MiniGPT-Pancreas: Multimodal Large Language Model for Pancreas Cancer Classification and Detection
Journal:
arXiv
Published Date:
Dec 20, 2024
Abstract
Problem: Pancreas radiological imaging is challenging due to the small size,
blurred boundaries, and variability of shape and position of the organ among
patients. Goal: In this work we present MiniGPT-Pancreas, a Multimodal Large
Language Model (MLLM), as an interactive chatbot to support clinicians in
pancreas cancer diagnosis by integrating visual and textual information.
Methods: MiniGPT-v2, a general-purpose MLLM, was fine-tuned in a cascaded way
for pancreas detection, tumor classification, and tumor detection with
multimodal prompts combining questions and computed tomography scans from the
National Institute of Health (NIH), and Medical Segmentation Decathlon (MSD)
datasets. The AbdomenCT-1k dataset was used to detect the liver, spleen,
kidney, and pancreas. Results: MiniGPT-Pancreas achieved an Intersection over
Union (IoU) of 0.595 and 0.550 for the detection of pancreas on NIH and MSD
datasets, respectively. For the pancreas cancer classification task on the MSD
dataset, accuracy, precision, and recall were 0.876, 0.874, and 0.878,
respectively. When evaluating MiniGPT-Pancreas on the AbdomenCT-1k dataset for
multi-organ detection, the IoU was 0.8399 for the liver, 0.722 for the kidney,
0.705 for the spleen, and 0.497 for the pancreas. For the pancreas tumor
detection task, the IoU score was 0.168 on the MSD dataset. Conclusions:
MiniGPT-Pancreas represents a promising solution to support clinicians in the
classification of pancreas images with pancreas tumors. Future research is
needed to improve the score on the detection task, especially for pancreas
tumors.