Liver segmentation from CT images using a sparse priori statistical shape model (SP-SSM)

PLoS One. 2017 Oct 5;12(10):e0185249. doi: 10.1371/journal.pone.0185249. eCollection 2017.

Abstract

This study proposes a new liver segmentation method based on a sparse a priori statistical shape model (SP-SSM). First, mark points are selected in the liver a priori model and the original image. Then, the a priori shape and its mark points are used to obtain a dictionary for the liver boundary information. Second, the sparse coefficient is calculated based on the correspondence between mark points in the original image and those in the a priori model, and then the sparse statistical model is established by combining the sparse coefficients and the dictionary. Finally, the intensity energy and boundary energy models are built based on the intensity information and the specific boundary information of the original image. Then, the sparse matching constraint model is established based on the sparse coding theory. These models jointly drive the iterative deformation of the sparse statistical model to approximate and accurately extract the liver boundaries. This method can solve the problems of deformation model initialization and a priori method accuracy using the sparse dictionary. The SP-SSM can achieve a mean overlap error of 4.8% and a mean volume difference of 1.8%, whereas the average symmetric surface distance and the root mean square symmetric surface distance can reach 0.8 mm and 1.4 mm, respectively.

MeSH terms

  • Humans
  • Liver / anatomy & histology
  • Liver / diagnostic imaging*
  • Models, Anatomic*
  • Tomography, X-Ray Computed / methods*

Grants and funding

This work was supported in part by Natural Science Foundation of China under grant 61401308 and 61572063, Natural Science Foundation of Hebei Province under grant F2016201142 and F2016201187, Natural Social Foundation of Hebei Province under grant HB15TQ015, Science research project of Hebei Province under grant QN2016085 and ZC2016040, Science and technology support project of Hebei Province under grant 15210409, Natural Science Foundation of Hebei University under grant 2014-303; Hebei university improve comprehensive strength special funds in the Midwest.