The disclosure relates to devices, systems and methods relating to the acquisition and processing of CT images. Namely, various disclosed implementations feature a three-step iterative algorithm based on maximum likelihood and sparse representation and reconstructs images with spectral information from only one scan on a standard energy-integrating detector.
Since the introduction of X-ray computed tomography (“CT”) in 1972, it has become apparent that low-energy photons are absorbed by the body more readily than high-energy photons. This differential in absorption is known in the art as the “hard-beam effect,” and presents several limitations. The implementation of spectral CT has become an area of focus in counteracting the hard-beam effect.
Various hardware systems have been developed to implement spectral CT. For example, in dual-energy CT, a CT machine (such as a GE Discovery CT750 HD) scans an object with two distinct energy spectra. Dual-energy CT machines are rare and costly. Another strategy is to use a single X-ray spectrum but with energy-discriminative detectors to capture responses at different energies, and the data is processed using spectral CT iterative reconstruction algorithms. Others have attempted to improve the hardware of CT machines to reduce hard-beam artifacts, through methods such as pre-filtering the X-ray beam.
Several software approaches have also been developed. Early attempts sought to reduce beam-hardening streak artifacts, and the idea of spectral CT emerged. An iterative maximum-likelihood polychromatic algorithm for CT (“IMPACT”) was developed. IMPACT seeks to find the attenuation coefficient distribution that maximizes the log-likelihood function. It was demonstrated that the IMPACT algorithm is good at eliminating beam-hardening artifacts, and it can be applied in reducing metal artifacts. The use of a filtered back projection (“FBP”) reconstruction algorithms has been the most popular method of reconstructing CT images. In the FBP reconstruction algorithm, a linear attenuation coefficient is reconstructed. In these applications, it is assumed that the linear attenuation coefficient is energy-independent.
However, as discussed above, when X-rays penetrate the human body, low-energy photons are more readily absorbed than high-energy photons. In particular, linear attenuation coefficients reconstructed by the FBP algorithm tend to have a poor contrast resolution for low-density soft tissues and therefore yield poor results in the diagnosis of challenging lesions. Many iterative FBP reconstruction algorithms have also been introduced since the first commercial CT scanner was developed in 1972. Typically, these prior art iterative algorithms also suffer from the hard-beam effect because the spectrum of X-rays is ignored in computing the underlying attenuation coefficients.
Finally, many practitioners utilizing FBP and other reconstruction algorithms inject iodine contrast material into the blood to address the hard-beam effect. However, an iodine injection can cause medical complications and increase costs, and therefore does not present an ideal spectral CT solution.
There is a need in the art for improved systems and methods for the implementation of spectral CT. Unlike the hardware improvements discussed above, the disclosed embodiments can realize spectral CT by implementing iterative algorithms on existing CT hardware platforms.
Dual-energy or multi-energy CT can produce spectral information of an object. It uses either two scans, one for lower-energy and the other for higher energy X-ray, or one scan using an energy-discriminative detector. The presently-disclosed examples and implementations utilize an algorithm capable of reconstructing an image with spectral information from just one scan through data from a current energy-integrating detector. Accordingly, color CT images can be created by merging reconstructed images at multiple energy levels or by an adaptive color fusion method.
In these embodiments, the spectral curves of the attenuation coefficient μ(r, E) can be established and analyzed at any point in the scanned object. These spectral curves present a valuable tool in diagnosing the nature of a tumor, including soft, difficult lesions. Further, the presently disclosed system and methods do not require new CT hardware: existing machines can be used. The disclosed systems and methods utilize an algorithm generating a sparse representation in a framelet system. The various implementations of the disclosed algorithm are based on a polychromatic acquisition model for X-ray CT, where the linear attenuation coefficients (designated μ) are energy-dependent. One advantage of the presently disclosed implementations is that practitioners can reduce the use of iodine by accounting for the continuous spectrum information of X-rays. These implementations can also provide more detailed anatomical information.
Described herein are various embodiments relating to devices, systems and methods for reconstructing CT images. Although multiple embodiments, including various devices, systems, and methods of generating these images are described herein as an “algorithm,” this is in no way intended to be restrictive to a specific modality, implementation or embodiment.
In Example 1, a system of one or more computers can be configured to perform particular operations or actions by virtue of having software, firmware, hardware, or a combination of them installed on the system that in operation causes or cause the system to perform the actions. One or more computer programs can be configured to perform particular operations or actions by virtue of including instructions that, when executed by data processing apparatus, cause the apparatus to perform the actions. One general aspect includes a method for reconstructing a polychromatic CT image from a single scan, including providing a computer implementing a computer-readable media and implementing a framelet-based iterative algorithm including a scaled-gradient descent step, a non-negativity step, and a soft thresholding step. Other embodiments of this aspect include corresponding computer systems, apparatus, and computer programs recorded on one or more computer storage devices, each configured to perform the actions of the methods. In certain embodiments, a system may be provided that includes a processing device and a non-transitory computer-readable medium accessible by the processing device. The processing device may be configured to execute logic embodied in the non-transitory computer-readable medium to reconstruct the discussed images from a single CT scan.
