Litcius/Paper detail

Deep Learning for Automated Diabetic Retinopathy Screening Fused With Heterogeneous Data From EHRs Can Lead to Earlier Referral Decisions

Min‐Yen Hsu, Jeng‐Yuan Chiou, Jung-Tzu Liu, Chee-Ming Lee, Ya-Wen Lee, Chien‐Chih Chou, Shih-Chang Lo, Edy Kornelius, Yi-Sun Yang, Sung-Yen Chang, Yucheng Liu, Chien‐Ning Huang, Vincent S. Tseng

2021Translational Vision Science & Technology18 citationsDOIOpen Access PDF

Abstract

Purpose: Fundus images are typically used as the sole training input for automated diabetic retinopathy (DR) classification. In this study, we considered several well-known DR risk factors and attempted to improve the accuracy of DR screening. Metphods: Fusing nonimage data (e.g., age, gender, smoking status, International Classification of Disease code, and laboratory tests) with data from fundus images can enable an end-to-end deep learning architecture for DR screening. We propose a neural network that simultaneously trains heterogeneous data and increases the performance of DR classification in terms of sensitivity and specificity. In the current retrospective study, 13,410 fundus images and their corresponding nonimage data were collected from the Chung Shan Medical University Hospital in Taiwan. The images were classified as either nonreferable or referable for DR by a panel of ophthalmologists. Cross-validation was used for the training models and to evaluate the classification performance. Results: The proposed fusion model achieved 97.96% area under the curve with 96.84% sensitivity and 89.44% specificity for determining referable DR from multimodal data, and significantly outperformed the models that used image or nonimage information separately. Conclusions: The fusion model with heterogeneous data has the potential to improve referable DR screening performance for earlier referral decisions. Translational Relevance: Artificial intelligence fused with heterogeneous data from electronic health records could provide earlier referral decisions from DR screening.

Topics & Concepts

MedicineReferralDiabetic retinopathyFundus (uterus)Artificial intelligenceDeep learningMachine learningComputer scienceHealth recordsOptometryOphthalmologyFamily medicineDiabetes mellitusHealth careEconomic growthEconomicsEndocrinologyRetinal Imaging and AnalysisRetinal Diseases and TreatmentsRetinal and Optic Conditions