Diabetic Retinopathy Detection Using Local Extrema Quantized Haralick Features with Long Short-Term Memory Network

Author:

Ashir Abubakar M.1ORCID,Ibrahim Salisu2,Abdulghani Mohammed1,Ibrahim Abdullahi Abdu3,Anwar Mohammed S.1

Affiliation:

1. Department of Computer Engineering, Tishk International University, Erbil, KRD, Iraq

2. Department of Mathematic Education, Tishk International University, Erbil, KRD, Iraq

3. Department of Computer Engineering, Altinbas University, Istanbul, Turkey

Abstract

Diabetic retinopathy is one of the leading diseases affecting eyes. Lack of early detection and treatment can lead to total blindness of the diseased eyes. Recently, numerous researchers have attempted producing automatic diabetic retinopathy detection techniques to supplement diagnosis and early treatment of diabetic retinopathy symptoms. In this manuscript, a new approach has been proposed. The proposed approach utilizes the feature extracted from the fundus image using a local extrema information with quantized Haralick features. The quantized features encode not only the textural Haralick features but also exploit the multiresolution information of numerous symptoms in diabetic retinopathy. Long Short-Term Memory network together with local extrema pattern provides a probabilistic approach to analyze each segment of the image with higher precision which helps to suppress false positive occurrences. The proposed approach analyzes the retina vasculature and hard-exudate symptoms of diabetic retinopathy on two different public datasets. The experimental results evaluated using performance matrices such as specificity, accuracy, and sensitivity reveal promising indices. Similarly, comparison with the related state-of-the-art researches highlights the validity of the proposed method. The proposed approach performs better than most of the researches used for comparison.

Publisher

Hindawi Limited

Subject

Radiology, Nuclear Medicine and imaging

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