A system of one or more computers can be configured to perform particular operations or actions by virtue of having software, firmware, hardware, or a combination of them installed on the system that in operation causes or cause the system to perform the actions. One or more computer programs can be configured to perform particular operations or actions by virtue of including instructions that, when executed by data processing apparatus, cause the apparatus to perform the actions. One general aspect includes A system for reconstructing a polychromatic CT image from a single scan using energy-dependent attenuation coefficients, including: a computer implementing a computer-readable media including the single CT scan; and an analysis unit executing a computer program configured for implementing a framelet-based iterative algorithm for CT image reconstruction including: a scaled-gradient descent step; a non-negativity step; and a soft thresholding step. Other embodiments of this aspect include corresponding computer systems, apparatus, and computer programs recorded on one or more computer storage devices, each configured to perform the actions of the methods.
Implementations may include one or more of the following features. The system in which the soft thresholding step includes constant or variant thresholding sizes. The system in which the scaled-gradient descent step includes constant or variant step sizes. The system in which the framelet-based iterative algorithm further includes a color reconstruction step. The system further including a CT platform. The system in which the soft thresholding step is configured to promote sparsity in the framelet domain. The system in which the during non-negativity step, any negative components are set to 0 to maintain positivity of attenuation coefficients ϕ, θ. The system in which the color reconstruction step further includes an adaptive color fusion method. The system in which the reconstructed CT image is interior spectral CT The system in which the reconstructed CT image is global spectral CT. The system in which ϕ=ϕ(r) defines a photoelectric component and θ=θ(r) defines a Compton scatter component of the attenuation coefficient μ(r,E) at each point r. The system in which the iterative algorithm includes iterating on n as follows:
The system in which the system is configured to assign RGB components to obtain a color image. The system further including an adaptive color fusion method. The system in which the adaptive color fusion method is based on a singular value decomposition. The system further including a tight frame system with wavelet structure. The system in which the non-negativity step is configured to reset negative values to zero at each point r to promote processing. The system further including a CT platform configured to generate a single polychromatic scan. Implementations of the described techniques may include hardware, a method or process, or computer software on a computer-accessible medium.
One general aspect includes A single scan polychromatic CT image reconstruction system, including: a computer implementing a computer-readable media including a single CT scan; and a processor configured to implement a framelet-based iterative algorithm configured for implementing a framelet-based iterative algorithm for CT image reconstruction from the single CT scan, the iterative algorithm including: a scaled-gradient descent step of constant or variant step sizes; a non-negativity step; a soft thresholding step; and a reconstruction step, where the processor is configured to reconstruct the CT image following the execution of the iterative steps. Other embodiments of this aspect include corresponding computer systems, apparatus, and computer programs recorded on one or more computer storage devices, each configured to perform the actions of the methods.
Implementations may include one or more of the following features. The system in which the color reconstruction step further includes an adaptive color fusion method. The system in which the reconstructed CT image is interior spectral CT The system in which the reconstructed CT image is global spectral CT. The system in which ϕ=ϕ(r) defines a photoelectric component and θ=θ(r) defines a Compton scatter component of the attenuation coefficient μ(r,E) at each point r. The system in which the system is configured to assign RGB components to obtain a color image. The system further including an adaptive color fusion method. The system in which the adaptive color fusion method is based on a singular value decomposition. The system further including a tight frame system with wavelet structure. The system in which the non-negativity step is configured to reset negative values to zero at each point r to promote processing. The system further including a CT platform configured to generate a single polychromatic scan. Implementations of the described techniques may include hardware, a method or process, or computer software on a computer-accessible medium.
One general aspect includes A system for reconstructing a polychromatic CT image from a single CT scan using energy-dependent attenuation coefficients, including: at least one x-ray tube; at least one detector configured to receive x-rays from the at least one x-ray tube; the single CT scan generated by the at least one detector; and an analysis unit operably coupled to the at least one detector, the analysis unit including a computer program configured for implementing a framelet-based iterative algorithm for CT image reconstruction from the single CT scan, the iterative algorithm including: a non-negativity step such that negative components are set to zero to force attenuation coefficient positivity; a soft thresholding step on framelet coefficients to impose image framelet domain sparsity; and a scaled-gradient descent step to decrease the l2-norm error. Other embodiments of this aspect include corresponding computer systems, apparatus, and computer programs recorded on one or more computer storage devices, each configured to perform the actions of the methods.
