Large language models in physical therapy: time to adapt and adept

Waqar M. Naqvi, Summaiya Zareen Shaikh, Gaurav V Mishra
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Abstract

Healthcare is experiencing a transformative phase, with artificial intelligence (AI) and machine learning (ML). Physical therapists (PTs) stand on the brink of a paradigm shift in education, practice, and research. Rather than visualizing AI as a threat, it presents an opportunity to revolutionize. This paper examines how large language models (LLMs), such as ChatGPT and BioMedLM, driven by deep ML can offer human-like performance but face challenges in accuracy due to vast data in PT and rehabilitation practice. PTs can benefit by developing and training an LLM specifically for streamlining administrative tasks, connecting globally, and customizing treatments using LLMs. However, human touch and creativity remain invaluable. This paper urges PTs to engage in learning and shaping AI models by highlighting the need for ethical use and human supervision to address potential biases. Embracing AI as a contributor, and not just a user, is crucial by integrating AI, fostering collaboration for a future in which AI enriches the PT field provided data accuracy, and the challenges associated with feeding the AI model are sensitively addressed.
物理治疗中的大语言模型:适应和熟练的时间
随着人工智能(AI)和机器学习(ML)的发展,医疗保健正经历着一个转型阶段。物理治疗师(PTs)正处于教育、实践和研究范式转变的边缘。与其将人工智能视为一种威胁,不如说它为我们带来了一次革命性的机遇。本文探讨了由深度 ML 驱动的大型语言模型(LLM),如 ChatGPT 和 BioMedLM,如何提供类似人类的性能,但由于 PT 和康复实践中的数据量巨大,在准确性方面面临挑战。通过开发和培训专门用于简化管理任务、全球连接和使用 LLM 定制治疗的 LLM,护理人员可以从中受益。然而,人情味和创造力仍然非常宝贵。本文敦促康复治疗师参与学习和塑造人工智能模型,强调道德使用和人工监督的必要性,以解决潜在的偏见。将人工智能作为一个贡献者而不仅仅是一个用户来拥抱人工智能是至关重要的,这可以通过整合人工智能、促进合作来实现,在未来,人工智能将丰富PT领域,提供数据的准确性,并敏感地应对与喂养人工智能模型相关的挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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