Prediction of age-related macular degeneration disease using a sequential deep learning approach on longitudinal SD-OCT imaging biomarkers

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作者
Imon Banerjee
Luis de Sisternes
Joelle A. Hallak
Theodore Leng
Aaron Osborne
Philip J. Rosenfeld
Giovanni Gregori
Mary Durbin
Daniel Rubin
机构
[1] Emory University,Department of Biomedical Informatics
[2] Emory University,Department of Radiology
[3] Stanford University,Department of Biomedical Data Science
[4] Carl Zeiss Meditec,Department of Ophthalmology and Visual Sciences
[5] Inc.,Byers Eye Institute At Stanford
[6] University of Illinois at Chicago,Bascom Palmer Eye Institute
[7] Stanford University School of Medicine,undefined
[8] University of Miami Miller School of Medicine,undefined
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We propose a hybrid sequential prediction model called “Deep Sequence”, integrating radiomics-engineered imaging features, demographic, and visual factors, with a recursive neural network (RNN) model in the same platform to predict the risk of exudation within a future time-frame in non-exudative AMD eyes. The proposed model provides scores associated with risk of exudation in the short term (within 3 months) and long term (within 21 months), handling challenges related to variability of OCT scan characteristics and the size of the training cohort. We used a retrospective clinical trial dataset that includes 671 AMD fellow eyes with 13,954 observations before any signs of exudation for training and validation in a tenfold cross validation setting. Deep Sequence achieved high performance for the prediction of exudation within 3 months (0.96 ± 0.02 AUCROC) and within 21 months (0.97 ± 0.02 AUCROC) on cross-validation. Training the proposed model on this clinical trial dataset and testing it on an external real-world clinical dataset showed high performance for the prediction within 3-months (0.82 AUCROC) but a clear decrease in performance for the prediction within 21-months (0.68 AUCROC). While performance differences at longer time intervals may be derived from dataset differences, we believe that the high performance and generalizability achieved in short-term predictions may have a high clinical impact allowing for optimal patient follow-up, adding the possibility of more frequent, detailed screening and tailored treatments for those patients with imminent risk of exudation.
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