The present invention relates generally to medical imaging. More particularly, the present invention relates to a method of magnetic resonance imaging.
Since the first report of chemical exchange saturation transfer (CEST) contrast in 2000, this imaging technology has attracted many new research studies, resulting in a number of preclinical and now also clinical applications. Endogenous CEST contrast has been applied to characterizing acute ischemia and brain tumors, visualizing the concentration of tissue amide protons and their chemical exchange rate. CEST contrast has been found to relate to tumor grade, and allows separation of recurrent tumor from the effects of treatment. This contrast is also used in musculoskeletal imaging for monitoring glycosaminoglycan concentrations in cartilage. In addition, CEST reporter genes are being developed allowing detection of cells expressing this gene.
An important advantage of CEST is the capability to design agents with protons at different frequencies, allowing simultaneous detection of probes with different functions. CEST probes have been designed to label virus particles, allow imaging of the kidneys, and allow the detection of peptides, drug delivery particles, changes in temperature, pH, and metabolite concentrations. Ultimately, for both endogenous and exogenous CEST contrast agent studies, improved detection technologies will be important to speed up the transition to widespread preclinical and clinical use.
CEST contrast is produced through the application of a radiofrequency saturation pulse at the resonance frequency of the exchangeable protons, after which the resulting saturation is transferred via chemical exchange to bulk water leading to a loss in signal that yields contrast. However, the application of this pulse results in other sources of water signal loss, such as due to conventional magnetization transfer contrast (MTC, mainly from solid-like macromolecules in tissue) and direct saturation (DS), complicating image analysis. To analyze the sources of water signal loss, it is widespread practice to plot the saturated water signal intensity (S) normalized with the intensity without saturation (S0) as a function of saturation offset with respect to water, termed a Z-spectrum. As shown in
The proton transfer ratio (PTR) is a metric used to describe CEST contrast for a certain proton type in a given agent. Unfortunately, the standard assumption that the experimentally determined MTRasym equals PTR is not valid as MTC may have an inherent asymmetric component (MTRasyminherent). Moreover, the spatial inhomogeneity of magnetic field results in water frequency variations and produces artifacts (MTRasymfield). Therefore, the experimentally measured asymmetry is given by:
MTRasym=PTR+MTRasymfield+MTRasyminherent) (2)
Errors in MTRasym due to MTRasymfield contributions can be reduced by mapping the field and performing a voxel-based offset correction, which are categorized as offset incrementation correction (OIC) methods. Mapping the field can be accomplished through fitting the Z-spectrum for each pixel or through gradient echo based methods or fitting Z-spectra acquired using short, weak saturation pulses. The corrected contrast map is generated by acquiring a reduced number of images with frequencies around the proton of interest. Such types of either partial or whole Z-spectra acquisition require relatively long scan times and have the disadvantage that the CNR of the contrast map does not increase as the number of offsets and the scan time increase. To partially compensate for this, CEST contrast can also be calculated by integrating over the width of the CEST peak or using a Lorentzian line-fitting, but still require sweeping the offset over a wide range. Recently an additional method has been proposed which utilizes two saturation frequency alternating to cancel out the MTRasymfield and MTRasyminherent.
It would therefore be advantageous to provide a method of MRI which an aspect of the saturation pulse is varied to modulate the water signal loss, such as using cosine modulation and impart differential phases on the three different components of the asymmetric MTR contributions (PTR, (tsat), and (Δω)). This allows their separation using post-processing techniques similar to those for analyzing time-varying signals in fMRI and other imaging moiety, such as the general linear model (GLM) to identify modulation patterns, fast fourier transform (FFT) to separate different frequency components or pattern recognition method, such as principal component analysis, independent component analysis and fuzzy analysis.
The foregoing needs are met, to a great extent, by the present invention, wherein in one aspect, a method for obtaining a magnetic resonance image (MRI) or spectrum includes performing a chemical exchange saturation transfer (CEST) magnetic labeling experiment or a Magnetization Transfer labeling experiment of a subject using an MRI machine over a period of time. The method further includes varying an aspect of a saturation pulse or serial pulse sequence scheme applied by the MRI machine during the period of time for performing the CEST magnetic labeling experiment or Magnetization Transfer labeling experiment of the subject. Data is generated from the magnetic labeling MRI experiment and transmitting to a data processing unit. The data processing unit processes the data and generates a visual representation of the data.
