The Affiliated Hospital of Weifang Medical University, Shandong, 261031, Weifang, China.
J Med Syst. 2019 Aug 12;43(9):304. doi: 10.1007/s10916-019-1432-0.
Due to insufficient samples, the generalization performance of deep network is insufficient. In order to solve this problem, an improved U-net based image automatic segmentation and diagnosis algorithm was proposed, in which the max-pooling operation in original U-net model was replaced by the convolution operation to keep more feature information. Firstly, the regions of 128×128 were extracted from all slices of the patients as data samples. Secondly, the patient samples were divided into training sample set and testing sample set, and data augmentation was performed on the training samples. Finally, all the training samples were adopted to train the model. Compared with Fully Convolutional Network (FCN) model and max-pooling based U-net model, DSC and CR coefficients of the proposed method achieve the best results, while PM coefficient is 2.55 percentage lower than the maximum value in the two comparison models, and Average Symmetric Surface Distance is slightly higher than the minimum value of the two comparison models by 0.004. The experimental results show that the proposed model can achieve good segmentation and diagnosis results.
由于样本不足,深度网络的泛化性能不足。为了解决这个问题,提出了一种基于改进的 U-net 的图像自动分割和诊断算法,该算法用卷积操作替代了原始 U-net 模型中的最大池化操作,以保留更多的特征信息。首先,从患者的所有切片中提取 128×128 的区域作为数据样本。其次,将患者样本分为训练样本集和测试样本集,并对训练样本进行数据增强。最后,采用所有的训练样本对模型进行训练。与全卷积网络(FCN)模型和基于最大池化的 U-net 模型相比,该方法的 DSC 和 CR 系数达到了最佳效果,而 PM 系数比两个对比模型中的最大值低 2.55 个百分点,平均对称表面距离比两个对比模型中的最小值高 0.004。实验结果表明,所提出的模型可以实现良好的分割和诊断效果。