[Use of artificial intelligence in geographic atrophy in age-related macular degeneration].

Die Ophthalmologie Pub Date : 2024-08-01 Epub Date: 2024-07-31 DOI:10.1007/s00347-024-02080-y
Petrus Chang, Leon von der Emde, Maximilian Pfau, Sandrine Künzel, Monika Fleckenstein, Steffen Schmitz-Valckenberg, Frank G Holz
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Abstract

The first regulatory approval of treatment for geographic atrophy (GA) secondary to age-related macular degeneration in the USA constitutes an important milestone; however, due to the nature of GA as a non-acute, insidiously progressing pathology, the ophthalmologist faces specific challenges concerning risk stratification, making treatment decisions, monitoring of treatment and patient education. Innovative retinal imaging modalities, such as fundus autofluorescence (FAF) and optical coherence tomography (OCT) have enabled identification of typical morphological alterations in relation to GA, which are also suitable for the quantitative characterization of GA. Solutions based on artificial intelligence (AI) enable automated detection and quantification of GA-specific biomarkers on retinal imaging data, also retrospectively and over time. Moreover, AI solutions can be used for the diagnosis and segmentation of GA as well as the prediction of structure and function without and under GA treatment, thereby making a valuable contribution to treatment monitoring and the identification of high-risk patients and patient education. The integration of AI solutions into existing clinical processes and software systems enables the broad implementation of informed and personalized treatment of GA secondary to AMD.

[人工智能在老年性黄斑变性地理萎缩中的应用]。
美国监管机构首次批准治疗继发于年龄相关性黄斑变性的地理萎缩(GA)是一个重要的里程碑;然而,由于地理萎缩是一种非急性、隐匿性进展的病变,眼科医生在风险分层、治疗决策、治疗监测和患者教育方面面临着特殊的挑战。创新的视网膜成像模式,如眼底自动荧光(FAF)和光学相干断层扫描(OCT),能够识别与 GA 有关的典型形态学改变,也适用于 GA 的定量特征描述。基于人工智能(AI)的解决方案能够自动检测和量化视网膜成像数据中的 GA 特异性生物标志物,还可以进行回顾性和随时间变化的检测。此外,人工智能解决方案还可用于 GA 的诊断和分割,以及在未接受 GA 治疗和接受 GA 治疗的情况下对其结构和功能进行预测,从而为治疗监测、高风险患者识别和患者教育做出宝贵贡献。将人工智能解决方案集成到现有的临床流程和软件系统中,可广泛实施对继发于 AMD 的 GA 的知情和个性化治疗。
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