SOLID-STATE MRI AS A NONINVASIVE ALTERNATIVE TO COMPUTED TOMOGRAPHY (CT)
20210223341 · 2021-07-22
Inventors
- Felix W. Wehrli (Bala Cynwyd, PA)
- Scott P. Bartlett (Philadelphia, PA, US)
- Hyunyeol LEE (Philadelphia, PA, US)
- Hee Kwon SONG (Moorestown, NJ, US)
- Xia Zhao (Sichuan, CN)
Cpc classification
G01R33/5608
PHYSICS
G01R33/5619
PHYSICS
G01R33/4816
PHYSICS
G01R33/56509
PHYSICS
G01R33/5607
PHYSICS
International classification
G01R33/56
PHYSICS
G01R33/561
PHYSICS
G01R33/565
PHYSICS
Abstract
The present disclosure provides systems, apparatuses, and methods for generating images of the human body by solid-state magnetic resonance imaging. An example method can comprise receiving first imaging data at two or more echo times taken with a first radiofrequency configuration, receiving second imaging data at two or more echo times taken with a second radiofrequency configuration. An example method can comprise generating, based on at least the first imaging data and the second imaging data, two or more k-space datasets. An example method can comprise generating, based on at least the two or more k-space datasets, one or more images. The one or more images can comprise different image contrast.
Claims
1. A method for imaging, the method comprising: receiving first imaging data at two or more echo times taken with a first radio frequency configuration; receiving second imaging data at two or more echo times taken with a second radio frequency configuration; generating, based on at least the first imaging data and the second imaging data, two or more k-space datasets; and generating, based on at least the two or more k-space datasets, one or more images, wherein the one or more images comprise different image contrast.
2. The method of claim 1, wherein one or more of the first imaging data or the second imaging data is captured via solid-state MRI.
3. The method of claim 1, wherein the first radio frequency configuration comprises a first pulse length and the second radio frequency configuration comprises a second pulse length different from the first pulse length.
4. The method of claim 1, wherein the two or more image datasets comprise different signal strength levels of bone signals.
5. The method of claim 1, wherein the two or more image datasets comprise nearly identical signal strengths of intra- and extra-cranial components.
6. The method of claim 1, wherein generating the one or more images comprises determining a temporal derivative based on different echo times, and normalizing the derivative by temporal integration.
7. The method of claim 1, wherein generating the one or more images comprises sparsity-constrained image reconstruction.
8. The method of claim 7, wherein the sparsity-constrained image reconstruction is based on a function comprising a non-uniform Fourier transformation.
9-10. (canceled)
11. A method for imaging, the method comprising: receiving, via a solid-state MRI, first imaging data associated with a first echo time and a first radio frequency configuration; receiving, via the solid-state MRI, second imaging data associated with a second echo time and a second radio frequency configuration different from the first echo time and the first radio frequency configuration, respectively; generating, based on at least the first imaging data and the second imaging data, two or more k-space datasets, wherein the two or more k-space datasets comprise different signal strength levels of bone signals and nearly identical signal strengths of intra- and extra-cranial components; and generating, based on at least the two or more k-space datasets, one or more images, wherein the one or more images comprise an image contrast between bone and soft tissue.
12. The method of claim 11, wherein the first imaging data and the second imaging data is associated with a portion of a body.
13. The method of claim 11, wherein the first radio frequency configuration comprises a first pulse length and the second radio frequency configuration comprises a second pulse length different from the first pulse length.
14. The method of claim 11, wherein generating the one or more images comprises determining a temporal derivative based on different echo times, and normalizing the derivative by temporal integration to remove voxel-specific constants.
15. The method of claim 11, wherein generating the one or more images comprises sparsity-constrained image reconstruction.
16. The method of claim 15, wherein the sparsity-constrained image reconstruction is based on a function comprising a non-uniform Fourier transformation.
17. The method of claim 11, further comprising outputting the one or more images to a human-readable medium.
18-19. (canceled)
20. A method for imaging, the method comprising: receiving first imaging data of an object of interest at two or more echo times taken with a first radio frequency configuration; determining, based on the first imaging data, a center of mass of the object of interest; determining, based on the first imaging data and the center of mass, a plurality of motion states of the object of interest; determining, based on at least a portion of the plurality of motion states, one or more motion correction parameters; correcting, based on the one or more motion correction parameters, two or more k-space datasets; and outputting, based on the corrected k-space datasets, one or more corrected images.
21. The method of claim 20, further comprising: receiving second imaging data at two or more echo times taken with a second radio frequency configuration; and generating, based on at least the first imaging data and the second imaging data, the two or more k-space datasets.
22. The method of claim 21, further comprising generating, based on at least a portion of the two or more k-space datasets, the one or more corrected images, wherein the one or more corrected images comprise different image contrast.
23. The method of claim 21, wherein receiving the first imaging data of an object of interest at two or more echo times taken with a first radio frequency configuration comprises receiving gradient echo data based on a two-dimensional golden-means trajectory.
24. The method of claim 23, wherein determining, based on the first imaging data and the center of mass, the plurality of motion states of the object of interest comprising determining, based on a time-course of the center of mass, the plurality of motion states.
25-28. (canceled)
Description
BRIEF DESCRIPTION OF THE DRAWINGS
[0009] The present disclosure contains at least one drawing/photograph executed in color. Copies of this patent or patent application publication with color drawing(s)/photograph(s) will be provided by the Office upon request and payment of the necessary fee.
[0010] The present application is further understood when read in conjunction with the appended drawings. In the drawings:
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DETAILED DESCRIPTION OF ILLUSTRATIVE EMBODIMENTS
Conventional MRI Sequences
[0059] One approach to isolate the signal from bone (or rather the lack thereof) is isotropic 3D gradient-echo imaging performed at very low flip angle on the order of 1-3°, which results in proton-density-weighted soft-tissue contrast, ideally allowing single-threshold based segmentation. This method has been termed “black-bone MRI” (BB-MRI) since bone in the source images appears with essentially background intensity. 3D surface-rendered images created after eliminating soft-tissue signal were found to yield images suitable for performing anatomical measurements of the skull, including visualization of normal and prematurely fused cranial sutures. However, distinction between air and bone (sinuses, for example), is a significant source of error in all segmentation approaches evaluated. Gradient-echo images are also prone to susceptibility artifacts near the air-tissue boundaries, which can lead to erroneous assignment to background voxels during segmentation, clearly unacceptable to the craniofacial surgeon.
Solid-State MRI
[0060] A rather different approach aims to capture the signal from bone while attenuating or suppressing the signal from soft-tissue protons. Cortical bone contains about 20% water by volume, predominantly in the form of water hydrogen bonded to collagen, with a smaller fraction residing in the pores of the lacuno-canalicular system. Bound water has a T.sub.2 relaxation time on the order of 250-400 μs. Detection of these protons may require that the following conditions to be met: 1) the time at which k-space center is scanned (typically referred to as ‘echo time’ even though an FID is collected) and, 2) the duration of the RF pulse, both have to be significantly shorter than T.sub.2. Failure to satisfy these conditions results in damping of the magnetization response.
