Girard Michaël J A, Panda Satish, Tun Tin Aung, Wibroe Elisabeth A, Najjar Raymond P, Aung Tin, Thiéry Alexandre H, Hamann Steffen, Fraser Clare, Milea Dan
From the Ophthalmic Engineering & Innovation Laboratory (M.J.A.G., S.P.), Singapore Eye Research Institute (T.A.T., R.P.N., T.A., D.M.), Singapore National Eye Centre; Duke-NUS Graduate Medical School (M.J.A.G., T.A.T., R.P.N., T.A., D.M.), Singapore; Institute for Molecular and Clinical Ophthalmology (M.J.A.G.), Basel, Switzerland; Department of Ophthalmology (E.A.W., S.H.), Rigshospitalet, University of Copenhagen, Denmark; Yong Loo Lin School of Medicine (R.P.N., T.A.), and Department of Statistics and Applied Probability (A.H.T.), National University of Singapore; and Save Sight Institute (C.F.), Faculty of Health and Medicine, The University of Sydney, New South Wales, Australia.
Neurology. 2023 Jan 10;100(2):e192-e202. doi: 10.1212/WNL.0000000000201350. Epub 2022 Sep 29.
The distinction of papilledema from other optic nerve head (ONH) lesions mimicking papilledema, such as optic disc drusen (ODD), can be difficult in clinical practice. We aimed the following: (1) to develop a deep learning algorithm to automatically identify major structures of the ONH in 3-dimensional (3D) optical coherence tomography (OCT) scans and (2) to exploit such information to robustly differentiate among ODD, papilledema, and healthy ONHs.
This was a cross-sectional comparative study of patients from 3 sites (Singapore, Denmark, and Australia) with confirmed ODD, those with papilledema due to raised intracranial pressure, and healthy controls. Raster scans of the ONH were acquired using OCT imaging and then processed to improve deep-tissue visibility. First, a deep learning algorithm was developed to identify major ONH tissues and ODD regions. The performance of our algorithm was assessed using the Dice coefficient. Second, a classification algorithm (random forest) was designed to perform 3-class classifications (1: ODD, 2: papilledema, and 3: healthy ONHs) strictly from their drusen and prelamina swelling scores (calculated from the segmentations). To assess performance, we reported the area under the receiver operating characteristic curve for each class.
A total of 241 patients (256 imaged ONHs, including 105 ODD, 51 papilledema, and 100 healthy ONHs) were retrospectively included in this study. Using OCT images of the ONH, our segmentation algorithm was able to isolate neural and connective tissues and ODD regions/conglomerates whenever present. This was confirmed by an averaged Dice coefficient of 0.93 ± 0.03 on the test set, corresponding to good segmentation performance. Classification was achieved with high AUCs, that is, 0.99 ± 0.001 for the detection of ODD, 0.99 ± 0.005 for the detection of papilledema, and 0.98 ± 0.01 for the detection of healthy ONHs.
Our artificial intelligence approach can discriminate ODD from papilledema, strictly using a single OCT scan of the ONH. Our classification performance was very good in the studied population, with the caveat that validation in a much larger population is warranted. Our approach may have the potential to establish OCT imaging as one of the mainstays of diagnostic imaging for ONH disorders in neuro-ophthalmology, in addition to fundus photography.
在临床实践中,区分视乳头水肿与其他模仿视乳头水肿的视神经乳头(ONH)病变,如视盘小疣(ODD),可能具有挑战性。我们旨在:(1)开发一种深度学习算法,以自动识别三维(3D)光学相干断层扫描(OCT)图像中的ONH主要结构;(2)利用这些信息,可靠地区分ODD、视乳头水肿和健康的ONH。
这是一项对来自3个地点(新加坡、丹麦和澳大利亚)的患者进行的横断面比较研究,包括确诊为ODD的患者、因颅内压升高导致视乳头水肿的患者以及健康对照。使用OCT成像获取ONH的光栅扫描图像,然后进行处理以提高深部组织的可视性。首先,开发一种深度学习算法来识别ONH主要组织和ODD区域。使用Dice系数评估我们算法的性能。其次,设计一种分类算法(随机森林),严格根据视盘小疣和筛板前肿胀评分(根据分割结果计算)进行三类分类(1:ODD,2:视乳头水肿,3:健康的ONH)。为了评估性能,我们报告了每个类别的受试者工作特征曲线下面积。
本研究共回顾性纳入241例患者(256个成像的ONH,包括105个ODD、51个视乳头水肿和100个健康的ONH)。使用ONH的OCT图像,我们的分割算法能够分离神经组织、结缔组织以及ODD区域/团块(如有)。测试集上的平均Dice系数为0.93±0.03,证实了良好的分割性能。分类的受试者工作特征曲线下面积较高,即检测ODD为0.99±0.001,检测视乳头水肿为0.99±0.005,检测健康的ONH为0.98±0.01。
我们的人工智能方法能够仅使用单次ONH的OCT扫描,区分ODD和视乳头水肿。在研究人群中,我们的分类性能非常好,但需要在更大的人群中进行验证。除眼底照相外,我们的方法可能有潜力使OCT成像成为神经眼科ONH疾病诊断成像的主要手段之一。