Introduction
Since Godfrey N. Hounsfield constructed the first clinical X-ray computed tomography (XCT) scanner in the early 1970s [1], XCT imaging has become an indispensable tool in various fields including medical diagnostics, proton therapy [2], industrial non-destructive testing [3], and materials science. Over the past 50 years, the XCT image quality has improved tremendously. However, materials with similar X-ray attenuation cannot exhibit distinguishable contrast in XCT. Because the reconstructed linear attenuation coefficient distribution of an imaging object in XCT is determined by many factors, such as the X-ray energy, material mass density, and elemental composition [4-12], it is easy for different materials to possess a similar X-ray attenuation, particularly when a broad energy spectrum produced by conventional X-ray tubes is used. Therefore, it is necessary to develop multiple imaging modalities to provide a comprehensive description of the imaging object.
X-ray fluorescence computed tomography (XFCT) and Compton scattering computed tomography (CSCT) can provide more valuable information regarding the imaging object than the linear attenuation coefficient in XCT, which helps resolve the above-mentioned material discrimination problem in XCT. In XFCT, the contrast agent distribution and its quantitative concentration can be reconstructed simultaneously, providing a novel method for molecular imaging [13-20], and is expected to become a promising method for early cancer detection with the application of nanoparticles such as Au and Gd. In CSCT, the electron density distribution of the imaging object can be reconstructed [21], which plays a crucial role in accurate radiation dose calculation [22, 23] and range estimation [24-27] in charged-particle therapy treatment planning. The distribution of both contrast agents in XFCT and electron density in CSCT can help extend the ability of material discrimination, and the synergy between them would have an important application in cancer radiation therapy, as high-resolution and -sensitivity cancer diagnosis via XFCT and high-accuracy dose calculation and range estimation via CSCT can be realized simultaneously. However, XFCT and CSCT cannot be realized simultaneously because distinguishing one signal from another is intractable. For example, special efforts must be made to reduce the influence of a strong Compton scattering background in XFCT [14, 17, 19, 20, 28], as it has a significant impact on image quality.
With the rapid development of Thomson scattering (also called inverse Compton scattering in the gamma-ray energy region when the electron recoil cannot be neglected), polarization-tunable X-rays can be easily generated [29-31], providing a novel polarization-based method for Compton scattering background suppression in XFCT [32]. Using linearly polarized X-rays, X-ray fluorescence and Compton scattering signals can be distinguished; therefore, it is possible to realize XFCT and CSCT simultaneously. In this study, the feasibility of simultaneous XFCT and CSCT based on linearly polarized X-rays was investigated using Monte Carlo (MC) simulations. The interplay between XFCT and CSCT was analyzed and effective methods to correct this mutual influence were developed. Finally, a comparison between the two imaging modalities and K-edge subtraction imaging is presented and discussed.
Methods
Principle of simultaneous XFCT and CSCT
To realize simultaneous XFCT and CSCT, the X-ray fluorescence and Compton scattering signals must be distinguishable, which can be achieved using linearly polarized X-rays. For linearly polarized X-rays, the differential Compton scattering cross-section is described by the Klein-Nishina formula:
For XFCT and CSCT, the signal detector is typically placed perpendicular to the incident X-ray beam, for example, θ = 90°. In this direction, the differential Compton scattering cross-section reaches its minimum and maximum values at
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Monte Carlo simulations
To demonstrate the feasibility of the simultaneous XFCT and CSCT, MC simulations were performed using the Geant4 toolkit [33]. The image layout is shown in Fig. 2. The X-ray source was modeled based on a Thomson scattering light source that can provide quasi-monochromatic, continuously energy-tunable, and polarization-controllable X-rays. To satisfy the field-of-view (FOV) requirements of a small-animal-sized imaging object (~ 5 cm) and quasi-monochromatic spectral conditions, a large source-to-sample distance is required for Thomson scattering light sources [34, 32]. To simplify the unnecessary X-ray transport before the phantom, a quasi-parallel X-ray beam (2D) was adopted in the MC simulations, which was incident on the phantom along the +z axis. The X-ray spectrum has a Gaussian distribution with a peak energy of E0 = 83 keV and an RMS bandwidth of 1.5%, which can be easily achieved using existing technologies [35, 36]. The incident X-rays are linearly polarized, and their polarization is tunable between the horizontal (x-axis) and vertical directions (y-axis).
