Araştırma Makalesi

Deep Learning Approaches for Retinal Image Classification: A Comparative Study of GoogLeNet and ResNet Architectures

Cilt: 8 Sayı: 2 30 Aralık 2024
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Deep Learning Approaches for Retinal Image Classification: A Comparative Study of GoogLeNet and ResNet Architectures

Öz

This study evaluates the performance of four deep learning models, namely GoogLeNet (InceptionV3), ResNet-18, ResNet-50, and ResNet-101, in classifying Optical Coherence Tomography (OCT) images. Images were pre-processed by resizing them to 224x224 pixels and normalizing the pixel values. The models were fine-tuned using pre-trained weights from ImageNet dataset and trained for 10 iterations using categorical_crossentropy loss function and Adam optimizer. Performance metrics such as accuracy, precision, recall, specificity, and F1 score were calculated for each model. The results show that ResNet-101 outperforms other models with 96.69% accuracy, 96.85% sensitivity, and 98.90% specificity. ResNet-50 also showed high performance, while ResNet-18 showed the lowest performance with 33.99% accuracy. GoogLeNet achieved moderate results with 72.21% accuracy. ROC curves and confusion matrices are used to visualize the classification performance. ResNet-101 and ResNet-50 show superior performance in all classes, while ResNet-18 and GoogLeNet have higher misclassification rates. This study highlights the importance of model depth and residual connections in improving the classification performance of OCT images. The findings show that deeper models such as ResNet-50 and ResNet-101 are more effective in capturing complex features, leading to better classification accuracy.

Anahtar Kelimeler

Kaynakça

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  3. [3] A. Khan, K. Pin, A. Aziz, J. W. Han, and Y. Nam, "Optical coherence tomography image classification using hybrid deep learning and ant colony optimization," Sensors, vol. 23, no. 15, p. 6706, 2023.
  4. [4] F. Li et al., "Deep learning-based automated detection of retinal diseases using optical coherence tomography images," Biomedical optics express, vol. 10, no. 12, pp. 6204-6226, 2019.
  5. [5] X. Liu et al., "A deep learning based pipeline for optical coherence tomography angiography," Journal of Biophotonics, vol. 12, no. 10, p. e201900008, 2019.
  6. [6] J. Yoon et al., "Optical coherence tomography-based deep-learning model for detecting central serous chorioretinopathy," Scientific reports, vol. 10, no. 1, p. 18852, 2020.
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Ayrıntılar

Birincil Dil

İngilizce

Konular

Görüntü İşleme

Bölüm

Araştırma Makalesi

Erken Görünüm Tarihi

30 Aralık 2024

Yayımlanma Tarihi

30 Aralık 2024

Gönderilme Tarihi

28 Temmuz 2024

Kabul Tarihi

23 Ekim 2024

Yayımlandığı Sayı

Yıl 2024 Cilt: 8 Sayı: 2

Kaynak Göster

APA
Gencer, K., Gencer, G., & Cizmeci, İ. H. (2024). Deep Learning Approaches for Retinal Image Classification: A Comparative Study of GoogLeNet and ResNet Architectures. International Scientific and Vocational Studies Journal, 8(2), 123-128. https://doi.org/10.47897/bilmes.1523768
AMA
1.Gencer K, Gencer G, Cizmeci İH. Deep Learning Approaches for Retinal Image Classification: A Comparative Study of GoogLeNet and ResNet Architectures. ISVOS. 2024;8(2):123-128. doi:10.47897/bilmes.1523768
Chicago
Gencer, Kerem, Gülcan Gencer, ve İnayet Hakkı Cizmeci. 2024. “Deep Learning Approaches for Retinal Image Classification: A Comparative Study of GoogLeNet and ResNet Architectures”. International Scientific and Vocational Studies Journal 8 (2): 123-28. https://doi.org/10.47897/bilmes.1523768.
EndNote
Gencer K, Gencer G, Cizmeci İH (01 Aralık 2024) Deep Learning Approaches for Retinal Image Classification: A Comparative Study of GoogLeNet and ResNet Architectures. International Scientific and Vocational Studies Journal 8 2 123–128.
IEEE
[1]K. Gencer, G. Gencer, ve İ. H. Cizmeci, “Deep Learning Approaches for Retinal Image Classification: A Comparative Study of GoogLeNet and ResNet Architectures”, ISVOS, c. 8, sy 2, ss. 123–128, Ara. 2024, doi: 10.47897/bilmes.1523768.
ISNAD
Gencer, Kerem - Gencer, Gülcan - Cizmeci, İnayet Hakkı. “Deep Learning Approaches for Retinal Image Classification: A Comparative Study of GoogLeNet and ResNet Architectures”. International Scientific and Vocational Studies Journal 8/2 (01 Aralık 2024): 123-128. https://doi.org/10.47897/bilmes.1523768.
JAMA
1.Gencer K, Gencer G, Cizmeci İH. Deep Learning Approaches for Retinal Image Classification: A Comparative Study of GoogLeNet and ResNet Architectures. ISVOS. 2024;8:123–128.
MLA
Gencer, Kerem, vd. “Deep Learning Approaches for Retinal Image Classification: A Comparative Study of GoogLeNet and ResNet Architectures”. International Scientific and Vocational Studies Journal, c. 8, sy 2, Aralık 2024, ss. 123-8, doi:10.47897/bilmes.1523768.
Vancouver
1.Kerem Gencer, Gülcan Gencer, İnayet Hakkı Cizmeci. Deep Learning Approaches for Retinal Image Classification: A Comparative Study of GoogLeNet and ResNet Architectures. ISVOS. 01 Aralık 2024;8(2):123-8. doi:10.47897/bilmes.1523768

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