TY - JOUR
T1 - Managing a patient with uveitis in the era of artificial intelligence
T2 - Current approaches, emerging trends, and future perspectives
AU - Rojas-Carabali, William
AU - Cifuentes-González, Carlos
AU - Gutierrez-Sinisterra, Laura
AU - Heng, Lim Yuan
AU - Tsui, Edmund
AU - Gangaputra, Sapna
AU - Sadda, Srinivas
AU - Nguyen, Quan Dong
AU - Kempen, John H.
AU - Pavesio, Carlos E.
AU - Gupta, Vishali
AU - Raman, Rajiv
AU - Miao, Chunyan
AU - Lee, Bernett
AU - de-la-Torre, Alejandra
AU - Agrawal, Rupesh
N1 - Copyright © 2024. Published by Elsevier Inc.
PY - 2024
Y1 - 2024
N2 - The integration of artificial intelligence (AI) with healthcare has opened new avenues for diagnosing, treating, and managing medical conditions with remarkable precision. Uveitis, a diverse group of rare eye conditions characterized by inflammation of the uveal tract, exemplifies the complexities in ophthalmology due to its varied causes, clinical presentations, and responses to treatments. Uveitis, if not managed promptly and effectively, can lead to significant visual impairment. However, its management requires specialized knowledge, which is often lacking, particularly in regions with limited access to health services. AI's capabilities in pattern recognition, data analysis, and predictive modelling offer significant potential to revolutionize uveitis management. AI can classify disease etiologies, analyze multimodal imaging data, predict outcomes, and identify new therapeutic targets. However, transforming these AI models into clinical applications and meeting patient expectations involves overcoming challenges like acquiring extensive, annotated datasets, ensuring algorithmic transparency, and validating these models in real-world settings. This review delves into the complexities of uveitis and the current AI landscape, discussing the development, opportunities, and challenges of AI from theoretical models to bedside application. It also examines the epidemiology of uveitis, the global shortage of uveitis specialists, and the disease's socioeconomic impacts, underlining the critical need for AI-driven approaches. Furthermore, it explores the integration of AI in diagnostic imaging and future directions in ophthalmology, aiming to highlight emerging trends that could transform management of a patient with uveitis and suggesting collaborative efforts to enhance AI applications in clinical practice.
AB - The integration of artificial intelligence (AI) with healthcare has opened new avenues for diagnosing, treating, and managing medical conditions with remarkable precision. Uveitis, a diverse group of rare eye conditions characterized by inflammation of the uveal tract, exemplifies the complexities in ophthalmology due to its varied causes, clinical presentations, and responses to treatments. Uveitis, if not managed promptly and effectively, can lead to significant visual impairment. However, its management requires specialized knowledge, which is often lacking, particularly in regions with limited access to health services. AI's capabilities in pattern recognition, data analysis, and predictive modelling offer significant potential to revolutionize uveitis management. AI can classify disease etiologies, analyze multimodal imaging data, predict outcomes, and identify new therapeutic targets. However, transforming these AI models into clinical applications and meeting patient expectations involves overcoming challenges like acquiring extensive, annotated datasets, ensuring algorithmic transparency, and validating these models in real-world settings. This review delves into the complexities of uveitis and the current AI landscape, discussing the development, opportunities, and challenges of AI from theoretical models to bedside application. It also examines the epidemiology of uveitis, the global shortage of uveitis specialists, and the disease's socioeconomic impacts, underlining the critical need for AI-driven approaches. Furthermore, it explores the integration of AI in diagnostic imaging and future directions in ophthalmology, aiming to highlight emerging trends that could transform management of a patient with uveitis and suggesting collaborative efforts to enhance AI applications in clinical practice.
UR - https://www.mendeley.com/catalogue/84086032-7711-3003-a9e5-3c979f476117/
U2 - 10.1016/j.apjo.2024.100082
DO - 10.1016/j.apjo.2024.100082
M3 - Research Article
C2 - 39019261
AN - SCOPUS:85199449362
SN - 2162-0989
VL - 13
SP - 100082
JO - Asia-Pacific Journal of Ophthalmology
JF - Asia-Pacific Journal of Ophthalmology
IS - 4
M1 - 100082
ER -