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The phantom was a polytetrafluoroethylene (Teflon) cylinder with a diameter of 5.0 cm. Inside the Teflon cylinder were six cylindrical columns 1.0 cm in diameter, containing aluminum (Al), water (H2O), and gold (Au)-loaded water solution contrast agents. In the contrast agents, the Au weight fractions were 0.5, 1.0, 2.0, and 4.0 wt%, respectively. For Au, its K-edge EK is located at 80.72 keV [37] and its Kα lines generated by the Livermore library in Geant4 are 69.038 and 67.184 keV for
For fluorescent and Compton-scattered X-ray photon detection, a photon-counting detector (PCD) was placed perpendicular to the x-axis in the x–z plane, and the distance between the PCD and the center of the phantom was 8.0 cm. The PCD was modelled with a pixel size of 0.5 mm and a sensitive energy range of 20–100 keV; currently, these performances can be easily achieved [38]. For simplicity, the energy resolution and detection efficiency of the PCD were assumed ideal. A parallel-hole collimator made of lead (Pb) was placed at the front of the PCD. The length (x-axis direction) and opening size (z-axis direction) of the collimator are 5.0 cm and 0.5 mm, respectively. To improve the fluorescent and Compton-scattered X-ray photon detection efficiency and to improve the XFCT and CSCT reconstruction spatial resolution, a second PCD combined with a parallel-hole collimator was placed on the opposite side of the phantom, and the parallel-hole collimator was offset from the first one by half of the parallel hole pitch, as shown in Fig. 2. To correct the phantom attenuation in XFCT and CSCT, an ideal transmission detector with a pixel size of 0.2 mm was placed 0.5 m downstream of the phantom to acquire the phantom attenuation data.
In the MC simulations, 360-deg projections were acquired at a rotational step of 1° for the CT scan. To balance statistical error and simulation time, 5×109 photons were used for each projection.
Image reconstruction
Based on the imaging geometry in Fig. 2, the fluorescent and Compton-scattered X-ray photon detection can be divided into three steps.
• Stimulation of fluorescent and Compton-scattered X-ray photons in the phantom
As the incident X-ray travels from point A to point P to stimulate the fluorescent and Compton-scattered x-ray photons, the beam intensity is attenuated by the phantom,
• Emission of fluorescent and Compton-scattered x-ray photons
If Au is located at point P, the Kα fluorescence of Au is emitted isotropically as E0 is higher than EK. The differential intensity of fluorescent x-ray photons can be written as
• Detection of the fluorescent and Compton-scattered x-ray photons by the PCD
After passing through the parallel-hole collimator, the fluorescent and Compton-scattered X-ray photons are finally detected by the PCD. Along this path, the beam intensity is attenuated by the phantom from point P to boundary B. Therefore, the beam intensity of fluorescent and Compton-scattered X-ray photons coming from P and detected at detector pixel bin Di can be described as
According to the fluorescent and Compton-scattered X-ray photon detection process, the total fluorescent or Compton-scattered beam intensity detected at Di can be described as a volume integral of
Results and discussion
To realize simultaneous XFCT and CSCT, it is essential to distinguish between fluorescence and Compton scattering X-ray signals using linear polarization X-rays. To examine the feasibility of the proposed method, the PCD detected X-ray spectra at both horizontal and vertical X-ray polarizations were compared using the MC simulation results, as shown in Fig. 3(a). The spectra were acquired by summing all the pixels of the PCD with an ideal energy resolution after a full CT scan. As shown in Fig. 3(a), single Compton scattering can be significantly improved or suppressed in the vertical or horizontal X-ray polarizations, respectively, as predicted by the Compton scattering theory described in Sect. 2.1. Because single Compton scattering is suppressed in the case of horizontal polarization, the X-ray fluorescence projection used for XFCT reconstruction can be obtained directly by selecting a suitable detection-energy region for the PCD. In the MC simulations, the PCD energy region used for X-ray fluorescence detection was set to 67–69.5 keV. The Compton-scattering signal was obtained by subtracting the horizontal polarization spectrum from the vertical polarization spectrum, as shown in Fig. 3(b). Considering the influence of multiple scattering and Doppler broadening caused by electron motion, an effective Compton scattering energy region ranging from 66 to 77 keV was selected, as shown in the gray region in Fig. 3(b), and the Compton-scattering signal in this effective-energy region was used to generate the projection for CSCT reconstruction.
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After obtaining the XFCT and CSCT projections by changing the X-ray polarization, the XFCT and CSCT of the phantom were reconstructed simultaneously. The results are shown in Fig. 4. Also shown in Fig. 4 are the attenuation CT of the phantom reconstructed at X-ray peak energies of E0 = 83 keV, ECS = 71.40 keV, and EXRF = 68.13 keV with the same rms bandwidth of 1.5%. The attenuation CT data of the phantom were used to accurately calculate the terms
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To quantitatively analyze the reconstruction results, seven regions of interest (ROIs), depicted by the pink dotted squares in Fig. 4(f), were chosen. For XFCT, the reconstructed S value of the contrast agents, averaged over the ROI in Fig. 4(a), was compared with the actual Au concentration ρAu, and the results are shown in Fig. 5. Also shown in Fig. 5 is the linear fitting result. It can be clearly seen that S and ρAu have a good linear relationship, with r2 = 0.9999.
