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Main Authors: Jin, Zhaohui, Shuai, Yi, Li, Yongcheng, Cai, Lingcong, Li, Yun, Liu, Huifen, Fan, Xiaomao
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2412.18124
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author Jin, Zhaohui
Shuai, Yi
Li, Yongcheng
Cai, Lingcong
Li, Yun
Liu, Huifen
Fan, Xiaomao
author_facet Jin, Zhaohui
Shuai, Yi
Li, Yongcheng
Cai, Lingcong
Li, Yun
Liu, Huifen
Fan, Xiaomao
contents The early detection of glottic carcinoma is critical for improving patient outcomes, as it enables timely intervention, preserves vocal function, and significantly reduces the risk of tumor progression and metastasis. However, the similarity in morphology between glottic carcinoma and vocal cord dysplasia results in suboptimal detection accuracy. To address this issue, we propose a vision large language model-based (VisionLLM-based) multimodal fusion network for glottic carcinoma detection, known as MMGC-Net. By integrating image and text modalities, multimodal models can capture complementary information, leading to more accurate and robust predictions. In this paper, we collect a private real glottic carcinoma dataset named SYSU1H from the First Affiliated Hospital of Sun Yat-sen University, with 5,799 image-text pairs. We leverage an image encoder and additional Q-Former to extract vision embeddings and the Large Language Model Meta AI (Llama3) to obtain text embeddings. These modalities are then integrated through a laryngeal feature fusion block, enabling a comprehensive integration of image and text features, thereby improving the glottic carcinoma identification performance. Extensive experiments on the SYSU1H dataset demonstrate that MMGC-Net can achieve state-of-the-art performance, which is superior to previous multimodal models.
format Preprint
id arxiv_https___arxiv_org_abs_2412_18124
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle VisionLLM-based Multimodal Fusion Network for Glottic Carcinoma Early Detection
Jin, Zhaohui
Shuai, Yi
Li, Yongcheng
Cai, Lingcong
Li, Yun
Liu, Huifen
Fan, Xiaomao
Computer Vision and Pattern Recognition
The early detection of glottic carcinoma is critical for improving patient outcomes, as it enables timely intervention, preserves vocal function, and significantly reduces the risk of tumor progression and metastasis. However, the similarity in morphology between glottic carcinoma and vocal cord dysplasia results in suboptimal detection accuracy. To address this issue, we propose a vision large language model-based (VisionLLM-based) multimodal fusion network for glottic carcinoma detection, known as MMGC-Net. By integrating image and text modalities, multimodal models can capture complementary information, leading to more accurate and robust predictions. In this paper, we collect a private real glottic carcinoma dataset named SYSU1H from the First Affiliated Hospital of Sun Yat-sen University, with 5,799 image-text pairs. We leverage an image encoder and additional Q-Former to extract vision embeddings and the Large Language Model Meta AI (Llama3) to obtain text embeddings. These modalities are then integrated through a laryngeal feature fusion block, enabling a comprehensive integration of image and text features, thereby improving the glottic carcinoma identification performance. Extensive experiments on the SYSU1H dataset demonstrate that MMGC-Net can achieve state-of-the-art performance, which is superior to previous multimodal models.
title VisionLLM-based Multimodal Fusion Network for Glottic Carcinoma Early Detection
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2412.18124