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. 2024 Feb 17;44(1):91.
doi: 10.1007/s10792-024-02982-5.

Resilient back-propagation machine learning-based classification on fundus images for retinal microaneurysm detection

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Resilient back-propagation machine learning-based classification on fundus images for retinal microaneurysm detection

S Steffi et al. Int Ophthalmol. .

Abstract

Background: The timely diagnosis of medical conditions, particularly diabetic retinopathy, relies on the identification of retinal microaneurysms. However, the commonly used retinography method poses a challenge due to the diminutive dimensions and limited differentiation of microaneurysms in images.

Problem statement: Automated identification of microaneurysms becomes crucial, necessitating the use of comprehensive ad-hoc processing techniques. Although fluorescein angiography enhances detectability, its invasiveness limits its suitability for routine preventative screening.

Objective: This study proposes a novel approach for detecting retinal microaneurysms using a fundus scan, leveraging circular reference-based shape features (CR-SF) and radial gradient-based texture features (RG-TF).

Methodology: The proposed technique involves extracting CR-SF and RG-TF for each candidate microaneurysm, employing a robust back-propagation machine learning method for training. During testing, extracted features from test images are compared with training features to categorize microaneurysm presence.

Results: The experimental assessment utilized four datasets (MESSIDOR, Diaretdb1, e-ophtha-MA, and ROC), employing various measures. The proposed approach demonstrated high accuracy (98.01%), sensitivity (98.74%), specificity (97.12%), and area under the curve (91.72%).

Conclusion: The presented approach showcases a successful method for detecting retinal microaneurysms using a fundus scan, providing promising accuracy and sensitivity. This non-invasive technique holds potential for effective screening in diabetic retinopathy and other related medical conditions.

Keywords: Adaptive thresholding; Fundus image; Gradient; Machine learning; Retinal microaneurysms.

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References

    1. Lee R, Wong TY, Sabanayagam C (2015) Epidemiology of diabetic retinopathy, diabetic macular edema, and related vision loss. Eye and vision 2(1):17 - PubMed - PMC
    1. Wilkinson C, Ferris FL, Klein RE et al (2003) Proposed international clinical diabetic retinopathy and diabetic macular edema disease severity scales. Ophthalmology 110(9):1677–1682 - PubMed
    1. Yau JW, Rogers SL, Kawasaki R et al (2012) Global prevalence and major risk factors of diabetic retinopathy. Diabetes Care 35(3):556–564 - PubMed - PMC
    1. Ahmed NGA, Hamza MF, Hassan SN (2023) Knowledge, practice and attitude of diabetic patients regarding prevention of diabetic retinopathy. J Surv Fisher Sci 10(3S):3896–3908
    1. Lyssekboron A, Wylegala A, Polanowska K, Krysik K, Dobrowolski D (2017) Longitudinal changes in retinal nerve fiber layer thickness evaluated using avanti rtvue-xr optical coherence tomography after 23g vitrectomy for epiretinal membrane in patients with open-angle glaucoma. J Healthc Eng 2017:4673714–4673714 - PubMed

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