4.6 Article

Applying Deep Transfer Learning to Assess the Impact of Imaging Modalities on Colon Cancer Detection

Journal

DIAGNOSTICS
Volume 13, Issue 10, Pages -

Publisher

MDPI
DOI: 10.3390/diagnostics13101721

Keywords

deep learning; transfer learning; classification; colon cancer; medical imaging

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This study aims to comprehensively report the performance behavior for detecting colon cancer using various imaging modalities coupled with different deep learning models in the transfer learning setting, and evaluate the best imaging modality and deep learning model for detecting colon cancer. The experimental results show that colonoscopy imaging modality, when coupled with the DenseNet201 model under the transfer learning setting, outperforms all the other models with an average accuracy of 99.1%.
The use of medical images for colon cancer detection is considered an important problem. As the performance of data-driven methods relies heavily on the images generated by a medical method, there is a need to inform research organizations about the effective imaging modalities, when coupled with deep learning (DL), for detecting colon cancer. Unlike previous studies, this study aims to comprehensively report the performance behavior for detecting colon cancer using various imaging modalities coupled with different DL models in the transfer learning (TL) setting to report the best overall imaging modality and DL model for detecting colon cancer. Therefore, we utilized three imaging modalities, namely computed tomography, colonoscopy, and histology, using five DL architectures, including VGG16, VGG19, ResNet152V2, MobileNetV2, and DenseNet201. Next, we assessed the DL models on the NVIDIA GeForce RTX 3080 Laptop GPU (16GB GDDR6 VRAM) using 5400 processed images divided equally between normal colons and colons with cancer for each of the imaging modalities used. Comparing the imaging modalities when applied to the five DL models presented in this study and twenty-six ensemble DL models, the experimental results show that the colonoscopy imaging modality, when coupled with the DenseNet201 model under the TL setting, outperforms all the other models by generating the highest average performance result of 99.1% (99.1%, 99.8%, and 99.1%) based on the accuracy results (AUC, precision, and F1, respectively).

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