Department of Ophthalmology, Miguel Servet University Hospital, Zaragoza, Spain; Aragon Institute for Health Research (IIS Aragon). Miguel Servet Ophthalmology Innovation and Research Group (GIMSO), University of Zaragoza, Spain; RETICS: Thematic Networks for Co-operative Research in Health for Ocular Diseases, Spain.
School of Physics, University of Melbourne, VIC, 3010, Australia.
Comput Biol Med. 2021 Feb;129:104165. doi: 10.1016/j.compbiomed.2020.104165. Epub 2020 Dec 3.
The consequences of inflammation, demyelination, axonal degeneration and neuronal loss in the central nervous system, typical of the development of multiple sclerosis (MS), are manifested in thinning of the retina and optic nerve. The purpose of this work is to diagnose early-stage MS patients based on analysis of retinal layer thickness obtained by swept-source optical coherence tomography (SS-OCT).
OCT (Triton® SS-OCT device -Topcon, Tokyo, Japan-) recordings were obtained from 48 control subjects and 48 recently diagnosed MS patients. The following thicknesses were measured on a 45 × 60 grid: retinal nerve fibre layer (RNFL), ganglion cell layer (GCL+), GCL++, retinal thickness and choroid. Using Cohen's d effect size, it was determined the regions and layers with greatest capacity to discriminate between control subjects and patients. Points exceeding the threshold set were used as inputs for an automatic classifier: support vector machine and feed-forward neural network.
In MS at clinical onset the layer with greatest discriminant capacity is GCL++ [AUC = 0.83] which exhibits a horseshoe-like macular topographic distribution. It is followed by retina, GCL+ and RNFL; choroidal thicknesses do not provide discriminatory capacity. Using a neural network as a classifier between controls and MS patients, obtains sensitivity of 0.98 and specificity of 0.98.
This work suggest that OCT may serve as an important complementary role to other clinical tests, particularly regarding neurodegeneration. It is possible to characterise structural alterations in retina and diagnose early-stage MS with high degree of accuracy using OCT and artificial neural networks.
中枢神经系统炎症、脱髓鞘、轴突变性和神经元丢失是多发性硬化症(MS)发展的典型特征,这些特征表现为视网膜和视神经变薄。本研究旨在基于扫频源光学相干断层扫描(SS-OCT)获得的视网膜层厚度来诊断早期 MS 患者。
对 48 名对照受试者和 48 名近期诊断的 MS 患者进行 OCT(Triton® SS-OCT 设备- Topcon,东京,日本)记录。在 45×60 网格上测量以下厚度:视网膜神经纤维层(RNFL)、节细胞层(GCL+)、GCL++、视网膜厚度和脉络膜。使用 Cohen's d 效应大小确定区分对照组和患者的能力最强的区域和层。超过设定阈值的点被用作自动分类器的输入:支持向量机和前馈神经网络。
在临床发病的 MS 中,具有最大判别能力的层是 GCL++[AUC=0.83],其呈现出马蹄形的黄斑拓扑分布。其次是视网膜、GCL+和 RNFL;脉络膜厚度没有提供判别能力。使用神经网络作为对照组和 MS 患者之间的分类器,获得了 0.98 的敏感性和 0.98 的特异性。
本研究表明,OCT 可能作为其他临床测试的重要补充手段,特别是在神经退行性疾病方面。使用 OCT 和人工神经网络可以对视网膜的结构改变进行特征描述,并以高精度诊断早期 MS。