Affiliation:
1. Centre for Health Services Research University of Queensland Woolloongabba Australia
2. School of Electrical Engineering and Computer Sciences The University of Queensland St Lucia Queensland Australia
Abstract
AbstractFoundation machine learning models are deep learning models capable of performing many different tasks using different data modalities such as text, audio, images and video. They represent a major shift from traditional task‐specific machine learning prediction models. Large language models (LLM), brought to wide public prominence in the form of ChatGPT, are text‐based foundational models that have the potential to transform medicine by enabling automation of a range of tasks, including writing discharge summaries, answering patients questions and assisting in clinical decision‐making. However, such models are not without risk and can potentially cause harm if their development, evaluation and use are devoid of proper scrutiny. This narrative review describes the different types of LLM, their emerging applications and potential limitations and bias and likely future translation into clinical practice.
Cited by
2 articles.
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