The following generally relates to dark field CT imaging and more particularly to reconstructing dark field CT image data.
In conventional CT imaging, contrast is obtained through the differences in the absorption cross-section of the constituents of the scanned object. This yields good results where highly absorbing structures such as bones are embedded in a matrix of relatively weakly absorbing material, for example the surrounding tissue of the human body. However, in cases where different forms of tissue with similar absorption cross-sections are under investigation (e.g., mammography or angiography), the X-ray absorption contrast is relatively poor. Consequently, differentiating pathologic from non-pathologic tissue in an absorption radiograph obtained with a current hospital-based X-ray system remains practically impossible for certain tissue compositions.
Dark-field (or grating-based differential phase-contrast) imaging overcomes the above-noted contrast limitation. Generally, dark-field imaging utilizes X-ray gratings, which allow the acquisition of X-ray images in phase contrast, which provides additional information about the scanned object. With dark-field imaging, an image is generated that is based on the scatter components of the X-ray radiation diffracted by the scanned object. Very slight density differences in the scanned object then can be shown at very high resolution. Dark-field imaging is discussed in greater detail in Pfeiffer et al., “Hard X-ray dark-field imaging using a grating interferometer,” Nature Materials 7, pp 134-137.
Wang et al., “New solution for reconstruction problem about grating-based dark field computed tomography, Proc. Fully 3D 2009, 438, and Bech et al., “Quantitative x-ray dark-field computed tomography,” Phys. Med. Biol. 55(2010) 5529 argue that the dark field image is a line integral of a physical quality, namely the second-moment of the small scattering distribution. Both Wang et al. and Bech et al. propose using a simple conventional filtered back-projection for reconstructing dark-field images. However, these publications are based on experiments using parallel beams and/or relatively small field of views (non-full body) and do not take into account the position of the object with respect the gratings.
Unfortunately, simple conventional filtered back-projection (FBP) is not well-suited for fan beam geometries and larger fields of view such as those used to scan humans in hospitals for diagnostic purposes since it implicitly assumes a data acquisition model that deviates from the true acquisition as will be discussed in more detail later. This mismatch of the true acquisition and the simplified model used in standard FBP leads to artifacts (like capping or cupping). Thus, there is an unresolved need for other approaches for reconstructing dark-field image data.
Aspects described herein address the above-referenced problems and others.
In one aspect, a method includes obtaining a dark-field signal generated from a dark-field CT scan of an object, wherein the dark-field CT scan is at least a 360 degree scan. The method further includes weighting the dark-field signal. The method further includes performing a cone beam reconstruction on the weighted dark-field signal over the 360 degree scan, thereby generating volumetric image data.
In another aspect, an imaging system includes a focal spot that emits radiation that traverses an examination region, an interferometer that filters the emitted radiation for a dark-field imaging scan of an object, a detector array that detects radiation traversing the examination region, and a reconstructor that reconstructs the dark-field signal over 360 degrees, generating volumetric image data.
In another aspect, a computer readable storage medium is encoded with computer readable instructions, which, when executed by a processor, cause the processor to: obtain a dark-field signal generated from at least a 360 degree dark-field CT scan of an object, weight the dark-field signal, and perform a cone beam reconstruction on the weighted dark-field signal over 360 degrees, thereby generating volumetric image data.
The invention may take form in various components and arrangements of components, and in various steps and arrangements of steps. The drawings are only for purposes of illustrating the preferred embodiments and are not to be construed as limiting the invention.
Conventional dark-field imaging reconstruction algorithms do not take into account “inverse signal magnification.” Generally, “inverse signal magnification” is a magnification that scales the height of the detected signal inversely with respect to the position of an object between the source of radiation and the detector. That is, the height of the detector signal for an object closer to the radiation source will be smaller (
“Inverse signal magnification” does not affect attenuation contrast imaging (
Turning to
With attenuation contrast imaging, as shown in
With attenuation contrast imaging, as shown in
I=I0e−∫
where I is the intensity at the detector pixel, I0 is the unattenuated intensity, e is the base of the natural logarithm, L is the length of the x-ray from the source 102 through the object 100 to the detector pixel 306, μ is the attenuation coefficient, {right arrow over (s)} is the source position, l is the length of the x-ray at a given unit vector {right arrow over (n)} along the x-ray from 0 to L. Logging both sides of the equations renders a linear equation representing the line integral of the attenuation coefficient along the path 302, as shown in EQUATION 2:
The “size magnification” is taken into account in conventional fan-beam FBP algorithms.
