RT Journal Article A1 Kuht, Helen A1 Wang, Shuihua A1 Nishad, Garima A1 George, Sharon A1 Maconachie, Gail A1 Sheth, Viral A1 Tu, Zhanhan A1 Hisaund, Michael A1 McLean, Rebecca A1 Teli, Seema A1 Proudlock, Frank A1 Varma, Girish A1 Zhang, Yu-Dong A1 Gottlob, Irene A1 Thomas, Mervyn George T1 Using Artificial Intelligence (AI) to Classify Retinal Developmental Disorders JF Investigative Ophthalmology & Visual Science JO Invest. Ophthalmol. Vis. Sci. YR 2020 VO 61 IS 7 SP 4030 OP 4030 SN 1552-5783 AB Artificial intelligence (AI) is particularly effective in image recognition as demonstrated in radiology, pathology and recently ophthalmology. Foveal hypoplasia (FH) is a group of disorders characterised by arrested retinal development and often associated with infantile nystagmus. Identifying the degree of arrested retinal development using optical coherence tomography (OCT) is paramount as this information provides both diagnostic and prognostic value. To date, there are no AI systems available for paediatric OCT or childhood nystagmus. We aimed to develop a quick, automated AI system to accurately differentiate normal foveal structure and grades of FH in paediatric retinal OCT images. We used the Leicester paediatric OCT database to obtain normal and abnormal developmental scans. This included scans with varying degrees of arrested retinal development (Grades 1-4 FH and atypical FH). Representative high yield training datasets (3040 foveal B-scans) were extracted from >20,000 volumetric B-scans. The foveal B-scans were subsequently segmented and annotated. A series of convolutional neural networks (AI algorithms: Densenet201 and Resnet50) were used to train and validate the AI system to differentiate between normal, grade 1-4 FH and atypical FH. Following training of the AI system, we performed validation on different pathologies. We achieved a binary and 6-point classification, by replacing the 1000-neuron fully connected (FC) layer with a new 2-neuron FC. The AI system was able to successfully differentiate normal and abnormal scans with a 97.68% accuracy. Furthermore, the six point classification system (normal, grade 1-4 FH and atypical FH) achieved a 93.54% validation accuracy. Our study has, for the first time, demonstrated a successful outcome for classification of retinal developmental disorders using AI. These results provide proof-of-concept for the use of AI in paediatric ophthalmology. The introduction of this system will help to eliminate inter-examiner variability with interpretation of scans and increase time efficiency on busy clinics. This work has provided a strong foundation for prospective testing using our AI algorithm, thus bringing us closer to implementation of a real-time intelligent diagnostic system for paediatric OCT. This is a 2020 ARVO Annual Meeting abstract. Figure 1: Overview of our AI algorithm Figure 2: Validation accuracy per epoch over time with the 6-point classification RD 3/1/2021