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Influence of multiple Compton scattering on XFCT
Although single Compton scattering can be greatly suppressed using horizontally polarized X-rays, multiple Compton scattering can still have an impact on XFCT. As shown in Fig. 4(b), the XFCT reconstruction quality, compared with the multiple Compton scattering correction result in Fig. 4(a), deteriorates owing to the influence of multiple Compton scattering. An effective method was developed to correct for this influence. Considering that multiple Compton scattering is almost uniformly distributed in the X-ray spectrum, as shown in Fig. 3(a), the multiple Compton scattering MSXRF in the X-ray fluorescence detection energy region can be calculated via linear interpolation:
To quantitatively evaluate the contrast improvement caused by multiple Compton scattering correction, the contrast-to-noise ratio (CNR) is calculated as
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Influence of X-ray fluorescence on CSCT
Compared with the Compton scattering signal covering a relatively wide energy region, the integrated X-ray fluorescence background was very weak in the vertical polarization case, as shown in Fig. 3(a). However, this weak X-ray fluorescence background can still affect the CSCT reconstruction quality. For comparison, the CSCT of the phantom was reconstructed without subtracting the X-ray fluorescence background acquired for horizontal polarization. The reconstruction results are presented in Fig. 7. Clearly, the contrast agent with 4.0% Au concentration cannot be discriminated from its surrounding background owing to the influence of X-ray fluorescence. To quantitatively analyze the influence of X-ray fluorescence background on CSCT, the CNR was calculated, and the results are shown in Fig. 6. It can be seen that the CNR values of Al, H2O, and the three contrast agents with lower Au concentrations are improved approximately 1.9-fold on average after the X-ray fluorescence correction. In addition, the CSCT reconstruction results are also influenced by serious artifacts, especially in the central Teflon area, as shown in Figs. 4(c) and 7. Unlike XFCT, in which only contrast agents can emit effective signals, all the materials in the phantom can produce Compton scattering signals in CSCT. For accurate CSCT reconstruction, projections of different materials with a higher SNR are required, and the strong statistical noise of the background material (i.e., Teflon) (while the fluorescence signal is sufficiently high for accurate XFCT reconstruction at the same photon flux) may cause these artifacts. Therefore, effective methods for CSCT reconstruction with a lower SNR should be developed to correct the artifacts in future studies. Owing to the influence of reconstruction artifacts, Al without X-ray fluorescence background correction can hardly be discriminated from the background (CNR~5, see Fig. 6), whereas it can be easily identified (CNR =11.56) after the X-ray fluorescence correction.
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Comparison with K-edge subtraction imaging
K-edge subtraction (KES) is an effective imaging modality for medical diagnosis that uses the K-absorption edge discontinuity of the contrast agent [41]. For this application, the Thomson-scattering light source has proven to be an excellent tool owing to its quasi-monochromaticity, energy tunability, and high brightness [42-46]. Previous studies using broad-spectrum X-ray tubes demonstrated that the CNR of KES is lower than that of XFCT when the contrast agent concentration is lower than 0.4% [47, 48]. However, this conclusion can be influenced by many factors, including the X-ray spectrum, imaging geometry, phantom type, and reconstruction method. To confirm our prediction, the KES results were analyzed using our imaging layout. Because the attenuation CT of the phantom was reconstructed at X-ray energies above and below the K-edge of Au in our simulation, the KES image of the phantom could be obtained at the same radiation dose level.
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Conclusion
Quasi-monochromatic, continuously energy-tunable, and straightforwardly polarization-controllable X-rays produced by Thomson scattering light sources provide excellent probes for polarization-based X-ray imaging. A method for simultaneous fluorescence and Compton scattering computed tomography using linear polarization X-rays was proposed, and its feasibility was demonstrated via Monte Carlo simulations. Owing to the influence of multiple Compton scattering, the contrast-to-noise ratio (CNR) of X-ray fluorescence computed tomography (XFCT) deteriorated, and an effective method for multiple Compton scattering correction based on simple linear interpolation was developed. Although the integrated intensity of X-ray fluorescence is very weak compared to Compton scattering, its influence on Compton scattering computed tomography (CSCT), especially for contrast agents with high Au concentrations, cannot be neglected. Compared with K-edge subtraction (KES) imaging, CSCT shows a poor material identification ability for contrast agents with Au concentrations ranging from 0.5 to 4.0 wt%, while XFCT exhibits a CNR advantage for the same contrast agents.
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