Diener Raphael, Renz Alexander W, Eckhard Florian, Segbert Helmar, Eter Nicole, Malcherek Arnim, Biermann Julia
Department of Ophthalmology, University of Muenster Medical Center, 48149 Muenster, Germany.
Department of Informatics, University of Applied Sciences Darmstadt, 64295 Darmstadt, Germany.
Diagnostics (Basel). 2024 May 22;14(11):1073. doi: 10.3390/diagnostics14111073.
In order to generate a machine learning algorithm (MLA) that can support ophthalmologists with the diagnosis of glaucoma, a carefully selected dataset that is based on clinically confirmed glaucoma patients as well as borderline cases (e.g., patients with suspected glaucoma) is required. The clinical annotation of datasets is usually performed at the expense of the data volume, which results in poorer algorithm performance. This study aimed to evaluate the application of an MLA for the automated classification of physiological optic discs (PODs), glaucomatous optic discs (GODs), and glaucoma-suspected optic discs (GSODs). Annotation of the data to the three groups was based on the diagnosis made in clinical practice by a glaucoma specialist. Color fundus photographs and 14 types of metadata (including visual field testing, retinal nerve fiber layer thickness, and cup-disc ratio) of 1168 eyes from 584 patients (POD = 321, GOD = 336, GSOD = 310) were used for the study. Machine learning (ML) was performed in the first step with the color fundus photographs only and in the second step with the images and metadata. Sensitivity, specificity, and accuracy of the classification of GSOD vs. GOD and POD vs. GOD were evaluated. Classification of GOD vs. GSOD and GOD vs. POD performed in the first step had AUCs of 0.84 and 0.88, respectively. By combining the images and metadata, the AUCs increased to 0.92 and 0.99, respectively. By combining images and metadata, excellent performance of the MLA can be achieved despite having only a small amount of data, thus supporting ophthalmologists with glaucoma diagnosis.
为了生成一种能够辅助眼科医生诊断青光眼的机器学习算法(MLA),需要精心挑选一个基于临床确诊青光眼患者以及临界病例(如疑似青光眼患者)的数据集。数据集的临床标注通常是以牺牲数据量为代价进行的,这会导致算法性能变差。本研究旨在评估一种MLA在生理性视盘(POD)、青光眼性视盘(GOD)和疑似青光眼视盘(GSOD)自动分类中的应用。对这三组数据的标注基于青光眼专家在临床实践中做出的诊断。研究使用了584例患者的1168只眼睛的彩色眼底照片和14种元数据(包括视野测试、视网膜神经纤维层厚度和杯盘比)(POD = 321,GOD = 336,GSOD = 310)。第一步仅使用彩色眼底照片进行机器学习(ML),第二步使用图像和元数据进行ML。评估了GSOD与GOD以及POD与GOD分类的敏感性、特异性和准确性。第一步中GOD与GSOD以及GOD与POD分类的曲线下面积(AUC)分别为0.84和0.88。通过将图像和元数据相结合,AUC分别提高到了0.92和0.99。通过结合图像和元数据,即使只有少量数据,也能实现MLA的出色性能,从而辅助眼科医生进行青光眼诊断。