Vision, Imaging and Performance Laboratory (VIP), Duke Eye Center, Duke University, Durham, North Carolina.
Department of Statistical Science and Forge, Duke University, Durham, North Carolina.
JAMA Ophthalmol. 2020 Apr 1;138(4):333-339. doi: 10.1001/jamaophthalmol.2019.5983.
Conventional segmentation of the retinal nerve fiber layer (RNFL) is prone to errors that may affect the accuracy of spectral-domain optical coherence tomography (SD-OCT) scans in detecting glaucomatous damage.
To develop a segmentation-free deep learning (DL) algorithm for assessment of glaucomatous damage using the entire circle B-scan image from SD-OCT.
DESIGN, SETTING, AND PARTICIPANTS: This cross-sectional study at a single institution used data from SD-OCT images of eyes with glaucoma (perimetric and preperimetric) and normal eyes. The data set was randomly split at the patient level into a training (50%), validation (20%), and test data set (30%). Data were collected from March 2008 to April 2019, and analysis began April 2018.
A convolutional neural network was trained to discriminate glaucomatous from normal eyes using the SD-OCT circle B-scan without segmentation lines.
The ability to discriminate glaucoma from healthy eyes was evaluated by comparing the area under the receiver operating characteristic curve and sensitivity at 80% or 95% specificity for the DL algorithm's predicted probability of glaucoma vs conventional RNFL thickness parameters given by SD-OCT software. The performance was also assessed in preperimetric glaucoma, as well as by visual field severity using Hodapp-Parrish-Anderson criteria.
A total of 20 806 SD-OCT images from 1154 eyes of 635 individuals (612 [53%] with glaucoma and 542 normal eyes [47%]) were included. The mean (SD) age at SD-OCT scan was 70.8 (10.4) years in individuals with glaucoma and 55.8 (14.1) years in controls. There were 187 women (53.3%) in the glaucoma group and 165 (59.8%) in the control group. Of 612 eyes with glaucoma, 432 (70.4%) had perimetric and 180 (29.6%) had preperimetric glaucoma. The DL algorithm had a significantly higher area under the receiver operating characteristic curve than global RNFL thickness (0.96 vs 0.87; difference = 0.08 [95% CI, 0.04-0.12]) and each RNFL thickness sector for discriminating between glaucoma and controls (all P < .001). At 95% specificity, the DL algorithm (81%; 95% CI, 64%-97%) was more sensitive than global RNFL thickness (67%; 95% CI, 58%-76%). The areas under the receiver operating characteristic curve were also significantly greater for the DL algorithm compared with RNFL thickness at each stage of disease, especially preperimetric and mild perimetric glaucoma.
A segmentation-free DL algorithm performed better than conventional RNFL thickness parameters for diagnosing glaucomatous damage on OCT scans, especially in early disease. Future studies should investigate how such an approach contributes to diagnostic decisions when combined with other relevant clinical information, such as risk factors and perimetry results.
传统的视网膜神经纤维层(RNFL)分割容易出现错误,这可能会影响光谱域光学相干断层扫描(SD-OCT)扫描检测青光眼损伤的准确性。
开发一种无分割的深度学习(DL)算法,用于使用 SD-OCT 的整个圆周 B 扫描图像评估青光眼损伤。
设计、设置和参与者:这项在单机构进行的横断面研究使用了青光眼(周边和前期)和正常眼的 SD-OCT 图像数据。数据集在患者水平上随机分为训练集(50%)、验证集(20%)和测试数据集(30%)。数据收集于 2008 年 3 月至 2019 年 4 月,分析于 2018 年 4 月开始。
使用无分割线的 SD-OCT 圆 B 扫描训练卷积神经网络来区分青光眼和正常眼。
通过比较 DL 算法预测的青光眼概率与 SD-OCT 软件提供的常规 RNFL 厚度参数的接收器工作特征曲线下面积和在 80%或 95%特异性时的敏感性,评估 DL 算法区分青光眼和健康眼的能力。还评估了在前期青光眼以及使用 Hodapp-Parrish-Anderson 标准的视野严重程度中的表现。
共纳入 1154 只眼的 20806 份 SD-OCT 图像,来自 635 名个体(612 只眼[53%]患有青光眼,542 只眼正常[47%])。青光眼个体的 SD-OCT 扫描平均(SD)年龄为 70.8(10.4)岁,对照组为 55.8(14.1)岁。青光眼组有 187 名女性(53.3%),对照组有 165 名(59.8%)。612 只眼中,432 只眼(70.4%)为周边性青光眼,180 只眼(29.6%)为前期青光眼。DL 算法在区分青光眼和对照组方面的接收器工作特征曲线下面积明显高于全层 RNFL 厚度(0.96 比 0.87;差值=0.08 [95%置信区间,0.04-0.12])和每个 RNFL 厚度区(均 P<.001)。在 95%特异性时,DL 算法(81%;95%置信区间,64%-97%)的敏感性高于全层 RNFL 厚度(67%;95%置信区间,58%-76%)。与疾病的每个阶段相比,DL 算法的接收器工作特征曲线下面积也明显大于 RNFL 厚度,尤其是在前期和轻度周边性青光眼。
无分割的 DL 算法在检测 OCT 扫描中的青光眼损伤方面优于传统的 RNFL 厚度参数,尤其是在疾病早期。未来的研究应该调查当与其他相关临床信息(如风险因素和视野结果)结合使用时,这种方法如何有助于诊断决策。