[0061] Two major classes of pulsed excitation techniques have emerged meeting the above requirements. The first is referred to as ultra-short TE (UTE), the second as zero-TE (ZTE) MRI. It is understood though that both classes of short-T.sub.2 imaging have to meet the second condition for excitation. Long-T.sub.2 suppression is typically achieved by means of T.sub.2-selective inversion pulses, echo subtraction or by exploiting the differential nutation of short and long-T.sub.2 spins. The latter can also be combined with echo subtraction.
[0062] BB-MRI, while attractive because of the simplicity of image acquisition (short-TR/TE 3D gradient echo), is hampered by its failure to distinguish bone from air. Other conventional methods require segmentation separating out background and soft-tissue from bone, which is complicated by the need for bias field correction (a problem also inherent to the BB approach), and the overlap of the histogram comprising bone and brain tissue. Simple dual-echo UTE or ZTE with echo subtraction, for example, inadequately suppresses soft-tissue. All inversion-preparation based UTE or ZTE approaches are impractical as they result in excessive scan times even with significant under sampling.
Proposed Approach
[0063] The present disclosure provides excitation and processing strategies that exploit the dynamics of transverse relaxation both during and after the RF pulse. While the attenuation of the signal following excitation is straightforward, resulting in an exponential reduction in M.sub.xy with increasing TE, the losses during the RF pulse have a somewhat more complicated dependence on T.sub.2, pulse duration i, and RF field amplitude B.sub.1. For rectangular pulses (as described herein), the response to the RF pulse can be expressed for the normalized longitudinal and transverse magnetization as:
[0064] Eqs 1a,b revert to cos(γB.sub.1τ) and sin(γB.sub.1τ) for τ<<T.sub.2. By collecting data so that each radial spoke is sampled with short and long pulse durations (τ<50 μs and τ˜500 μs, respectively), and each is read out twice at short and long echo times (TE<100 μs and ˜1-2 ms, respectively), four data sets may be created. The short and long RF pulses have equal nominal flip angle, therefore differing in their amplitude. The greatest soft-tissue attenuation and optimal bone signal retention is achieved by taking the difference between short pulse, short TE (SP-UTE) and long-pulse, long pulse duration (LP-LTE) data so, in principle, it suffices to acquire only one echo each. Typically, the data are processed by dividing the difference by the sum of the two images. This has the advantage of correcting for bias due to spatial variation in signal reception or RF inhomogeneity. However, as two acquisitions of each k-space line are used, scan time is doubled. This can be avoided without incurring an image quality penalty by sharing views from the additional echoes (see e.g.,
Example Methods
[0065]
[0066] Data were acquired in a human skull ex vivo and two subjects in vivo at 3 T field strength (Siemens Prisma) using the proposed dual-RF, dual-echo 3D UTE sequence. Imaging parameters: TR/TE1/TE2=7/0.06/2.46 ms, RF1/RF2 durations=40/520 μs, flip angle=12°, matrix size=256, field-of-view=280 mm3, voxel size=1.1 mm isotropic, number of radial spokes=25,000, and scan time=6 min. Additionally, a calibration scan was performed to determine gradient timing delays and subsequent correction for k-space trajectory errors. Images for k1 (I1) and k2 (I2) were reconstructed using a conventional gridding algorithm. Bone images (Ibone) with minimal soft-tissue contamination were then obtained as I.sub.bone (I1−I2)/(I.sub.1+I.sub.2). Given the three sets of images (I1, I2, Ibone), segmentation of bone voxels was performed using ITK-SNAP (e.g., but other segmentation approaches may be used) in a semi-automatic fashion, leading to 3D renderings of the skull. For comparison, a CT scan was also performed in the human cadaveric skull with 1 mm isotropic resolution.
[0067]
[0068] The proposed methods achieve high-resolution images of cranial bone structures, allowing for 3D renditions of the skull while interfering soft-tissue structures (intra- and extracranial) are eliminated. The target application focuses on craniometric measurements and visualization of skull and facial bones in surgical planning and post-surgical follow-up but the method is not limited to the skull bone architecture and should be equally suited in other applications requiring accurate rendition of portions of the skeleton elsewhere in the body. The proposed method incorporates solid-state MR imaging with signal sharing, bone-specifying signal processing, and sparsity-constrained image reconstruction, as described below for each compartment.
[0069] The proposed method comprises collection of image data at more than one echo time and radiofrequency configuration. Collected imaging signals at multiple echo times with variable radiofrequency pulse-lengths are shared to construct two or more k-space datasets differing in the levels of bone signals (due to very short T2 of the nuclei of interest) but having nearly identical signal strengths of intra- and extra-cranial components (due to relatively long T2 thereof), enabling a reduction of scan time by two or more as compared to conventional approaches. An example of such embodiment is shown in
[0070] The proposed method may comprise bone-specific signal processing. For example, signal intensities for bone vary with individual images reconstructed from each k-space, while those for soft tissues are nearly constant, thus allowing enhancing bone contrast by taking a temporal derivative on reconstructed images with different echo times. Further, the derivative is normalized by a temporal integration of all images so as to remove voxel-specific constants such as water proton density, receiver coil sensitivity, and transmit radiofrequency field variations. Exemplary images generated from the schematic in FIG. TA are shown in
[0071] The proposed method may comprise sparsity-constrained image reconstruction. For example, without loss of generality, for the two image signal acquisitions in
[0072] where y.sub.1 and y.sub.2 are the measured complex data in k-space for first and second echo times, I.sub.1 and I.sub.2 are complex images for first and second echo times, .sub.NU is the non-uniform Fourier transformation, S is the receiver coil sensitivity matrix, λ is the regularization parameter that balances data consistency with residual sparsity, φ is the phase accrual during the time between the first and second echo times, and ∥⋅∥.sub.1 and ∥⋅∥.sub.2 are l.sub.1- and l.sub.2-norms. It is noted that as I.sub.1 and I.sub.2 are complex, phase correction with (in the last term in Eq. (2) is essential, failure to do so potentially disrupts residual sparsity. Both S and p are spatially smooth and thus can be estimated using over-sampled central low spatial-frequency data. The solutions (I.sub.1, I.sub.2) can be found by employing an alternating minimization approach. Specifically, Eq. (2) is split into two sub-problems with respect to I.sub.1 and I.sub.2. Subsequently, numerical optimization methods, including but not limited to iterative soft-thresholding or non-linear conjugate gradient, are applied to solve each problem. The two solutions are iteratively updated until convergence is reached. In the preferred embodiment of the method, algorithm based on iterative soft-thresholding in combination with a parallel imaging is being used (e.g., as shown in
[0073]
[0074]
[0075] The proposed MRI-based skull imaging methods and systems, along with optimized post-processing, provide a non-invasive alternative to CT for visualization of craniofacial architecture.
Additional Analysis and Results
[0076] The technology in this disclosure utilizes a rapid bone MRI method involving a 3D DUal-RAdiofrequency aNd Dual-Echo (DURANDE) UTE pulse sequence along with bone-selective image reconstruction. Imaging time was reduced by a factor of two by taking advantage of data redundancy both during signal acquisition and image reconstruction.
