Robust reconstruction of fluorescence molecular tomography with an optimized illumination pattern
Yan Liu, Wuwei Ren, Habib Ammari

TL;DR
This paper proposes a method to optimize illumination patterns in fluorescence molecular tomography, significantly improving reconstruction quality by jointly optimizing pattern selection and regularization techniques.
Contribution
It introduces a rigorous formulation for optimal illumination pattern design and develops efficient algorithms for joint reconstruction and pattern optimization in FMT.
Findings
Optimized illumination patterns enhance reconstruction quality.
The two-step approach converges quickly to an optimal pattern.
Reconstruction results are significantly improved regardless of initial settings.
Abstract
Fluorescence molecular tomography (FMT) is an emerging powerful tool for biomedical research. There are two factors that influence FMT reconstruction most effectively. The first one is the regularization techniques. Traditional methods such as Tikhonov regularization suffer from low resolution and poor signal to noise ratio. Therefore sparse regularization techniques have been introduced to improve the reconstruction quality. The second factor is the illumination pattern. A better illumination pattern ensures the quantity and quality of the information content of the data set thus leading to better reconstructions. In this work, we take advantage of the discrete formulation of the forward problem to give a rigorous definition of an illumination pattern as well as the admissible set of patterns. We add restrictions in the admissible set as different types of regularizers to a discrepancy…
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