Implementations may include one or more of the following features. The system further including an adaptive color fusion method. The system in which the adaptive color fusion method is based on a singular value decomposition. The system further including a tight frame system with wavelet structure. The system in which the non-negativity step is configured to reset negative values to zero at each point r to promote processing. The system further including a CT platform configured to generate a single polychromatic scan. Implementations of the described techniques may include hardware, a method or process, or computer software on a computer-accessible medium.
One or more computing devices may be adapted to provide desired functionality by accessing software instructions rendered in a computer-readable form. When software is used, any suitable programming, scripting, or other type of language or combinations of languages may be used to implement the teachings contained herein. However, software need not be used exclusively, or at all. For example, some embodiments of the methods and systems set forth herein may also be implemented by hard-wired logic or other circuitry, including but not limited to application-specific circuits. Combinations of computer-executed software and hard-wired logic or other circuitry may be suitable as well.
While multiple embodiments are disclosed, still other embodiments of the disclosure will become apparent to those skilled in the art from the following detailed description, which shows and describes illustrative embodiments of the disclosed apparatus, systems and methods. As will be realized, the disclosed apparatus, systems and methods are capable of modifications in various obvious aspects, all without departing from the spirit and scope of the disclosure. Accordingly, the drawings and detailed description are to be regarded as illustrative in nature and not restrictive.
The various embodiments disclosed and contemplated herein relate to imaging platforms and related systems, devices and methods that realize spectral CT by implementing algorithms on existing CT hardware platforms. Certain embodiments relate to machine vision systems having an imaging device with inconsistent lighting compensation. In exemplary embodiments of the system, a computer platform comprising a computer-readable media and a data processing system are provided for recording, monitoring and modifying the raw data and generating the visual images described herein.
It is understood that photons may be absorbed or scattered as the result of interaction with a material, such as during a scan. The most important process at low photon energy is the photoelectric effect (designated by ϕ), which is the absorption of a photon with subsequent ejection of an atomic electron. The absorption coefficient for this photoelectric effect decreases as the photon energy increases. Scattering of photons by atomic electrons then takes a large contribution to the total attenuation coefficient (designated by μ) in the middle energy range (for example 500 KeV to 5 MeV). In these settings, most scattering is Compton scattering (designated by θ). Beyond 5 MeV the pair production effect dominates, in which a photon may be absorbed and produces a pair of an electron and a positron. Because the CT scanning implementations described here are focused on low- and middle-energy X-ray ranges, only photoelectric absorption and Compton scattering are considered, as it is possible to reconstruct the CT scan from these values for each given point r. Further explanation of the various implementations are found herein. It is understood that the disclosed implementations of the system can be performed in conjunction with the various techniques disclosed or otherwise described in Y. Wang, G. Wang, S. Mao, W. Cong, Z. Ji, J.-F. Cai, and Y. Ye, A Spectral Interior CT by a Framelet-Based Reconstruction Algorithm, Journal of X-Ray Science and Technology, 24(6): 771-785, 2016 and Y. Wang, G. Wang, S. Mao, W. Cong, Z. Ji, J.-F. Cai, and Y. Ye, A framelet-based iterative maximum-likelihood reconstruction algorithm for spectral CT, Inverse Problems, 32(11):115021(16 pp), 2016, both of which are hereby incorporated by reference in their entirety.
Turning to the figures in greater detail, the CT system 100 as shown in
For example, in various embodiments, and as shown in
As would be appreciated by one of skill in the art, the reconstruction system 100 invokes a “non-linear inverse problem.” As used herein, an “inverse problem” can be understood to mean a process for reconstructing a model (designated m) from observed data d. In these implementations, a “linear inverse problem” can be described by the linear equations d=Gm where G is a matrix multiplied to m. A “non-linear inverse problem,” however, cannot be similarly formulated as a linear equation and is therefore inherently more difficult to solve.
As discussed herein in detail, the disclosed system 100 can implement an iterative algorithm using a polychromatic acquisition model with framelet sparsity. As is shown in the drawings and accompanying description, the various implementations of the disclosed CT system 100 are able to utilize a single standard X-ray scan by way of a data acquisition model, a framelet-based image processing method, and the presently disclosed algorithm. Experimental results are demonstrated in the accompanying examples and conclusions are also given herein.
As best shown in
Continuing with
In certain of the forgoing examples, ϕ(r) and θ(r) can be discretized at all points r to ϕj and θj, where j=1, . . . , J as a point index runs through all points r after the discretization. In these examples, ϕ=(ϕ1, . . . , ϕj) and θ=(θ1, . . . , θj) can be written as vectors. In one such example, ϕj0 and θj0, or ϕ0=(ϕ10, . . . , ϕj0) and θ0=(θ10, . . . , θj0) can be denoted, and the initial values selected as described above.