In accordance with another aspect of the present invention, the visual representation of the data includes a multi-dimensional parametric fingerprint to describe the CEST or Para-CEST moiety. Varying the aspect can include but is not limited to any one of the following: varying a length (tsat) and an offset (Δω) of the saturation pulse, a length (tsat) of the saturation pulse, varying the number of pulses (Nsat) and an offset (Δω) of the serial pulse sequence scheme, varying a modulation frequency (ωs) and a length (60 of the saturation pulse such that single or multiple frequencies are obtained simultaneously, varying a modulation frequency (ωs) and a number of pulses (Nsat) of a serial saturation pulse sequence scheme, such that single or multiple frequencies are obtained simultaneously, varying a modulation frequency (ωs) and an offset (Δω) such that single or multiple frequencies are obtained simultaneously, varying a modulation frequency (ωs) and a power (B1) of the saturation pulse such that single or multiple frequencies are obtained simultaneously, varying a modulation frequency (ωs) such that single or multiple frequencies are obtained simultaneously, varying a power (B1) and an offset (Δω) of a saturation pulse, and varying a power (B1) of the saturation pulse.
In accordance with another aspect of the present invention, the method can include identifying modulation patterns using a pattern recognition method such as principal component analysis, independent component analysis and fuzzy analysis. Identifying modulation patterns can also be done using a general linear model and separating different frequency components can be done using a fast fourier transform (FFT). The method can also include enhancing the detection of the CEST signal and separation from noise using principle component analysis to extract a CEST moiety specific multiparametric fingerprint pattern that is specific to multiple varying saturation serial pulse sequence schemes.
In accordance with yet another aspect of the present invention, the method can further include manipulating the aspect of the saturation pulse or serial pulse sequence scheme in an aspect unit and collecting one or more total aspect units during the period of time for performing the CEST magnetic labeling experiment or magnetization transfer experiment. A series of images can be acquired using N aspect units with one or more images within each aspect unit. One or more offsets selected from one of a group consisting of frequencies on a same side as water and in resonance with an exchangeable proton and frequencies on an opposite side of water from the exchangeable protons, can also be varied. The saturation pulse is used to saturate the sample in a spatially and time selective method using a multi-transmitter and a multi-receiver platform. Additionally, the method can include acquiring at least one of a voxel, part of an image, or one more slices of a multi-slice 2D or 3D acquisition. Smaller changes can further be extracted by taking the subtraction of generated images or by acquiring a reference image for a baseline.
The accompanying drawings provide visual representations which will be used to more fully describe the representative embodiments disclosed herein and can be used by those skilled in the art to better understand them and their inherent advantages. In these drawings, like reference numerals identify corresponding elements and:
The presently disclosed subject matter now will be described more fully hereinafter with reference to the accompanying Drawings, in which some, but not all embodiments of the inventions are shown. Like numbers refer to like elements throughout. The presently disclosed subject matter may be embodied in many different forms and should not be construed as limited to the embodiments set forth herein; rather, these embodiments are provided so that this disclosure will satisfy applicable legal requirements. Indeed, many modifications and other embodiments of the presently disclosed subject matter set forth herein will come to mind to one skilled in the art to which the presently disclosed subject matter pertains having the benefit of the teachings presented in the foregoing descriptions and the associated Drawings. Therefore, it is to be understood that the presently disclosed subject matter is not to be limited to the specific embodiments disclosed and that modifications and other embodiments are intended to be included within the scope of the appended claims.
An embodiment in accordance with the present invention provides a method for obtaining a magnetic resonance image (MRI) or spectrum. The method includes a step of performing a chemical exchange saturation transfer (CEST) magnetic labeling experiment of a subject using an MRI machine over a period of time. During the period of time for performing the CEST magnetic labeling experiment an aspect of a saturation pulse or series pulse sequence applied by the MRI machine can be varied. Data is generated from the CEST magnetic labeling experiment and is transmitted to a data processing unit. The data is processed to generate a visual representation of the data.
