Title :
Reconstructing 3-D Skin Surface Motion for the DIET Breast Cancer Screening System
Author :
Botterill, Tom ; Lotz, T. ; Kashif, A. ; Chase, J. Geoffrey
Author_Institution :
Dept. of Comput. Sci., Univ. of Canterbury, Christchurch, New Zealand
Abstract :
Digital image-based elasto-tomography (DIET) is a prototype system for breast cancer screening. A breast is imaged while being vibrated, and the observed surface motion is used to infer the internal stiffness of the breast, hence identifying tumors. This paper describes a computer vision system for accurately measuring 3-D surface motion. A model-based segmentation is used to identify the profile of the breast in each image, and the 3-D surface is reconstructed by fitting a model to the profiles. The surface motion is measured using a modern optical flow implementation customized to the application, then trajectories of points on the 3-D surface are given by fusing the optical flow with the reconstructed surfaces. On data from human trials, the system is shown to exceed the performance of an earlier marker-based system at tracking skin surface motion. We demonstrate that the system can detect a 10 mm tumor in a silicone phantom breast.
Keywords :
biomechanics; biomedical optical imaging; cancer; elasticity; image motion analysis; image reconstruction; image segmentation; image sequences; mammography; medical image processing; phantoms; polymers; skin; tumours; 3D skin surface motion reconstruction; 3D surface motion measurement; DIET breast cancer screening system; breast internal stiffness inference; breast profile identification; breast vibration; computer vision system; digital image-based elastotomography; marker-based system; model fitting; model-based segmentation; optical flow implementation customization; point trajectories; prototype system; silicone phantom breast; size 10 mm; skin surface motion tracking; tumor detection; tumor identification; Breast cancer; Computer vision; Image motion analysis; Image reconstruction; Optical imaging; Surface reconstruction; Three-dimensional displays; 3-D reconstruction; Cancer detection; image motion analysis; object segmentation;
Journal_Title :
Medical Imaging, IEEE Transactions on
DOI :
10.1109/TMI.2014.2304959