ViT3D Alignment of LLaMA3: 3D Medical Image Report Generation
Automatic medical report generation (MRG), which aims to produce detailed text reports from medical images, has emerged as a critical task in this domain. MRG systems can enhance radiological workflows by reducing the time and effort required for report writing, thereby improving diagnostic efficien...
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Zusammenfassung: | Automatic medical report generation (MRG), which aims to produce detailed
text reports from medical images, has emerged as a critical task in this
domain. MRG systems can enhance radiological workflows by reducing the time and
effort required for report writing, thereby improving diagnostic efficiency. In
this work, we present a novel approach for automatic MRG utilizing a multimodal
large language model. Specifically, we employed the 3D Vision Transformer
(ViT3D) image encoder introduced from M3D-CLIP to process 3D scans and use the
Asclepius-Llama3-8B as the language model to generate the text reports by
auto-regressive decoding. The experiment shows our model achieved an average
Green score of 0.3 on the MRG task validation set and an average accuracy of
0.61 on the visual question answering (VQA) task validation set, outperforming
the baseline model. Our approach demonstrates the effectiveness of the ViT3D
alignment of LLaMA3 for automatic MRG and VQA tasks by tuning the model on a
small dataset. |
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DOI: | 10.48550/arxiv.2410.08588 |