利用卷积神经网络的注意机制提高鼻咽癌MRI图像分类性能

Rongzhi Mao, Wei Song, Cheng Ge, Xiaojun Xu, Liangxu Xie
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引用次数: 0

摘要

癌症是威胁人类死亡的主要疾病之一,鼻咽癌的死亡率也很高。早期诊断对于癌症的正确治疗尤为重要。计算机辅助诊断在医学领域得到了广泛的应用。为了利用人工智能在医学成像中的应用,我们在流行的卷积神经网络ResNet50中实现了两种类型的注意力机制,以辅助鼻咽癌医学图像的分类和诊断。与基本的ResNet50结构相比,“卷积块注意模块(CBAM)”和“双注意网络(DANet)”的分类性能都得到了提高。我们的结果表明,实现位置对结果有影响。我们比较了六种实现方式,分别是CBAM-A、CBAM-B、DANet-A、DANet-B、Fusion-A和Fusion-B。在6个模型中,DANet-B实现的网络准确率为96.5%,准确率为96.8%,召回率为96.5%,F1-score为96.4%,与基本的ResNet50相比,准确率为54.4%,准确率为60.5%,召回率为54.4%,F1-score为50.6%,有显著提高。结果表明,适当实施注意机制可提高分类效果,可作为鼻咽癌的辅助诊断手段。
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Implementing Attention Mechanism in Convolutional Neural Network to Improve Performance of MRI Image Classification of Nasopharyngeal Cancer
Cancer is one of the main diseases that threaten human death, and nasopharyngeal cancer also shows a high mortality rate. The early diagnosis is particularly important in the proper treatment of cancers. Computer-aided diagnosis has been widely used in the medical field. To harness the artificial intelligence in medical imaging, we implement two types of attention mechanism in the popular convolutional neural network ResNet50 to aid classification and diagnosis of the medical images of nasopharyngeal cancer. Compared with basic ResNet50 architecture, both “Convolutional Block Attention Module (CBAM)” and “Dual Attention Network (DANet)” gain the improved classification performance. Our results show that the implementing location affects the results. We compare six types of implementing ways, named as CBAM-A, CBAM-B, DANet-A, DANet-B, Fusion-A and Fusion-B. Among six models, DANet-B implemented network achieves the 96.5% accuracy, 96.8% precision, 96.5 % recall and 96.4 % F1-score, showing significant improvement compared with the basic ResNet50 with values of 54.4% accuracy, 60.5% precision, 54.4% recall and 50.6% F1-score, respectively. The results show that proper implementing attention mechanism can improve the classification performance and may be developed as an auxiliary diagnosis approach for the Nasopharyngeal Cancer.
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