In certain of the forgoing examples, because the attenuation coefficients of the body can be approximated as piecewise constant or piecewise linear or piecewise smooth, it is possible to add a framelet sparse representation as a regularization term to the objective function, such that the final objective function is formulated as:
min ϕ,θF(ϕ,θ)=minϕ,θλ1(∥Wϕ∥1+λ2∥Wθ∥1)−L. (A)
where ϕ and θ are vectors of ϕj and θj, j=1, 2, . . . J respectively.
For the “smooth part” (−L), it is possible to use a scaled gradient descent method, while for the nonsmooth part, it is possible to utilize a soft-thresholding method defined by
for |x|>λ, and zero elsewhere for the three-step iterative reconstruction algorithm as follows: (1) Set initial values ϕj0, θj0, (2) Iterate on n (3) The outcome of (2) ϕ*j, θ*j, is the solution of Eq. (A), which represents the attenuation coefficients at the reference energy E0. And then the energy-dependent attenuation coefficients μj,k at any energy can be computed by solving for μjk. In various implementations, these steps can be performed in any order.
In one implementation, under an iteration algorithm, the superscript 0 can be used for ϕ, θ, ϕj and θj such that these will increase to positive fractions or integers. Turning to
where L=L(ϕ, θ) is a log likelihood as defined herein in relation to Eqs. (7)-(10) and its formula is given in Eq. (10A). The operations in the last two equations above are given in Eq. (17) below. As is demonstrated herein, W is understood by those of skill in the art to be an operator which transfers
and
to the framelet domain, Tλ
Here δ1 and δ2 are step sizes for the ϕ and θ components, respectively. These step sizes may be taken as constant or variant coefficients and are allowed to change at each iteration step. They may have different values for different index j.
As described herein in greater detail, each iteration of exemplary implementations comprises three sub-steps which may be performed in any order. These sub-steps include: a rescaled gradient descent method (box 24); a non-negativity step (box 26), and a a thresholding operation (box 28), as are described herein. It will be appreciated by those of skill in the art that various additional steps may be performed, and that certain of these steps may be performed in any order and any number of times until the stop criterion (box 30) are reached.
In one sub-step, the system can apply a rescaled gradient descent method (box 24) to decrease the l2-norm error in fitting the polychromatic acquisition model. Further discussion of this step can be found in relation to Eqs. (14) and (15), below.
In another sub-step, non-negativity is imposed (box 26), such that negative components are set to 0 to keep positivity of the attenuation coefficients (ϕ, θ). In implementations of this step, if any of computed values
are negative, it is possible to reset that negative value to zero at each point r to promote processing. Further discussion of this step can be found in relation to Eq. (16), below.
In another sub-step, a thresholding operation (box 28) is performed on framelet coefficients to make the image sparse in the framelet domain. A tight frame system is a generalization of an orthonormal basis of a Hilbert space and can be overcomplete and redundant. As would be appreciated by a skilled artisan, a framelet system is a tight frame system which has a wavelet structure. In various implementations, the framelet system can utilize discrete framelets, such as those previously constructed by Daubechies. Further discussion of this step can be found in relation to Eq. (17), below.
For example, the method of soft thresholding can include the discrete framelet system described above, wherein one transforms
to the tramelet domain, i.e., expresses
as linear combinations of the framelets. In this example, small coefficients can be set to zero by soft thresholding, and the algorithm can then transform the sparsified coefficients back to ϕ, θ and name them ϕn+1, θn+1 This step represents a denoising procedure using framelet sparsity.
In the disclosed implementations, the various sub-steps can be performed in any order within an iterative cycle. In any event, the present system 100 can also apply a standard iteration stop criterion (box 30) such as the mean square error (“MSE”) criterion or the successive difference criterion. If this stop criterion is not met, the iterations (box 22) continue until the criterion has been met. When the stop criterion is satisfied, the system is able to terminate the iteration and output the outcome: ϕ=ϕn+1, θ=θn+1 at each point r (arrow 32 in
As shown in
In various implementations, as shown in box 50, the attenuation coefficient pt(r, E) can be established (box 50). Further discussion can be found in relation to Eq. (1) and (2).
In various implementations, as shown in box 52, a color overlay may be performed by the attenuation coefficients μ(r, E) at multiple monochromatic energy levels, or by an adaptive color fusion method, as is discussed below. Further discussion can be found in relation to
In various implementations, as shown in box 54, spectral curves can be generated. These spectral curves can provide a valuable tool in diagnosing nature of a tumor. Further discussion can be found in relation to
In various implementations, as shown in box 56, images of the photo-electronic component ON can also be generated, which can provide a valuable tool to identify boundary of a tumor. Further discussion can be found, for example, below and in relation to
A polychromatic acquisition model is incorporated into the algorithm used in various implementations.
