The present invention relates to a method for magnetic resonance (MR) and/or MR imaging, comprising acquisition of signals and MR images originating from a RF and gradient sequence causing isotropic diffusion weighting of signal attenuation.
Molecular self-diffusion measured with NMR (Callaghan, 2011 in “Translational Dynamics & Magnetic Resonance” (Oxford, Oxford University Press); Price, 2009 in “NMR Studies of Translational Motion” (Cambridge, Cambridge University Press)) is used to non-invasively study the morphology of the water-filled pore space of a wide range of materials, e.g., rocks (Hürlimann et al., 1994 “Restricted diffusion in sedimentary rocks. Determination of surface-area-to-volume ratio and surface relaxivity”. J Magn Reson A 111, 169-178), emulsions (Topgaard et al., 2002, “Restricted self-diffusion of water in a highly concentrated W/O emulsion studied using modulated gradient spin-echo NMR”. J Magn Reson 156, 195-201.), and cheese (Mariette et al., 2002, “1H NMR diffusometry study of water in casein dispersions and gels”. J Agric Food Chem 50, 4295-4302.).
Anisotropy of the pore structure renders the water self-diffusion anisotropic, a fact that is utilized for three-dimensional mapping of nerve fiber orientations in the white matter of the brain where the fibers have a preferential direction on macroscopic length scales (Basser et al., 1994, “MR diffusion tensor spectroscopy and imaging”. Biophys J 66, 259-267; Beaulieu, 2002, “The basis of anisotropic water diffusion in the nervous system—a technical review”. NMR Biomed 15, 435-455; Moseley et al., 1991, “Anisotropy in diffusion-weighted MRI”. Magn Reson Med 19, 321-326.). The degree of the macroscopic diffusion anisotropy is often quantified by the non-dimensional fractional anisotropy index (Basser and Pierpaoli, 1996, “Microstructural and physiological features of tissues elucidated by quantitative-diffusion-tensor MRI”. J Magn Reson B 111, 209-219.).
Also microscopic anisotropy in a globally isotropic material can be detected with diffusion NMR, originally through the characteristic curvature observed in the echo attenuation of conventional single-PGSE (pulse gradient spin-echo) techniques (Callaghan and Söderman, 1983, in “Examination of the lamellar phase of aerosol OT/water using pulsed field gradient nuclear magnetic resonance”. J Phys Chem 87, 1737-1744; Topgaard and Söderman, 2002, in “Self-diffusion in two- and three-dimensional powders of anisotropic domains: An NMR study of the diffusion of water in cellulose and starch”. J Phys Chem B 106, 11887-11892.) and, more recently, by using double-PGSE approaches in which the NMR signal is encoded for displacements over two separate time periods (Mitra, 1995, in “Multiple wave-vector extension of the NMR pulsed-field-gradient spin-echo diffusion measurement”. Phys Rev B 51, 15074-15078.). The presence of microscopic anisotropy can be inferred by comparing echo attenuation data obtained with collinear and orthogonal displacement encoding (Callaghan and Komlosh, 2002, in “Locally anisotropic motion in a macroscopically isotropic system: displacement correlations measured using double pulsed gradient spin-echo NMR”. Magn Reson Chem 40, S15-S19; Komlosh et al., 2007, in “Detection of microscopic anisotropy in gray matter and in novel tissue phantom using double Pulsed Gradient Spin Echo MR”. J Magn Reson 189, 38-45; Komlosh et al., 2008, in “Observation of microscopic diffusion anisotropy in the spinal cord using double-pulsed gradient spin echo MRI”. Magn Reson Med 59, 803-809.), by the characteristic signal modulations observed when varying the angle between the directions of displacement encoding (Mitra, 1995, in “Multiple wave-vector extension of the NMR pulsed-field-gradient spin-echo diffusion measurement”. Phys Rev B 51, 15074-15078; Shemesh et al., 2011, in “Probing Microscopic Architecture of Opaque Heterogeneous Systems Using Double-Pulsed-Field-Gradient NMR”. J Am Chem Soc 133, 6028-6035, and “Microscopic and Compartment Shape Anisotropies in Gray and White Matter Revealed by Angular Bipolar Double-PFG MR”. Magn Reson Med 65, 1216-1227.), or by a two-dimensional correlation approach (Callaghan and Furó, 2004, in “Diffusion-diffusion correlation and exchange as a signature for local order and dynamics”. J Chem Phys 120, 4032-4038; Hubbard et al., 2005, 2006, in “A study of anisotropic water self-diffusion and defects in the lamellar mesophase”. Langmuir 21, 4340-4346, and “Orientational anisotropy in polydomain lamellar phase of a lyotropic liquid crystal”. Langmuir 22, 3999-4003.).
