Shi Yonghong, Qi Feihu, Xue Zhong, Ito Kyoko, Matsuo Hidenori, Shen Dinggang
Department of Computer Science and Engineering Shanghai Jiao Tong University, Shanghai, China.
Med Image Comput Comput Assist Interv. 2006;9(Pt 1):83-91. doi: 10.1007/11866565_11.
This paper presents a new deformable model using both population-based and patient-specific shape statistics to segment lung fields from serial chest radiographs. First, a modified scale-invariant feature transform (SIFT) local descriptor is used to characterize the image features in the vicinity of each pixel, so that the deformable model deforms in a way that seeks for the region with similar SIFT local descriptors. Second, the deformable model is constrained by both population-based and patient-specified shape statistics. Initially, population-based shape statistics takes most of the rules when the number of serial images is small; gradually, patient-specific shape statistics takes more rules after a sufficient number of segmentation results on the same patient have been obtained. The proposed deformable model can adapt to the shape variability of different patients, and obtain more robust and accurate segmentation results.
本文提出了一种新的可变形模型,该模型利用基于群体和患者特定的形状统计信息,从系列胸部X光片中分割肺野。首先,使用一种改进的尺度不变特征变换(SIFT)局部描述符来表征每个像素附近的图像特征,使得可变形模型以寻找具有相似SIFT局部描述符的区域的方式变形。其次,可变形模型受到基于群体和患者指定的形状统计信息的约束。最初,当系列图像数量较少时,基于群体的形状统计信息起主要作用;逐渐地,在获得同一患者足够数量的分割结果后,患者特定的形状统计信息起更多作用。所提出的可变形模型能够适应不同患者的形状变异性,并获得更稳健和准确的分割结果。