State Key Laboratory of Modern Optical Instrumentation, Department of Psychiatry of the First Affiliated Hospital, Zhejiang University School of Medicine, Hangzhou 310012, China; College of Optical Science and Engineering, Zhejiang University, Hangzhou 310027, China; Liangzhu Laboratory, MOE Frontier Science Center for Brain Science and Brain-machine Integration, State Key Laboratory of Brain-machine Intelligence, Zhejiang University, 1369 West Wenyi Road, Hangzhou 311121, China.
College of Optical Science and Engineering, Zhejiang University, Hangzhou 310027, China.
J Biomed Inform. 2022 Dec;136:104233. doi: 10.1016/j.jbi.2022.104233. Epub 2022 Oct 21.
Glaucoma is the leading cause of irreversible blindness, and the early detection and timely treatment are essential for glaucoma management. However, due to the interindividual variability in the characteristics of glaucoma onset, a single feature is not yet sufficient for monitoring glaucoma progression in isolation. There is an urgent need to develop more comprehensive diagnostic methods with higher accuracy. In this study, we proposed a multi- feature deep learning (MFDL) system based on intraocular pressure (IOP), color fundus photograph (CFP) and visual field (VF) to classify the glaucoma into four severity levels. We designed a three-phase framework for glaucoma severity diagnosis from coarse to fine, which contains screening, detection and classification. We trained it on 6,131 samples from 3,324 patients and tested it on independent 240 samples from 185 patients. Our results show that MFDL achieved a higher accuracy of 0.842 (95 % CI, 0.795-0.888) than the direct four classification deep learning (DFC-DL, accuracy of 0.513 [0.449-0.576]), CFP-based single-feature deep learning (CFP-DL, accuracy of 0.483 [0.420-0.547]) and VF-based single-feature deep learning (VF-DL, accuracy of 0.725 [0.668-0.782]). Its performance was statistically significantly superior to that of 8 juniors. It also outperformed 3 seniors and 1 expert, and was comparable with 2 glaucoma experts (0.842 vs 0.854, p = 0.663; 0.842 vs 0.858, p = 0.580). With the assistance of MFDL, junior ophthalmologists achieved statistically significantly higher accuracy performance, with the increased accuracy ranged from 7.50 % to 17.9 %, and that of seniors and experts were 6.30 % to 7.50 % and 5.40 % to 7.50 %. The mean diagnosis time per patient of MFDL was 5.96 s. The proposed model can potentially assist ophthalmologists in efficient and accurate glaucoma diagnosis that could aid the clinical management of glaucoma.
青光眼是不可逆失明的主要原因,早期发现和及时治疗对于青光眼的管理至关重要。然而,由于青光眼发病特征的个体间差异,单一特征尚不足以单独监测青光眼的进展。因此,迫切需要开发更全面、更准确的诊断方法。在这项研究中,我们提出了一种基于眼压(IOP)、眼底彩色照相(CFP)和视野(VF)的多特征深度学习(MFDL)系统,用于将青光眼分为四个严重程度级别。我们设计了一个从粗到细的青光眼严重程度诊断的三阶段框架,包括筛查、检测和分类。我们在 3324 名患者的 6131 个样本上进行了训练,并在 185 名患者的 240 个独立样本上进行了测试。我们的结果表明,MFDL 的准确率为 0.842(95%置信区间,0.795-0.888),高于直接四分类深度学习(DFC-DL,准确率为 0.513 [0.449-0.576])、基于 CFP 的单特征深度学习(CFP-DL,准确率为 0.483 [0.420-0.547])和基于 VF 的单特征深度学习(VF-DL,准确率为 0.725 [0.668-0.782])。其性能明显优于 8 位初级医师,也优于 3 位高级医师和 1 位专家,与 2 位青光眼专家相当(0.842 与 0.854,p=0.663;0.842 与 0.858,p=0.580)。在 MFDL 的辅助下,初级眼科医生的准确率明显提高,准确率提高幅度为 7.50%至 17.9%,高级和专家的准确率提高幅度为 6.30%至 7.50%和 5.40%至 7.50%。MFDL 每位患者的平均诊断时间为 5.96 秒。该模型有望帮助眼科医生进行高效、准确的青光眼诊断,辅助青光眼的临床管理。