Varying the aspect of the saturation pulse or the serial pulse sequence scheme can include but is not limited to any one of the following: a Length (tsat) and an Offset (Δω) of VARied Saturation (LOVARS), a Length (tsat) VARied (L-VARS), the Number of pulses (Nsat) and an Offset (Δω) VARied Saturation (NOVARS), the Number of pulses (Nsat) VARied Saturation (N-VARS),an Power (B 1) and an Offset (Δω) VARied Saturation (POVARS), an Power (B1) VARied Saturation (P-VARS), a Modulation frequency (ωs) and an offset (Δω) VARied Saturation (MOVARS) such that modulated single or multiple frequencies are obtained simultaneously, a Modulation frequency (ωs) and a Length (tsat) VARied Saturation (M-LVA.RS) such that modulated single or multiple frequencies are obtained simultaneously, a Modulation frequency (ωs) and a Length (tsat) and an Offset VARied Saturation (M-LOVARS) such that modulated single or multiple frequencies are obtained simultaneously, a Modulation frequency (ωs) and the Number of pulses (Nsat) VARied Saturation (M-NVARS) such that modulated single or multiple frequencies are obtained simultaneously, a Modulation frequency (ωs) and the Number of pulses (Nsat) and an Offset VARied Saturation (M-NOVARS) scheme such that modulated single or multiple frequencies are obtained simultaneously, a Modulation frequency (ωs) and an Power (B1) and an Offset VARied Saturation (M-POVARS) scheme such that modulated single or multiple frequencies are obtained simultaneously, a Modulation frequency (ωs) and an Power (B1) VARied Saturation (M-PVARS) scheme such that modulated single or multiple frequencies are obtained simultaneously. These aspects are listed as examples and any other way of varying the saturation pulse or serial pulse sequence scheme known to one of skill in the art could be used.
The aspects listed above, such as LOVARS, L-VARS, NOVARS, N-VARS, MOVARS, M-LVARS, M-NVARS, M-PVARS, M-VARS, POVARS, and P-VARS can be manipulated in a predetermined scheme referred to as an aspect unit. These aspect units can also be referred to, more particularly, as LOVARS units, LVARS units, NOVARS units, NVARS units, M-LVARS units, M-NVARS units, MOVARS units, M-PVARS units, M-VARS units, POVARS units, and P-VARS units. One or more of these aspect units can be collected during the period of time for performing the CEST or magnetization transfer experiment. One or more images can be acquired during one or more aspect units.
By way of example, this invention will be described with reference to varying the LOVARS aspect, defined above, in a CEST magnetic labeling experiment. Aspect units will therefore be measured and described as LOVARS units. This is not to be considered limiting, as any of the aspects described above could be employed in either a CEST or magnetization transfer magnetic labeling experiment, to execute the methods described and claimed herein. More particularly, the method includes the use of several equations to describe the method as well as the results of a CEST magnetic labeling experiment done according to an embodiment of the method. These equations are discussed in more detail, below. The sources of water signal loss upon application of a saturation pulse (MTC, PTR, DS) can be described using modified Bloch equations. The tsat-dependence of CEST contrast (PTR) can be modeled using the following equation:
with ksw being the unidirectional exchange rate from solute protons to water protons, Xs being the concentration of the solute exchangeable protons, R1w being the spin-lattice relaxation rate of water, and α being the saturation efficiency. This expression has been used to measure ksw for poly-L-lysine (PLL), dendrimers, and other CEST agents in vitro based on this exponential buildup as a function of tsat.
Saturation pulses also produce a direct loss in water magnetization due to saturation of water protons. The longitudinal magnetization after applying an radiofrequency pulse in the absence of CEST agent can be modeled:
Equation 4 shows that the buildup of DS with tsat is related to the relaxation rates for water (R1, R2), Δω, and ω1. As shown in Eqs. 3 and 4, the PTR and DS contrast dependencies on tsat are different and MTC also possesses a different dependence on tsat.