[0077] This disclosure addresses, inter alia, the clinical translatability of the bone-selective MR method for obtaining 3D renderings of the human skull, and compare it to the current gold-standard of thin-slice CT imaging. In vitro and in vivo studies were performed at 3T to evaluate the proposed technique in achieving high-resolution 3D skull images that can be used for qualitative evaluation of craniofacial structures and quantitative anatomic measurements.
[0078] Comparison of CT and Bone-Selective MRI for 3D Rendering of Human Cadaver Skull.
[0079] The objectives of this study were to 1) produce 3D renderings of the human skull using the bone-selective MRI technique 2) compare biometric accuracy of anatomical measurements obtained from CT-based and MRI-based 3D renderings of the human cadaver skull.
[0080] Example methods are described as follows.
[0081] Imaging technique: As previously explained,
[0082] Two RF pulses differing in duration and amplitude are alternately applied in successive repetition time (TR) along the pulse train. Within each TR, two echoes are acquired. Acquisition of the first echo starts at the ramp-up of the encoding gradient (TE.sub.1), allowing for capture of signals with very short lifetimes (bone), while that of the second starts after a longer delay (TE.sub.2). In total, four echoes are obtained: ECHO.sub.11 (RF.sub.1TE.sub.1), ECHO.sub.12 (RF.sub.1TE.sub.2), ECHO.sub.21 (RF.sub.2TE.sub.1), and ECHO.sub.22 (RF.sub.2TE.sub.2). During reconstruction, ECHO.sub.11 is combined with ECHO.sub.21 (Image 1) and ECHO.sub.12 is combined with ECHO.sub.22 (Image 2) (e.g., see
[0083] Data acquisition/processing: Scans for this study were completed at a tertiary university hospital. The pulse sequence described above was applied at 3 T field strength (Siemens Prisma, Erlangen, Germany) with 32-channel head coil. The skull was placed in a direct horizontal position conventionally used for imaging of the head.
[0084] Imaging parameters: TR/TE.sub.1/TE.sub.2=7/0.06/2.46 ms, RF.sub.1/RF.sub.2 durations=40/520 μs, flip angle=12°, matrix size=256.sup.31, field-of-view=28031 mm.sup.3, voxel size=1.1 mm isotropic, number of radial spokes=25,000, and scan time=6 min.
[0085] Semi-automatic segmentation of bone voxels was performed using the classification feature of ITK-SNAP.sup.32. The user draws examples of tissue classes in the image, using a paint brush tool to label each class example with a corresponding color. A machine learning algorithm uses these examples to assign classifications to the rest of the image. In this study, the user drew examples of bone tissue, soft tissue and air. After segmentation, the 3D model of the skull was generated using the ITK-SNAP software, and exported as an STL file.
[0086] For comparison, a CT scan (GE Medical Systems, Milwaukee, Ill.) was also performed of the human cadaver skull with 1 mm slice thickness. Segmentation of the CT scan was performed using preset bone CT thresholds on the Mimics software (Materialise®, Ghent, Belgium), the current standard protocol at CHOP for craniofacial imaging analysis. After segmentation, the 3D model was automatically generated using the Mimics software and exported as an STL file.
[0087] The biometric accuracy was assessed by measuring eight anatomic distances in both CT- and MRI-based 3D renderings of the human cadaver skull. The STL files of the 3D renderings were uploaded to 3-Matic (Materialise®, Ghent, Belgium) software and anatomic distances were measured using the ruler tool. These distances were compared with those directly measured on the cadaver skull, with calipers (resolution 1 mm). Each distance was measured 20 times by a single assessor (RZ) and the mean value calculated. The eight anatomic distances are as follows: 1) Maximum craniocaudal aperture of the right orbit, 2) Maximum craniocaudal aperture of the left orbit, 3) Maximum height of the mandible from chin point in the midline, 4) Maximum cranial length, 5) Maximum cranial width, 6) Maximum height of piriform aperture, 7) Distance between lateral most aspect of zygomatic arches, 8) Maxilla width.
[0088] Given that ITK-SNAP assumes a voxel size of 1 mm, the MR measurements were scaled by 1.0938, to account for actual voxel size of 1.0938 mm (280 mm (field-of-view)/256 (matrix size)). In some implementations, scaling may not be necessary or other scaling amounts may be used.
[0089] Lin's Concordance Correlation test was applied to assess agreement between mean measurements obtained from MR-based and CT based 3D skull renderings, cadaver and MR-based rendering, and cadaver and CT-based rendering.
[0090] This experiment was repeated after a two week time interval to provide a second sample. Between scan sessions, the skull was stored in a −34 deg. C. freezer designated for fresh cadaver specimens.
[0091] Results are shown in
[0092] Table 1 presents the mean measurements from Sample 1, obtained from each modality.
TABLE-US-00001 TABLE 1 Mean Measurement Modality (cm ± SD) MR CT Cadaver Cranial length 19.9 ± 0.2 19.4 ± 0.1 18.6 ± 0.1 Cranial width 13.9 ± 0.1 13.9 ± 0.1 13.2 ± 0.1 L orbit height 3.7 ± 0.1 3.5 ± 0.1 3.5 ± 0.1 R orbit height 3.6 ± 0.1 3.4 ± 0.1 3.4 ± 0.1 Piriform aperture 3.3 ± 0.1 3.7 ± 0.0 3.6 ± 0.1 Inter-zygomatic arch width 12.5 ± 0.1 12.2 ± 0.1 12.3 ± 0.1 Mandibular height 2.6 ± 0.1 2.7 ± 0.1 2.7 ± 0.1 Maxilla width 5.0 ± 0.1 5.0 ± 0.1 4.9 ± 0.1
[0093] Table 2 presents the mean absolute and percent differences when comparing the three modalities.
TABLE-US-00002 TABLE 2 Mean Difference Mean Percent Difference Comparison (cm ± SD) (% ± SD) MR vs CT 0.1 ± 0.3 −0.2 ± 5.9 MR vs Cadaver 0.3 ± 0.5 1.4 ± 6.3 CT vs Cadaver 0.2 ± 0.4 1.6 ± 2.3
[0094] Table 3 presents the mean measurements from Sample 2, obtained from each modality
TABLE-US-00003 TABLE 3 Mean Measurement Modality (cm) MR CT Cadaver Cranial length 20.4 ± 0.2 18.5 ± 0.2 18.3 ± 0.4 Cranial width 14.0 ± 0.1 13.3 ± 0.1 13.2 ± 0.1 L orbit height 3.6 ± 0.1 3.6 ± 0.1 3.6 ± 0.1 R orbit height 3.5 ± 0.1 3.7 ± 0.1 3.5 ± 0.1 Piriform aperture 3.3 ± 0.1 3.6 ± 0.1 3.7 ± 0.1 Inter-zygomatic arch width 13.0 ± 0.0 12.7 ± 0.1 12.2 ± 0.1 Mandibular height 2.5 ± 0.1 2.5 ± 0.1 2.6 ± 0.1 Maxilla width 5.2 ± 0.1 5.3 ± 0.1 4.8 ± 0.1
[0095] Table 4 presents the mean absolute and percent differences when comparing the three modalities.