There is a growing interest in single-shot isotropic diffusion weighted techniques, aiming at reducing the scan time of clinical diffusion MRI experiments in which the mean diffusivity is of interest. Mean diffusivity can be determined from the trace of the diffusion tensor, which requires diffusion measurements in several directions. In the context of clinical MRI (magnetic resonance imaging) and MRS (magnetic resonance spectroscopy), a number of different gradient modulation schemes have been suggested for determining the trace of the diffusion tensor for macroscopically anisotropic materials in a single experiment (de Graaf et al., 2001, in “Single-Shot Diffusion Trace 1H NMR Spectroscopy”. Magn Reson Med 45, 741-748; Mori and van Zijl, 1995, in “Diffusion weighting by the trace of the diffusion tensor within a single scan”. Magn Reson Med 33, 41-52; Valette et al., 2012, in “A New Sequence for Single-Shot Diffusion-Weighted NMR Spectroscopy by the Trace of the Diffusion Tensor”. Magn Reson Med early view.). Although the actual schemes vary, the effective gradient modulation is often equivalent to a triple-PGSE experiment.
The prolonged echo times, required by the above schemes to achieve isotropic diffusion weighting, are unfavourable due to reduced signal to noise levels. Short echo-times may also be a necessary condition to achieve isotropic diffusion weighting at short characteristic length-scales of micro-anisotropy. Furthermore, the above techniques rely on gradient pulses to quickly increase dephasing factors from zero to its maximum value and decrease it back to zero after the diffusion encoding time in each orthogonal direction during the sequence. Such approach may impose unnecessarily high performance demands on MR(I) gradient equipment.
One aim of the present invention is to provide a method improving inter alia the time needed for using a sequence in MR(I) for obtaining isotropic diffusion weighting and where the signal-to-noise ratio also is improved in comparison to the known methods disclosed above.
The purpose above is achieved by a method for magnetic resonance (MR) and/or MR imaging, comprising acquisition of signals and MR images originating from a radio frequency (RF) and gradient sequence causing isotropic diffusion weighting of signal attenuation, wherein the isotropic diffusion weighting is proportional to the trace of a diffusion tensor D, and wherein the isotropic diffusion weighting is achieved by one time-dependent dephasing vector q(t) having an orientation, and wherein the orientation of the time-dependent dephasing vector q(t) is either varied discretely in more than three directions in total, or changed continuously, or changed in a combination of discretely and continuously during the gradient pulse sequence, 0≦t≦echo time, where t represents the time.
The expression “time-dependent dephasing vector” implies that both the magnitude and the direction of the dephasing vector are time-dependent. The aim of the present invention is to provide a method for achieving isotropic diffusion weighting with a single or multiple spin-echo pulse sequence with reduced echo times compared to the present known methods giving higher signal-to-noise ratio and enabling isotropic diffusion weighting on systems with shorter characteristic length scale of micro-anisotropy. An important characteristic of the new protocol is that it can be implemented with standard diffusion MR(I) equipment with reduced or comparable demands on the gradient system hardware compared to the present methods.
