D-bar reconstructions with nonsmooth learned spatial priors in 2D electrical impedance tomography

IF 2.1 2区 数学 Q1 MATHEMATICS, APPLIED Journal of Computational and Applied Mathematics Pub Date : 2025-01-14 DOI:10.1016/j.cam.2025.116512
Melody Alsaker , Benjamin Bladow , Scott E. Campbell , Nicholas Linthacum , Thomas M. McKenzie , Jennifer L. Mueller , Talles Batista Rattis Santos
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引用次数: 0

Abstract

The use of 2D Electrical Impedance Tomography (EIT) for imaging in clinical settings has gained increasing attention from the medical community in recent years. This is due in part to state-of-the-art reconstruction algorithms which have led to enhanced EIT image quality. Advances in direct D-bar reconstruction methods, for example, have allowed the inclusion of spatial priors which provide improved image sharpness and robustness. As a first step, these techniques require polygonal estimates of boundaries of regions of interest in the 2D spatial domain. In the literature, the methodology for choosing such boundaries has involved extracting this spatial information from previous medical scans, which may not exist in practice, or from an anatomical atlas, which may not be representative of individual patient physiology and pathology. Manual extraction from previous scans also leads to labor-intensive procedures and the introduction of human bias. Furthermore, in previous works, some of the sharpness provided by the introduction of priors was lost due to a mathematical need for smoothing of the a priori conductivity distribution, which also introduced computational overhead. In this work, we address these problems via (1) a method for the automated selection of boundaries via trained convolutional neural networks, and (2) use of an alternative mathematical formulation which eliminates the need for smoothing of the conductivity prior. We present a scenario where the network is trained and validated using simulated thoracic phantoms on circular domains.
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CiteScore
5.40
自引率
4.20%
发文量
437
审稿时长
3.0 months
期刊介绍: The Journal of Computational and Applied Mathematics publishes original papers of high scientific value in all areas of computational and applied mathematics. The main interest of the Journal is in papers that describe and analyze new computational techniques for solving scientific or engineering problems. Also the improved analysis, including the effectiveness and applicability, of existing methods and algorithms is of importance. The computational efficiency (e.g. the convergence, stability, accuracy, ...) should be proved and illustrated by nontrivial numerical examples. Papers describing only variants of existing methods, without adding significant new computational properties are not of interest. The audience consists of: applied mathematicians, numerical analysts, computational scientists and engineers.
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