Lee Jong-Ha, Kim Yoon Nyun, Park Hee-Jun
Department of Biomedical Engineering, School of Medicine, Keimyung University, 1095, Dalgubeol-daero, Daegu 704-701, Korea.
Department of Internal Medicine, Dongsan Medical Center, Keimyung University, 1095, Dalgubeol-daero, Daegu 704-701, Korea.
Sensors (Basel). 2015 Mar 16;15(3):6306-23. doi: 10.3390/s150306306.
The tissue inclusion parameter estimation method is proposed to measure the stiffness as well as geometric parameters. The estimation is performed based on the tactile data obtained at the surface of the tissue using an optical tactile sensation imaging system (TSIS). A forward algorithm is designed to comprehensively predict the tactile data based on the mechanical properties of tissue inclusion using finite element modeling (FEM). This forward information is used to develop an inversion algorithm that will be used to extract the size, depth, and Young's modulus of a tissue inclusion from the tactile data. We utilize the artificial neural network (ANN) for the inversion algorithm. The proposed estimation method was validated by a realistic tissue phantom with stiff inclusions. The experimental results showed that the proposed estimation method can measure the size, depth, and Young's modulus of a tissue inclusion with 0.58%, 3.82%, and 2.51% relative errors, respectively. The obtained results prove that the proposed method has potential to become a useful screening and diagnostic method for breast cancer.
提出了组织包埋参数估计方法来测量刚度以及几何参数。该估计基于使用光学触觉传感成像系统(TSIS)在组织表面获得的触觉数据进行。设计了一种前向算法,基于使用有限元建模(FEM)的组织包埋的力学特性全面预测触觉数据。此前向信息用于开发一种反演算法,该算法将用于从触觉数据中提取组织包埋的大小、深度和杨氏模量。我们将人工神经网络(ANN)用于反演算法。所提出的估计方法通过具有硬包埋的逼真组织模型进行了验证。实验结果表明,所提出的估计方法能够分别以0.58%、3.82%和2.51%的相对误差测量组织包埋的大小、深度和杨氏模量。所得结果证明,所提出的方法有潜力成为一种有用的乳腺癌筛查和诊断方法。