The isotropic weighting protocol disclosed herein can be used to obtain data with isotropic diffusion weighting and thus determine the mean diffusivity with high precision (high signal to noise) at minimum scan times. The protocol can be used as a building block, e.g. isotropic diffusion filter, of different NMR or MRI experiments. For example, it could be used in molecular exchange measurements (FEXSY, FEXI) as a low pass diffusion filter. It can also be used within multi-dimensional (2D, 3D . . . ) correlation experiments to achieve isotropic diffusion weighting or signal filtering. For example, the protocol could be used in diffusion-diffusion or diffusion-relaxation correlation experiments, where isotropic and non-isotropic diffusion contributions are correlated and analysed by an inverse Laplace transform to yield information about degree of anisotropy for different diffusion components (contributions). The protocol could also be used in combination with other NMR or MRI methods. For example, the protocol could be combined with the diffusion tensor and/or diffusion kurtosis measurement to provide additional information about morphology and micro-anisotropy as well as information about anisotropic orientation dispersion. The protocol can be used to facilitate and strengthen the interpretation of diffusion tensor and diffusion kurtosis measurements in vivo. For example, the protocol can provide information on the degree of anisotropy and on multi-exponential signal decays detected in kurtosis tensor measurements by attributing kurtosis to different isotropic and/or anisotropic diffusion contributions.
Assuming that spin diffusion in a microscopically anisotropic system can locally be considered a Gaussian process and therefore fully described by the diffusion tensor D(r), the evolution of the complex transverse magnetization m(r,t) during a diffusion encoding experiment is given by the Bloch-Torrey equation. Note that the Bloch-Torrey equation applies for arbitrary diffusion encoding schemes, e.g. pulse gradient spin-echo (PGSE), pulse gradient stimulated echo (PGSTE) and other modulated gradient spin-echo (MGSE) schemes. Assuming uniform spin density and neglecting relaxation, the magnetization evolution is given by
where y is the gyromagnetic ratio and g(t) is the time dependent effective magnetic field gradient vector. The NMR signal is proportional to the macroscopic transverse magnetization
If during the experiment each spin is confined to a domain characterized by a unique diffusion tensor D, the macroscopic magnetization is a superposition of contributions from all the domains with different D. Evolution of each macroscopic magnetization contribution can thus be obtained by solving Eqs. (1, 2) with a constant and uniform D. The signal magnitude contribution at the echo time tE is given by
where I0 is the signal without diffusion encoding, g=0, and q(t) is the time-dependent dephasing vector
defined for the interval 0<t<tE. The dephasing vector in Eqs. (3) and (4) is expressed in terms of its maximum magnitude q, the time-dependent normalized magnitude |F(t)|≦1 and a time-dependent unit direction vector {circumflex over (q)}(t). Note that in spin-echo experiments, the effective gradient g(t) comprises the effect of gradient magnitude reversal after each odd 180° radio frequency (RF) pulse in the sequence. Eq. (3) assumes that the condition for the echo formation q(tE)=0 is fulfilled, which implies F(tE)=0. In general there might be several echoes during an NMR pulse sequence.
The echo magnitude (3) can be rewritten in terms of the diffusion weighting matrix,
as
Integral of the time-dependent waveform F(t)2 defines the effective diffusion time, td, for an arbitrary diffusion encoding scheme in a spin-echo experiment
In the following we will demonstrate that even for a single echo sequence, gradient modulations g(t) can be designed to yield isotropic diffusion weighting, invariant under rotation of D, i.e. the echo attenuation is proportional to the isotropic mean diffusivity,
In view of what is disclosed above, according to one specific embodiment of the present invention, the isotropic diffusion weighting is invariant under rotation of the diffusion tensor D.
According to the present invention, one is looking for such forms of dephasing vectors F(t){circumflex over (q)}(t), for which
is invariant under rotation of D. If diffusion tenor D is expressed as a sum of its isotropic contribution,
is fulfilled.
