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Evaluation of deep learning methods for early gastric cancer detection using gastroscopic images

Xiufeng Su, Qingshan Liu, Xiaozhong Gao, Liyong Ma

2023Technology and Health Care21 citationsDOIOpen Access PDF

Abstract

BACKGROUND: A timely diagnosis of early gastric cancer (EGC) can greatly reduce the death rate of patients. However, the manual detection of EGC is a costly and low-accuracy task. The artificial intelligence (AI) method based on deep learning is considered as a potential method to detect EGC. AI methods have outperformed endoscopists in EGC detection, especially with the use of the different region convolutional neural network (RCNN) models recently reported. However, no studies compared the performances of different RCNN series models. OBJECTIVE: This study aimed to compare the performances of different RCNN series models for EGC. METHODS: Three typical RCNN models were used to detect gastric cancer using 3659 gastroscopic images, including 1434 images of EGC: Faster RCNN, Cascade RCNN, and Mask RCNN. RESULTS: The models were evaluated in terms of specificity, accuracy, precision, recall, and AP. Fast RCNN, Cascade RCNN, and Mask RCNN had similar accuracy (0.935, 0.938, and 0.935). The specificity of Cascade RCNN was 0.946, which was slightly higher than 0.908 for Faster RCNN and 0.908 for Mask RCNN. CONCLUSION: Faster RCNN and Mask RCNN place more emphasis on positive detection, and Cascade RCNN places more emphasis on negative detection. These methods based on deep learning were conducive to helping in early cancer diagnosis using endoscopic images.

Topics & Concepts

Artificial intelligenceConvolutional neural networkMedicinePattern recognition (psychology)Computer scienceColorectal Cancer Screening and DetectionGastric Cancer Management and OutcomesGastrointestinal Bleeding Diagnosis and Treatment
Evaluation of deep learning methods for early gastric cancer detection using gastroscopic images | Litcius