Abstract

Cone-beam computed tomography (CBCT) has enormous potential to improve the accuracy of treatment delivery in image-guided radiotherapy (IGRT). To assist radiotherapists in interpreting these images, we use a Bayesian statistical model to label each voxel according to its tissue type. The rich sources of prior information in IGRT are incorporated into a hidden Markov random field model of the 3D image lattice. Tissue densities in the reference CT scan are estimated using inverse regression and then rescaled to approximate the corresponding CBCT intensity values. The treatment planning contours are combined with published studies of physiological variability to produce a spatial prior distribution for changes in the size, shape and position of the tumour volume and organs at risk. The voxel labels are estimated using iterated conditional modes. The accuracy of the method has been evaluated using 27 CBCT scans of an electron density phantom. The mean voxel-wise misclassification rate was 6.2%, with Dice similarity coefficient of 0.73 for liver, muscle, breast and adipose tissue. By incorporating prior information, we are able to successfully segment CBCT images. This could be a viable approach for automated, online image analysis in radiotherapy.

Details

Title
Segmentation of cone-beam CT using a hidden Markov random field with informative priors
Author
Moores, M 1 ; Hargrave, C 2 ; Harden, F 1 ; Mengersen, K 1 

 Queensland University of Technology, Brisbane QLD 4000 Australia; Institute of Health and Biomedical Innovation, Kelvin Grove QLD 4059 Australia 
 Queensland University of Technology, Brisbane QLD 4000 Australia; Radiation Oncology Mater Centre, Queensland Health, South Brisbane QLD 4101 Australia; Institute of Health and Biomedical Innovation, Kelvin Grove QLD 4059 Australia 
Publication year
2014
Publication date
Mar 2014
Publisher
IOP Publishing
ISSN
17426588
e-ISSN
17426596
Source type
Scholarly Journal
Language of publication
English
ProQuest document ID
2576591358
Copyright
© 2014. This work is published under http://creativecommons.org/licenses/by/3.0/ (the “License”). Notwithstanding the ProQuest Terms and Conditions, you may use this content in accordance with the terms of the License.