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Algorithm for X-ray Scatter, Beam-Hardening, and Beam Profile Correction in Diagnostic (Kilovoltage) and Treatment (Megavoltage) Cone Beam CT | IEEE Journals & Magazine | IEEE Xplore

Algorithm for X-ray Scatter, Beam-Hardening, and Beam Profile Correction in Diagnostic (Kilovoltage) and Treatment (Megavoltage) Cone Beam CT


Abstract:

Quantitative reconstruction of cone beam X-ray computed tomography (CT) datasets requires accurate modeling of scatter, beam-hardening, beam profile, and detector respons...Show More

Abstract:

Quantitative reconstruction of cone beam X-ray computed tomography (CT) datasets requires accurate modeling of scatter, beam-hardening, beam profile, and detector response. Typically, commercial imaging systems use fast empirical corrections that are designed to reduce visible artifacts due to incomplete modeling of the image formation process. In contrast, Monte Carlo (MC) methods are much more accurate but are relatively slow. Scatter kernel superposition (SKS) methods offer a balance between accuracy and computational practicality. We show how a single SKS algorithm can be employed to correct both kilovoltage (kV) energy (diagnostic) and megavoltage (MV) energy (treatment) X-ray images. Using MC models of kV and MV imaging systems, we map intensities recorded on an amorphous silicon flat panel detector to water-equivalent thicknesses (WETs). Scattergrams are derived from acquired projection images using scatter kernels indexed by the local WET values and are then iteratively refined using a scatter magnitude bounding scheme that allows the algorithm to accommodate the very high scatter-to-primary ratios encountered in kV imaging. The algorithm recovers radiological thicknesses to within 9% of the true value at both kV and megavolt energies. Nonuniformity in CT reconstructions of homogeneous phantoms is reduced by an average of 76% over a wide range of beam energies and phantom geometries.
Published in: IEEE Transactions on Medical Imaging ( Volume: 27, Issue: 12, December 2008)
Page(s): 1791 - 1810
Date of Publication: 29 July 2008

ISSN Information:

PubMed ID: 19033095
References is not available for this document.

I. Introduction

Quantitative volumetric computed tomography (CT) imaging has the potential to improve both diagnostic imaging and image-guided radiotherapy (IGRT). A common means of obtaining volumetric CT data is through the use of a cone beam X-ray source that impinges on an wide-area detector having uncollimated pixels. Unfortunately, the quality of cone beam CT images is often degraded by cupping and streaking artifacts due to inadequate modeling of X-ray scatter and the polychromatic nature of the imaging beam. However, since these artifacts are due to quantitative bias, they can be removed by applying quantitative methods that more realistically model the physics of the imaging process.

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