论文标题
使用深卷积神经网络对脑灰质核的自动分割
Automated Segmentation of Brain Gray Matter Nuclei on Quantitative Susceptibility Mapping Using Deep Convolutional Neural Network
论文作者
论文摘要
据报道,脑皮质下核中铁的异常积累与各种神经退行性疾病相关,可以通过定量易感性映射(QSM)通过磁敏感性来测量。为了定量测量磁敏感性,应准确分割核,这对临床医生来说是一项繁琐的任务。在本文中,我们提出了一个基于3D卷积神经网络(CNN)的双分支残留结构的U-NET(DB-ARSUNET),以自动分段这种脑灰质核。为了更好地折衷分割精度和内存效率,提议的DB-sornet馈送图像贴片具有高分辨率和较低分辨率的贴片,但分别具有较大的视野,分别涉及本地和全局分支。实验结果表明,通过将QSM和T $ _ \ Text {1} $加权成像(t $ _ \ text {1} $ Wi)作为输入,提出的方法能够实现比单支球菌的分段准确性更好的分段准确性,以及基于传统的ATLAS方法以及基于常规的ATLAS方法和类别的3D-3D-3D-Enet-3D-nd-nd-unet。还测量了敏感性值和体积,这表明所提出的DB-Asunet的测量值能够与手动注释的感兴趣区域的值提出高相关性。
Abnormal iron accumulation in the brain subcortical nuclei has been reported to be correlated to various neurodegenerative diseases, which can be measured through the magnetic susceptibility from the quantitative susceptibility mapping (QSM). To quantitively measure the magnetic susceptibility, the nuclei should be accurately segmented, which is a tedious task for clinicians. In this paper, we proposed a double-branch residual-structured U-Net (DB-ResUNet) based on 3D convolutional neural network (CNN) to automatically segment such brain gray matter nuclei. To better tradeoff between segmentation accuracy and the memory efficiency, the proposed DB-ResUNet fed image patches with high resolution and the patches with low resolution but larger field of view into the local and global branches, respectively. Experimental results revealed that by jointly using QSM and T$_\text{1}$ weighted imaging (T$_\text{1}$WI) as inputs, the proposed method was able to achieve better segmentation accuracy over its single-branch counterpart, as well as the conventional atlas-based method and the classical 3D-UNet structure. The susceptibility values and the volumes were also measured, which indicated that the measurements from the proposed DB-ResUNet are able to present high correlation with values from the manually annotated regions of interest.