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Leveraging Multimodal Deep Learning Architecture with Retina Lesion Information to Detect Diabetic Retinopathy.
- Source :
-
Translational vision science & technology [Transl Vis Sci Technol] 2020 Jul 16; Vol. 9 (2), pp. 41. Date of Electronic Publication: 2020 Jul 16 (Print Publication: 2020). - Publication Year :
- 2020
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Abstract
- Purpose: To improve disease severity classification from fundus images using a hybrid architecture with symptom awareness for diabetic retinopathy (DR).<br />Methods: We used 26,699 fundus images of 17,834 diabetic patients from three Taiwanese hospitals collected in 2007 to 2018 for DR severity classification. Thirty-seven ophthalmologists verified the images using lesion annotation and severity classification as the ground truth. Two deep learning fusion architectures were proposed: late fusion, which combines lesion and severity classification models in parallel using a postprocessing procedure, and two-stage early fusion, which combines lesion detection and classification models sequentially and mimics the decision-making process of ophthalmologists. Messidor-2 was used with 1748 images to evaluate and benchmark the performance of the architecture. The primary evaluation metrics were classification accuracy, weighted κ statistic, and area under the receiver operating characteristic curve (AUC).<br />Results: For hospital data, a hybrid architecture achieved a good detection rate, with accuracy and weighted κ of 84.29% and 84.01%, respectively, for five-class DR grading. It also classified the images of early stage DR more accurately than conventional algorithms. The Messidor-2 model achieved an AUC of 97.09% in referral DR detection compared to AUC of 85% to 99% for state-of-the-art algorithms that learned from a larger database.<br />Conclusions: Our hybrid architectures strengthened and extracted characteristics from DR images, while improving the performance of DR grading, thereby increasing the robustness and confidence of the architectures for general use.<br />Translational Relevance: The proposed fusion architectures can enable faster and more accurate diagnosis of various DR pathologies than that obtained in current manual clinical practice.<br />Competing Interests: Disclosure: V.S. Tseng, None; C.-L. Chen, None; C.-M. Liang, None; M.-C. Tai, None; J.-T. Liu, None; P.-Y. Wu, None; M.-S. Deng, None; Y.-W. Lee, None; T.-Y. Huang, None; Y.-H. Chen, None<br /> (Copyright 2020 The Authors.)
Details
- Language :
- English
- ISSN :
- 2164-2591
- Volume :
- 9
- Issue :
- 2
- Database :
- MEDLINE
- Journal :
- Translational vision science & technology
- Publication Type :
- Academic Journal
- Accession number :
- 32855845
- Full Text :
- https://doi.org/10.1167/tvst.9.2.41