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Published in: Acta Diabetologica 10/2023

27-06-2023 | Diabetic Retinopathy | Original Article

Convolutional neural network-based sea lion optimization algorithm for the detection and classification of diabetic retinopathy

Authors: S. V. Hemanth, Saravanan Alagarsamy, T. Dhiliphan Rajkumar

Published in: Acta Diabetologica | Issue 10/2023

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Abstract

Aims

Diabetic retinopathy (DR) becomes a complicated type of diabetic that causes damage to the blood vessels of the retina’s light-sensitive tissue. DR may initially cause mild symptoms or no symptoms. But prolonged DR results in permanent vision loss, and hence, it is necessary to detect the DR at an early stage.

Methods

Manual diagnosing of DR retina fundus image is a time-consuming process and sometimes leads to misdiagnosis. The existing DR detection model faces few shortcomings in case of improper detection accuracy, higher loss or error values, high feature dimensionality, not suitable for large datasets, high computational complexity, poor performances, unbalanced and limited number of data points, and so on. As a result, the DR is diagnosed in this paper through four critical phases to tackle the shortcomings. The retinal images are cropped during preprocessing to reduce unwanted noises and redundant data. The images are then segmented using a modified level set algorithm based on pixel characteristics.

Results

Here, an Aquila optimizer is employed in extracting the segmented image. Finally, for optimal classification of DR images, the study proposes a convolutional neural network-oriented sea lion optimization (CNN-SLO) algorithm. Here, the CNN-SLO algorithm classifies the retinal images into five classes (healthy, moderate, mild, proliferative and severe).

Conclusion

The experimental investigation is performed for Kaggle datasets with respect to diverse evaluation measures to deliberate the performances of the proposed system.
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Metadata
Title
Convolutional neural network-based sea lion optimization algorithm for the detection and classification of diabetic retinopathy
Authors
S. V. Hemanth
Saravanan Alagarsamy
T. Dhiliphan Rajkumar
Publication date
27-06-2023
Publisher
Springer Milan
Published in
Acta Diabetologica / Issue 10/2023
Print ISSN: 0940-5429
Electronic ISSN: 1432-5233
DOI
https://doi.org/10.1007/s00592-023-02122-y

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