|
1.INTRODUCTIONGrating-based X-ray differential phase-contrast1 uses the Talbot effect to retrieve additional information about the sample from the X-ray wavefront. Besides the conventional attenuation coefficient, the refractive index decrement and ultra-small-angle scattering as the linear diffusion coefficient2 can be obtained. This is achieved by generating a periodic interference pattern by a modulation grating G1, creating self-images at specific distances. The “intensity” is the local mean of the pattern, the relative magnitude of the modulation is called “visibility”, and the position of the pattern is the “phase”. These quantities are altered by the presence of a sample, where attenuation leads to an overall intensity reduction of the pattern, refraction shifts its lateral position and coherent small-angle scattering (diffusion) reduces the visibility. As the interference pattern is usually too small to be resolved directly, an analyzer grating G2 is placed in front of the detector to sub-sample the wavefront.3 One of the gratings is moved in small increments to obtain the convolution of the G2 modulation with the interference pattern at multiple positions. From these data points the three signals transmission, dark-field contrast, and differential phase shift can be retrieved. This procedure is called “phase stepping”. The method was developed with highly coherent synchrotron radiation and brought to laboratory setups by including a third grating G0 in the interferometer.4 Placed between G1 and a conventional X-ray source, it transforms the latter into many narrow slit sources which are mutually incoherent but produce individual G1 interference patterns adding up constructively at the detector plane. The combination of G0, G1, and G2 gratings is called a Talbot-Lau interferometer. Fig. 1 shows a sketch of the experimental setup of such an interferometer with inverse geometry,5 in which the sample is placed between G1 and G2. The first Talbot-Lau interferometer mounted in a continuously rotating clinical gantry is presented in.6 It is a modified, commercial CT platform with 80 cm bore size, operated in a standard clinical scan protocol and with sufficient field-of-view for imaging a human. The sampling of the stepping curve relies on vibrations intrinsic to the system, meaning no explicit phase stepping is performed. These vibrations also cause fluctuations of the interference pattern (intensity, visibility, and fringe phase) independently from the sample properties. For artefact-free reconstruction, it is required to separate changes of the interference pattern caused by vibrations from those caused by the sample. The goal of the presented work is to model the vibration-induced changes in such a way that this separation is possible. 2.METHODSThe experimental setup of interest in this work is a commercial clinical gantry platform (Brilliance iCT, Philips) which has been retrofitted with gratings to enable human CT scans giving dark-field contrast. A schematic of the interferometer and the expected modes of vibrations is shown in Fig. 1. The system design is presented in.6 The gantry is operated in a continuously rotating manner and the acquisition utilizes the vibrations intrinsic to the system which generate sufficient sampling of the stepping curve to perform phase retrieval. The general approach for separating the changes of the interference pattern induced by vibrations from those induced by the sample is to derive a parametric model from an air scan, which describes the interference pattern generated by the gratings and its variability. The goal is to minimize the number of parameters related to the actual vibration state, as they need to be determined for each subsequent sample scan due to their limited reproducibility. The process is set up in two steps: In the first step, polynomial variations for phase and visibility are assumed. In a second step, the number of parameters is reduced using a principal component analysis. 2.1Forward modelThe canonical forward model for the measured intensity using a stepped Talbot-Lau interferometer is4 with the expected intensity in detector pixel p ∈ {1,…, P} at stepping position index t ∈ {1,…, T}, flat-field intensity Ip, flat-field visibility Vp, flat-field phase 𝜙ρ, and the global phase shift γt induced by moving one of the gratings perpendicular to the grating bars. The flat-fields (Ip, Vp, 𝜙p) are intrinsic to the interferometer setup and usually assumed to be constant during a scan and between scans. In laboratory setups it is assumed that γt is known and exactly the same for air scan and sample scan. As indicated in Fig. 1 we expect various vibrations which will lead to a pixel- and time-dependent change of the intensity, visibility, and phase of the interference pattern. The forward model (1) is extended to with , , and representing spatial and temporal fluctuations over p and t. 2.2Phase fluctuationsAs indicated in Fig. 1 we assume translations and rotations of the G0 grating, G1 grating, the G2 carrier, and the individual G2 tiles. We initially treat each G2 tile as an independent interferometer, so p refers to a pixel behind one G2 tile. According to Dittmann et al.,7 the resulting changes of the phase can be accurately