Ding Xiaokang, Jiang Xiaoliang, Zheng Huixia, Shi Hualuo, Wang Ban, Chan Sixian
College of Mechanical Engineering, Quzhou University, Quzhou, China.
Department of Stomatology, Quzhou People's Hospital, The Quzhou Affiliated Hospital of Wenzhou Medical University, Quzhou, China.
Front Bioeng Biotechnol. 2024 Aug 5;12:1454728. doi: 10.3389/fbioe.2024.1454728. eCollection 2024.
Jaw cyst is a fluid-containing cystic lesion that can occur in any part of the jaw and cause facial swelling, dental lesions, jaw fractures, and other associated issues. Due to the diversity and complexity of jaw images, existing deep-learning methods still have challenges in segmentation. To this end, we propose MARes-Net, an innovative multi-scale attentional residual network architecture. Firstly, the residual connection is used to optimize the encoder-decoder process, which effectively solves the gradient disappearance problem and improves the training efficiency and optimization ability. Secondly, the scale-aware feature extraction module (SFEM) significantly enhances the network's perceptual abilities by extending its receptive field across various scales, spaces, and channel dimensions. Thirdly, the multi-scale compression excitation module (MCEM) compresses and excites the feature map, and combines it with contextual information to obtain better model performance capabilities. Furthermore, the introduction of the attention gate module marks a significant advancement in refining the feature map output. Finally, rigorous experimentation conducted on the original jaw cyst dataset provided by Quzhou People's Hospital to verify the validity of MARes-Net architecture. The experimental data showed that precision, recall, IoU and F1-score of MARes-Net reached 93.84%, 93.70%, 86.17%, and 93.21%, respectively. Compared with existing models, our MARes-Net shows its unparalleled capabilities in accurately delineating and localizing anatomical structures in the jaw cyst image segmentation.
颌骨囊肿是一种含有液体的囊性病变,可发生于颌骨的任何部位,并导致面部肿胀、牙齿病变、颌骨骨折及其他相关问题。由于颌骨图像的多样性和复杂性,现有的深度学习方法在分割方面仍面临挑战。为此,我们提出了MARes-Net,一种创新的多尺度注意力残差网络架构。首先,使用残差连接来优化编码器-解码器过程,有效解决了梯度消失问题,提高了训练效率和优化能力。其次,尺度感知特征提取模块(SFEM)通过在不同尺度、空间和通道维度上扩展感受野,显著增强了网络的感知能力。第三,多尺度压缩激励模块(MCEM)对特征图进行压缩和激励,并将其与上下文信息相结合,以获得更好的模型性能。此外,注意力门模块的引入标志着在细化特征图输出方面取得了重大进展。最后,对衢州市人民医院提供的原始颌骨囊肿数据集进行了严格实验,以验证MARes-Net架构的有效性。实验数据表明,MARes-Net的精确率、召回率、交并比和F1分数分别达到93.84%、93.70%、86.17%和93.21%。与现有模型相比,我们的MARes-Net在颌骨囊肿图像分割中准确描绘和定位解剖结构方面展现出无与伦比的能力。