Leveraging Transfer Learning as Feature Extractors for Lung Cancer Classification: Insights from VGG19 and ResNet152 Pipelines

Activity: Talk or presentationPresentation at conference/workshop/seminar

Description

Lung cancer remains a significant global health challenge, with early detection being crucial for improving patient outcomes. This study explores the use of transfer learning in enhancing the diagnostic accuracy of lung cancer classification from CT images. Specifically, it compares the effectiveness of two transfer learning pipelines utilizing pre-trained models, VGG19 and ResNet152, as feature extractors combined with Logistic Regression (LR) for classification. The results demonstrate that the VGG16 + LR pipeline outperforms the ResNet152 pipeline, achieving superior classification accuracy for both validation and testing datasets at 97%, respectively. This finding underscores the potential of transfer learning in medical imaging, offering a promising approach to improving early detection and treatment strategies for lung cancer.
Period22 Aug 2024
Event titleInternational Conference on Intelligent Manufacturing and Robotics 2024
Event typeConference
LocationTaicang, Suzhou, ChinaShow on map
Degree of RecognitionInternational