%0 Journal Article %T Latest developments of generative artificial intelligence and applications in ophthalmology. %A Feng X %A Xu K %A Luo MJ %A Chen H %A Yang Y %A He Q %A Song C %A Li R %A Wu Y %A Wang H %A Tham YC %A Ting DSW %A Lin H %A Wong TY %A Lam DS %J Asia Pac J Ophthalmol (Phila) %V 13 %N 4 %D 2024 Jul-Aug 14 %M 39128549 %F 4.206 %R 10.1016/j.apjo.2024.100090 %X The emergence of generative artificial intelligence (AI) has revolutionized various fields. In ophthalmology, generative AI has the potential to enhance efficiency, accuracy, personalization and innovation in clinical practice and medical research, through processing data, streamlining medical documentation, facilitating patient-doctor communication, aiding in clinical decision-making, and simulating clinical trials. This review focuses on the development and integration of generative AI models into clinical workflows and scientific research of ophthalmology. It outlines the need for development of a standard framework for comprehensive assessments, robust evidence, and exploration of the potential of multimodal capabilities and intelligent agents. Additionally, the review addresses the risks in AI model development and application in clinical service and research of ophthalmology, including data privacy, data bias, adaptation friction, over interdependence, and job replacement, based on which we summarized a risk management framework to mitigate these concerns. This review highlights the transformative potential of generative AI in enhancing patient care, improving operational efficiency in the clinical service and research in ophthalmology. It also advocates for a balanced approach to its adoption.