Tokyo University of Agriculture and Technology, Nakacho 2-24-16, Koganei, Tokyo 184-8588, Japan.
Med Image Anal. 2014 Jan;18(1):130-43. doi: 10.1016/j.media.2013.10.003. Epub 2013 Oct 17.
This paper presents a novel conditional statistical shape model in which the condition can be relaxed instead of being treated as a hard constraint. The major contribution of this paper is the integration of an error model that estimates the reliability of the observed conditional features and subsequently relaxes the conditional statistical shape model accordingly. A three-step pipeline consisting of (1) conditional feature extraction from a maximum a posteriori estimation, (2) shape prior estimation through the novel level set based conditional statistical shape model with integrated error model and (3) subsequent graph cuts segmentation based on the estimated shape prior is applied to automatic liver segmentation from non-contrast abdominal CT volumes. Comparison with three other state of the art methods shows the superior performance of the proposed algorithm.
本文提出了一种新的条件统计形状模型,其中条件可以被放宽,而不是被视为硬约束。本文的主要贡献是集成了一个误差模型,该模型估计了所观察到的条件特征的可靠性,并相应地放宽了条件统计形状模型。该方法由三个步骤组成:(1)通过最大后验估计从条件特征中提取;(2)通过新的基于水平集的具有集成误差模型的条件统计形状模型来估计形状先验;(3)基于估计的形状先验进行图割分割。将该方法应用于非对比腹部 CT 容积的自动肝脏分割,并与其他三种最先进的方法进行了比较,结果表明了该算法的优越性能。