The X-ray attenuation coefficient is given by μ(r, E) at the point r∈Ω for the energy E of the X-ray, where Ω is the image domain. Accordingly, the attenuation coefficient can be approximated as follows:
μ(r,E)=ϕ(r)Φ(E)+θ(r)Θ(E) (1)
Where the photoelectric component is ϕ(r) and the Compton scatter component is θ(r), both being independent of the energy E. Further, Θ(E) is defined by the Klein-Nishina function, as follows:
where ε=E/511 keV.
In this implementation, L represents a straight line passing through an object Ω which presents an X-ray beam. The initial intensity of beam L can be denoted by I0(E), with photon energy E. Accordingly, the intensity measured by the detector of the beam L is as follows:
From Eq. (3), it is possible to reconstruct the attenuation coefficient μ from I. As such, this no longer presents a linear problem because a logarithmic transfer is non-linear. When the X-ray source is a monoenergectic source, μ(r, E)=μ(r), and I0(E)=I0. Therefore (3) can be expressed as:
I=I0 exp(−∫Lμ(r)dr) (4)
It is thereafter possible to reconstruct the attenuation coefficients μ(r) after taking the logarithm on each side of Eq. (4).
Under standard theory, the reconstruction problem can be made linear by the mean value theorem of integrals. Accordingly, Eq. (3) can be reduced to:
where Ē is the equivalent energy.
From Eq. (5), if I is denoted as I(E) and
the result is given by:
Because the log(I0(E)/I(Ē)) term can be computed from the scanning data, the ∫L μ(r, Ē) dr term is known for all X-ray beams L passing through Ω.
Using Eq. (6), the reconstruction of μ(r, Ē) for r∈Ω becomes a linear problem which can be solved by conventional methods. However, the reconstructed linear attenuation coefficients μ(r, E) given by Eq. (6) are actually the linear coefficients at an equivalent energy Ē, which is regarded as independent of the energy E and therefore do not provide spectral information. Accordingly, the approximation μ(r, E)=μ(r, Ē), produces beam-hardening artifacts, because equivalent energy Ē is increased: the lower energy spectrum will be absorbed in higher proportions than the higher energy spectrum. In order to address these artifacts, the presently disclosed CT system 100 utilizes an iterative reconstruction algorithm for spectral CT.
As has been previously described in a discrete setting, photon energy E can be discretized as Ek, k=1, 2, . . . , K, the measurements discretized as yi, i=1, 2, . . . , M, and the linear attenuation coefficients discretized as μjk for j=1, 2, . . . , J, and k=1, 2, . . . , K. Here i, j, k are the indices of measurements, image pixels, and energy levels, respectively, and M, J, K are total numbers of measurements, image pixels and energy levels. Thus, in a discrete setting the model value for ŷi should be given by:
where bik is the total intensity detected by detector i without the scanned object for incident photons of energy Ek, given by:
bik=IikSkEk (7B)
Where Iik is the incident number of photons, Sk is the detector sensitivity factor, and Ek is photon energy (keV). The factor Ek is introduced because the detectors of CT (most CT machines use scintillation-type detectors) are energy-counting, while in nuclear medicine they use photon-counting detectors. The measurement yi approximately follows a Poisson distribution with an expectation ŷi, where the probability density function is:
Given that for any given i, yi is an independent Poisson random variable with expectation ŷi, the log-likelihood is given by:
The number of unknowns in (7A) is JK. Vector space can be introduced to reduce the total of unknowns. That is, the energy-dependent linear attenuation coefficients μjk can be linearly represented by basis functions. Further, the energy-dependent attenuation coefficient(s) (μjk) can be decomposed into two base functions from the photoelectric component and the Compton scatter component, as follows:
μjk=ϕjΦ(Ek)+θjΘ(Ek) (9)
Eq. (9) therefore represents the discrete version of Eq. (1), where:
where E0 is a reference energy (e.g., E0=70 keV), and
with Θ in Eq. (2). Here ϕj represents the photoelectric component at energy E0, and θj represents the Compton scatter component at E0.
Having performed this decomposition, the number of unknowns is then 2J, a significant reduction from that given by Eq. (7A). To further reduce the number of unknowns to J, a least squares fit is applied to and ϕj and θj=1, 2, . . . , J, obtaining an analytic expression of ϕj and Θj in terms of μj.
