Accelerated High-Resolution Photoacoustic Tomography via Compressed Sensing
Simon Arridge, Paul Beard, Marta Betcke, Ben Cox, Nam Huynh, Felix, Lucka, Olumide Ogunlade, Edward Zhang

TL;DR
This paper introduces a compressed sensing approach combined with variational image reconstruction to significantly accelerate high-resolution 3D photoacoustic tomography, enabling faster imaging of dynamic biological tissues without sacrificing image quality.
Contribution
It develops and models novel spatial sub-sampling schemes for PAT, demonstrating their effectiveness with variational reconstruction methods on simulated and real data.
Findings
High-quality images from highly sub-sampled data using sparsity constraints
Accelerated acquisition speeds in PAT systems with maintained resolution
Potential reduction in detector channel count for faster imaging
Abstract
Current 3D photoacoustic tomography (PAT) systems offer either high image quality or high frame rates but are not able to deliver high spatial and temporal resolution simultaneously, which limits their ability to image dynamic processes in living tissue. A particular example is the planar Fabry-Perot (FP) scanner, which yields high-resolution images but takes several minutes to sequentially map the photoacoustic field on the sensor plane, point-by-point. However, as the spatio-temporal complexity of many absorbing tissue structures is rather low, the data recorded in such a conventional, regularly sampled fashion is often highly redundant. We demonstrate that combining variational image reconstruction methods using spatial sparsity constraints with the development of novel PAT acquisition systems capable of sub-sampling the acoustic wave field can dramatically increase the acquisition…
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