Artificial intelligence in assessing progression of age-related macular degeneration.

IF 2.8 3区 医学 Q1 OPHTHALMOLOGY
Eye Pub Date : 2024-11-18 DOI:10.1038/s41433-024-03460-z
Sophie Frank-Publig, Klaudia Birner, Sophie Riedl, Gregor S Reiter, Ursula Schmidt-Erfurth
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引用次数: 0

Abstract

The human population is steadily growing with increased life expectancy, impacting the prevalence of age-dependent diseases, including age-related macular degeneration (AMD). Health care systems are confronted with an increasing burden with rising patient numbers accompanied by ongoing developments of therapeutic approaches. Concurrent advances in imaging modalities provide eye care professionals with a large amount of data for each patient. Furthermore, with continuous progress in therapeutics, there is an unmet need for reliable structural and functional biomarkers in clinical trials and practice to optimize personalized patient care and evaluate individual responses to treatment. A fast and objective solution is Artificial intelligence (AI), which has revolutionized assessment of AMD in all disease stages. Reliable and validated AI-algorithms can aid to overcome the growing number of patients, visits and necessary treatments as well as maximize the benefits of multimodal imaging in clinical trials. Therefore, there are ongoing efforts to develop and validate automated algorithms to unlock more information from datasets allowing automated assessment of disease activity and disease progression. This review aims to present selected AI algorithms, their development, applications and challenges regarding assessment and prediction of AMD progression.

人工智能评估老年性黄斑变性的进展。
随着预期寿命的延长,人类人口在稳步增长,这对包括老年性黄斑变性(AMD)在内的依赖年龄的疾病的发病率产生了影响。随着患者人数的增加以及治疗方法的不断发展,医疗保健系统面临着日益沉重的负担。成像模式的同步发展为眼科护理专业人员提供了有关每位患者的大量数据。此外,随着治疗方法的不断进步,临床试验和实践中对可靠的结构和功能生物标志物的需求仍未得到满足,以优化个性化患者护理和评估个体对治疗的反应。人工智能(AI)是一种快速、客观的解决方案,它彻底改变了所有疾病阶段的 AMD 评估。可靠且经过验证的人工智能算法可以帮助克服患者人数、就诊次数和必要治疗次数不断增加的问题,并在临床试验中最大限度地发挥多模态成像的优势。因此,人们一直在努力开发和验证自动算法,以便从数据集中获取更多信息,自动评估疾病活动和疾病进展。本综述旨在介绍选定的人工智能算法、其开发、应用以及在评估和预测老年黄斑变性进展方面所面临的挑战。
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来源期刊
Eye
Eye 医学-眼科学
CiteScore
6.40
自引率
5.10%
发文量
481
审稿时长
3-6 weeks
期刊介绍: Eye seeks to provide the international practising ophthalmologist with high quality articles, of academic rigour, on the latest global clinical and laboratory based research. Its core aim is to advance the science and practice of ophthalmology with the latest clinical- and scientific-based research. Whilst principally aimed at the practising clinician, the journal contains material of interest to a wider readership including optometrists, orthoptists, other health care professionals and research workers in all aspects of the field of visual science worldwide. Eye is the official journal of The Royal College of Ophthalmologists. Eye encourages the submission of original articles covering all aspects of ophthalmology including: external eye disease; oculo-plastic surgery; orbital and lacrimal disease; ocular surface and corneal disorders; paediatric ophthalmology and strabismus; glaucoma; medical and surgical retina; neuro-ophthalmology; cataract and refractive surgery; ocular oncology; ophthalmic pathology; ophthalmic genetics.
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