With dark field imaging, as shown in
As shown in
where V is the loss of visibility and V0 is the initial visibility. The material property σ that generates signal in this detection channel is denoted the diffusion coefficient. Logging both sides of the equations does not render the line integral of the diffusion coefficient along the path 302 in analogy to the attenuation coefficient but rather to a weighted line integral as shown in EQUATION 4:
The aim of dark field computed tomography is to reconstruct the spatial distribution of the diffusion coefficient σ from a set of measurements of the dark field signal m. As used herein, this is referred to as “reconstructing the diffusion coefficient”.
Similar to attenuation contrast imaging, the “size magnification” is taken into account in conventional fan-beam FBP algorithms; however, the “inverse signal magnification” (1/L) is not taken into account in conventional fan-beam FBP algorithms. The additional weighting l/L does not permit to use a conventional filtered back-projection to reconstruct the distribution of the diffusion coefficient. If the weighting factor barely changes over the object's extend, for example if the object is very small compared to the distance L, the additional weighting can be approximated to be constant or dropped.
Turning to
A radiation source 708 (e.g., an X-ray tube) with a focal spot 710 is rotatably supported by the rotating gantry 704, rotates with the rotating gantry 704, and emits radiation. A radiation sensitive detector array 712 is located opposite the radiation source 708 across the examination region 706. The radiation sensitive detector array 712 detects radiation traversing the examination region 706 and generates a signal indicative thereof.
The imaging system 700 includes an X-ray imaging interferometer having three grating structures, a source grating 714, a phase grating 718 and an analyzer grating 720. The source grating 714, phase grating 718 and analyzer grating 720 respectively have grating periods and are separated by distances 722 and 724 that satisfy the Talbot conditions, which are discussed in detail in Pfeiffer et al., “Hard X-ray dark-field imaging using a grating interferometer,” Nature Materials 7, pp 134-137.
The source grating 714 is adjacent to the focal spot 710 in the path of the radiation. The source grating 714 creates a beam of individually coherent, but mutually incoherent sources, which traverse an object 715 in the examination region 706. Generally, the radiation source 708 emits a polychromatic incoherent radiation beam, and the source grating, for example, an absorbing mask with transmitting slits, filters the emitted radiation beam, creating the individually coherent sources, which have sufficient spatial coherence for dark field imaging.
The phase grating 718 is located adjacent to the object 715 and receives the refracted coherent x-rays, which result in changes of the locally transmitted intensity through the phase grating 718. The analyzer grating 720 is adjacent to the detector array 712 in the path of the beam. Image formation using the gratings 718 and 720 is based on the principal that a phase object placed in an X-ray beam path causes slight refraction of the beam transmitted through the object, and imaging depends on locally detecting these angular deviations. The angle can be determined based on the arrangement formed by the gratings 718 and 720.
The gratings 718 and 720 can be considered a multi-collimator translating the angular deviations into changes of the locally transmitted intensity, which can be detected with a standard imaging detector. For weakly absorbing objects, the detected intensity is a direct measure of the object's local phase gradient. Higher precision of the measurement can be achieved by splitting a single exposure into a set of images taken for different positions of the grating 720. This also allows the separation of the dark field signal from other contributions, such as a non-negligible absorption of the object, or an already inhomogeneous wavefront phase profile before the object.
Generally, the object 715 causes slight refraction of coherent x-rays that is proportional to the local gradient of the real part of the refractive index of the object 715, and the angular deviation results in changes of the locally transmitted intensity through the phase grating 718 and the analyzer grating 720 that are detected by the detector array 110.
A reconstructor 728 reconstructs the signal based on a reconstruction algorithm(s) 730, generating volumetric image data. As described in greater detail below, in one non-limiting instance, the reconstructor 728 utilizes a reconstruction algorithm that takes into account magnification of the object 715, which can be determined based on the location of the object 715 between the focal spot 710 and the phase grating 718.
The magnification can be estimated based on EQUATION 5:
M=(SO+OG)/SO, EQUATION 5:
where SO represents a source grating-to-object distance 802, OG represents an object-to-phase grating distance 804, and SO+OG represents a source grating-to-phase grating (SG) distance 806. The magnification of a typical full body scanner is in a range of approximately 0.5 to 2.0. Note that although
From EQUATION 5, the magnification increases with an increasing OG/decreasing SO. Unfortunately, the magnification of the object, if not taken into consideration, results in artifacts in the reconstructed diffusion coefficient, which degrades image quality. As described in detail bellow, taking the magnification into account mitigates such artifacts and improves contrast, which allows for better discrimination between tissue (e.g., tumor and tissue) with similar contrast. For example, taking the magnification into account mitigates blurring, resulting from the magnification, which may make it difficult to discriminate between tissue having similar contrast characteristics.
