IDEA Lab, BRIC, UNC-Chapel Hill, Chapel Hill, NC, USA.
Department of Robotics Engineering, DGIST, Republic of Korea.
Med Image Anal. 2018 Jan;43:198-213. doi: 10.1016/j.media.2017.11.001. Epub 2017 Nov 10.
We propose a robust and efficient learning-based deformable model for segmenting regions of interest (ROIs) from structural MR brain images. Different from the conventional deformable-model-based methods that deform a shape model locally around the initialization location, we learn an image-based regressor to guide the deformable model to fit for the target ROI. Specifically, given any voxel in a new image, the image-based regressor can predict the displacement vector from this voxel towards the boundary of target ROI, which can be used to guide the deformable segmentation. By predicting the displacement vector maps for the whole image, our deformable model is able to use multiple non-boundary predictions to jointly determine and iteratively converge the initial shape model to the target ROI boundary, which is more robust to the local prediction error and initialization. In addition, by introducing the prior shape model, our segmentation avoids the isolated segmentations as often occurred in the previous multi-atlas-based methods. In order to learn an image-based regressor for displacement vector prediction, we adopt the following novel strategies in the learning procedure: (1) a joint classification and regression random forest is proposed to learn an image-based regressor together with an ROI classifier in a multi-task manner; (2) high-level context features are extracted from intermediate (estimated) displacement vector and classification maps to enforce the relationship between predicted displacement vectors at neighboring voxels. To validate our method, we compare it with the state-of-the-art multi-atlas-based methods and other learning-based methods on three public brain MR datasets. The results consistently show that our method is better in terms of both segmentation accuracy and computational efficiency.
我们提出了一种强大而高效的基于学习的可变形模型,用于从结构磁共振脑图像中分割感兴趣区域 (ROI)。与传统的基于变形模型的方法不同,后者在初始化位置周围局部变形形状模型,我们学习了一个基于图像的回归器来引导可变形模型拟合目标 ROI。具体来说,对于新图像中的任何体素,基于图像的回归器可以预测从该体素到目标 ROI 边界的位移向量,该向量可用于引导可变形分割。通过预测整个图像的位移向量图,我们的可变形模型能够利用多个非边界预测来共同确定并迭代收敛初始形状模型到目标 ROI 边界,从而对局部预测误差和初始化具有更强的鲁棒性。此外,通过引入先验形状模型,我们的分割避免了以前基于多图谱方法中经常出现的孤立分割。为了学习用于位移向量预测的基于图像的回归器,我们在学习过程中采用了以下新策略:(1) 提出了一种联合分类和回归随机森林,以多任务方式共同学习基于图像的回归器和 ROI 分类器;(2) 从中间(估计)位移向量和分类图中提取高级上下文特征,以强制预测位移向量在相邻体素之间的关系。为了验证我们的方法,我们在三个公共脑磁共振数据集上将其与最先进的基于多图谱的方法和其他基于学习的方法进行了比较。结果一致表明,在分割准确性和计算效率方面,我们的方法都更好。