Finite element modelling and validation for breast cancer detection using digital image elasto-tomography

被引:0
作者
Hina M. Ismail
Chris G. Pretty
Matthew K. Signal
Marcus Haggers
J. Geoffrey Chase
机构
[1] University of Canterbury,
[2] Tiro Medical Limited,undefined
来源
Medical & Biological Engineering & Computing | 2018年 / 56卷
关键词
Finite element method; Digital image-based elasto-tomography; Breast cancer; Cross-correlation coefficient;
D O I
暂无
中图分类号
学科分类号
摘要
Finite element (FE) models are increasingly used to validate experimental data in breast cancer. This research constructed a biomechanical FE model for breast shaped phantoms used to develop and validate a mechanical vibration based screening system. Such models do not currently exist but would enhance development of this screening technology. Three phantoms were modelled: healthy, with 10 and 20 mm inclusions. The overall goal was to create models with enough accuracy to replace experimental phantoms in providing data to optimize diagnostic algorithms for digital image-based elasto-tomography (DIET) screening technologies. FE model results were validating against experimental DIET phantom data for over 4000 collected points on each model and phantom using cross-correlation coefficients between experimental simulated data and direct comparison. Results showed good to strong correlation ranging from 0.7 to 1.0 in all cases with over 90% having a value over 0.9. Magnitudes for each frame of the dynamic response also matched well, indicating that the material properties and geometry were accurate enough to provide this level of correlation. These results justify the use of FE model generated data for in silico diagnostic algorithm development testing. The overall modelling and validation approach is not overly complex, and thus generalizable to similar problems using mechanical properties of silicone phantoms, and might be extensible to human cases with further work.
引用
收藏
页码:1715 / 1729
页数:14
相关论文
共 148 条
  • [1] Coleman C(2017)Early detection and screening for breast cancer Semin Oncol Nurs 33 141-155
  • [2] Nelson HD(2016)Factors associated with rates of false-positive and false-negative results from digital mammography screening: an analysis of registry data Ann Intern Med 164 226-235
  • [3] O’Meara ES(2017)Risk-based breast cancer screening Med Clin 101 725-741
  • [4] Kerlikowske K(1999)Current imaging modalities for the diagnosis of breast cancer Del Med J 71 377-382
  • [5] Balch S(1990)How many tests are required in the diagnosis of palpable breast abnormalities? Clin Oncol 2 148-152
  • [6] Miglioretti D(2003)American Cancer Society guidelines for breast cancer screening: update 2003 CA Cancer J Clin 53 141-169
  • [7] Lee CI(2017)Attributes, performance, and gaps in current & emerging breast cancer screening technologies Curr Med Imaging Rev 13 1-10
  • [8] Chen LE(2004)Digital image-based elasto-tomography: proof of concept studies for surface based mechanical property reconstruction JSME Int J C Mech Syst, Mach Elem Manuf 47 1117-1123
  • [9] Elmore JG(2009)Estimating elasticity in heterogeneous phantoms using digital image elasto-tomography Med Biol Eng Comput 47 67-76
  • [10] Edell S(2013)Separate modal analysis for tumor detection with a digital image elasto tomography (DIET) breast cancer screening system Med Phys 40 2031-2036