Read like a radiologist: Efficient vision-language model for 3D medical imaging interpretation
  • Lee, Changsun
  • Park, Sangjoon
  • Shin, Cheong-Il
  • Choi, Woo Hee
  • Park, Hyun Jeong
  • 외 2명
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초록

Recent medical vision-language models (VLMs) have shown promise in 2D medical image interpretation. However extending them to 3D medical imaging has been challenging due to computational complexities and data scarcity. Although a few recent VLMs specified for 3D medical imaging have emerged, all are limited to learning volumetric representation of a 3D medical image as a set of sub-volumetric features. Such process introduces overly correlated representations along the z-axis that neglect slice-specific clinical details, particularly for 3D medical images where adjacent slices have low redundancy. To address this limitation, we introduce MS-VLM that mimic radiologists’ workflow in 3D medical image interpretation. Specifically, radiologists analyze 3D medical images by examining individual slices sequentially and synthesizing information across slices and views. Likewise, MS-VLM leverages self-supervised 2D transformer encoders to learn a volumetric representation that capture inter-slice dependencies from a sequence of slice-specific features. Unbound by sub-volumetric patchification, MS-VLM is capable of obtaining useful volumetric representations from 3D medical images with any slice length and from multiple images acquired from different planes and phases. We evaluate MS-VLM on publicly available chest CT dataset CT-RATE and in-house rectal MRI dataset. In both scenarios, MS-VLM surpasses existing methods in radiology report generation, producing more coherent and clinically relevant reports. These findings highlight the potential of MS-VLM to advance 3D medical image interpretation and improve the robustness of medical VLMs.

키워드

3D medical imagingLarge language modelsRadiology report generationSelf-supervised learningVision transformers
제목
Read like a radiologist: Efficient vision-language model for 3D medical imaging interpretation
저자
Lee, ChangsunPark, SangjoonShin, Cheong-IlChoi, Woo HeePark, Hyun JeongLee, Jeong EunYe, Jong Chul
DOI
10.1016/j.media.2026.104077
발행일
2026-04
유형
Journal Article
저널명
Medical Image Analysis
111