医学影像中的大型语言模型和大型多模态模型:医生入门指南

Tyler J. Bradshaw, Xin Tie, Joshua Warner, Junjie Hu, Quanzheng Li, Xiang Li
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引用次数: 0

摘要

大型语言模型(llm)将对医疗保健产生破坏性影响。许多研究已经证明了llm在医学成像中的应用前景,随着llm进一步发展成为能够处理文本和图像的大型多模态模型(lmm),这一数字将会增长。考虑到llm和lmm在医疗保健中的重要作用,医生了解这些技术的基本原理非常重要,这样他们就可以更有效、更负责任地使用它们,并帮助指导它们的发展。本文解释了llm开发和应用背后的关键概念,包括令牌嵌入、变压器网络、自监督预训练、微调等。它还描述了创建lmm的技术过程,并讨论了医学成像中llm和lmm的用例。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Large Language Models and Large Multimodal Models in Medical Imaging: A Primer for Physicians

Large language models (LLMs) are poised to have a disruptive impact on health care. Numerous studies have demonstrated promising applications of LLMs in medical imaging, and this number will grow as LLMs further evolve into large multimodal models (LMMs) capable of processing both text and images. Given the substantial roles that LLMs and LMMs will have in health care, it is important for physicians to understand the underlying principles of these technologies so they can use them more effectively and responsibly and help guide their development. This article explains the key concepts behind the development and application of LLMs, including token embeddings, transformer networks, self-supervised pretraining, fine-tuning, and others. It also describes the technical process of creating LMMs and discusses use cases for both LLMs and LMMs in medical imaging.

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