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Multi-categorical deep learning neural network to classify retinal images: A pilot study employing small database

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  • Joon Yul Choi
  • Tae Keun Yoo
  • Jeong Gi Seo
  • Jiyong Kwak
  • Terry Taewoong Um
  • Tyler Hyungtaek Rim

Abstract

Deep learning emerges as a powerful tool for analyzing medical images. Retinal disease detection by using computer-aided diagnosis from fundus image has emerged as a new method. We applied deep learning convolutional neural network by using MatConvNet for an automated detection of multiple retinal diseases with fundus photographs involved in STructured Analysis of the REtina (STARE) database. Dataset was built by expanding data on 10 categories, including normal retina and nine retinal diseases. The optimal outcomes were acquired by using a random forest transfer learning based on VGG-19 architecture. The classification results depended greatly on the number of categories. As the number of categories increased, the performance of deep learning models was diminished. When all 10 categories were included, we obtained results with an accuracy of 30.5%, relative classifier information (RCI) of 0.052, and Cohen’s kappa of 0.224. Considering three integrated normal, background diabetic retinopathy, and dry age-related macular degeneration, the multi-categorical classifier showed accuracy of 72.8%, 0.283 RCI, and 0.577 kappa. In addition, several ensemble classifiers enhanced the multi-categorical classification performance. The transfer learning incorporated with ensemble classifier of clustering and voting approach presented the best performance with accuracy of 36.7%, 0.053 RCI, and 0.225 kappa in the 10 retinal diseases classification problem. First, due to the small size of datasets, the deep learning techniques in this study were ineffective to be applied in clinics where numerous patients suffering from various types of retinal disorders visit for diagnosis and treatment. Second, we found that the transfer learning incorporated with ensemble classifiers can improve the classification performance in order to detect multi-categorical retinal diseases. Further studies should confirm the effectiveness of algorithms with large datasets obtained from hospitals.

Suggested Citation

  • Joon Yul Choi & Tae Keun Yoo & Jeong Gi Seo & Jiyong Kwak & Terry Taewoong Um & Tyler Hyungtaek Rim, 2017. "Multi-categorical deep learning neural network to classify retinal images: A pilot study employing small database," PLOS ONE, Public Library of Science, vol. 12(11), pages 1-16, November.
  • Handle: RePEc:plo:pone00:0187336
    DOI: 10.1371/journal.pone.0187336
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    1. Zhaoyi Xu & Yuqing Zeng & Yangrong Xue & Shenggang Yang, 2022. "Early Warning of Chinese Yuan’s Exchange Rate Fluctuation and Value at Risk Measure Using Neural Network Joint Optimization Algorithm," Computational Economics, Springer;Society for Computational Economics, vol. 60(4), pages 1293-1315, December.
    2. Mingxiang Zhu & Guangming Zhang & Lingxiu Zhang & Weisong Han & Zhihan Shi & Xiaodong Lv, 2022. "Object Segmentation by Spraying Robot Based on Multi-Layer Perceptron," Energies, MDPI, vol. 16(1), pages 1-18, December.

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