Department of Ophthalmology, Heidelberg University Hospital, Heidelberg, Germany.
Klin Monbl Augenheilkd. 2024 Jan;241(1):75-83. doi: 10.1055/a-2003-2369. Epub 2024 Jan 19.
Cataract is among the leading causes of visual impairment worldwide. Innovations in treatment have drastically improved patient outcomes, but to be properly implemented, it is necessary to have the right diagnostic tools. This review explores the cataract grading systems developed by researchers in recent decades and provides insight into both merits and limitations. To this day, the gold standard for cataract classification is the Lens Opacity Classification System III. Different cataract features are graded according to standard photographs during slit lamp examination. Although widely used in research, its clinical application is rare, and it is limited by its subjective nature. Meanwhile, recent advancements in imaging technology, notably Scheimpflug imaging and optical coherence tomography, have opened the possibility of objective assessment of lens structure. With the use of automatic lens anatomy detection software, researchers demonstrated a good correlation to functional and surgical metrics such as visual acuity, phacoemulsification energy, and surgical time. The development of deep learning networks has further increased the capability of these grading systems by improving interpretability and increasing robustness when applied to norm-deviating cases. These classification systems, which can be used for both screening and preoperative diagnostics, are of value for targeted prospective studies, but still require implementation and validation in everyday clinical practice.
白内障是全球范围内导致视力损害的主要原因之一。治疗方法的创新极大地改善了患者的预后,但要正确实施,就必须有正确的诊断工具。本综述探讨了近几十年来研究人员开发的白内障分级系统,并深入了解了其优缺点。时至今日,白内障分类的金标准仍是 Lens Opacity Classification System III。根据裂隙灯检查时的标准照片对不同的白内障特征进行分级。尽管它在研究中被广泛应用,但在临床上很少使用,这是由于其主观性的限制。同时,近年来成像技术的进步,特别是 Scheimpflug 成像和光学相干断层扫描,为晶状体结构的客观评估提供了可能。通过使用自动晶状体解剖检测软件,研究人员证明了它与视力、超声乳化能量和手术时间等功能和手术指标具有良好的相关性。深度学习网络的发展通过提高对偏离正常值情况的解释能力和增强稳健性,进一步提高了这些分级系统的能力。这些分级系统可用于筛查和术前诊断,对于有针对性的前瞻性研究具有价值,但仍需要在日常临床实践中进行实施和验证。