Based on the knowledge that CEST, DS and MTC behave differently as a function of tsat and using the symmetry properties of DS and MTC (predominantly symmetric) and CEST (asymmetric) around the water resonance, the LOVARS imaging scheme was designed, as illustrated in
For this scheme, a series of images is acquired using N LOVARS' Units with four images within each LOVARS unit, as illustrated in
[S1, S2, S3, S4]=[S(−Δω, Tsat,2), S(−Δω, Tsat,1), S(+Δω, Tsat,2), S(+Δω, Tsat,1)] (5)
where S(−Δω, Tsat,2) represents the image signal with a saturation pulse with offset −Δω and length Tsat,2. Two different offsets are used: (i) +Δω, on resonance with the exchangeable protons and (ii) −Δω, on the opposite side of water from the exchangeable protons, and two different tsat values, a longer one (Tsat,1) and a shorter one (Tsat,2). Assuming no B0 inhomogeneity, as illustrated in
Considering the combined contributions of CEST, DS, and MTC, the pattern of water signal can be represented by the LOVARS Response Function (LRF):
Sirf=A0+A1×cos[π/2(m−1)+φ]+A2×cos[π(m−1)] (6)
where “m” is the image number in the LOVARS time series (m=1,2, . . . , 4XN) after acquiring N LOVARS units, cos (π/2(m−1)+φ) represents the asymmetric components of the contrast (Eq. 1) and cos(π(m−1)) represents the symmetric components of the contrast, as illustrated in
The LOVARS scheme creates modulations in the water signal that can be analyzed in multiple ways. One possibility is to FFT the signal intensity in the LOVARS time series to determine the contributions of CEST contrast, as illustrated in
where k is in units of cycles/LOVARS units and l is the image index within one LOVARS units. For k=1 cycle/LOVARS units, expanding Eq. 7 using
gives:
L(1 cycle/LOVARS units) relates in a straightforward manner to MTRasym. The imaginary part of L(1 cycle/LOVARS units) corresponds to the MTRasym produced using the longer saturation pulse, MTRasym (Tsat,1), while the real part corresponds to the MTRasym using a shorter saturation pulse, MTRasym (Tsat,2). The relative phase between these two amplitudes (φ) is determined by tan(φ)=MTRasym (Tsat,1)/MTRasym(Tsat,2). When the two saturation lengths are chosen such that for CEST contrast: PTR(Tsat,1)>PTR(Tsat,2), while for MTC or DS:
MTRasymfield(Tsat,1)≦MTRasymfield(Tsat,2), the phase can be considered a new CEST contrast parameter that accounts for differences in the tsat-dependence between PTR, MTRasyminherent and MTRasymfield(Eq. 2). Alternatively, GLM (commonly applied in fMRI) can be used to process the images using Eq. 6 as a model.
To estimate the optimal saturation parameters for LOVARS, simulations were performed on two different CEST contrast agents: PLL and L-arginine, using the numerical solutions for 2-pool and 3-pool models, respectively. It should, however, be noted that any endogenous or exogenous CEST, paraCEST or MT contrast agent known to one of skill in the art can be used. The PLL simulations were performed as described previously. The L-arginine simulations were performed using two solute pools “a,” chemical shift difference=1.1 ppm (amine), and “b,” chemical shift difference=2 ppm (guanidyl amine) and a water pool “w.” The Bloch equations were written in the general form dY/dt=A*Y+b and solved using MATLAB (The MathWorks, Natick, Mass.). Based on fitting the three pools in L-arginine at 11.7 T, the relaxation rates are: R1w=0.3 s−1, R1a=R1b=0.71 s−1, R2w=1 s−1, R2a=32 s−1, and R2b=50 s−1, and the exchange rates are kaw=150 s−1, kbw=800 s−1, and kab=100 s−1 with the saturation B1=3.8 μT. For 10 mM L-arginine the relative molar concentration of exchangeable protons to water protons ([Hexch]solute/[H]H2O) is 0.27×10−3 for pool “a” and 0.36×10−3 for pool “b.” For the simulations including noise, 1, 2, and 3% gaussian white noise with mean of zero was added to the L-arginine simulations using MATLAB function “randn.” While MATLAB was used in the examples discussed herein any other mathematic computation software program known to one of skill in the art can be used.
