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Understanding natural language: Potential application of large language models to ophthalmology
25
Zitationen
14
Autoren
2024
Jahr
Abstract
Large language models (LLMs), a natural language processing technology based on deep learning, are currently in the spotlight. These models closely mimic natural language comprehension and generation. Their evolution has undergone several waves of innovation similar to convolutional neural networks. The transformer architecture advancement in generative artificial intelligence marks a monumental leap beyond early-stage pattern recognition via supervised learning. With the expansion of parameters and training data (terabytes), LLMs unveil remarkable human interactivity, encompassing capabilities such as memory retention and comprehension. These advances make LLMs particularly well-suited for roles in healthcare communication between medical practitioners and patients. In this comprehensive review, we discuss the trajectory of LLMs and their potential implications for clinicians and patients. For clinicians, LLMs can be used for automated medical documentation, and given better inputs and extensive validation, LLMs may be able to autonomously diagnose and treat in the future. For patient care, LLMs can be used for triage suggestions, summarization of medical documents, explanation of a patient's condition, and customizing patient education materials tailored to their comprehension level. The limitations of LLMs and possible solutions for real-world use are also presented. Given the rapid advancements in this area, this review attempts to briefly cover many roles that LLMs may play in the ophthalmic space, with a focus on improving the quality of healthcare delivery.
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Autoren
Institutionen
- Sun Yat-sen University(CN)
- Mayo Clinic Health System(US)
- Beijing Academy of Artificial Intelligence(CN)
- Shanghai Artificial Intelligence Laboratory
- Stanford University(US)
- Smith-Kettlewell Eye Research Institute(US)
- University of California, San Francisco(US)
- Prince of Wales Hospital(CN)
- Hong Kong Eye Hospital(CN)
- Chinese University of Hong Kong(CN)