Kulkarni Rujuta, Kao Tzu-Jen, Boverman Gregory, Isaacson David, Saulnier Gary J, Newell Jonathan C
Department of Electrical, Computer and Systems Engineering, Rensselaer Polytechnic Institute, Troy, NY 12180, USA.
Physiol Meas. 2009 Jun;30(6):S19-34. doi: 10.1088/0967-3334/30/6/S02. Epub 2009 Jun 2.
Electrical impedance tomography is being explored as a technique to detect breast cancer, exploiting the differences in admittivity between normal tissue and tumors. In this paper, the geometry is modeled as an infinite half space under a hand-held probe. A forward solution and a reconstruction algorithm for this geometry were developed previously by Mueller et al (1999 IEEE Trans. Biomed. Eng. 46 1379). In this paper, we present a different approach which uses the decomposition of the forward solution into its Fourier components to obtain the forward solution and the reconstructions. The two approaches are compared in terms of the forward solutions and the reconstructions of experimental tank data. We also introduce a two-layered model to incorporate the presence of the skin that surrounds the body area being imaged. We demonstrate an improvement in the reconstruction of a target in a layered medium using this layered model with finite difference simulated data. We then extend the application of our layered model to human subject data and estimate the skin and the tissue admittivities for data collected on the human abdomen using an ultrasound-like hand-held EIT probe. Lastly, we show that for this set of human subject data, the layered model yields an improvement in predicting the measured voltages of around 81% for the lowest temporal frequency (3 kHz) and around 61% for the highest temporal frequency (1 MHz) applied when compared to the homogeneous model.
电阻抗断层成像技术正在作为一种检测乳腺癌的技术进行探索,该技术利用正常组织和肿瘤之间的导纳差异。在本文中,将几何形状建模为手持探头下方的无限半空间。此前,穆勒等人(1999年,《IEEE生物医学工程汇刊》46卷,第1379页)针对这种几何形状开发了正解和重建算法。在本文中,我们提出了一种不同的方法,该方法利用将正解分解为其傅里叶分量来获得正解和重建结果。从正解和实验水槽数据的重建方面对这两种方法进行了比较。我们还引入了一个两层模型,以纳入围绕成像身体区域的皮肤的存在。我们使用该分层模型和有限差分模拟数据,展示了分层介质中目标重建的改进。然后,我们将分层模型的应用扩展到人体数据,并使用类似超声的手持电阻抗断层成像探头估计人体腹部采集数据的皮肤和组织导纳。最后,我们表明,对于这组人体数据,与均匀模型相比,分层模型在预测最低时间频率(3 kHz)下测量电压时提高了约81%,在应用最高时间频率(1 MHz)时提高了约61%。