Additionally simulations were carried out to model the dependence of MTC. Data acquired on agar was simulated, a model of tissue magnetization transfer, by numerically solving the Bloch equations using a 2-pool model. The Z-spectra were first simulated at several different concentrations (2, 3, and 4%) of agar using the relaxation and exchange rates: R1s=1 s−1, R2s=2.23×105 s−1, R1w=0.35 s−1, R2w=1.3 s−1, and ksw=176 s−1. To determine the tsat dependence of MTRasymninherent and MTRasymfield, the offset of the saturation pulse was shifted and the difference in water signal resulting from the saturation pulse (e.g., if the water frequency is shifted by 0.1 ppm, then the original offsets +Δω and −Δω would shift to +Δω 0.1 ppm and −Δω −0.1 ppm, respectively) as a function of tsat was calculated.
A phantom was prepared that includes four types of samples: a CEST contrast agent (L-arginine), two MTC molecular models (cross-linked bovine serum albumin(BSA) and agar) and 0.01 M phosphate-buffered saline (PBS), pH=7.4, which should only show DS. All samples were dissolved in PBS and placed into 1 mm capillary tubes. L-arginine (Sigma, St Louis, Mo.) samples were prepared at four concentrations (10 mM, 5 mM, 2.5 mM, and 1.25 mM) to produce a range of CEST contrast. Crosslinked BSA samples (2.5 and 5%) were prepared using bovine serum albumin(Sigma, St Louis, Mo.) by heating this for 8 min in a water bath at 80° C. Agar samples were prepared at concentrations of 2, 3, and 4% w/v.
Rat gliosarcoma cells (9L) were grown in standard medium, collected by trypsinization, washed, and suspended in medium at a concentration of 1×105 cells/μL. Balb/c NOD/SCID male mice (6-8 weeks old; n=7, ˜25 g weight) were initially anesthetized in a chamber containing 4-5% isoflurane. The animals were positioned in a stereotactic device (Stoelting Lab Standard), a small midline skin incision was made to expose the skull, and a 1 mm2 hole was drilled 2 mm to the right of the bregma. Cells (2×105/2 μL) were injected into the striatum, 2.5 mm ventral to the surface of the brain, slowly over a period of 3 min with the syringe removed 30 s after completion to minimize back flow.
For MRI, mice were anesthetized using 0.5-2% isoflurane. Immediately following the last MRI, mice were perfused with PBS followed by 4% paraformaldehyde(PFA), brains were removed, preserved in 4% PFA at 4° C. for a week, cryosectioned (25 μm thick), and stained using hematoxylin and eosin (H&E).
All experiments were performed on an 11.7 T vertical bore Bruker Avance system (Bruker Biospin, Billerica, Mass.) with a 15 mm birdcage radiofrequency coil. However, any suitable system known to one of ordinary skill in the art can be used. The imaging sequence consists of a continuous-wave (CW) saturation pulse and a rapid acquisition with relaxation enhancement (RARE) sequence (RARE factor=8). Other imaging parameters were: field of view (FOV)=1.15×1.15 cm, acquisition matrix size=64×64, slice thickness=0.5 mm. The scanning protocol is similar to that described previously. At the beginning of the session, a group of images were acquired with Δω incremented from −0.6 ppm to 0.6 ppm (0.1 ppm step), t,sat=500 ms, B1=0.5 μT, and repetition time (TR)/echo time (TE)=2200 ms/4.9 ms to generate the B0 map using water saturation shift referencing (WASSR). Then a second set of saturation images was collected with Δω from −5 to 5 ppm (0.3 ppm step), tsat=4.0 s, B1=3.8 μT, TR/TE=6000 ms/4.9 ms, and number of averages (NA) equals 1 to generate the Z-spectrum. Another three pairs of saturation images (NA=2), with saturation offsets of ±1.55 ppm, ±1.8 ppm, and ±2.05 ppm for L-arginine are collected for the contrast map using OIC. For optimizing LOVARS, images were first acquired with tsat varied from 0.5 to 5 s. The final LOVARS images used two LOVARS units, Δω=+1.8 ppm or −1.8 ppm, Tsat,2=1.5 s, and Tsat,1=4 s. An image without saturation pulse (S0) was collected as intensity reference.
