Software College, Northeastern University, Shenyang 110819, China.
Biomed Res Int. 2017;2017:6941306. doi: 10.1155/2017/6941306. Epub 2017 Sep 17.
We propose a model with two-stage process for abdominal segmentation on CT volumes. First, in order to capture the details of organs, a full convolution-deconvolution network (FCN-DecNet) is constructed with multiple new unpooling, deconvolutional, and fusion layers. Then, we optimize the coarse segmentation results of FCN-DecNet by multiscale weights probabilistic atlas (MS-PA), which uses spatial and intensity characteristic of atlases. Our coarse-fine model takes advantage of intersubject variability, spatial location, and gray information of CT volumes to minimize the error of segmentation. Finally, using our model, we extract liver, spleen, and kidney with Dice index of 90.1 ± 1%, 89.0 ± 1.6%, and 89.0 ± 1.3%, respectively.
我们提出了一种基于 CT 容积的两阶段腹部分割模型。首先,为了捕捉器官的细节,我们构建了一个具有多个新的上采样、反卷积和融合层的全卷积-反卷积网络(FCN-DecNet)。然后,我们通过多尺度权重概率图谱(MS-PA)对 FCN-DecNet 的粗分割结果进行优化,该图谱利用了图谱的空间和强度特征。我们的粗-细模型利用了个体间的可变性、CT 容积的空间位置和灰度信息来最小化分割误差。最后,使用我们的模型,我们分别提取肝脏、脾脏和肾脏,其 Dice 指数分别为 90.1±1%、89.0±1.6%和 89.0±1.3%。