representation into a general stream for anatomical context and a specialized expert stream for pathological semantics. To ensure high-fidelity integration, we design a Semantic-Adaptive Gated Fusion module, which dynamically amplifies subtle lesion signals while filtering irrelevant background noise. Furthermore, we introduce Adaptive Deep Expert Injection to embed persistent "Vision Anchors" by integrating fused visual features as residual biases directly into intermediate LLM layers. This mechanism creates a visual shortcut that forces the reasoning stack to remain strictly grounded in visual evidence. Extensive experiments across four benchmarks demonstrate that our model consistently outperforms massive proprietary systems. EyExIn significantly enhances domain-specific knowledge embedding and achieves state-of-the-art precision in ophthalmic visual question answering, advancing the development of trustworthy ophthalmic AI.

Shuai Lu, Meng Wang, Jia Guo, Jiawei Du, Bo Liu, Shengzhu Yang, Weihang Zhang, Huazhu Fu, Huiqi Li• 2026

Related benchmarks

TaskDatasetResultRank
Closed Visual Question AnsweringTM4K
F1 Score78.07
6
Closed Visual Question AnsweringJSIEC
F1 Score80.66
6
Closed Visual Question AnsweringRetina
F1 Score71.27
6
Closed Visual Question AnsweringODIR
F1 Score60.09
6
Open-Ended Visual Question AnsweringTM4K
F1 Score72.91
6
Open-Ended Visual Question AnsweringJSIEC
F1 Score63.1
6
Open-Ended Visual Question AnsweringRetina
F1 Score67.8
6
Open-Ended Visual Question AnsweringODIR
F1 Score56.7
6
Text GenerationTM4K
BLEU-145.79
6
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