A subject support 726, such as a couch, supports the object 715 in the examination region 706. A general-purpose computing system or computer serves as an operator console 732. The console 732 includes a human readable output device such as a monitor and an input device such as a keyboard, mouse, etc. Software resident on the console 732 allows the operator to interact with and/or operate the scanner 700 via a graphical user interface (GUI) or otherwise.
As discussed above, the reconstructor 728 can employ a reconstruction algorithm that takes magnification of the object 715 into account. An example reconstruction algorithm is an algebraic reconstruction technique (ART) reconstruction algorithm, which is an iterative reconstruction algorithm. For a conventional attenuation contrast CT reconstruction, a suitable ART is shown in EQUATION 6:
where xj(n+1) is the jth voxel of the (n+1)th image, xj(n) is the jth voxel of the previous image, bi is one the measured data (i.e., one particular line integral through the object), aik is the contribution of the kth image voxel to the ith measured line integral, ai is the sum of all aik over k. In this imaging model the elements aik of the so-called system matrix A contain the contribution of a voxel k to a measured line integral i as the line intersection length of the geometrical ray with the voxel. If other basis function than voxels are used, e.g., blobs, then the line integral along the ray through the basis function is used.
To take into account magnification, the system matrix A is modified to include the magnification term M of EQUATION 6, rendering EQUATION 7:
where dij is an element of the dark field system matrix D with dij=aij|Mij, where Mij is the geometrical magnification of the j-th image voxel when being projected onto the i-th detector pixel.
The following describes another suitable reconstruction. In
where the primes indicate that the geometrical values relate to the complementary x-ray. Logging both sides of the equations renders the weighted line integral of the diffusion coefficient along the complementary path 902, as shown in EQUATION 9:
In Equation 9, the fact that by definition of the complementary ray, the relation {right arrow over (n)}′=−{right arrow over (n)} holds true is exploited. Furthermore, it is assumed, for the sake of simplicity, L=L′. The source position for the complementary x-ray is somewhere on the ray of
Changing the variables l′=λ−l renders EQUATION 11:
Assuming the diffusion coefficient distribution outside of the field of view is zero and substituting l=l′, EQUATION 11 becomes EQUATION 12:
Summing m and m′ renders EQUATION 13:
For an axial 2D full scan, a weighted average for the ray 300 and the complementary ray can be computed as shown in EQUATION 14:
which can be solved using a conventional filtered back projection to reconstruct the diffusion coefficient distribution.
EQUATION 14 requires acquisition of the complementary ray and, thus, EQUATION 14 cannot be used for cone-beam reconstruction. The following describes an approach that extends EQUATION 14 for cone beam reconstruction.
Again, EQUATION 14 represents an average of the direct measurement m (e.g., ray 1200) and the complementary measurement m′ (e.g., ray 1300) and is applied to the entire 360 degree acquisition, with the resulting sinogram reconstructed using a conventional filtered back projection reconstruction algorithm. In EQUATION 14, λ represents the cosine of the fan angle.
EQUATION 14 can be re-written, symbolically, by denoting the full original 360 degree sinogram data as D(α,φ), where α represents an angular position of the source 710 (
From this, the original, exact FBP reconstruction can be written as shown in EQUATION 15:
σ=FBPF(D′(α,φ)+C′(α,φ)), EQUATION 15:
where σ represents the linear diffusion coefficient, and F indicates fan-bean. The fan-beam sinograms can be rebinned to parallel beam geometry. EQUATION 15 can be re-written as shown in EQUATION 16:
σ=FBPP(D′(r,β)+C′(r,β)), EQUATION 16:
where P indicates parallel-beam, r represents a distance of a ray to the origin and β represents an angle with respect to the x-axis, and r≧0 and 0≦β<2π. As with EQUATION 14, EQUATIONS 15 and 16 require complementary data.