modeled by low-order two-dimensional polynomials over the detector. We define a two-dimensional polynomial term 𝓟 = (𝒫ijp) of order i along the width and order j along the height of the interferometer in pixel p as 𝒫ijp = w(p)ih(p)j. w(p) is the w coordinate along the width and h(p) the h coordinate along the height of the interferometer in pixel p. Each term of the polynomial is multiplied with a coefficient γijt to give A maximum order of one is chosen along the grating bars (in j here) and two perpendicular to them (in i here).7 2.3Visibility fluctuationsAccording to Horn et al.8 change in total phase (i.e. the terms inside the cosine) during an exposure leads to a visibility drop proportional to the first time-derivative of the total phase. Besides movement of the gratings, changes of the X-ray focal spot location can also cause visibility fluctuations as the gratings are bent to a cylindrical surface and carefully focused onto the intended source position. It is assumed that both can be approximated by two-dimensional polynomials. We formulate a general model for the visibility fluctuation with the maximum polynomial order in i and j doubled in comparison to (3), such that the first time-derivative of the phase vibrations can be modeled. 2.4Principal vibration componentsInstead of modeling each G2 tile independently, it is desirable to approximate the fluctuations with a small number of dominant shared modes to reduce the amount of free parameters per exposure. We use principal component analysis (PCA) to reduce the number of parameters. Let X ∈ ℝP×T be a data matrix with P variables in the rows and T observations in the columns. The singular value decomposition on X is given as X = UΣVT, with the orthogonal matrix U ∈ ℝP×P, the diagonal matrix Σ ∈ ℝP×T, and the orthogonal matrix V ∈ ℝT×T. Σ contains the singular values of X on its diagonal which are defined to be in descending order. The rows of ΣVT are the “principal components” of X and the columns of U are the “principal directions” of X, i.e. the magnitude of each principal component per observation. Let the function PCA be defined as acting on a matrix X and returning ΣVT and UT: PCA(X) → (ΣVT, UT). To apply PCA on the combined fluctuations from all G2 tiles, their terms and are concatenated along the width of the interferometer and the index p is changed from locally on a G2 tile to globally on the detector. With this definition of PCA, the joint principal components over all G2 tiles of the visibility and phase fluctuations are determined via The coefficients and correspond only to the magnitude of principal component k at exposure t, not to the original polynomial model. The fluctuations can now be approximated with a reduced number B⋆ and C⋆ of modes: The dominant modes of the intensity fluctuations 𝓐=(𝒜kp)∈ ℝP×T are determined by applying PCA on the normalized residuum with the measured values ŷpt and the predicted signal ypt including only visibility and phase fluctuations. Again we approximate with a reduced number A⋆ of modes: 3.RESULTSWe show the results from processing an air scan with the proposed PCA method in Fig. 2. The number of eigenvalues of XTX before the first “knee” in the scree plots of the principal components in intensity and visibility are used as A⋆ and B⋆, i.e. the number of vibration modes to keep for processing a sample scan. Because of the lack of a distinct knee in the phase channel, the number of modes C⋆ are increased until there is no noticeable difference in the reconstructed refractive index decrement. We obtain A⋆ = B⋆ = 2 and C⋆ = 4. Especially the phase vibrations show tile-wise behavior, while substrate structure is visible in the intensity. The vertical gray lines correspond to the gaps between G2 tiles. The main goal of the vibration modeling is to facilitate artefact-free reconstruction. This requires a simultaneous estimation of vibration parameters and sample parameters, which is in general a difficult task and described in a different paper.9 Here, we disentangle these two estimations by the following approach for demonstrating the accuracy of the model: The selected sample is small so that only the central part of the detector is covered. This allows us to fit the vibration parameters robustly by a least-squares fit to the outer parts of the detector for each exposure. Subsequently, object parameters are estimated using a sliding-window phase-retrieval.10 The vibration modes in Fig. 2 are used on the scan of an object consisting of a Polyoxymethylene (POM) cylinder of 5 cm diameter and six falcon tubes with 3 cm diameter each, filled with wool at three different levels of dampness, chocolate chips, water, and neoprene, respectively. One scan consists of 2400 exposures over a full 360° gantry rotation which takes 1 s. The X-ray tube is operated at 80 kVp and 550 mA. A subsequent air scan is used with the proposed reference processing method to extract the PCA vibration model shown in Fig. 2. The results are compared with a simplified pipeline in which fluctuations in all channels are only modeled with polynomials 𝒫ijp up to second order along width and height of the whole detector. Also in intensity, polynomials 𝓟 replace the dominant components 𝓐 from PCA. This simplified pipeline does