回顾放射学大型语言模型的机遇与挑战:未来之路

Neetu Soni, Manish Ora, Amit Agarwal, Tianbao Yang, Girish Bathla
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摘要

近年来,生成式人工智能(AI),尤其是大型语言模型(LLMs)及其多模态对应模型--多模态大型语言模型(MM-LLMs),包括视觉语言模型(VLMs),在全球人工智能领域引起了广泛关注。LLM 或预训练语言模型(如 ChatGPT、Med-PaLM、LLaMA 等)是在大量文本数据基础上训练而成的神经网络架构,在语言理解和生成方面表现出色。MM-LLM 是基础模型的一个子集,在多模态数据集上进行训练,将文本与另一种模态(如图像)整合在一起,以更好地学习类似于人类认知的通用表征。这种多功能性使它们能够在聊天机器人、翻译和创意写作等任务中大显身手,同时通过迁移学习、联合学习和合成数据创建促进知识共享。其中一些模型在医疗领域具有潜在的应用吸引力,包括但不限于通过处理患者数据、总结报告和相关文献、提供诊断、治疗和随访建议以及编码和计费等辅助任务来加强患者护理。当放射科医生进入这个充满希望但尚未涉足的领域时,他们必须熟悉 LLM 的基本术语和流程。在此,我们将概述 LLMs 及其在成像领域的潜在应用和挑战:AI:人工智能;BERT:来自变换器的双向编码器表征;CLIP:对比语言-图像预训练;FM:基础模型;GPT:生成式预训练变换器:LLM:大型语言模型;NLP:自然语言处理;VLM:视觉语言模型。
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A Review of The Opportunities and Challenges with Large Language Models in Radiology: The Road Ahead.

In recent years, generative artificial intelligence (AI), particularly large language models (LLMs) and their multimodal counterparts, Multi-Modal Large Language Models (MM-LLMs), including Vision Language Models (VLMs), have generated considerable interest in the global AI discourse. LLMs, or pre-trained language models (such as ChatGPT, Med-PaLM, LLaMA, etc.), are neural network architectures trained on extensive text data, excelling in language comprehension and generation. MM-LLMs, a subset of foundation models, are trained on multimodal datasets, integrating text with another modality, such as images, to better learn universal representations akin to human cognition. This versatility enables them to excel in tasks like chatbots, translation, and creative writing while facilitating knowledge sharing through transfer learning, federated learning, and synthetic data creation.Several of these models can have potentially appealing applications in the medical domain, including, but not limited to, enhancing patient care by processing patient data, summarizing reports and relevant literature, providing diagnostic, treatment, and follow-up recommendations, and ancillary tasks like coding and billing. As radiologists enter this promising but uncharted territory, it is imperative for them to be familiar with the basic terminology and processes of LLMs. Herein, we present an overview of the LLMs and their potential applications and challenges in the imaging domain.ABBREVIATIONS: AI: Artificial Intelligence; BERT: Bidirectional Encoder Representations from Transformers; CLIP: Contrastive Language-Image Pretraining; FM: Foundation Models; GPT: Generative Pre-trained Transformer; LLM: Large language model; NLP: natural language processing; VLM: Vision Language Models.

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