In spherical coordinates, the unit vector {circumflex over (q)}(t) is expressed by the inclination ζ and azimuth angle ψ as
{circumflex over (q)}
T(t)={{circumflex over (q)}x(t), {circumflex over (q)}y(t), {circumflex over (q)}z(t)}={sin ζ(t)cos ψ(t), sin ζ(t)sin ψ(t), cos ζ(t}. (11)
The symmetry of the diffusion tensor, D=DT, gives
{circumflex over (q)}
T
·D·{circumflex over (q)}={circumflex over (q)}
x
2
D
xx
+{circumflex over (q)}
y
2
D
yy
+{circumflex over (q)}
z
2
D
zz+2{circumflex over (q)}x{circumflex over (q)}yDxy+2{circumflex over (q)}x{circumflex over (q)}zDxz+2{circumflex over (q)}y{circumflex over (q)}zDyz (12)
or expressed in spherical coordinates as
{circumflex over (q)}
T
·D·{circumflex over (q)}=sin2 ζ cos2 ψDxy+sin ζ2 sin ψ2 Dyy+cos2 ζDzz+2 sin ζ cos ψ sin ζ sin ψDxy'2 sin ζ cos ζ cos ζDxz+2 sin ζ sin ψ cos ζDyz (13)
Equation (13) can be rearranged to
The first term in Eq. (14) is the mean diffusivity, while the remaining terms are time-dependent through the angles ζ(t) and ψ(t) which define the direction of the dephasing vector (4). Furthermore, the second term in Eq. (14) is independent of ψ, while the third and the forth terms are harmonic functions of ψ and 2ψ, respectively (compare with Eq. (4) in [13]). To obtain isotropic diffusion weighting, expressed by condition in Eq. (9), the corresponding integrals of the second, third and fourth terms in Eq. (14) must vanish. The condition for the second term of Eq. (14) to vanish upon integration leads to one possible solution for the angle ζ(t), i.e. the time-independent “magic angle”
ζm=a cos (1/√{square root over (3)}). (15)
By taking into account constant ζm, the condition for the third and the fourth term in Eq. (14) to vanish upon integration is given by
Conditions (16) can be rewritten in a more compact complex form as
which must be satisfied for k=1, 2. By introducing the rate {dot over (τ)}(t)=F(t)2, the integral (17) can be expressed with the new variable τ as
Note that the upper integration boundary moved from tE to td. The condition (18) is satisfied when the period of the exponential is td, thus a solution for the azimuth angle is
for any integer n other than 0. The time dependence of the azimuth angle is finally given by
The isotropic diffusion weighting scheme is thus determined by the dephasing vector q(t) with a normalized magnitude F(t) and a continuous orientation sweep through the angles ζm (15) and ψ(t) (20). Note that since the isotropic weighting is invariant upon rotation of Di orientation of the vector q(t) and thus also orientation of the effective gradient g(t) can be arbitrarily offset relative to the laboratory frame in order to best suit the particular experimental conditions.
As understood from above, according to yet another specific embodiment, the isotropic diffusion weighting is achieved by a continuous sweep of the time-dependent dephasing vector q(t) where the azimuth angle ψ(t) and the magnitude thereof is a continuous function of time so that the time-dependent dephasing vector q(t) spans an entire range of orientations parallel to a right circular conical surface and so that the orientation of the time-dependent dephasing vector q(t) at time 0 is identical to the orientation at time tE. Furthermore, according to yet another embodiment, the inclination ζ is chosen to be a constant, time-independent value, i.e. the so called magic angle, such that ζ=ζm=a cos(1/√{square root over (3)}). It should be noted that the method according to the present invention may also be performed so that ζ is chosen to be time-dependent, as far as condition (10) is fulfilled, however, this is not a preferred implementation.
What is disclosed above implies that according to one specific embodiment of the present invention, the orientation of the dephasing vector, in the Cartesian coordinate system during the diffusion weighting sequence, spans the entire range of orientations parallel to the right circular conical surface with the aperture of the cone of 2*ζm (double magic angle) and the orientation of the dephasing vector at time 0 is identical to the orientation of the dephasing vector at time tE, i.e. ψ(tE)−ψ(0)=2*π*n, where n is an integer (positive or negative, however not 0) and the absolute magnitude of the dephasing vector, q*F(t), is zero at time 0 and at time tE. Therefore, according to one specific embodiment, the time-dependent normalized magnitude F(t) of the dephasing vector is |F(t)|≦1 during an echo time tE from t=0 to t=tE and the orientation of the dephasing vector at time 0 is identical to the orientation of the dephasing vector at time tE.
