Zhou Shaohua Kevin, Comaniciu Dorin
Integrated Data Systems Department,Siemens Corporate Research 755 College Road East, Princeton, NJ 08540, USA.
Inf Process Med Imaging. 2007;20:13-25. doi: 10.1007/978-3-540-73273-0_2.
We present a machine learning approach called shape regression machine (SRM) to segmenting in real time an anatomic structure that manifests a deformable shape in a medical image. Traditional shape segmentation methods rely on various assumptions. For instance, the deformable model assumes that edge defines the shape; the Mumford-Shah variational method assumes that the regions inside/outside the (closed) contour are homogenous in intensity; and the active appearance model assumes that shape/appearance variations are linear. In addition, they all need a good initialization. In contrast, SRM poses no such restrictions. It is a two-stage approach that leverages (a) the underlying medical context that defines the anatomic structure and (b) an annotated database that exemplifies the shape and appearance variations of the anatomy. In the first stage, it solves the initialization problem as object detection and derives a regression solution that needs just one scan in principle. In the second stage, it learns a nonlinear regressor that predicts the nonrigid shape from image appearance. We also propose a boosting regression approach that supports real time segmentation. We demonstrate the effectiveness of SRM using experiments on segmenting the left ventricle endocardium from an echocardiogram of an apical four chamber view.
我们提出了一种名为形状回归机器(SRM)的机器学习方法,用于在医学图像中实时分割呈现可变形形状的解剖结构。传统的形状分割方法依赖于各种假设。例如,可变形模型假设边缘定义形状;Mumford-Shah变分方法假设(封闭)轮廓内部/外部的区域在强度上是均匀的;主动外观模型假设形状/外观变化是线性的。此外,它们都需要良好的初始化。相比之下,SRM没有此类限制。它是一种两阶段方法,利用(a)定义解剖结构的基础医学背景和(b)一个注释数据库,该数据库举例说明了解剖结构的形状和外观变化。在第一阶段,它将初始化问题作为目标检测来解决,并得出一个原则上只需一次扫描的回归解决方案。在第二阶段,它学习一个非线性回归器,该回归器从图像外观预测非刚性形状。我们还提出了一种支持实时分割的增强回归方法。我们通过从心尖四腔视图的超声心动图中分割左心室内膜的实验,证明了SRM的有效性。