Leveraging the linearity of FBP, EQUATION 16 can be expressed as shown in EQUATION 17:
σ=FBPP(D′(r,β))+FBPP(C′(r,β)). EQUATION 17:
Since the complementary ray 1300 is also a direct ray (just 180 degrees or π apart from the direct ray 1200), EQUATION 17 can be expressed as EQUATION 18:
σ=FBPP(D′(r,β))+FBPP(D′(r,β+π)). EQUATION 18:
With EQUATION 18, the averaging that was done originally in projection domain is now postponed and performed in image domain after back-projection.
In EQUATION 18, the two FBP terms should be identical since both FBP terms operate on the entire 360 degree sinogram data with just the data being reshuffled with respect to the projection angles (with ramp-filtering and interpolation performed on the same data). As such, EQUATION 17 can be written as EQUATIONS 19 and 20, using D′(r,β) as an approximation for C′(r,β):
σ=FBPP(D′(r,β))+FBPP(D′(r,β)), and EQUATION 19:
σ=2FBPP(D′(r,β)). EQUATION 20:
Rebinning the parallel-beam data back into the original fan-beam geometry renders EQUATION 21:
σ=2FBPF(D′(α,φ). EQUATION 21:
EQUATIONS 20 and 21 allow for an extension to cone-beam geometry since no explicit averaging of the direct and complimentary rays is required. For example, for a 360 degree axial cone-beam CT scan, the conventional full scan FDK cone beam reconstruction can be applied to the weighted sinogram D′. An example FDK reconstruction is discussed in Feldkamp et al., “Practical cone-beam algorithm”, J. Opt. Soc. Am. A/Vol. 1, No. 6/June 1984. Feldkamp et al. describes the general concept, including weighting with cone-angle and 3D BP with conventional weighting.
For a helical cone-beam CT scan, an aperture weighted wedge reconstruction can be applied to the weighted sinogram D′, with a normalization over 2PI-partners. An example approach for a high-resolution aperture weighted wedge reconstruction is discussed in Shechter et al., “High-Resolution Images of Cone Beam Collimated CT Scans”, IEEE Transactions on Nuclear Science 52(1), 247 (2005). In Shechter et al., a wedge-rebinning (the cone-beam extension of 2D parallel rebinning) is followed by a full scan back-projection with a weighting function. An angular weighted wedge (or extended wedge) reconstruction can be used with an angular weighting function that ensures that the weights of all views with distance 2π add to ½ independently.
At 1002, a dark-field signal is obtained for a scanned object.
At 1004, an inverse signal magnification of the scanned object is obtained.
At 1006, the dark-field signal is reconstructed using a reconstruction algorithm that includes the obtained magnification.
At 1102, a dark-field signal is obtained for a scanned object.
At 1104, a complementary dark-field signal is obtained for the scanned object. The signal and the complementary signal are 180 degrees apart.
At 1106, an average is computed based on the signal and the complementary signal.
At 1108, the average is reconstructed using a conventional filtered back-projection reconstruction algorithm.
At 1402, a dark-field signal is obtained for a scanned object from a 360 degree scan.
At 1404, the dark field signal is weighted.
At 1406, a full scan FDK reconstruction algorithm is applied to the weighted dark field signal over the 360 degree scan, as described herein.
At 1502, a dark-field signal is obtained for a scanned object from a 360 degree scan.
At 1504, the dark field signal is weighted.
At 1506, the weighted dark-field signal is rebinned into wedge geometry.
At 1508, an aperture or angular weighted full scan back-projection reconstruction algorithm is applied to the weighted rebinned dark field signal over the 360 degree scan, as described herein.
The invention has been described with reference to the preferred embodiments. Modifications and alterations may occur to others upon reading and understanding the preceding detailed description. It is intended that the invention be constructed as including all such modifications and alterations insofar as they come within the scope of the appended claims or the equivalents thereof.
This application is a national filing of PCT application Serial No. PCT/IB2013/053881 filed May 13, 2013, published as WO 2013/171657 A1 on Nov. 21, 2013, which claims the benefit of U.S. provisional application Ser. No. 61/646,520 filed May 14, 2012, which is incorporated herein by reference.
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PCT/IB2013/053881 | 5/13/2013 | WO | 00 |
Publishing Document | Publishing Date | Country | Kind |
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WO2013/171657 | 11/21/2013 | WO | A |
Number | Name | Date | Kind |
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20100310037 | Wang | Dec 2010 | A1 |
20110293064 | Huang et al. | Dec 2011 | A1 |
20130094625 | Huang et al. | Apr 2013 | A1 |
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2012000694 | Jan 2012 | WO |
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20150124927 A1 | May 2015 | US |
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61646520 | May 2012 | US |