计算机科学
人工智能
安全性令牌
机器学习
自然语言处理
计算机安全
作者
Meiyue Song,Jiarui Wang,Zhihua Yu,Jiaxin Wang,Le Yang,Yuting Lu,Baicun Li,Xue Gang Wang,X.L. Wang,Qinghua Huang,Zhijun Li,Nikolaos I. Kanellakis,Jiangfeng Liu,Jing Wang,Binglu Wang,Juntao Yang
标识
DOI:10.1016/j.media.2024.103248
摘要
The conventional pretraining-and-finetuning paradigm, while effective for common diseases with ample data, faces challenges in diagnosing data-scarce occupational diseases like pneumoconiosis. Recently, large language models (LLMs) have exhibits unprecedented ability when conducting multiple tasks in dialogue, bringing opportunities to diagnosis. A common strategy might involve using adapter layers for vision-language alignment and diagnosis in a dialogic manner. Yet, this approach often requires optimization of extensive learnable parameters in the text branch and the dialogue head, potentially diminishing the LLMs' efficacy, especially with limited training data. In our work, we innovate by eliminating the text branch and substituting the dialogue head with a classification head. This approach presents a more effective method for harnessing LLMs in diagnosis with fewer learnable parameters. Furthermore, to balance the retention of detailed image information with progression towards accurate diagnosis, we introduce the contextual multi-token engine. This engine is specialized in adaptively generating diagnostic tokens. Additionally, we propose the information emitter module, which unidirectionally emits information from image tokens to diagnosis tokens. Comprehensive experiments validate the superiority of our methods.
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