TABLE-US-00004 TABLE 4 Mean Difference Mean Percent Difference Comparison (cm ± SD) (% ± SD) MR vs CT 0.3 ± 0.7 0.0 ± 6.0 MR vs Cadaver 0.4 ± 0.8 1.8 ± 7.2 CT vs Cadaver 0.2 ± 0.2 1.8 ± 4.5
[0096]
[0097] Table 5 presents the Sample 1 Lin's Concordance Correlation Coefficients for these modalities.
TABLE-US-00005 TABLE 5 Lin's Concordance Correlation Comparison Coefficient 95% CI MR vs CT 0.999 0.997-1.000 MR vs Cadaver 0.996 0.991-1.000 CT vs Cadaver 0.998 0.995-1.000
[0098] Table 6 presents the Sample 2 Lin's Concordance Correlation Coefficients for these modalities.
TABLE-US-00006 TABLE 6 Lin's Concordance Correlation Comparison Coefficient 95% CI MR vs CT 0.992 0.986-0.999 MR vs Cadaver 0.989 0.980-0.999 CT vs Cadaver 0.999 0.997-1.001
[0099] Discussion: The disclosed dual-RF dual-echo 3D UTE imaging technique produces high-resolution bone-specified images of a human cadaver skull within a clinically feasible imaging time (6 minutes), leading to clear visualization of craniofacial skeletal structures. Comparison of eight anatomic distance measurements obtained from MR and CT images yielded a mean absolute difference of 1 mm and percent difference of −0.2%. The concordance coefficients of 0.999 (Sample 1) and 0.992 (Sample 2) correspond to a substantial strength of agreement between MR and CT.sup.33. These results show the reliability of the MR method when compared to CT. Mean percent difference of MR versus direct cadaver measurements (Sample 1: 1.4±6.3%, Sample 2: 1.8±7.2%) was similar to mean percent difference of CT versus direct cadaver measurements (Sample 1: 1.6±2.3%, Sample 2: 1.8±4.5%).
[0100] Segmentation of MR images was performed in a semi-automatic fashion with ITK-SNAP. This included the user first identifying bone vs air vs soft tissue voxels in order to train the machine learning algorithm. The segmentation process was aided by the removal of soft tissue from the cadaver skull prior to scanning.
[0101] Comparison of CT and Bone-Selective MRI for 3D Rendering of Healthy Adult Human Subject Skulls.
[0102] The objectives of this study were to 1) produce 3D skull renderings of healthy adult human subjects, using a novel bone-selective MRI technique 2) compare visualization of cranial sutures and the biometric accuracy of anatomical measurements obtained from CT-based and MRI-based 3D renderings.
[0103] Example methods used in this study are described as follows.
[0104] Imaging technique: The bone-selective MR pulse sequence was previously described herein.
[0105] Data acquisition/processing: MR imaging parameters were as previously described in Section 2. No contrast or sedation was used for any subject. All scans were completed at CHOP, and therefore the scanners used were different from those used for the cadaver skull study described above.
[0106]
[0107] Each subject additionally underwent a non-investigational head CT scan, as a gold standard comparison to the bone-selective MR scan. The scan protocol specified a 0.75 mm slice thickness with low-dose radiation, lower than the standard head CT (CTDIvol of 7 or less). The 0.75 mm slice thickness is the CHOP clinical standard for 3D head CT scans used for craniofacial imaging and surgical planning. A single scanner (GE Medical Systems, Milwaukee, Ill.) was used for all scans.
[0108] 3D rendering of the skull from MR scans and CT scans, as well as comparison of craniometric measurements, were performed as described herein.
[0109] Results: Five healthy adult subjects were recruited for this study. Table 7 summarizes the demographics of the subjects.
TABLE-US-00007 TABLE 7 Subject Sex Age Race 1 Male 45 White 2 Female 26 Asian 3 Male 27 Black 4 Female 27 Black 5 Male 35 Asian
[0110]
TABLE-US-00008 TABLE 8 Mean Measurement Modality (cm ± SD) MR CT difference % difference Cranial length 19.1 ± 0.1 19.0 ± 0.1 0.1 0.7 Cranial width 14.4 ± 0.1 14.4 ± 0.1 0.0 0.3 L orbit height 3.3 ± 0.1 3.4 ± 0.1 0.1 −3.0 R orbit height 3.4 ± 0.1 3.4 ± 0.1 0.0 −0.3 Piriform aperture 3.5 ± 0.1 3.5 ± 0.1 0.0 0.0 Inter-zygomatic arch width 13.3 ± 0.3 12.8 ± 0.2 0.5 4.2 Mandibular height 2.8 ± 0.1 2.6 ± 0.1 0.2 9.0 Maxilla width 5.8 ± 0.1 6.l ± 0.1 −0.3 −5.1
[0111]
TABLE-US-00009 TABLE 9 Mean Measurement Modality (cm ± SD) MR CT difference % difference Cranial length 18.0 ± 0.1 18.0 ± 0.1 0.0 0.0 Cranial width 14.3 ± 0.0 14.2 ± 0.1 0.1 0.7 L orbit height 3.6 ± 0.1 3.4 ± 0.1 0.2 6.0 R orbit height 3.5 ± 0.1 3.5 ± 0.1 0.0 0.0 Piriform aperture 2.7 ± 0.1 2.7 ± 0.1 0.0 1.3 Inter-zygomatic arch width 12.5 ± 0.1 12.6 ± 0.1 −0.1 −1.0 Mandibular height 2.0 ± 0.0 2.2 ± 0.1 −0.2 −11.1 Maxilla width 5.9 ± 0.0 6.1 ± 0.0 −0.2 −3.2
[0112]
TABLE-US-00010 TABLE 10 Mean Measurement Modality (cm ± SD) MR CT difference % difference Cranial length 18.9 ± 0.1 19.5 ± 0.1 −0.6 −3.1 Cranial width 13.5 ± 0.1 13.4 ± 0.1 0.1 0.4 L orbit height 3.4 ± 0.1 3.3 ± 0.2 0.1 2.7 R orbit height 3.4 ± 0.2 3.5 ± 0.1 −0.1 −3.2 Piriform aperture 3.6 ± 0.1 3.1 ± 0.0 0.5 15.2 Inter-zygomatic arch width 13.7 ± 0.0 13.5 ± 0.1 0.2 1.3 Mandibular height 2.8 ± 0.1 2.7 ± 0.1 0.1 5.2 Maxilla width 7.4 ± 0.1 6.8 ± 0.1 0.6 9.0
[0113]
TABLE-US-00011 TABLE 11 Mean Measurement Modality (cm ± SD) MR CT difference % difference Cranial length 17.9 ± 0.1 18.2 ± 0.1 −0.3 −1.4 Cranial width 13.5 ± 0.1 13.3 ± 0.1 0.2 1.1 L orbit height 3.6 ± 0.1 3.7 ± 0.1 −0.1 −2.5 R orbit height 3.6 ± 0.1 3.7 ± 0.1 −0.1 −2.5 Piriform aperture 3.1 ± 0.1 3.1 ± 0.1 0.0 −1.2 Inter-zygomatic arch width 11.8 ± 0.1 11.8 ± 0.1 0.0 0.1 Mandibular height 2.3 ± 0.1 2.2 ± 0.1 0.1 4.3 Maxilla width 5.9 ± 0.0 5.6 ± 0.1 0.3 5.3
[0114]
TABLE-US-00012 TABLE 12 Mean Measurement Modality (cm ± SD) MR CT difference % difference Cranial length 18.4 ± 0.1 18.7 ± 0.1 −0.3 −1.6 Cranial width 16.0 ± 0.1 15.8 ± 0.1 0.2 1.3 L orbit height 3.8 ± 0.1 3.4 ± 0.1 0.4 11.1 R orbit aperture height 3.5 ± 0.1 3.5 ± 0.1 0.0 0.0 Piriform aperture 3.7 ± 0.1 3.7 ± 0.1 0.0 0.0 Inter-zygomatic arch width 16.0 ± 0.1 15.2 ± 0.2 0.8 5.1 Mandibular height 3.0 ± 0.1 3.2 ± 0.1 −0.2 −6.5 Maxilla width 8.1 ± 0.1 8.1 ± 0.1 0.0 0.0
[0115] Table 13 summarizes the mean percent differences and Lin's Concordance correlation coefficients for the five subjects.
