Kee Chuong Ting

Work place: School of Engineering and Technology, University of Technology Sarawak, 96000 Sibu, Sarawak, Malaysia

E-mail: tingkeechuong@uts.edu.my

Website: https://orcid.org/0000-0001-9352-9162

Research Interests:

Biography

Kee Chuong Ting holds a Master Degree in Mechanical Engineering. He is a registered Graduate Engineer in Mechanical Branch of Board of Engineers Malaysia (BEM) who has won the Chairman’s Award of The Institution of Engineers, Malaysia (IEM) in 2019. He has obtained First Class Honours with CGPA of 3.92/4.00 in his Bachelor Degree of Mechanical Engineering (Hons). His research interests engage reverse engineering, additive manufacturing, Internet of Things (IoT) technologies, automation system in robotic and machinery.

Author Articles
Transfer Learning with EfficientNetV2 for Diabetic Retinopathy Detection

By Michael Chi Seng Tang Huong Yong Ting Abdulwahab Funsho Atanda Kee Chuong Ting

DOI: https://doi.org/10.5815/ijem.2024.06.05, Pub. Date: 8 Dec. 2024

This paper investigates the application of EfficientNetV2, an advanced variant of EfficientNet, in diabetic retinopathy (DR) detection, a critical area in medical image analysis. Despite the extensive use of deep learning models in this domain, EfficientNetV2’s potential remains largely unexplored. The study conducts comprehensive experiments, comparing EfficientNetV2 with established models like AlexNet, GoogleNet, and various ResNet architectures. A dataset of 3662 images was used to train the models. Results indicate that EfficientNetV2 achieves competitive performance, particularly excelling in sensitivity, a crucial metric in medical image classification. With a high area under the curve (AUC) value of 98.16%, EfficientNetV2 demonstrates robust discriminatory ability. These findings underscore its potential as an effective tool for DR diagnosis, suggesting broader applicability in medical image analysis. Moreover, EfficientNetV2 contains more layers than AlexNet, GoogleNet, and ResNet architecture, which makes EfficientNetV2 the superior deep learning model for DR detection. Future research could focus on optimizing the model for specific clinical contexts and validating its real-world effectiveness through large-scale clinical trials.

[...] Read more.
Other Articles