In various implementations of the presently disclosed system 100 and associated algorithms, no reduction in the number of the 2J unknowns is performed to maintain the spectral information. Instead, the μjk term is substituted in Eq. (7A) with that of Eq. (9) to give the present acquisition model:
Further substituting Eq. (10) into Eq. (8), a log-likelihood L(ϕ, θ) is given, where ϕ and θ represent column vectors of ϕj and θj for j=1, 2, . . . , J, respectively as follows:
Tight frame and framelet applications are used to establish the algorithm utilized in the presently disclosed systems, methods and devices for sparse representation of the energy-dependent attenuation coefficients.
In the present examples, represents a Hilbert space. In these examples, a countable set ⊂ can be referred to as a “frame” if the analysis operator is bounded above and below, such as:
where (.,.) is the inner product and ∥·∥ is the norm in the Hilbert space.
Accordingly, if C1=C2, the system is called a “tight frame”. It can be assumed that C1=C2=1 in tight frames, thereby giving:
which is equivalent to:
As would be apparent to a skilled artisan, orthonormal basis is a tight frame, because the conditions of Eqs. (11) and (12) hold for any orthonormal bases in . However, it is understood that a tight frame is not necessarily an orthonormal basis. Accordingly, the analysis operator (or decomposition operator) D:→I2 can be defined by:
Df={<f,g>} for any f∈,
and the synthesis operator R: I2→ is defined by:
for any
w={wg}∈I2.
It is therefore clear that R=D*, and condition (12) implies: DD*=I.
However, typically DD*≠I. Therefore, tight frame can serve as a generalization of orthonormal basis. A tight frame system can also be overcomplete and redundant. The advantage of tight frame system over orthonormal basis for image representation as is discussed further in Jian-Feng Cai, Raymond H. Chan, Zuowei Shen, A framelet-based image inpainting algorithm, Applied and Computational Harmonic Analysis, Volume 24, Issue 2, 2008, Pages 131-149, which is incorporated herein by reference.
There are many tight frame systems that can sparsely represent piecewise smooth functions, including framelets and curvelets. The present implementations use framelets to sparsely represent the photoelectronic component and Compton scatter component of the attenuation coefficients.
Framelet systems are tight frames having a wavelet structure and constructed from the unitary extension principle (“UEP”). The present implementations focus on the description of discrete framelet transformations, as numerical computations are eventually performed in the discrete form. Each framelet system is associated with a family of discrete sequences {hi}i=0s, called filters. Among them, h0 is referred to as the “low-pass filter,” and the others are “high-pass filters.” The one level non-downsampling discrete framelet transform is given by:
where hi*, i=0, 1, . . . s, is the matrix form of the discrete convolution with kernel hi. To establish a multi-level decomposition, we just need to apply the matrix D in (13) to h0 recursively. When the filters satisfies UEP, the rows of D will form a tight frame in the Euclidean space, i.e, DD*=I.
A family of framelet systems can be constructed from the B-splines with different orders. In the univariate case, the piecewise constant B-spline framelet system (known as the Haar wavelet system) is given by:
Filters of the framelet from piecewise linear B-spline are accordingly given by:
The presently-disclosed attenuation coefficients have two spatial directions. Therefore, bivariate framelet system will be used in the present examples. These filters are obtained by tensor products of the corresponding univariate filters. In particular, the filters in bivariate Haar wavelet system are given by:
This framelet system is used in the present examples. Filters for higher-order bivariate framelet systems can also be constructed in a similar way.
In the present examples and implementations, an iterative algorithm for the reconstruction of the energy-dependent attenuation coefficients μ(r, E) is given. Further, in various implementations, a framelet-based model is used to approximate μ(r, E). Therefore, only the photoelectronic component ϕ and Compton scatter component θ are required to reconstruct the general image or ROI, as is discussed in relation to
In various implementations, the coefficients ϕ and θ should satisfy certain constraints. First, the coefficients should fit the polychromatic data acquisition model of Eq. (7A) with Poisson noise. Further, the coefficients should be nonnegative, as is discussed above. Finally, they should be sparse in the framelet domain. The implementations of the disclosed iterative algorithm force the iterates to satisfy these constraints alternatively, as disclosed herein.