With reference to what is disclosed above it should be said that the concept of the magic angle is used in other types of methods in MR today. For instance in US2008116889 there is disclosed a method for magnetic resonance analysis or in fact MRI spectroscopy suggesting a magic angle technique. The turning around the magic angle as disclosed in US2008116889 is required to achieve higher spectroscopic resolution (reduce anisotropic susceptibility broadening). The method does no relate to diffusion weighting. According to the present invention the dephasing vector may be turned around the magic angle to achieve isotropic diffusion weighting, and is hence not related to turning the magnetic field or sample around the magic angle as described in US2008116889.
According to the present invention, the isotropic weighting can also be achieved by q-modulations with discrete steps in azimuth angle providing q(t) vector steps through at least four orientations with unique values of ei
The pulsed gradient spin-echo (PGSE) sequence with short pulses offers a simplest implementation of the isotropic weighting scheme according to the present invention. In PGSE, the short gradient pulses at times approximately 0 and tE cause the magnitude of the dephasing vector to instantaneously acquire its maximum value approximately at time 0 and vanish at time tE. The normalized magnitude is in this case given simply by F(t)=1 in the interval 0<t<tE and 0 otherwise, providing td=tE. A simplest choice for the azimuth angle (20) is the one with n=1 and ψ(0)=0, thus
The dephasing vector is given by
The corresponding effective gradient, calculated from
Here δ(t) is the Dirac delta function. Rotation around the y-axis by a tan(√2) yields
The effective gradient in Eqs. (24, 25) can conceptually be separated as the sum of two terms,
g(t)=gPGSE(t)+giso(t). (26)
The first term, gPGSE, represents the effective gradient in a regular PGSE two pulse sequence, while the second term, giso, might be called the “iso-pulse” since it is the effective gradient modulation which can be added to achieve isotropic weighting.
As may be seen from above, according to one specific embodiment of the present invention, the method is performed in a single shot, in which the latter should be understood to imply a single MR excitation.
Below there will be disclosed a suggested analysis method which may be performed subsequent to the method disclosed above.
Fractional anisotropy (FA) is a well-established measure of anisotropy in diffusion MRI. FA is expressed as an invariant of the diffusion tensor with eigenvalues λ1, λ2 and λ3.
In typical diffusion MRI experiments, only a voxel average anisotropy can be detected. The sub-voxel microscopic anisotropy is often averaged out by a random distribution of main diffusion axis. Here we introduce a novel parameter for quantifying microscopic anisotropy and show how it can be determined by diffusion NMR.
Information about the degree of micro-anisotropy can be obtained from comparison of the echo-attenuation curves, E(b)=/(b)/I0, with and without the isotropic weighting. Multi-exponential echo attenuation is commonly observed in diffusion experiments. The multi exponential attenuation might be due to isotropic diffusion contributions, e.g. restricted diffusion with non-Gaussian diffusion, as well as due to the presence of multiple anisotropic domains with varying orientation of main diffusion axis. The inverse Laplace transform of E(b) provides a distribution of apparent diffusion coefficients P(D), with possibly overlapping isotropic and anisotropic contributions. However, in isotropically weighed diffusion experiments, the deviation from mono-exponential attenuation is expected to originate mainly from isotropic contributions.
In practice, the diffusion weighting b is often limited to a low-b regime, where only an initial deviation from mono-exponential attenuation may be observed. Such behaviour may be quantified in terms of the kurtosis coefficient K (Jensen, J. H., and Helpern, J. A. (2010). MRI quantification of non-Gaussian water diffusion by kurtosis analysis. NMR Biomed 23, 698-710.),
The second term in Eq. (28) can be expressed by the second central moment of the distribution P(D).