All experiments were performed on a 9.4 T horizontal bore animal Bruker Avance system with a 25 mm sawtooth coil. However, as noted above, any suitable device known to one of skill in the art can be used. After acquiring T2-weighted scout images, a 1 mm thick coronal slice at the center of the tumor was chosen for collection of both OIC and LOVARS images. The pulse sequences were kept similar to the phantom studies with the following modifications. First, WASSR B0 map images were collected with Δω incremented from −0.5 ppm to 0.5 ppm (0.1 ppm step), tsat=500 ms, B1=0.5 μT, TR/TEeffective=1500 ms/14.6 and NA=2, which was used for Scheme 2 OIC maps. After this, a Z-spectrum with Ow incremented from −4 ppm to +4 ppm (0.25 ppm step or use the scheme in Table 2, reproduced below, was collected using tsat=3000 ms, B1=3 μT, TR/TE=5000 ms/14.6 ms, NA=1. Another 3 pairs of the saturation images (NA=2) were collected with offsets at ±3.25 ppm, ±3.5 ppm and ±3.75 ppm, respectively to generate the MTRasym map using Scheme 1 for OIC as described previously (14,36). For optimizing LOVARS, images were acquired with tsat varied from 0.8 to 4 s. The final LOVARS images used 2 LOVARS Units, Δω=+3.5 ppm or −3.5 ppm, Tsat,2=0.8 s, and Tsat,1=3 s. An image without saturation pulse (S0) was collected as a reference. The remaining imaging parameters were matrix size=128×64, FOV=1.65×1.5 cm.
For 3 mice, for tumor identification, additional T,-weighted (T1-w) Gd-DTPA images were collected after tail vein injection of 0.4 mmol/kg mouse body weight Gd-DTPA (Magnevist®). T1-w images with the same FOV and resolution were acquired prior to injection and every 30 s until 15 mins after injection. The imaging parameters were: TR/TE=1000 ms/7 ms, RARE factor=2, and NA=1. All processing was performed using custom-written scripts in Matlab as described herein. All simulations and phantom experiments were performed at 11.7T. However, any experimental protocol within the capability of one of ordinary skill in the art can be used.
To design the LOVARS scheme, illustrated in
The simulated Z-spectra and MTRasym (for L-arginine) curves were fit to the experimental data, as illustrated in
Further with respect to
The signal patterns can be Fourier-transformed or fit to Eq. 6 (GLM), with the FFT results shown in
To avoid this, the phase range of [3π/4, π] was unwrapped to [−5π/4, −π]. FIG, 4G shows only CEST tubes possess a phase within π/2>φ>3π/10, eliminating all the MTC and PBS tubes regardless of the B0 inhomogeneity. In addition, the LOVARS contrast maps, as illustrated in
where Scontrast,1 and Scontrast,2 are the signal intensity of two contrast maps acquired consecutively.
bCNRefficiencycontrastCNRcontrast/{square root over (scan time)}
Further, a series of simulations was performed to test the limits of LOVARS phase mapping scheme in the presence of B0 shifts and noise, as illustrated in
Two different CEST agents were used: L-arginine and PLL, which possess exchangeable protons at 1.8 ppm and 3.6 ppm separated from water, and compared with the phase value produced by the MTC agent agar.
To determine how LOVARS performs as the SNR of the images change, simulations were performed at 11.7T using 2.5 mM L-arginine and 2% agar, as illustrated in
To test the performance of the scheme in vivo, LOVARS images were acquired on mice bearing 9L gliosarcomas, which are expected to show amide proton transfer contrast at an offset of 3.5 ppm. Similar to the phantom experiments, Tsat,1 and Tsat,2 were chosen based on examination of the tsat-dependence of MTRasym in tumor and contralateral control tissue. The average MTRasym in tumors plateaued at a tsat=3 s which was used for Tsat,2, Tsat,2 was set to 0.8 s to satisfy MTRasym(Tsat,2) ˜0.5×MTRasym(Tsat,1).
