Depa Michal, Holmvang Godtfred, Schmidt Ehud J, Golland Polina, Sabuncu Mert R
Computer Science and Artificial Intelligence Lab, MIT, Cambridge, MA, USA.
Cardiac MRI Unit, Massachusetts General Hospital, Boston, MA, USA.
Med Image Comput Comput Assist Interv. 2011;14(WS):38-46.
Label fusion is a multi-atlas segmentation approach that explicitly maintains and exploits the entire training dataset, rather than a parametric summary of it. Recent empirical evidence suggests that label fusion can achieve significantly better segmentation accuracy over classical parametric atlas methods that utilize a single coordinate frame. However, this performance gain typically comes at an increased computational cost due to the many pairwise registrations between the novel image and training images. In this work, we present a modified label fusion method that approximates these pairwise warps by first pre-registering the training images via a diffeomorphic groupwise registration algorithm. The novel image is then only registered once, to the template image that represents the average training subject. The pairwise spatial correspondences between the novel image and training images are then computed via concatenation of appropriate transformations. Our experiments on cardiac MR data suggest that this strategy for nonparametric segmentation dramatically improves computational efficiency, while producing segmentation results that are statistically indistinguishable from those obtained with regular label fusion. These results suggest that the key benefit of label fusion approaches is the underlying nonparametric inference algorithm, and not the multiple pairwise registrations.
标签融合是一种多图谱分割方法,它明确地保留并利用整个训练数据集,而不是其参数化摘要。最近的经验证据表明,与使用单个坐标系的经典参数化图谱方法相比,标签融合能够实现显著更高的分割精度。然而,由于新图像与训练图像之间存在许多成对配准,这种性能提升通常伴随着计算成本的增加。在这项工作中,我们提出了一种改进的标签融合方法,该方法通过首先使用微分同胚组配准算法对训练图像进行预配准来近似这些成对变换。然后,新图像仅需配准一次,配准到代表平均训练对象的模板图像。新图像与训练图像之间的成对空间对应关系随后通过适当变换的串联来计算。我们对心脏磁共振数据的实验表明,这种非参数分割策略显著提高了计算效率,同时产生的分割结果与常规标签融合获得的结果在统计学上没有差异。这些结果表明,标签融合方法的关键优势在于潜在的非参数推理算法,而非多个成对配准。