Accelerating the integration of ChatGPT and other large‐scale AI models into biomedical research and healthcare

Author:

Wang Ding‐Qiao1,Feng Long‐Yu1,Ye Jin‐Guo1,Zou Jin‐Gen2,Zheng Ying‐Feng1ORCID

Affiliation:

1. State Key Laboratory of Ophthalmology, Guangdong Provincial Key Laboratory of Ophthalmology and Visual Science, Zhongshan Ophthalmic Center Sun Yat‐Sen University Guangzhou China

2. School of Computer Science and Technology Beijing Institute of Technology Beijing China

Abstract

AbstractLarge‐scale artificial intelligence (AI) models such as ChatGPT have the potential to improve performance on many benchmarks and real‐world tasks. However, it is difficult to develop and maintain these models because of their complexity and resource requirements. As a result, they are still inaccessible to healthcare industries and clinicians. This situation might soon be changed because of advancements in graphics processing unit (GPU) programming and parallel computing. More importantly, leveraging existing large‐scale AIs such as GPT‐4 and Med‐PaLM and integrating them into multiagent models (e.g., Visual‐ChatGPT) will facilitate real‐world implementations. This review aims to raise awareness of the potential applications of these models in healthcare. We provide a general overview of several advanced large‐scale AI models, including language models, vision‐language models, graph learning models, language‐conditioned multiagent models, and multimodal embodied models. We discuss their potential medical applications in addition to the challenges and future directions. Importantly, we stress the need to align these models with human values and goals, such as using reinforcement learning from human feedback, to ensure that they provide accurate and personalized insights that support human decision‐making and improve healthcare outcomes.

Funder

National Natural Science Foundation of China

Publisher

Wiley

Reference125 articles.

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