Towards a Holistic Framework for Multimodal Large Language Models in Three-dimensional Brain CT Report Generation
Cheng-Yi Li, Kao-Jung Chang, Cheng-Fu Yang, Hsin-Yu Wu, Wenting Chen,, Hritik Bansal, Ling Chen, Yi-Ping Yang, Yu-Chun Chen, Shih-Pin Chen,, Jiing-Feng Lirng, Kai-Wei Chang, Shih-Hwa Chiou

TL;DR
This paper introduces BrainGPT, a multimodal large language model trained on a new 3D brain CT dataset, capable of generating accurate, clinically relevant radiology reports with high human indistinguishability.
Contribution
The paper presents a comprehensive framework including a new 3D brain CT dataset, clinical visual instruction tuning, and a novel evaluation metric for radiology report generation.
Findings
BrainGPT achieved high BLEU and CIDEr scores in internal testing.
BrainGPT demonstrated 91% accuracy in external validation for midline shift captioning.
74% of BrainGPT reports were indistinguishable from human reports in a Turing test.
Abstract
Multi-modal large language models (MLLMs) have been given free rein to explore exciting medical applications with a primary focus on radiology report generation. Nevertheless, the preliminary success in 2D radiology captioning is incompetent to reflect the real-world diagnostic challenge in the volumetric 3D anatomy. To mitigate three crucial limitation aspects in the existing literature, including (1) data complexity, (2) model capacity, and (3) evaluation metric fidelity, we collected an 18,885 text-scan pairs 3D-BrainCT dataset and applied clinical visual instruction tuning (CVIT) to train BrainGPT models to generate radiology-adherent 3D brain CT reports. Statistically, our BrainGPT scored BLEU-1 = 44.35, BLEU-4 = 20.38, METEOR = 30.13, ROUGE-L = 47.6, and CIDEr-R = 211.77 during internal testing and demonstrated an accuracy of 0.91 in captioning midline shifts on the external…
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Taxonomy
TopicsTopic Modeling · Biomedical Text Mining and Ontologies · Natural Language Processing Techniques
MethodsFocus
