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一种应用于动态肺电阻抗断层成像并进行评估的基于稀疏贝叶斯学习的矩点匹配方法。

A Point-Matching Method of Moment with Sparse Bayesian Learning Applied and Evaluated in Dynamic Lung Electrical Impedance Tomography.

作者信息

Dimas Christos, Alimisis Vassilis, Uzunoglu Nikolaos, Sotiriadis Paul P

机构信息

Department of Electrical and Computer Engineering, National Technical University of Athens, 15780 Athens, Greece.

出版信息

Bioengineering (Basel). 2021 Nov 25;8(12):191. doi: 10.3390/bioengineering8120191.

Abstract

Dynamic lung imaging is a major application of Electrical Impedance Tomography (EIT) due to EIT's exceptional temporal resolution, low cost and absence of radiation. EIT however lacks in spatial resolution and the image reconstruction is very sensitive to mismatches between the actual object's and the reconstruction domain's geometries, as well as to the signal noise. The non-linear nature of the reconstruction problem may also be a concern, since the lungs' significant conductivity changes due to inhalation and exhalation. In this paper, a recently introduced method of moment is combined with a sparse Bayesian learning approach to address the non-linearity issue, provide robustness to the reconstruction problem and reduce image artefacts. To evaluate the proposed methodology, we construct three CT-based time-variant 3D thoracic structures including the basic thoracic tissues and considering 5 different breath states from end-expiration to end-inspiration. The Graz consensus reconstruction algorithm for EIT (GREIT), the correlation coefficient (CC), the root mean square error (RMSE) and the full-reference (FR) metrics are applied for the image quality assessment. Qualitative and quantitative comparison with traditional and more advanced reconstruction techniques reveals that the proposed method shows improved performance in the majority of cases and metrics. Finally, the approach is applied to single-breath online in-vivo data to qualitatively verify its applicability.

摘要

动态肺部成像由于电阻抗断层成像(EIT)具有出色的时间分辨率、低成本且无辐射,因而成为EIT的一项主要应用。然而,EIT缺乏空间分辨率,并且图像重建对实际物体与重建域的几何形状之间的不匹配以及信号噪声非常敏感。重建问题的非线性性质也可能是一个问题,因为肺部在吸气和呼气时电导率会发生显著变化。在本文中,一种最近引入的矩量法与稀疏贝叶斯学习方法相结合,以解决非线性问题,增强重建问题的鲁棒性并减少图像伪影。为了评估所提出的方法,我们构建了三个基于CT的随时间变化的三维胸部结构,包括基本的胸部组织,并考虑了从呼气末到吸气末的5种不同呼吸状态。将EIT的格拉茨共识重建算法(GREIT)、相关系数(CC)、均方根误差(RMSE)和全参考(FR)指标应用于图像质量评估。与传统和更先进的重建技术进行定性和定量比较表明,所提出的方法在大多数情况和指标下都表现出更好的性能。最后,将该方法应用于单呼吸在线体内数据,以定性验证其适用性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/98f8/8698777/e36476a2b11a/bioengineering-08-00191-g001.jpg

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