4.6 Article

Improvement of Gastroscopy Classification Performance Through Image Augmentation Using a Gradient-Weighted Class Activation Map

Journal

IEEE ACCESS
Volume 10, Issue -, Pages 99361-99369

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/ACCESS.2022.3207839

Keywords

Cancer; Lesions; Sensitivity; Endoscopes; Deep learning; Convolutional neural networks; Training data; Clinical diagnosis; Image augmentation; Gastrointestinal tract; Class activation map; classification; computer-aided diagnosis (CADx); deep learning; gastroscopy; image augmentation

Funding

  1. Gyeongsang National University Hospital, South Korea [GNUH 2017-09-019-003]

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This report proposes utilizing a deep learning CADx system to classify normal and abnormal gastric cancer, gastritis, and gastric ulcer. The dataset augmentation approach using CAM has been shown to effectively improve the performance of the CADx system.
Endoscopic specialists performing gastroscopy, which relies on the naked eye, may benefit from a computer-aided diagnosis (CADx) system that employs deep learning. This report proposes utilizing a CADx system to classify normal and abnormal gastric cancer, gastritis, and gastric ulcer. The CADx system was trained using a deep learning algorithm known as a convolutional neural network (CNN). Specifically, Xception, which includes depth-wise separable convolution, was employed as the CNN. Image augmentation was applied to improve the disadvantages of medical data, which are difficult to collect. A class activation map (CAM), an algorithm that visualizes the classified region of interest in a CNN, was used to cut and paste the image area into another image. The CAM-identified lesion location in an abnormal image was augmented by pasting it into a normal image. The normal image was divided into nine equal parts and pasted where the variance difference from the lesion was minimal. Consequently, the number of abnormal images increased by 360,905. Xception was used to train the augmented dataset. A confusion matrix was used to evaluate the performance of the gastroscopy CADx system. The performance criteria were specificity, sensitivity, F1 score, harmonic average of precision, sensitivity (recall), and AUC. The F1 score of the CADx system trained with the original dataset was 0.792 and AUC was 0.885. The dataset augmentation approach using CAM presented in this report is shown to be an effective augmentation algorithm, with performance improved to 0.835, 0.903 in terms of F1 score and AUC respectively.

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