Abstract
AbstractBackgroundThe diagnosis of multiple sclerosis (MS) d requires demyelinating events that are disseminated in time and space. Peripapillary retinal nerve fiber layer (pRNFL) thickness as measured by optical coherence tomography (OCT) distinguishes eyes with a prior history of acute optic neuritis (ON) and may provide evidence to support a demyelinating attack.ObjectiveTo investigate whether a deep learning (DL)-based network can distinguish between eyes with prior ON and healthy control (HC) eyes using peripapillary ring scans.MethodsWe included 1,033 OCT scans from 415 healthy eyes (213 HC subjects) and 510 peripapillary ring scans from 164 eyes with prior acute ON (140 patients with MS). Data were split into 70% training (728 HC and 352 ON), 15% validation (152 HC and 79 ON), and 15% test data (153 HC and 79 ON). We included 102 OCT scans from 80 healthy eyes (40 HC) and 61 scans from 40 ON eyes (31 MS patients) from an independent second center. Receiver operating characteristic curve (ROC) analyses with area under the curve (AUC) were used to investigate performance.ResultsWe used a dilated residual convolutional neural network with alternating convolutional and max pooling layers for the classification. A final network using 2-factor augmentation had an accuracy of 0.85. The network achieved an area under the curve (AUC) of 0.86, whereas pRNFL only had an AUC of 0.77 in recognizing ON eyes. Using data from a second center, the network achieved an accuracy of 0.77 and an AUC of 0.90 compared to pRNFL, which had an AUC of 0.84.ConclusionDL-based disease classification of prior ON is feasible and has the potential to outperform thickness-based classification of eyes with and without history of prior ON.
Publisher
Cold Spring Harbor Laboratory