Ma Ting, Wang Ke, Hu Feng
Southwest Petroleum University, Chengdu, China.
Jiangsu Citron Biotech Company Limited, Nantong, China.
Med Biol Eng Comput. 2024 Jan;62(1):61-70. doi: 10.1007/s11517-023-02908-w. Epub 2023 Aug 24.
Deep learning technology has been employed for precise medical image segmentation in recent years. However, due to the limited available datasets and real-time processing requirement, the inherently complicated structure of deep learning models restricts their application in the field of medical image processing. In this work, we present a novel lightweight LMU-Net network with improved accuracy for medical image segmentation. The multilayer perceptron (MLP) and depth-wise separable convolutions are adopted in both encoder and decoder of the LMU-Net to reduce feature loss and the number of training parameters. In addition, a lightweight channel attention mechanism and convolution operation with a larger kernel are introduced in the proposed architecture to further improve the segmentation performance. Furthermore, we employ batch normalization (BN) and group normalization (GN) interchangeably in our module to minimize the estimation shift in the network. Finally, the proposed network is evaluated and compared to other architectures on publicly accessible ISIC and BUSI datasets by carrying out robust experiments with sufficient ablation considerations. The experimental results show that the proposed LMU-Net can achieve a better overall performance than existing techniques by adopting fewer parameters.
近年来,深度学习技术已被用于精确的医学图像分割。然而,由于可用数据集有限以及实时处理要求,深度学习模型固有的复杂结构限制了它们在医学图像处理领域的应用。在这项工作中,我们提出了一种新颖的轻量级LMU-Net网络,用于医学图像分割,其精度有所提高。LMU-Net的编码器和解码器均采用多层感知器(MLP)和深度可分离卷积,以减少特征损失和训练参数的数量。此外,在所提出的架构中引入了轻量级通道注意力机制和更大内核的卷积操作,以进一步提高分割性能。此外,我们在模块中交替使用批量归一化(BN)和组归一化(GN),以最小化网络中的估计偏移。最后,通过进行充分考虑消融的稳健实验,在所公开的ISIC和BUSI数据集上对所提出的网络进行评估,并与其他架构进行比较。实验结果表明,所提出的LMU-Net通过采用更少的参数可以实现比现有技术更好的整体性能。