not handle tile-wise vibrations nor the intricate details of the intensity fluctuations shown in Fig. 2. Fig. 3 shows the central slices of the resulting volumes in attenuation, diffusion coefficient,11 and refractive index decrement.12 The reconstruction is performed via filtered back-projection.13 The simplified pipeline using global polynomials suffers from artifacts in all channels. The attenuation and linear diffusion coefficient show roughly circular fringe artifacts. The refractive index decrement is dominated by concentric rings and a bright/dark blob structure in the center. None of these artifacts appear in the volumes reconstructed with vibrations from PCA. 4.CONCLUSIONWe proposed a processing scheme to identify and correct for vibrations of a Talbot-Lau interferometer mounted inside a rotating clinical CT gantry. The tile-wise vibrations are coupled by applying principal component analysis (PCA) and only the first few dominant components are used for processing a sample scan. In the intensity channel dominant fluctuation components are identified by PCA on the normalized residual. The resulting vibration model has few parameters per exposure for the intricate fluctuations, still allowing for an artifact-free reconstruction of a sample. A comparison with a vibration model using global polynomial fluctuations in all channels shows that they are not sufficient to capture the system’s dynamics and lead to artifacts in the reconstruction of a sample. ACKNOWLEDGMENTSThe authors wish to thank Pascal Meyer, Jürgen Mohr, Frank Bergner, Maximilian von Teuffenbach, and Amanda Pleier for their support. This work was carried out with the support of the Karlsruhe Nano Micro Facility (KNMF, www.kit.edu/knmf), a Helmholtz Research Infrastructure at Karlsruhe Institute of Technology (KIT). We acknowledge the support of the TUM Institute for Advanced Study, funded by the German Excellence Initiative, the European Research Council (ERC, H2020, AdG 695045) and Philips GmbH Market DACH. REFERENCESLohmann, A. and Silva, D.,
“An interferometer based on the Talbot effect,”
Opt. Commun., 2 413
–415
(1971). https://doi.org/10.1016/0030-4018(71)90055-1 Google Scholar
Pfeiffer, F., Bech, M., Bunk, O., Kraft, P., Eikenberry, E. F., Brönnimann, C., Grünzweig, C., and David, C.,
“Hard-X-ray dark-field imaging using a grating interferometer,”
Nat. Mater., 7 134
–137
(2008). https://doi.org/10.1038/nmat2096 Google Scholar
Momose, A., Kawamoto, S., Koyama, I., Hamaishi, Y., Takai, K., and Suzuki, Y.,
“Demonstration of X-ray Talbot interferometry,”
Jpn. J. Appl. Phys., Part 2, 42 L866
–L868
(2003). https://doi.org/10.1143/JJAP.42.L866 Google Scholar
Pfeiffer, F., Weitkamp, T., Bunk, O., and David, C.,
“Phase retrieval and differential phase-contrast imaging with low-brilliance X-ray sources,”
Nat. Phys., 2 258
–261
(2006). https://doi.org/10.1038/nphys265 Google Scholar
Donath, T., Chabior, M., Pfeiffer, F., Bunk, O., Reznikova, E., Mohr, J., Hempel, E., Popescu, S., Hoheisel, M., Schuster, M., et al.,
“Inverse geometry for grating-based x-ray phase-contrast imaging,”
Journal of Applied Physics, 106
(5),
(2009). https://doi.org/10.1063/1.3208052 Google Scholar
Viermetz, M., Gustschin, N., Schmid, C., Haeusele, J., von Teuffenbach, M., Meyer, P., Bergner, F., Lasser, T., Proksa, R., Koehler, T., and Pfeiffer, F.,
“Dark-field computed tomography reaches the human scale,”
in Proceedings of the National Academy of Sciences,
(2022). Google Scholar
Dittmann, J., Balles, A., and Zabler, S.,
“Optimization based evaluation of grating interferometric phase stepping series and analysis of mechanical setup instabilities,”
J. Imaging, 4
(2018). https://doi.org/10.3390/jimaging4060077 Google Scholar
Horn, F., Leghissa, M., Kaeppler, S., Pelzer, G., Rieger, J., Seifert, M., Wandner, J., Weber, T., Michel, T., Riess, C., and Anton, G.,
“Implementation of a Talbot-Lau interferometer in a clinical-like c-arm setup: A feasibility study,”
Scientific Reports, 8
(2018). https://doi.org/10.1038/s41598-018-19482-z Google Scholar
Haeusele, J., Schmid, C., Viermetz, M., Gustschin, N., Lasser, T., Bergner, F., Koehler, T., and Pfeiffer, F.,
“Dark-field for human CT – Sample data processing at the first clinical prototype,”
in submitted to CT Meeting 2022,
Google Scholar
Zanette, I., Bech, M., Rack, A., Le Duc, G., Tafforeau, P., David, C., Mohr, J., Pfeiffer, F., and Weitkamp, T.,
“Trimodal low-dose x-ray tomography,”
in Proceedings of the National Academy of Sciences,
10199
–10204
(2012). Google Scholar
Bech, M., Bunk, O., Donath, T., Feidenhans, R., David, C., and Pfeiffer, F.,
“Quantitative x-ray dark-field computed tomography,”
Physics in Medicine & Biology, 55
(18),
(2010). https://doi.org/10.1088/0031-9155/55/18/017 Google Scholar
Pfeiffer, F., Kottler, C., Bunk, O., and David, C.,
“Hard x-ray phase tomography with low-brilliance sources,”
Phys. Rev. Lett., 98
(2007). https://doi.org/10.1103/PhysRevLett.98.108105 Google Scholar
van Stevendaal, U., Wang, Z., Koehler, T., Martens, G., Stampanoni, M., and Roessl, E.,
“Reconstruction method for object-position dependent visibility loss in dark-field imaging,”
in [Medical Imaging 2013: Physics of Medical Imaging], International Society for Optics and Photonics,
(2013). Google Scholar
|