医疗保健大型语言模型的最新进展

Khalid Nassiri, Moulay A. Akhloufi
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引用次数: 0

摘要

大型语言模型(LLMs)领域的最新进展凸显了其在各行各业的巨大应用潜力。尤其是在医疗保健领域的应用,为改善医疗实践带来了广阔的前景。正如我们在本文中所强调的那样,大型语言模型在语言理解和生成方面已经展现出非凡的能力,确实可以在医疗领域得到很好的应用。我们还介绍了这些模型的主要架构,如由数十亿个参数组成的 GPT、Bloom 或 LLaMA。然后,我们研究了用于训练这些模型的医学数据集的最新趋势。我们根据不同的标准对它们进行分类,如规模、来源或主题(病历、科学文章等)。我们提到,LLM 可以帮助改善患者护理、加速医学研究、优化医疗系统(如辅助诊断)的效率。我们还强调了在医学领域广泛使用 LLM 之前需要解决的几个技术和伦理问题。因此,我们建议就新一代语言模型所提供的功能及其在医疗保健等领域应用时的局限性展开讨论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recent Advances in Large Language Models for Healthcare
Recent advances in the field of large language models (LLMs) underline their high potential for applications in a variety of sectors. Their use in healthcare, in particular, holds out promising prospects for improving medical practices. As we highlight in this paper, LLMs have demonstrated remarkable capabilities in language understanding and generation that could indeed be put to good use in the medical field. We also present the main architectures of these models, such as GPT, Bloom, or LLaMA, composed of billions of parameters. We then examine recent trends in the medical datasets used to train these models. We classify them according to different criteria, such as size, source, or subject (patient records, scientific articles, etc.). We mention that LLMs could help improve patient care, accelerate medical research, and optimize the efficiency of healthcare systems such as assisted diagnosis. We also highlight several technical and ethical issues that need to be resolved before LLMs can be used extensively in the medical field. Consequently, we propose a discussion of the capabilities offered by new generations of linguistic models and their limitations when deployed in a domain such as healthcare.
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