TY - JOUR
T1 - Estimating electrical conductivity tensors of biological tissues using microelectrode arrays
AU - Gilboa, Elad
AU - La Rosa, Patricio S.
AU - Nehorai, Arye
N1 - Funding Information:
MEA data set recorded at Italian Institute of Technology by using the high-resolution 4096-channel MEA platform of 3Brain GmbH, Switzerland. This work was supported in part by the McDonnell International Scholars Academy Fellowship, and also in part by a National Science found CCF-0963742. Any opinions, findings, conclusions, or recommendations expressed in this publication are those of the authors and do not necessarily reflect the views of the NSF.
PY - 2012/10
Y1 - 2012/10
N2 - Finding the electrical conductivity of tissue is highly important for understanding the tissue's structure and functioning. However, the inverse problem of inferring spatial conductivity from data is highly ill-posed and computationally intensive. In this paper, we propose a novel method to solve the inverse problem of inferring tissue conductivity from a set of transmembrane potential and stimuli measurements made by microelectrode arrays (MEA). We first formalize the discrete forward model of transmembrane potential propagation, based on a reaction- diffusion model with an anisotropic inhomogeneous electrical conductivity-tensor field. Then, we propose a novel parallel optimization algorithm for solving the complex inverse problem of estimating the electrical conductivitytensor field. Specifically, we propose a single-step approximation with a parallel block-relaxation optimization routine that simplifies the joint tensor field estimation problem into a set of computationally tractable subproblems, allowing the use of efficient standard optimization tools. Finally, using numerical examples of several electrical conductivity field topologies and noise levels, we analyze the performance of our algorithm, and discuss its application to real measurements obtained from smooth-muscle cardiac tissue, using data collected with a high-resolution MEA system.
AB - Finding the electrical conductivity of tissue is highly important for understanding the tissue's structure and functioning. However, the inverse problem of inferring spatial conductivity from data is highly ill-posed and computationally intensive. In this paper, we propose a novel method to solve the inverse problem of inferring tissue conductivity from a set of transmembrane potential and stimuli measurements made by microelectrode arrays (MEA). We first formalize the discrete forward model of transmembrane potential propagation, based on a reaction- diffusion model with an anisotropic inhomogeneous electrical conductivity-tensor field. Then, we propose a novel parallel optimization algorithm for solving the complex inverse problem of estimating the electrical conductivitytensor field. Specifically, we propose a single-step approximation with a parallel block-relaxation optimization routine that simplifies the joint tensor field estimation problem into a set of computationally tractable subproblems, allowing the use of efficient standard optimization tools. Finally, using numerical examples of several electrical conductivity field topologies and noise levels, we analyze the performance of our algorithm, and discuss its application to real measurements obtained from smooth-muscle cardiac tissue, using data collected with a high-resolution MEA system.
KW - Alternating optimization
KW - Bidomain model
KW - Biological tissues
KW - Electrical conductivity
KW - Inverse solution
KW - Microelectrode array
KW - Parallel optimization
KW - Tensor field
UR - https://www.scopus.com/pages/publications/84867230095
U2 - 10.1007/s10439-012-0581-9
DO - 10.1007/s10439-012-0581-9
M3 - Article
C2 - 22581477
AN - SCOPUS:84867230095
SN - 0090-6964
VL - 40
SP - 2140
EP - 2155
JO - Annals of biomedical engineering
JF - Annals of biomedical engineering
IS - 10
ER -