Litcius/Paper detail

Multi-material spectral photon-counting micro-CT with minimum residual decomposition and self-supervised deep denoising

Vittorio Di Trapani, Luca Brombal, Francesco Brun

2022Optics Express22 citationsDOIOpen Access PDF

Abstract

Spectral micro-CT imaging with direct-detection energy discriminating photon counting detectors having small pixel size (< 100×100 µm 2 ) is mainly hampered by: i) the limited energy resolution of the imaging device due to charge sharing effects and ii) the unavoidable noise amplification in the images resulting from basis material decomposition. In this work, we present a cone-beam micro-CT setup that includes a CdTe photon counting detector implementing a charge summing hardware solution to correct for the charge-sharing issue and an innovative image processing pipeline based on accurate modeling of the spectral response of the imaging system, an improved basis material decomposition (BMD) algorithm named minimum-residual BMD (MR-BMD), and self-supervised deep convolutional denoising. Experimental tomographic projections having a pixel size of 45×45 µm 2 of a plastinated mouse sample including I, Ba, and Gd small cuvettes were acquired. Results demonstrate the capability of the combined hardware and software tools to sharply discriminate even between materials having their K-Edge separated by a few keV, such as e.g., I and Ba. By evaluating the quality of the reconstructed decomposed images (water, bone, I, Ba, and Gd), the quantitative performances of the spectral system are here assessed and discussed.

Topics & Concepts

Charge sharingPhoton countingOpticsDetectorSpectral imagingNoise reductionMaterials sciencePixelScannerPhysicsImage resolutionEnergy (signal processing)Computer scienceArtificial intelligenceQuantum mechanicsAdvanced X-ray and CT ImagingMedical Imaging Techniques and ApplicationsRadiation Dose and Imaging