TABLE-US-00013 TABLE 13 Lin's Concordance Mean percent difference Correlation Subject (% ± SD) Coefficient 95% CI 1 0.7 ± 4.3 0.999 0.998-1.000 2 −0.9 ± 4.9 1.000 0.999-1.000 3 3.4 ± 6.2 0.998 0.995-1.001 4 0.4 ± 3.0 1.000 0.999-1.000 5 1.2 ± 5.1 0.998 0.996-1.001
[0116] Discussion: The proposed MR sequence produced bone-specified images of healthy adult subject skulls, with sufficiently high resolution for 3D rendering. Eight anatomic distance measurements obtained from MR and CT images yielded percent differences ranging from −0.9% to 3.4%, and concordance coefficients ranging from 0.998 to 1.000, corresponding to a substantial strength of agreement.sup.33. These results suggest that the method has good reliability for adult skull imaging when compared to CT. Notably, the method was reliable for imaging of human adult subject skulls despite the presence of significantly more soft tissue than the pre-stripped human cadaver skull described herein.
[0117] Lambdoid sutures can be observed in MR-based 3D renderings of all five skulls, most prominently in Subject 4 (e.g., as shown in
[0118] Comparison of CT and Bone-Selective MRI for 3D Rendering of Pediatric Patient Skull.
[0119] The objectives of this study were to 1) produce 3D skull renderings of pediatric craniofacial patients, using a novel bone-selective MRI technique 2) compare visualization of cranial sutures and the biometric accuracy of anatomical measurements obtained from CT-based and MRI-based 3D renderings.
[0120] Methods are described as follows.
[0121] Imaging technique: The bone-selective MR pulse sequence was previously described herein.
[0122] Data acquisition/processing: MR imaging parameters were as previously described herein. No contrast or non-clinically indicated sedation was used for any subject.
[0123] All subjects were imaged in the same MRI scanner (Siemens Prisma, Erlangen, Germany) with a 20-channel head coil.
[0124] Each subject additionally underwent a clinical head CT scan, as a gold standard comparison to the bone-selective MR scan. The 0.75 mm slice thickness is the CHOP clinical standard for 3D Head CT scans used for craniofacial imaging and surgical planning. A single scanner (GE Medical Systems, Milwaukee, Ill.) was used for all scans.
[0125] 3D rendering of MR and CT scans, as well as comparison of craniometric measurements, were performed as described herein.
[0126]
TABLE-US-00014 TABLE 14 Modality Mean Measurement (cm ± SD) MR CT difference % difference Cranial length 18.1 ± 0.1 18.4 ± 0.1 −0.3 −1.6 Cranial width 14.8 ± 0.1 14.6 ± 0.1 0.2 1.4 L orbit height 3.4 ± 0.2 3.5 ± 0.1 −0.1 −2.0 R orbit height 3.3 ± 0.2 3.4 ± 0.1 0.0 −3.0 Piriform aperture 3.5 ± 0.1 3.2 ± 0.2 0.3 9.0 Inter-zygomatic arch width 13.0 ± 0.2 12.8 ± 0.3 0.2 1.6 Mandibular height 2.6 ± 0.1 2.6 ± 0.1 0.0 0.0 Maxilla width 6.6 ± 0.0 6.5 ± 0.1 0.1 1.5
Mean MR Vs CT Percent Difference: 0.7%+/−3.8
[0127] Table 15 shows comparison of MR and CT using Lin's concordance correlation coefficient.
TABLE-US-00015 TABLE 15 Lin's Concordance Correlation Comparison Coefficient 95% CI MR vs CT 0.999 0.999-1.000
[0128] Discussion: The results suggest that most facial structures were rendered appropriately, as compared to CT-based 3D renderings. The concordance correlation coefficient of 0.999 was similar to those of the adult healthy subjects.
[0129] Summary: DURANDE UTE in combination with the bone-selective image reconstruction enables high-resolution (˜1.1 mm) skull imaging of the whole head in six minutes. The dual-RF based UTE bone imaging method enhances differentiation of cortical bone from long T.sub.2 species (such as soft tissue). The resolution and differentiation of the cortical bone enabled semi-automatic segmentation of MR images and subsequent 3D rendering of the skull. Craniometric measurement comparisons suggested high concordance (concordance coefficient >0.990) of the bone-selective MR method in comparison to the current clinical standard of thin-slice 3D head CT.
[0130] 30) The data show that the disclosed bone-specific MRI pulse sequence and reconstruction algorithm, along with the segmentation and image rendering method, provides images of the younger pediatric skull comparable to those obtainable by CT. Results in the cadaver skull study suggest excellent agreement between the new solid-state MRI technique and cadaver craniometric measurements, as well as between MRI and CT. Similarly high agreement between MRI and CT modalities were seen in scans of five healthy adult subjects and one adolescent patient.
[0131] In addition to accurate measurements and modeling of the skull at time of surgery, the ability to predict future changes in shape based on growth patterns, is useful for surgical planning. Furthermore, a database of normal skull morphology across multiple age groups can be used to create a statistical model for normal skull bone growth, which could be broadly applicable to both clinical and translational research projects. For example, the model can provide a normal comparison with which to assess post-operative results of craniofacial repairs.