Returning to the sub-steps or steps outlined above in
where δ1 and δ2 are step sizes for the ϕ and θ components as discussed above, and
Next, and as shown in
and
and
terms onto the non-negative cone, defined here as a region of vectors with all their components being non-negative, to enforce the non-negativity of the photoelectronic component and the Compton scatter component of the attenuation coefficients. For example:
Various implementations incorporate the sparsity promotion step (box 28). In these implementations, the system can promote the sparsity of ϕ=(ϕ1, . . . , ϕj) and θ=(θ1, . . . , θj) in the framelet domain as follows. These ϕ=(ϕ1, . . . , ϕj) and θ=(θ1, . . . , θj) are transformed into the framelet domain, where small coefficients are set to 0 by soft-thresholding, and the sparsified coefficients are correspondingly transformed back to ϕ=(ϕ1, . . . , θj) and θ=(θ1, . . . , θj). More precisely, these implementations define the terms as follows:
where Tλ(·) is the soft-thresholding operator defined by
and zero otherwise. Here λ1 and λ2 are thresholding parameters which are allowed to change at each iteration step. The definitions of Eq. (17) can also act as a denoising procedure using framelet sparsity, and this approach minimizes an objective function involving a balanced sparsity of framelet coefficients. The steps of Eq. (14) through Eq. (17) are repeated alternatively until convergence, as described above in relation to
Accordingly, in exemplary implementations of the system, an algorithm is provided as described (1), such that the system sets initial values for ϕ0=(ϕ10, . . . , ϕj0) and θ0=(θ10, . . . , θj0) and (2) the proceeds to iterate on n as follows:
until the standard iteration stop criterion (shown at box 30 in
In certain implementations, the system features an adaptive color fusion method based on the singular value decomposition (“SVD”). These implementations utilize principal component analysis (“PCA”) to address spectral information for X-ray data and in order to choose the RGB components adaptively. Accordingly, a method was developed based on singular value decomposition using the correlation of images corresponding to different energies. These implementations allow the user to adaptively choose three images corresponding to the first three bigger eigenvalues as the RGB components.
Specifically, this SVD color fusion method is performed as follows:
In a third step, the first three bigger singular value in S is chosen, and the remaining singular values are set to 0 to get Xnew, and then
Xnew=USnewVT (20)
In a fourth step, the first three columns of Xnew are chosen as the RGB components in Eq. (21) to get a color image by Eq. (22), as described below.
In these implementations, in reconstructing μ(r, E) at any energy E, three images can be chosen corresponding to three different energies—such as 40, 70, 100 keV—as the RGB components. That is:
R=μ(r,40),G=μ(r,70),B=μ(r,100), (21)
and then linearly fit the RGB components to obtain the color image as
μcolor=a1R+a2G+a3B, (22)
As would be understood by one of skill in the art, various other reconstructions are possible. Accordingly, further implementations and energy choices are possible for implementations utilizing alternate display types for various two- and three-dimensional reconstruction types.
As best shown in
In these studies, the most outer ellipsoidal shell is filled by bone, and majority part of the phantom by plexiglass; the two slant ellipses are air, and the remaining ellipses are made of aluminum. Table 1 compares the intensities of several substances placed in the Shepp-Logan phantom, which are used for generating the underlying photoelectric coefficients ϕ and Compton scatter coefficients θ.
As best shown in
To further validate the disclosed CT system and method, profiles of the 64th row of the reconstructed ϕ and θ of the example phantom are plotted in
To validate the disclosed method quantitatively, the mean square error (“MSE”) was calculated by:
where N is the total pixel number, f and {circumflex over (f)} are the pixel values of the reconstructed image and the true image respectively.
However, the visual difference is barely observable in the reconstructed images. Therefore, as would be apparent to a skilled artisan, in various implementations the process can be halted after a sufficient number of iterations have been run without significant loss of accuracy. The example of
Returning to
where μ is the spectral-independent attenuation coefficients, and TV(μ)=∥|∀μ|∥1 with |∀μ|=√{square root over (μx2+μy2)} is the total variation.
In (18), the operator A is the linear system matrix. A split Bregman algorithm can be used to solve (18). This can be referred to as the TV minimization by split Bregman (“TV-SB”). The reconstruction results by TV-SB use the same projection views as those in the disclosed method. The results of TV-SB method are shown in
In contrast, the presently-disclosed process yields steadier and more accurate results than the TV-SB method, which are correspondingly more accurate approximations of the observed data. Consequently, the presently-disclosed system yields many improvements as compared with the TV-SB method.
To further assess the capacity of the presently-disclosed system, a sheep's head was scanned using cone-beam imaging geometry, as described previously. The distances from the X-ray source to the rotation center and the detector are 109.76 cm and 139.83 cm respectively. 1195 projections were collected under a fast-continuous-rotation scanning mode. The effective projection sequence used for reconstruction was extracted with a structure similarity (“SSIM”) based-method. Among the final effective projection sequence, 200 equispaced projections were used for reconstruction. The presently disclosed system and algorithm was utilized to reconstruct the central slice with 200 projection views. After the rotation center was located, two 512×512 components were reconstructed and used to obtain spectral images at any energy according to Eq. (9).
