Multi-Scale Feature Pyramid for Detection of Red Lesions in Fundus Images
-
Published:2023-11-30
Issue:4
Volume:12
Page:14-19
-
ISSN:2277-3878
-
Container-title:International Journal of Recent Technology and Engineering (IJRTE)
-
language:
-
Short-container-title:IJRTE
Author:
Ghorai Goutam KumarORCID, , Kundu SwagataORCID, Sarkar GautamORCID, Dhara Ashis KumarORCID, , ,
Abstract
Diabetic retinopathy (DR) is increasing rapidly around the world, but there is a shortage of experienced ophthalmologists. Therefore, computer-based diagnosis of the fundus images is essential to screening of referable DR. Automated detection of red lesions is very important for screening of DR. This paper deals with a novel method for automatic detection of red lesion. The main contribution is developing a deep learning based detection framework to handle severe class imbalance and imbalance in sizes of red lesions. The multi-scale features are extracted using the feature pyramid network. A pyramid of features is generated with strong semantics. The proposed network is end-to-end trainable in image level with several scales and works for a wide range of red lesions with acceptable performance. Sensitivity of the proposed method is 0.76 with six false-positive per image on test set of publicly available DIARECTDB1 database and outperforms state-of-the-art approaches. A potential benefit with deep learning based detection framework could be used in screening programs of referable DR.
Publisher
Blue Eyes Intelligence Engineering and Sciences Engineering and Sciences Publication - BEIESP
Subject
Management of Technology and Innovation,General Engineering
Reference26 articles.
1. Ting, D. S. W., Pasquale, L. R., Peng, L., Campbell, J. P., Lee, A. Y., Raman, R., Tan, G.S.W., Schmetterer, L., Keane, P.A. and Wong, T.Y. & Wong, T. Y. (2019). Artificial intelligence and deep learning in ophthalmology. British Journal of Ophthalmology, 103 (2), 167-175. https://doi.org/10.1136/bjophthalmol-2018-313173 2. Raman, R., Srinivasan, S., Virmani, S., Sivaprasad, S., Rao, C., & Rajalakshmi, R. (2019). Fundus photograph-based deep learning algorithms in detecting diabetic retinopathy. Eye, 33(1), 97-109. https://doi.org/10.1038/s41433-018-0269-y 3. Fleming, A. D., Philip, S., Goatman, K. A., Olson, J. A., & Sharp, P. F. (2006). Automated microaneurysm detection using local contrast normalization and local vessel detection. IEEE transactions on medical imaging, 25(9), 1223-1232. https://doi.org/10.1109/TMI.2006.879953 4. Bae, J. P., Kim, K. G., Kang, H. C., Jeong, C. B., Park, K. H., & Hwang, J. M. (2011). A study on hemorrhage detection using hybrid method in fundus images. Journal of digital imaging, 24, 394-404. https://doi.org/10.1007/s10278-010-9274-9 5. Lazar, I., & Hajdu, A. (2012). Retinal microaneurysm detection through local rotating cross-section profile analysis. IEEE transactions on medical imaging, 32(2), 400-407. https://doi.org/10.1109/TMI.2012.2228665
|
|