REFERENCES FOR THIS SECTION
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Eley K A, Mcintyre A G, Watt-Smith S R, Golding S J. “Black bone” MRI: A partial flip angle technique for radiation reduction in craniofacial imaging. Br J Radiol. 2012; 85(1011):272-278. doi:10.1259/bjr/95110289. [0146] 15. Eley K A, Watt-Smith S R, Sheerin F, Golding S J. “Black Bone” MRI: a potential alternative to C T with three-dimensional reconstruction of the craniofacial skeleton in the diagnosis of craniosynostosis. Eur Radiol. 2014:2417-2426. doi:10.1007/s00330-014-3286-7. [0147] 16. Bergin C J, Pauly J M, Macovski A. Lung parenchyma: projection reconstruction {MR} imaging. Radiology. 1991; 179(3):777-781. doi:10.1148/radiology.179.3.2027991. [0148] 17. Robson M D, Gatehouse P D, Bydder M, Bydder G M. Magnetic Resonance: An Introduction to Ultrashort {TE} {(UTE)} Imaging. J Comput Assist Tomo. 2003; 27(6):825. doi:10.1097/00004728-200311000-00001. [0149] 18. Madio D, Lowe I. Ultra-fast imaging using low flip angles and fids. Magn Reson Med. 1995; 34(4):525-529. doi:10.1002/mrm.1910340407. [0150] 19. Weiger M, Pruessmann K, Hennel F. {MRI} with zero echo time: Hard versus sweep pulse excitation. Magn Reson Med. 2011; 66(2):379-389. doi:10.1002/mrm.22799. [0151] 20. Techawiboonwong A, Song H, Wehrli F. In vivo {MRI} of submillisecond T2 species with two-dimensional and three-dimensional radial sequences and applications to the measurement of cortical bone water. Nmr Biomed. 2008; 21(1):59-70. doi:10.1002/nbm.1179. [0152] 21. Du J, Carl M, Bydder M, Takahashi A, Chung C, Bydder G. Qualitative and quantitative ultrashort echo time {(UTE)} imaging of cortical bone. J Magn Reson. 2010; 207(2):304-311. doi:10.1016/j.jmr.2010.09.013. [0153] 22. Wu Y, Hrovat M I, Ackerman J L, et al. Bone matrix imaged in vivo by water- and fat-suppressed proton projection {MRI} {(WASPI)} of animal and human subjects. J Magn Reson Imaging. 2010; 31(4):954-963. doi:10.1002/jmri.22130. [0154] 23. Wu Y, Chesler D, Glimcher M, et al. Multinuclear solid-state three-dimensional {MRI} of bone and synthetic calcium phosphates. Proc Natl Acad Sci. 1999; 96(4):1574-1578. doi:10.1073/pnas.96.4.1574. [0155] 24. Seifert A, Li C, Rajapakse C, et al. Bone mineral {31P} and matrix-bound water densities measured by solid-state {31P} and {1H} {MRI}. Nmr Biomed. 2014; 27(7):739-748. doi:10.1002/nbm.3107. [0156] 25. Wiesinger F, Sacolick L I, Menini A, et al. Zero TEMR bone imaging in the head. Magn Reson Med. 2016; 75(1):107-114. doi:10.1002/mrm.25545. [0157] 26. Du J, Diaz E, Carl M, Bae W, Chung C, Bydder G. Ultrashort echo time imaging with bicomponent analysis. Magn Reson Med. 2012; 67(3):645-649. doi:10.1002/mrm.23047. [0158] 27. Li C, Magland J F, Rad H, Song H, Wehrli F W. Comparison of optimized soft-tissue suppression schemes for ultrashort echo time {MRI}. Magn Reson Med. 2012; 68(3):680-689. doi:10.1002/mrm.23267. [0159] 28. Rahmer J, Blume U, Bomert P. Selective {3D} ultrashort {TE} imaging: comparison of “dual-echo” acquisition and magnetization preparation for improving {short-T2}contrast. Magn Reson Mater Phys Biol Med. 2007; 20(2):83. doi:10.1007/s10334-007-0070-6. [0160] 29. Johnson E M, Vyas U, Ghanouni P, Pauly K, Pauly J M. Improved cortical bone specificity in {UTE} {MR} Imaging. Magn Reson Med. 2017; 77(2):684-695. doi:10.1002/mrm.26160. [0161] 30. Lee H, Zhao X, Song H K, Zhang R, Bartlett S P, Wehrli F W. Rapid dual-R F, dual-echo, 3D ultrashort echo time craniofacial imaging: A feasibility study. Magn Reson Med. 2019. doi:10.1002/mrm.27625. [0162] 31. Grodzki D M, Jakob P M, Heismann B. Ultrashort echo time imaging using pointwise encoding time reduction with radial acquisition {(PETRA)}. Magn Reson Med. 2012; 67(2):510-518. doi:10.1002/mrm.23017. [0163] 32. Yushkevich P A, Gao Y, Gerig G. {ITK-SNAP:} An interactive tool for semi-automatic segmentation of multi-modality biomedical images. Conf Proc {IEEE} Eng Med Biol Soc. 2016; 2016:3342-3345. doi:10.1109/EMBC.2016.7591443. [0164] 33. Lin L I, McBride G, Bland J M, Altman D G. A proposal for strength-of-agreement criteria for Lin's Concordance Correlation Coefficient. NIWA Client Rep. 2005; 45(1):307-310. doi:10.2307/2532051. [0165] 34. Margulies S S, Thibault K L. Infant Skull and Suture Properties: Measurements and Implications for Mechanisms of Pediatric Brain Injury. J Biomech Eng. 2000; 122(4):364-371. doi:10.1115/1.1287160. [0166] 35. Kriewall T J, K M G, Tsai A. Bending properties and ash content of fetal cranial bone. J Biomech. 1981; 14(2):73-79. doi:10.1016/0021-9290(81)90166-4. [0167] 36. Wang H, Suh J, Das S, Pluta J, Craige C, Yushkevich P. {Multi-Atlas}Segmentation with Joint Label Fusion. Ieee T Pattern Anal. 2013; 35(3):611-623. doi:10.1109/TPAMI.2012.143. [0168] 37. Iglesias J, Sabuncu M. Multi-atlas segmentation of biomedical images: A survey. Med Image Anal. 2015; 24(1):205-219. doi:10.1016/j.media.2015.06.012. [0169] 38. Chan R W, Ramsay E A, Cunningham C H, Plewes D B. Temporal stability of adaptive 3D radial MRI using multidimensional golden means. Magn Reson Med. 2009. doi:10.1002/mrm.21837. [0170] 39. Anderson A G, Velikina J, Block W, Wieben O, Samsonov A. Adaptive retrospective correction of motion artifacts in cranial MRI with multicoil three-dimensional radial acquisitions. Magn Reson Med. 2013. doi:10.1002/mrm.24348.
Motion Correction
[0171] Solid-state MRI via 3D ultrashort echo-time (UTE).sup.1 or zero TE.sup.2 methods, capable of detecting signals from protons with very short T.sub.2 relaxation times, has potential for bone-selective imaging.sup.3-5, for instance as a radiation-free alternative to computed tomography for the pre- and post-surgical evaluation of children with craniofacial abnormalities. However, relatively long scan times make the technique vulnerable to artifacts from involuntary subject movements, thereby impairing image quality. Here, we developed a self-navigated, rapid 3D UTE technique by combining a retrospective motion detection/correction approach.sup.6 with sparsity-constrained image reconstruction. In vivo studies were performed to investigate the feasibility of the proposed method in achieving rapid, motion-resistant whole-skull imaging.
