Beyond the Embedding Bottleneck: Adaptive Retrieval-Augmented 3D CT Report Generation
arXiv cs.CV / 3/18/2026
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Key Points
- The study reveals a bottleneck in 3D CT embeddings: highly discriminative pathology signals exist but are limited to a very small effective dimensionality (as few as 2 of 512), constraining both generation and retrieval.
- Scaling the language model does not improve performance, suggesting the bottleneck lies in the visual representation rather than in the text generator.
- The authors propose AdaRAG-CT, an adaptive augmentation framework that injects supplementary textual information through controlled retrieval and selectively fuses it during report generation to mitigate the bottleneck.
- On the CT-RATE benchmark, AdaRAG-CT delivers state-of-the-art clinical efficacy, raising Clinical F1 from 0.420 to 0.480, with ablations showing both retrieval and generation components contribute, and the authors provide code at the given GitHub URL; naive static retrieval can degrade performance.
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