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1.INTRODUCTIONHigh quality cone-beam computed tomography (CBCT) images are essential in image guided radiation therapy for tasks such as soft tissue based patient positioning, structure delineation, and dose calculation. However, due to the polyenergetic nature of X-ray sources, image quality in available single energy reconstructions deteriorates as a result of beam hardening and metal artifacts. Another limitation is that, to determine relative electron density (RED), different HU-RED calibrations are necessary for different acquisition protocols, which is a common obstacle in clinical use. Spectral imaging, e.g., dual energy or photon counting technology, addresses these limitations. However, it generally requires specific hardware solutions. By contrast, leveraging prior knowledge about the polychromatic characteristic of the X-ray beam as well as attenuation properties of different materials can be seen as a middle ground software-based solution. This concept is at the core of polychromatic reconstruction algorithms in the literature.1–6 To directly reconstruct RED volumes, we expanded our non-clinical iterative CBCT (iCBCT)7 reconstruction pipeline (iTools Reconstruction, Varian Medical Systems, Palo Alto, CA, USA) by implementing a polychromatic forward projection that maps RED volume to intensities in projection space, as described by Mason et al.4,5 The core component of the polychromatic forward projection is a piecewise linear approximation of the relation between polychromatic attenuation coefficients and RED values fitted for different materials. Together with an energy-resolved air norm, this polychromatic attenuation model accounts for beam hardening by construction. The model also eliminates the need for using different HU-RED calibrations for different scanning protocols and can be further used to convert reconstructed RED volumes to virtual monoenergetic images (VMI). Unlike Mason et al.,5 we do not use a polyenergetic kernel-based scatter correction, but instead utilize Acuros® CTS, a polychromatic object scatter estimate based on the linear Boltzmann transport equation,8,9 available in our iCBCT reconstruction pipeline. In this paper, we demonstrate that our CBCT reconstruction pipeline augmented with the polychromatic model can be used to reliably determine RED directly. Further, we show the benefits of polychromatic reconstruction for reducing beam hardening artifacts and mitigating metal artifacts, as compared to an established iterative reconstruction method. 2.METHOD2.1Iterative polychromatic reconstructionAt the core of the iterative polychromatic reconstruction implementation is a polychromatic forward projection, adapted from Mason et al.:4 where pα is simulated projection under angle α, r0(Ej) is spectral air norm, A is forward-projection operator, and is a polychromatic attenuation model transforming the relative electron density volume ρe into attenuation coefficients μ. The polychromatic forward projection combines thus prior spectral knowledge about the imaging system (spectral air norm) and material characteristics (polychromatic attenuation model). The spectral air norm r0(Ej) resolves the (energy-integrated) air norm after bowtie filtration rBT according to spectral characteristics of the imaging system: where ο denotes element-wise product, S(Ej) is the system sensitivity. It combines source and detector properties: where Is(Ej) is the spectrum flux at the source, Fs(Ej) is inherent filtration at the source, μTi; and lTi are respectively attenuation coefficient and thickness of the titanium filter, μA1 and IA1 are respectively attenuation coefficient and thickness profile of the aluminium bowtie filter, and ηd(Ej) is the detector efficiency. The polychromatic attenuation model takes the form of a piecewise linear fit:4 where fi(ρe) is a material class identification function, ο denotes element-wise product, αi(Ej) and αi(Ej) are energy-dependent fit coefficients. The material class identification function maps relative electron density values to corresponding fit segments:4 where ki marks a break point between the i and i + 1 fit segments, with k0 =0 and kNf = ∞. As described in Mason et al.,4 model parameters αi(Ej), βi(Ej) and ki are obtained via a fit to human tissue materials from ICRP Publication,10 albeit in extended energy range from 15keV to 140 keV. Similarly to our established iCBCT reconstruction,7 for RED volume ρe optimization, we use a penalized likelihood cost function with total variation (TV) regularization11 with a modified expression for the data-fidelity gradient: where AT is the back-projection operator acting on the difference between measured projection qα and the polychromatic forward projection pα defined in (1). To accelerate the polychromatic reconstruction, we utilize separable quadratic surrogate cost function,12 ordered subsets,13 and Nesterov momentum method.14 2.2Reconstruction pipelineThe polychromatic reconstruction pipeline is a natural extension of our iCBCT reconstruction pipeline, which is a two-pass approach.7 In the first pass of the iCBCT pipeline, the initial HU volume is reconstructed with algebraic reconstruction technique (ART) from fASKS15 scatter-corrected projections. In the second pass, the initial volume is further refined with statistical reconstruction based on penalized maximum likelihood (PL) using projection images scatter-corrected with Acuros® CTS. The iterative polychromatic reconstruction (IPR) requires pre-processed projection images. The pre-processing step comprises object and hardware scatter corrections. In our two-pass polychromatic reconstruction pipeline, depicted in Fig. 1, scatter correction is done at two stages. The first pass fASKS scatter correction is carried out identically as in the iCBCT pipeline, and provides input for initial ART reconstruction. In the second pass, scatter correction is done by Acuros® CTS, which consumes the initially reconstructed HU volume to solve the linear Boltzmann transport equation. The scatter-corrected projection images are then fed into IPR to reconstruct the final RED volume. 