[0172] Methods:
[0173] Motion detection and correction:
where γ.sub.COM(θ) is the projection of COM onto a radial line with the angle θ, and the Radon transform of the object. The time-course of COM during data collection is then analyzed or adaptive determination of motion states, within each of which sampling views are distributed near-evenly in 3D k-space thereby allowing reconstruction of low-resolution images representative of a particular motion state. Subsequently, rigid-motion parameters are extracted for individual motion states via FSL.sup.10, leading to correction of acquired k-space datasets. The final, high-resolution motion-corrected images are obtained using the reconstruction method described below. The above procedures are summarized in
[0174] Bone-selective image reconstruction: Given the sparse bone signals in the difference between short and long TE images, bone-specific imaging is further accelerated with fewer radial lines by exploiting such sparsity during image reconstruction.sup.11, 12. The following sparse signal recovery problem can then be formulated:
where k.sub.1/k.sub.2 are the motion-corrected and view-shared k-space data at TE.sub.1/TE.sub.2, and I.sub.1/I.sub.2 are the corresponding complex images, .sub.NU is the non-uniform fast FT (NUFFT), S.sub.j is the receive sensitivity for the j-th coil, N.sub.c and λ are the number of receive coil elements and regularization parameter, respectively, and φ is the phase accrual during ΔTE. The phase correction with φ in the subtraction is important, as otherwise residual sparsity may be disrupted. Both S and (are spatially smooth and thus can be estimated using over-sampled, central k-space data. The solutions (I.sub.1, I.sub.2) are found with an alternating minimization approach that splits Eq. 3 into two sub-problems with respect to I.sub.1 and I.sub.2. The two solutions are iteratively updated until convergence is reached.
[0175] In vivo studies: Two subjects were scanned at 3 T (Siemens Prisma) using the following parameters: TR/TE.sub.1/TE.sub.2=5.0/0.06/1.84 ms, RF.sub.1/RF.sub.2 durations=40/520 μs, flip-angle=120 (identical for RF.sub.1 and RF.sub.2), matrix size=2563, field-of-view=2563 mm.sup.3, and readout bandwidth=±125 kHz. A 20-channel head/neck coil was used for signal reception. Both subjects were instructed to move the head three to four times during each scan. To test the sequence's self-navigation effectiveness, data were acquired in the first subject using a relatively large number of views (50,000 for each echo; scan time=8.4 min). Following the motion detection/correction steps, images for UTE (I.sub.1) from RF.sub.1 and GRE (12) from RF2 were reconstructed using inverse NUFFT. Bone-specific images (I.sub.Bone) were then obtained as I.sub.Bone (I.sub.1−I.sub.2)/(I.sub.1+I.sub.2). In the second subject, data were prospectively undersampled using 12,500 views (scan time=2.1 min). Motion-corrected and view-shared k-space datasets were then processed to reconstruct images using Eq. 3.
[0176] Results:
[0177] Conclusions: Results suggest the proposed method to be robust to head movement during scanning. Upon further optimization, the method should find applications for bone-selective head imaging as a radiation-free alternative to computed tomography in children indicated for craniofacial surgery.
REFERENCES FOR THIS SECTION
[0178] 1. Robson M D, Gatehouse P D, Bydder M, Bydder G M. Magnetic resonance: An introduction to ultrashort T E (UTE) imaging. J Comput Assist Tomogr 2003; 27:825-846. [0179] 2. Weiger M, Pruessmann K P, Hennel F. MRI with zero echo time: hard versus sweep pulse excitation. Magn Reson Med 2011; 66(2):379-389. [0180] 3. Li C, Magland J F, Zhao X, Seifert A C, Wehrli F W. Selective in vivo bone imaging with long-T suppressed PETRA MRI. Magn Reson Med 2016; 77(3):989-997. [0181] 4. Johnson E M, Vyas U, Ghanouni P, Pauly K B, Pauly J M. Improved cortical bone specificity in UTE M R imaging. Magn Reson Med 2017; 77:684-695. [0182] 5. Wiesinger F, Sacolick L I, Menini A, Kaushik S S, Ahn S, Veit-Haibach P, Delso G, Shanbhag D D. Zero TEMR bone imaging in the head. Magn Reson Med 2016; 75(1):107-114. [0183] 6. Anderson III A G, Velikina J, Block W, Wieben O, Samsonov A. Adaptive retrospective correction of motion artifacts in cranial MRI with multicoil three-dimensional radial acquisitions. Magn Reson Med 2013; 69(4):1094-1103. [0184] 7. Lee H, Zhao X, Song H K, Zhang R, Bartlett S P, Wehrli F W. Solid-state MRI as a noninvasive alternative to computed tomography for craniofacial imaging. Joint Annual Meeting ISMRM-ESMRMB 2018; 332. [0185] 8. Chan R W, Ramsay E A, Cunningham C H, Plewes D B. Temporal stability of adaptive 3D radial MRI using multidimensional golden means. Magn Reson Med 2009; 61(2):354-363. [0186] 9. Larson A C, White R D, Laub G, McVeigh E R, Li D, Simonetti O P. Self-gated cardiac cine MRI. Magn Reson Med 2004; 51(1):93-102. [0187] 10. M. Jenkinson and S. M. Smith. A global optimisation method for robust affine registration of brain images. Med Image Anal 2001; 5(2):143-156. [0188] 11. Lustig M, Donoho D, Pauly J M. Sparse MRI: The application of compressed sensing for rapid M R imaging. Magn Reson Med 2007; 58(6):1182-1195. [0189] 12. Nam S, Akcakaya M, Basha T, Stehning C, Manning W J, Tarokh V, Nezafat R. Compressed sensing reconstruction for whole-heart imaging with 3D radial trajectories: a graphics processing unit implementation. Magn Reson Med 2013; 69(1):91-102.
Additional Information
[0190]
[0191]
[0192]
[0193]
[0194] Approaches to enhance bone contrast. Issue in specifying bone structures: High signals from soft tissues.fwdarw.ambiguity in bone detection.
[0195] Approaches to enhancing bone conspicuity. Post-processing: Bias field correction followed by histogram based bone voxel detection; Pre-suppression of soft-tissues: Inversion-recovery based tissue signal nulling; Post-suppression of soft-tissues: Dual-RF and dual-echo acquisition and subtraction, exploiting the signal sensitivity of short T2* species to both RF pulse length and TE
[0196]
[0197] The disclosed techniques can comprise one or more of a self-navigated, 3D dual-RF & dual-echo (DURANDE) UTE pulse sequence; retrospective motion correction for motion-insensitive skull bone MRI; an accelerated the sequence and reconstruct images with a prior: bone-sparsity in echo-difference.
[0198]
[0199]
[0200]
[0201]
[0202] Sensitivity of COM-based motion detection is shown, including simulations with varying η (number of views for deriving a single COM value). Near-perfect detection capability for translations ≥1 pixel and rotations ≥1 degree.
