| Title | AI in Neuro-Ophthalmology: Current Practice and Future Opportunities |
| Creator | Rachel C. Kenney, PhD; Tim W. Requarth, PhD; Alani I. Jack, BA; Sara W. Hyman, BS, BA; Steven L. Galetta, MD; Scott N. Grossman, MD |
| Affiliation | Departments of Neurology (RCK, AJ, SH, SG, SNG), Population Health (RCK), and Ophthalmology (SG), New York University Grossman School of Medicine, New York, New York; and Vilcek Institute of Graduate Biomedical Sciences (TR), New York University Grossman School of Medicine, New York, New York |
| Abstract | Background: Neuro-ophthalmology frequently requires a complex and multi-faceted clinical assessment supported by sophisticated imaging techniques in order to assess disease status. The current approach to diagnosis requires substantial expertise and time. The emergence of AI has brought forth innovative solutions to streamline and enhance this diagnostic process, which is especially valuable given the shortage of neuro-ophthalmologists. Machine learning algorithms, in particular, have demonstrated significant potential in interpreting imaging data, identifying subtle patterns, and aiding clinicians in making more accurate and timely diagnosis while also supplementing nonspecialist evaluations of neuro-ophthalmic disease. Evidence acquisition: Electronic searches of published literature were conducted using PubMed and Google Scholar. A comprehensive search of the following terms was conducted within the Journal of Neuro-Ophthalmology: AI, artificial intelligence, machine learning, deep learning, natural language processing, computer vision, large language models, and generative AI. Results: This review aims to provide a comprehensive overview of the evolving landscape of AI applications in neuro-ophthalmology. It will delve into the diverse applications of AI, optical coherence tomography (OCT), and fundus photography to the development of predictive models for disease progression. Additionally, the review will explore the integration of generative AI into neuro-ophthalmic education and clinical practice. Conclusions: We review the current state of AI in neuro-ophthalmology and its potentially transformative impact. The inclusion of AI in neuro-ophthalmic practice and research not only holds promise for improving diagnostic accuracy but also opens avenues for novel therapeutic interventions. We emphasize its potential to improve access to scarce subspecialty resources while examining the current challenges associated with the integration of AI into clinical practice and research. |
| Subject | Artificial Intelligence / trends; Diagnostic Techniques, Ophthalmological / trends; Eye Diseases / diagnosis; Humans; Machine Learning; Neurology / trends; Ophthalmology; Tomography, Optical Coherence / methods |
| Date | 2024-09 |
| Date Digital | 2024-09 |
| References | Bouthour W, Biousse V, Newman NJ. Diagnosis of optic disc oedema: fundus features, ocular imaging findings, and artificial intelligence. Neuroophthalmol. 2023;47:177-192. Milea D, Najjar RP, Zhubo J, et al., BONSAI Group. Artificial intelligence to detect papilledema from ocular fundus photographs. N Engl J Med. 2020;382:1687-1695. Vasseneix C, Najjar RP, Xu X, et al., BONSAI Group. Accuracy of a deep learning system for classification of papilledema severity on ocular fundus photographs. Neurology. 2021;97:e369-e377. Echegaray S, Zamora G, Yu H, Luo W, Soliz P, Kardon R. Automated analysis of optic nerve images for detection and staging of papilledema. Invest Ophthalmol Vis Sci. 2011;52:7470-7478. Yang HK, Kim YJ, Sung JY, Kim DH, Kim KG, Hwang J-M. Efficacy for differentiating nonglaucomatous versus glaucomatous optic neuropathy using deep learning systems. Am J Ophthalmol. 2020;216:140-146. |
| Language | eng |
| Format | application/pdf |
| Type | Text |
| Publication Type | Journal Article |
| Source | Journal of Neuro-Ophthalmology, September 2024, Volume 44, Issue 3 |
| Collection | Neuro-Ophthalmology Virtual Education Library: Journal of Neuro-Ophthalmology Archives: https://novel.utah.edu/jno/ |
| Publisher | Lippincott, Williams & Wilkins |
| Holding Institution | North American Neuro-Ophthalmology Association. NANOS Executive Office 5841 Cedar Lake Road, Suite 204, Minneapolis, MN 55416 |
| Rights Management | © North American Neuro-Ophthalmology Society |
| ARK | ark:/87278/s64dr5ev |
| Setname | ehsl_novel_jno |
| ID | 2901236 |
| Reference URL | https://collections.lib.utah.edu/ark:/87278/s64dr5ev |