In the example of
The presently disclosed system and method as shown in
To further demonstrate the advantages of the disclosed spectral CT reconstruction algorithm, system and methods, in
In summary, the present disclosure includes a framelet-based iterative algorithm for polychromatic CT which can reconstruct two components using a single scan, as shown in
To further assess the capacity of the presently-disclosed system, in experiment with synthesized data, the Shepp-Logan Phantom was used with a fan-beam imaging geometry, which is similar to the one used above. In this system, the radius of the circular scanning locus is 57 cm, and for whole reconstruction the diameter of the FOV is 22.4 cm corresponding to 672 detector bins, with each element 0.033 cm. The reconstructed images are of size 128×128, with each pixel size 0.15625×0.15625 and reconstructed by our framelet-based three-step iterative reconstruction from 30 projection views.
This example used 21 spectra of X-ray at 110 kV from 20 keV to 120 keV. The photon number is approximately 1.3×10 6. The run comprised 2000 iterations, and the step sizes of ϕ and θ were 0.4 and 0.9 respectively.
Using 101 μ(r, E) at energies between 20 keV and 120 keV, a true color CT image was obtained by the color fusion method based on SVD discussed in relation to Eqs. XX-8-XX-7), and the results are shown in
As is apparent from
To further assess the method using real data, a further analysis on a sheep's head (as described above) was performed. In this example, the distances from the X-ray source to the rotation center and the detector were 109.76 cm and 139.83 cm respectively. For interior reconstructions using the framelet-based three-step iterative reconstruction, 200 projections were collected, corresponding to 513 detector bins.
In this example, 21 spectra of X-ray were used at 110 kV from 20 keV to 120 keV. The photon number is approximately 1.3×106. 300 iterations were taken, at step sizes for ϕ and θ were 0.5 and 1.5 respectively. Using the reconstruction algorithm, it is possible to obtain any spectral images μ(r, E) at any energy according to Eq. (2).
Using 101 μ(r, E) at energies between 20 keV to 120 keV, it is again possible to obtain a true color CT image of size 170×170, which is part of the reconstructed 512×512 images reconstructed in [2], by the color fusion method based on SVD introduced in section 2.2.
The color images by the framelet method and the SVD method are shown in
Accordingly, using the reconstructed images with spectral information, it is possible to obtain true color images based on singular value decomposition method, which is preferable to methods using manually chosen images corresponding to three different energies as RGB components. It is possible to obtain a true color CT image that can differentiate very small materials in the object.
Although the disclosure has been described with reference to preferred embodiments, persons skilled in the art will recognize that changes may be made in form and detail without departing from the spirit and scope of the disclosed apparatus, systems and methods.
This application is a continuation of U.S. Pat. No. 10,970,886, filed Oct. 9, 2019, issued Apr. 6, 2021 and entitled “Devices, Systems and Methods Utilizing Framelet-Based Iterative Maximum-Likelihood Reconstruction Algorithms in Spectral CT,” which was a continuation of U.S. Pat. No. 10,489,942 filed Sep. 21, 2018, issued Nov. 26, 2019, and entitled “Devices, Systems and Methods Utilizing Framelet-Based Iterative Maximum-Likelihood Reconstruction Algorithms in Spectral CT” which is a U.S. national stage application under 35 U.S.C. 371 and claims priority to International PCT Application No. PCT/US17/23851 filed Mar. 23, 2017, which claims priority to U.S. Provisional Application No. 62/312/316 filed Mar. 23, 2016, both of which are entitled “Devices, Systems and Methods Utilizing Framelet-Based Iterative Maximum-Likelihood Reconstruction Algorithms in Spectral CT,” all of which are hereby incorporated by reference in their entireties under 35 U.S.C. § 119(e).
This invention was made with government support under Grant Nos. RO1 EB016977 and U01 EB017140, awarded by the National Institutes of Health. The government has certain rights in the invention.
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20030156684 | Fessler | Aug 2003 | A1 |
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20090003721 | Karidi | Jan 2009 | A1 |
20090262997 | Zou et al. | Oct 2009 | A1 |
20100142670 | Saito | Jun 2010 | A1 |
20100329535 | Macenko | Dec 2010 | A1 |
20110044546 | Pan | Feb 2011 | A1 |
20120022372 | Kim | Jan 2012 | A1 |
20120155728 | DeMan et al. | Jun 2012 | A1 |
20120265050 | Wang | Oct 2012 | A1 |
20130002659 | Jiang | Jan 2013 | A1 |
20130077843 | Bruder | Mar 2013 | A1 |
20140140601 | Litvin | May 2014 | A1 |
20150030227 | Liang | Jan 2015 | A1 |
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20160278733 | Ogura | Sep 2016 | A1 |
Number | Date | Country |
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2014203151 | Jun 2014 | WO |
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20210209819 A1 | Jul 2021 | US |
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62312316 | Mar 2016 | US |
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Parent | 16597250 | Oct 2019 | US |
Child | 17194946 | US | |
Parent | 16087419 | US | |
Child | 16597250 | US |