[0203]
[0204]
[0205]
[0206] As shown, a variety of aspects are provided, including self-navigation and a high temporal resolution COM extraction. Also provided is full echo acquisition for GRE signals. The disclosed technology also enables adaptive selection of subsets. Golden-means for uniform distribution of views within any time windows can be used. The disclosed technology also stabilizes the COM problem (as opposed to conventional view-ordering), and also provides quality images.
[0207] Also as shown, bone voxel conspicuity was substantially improved with motion correction and sparsity-constrained reconstruction.
[0208]
[0209]
[0210] Exemplary Aspects
[0211] The following aspects are illustrative only and do not serve to limit the scope of the present disclosure or the appended claims.
[0212] Aspect 1. A method for imaging, the method comprising: receiving first imaging data (e.g., or a for set of imaging data) at two or more echo times taken with a first radiofrequency configuration; receiving second imaging data (e.g., or a second set of imaging data) at two or more echo times taken with a second radiofrequency configuration; generating, based on at least the first imaging data and the second imaging data, two or more k-space datasets; and generating, based on at least the two or more k-space datasets, one or more images, wherein the one or more images comprise different image contrast.
[0213] Aspect 2. The method of Aspect 1, wherein one or more of the first imaging data or the second imaging data is captured via solid-state MRI.
[0214] Aspect 3. The method of any one of Aspects 1-2, wherein the first radiofrequency configuration comprises a first pulse length and the second radio frequency configuration comprises a second pulse length different from the first pulse length. [0215] 7 Aspect 4. The method of any one of Aspects 1-3, wherein the two or more image datasets comprise different signal strength levels of bone signals.
[0216] Aspect 5. The method of any one of Aspects 1-4, wherein the two or more image datasets comprise nearly identical signal strengths of intra- and extra-cranial components. The term nearly identical as used herein means about 95% or greater similarity (e.g., about 95% to about 100%). The term about as used in the prior sentence means that 95% is an approximate amount that could vary by between 1 and 5 percentage points. For example, nearly identical could mean 90% or greater, 91% or greater, 92% or greater, 93% or greater, 94% or greater, 95% or greater, 96% or greater, 97% or greater, 98% or greater, or 99% or greater.
[0217] Aspect 6. The method of any one of Aspects 1-5, wherein generating the one or more images comprises determining a temporal derivative based on different echo times, and normalizing the derivative by temporal integration.
[0218] Aspect 7. The method of any one of Aspects 1-6, wherein generating the one or more images comprises sparsity-constrained image reconstruction.
[0219] Aspect 8. The method of Aspect 7, wherein the sparsity-constrained image reconstruction is based on a function comprising a non-uniform Fourier transformation.
[0220] Aspect 9. A system comprising a solid-state MRI device and a computing device, wherein the computing device is configured to implement the method of any one of Aspects 1 and 3-8.
[0221] Aspect 10. A apparatus comprising computer-readable instructions and a processor configured to execute the computer-readable instructions to implement the method of any one of Aspects 1-8.
[0222] Aspect 11. A method for imaging, the method comprising: receiving, via a solid-state MRI, first imaging data associated with a first echo time and a first radio frequency configuration; receiving, via the solid-state MRI, second imaging data associated with a second echo time and a second radio frequency configuration different from the first echo time and the first radio frequency configuration, respectively; generating, based on at least the first imaging data and the second imaging data, two or more k-space datasets, wherein the two or more k-space datasets comprise different signal strength levels of bone signals and nearly identical signal strengths of intra- and extra-cranial components; and generating, based on at least the two or more k-space datasets, one or more images, wherein the one or more images comprise an image contrast between bone and soft tissue.
[0223] Aspect 12. The method of Aspect 11, wherein the first imaging data and the second imaging data is associated with a portion of a body.
[0224] Aspect 13. The method of any one of Aspects 11-12, wherein the first radio frequency configuration comprises a first pulse length and the second radio frequency configuration comprises a second pulse length different from the first pulse length.
[0225] Aspect 14. The method of any one of Aspects 11-13, wherein generating the one or more images comprises determining a temporal derivative based on different echo times, and normalizing the derivative by temporal integration to remove voxel-specific constants.
[0226] Aspect 15. The method of any one of Aspects 11-14, wherein generating the one or more images comprises sparsity-constrained image reconstruction.
[0227] Aspect 16. The method of Aspect 15, wherein the sparsity-constrained image reconstruction is based on a function comprising a non-uniform Fourier transformation.
[0228] Aspect 17. The method of any one of Aspects 11-16, further comprising outputting the one or more images to a human-readable medium.
[0229] Aspect 18. A system comprising the solid-state MRI device and a computing device, wherein the computing device is configured to implement the method of any one of Aspects 11-17.
[0230] Aspect 19. An apparatus comprising computer-readable instructions and a processor configured to execute the computer-readable instructions to implement the method of any one of Aspects 11-17.
[0231] Aspect 20. A method for imaging, the method comprising: receiving first imaging data of an object of interest at two or more echo times taken with a first radiofrequency configuration; determining, based on the first imaging data, a center of mass of the object of interest; determining, based on the first imaging data and the center of mass, a plurality of motion states of the object of interest; determining, based on at least a portion of the plurality of motion states, one or more motion correction parameters; correcting, based on the one or more motion correction parameters, two or more k-space datasets; and outputting, based on the corrected k-space datasets, one or more corrected images (e.g., motion corrected images).
[0232] Aspect 21. The method of Aspect 20, further comprising: receiving second imaging data at two or more echo times taken with a second radiofrequency configuration; and generating, based on at least the first imaging data and the second imaging data, the two or more k-space datasets.
[0233] Aspect 22. The method of Aspect 21, further comprising generating, based on at least a portion of the two or more k-space datasets, the one or more corrected images (e.g., motion corrected images), wherein the one or more images comprise different image contrast.
[0234] Aspect 23. The method of any one of Aspects 21-22, wherein receiving the first imaging data of an object of interest at two or more echo times taken with a first radiofrequency configuration comprises receiving gradient echo data based on a two-dimensional golden-means trajectory.
[0235] Aspect 24. The method of Aspect 23, wherein determining, based on the first imaging data and the center of mass, the plurality of motion states of the object of interest comprising determining, based on a time-course of the center of mass, the plurality of motion states.
[0236] Aspect 25. The method of any one of Aspects 20-24, wherein the one or more corrected images (e.g., motion corrected images) comprise an image contrast between bone and soft tissue.
[0237] Aspect 26. The method of any one of Aspects 20-25, wherein determining, based on at least the portion of the plurality of motion states, the one or more motion correction parameters comprises determining a motion trajectory comprise the one or more correction parameters.
[0238] Aspect 27. A system comprising a solid-state MRI device and a computing device, wherein the computing device is configured to implement the method of any one of Aspects 20-26.
[0239] Aspect 28. An apparatus comprising computer-readable instructions and a processor configured to execute the computer-readable instructions to implement the method of any one of Aspects 20-26.
[0240] Those skilled in the art also will readily appreciate that many additional modifications are possible in the exemplary embodiment without materially departing from the novel teachings and advantages of the invention. Accordingly, any such modifications are intended to be included within the scope of this invention as defined by the following exemplary claims.