Further,
Next, the variation was examined in the LOVARS phase maps from day 5 to day 11 after cell engraftment. Tumors could clearly be detected in these LOVARS phase, as illustrated in the top pictures of
As shown in Table 2, reproduced below, LOVARS phase provides dramatic contrast for tumors (average φ=1.12 radians or ˜π/3) over normal brain tissue (average φ=−2.47 radians or ˜−4π/5), with a P-value of less than 0.001. The LOVARS contrast maps possess a higher CNR than the OIC maps, with the average CNR for the phase maps ˜26.7 (2 LOVARS Units) vs. ˜8.8 for OIC over the total 11 images on 7 mice and multiple days. Table 2 also lists the scan times for LOVARS and the two OIC methods, showing that LOVARS achieves ˜3.2 times CNR efficiency of that for OIC Scheme 2.
aCNR = {square root over (2)}(Stumor − Scontrol)/δ, where the noise δ is the standard deviation of a 4 pixel by 4 pixel control ROI in the subtraction of two consecutively acquired contrast maps.
bThe offsets for the Z-spectrum were chosen for optimized results.
cCNR efficiency equals to CNRcontrast/{square root over (Tscan)}
A new imaging scheme was constructed with the purposes of allowing the use of time domain analysis techniques to correct for B0 inhomogeneity and achieve a higher CNR. Another time domain analysis technique for CEST has been proposed recently. The LOVARS scheme illustrated in
For determining appropriate tsat values for the LOVARS scheme, both simulations and experimental phantom data were used on multiple concentrations of L-arginine and agar, as illustrated in
Another benefit of the LOVARS method is that it significantly reduces the Specific Absorption Rate (SAR) compared to OIC by decreasing the duty cycle. For our phantom experiments, the duty cycle for 1 LOVARS Unit (4 scans) is 45% less than for OIC, and for in vivo the duty cycle of LOVARS is 58% less than the OIC duty cycle.
One feature of the LOVARS phase map is that the phase is insensitive to concentration and exchange rate, as is shown for the 4 different L-arginine concentrations in
in Eq. 3. This leads to the phase being less sensitive to the exchange rate (ksw), concentration (Xs) and water relaxation times, although the absolute value of the phase may still exhibit small changes in particular with water T2, as illustrated in
Based on the robustness of the scheme, in vitro, the testing progressed to testing in mice. APT imaging of 9L brain tumors was chosen, as the APT contrast is well characterized, (˜5% CEST contrast between tumor and normal tissue) and also because APT imaging of brain tumors is the first clinical application of CEST imaging, having been applied to more than 12 patients. This scheme was optimized on 3 mice, with several representative images shown in
The LOVARS phase maps compared favorably to both the conventional APT image obtained using OIC and the Gd-enhanced image. Meaningful differences were not found between the FFT or GLM methods, as illustrated in
An example using an exogenous CEST agent and using endogenous CEST agent in an animal tumor model using one representative variation of the method as well as the disclosure of the detailed mathematics and documentation superiority of the claimed improvements over existing method is included below as an illustration, not contrived to limit the scope of the application to detection, imaging and quantification of naturally occurring CEST and PARACEST agent which may be used to characterize tumor and monitor therapy, intracellular glycolytic or metabolic process, detect cell apoptosis, confirm delivery of CEST labeled diagnostic or therapeutic payload in nanoparticles and CEST material in functional tissue such as kidney, liver or cartilage.
The many features and advantages of the invention are apparent from the detailed specification, and thus, it is intended by the appended claims to cover all such features and advantages of the invention, which fall within the true spirit and scope of the invention. Further, since numerous modifications and variations will readily occur to those skilled in the art, it is not desired to limit the invention to the exact construction and operation illustrated and described, and accordingly, all suitable modifications and equivalents may be resorted to, falling within the scope of the invention.
Although the present invention has been described in connection with preferred embodiments thereof, it will be appreciated by those skilled in the art that additions, deletions, modifications, and substitutions not specifically described may be made without departing from the spirit and scope of the invention as defined in the appended claims.
This application claims the benefit of U.S. Provisional Patent Application No. 61/477,442 filed Apr. 20, 2011, which is incorporated by reference herein, in its entirety.
This invention was made with government support under R2IEB005252, R21EB008769, R21NS065284, R01E012590, R01EB015031, and R01E13015032 awarded by the National Institutes of Health. The government has certain rights in the invention.
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