Provided that P(D) is normalized,
the normalized echo signal is given by the Laplace transform
The distribution P(D) is completely determined by the mean value
and by the central moments
The second central moment gives the variance, μ2=σ2, while the third central moment, μ3, gives the skewness or asymmetry of the distribution P(D). On the other hand, the echo intensity can be expressed as a cumulant expansion (Frisken, B. (2001). Revisiting the method of cumulants for the analysis of dynamic light-scattering data. Appl Optics 40) by
The first-order deviation from the mono-exponential decay is thus given by the variance of P(D).
Assuming diffusion tensors with axial symmetry, i.e. λ|=D∥ and λ2=λ3=D⊥, and an isotropic distribution of orientation of the tensor's main diffusion axis, the echo-signal E(b) and the corresponding distribution P(D) can be written in a simple form. In case of the single PGSE experiment, using a single diffusion encoding direction, the distribution is given by
with the mean and variance,
The echo-attenuation for the single PGSE is given by
For a double PGSE with orthogonal encoding gradients, the distribution P(D) is given by
with the same mean value as for the single PGSE but with a reduced variance,
As in the single PGSE, also in double PGSE the echo-attenuation exhibits multi-component decay,
For randomly oriented anisotropic domains, the non-isotropic diffusion weighting results in a relatively broad distribution of diffusion coefficients, although reduced four-fold when measured with a double PGSE compared to the single PGSE. On the other hand the isotropic weighting results in
with μ2=0 (41)
and a mono-exponential signal decay
E(b)=e−b
The variance μ2 could be estimated by applying a function of the form (33) to fitting the echo attenuation data. However, in case of randomly oriented anisotropic domains, the convergence of the cumulant expansion of (36) is slow, thus several cumulants may be needed to adequately describe the echo attenuation (36). Alternatively, the distribution (34) may be approximated with the Gamma distribution
where α is known as the shape parameter and β is known as the scale parameter. For the Gamma distribution, the mean diffusivity is given by
The variance, μ2iso, obtained by fitting the function (44) to the isotropic diffusion weighted echo-decay is related to the isotropic diffusion contributions, since the variance is expected to vanish with isotropic weighting in a pure microscopically anisotropic system (see Eq. 41). The same fitting procedure on non-isotropically weighted data will yield the variance μ2 due to both isotropic and anisotropic contributions. The difference μ2−μ2iso vanishes when all diffusion contributions are isotropic and therefore provides a measure of micro-anisotropy. The mean diffusivity
The difference μ2−μ2iso along with
The μFA is defined so that the μFA values correspond to the values of the well-established FA when diffusion is locally purely anisotropic and determined by randomly oriented axially symmetric diffusion tensors with identical eigenvalues. Eq. (45) is obtained by setting μFA=FA (27), assuming μ2−μ2iso=μ2 and expressing the eigenvalues D∥ and D⊥ in terms of
The difference μ2−μ2iso in Eq. (45) ensures that the micro-anisotropy can be quantified even when isotropic diffusion components are present. Isotropic restrictions, e.g. spherical cells, characterised by non-Gaussian restricted diffusion, are expected to cause a relative increase of both μ2 and μ2iso by the same amount, thus providing the difference μ2−μ2iso independent of the amount of isotropic contributions. The amount of non-Gaussian contributions could be quantified for example as the ratio √{square root over (μ2iso)}/
For anisotropic diffusion with finite orientation dispersion, i.e. when local diffusion tensors are not completely randomly oriented, the
Eq. (44) could be expanded by additional terms in cases where this is appropriate. For example, the effects of a distinct signal contribution by the cerebrospinal fluid (CSF) in brain could be described by adding a mono-exponential term with the isotropic CSF diffusivity D1 to Eq. (44),
where f is the fraction of the additional signal contribution. Eq. (46) could be used instead of Eq. (44) to fit the experimental data.
