Research Center for Medical AI, Shenzhen Institute of Advanced Technology, Chinese Academy of Sciences, Shenzhen 518055, China.
Department of Artificial Intelligence, University of Chinese Academy of Sciences, Beijing 100049, China.
Sensors (Basel). 2023 Jan 6;23(2):655. doi: 10.3390/s23020655.
Fetal brain tissue segmentation is essential for quantifying the presence of congenital disorders in the developing fetus. Manual segmentation of fetal brain tissue is cumbersome and time-consuming, so using an automatic segmentation method can greatly simplify the process. In addition, the fetal brain undergoes a variety of changes throughout pregnancy, such as increased brain volume, neuronal migration, and synaptogenesis. In this case, the contrast between tissues, especially between gray matter and white matter, constantly changes throughout pregnancy, increasing the complexity and difficulty of our segmentation. To reduce the burden of manual refinement of segmentation, we proposed a new deep learning-based segmentation method. Our approach utilized a novel attentional structural block, the contextual transformer block (CoT-Block), which was applied in the backbone network model of the encoder-decoder to guide the learning of dynamic attentional matrices and enhance image feature extraction. Additionally, in the last layer of the decoder, we introduced a hybrid dilated convolution module, which can expand the receptive field and retain detailed spatial information, effectively extracting the global contextual information in fetal brain MRI. We quantitatively evaluated our method according to several performance measures: dice, precision, sensitivity, and specificity. In 80 fetal brain MRI scans with gestational ages ranging from 20 to 35 weeks, we obtained an average Dice similarity coefficient (DSC) of 83.79%, an average Volume Similarity (VS) of 84.84%, and an average Hausdorff95 Distance (HD95) of 35.66 mm. We also used several advanced deep learning segmentation models for comparison under equivalent conditions, and the results showed that our method was superior to other methods and exhibited an excellent segmentation performance.
胎儿脑组织分割对于定量评估发育中胎儿先天性疾病的存在至关重要。手动分割胎儿脑组织既繁琐又耗时,因此使用自动分割方法可以大大简化这一过程。此外,胎儿大脑在整个孕期会发生多种变化,例如脑容量增加、神经元迁移和突触形成。在这种情况下,组织之间的对比度,特别是灰质和白质之间的对比度,在整个孕期不断变化,增加了我们分割的复杂性和难度。为了减轻手动细化分割的负担,我们提出了一种新的基于深度学习的分割方法。我们的方法利用了一种新颖的注意力结构块,即上下文转换器块(CoT-Block),它应用于编码器-解码器的骨干网络模型中,以指导动态注意力矩阵的学习,并增强图像特征提取。此外,在解码器的最后一层,我们引入了一种混合扩张卷积模块,可以扩展感受野并保留详细的空间信息,有效地提取胎儿脑 MRI 中的全局上下文信息。我们根据几个性能指标对我们的方法进行了定量评估:Dice 系数、精度、敏感度和特异性。在 80 个胎龄在 20 到 35 周之间的胎儿脑 MRI 扫描中,我们获得了平均 Dice 相似系数(DSC)为 83.79%,平均体积相似系数(VS)为 84.84%,平均 Hausdorff95 距离(HD95)为 35.66 毫米。我们还在同等条件下使用了几种先进的深度学习分割模型进行比较,结果表明我们的方法优于其他方法,表现出出色的分割性能。