Author:
Zhou Panyun,Cao Yanzhen,Li Min,Ma Yuhua,Chen Chen,Gan Xiaojing,Wu Jianying,Lv Xiaoyi,Chen Cheng
Abstract
AbstractHistopathological image analysis is the gold standard for pathologists to grade colorectal cancers of different differentiation types. However, the diagnosis by pathologists is highly subjective and prone to misdiagnosis. In this study, we constructed a new attention mechanism named MCCBAM based on channel attention mechanism and spatial attention mechanism, and developed a computer-aided diagnosis (CAD) method based on CNN and MCCBAM, called HCCANet. In this study, 630 histopathology images processed with Gaussian filtering denoising were included and gradient-weighted class activation map (Grad-CAM) was used to visualize regions of interest in HCCANet to improve its interpretability. The experimental results show that the proposed HCCANet model outperforms four advanced deep learning (ResNet50, MobileNetV2, Xception, and DenseNet121) and four classical machine learning (KNN, NB, RF, and SVM) techniques, achieved 90.2%, 85%, and 86.7% classification accuracy for colorectal cancers with high, medium, and low differentiation levels, respectively, with an overall accuracy of 87.3% and an average AUC value of 0.9.In addition, the MCCBAM constructed in this study outperforms several commonly used attention mechanisms SAM, SENet, SKNet, Non_Local, CBAM, and BAM on the backbone network. In conclusion, the HCCANet model proposed in this study is feasible for postoperative adjuvant diagnosis and grading of colorectal cancer.
Funder
Xinjiang Autonomous Region Science and Technology Plan Project
National Natural Science Foundation of China
Karamay Central Hospital Project: Research on Molecular Mechanism and Application of DNA Methylation Liquid Biopsy in the 'Prevention, Diagnosis and Treatment' of Malignant Tumors
the Xinjiang Uygur Autonomous Region Science Foundation for Distinguished Young Scholars
Xinjiang Uygur Autonomous Region Science Foundation for Distinguished Young Scholars
Publisher
Springer Science and Business Media LLC
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