When an extended fitting model described in Eq. (46) is applied, then the mean diffusivity,
The method may involve the use of additional terms in Eq. (44), such as Eq. (46), applied to the analysis described in the above paragraphs. Eq. (46) comprises two additional parameters, i.e. fraction of the additional diffusion contribution (f) and diffusivity of the additional contribution (D1). One such example may be the analysis of data from the human brain, where the additional term in Eq. (46) could be assigned to the signal from the cerebrospinal fluid (CSF). The parameter
In addition, valuable information about anisotropy may be obtained from the ratio of the non-isotropically and the isotropically weighted signal or their logarithms. For example, the ratio of the non-isotropically and the isotropically weighted signals at intermediate b-values, might be used to estimate the difference between the radial (D⊥) and the axial (D∥) diffusivity in the human brain tissue due to the diffusion restriction effect by the axons. Extracting the information about microscopic anisotropy from the ratio of the signals might be advantageous, because the isotropic components with high diffusivity, e.g. due to the CSF, are suppressed at higher b-values. Such a signal ratio or any parameters derived from it might be used for generating parameter maps in MRI or for generating MR image contrast.
The first example depicts the PGSE sequence with approximately constant F(t)=1, i.e. short z-gradient pulses (gz/|g|) at the beginning and at the end of the diffusion encoding interval. The gradient sequence is augmented by a sinusoidal gradient modulation in x-direction and with a cosine modulation in y-direction to achieve isotropic diffusion weighting. Note that, as in typical PGSE diffusion experiments, the non-isotropic diffusion weighting is achieved when x and y gradients are not active. In this example, the gradient modulations are identical in the intervals 0<t<tE/2 and tE/2<t<tE, when a 180° refocusing RF pulse is used, which is a preferred implementation for many applications, e.g. to achieve spectroscopic resolution. This may be advantageous due to possible asymmetries in gradient generating equipment. However, the use of short gradient pulses as well as the need to quickly increase the cosine gradient component to its maximum value following excitation and following the possible application of a 180° RF pulse, as well as quickly decrease its value to zero before a possible application of a 180° RF pulse, may be a disadvantageous implementation for some applications.
The second example may be viewed as a PGSE with long gradient pulses in z-direction or a spin-echo experiment in a constant z-gradient (which may be provided by a stray field of the magnet) augmented with the gradient modulation in x and y directions for isotropic diffusion weighting. Similarly as in the first example, the possible need for fast rising and vanishing of some of the gradient components may be disadvantageous also in this case. Furthermore, unlike in the first example, modulations of some gradient components are not identical in the intervals 0<t<tE/2 and tE/2<t<tE.
In relation to the description above and below it should be mentioned that also multi-echo variants of course are possible according to the present invention. Such may in some cases be beneficial for flow/motion compensation and for compensation of possible asymmetry in gradient generating equipment.
In examples 3-6, we make use of harmonic gradient modulations for all gradient and dephasing components. These examples may be advantageous compared to the first two examples by using a more gradual variation in the dephasing magnitude. However, these examples do suffer from non-identical modulations of some gradient components in the intervals 0<t<tE/2 and tE/2<t<tE. While in examples 3-5 there may be the need for fast rising and vanishing of some of the gradient components immediately after and before the application of the RF pulses, the situation is more favourable in the sixth example, since all the gradient components conveniently vanish at times 0, tE/2 and tE. As my be understood from above, according to one specific embodiment of the present invention, the time-dependent normalized magnitude F(t) is chosen as a harmonic function of time. It should, however, be noted that this is not a must, as may be seen in
In
In
In
For μFA estimation, the optimal choice of the b-values is important. To investigate the optimal range of b-values, a Monte-Carlo error analysis depicted in
The optimal range of the diffusion weighting b is given by a compromise between accuracy and precision of the μFA analysis and it depends on the mean diffusivity. If the maximum b value used is lower than 1/
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1250452-8 | May 2012 | SE | national |
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61642594 | May 2012 | US |
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Parent | 14398325 | Oct 2014 | US |
Child | 15718613 | US |