Learning a Filtered Backprojection Reconstruction Method for Photoacoustic Computed Tomography with Hemispherical Measurement Geometries
Panpan Chen, Seonyeong Park, Refik Mert Cam, Hsuan-Kai Huang,, Alexander A. Oraevsky, Umberto Villa, Mark A. Anastasio

TL;DR
This paper introduces a novel learning-based filtered backprojection method for 3D photoacoustic tomography with hemispherical measurement geometries, enabling accurate reconstruction from half-scan data without a closed-form formula.
Contribution
A semi-analytic filtered backprojection reconstruction method for half-scan photoacoustic data is developed and learned, addressing the lack of explicit filtering formulas.
Findings
Accurately reconstructs 3D images from half-scan data.
Method remains robust with data differing from training.
Validated on both simulated and in vivo breast data.
Abstract
In certain three-dimensional (3D) applications of photoacoustic computed tomography (PACT), including \textit{in vivo} breast imaging, hemispherical measurement apertures that enclose the object within their convex hull are employed for data acquisition. Data acquired with such measurement geometries are referred to as \textit{half-scan} data, as only half of a complete spherical measurement aperture is employed. Although previous studies have demonstrated that half-scan data can uniquely and stably reconstruct the sought-after object, no closed-form reconstruction formula for use with half-scan data has been reported. To address this, a semi-analytic reconstruction method in the form of filtered backprojection (FBP), referred to as the half-scan FBP method, is developed in this work. Because the explicit form of the filtering operation in the half-scan FBP method is not currently…
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