Li Lei, Qin Juan, Lv Lianrong, Cheng Mengdan, Wang Biao, Xia Dan, Wang Shike
School of Integrated Circuit Science and Engineering, Tianjin University of Technology, Tianjin, 300384 China.
Int J Mach Learn Cybern. 2023 May 24:1-13. doi: 10.1007/s13042-023-01857-y.
In recent years, more attention paid to the spine caused by related diseases, spinal parsing (the multi-class segmentation of vertebrae and intervertebral disc) is an important part of the diagnosis and treatment of various spinal diseases. The more accurate the segmentation of medical images, the more convenient and quick the clinicians can evaluate and diagnose spinal diseases. Traditional medical image segmentation is often time consuming and energy consuming. In this paper, an efficient and novel automatic segmentation network model for MR spine images is designed. The proposed Inception-CBAM Unet++ (ICUnet++) model replaces the initial module with the Inception structure in the encoder-decoder stage base on Unet++ , which uses the parallel connection of multiple convolution kernels to obtain the features of different receptive fields during in the feature extraction. According to the characteristics of the attention mechanism, Attention Gate module and CBAM module are used in the network to make the attention coefficient highlight the characteristics of the local area. To evaluate the segmentation performance of network model, four evaluation metrics, namely intersection over union (IoU), dice similarity coefficient(DSC), true positive rate(TPR), positive predictive value(PPV) are used in the study. The published SpineSagT2Wdataset3 spinal MRI dataset is used during the experiments. In the experiment results, IoU reaches 83.16%, DSC is 90.32%, TPR is 90.40%, and PPV is 90.52%. It can be seen that the segmentation indicators have been significantly improved, which reflects the effectiveness of the model.
近年来,脊柱相关疾病引发了更多关注,脊柱解析(椎体和椎间盘的多类别分割)是各种脊柱疾病诊断和治疗的重要组成部分。医学图像分割越准确,临床医生评估和诊断脊柱疾病就越方便快捷。传统的医学图像分割往往既耗时又费力。本文设计了一种高效且新颖的用于磁共振脊柱图像的自动分割网络模型。所提出的Inception-CBAM Unet++(ICUnet++)模型在基于Unet++的编码器-解码器阶段用Inception结构替换了初始模块,它在特征提取过程中使用多个卷积核的并行连接来获取不同感受野的特征。根据注意力机制的特点,在网络中使用了注意力门模块和CBAM模块,使注意力系数突出局部区域的特征。为了评估网络模型的分割性能,研究中使用了四个评估指标,即交并比(IoU)、骰子相似系数(DSC)、真阳性率(TPR)、阳性预测值(PPV)。实验期间使用了已发布的SpineSagT2Wdataset3脊柱磁共振成像数据集。在实验结果中,IoU达到83.16%,DSC为90.32%,TPR为90.40%,PPV为90.52%。可以看出分割指标有了显著提高,这反映了该模型的有效性。