Symmetric Biomechanically Guided Prone-to-Supine Breast Image Registration

被引:0
|
作者
Björn Eiben
Vasileios Vavourakis
John H. Hipwell
Sven Kabus
Thomas Buelow
Cristian Lorenz
Thomy Mertzanidou
Sara Reis
Norman R. Williams
Mohammed Keshtgar
David J. Hawkes
机构
[1] University College London,Department of Medical Physics & Biomedical Engineering, Centre for Medical Image Computing
[2] Philips GmbH Innovative Technologies,Clinical Trials Group, Division of Surgery
[3] Research Laboratories Hamburg,Department of Surgery
[4] University College London,Division of Surgery
[5] Royal Free Hospital,undefined
[6] University College London,undefined
来源
Annals of Biomedical Engineering | 2016年 / 44卷
关键词
Image analysis; Image registration; Breast cancer; Biomechanics; Modelling; Finite difference method;
D O I
暂无
中图分类号
学科分类号
摘要
Prone-to-supine breast image registration has potential application in the fields of surgical and radiotherapy planning, image guided interventions, and multi-modal cancer diagnosis, staging, and therapy response prediction. However, breast image registration of three dimensional images acquired in different patient positions is a challenging problem, due to large deformations induced to the soft breast tissue caused by the change in gravity loading. We present a symmetric, biomechanical simulation based registration framework which aligns the images in a central, virtually unloaded configuration. The breast tissue is modelled as a neo-Hookean material and gravity is considered as the main source of deformation in the original images. In addition to gravity, our framework successively applies image derived forces directly into the unloading simulation in place of a subsequent image registration step. This results in a biomechanically constrained deformation. Using a finite difference scheme avoids an explicit meshing step and enables simulations to be performed directly in the image space. The explicit time integration scheme allows the motion at the interface between chest and breast to be constrained along the chest wall. The feasibility and accuracy of the approach presented here was assessed by measuring the target registration error (TRE) using a numerical phantom with known ground truth deformations, nine clinical prone MRI and supine CT image pairs, one clinical prone-supine CT image pair and four prone-supine MRI image pairs. The registration reduced the mean TRE for the numerical phantom experiment from initially 19.3 to 0.9 mm and the combined mean TRE for all fourteen clinical data sets from 69.7 to 5.6 mm.
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页码:154 / 173
页数:19
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