TY - JOUR
T1 - Image Fundus Classification System for Diabetic Retinopathy Stage Detection Using Hybrid CNN-DELM
AU - Novitasari, Dian Candra Rini
AU - Fatmawati, Fatmawati
AU - Hendradi, Rimuljo
AU - Rohayani, Hetty
AU - Nariswari, Rinda
AU - Arnita, Arnita
AU - Hadi, Moch Irfan
AU - Saputra, Rizal Amegia
AU - Primadewi, Ardhin
N1 - Publisher Copyright:
© 2022 by the authors.
PY - 2022/12
Y1 - 2022/12
N2 - Diabetic retinopathy is the leading cause of blindness suffered by working-age adults. The increase in the population diagnosed with DR can be prevented by screening and early treatment of eye damage. This screening process can be conducted by utilizing deep learning techniques. In this study, the detection of DR severity was carried out using the hybrid CNN-DELM method (CDELM). The CNN architectures used were ResNet-18, ResNet-50, ResNet-101, GoogleNet, and DenseNet. The learning outcome features were further classified using the DELM algorithm. The comparison of CNN architecture aimed to find the best CNN architecture for fundus image features extraction. This research also compared the effect of using the kernel function on the performance of DELM in fundus image classification. All experiments using CDELM showed maximum results, with an accuracy of 100% in the DRIVE data and the two-class MESSIDOR data. Meanwhile, the best results obtained in the MESSIDOR 4 class data reached 98.20%. The advantage of the DELM method compared to the conventional CNN method is that the training time duration is much shorter. CNN takes an average of 30 min for training, while the CDELM method takes only an average of 2.5 min. Based on the value of accuracy and duration of training time, the CDELM method had better performance than the conventional CNN method.
AB - Diabetic retinopathy is the leading cause of blindness suffered by working-age adults. The increase in the population diagnosed with DR can be prevented by screening and early treatment of eye damage. This screening process can be conducted by utilizing deep learning techniques. In this study, the detection of DR severity was carried out using the hybrid CNN-DELM method (CDELM). The CNN architectures used were ResNet-18, ResNet-50, ResNet-101, GoogleNet, and DenseNet. The learning outcome features were further classified using the DELM algorithm. The comparison of CNN architecture aimed to find the best CNN architecture for fundus image features extraction. This research also compared the effect of using the kernel function on the performance of DELM in fundus image classification. All experiments using CDELM showed maximum results, with an accuracy of 100% in the DRIVE data and the two-class MESSIDOR data. Meanwhile, the best results obtained in the MESSIDOR 4 class data reached 98.20%. The advantage of the DELM method compared to the conventional CNN method is that the training time duration is much shorter. CNN takes an average of 30 min for training, while the CDELM method takes only an average of 2.5 min. Based on the value of accuracy and duration of training time, the CDELM method had better performance than the conventional CNN method.
KW - CNN architecture
KW - DELM classification
KW - diabetic retinopathy
KW - feature learning
UR - http://www.scopus.com/inward/record.url?scp=85144598360&partnerID=8YFLogxK
U2 - 10.3390/bdcc6040146
DO - 10.3390/bdcc6040146
M3 - Article
AN - SCOPUS:85144598360
SN - 2504-2289
VL - 6
JO - Big Data and Cognitive Computing
JF - Big Data and Cognitive Computing
IS - 4
M1 - 146
ER -