Research Article

Evaluating CNN Architectures and Transfer Learning for Histopathological Classification of Lung and Colon Cancer

Volume: 12 Number: 4 December 31, 2025
EN

Evaluating CNN Architectures and Transfer Learning for Histopathological Classification of Lung and Colon Cancer

Abstract

Lung and colon cancers are among the most prevalent and fatal diseases worldwide, characterized by high morbidity and mortality rates. In recent years, several state-of-the-art convolutional neural network (CNN) architectures, including VGG19, ResNet50, InceptionV3, MobileNetV2, and EfficientNet-B4, have demonstrated remarkable performance in histopathological image analysis and cancer classification. Expanding on these developments, this study aims to classify lung and colon cancers based on microscopic pathology images. To this end, six different datasets (A–F) were derived from the publicly available LC25000 dataset. Various data augmentation techniques were applied, and image dimensions were standardized to ensure consistency. Multiple CNN-based models were developed and evaluated to distinguish between three classes of colon and lung cancer. Additionally, the effectiveness of transfer learning approaches was examined due to the limited number of available samples. Experimental results indicated that the EfficientNet-B4 model achieved the highest classification accuracy of 95.08%. However, despite the high accuracy, relatively lower recall, F1-score and precision values in certain cases suggest limitations in the model’s ability to consistently identify positive cases and capture all relevant examples within the dataset. These findings provide valuable insights into the strengths and weaknesses of modern CNN architectures for histopathological cancer classification and emphasize the importance of balancing accuracy with sensitivity and precision in clinical diagnostic applications.

Keywords

References

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Details

Primary Language

English

Subjects

Deep Learning

Journal Section

Research Article

Publication Date

December 31, 2025

Submission Date

September 26, 2025

Acceptance Date

November 14, 2025

Published in Issue

Year 2025 Volume: 12 Number: 4

APA
Özkan, Y. (2025). Evaluating CNN Architectures and Transfer Learning for Histopathological Classification of Lung and Colon Cancer. Gazi University Journal of Science Part A: Engineering and Innovation, 12(4), 1044-1059. https://doi.org/10.54287/gujsa.1791582
AMA
1.Özkan Y. Evaluating CNN Architectures and Transfer Learning for Histopathological Classification of Lung and Colon Cancer. GU J Sci, Part A. 2025;12(4):1044-1059. doi:10.54287/gujsa.1791582
Chicago
Özkan, Yasin. 2025. “Evaluating CNN Architectures and Transfer Learning for Histopathological Classification of Lung and Colon Cancer”. Gazi University Journal of Science Part A: Engineering and Innovation 12 (4): 1044-59. https://doi.org/10.54287/gujsa.1791582.
EndNote
Özkan Y (December 1, 2025) Evaluating CNN Architectures and Transfer Learning for Histopathological Classification of Lung and Colon Cancer. Gazi University Journal of Science Part A: Engineering and Innovation 12 4 1044–1059.
IEEE
[1]Y. Özkan, “Evaluating CNN Architectures and Transfer Learning for Histopathological Classification of Lung and Colon Cancer”, GU J Sci, Part A, vol. 12, no. 4, pp. 1044–1059, Dec. 2025, doi: 10.54287/gujsa.1791582.
ISNAD
Özkan, Yasin. “Evaluating CNN Architectures and Transfer Learning for Histopathological Classification of Lung and Colon Cancer”. Gazi University Journal of Science Part A: Engineering and Innovation 12/4 (December 1, 2025): 1044-1059. https://doi.org/10.54287/gujsa.1791582.
JAMA
1.Özkan Y. Evaluating CNN Architectures and Transfer Learning for Histopathological Classification of Lung and Colon Cancer. GU J Sci, Part A. 2025;12:1044–1059.
MLA
Özkan, Yasin. “Evaluating CNN Architectures and Transfer Learning for Histopathological Classification of Lung and Colon Cancer”. Gazi University Journal of Science Part A: Engineering and Innovation, vol. 12, no. 4, Dec. 2025, pp. 1044-59, doi:10.54287/gujsa.1791582.
Vancouver
1.Yasin Özkan. Evaluating CNN Architectures and Transfer Learning for Histopathological Classification of Lung and Colon Cancer. GU J Sci, Part A. 2025 Dec. 1;12(4):1044-59. doi:10.54287/gujsa.1791582

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