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		<title>Classification of Eye Diseases Using the AlexNet Convolutional Neural Network Model Algorithm</title>
		<link>https://yogatofan.com/research-publications/classification-of-eye-diseases-using-the-alexnet-convolutional-neural-network-model-algorithm/</link>
		
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		<pubDate>Wed, 05 Nov 2025 11:54:58 +0000</pubDate>
				<category><![CDATA[Riset & Publikasi]]></category>
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		<category><![CDATA[classification]]></category>
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		<category><![CDATA[eye diseases]]></category>
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					<description><![CDATA[This study uses the Convolutional Neural Network (CNN) method with the AlexNet model to classify eye diseases based on medical images. The dataset includes labeled images of three types of eye diseases: cataract, glaucoma, and diabetic retinopathy.]]></description>
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<p><strong>Authors</strong>: Moch Deny Pratama, Royal Fajar Sultoni, Adil Sandy Wardhani, Maulana Hassan Sechuti, Yerezqy Bagus, Dina Zatusiva Haq, Yoga Ari Tofan<br><strong>Year</strong>: 2025<br><strong>Publisher</strong>: IJCONSIST: International Journal Of Computer, Network Security and Information System<br><strong>Type</strong>: Journal<br><strong>DOI / URL</strong>: <a href="https://doi.org/10.33005/ijconsist.v7i1.160" data-type="link" data-id="https://doi.org/10.33005/ijconsist.v7i1.160" target="_blank" rel="noreferrer noopener">https://doi.org/10.33005/ijconsist.v7i1.160</a></p>



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<h2 class="wp-block-heading"><strong>Abstract</strong></h2>



<p>This study uses the Convolutional Neural Network (CNN) method with the AlexNet model to classify eye diseases based on medical images. The dataset includes labeled images of three types of eye diseases: cataract, glaucoma, and diabetic retinopathy. The experimental results show that the model achieved an accuracy of 75.18%, which indicates that CNN with the AlexNet architecture can classify eye diseases quite well. This research shows that deep learning can be used to help doctors or health professionals in diagnosing eye diseases through automatic image analysis. Although the accuracy still needs to be improved, this study can serve as a reference for developing an automated diagnostic system in the future. Further research is expected to increase accuracy, expand the dataset, and apply other deep learning techniques to improve the performance of eye disease detection.</p>



<p><strong>Keywords</strong>: Classification of Eye Diseases, Convolutional Neural Network, Alexnet, Deep Learning</p>



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<h2 class="wp-block-heading"><strong>Citation</strong></h2>



<p>M. Ptito, M. Bleau, and J. Bouskila, “The retina: a window into the brain,”&nbsp;<em>Cells</em>, vol. 10, no. 12, MDPI, p. 3269, 2021.</p>



<p>K. Kansal and H. Khan, “Environmental factors and eye health: Protecting your vision in a changing world,”&nbsp;<em>Int. J. Ophthalmol. Optom.</em>, vol. 5, pp. 33–35, 2023.</p>



<p>G. Arslan and Ç. B. Erdaş, “Detection of cataract, diabetic retinopathy and glaucoma eye diseases with deep learning approach,”&nbsp;<em>Intell. Methods Eng. Sci.</em>, vol. 2, no. 2, pp. 42–47, 2023.</p>



<p>D. C. R. Novitasari, P. Wulandari, and D. Z. Haq, “Cervical Cancer Diagnosis System using Convolutional Neural Network ResidualNet,”&nbsp;<em>Int. J. Comput.</em>, vol. 21, no. 1 SE-, pp. 61–68, Mar. 2022, doi: 10.47839/ijc.21.1.2518.</p>



<p>J. Sanghavi and M. Kurhekar, “Ocular disease detection systems based on fundus images: a survey,”&nbsp;<em>Multimed. Tools Appl.</em>, vol. 83, no. 7, pp. 21471–21496, 2024.</p>



<p>D. Marcella, Y. Yohannes, and S. Devella, “Klasifikasi penyakit mata menggunakan Convolutional Neural Network dengan arsitektur VGG-19,”&nbsp;<em>J. Algoritm.</em>, vol. 3, no. 1, pp. 60–70, 2022.</p>



<p>A. E. Suwanda and D. Juniati, “Klasifikasi Penyakit Mata Berdasarkan Citra Fundus Retina Menggunakan Dimensi Fraktal Box Counting Dan Fuzzy K-Means,” 2022.</p>



<p>J. Qiu, X. Lu, X. Wang, C. Chen, Y. Chen, and Y. Yang, “Research on image recognition of tomato leaf diseases based on improved AlexNet model,”&nbsp;<em>Heliyon</em>, vol. 10, no. 13, 2024.</p>



<p>G. V. Doddi, “Eye Disease Retinal Images,”&nbsp;<em>Kaggle</em>, 2022.<br><a href="https://www.kaggle.com/datasets/gunavenkatdoddi/eye-diseases-classification">https://www.kaggle.com/datasets/gunavenkatdoddi/eye-diseases-classification</a></p>



<p>H. Eldem, E. Ülker, and O. Y. Işıklı, “AlexNet architecture variations with transfer learning for classification of wound images,”&nbsp;<em>Eng. Sci. Technol. an Int. J.</em>, vol. 45, p. 101490, 2023.</p>



<p>T. Sivakumari and R. Vani, “Implementation of alexnet for classification of knee osteoarthritis,” in&nbsp;<em>2022 7th International Conference on Communication and Electronics Systems (ICCES)</em>, 2022, pp. 1405–1409.</p>



<p>S. Kavitha, B. Dhanapriya, G. N. Vignesh, and K. R. Baskaran, “Neural style transfer using vgg19 and alexnet,” in&nbsp;<em>2021 International Conference on Advancements in Electrical, Electronics, Communication, Computing and Automation (ICAECA)</em>, 2021, pp. 1–6.</p>



<p>G. Naidu, T. Zuva, and E. M. Sibanda, “A review of evaluation metrics in machine learning algorithms,” in&nbsp;<em>Computer science on-line conference</em>, 2023, pp. 15–25.</p>



<p>S. Sathyanarayanan and B. R. Tantri, “Confusion matrix-based performance evaluation metrics,”&nbsp;<em>African J. Biomed. Res.</em>, vol. 27, no. 4S, pp. 4023–4031, 2024.</p>



<p>D. Z. Haq and C. Fatichah, “Ultrasound Image Synthetic Generating Using Deep Convolution Generative Adversarial Network For Breast Cancer Identification,”&nbsp;<em>IPTEK J. Sci. Technol.</em>, vol. 34, no. 1, 2023, doi:&nbsp;<a>http://dx.doi.org/10.12962/j20882033.v34i1.14968</a>.</p>



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<h3 class="wp-block-heading">Links</h3>



<ul class="wp-block-list">
<li>Publisher Page: <a href="https://ijconsist.org/index.php/ijconsist/article/view/160" data-type="link" data-id="https://ijconsist.org/index.php/ijconsist/article/view/160" target="_blank" rel="noreferrer noopener">https://ijconsist.org/index.php/ijconsist/article/view/160</a></li>



<li>Google Scholar: <a href="https://scholar.google.com/scholar?cluster=9341093393877158497" data-type="link" data-id="https://scholar.google.com/scholar?cluster=9341093393877158497" target="_blank" rel="noreferrer noopener">https://scholar.google.com/scholar?cluster=9341093393877158497</a></li>
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