3.RESULTS3.1Direct RED reconstructionTo demonstrate the use of the polychromatic model for direct RED reconstruction, we scanned the head insert of a CBCT electron density phantom (Model 062MA, Computerized Imaging Reference Systems, Inc., Norfolk, VA, USA) on a Varian Halcyon machine (Varian Medical Systems, Palo Alto, CA, USA). The scan was acquired in full-fan geometry at 125 kVp and with kV blades in the longitudinal direction collimated to the height of the phantom electron density plugs. RED volume was reconstructed with 5 initial iCBCT ART iterations, followed by 50 IPR iterations on projections scatter-corrected with Acuros® CTS. Number of iterations was determined empirically for better RED accuracy and image quality. Central slice through reconstructed RED volume is depicted in Fig. 2a and the resulting difference to ground truth (GT) values relative to water is shown in Fig. 2b. As GT, we assigned nominal RED values from the phantom specification. Mean reconstructed RED values within each plug (areas indicated by dashed circles in Fig. 2a) are listed in Table 1. Except for ‘Lung inhale’ and ‘Dense bone 800’ plugs, tissue materials were reconstructed with relative RED error below 3%, thus enabling accurate treatment dose calculation. Table 1:Mean reconstructed RED values for inserts at central slice and their differences to the ground truth (GT) relative to water
3.2Beam hardening artifact reductionTo illustrate the benefit of polychromatic reconstruction for beam hardening artifact reduction, we scanned the CIRS CBCT electron density phantom with bone inserts (from left to right: solid dense bone 800, solid dense bone 1750, solid trabecular bone 200, solid dense bone 800, solid dense bone 1250) aligned in one row. The phantom was scanned on a Varian Halcyon™ machine in full-fan beam geometry at 125 kVp with kV blades in the longitudinal direction collimated to the insert height for scatter reduction. We compared two reconstructions shown in Fig. 3: a standard iCBCT reconstruction (5 ART iterations, followed by Acuros® CTS scatter correction and 10 PL iterations) and a polychromatic reconstruction (5 iCBCT ART iterations, followed by Acuros® CTS scatter correction and subsequent 50 IPR iterations; with number of iterations determined empirically for better RED accuracy and image quality. To compare HU values for both reconstructions, we transformed the RED volume from the polychromatic reconstruction to a VMI using (4) at Ej = 66.5 keV, corresponding to the mean beam energy at 125 kVp. The shading near bone plugs present in the iCBCT reconstruction (Fig. 3a) caused by beam hardening is reduced in the polychromatic reconstruction (Fig. 3b). 3.3Metal artifact mitigationWe also tested the ability of polychromatic reconstruction to reduce metal artifacts. For that purpose, we selected a scan of a patient with bilateral metal hip implants (data courtesy of Queen’s Hospital in Romford). The scan was acquired on a Varian Halcyon™ machine in half-fan beam configuration at 125 kVp. We compared three reconstructions shown in Fig. 4: a standard iCBCT reconstruction (5 ART iterations, followed by Acuros® CTS scatter correction and 5 PL iterations), an iCBCT reconstruction with metal artifact reduction (MAR) and a polychromatic reconstruction (5 iCBCT ART iterations, followed by Acuros® CTS object scatter correction and subsequent 25 IPR iterations). To compare HU values for both reconstructions, we transformed the RED volume from the polychromatic reconstruction to a VMI at Ej = 74.5 keV. The polychromatic model used for this reconstruction was extended by a fit to common hip replacement alloys16 in addition to typical human tissues10 and comprised of Nf =4 segments. The shading between hip joints caused by metal implants visible in the iCBCT reconstruction (Fig. 4a) is reduced in the VMI from the polychromatic reconstruction (Fig. 4b), improving the visibility of the bladder. Some level of metal artifacts still remains, however, we point out that, unlike in the iCBCT MAR reconstruction (Fig. 4c) the result of the polychromatic reconstruction is based solely on the underlying polychromatic model without metal inpainting in projections. 4.CONCLUSIONWe have implemented physics-based polychromatic forward projection within our CBCT reconstruction pipeline. Preliminary results on phantom data demonstrate the potential of iterative polychromatic reconstruction for direct RED volume reconstruction with reduced beam hardening artifacts. In the presence of metal implants, polychromatic reconstruction helps to improve the visibility of soft tissue by partially removing shading. However, a certain level of metal artifacts persists. We presume metal artifact reduction with polychromatic reconstruction can be further improved by adapting Acuros® CTS object scatter correction implementation to take RED volumes directly as input and extend its material types to include titanium as well. We also see the combination of polychromatic reconstruction with metal inpainting in projections as a potential investigation direction to enable reliable structure auto segmentation and dose calculation for adaptive radiation therapy. AcknowledgmentThe authors would like to thank Queen’s Hospital in Romford for providing the patient data. REFERENCESDe Man, B. et al,
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