WO2004098407A1 - Method of estimating the spatial variation of magnetic resonance imaging radiofrequency (rf) signal intensities within an object from the measured intensities in a uniform spin density medium surrounding the object - Google Patents
Method of estimating the spatial variation of magnetic resonance imaging radiofrequency (rf) signal intensities within an object from the measured intensities in a uniform spin density medium surrounding the object Download PDFInfo
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- WO2004098407A1 WO2004098407A1 PCT/AU2004/000471 AU2004000471W WO2004098407A1 WO 2004098407 A1 WO2004098407 A1 WO 2004098407A1 AU 2004000471 W AU2004000471 W AU 2004000471W WO 2004098407 A1 WO2004098407 A1 WO 2004098407A1
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- G—PHYSICS
- G01—MEASURING; TESTING
- G01R—MEASURING ELECTRIC VARIABLES; MEASURING MAGNETIC VARIABLES
- G01R33/00—Arrangements or instruments for measuring magnetic variables
- G01R33/20—Arrangements or instruments for measuring magnetic variables involving magnetic resonance
- G01R33/28—Details of apparatus provided for in groups G01R33/44 - G01R33/64
- G01R33/42—Screening
- G01R33/422—Screening of the radio frequency field
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- G—PHYSICS
- G01—MEASURING; TESTING
- G01R—MEASURING ELECTRIC VARIABLES; MEASURING MAGNETIC VARIABLES
- G01R33/00—Arrangements or instruments for measuring magnetic variables
- G01R33/20—Arrangements or instruments for measuring magnetic variables involving magnetic resonance
- G01R33/44—Arrangements or instruments for measuring magnetic variables involving magnetic resonance using nuclear magnetic resonance [NMR]
- G01R33/48—NMR imaging systems
- G01R33/54—Signal processing systems, e.g. using pulse sequences ; Generation or control of pulse sequences; Operator console
- G01R33/56—Image enhancement or correction, e.g. subtraction or averaging techniques, e.g. improvement of signal-to-noise ratio and resolution
- G01R33/565—Correction of image distortions, e.g. due to magnetic field inhomogeneities
- G01R33/5659—Correction of image distortions, e.g. due to magnetic field inhomogeneities caused by a distortion of the RF magnetic field, e.g. spatial inhomogeneities of the RF magnetic field
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- G—PHYSICS
- G01—MEASURING; TESTING
- G01R—MEASURING ELECTRIC VARIABLES; MEASURING MAGNETIC VARIABLES
- G01R33/00—Arrangements or instruments for measuring magnetic variables
- G01R33/20—Arrangements or instruments for measuring magnetic variables involving magnetic resonance
- G01R33/24—Arrangements or instruments for measuring magnetic variables involving magnetic resonance for measuring direction or magnitude of magnetic fields or magnetic flux
- G01R33/246—Spatial mapping of the RF magnetic field B1
Definitions
- the present invention relates to a method of estimating the spatial variation of magnetic resonance imaging radiofrequency (RF) signal intensities within an object from the measured intensities in a uniform spin density medium surrounding the object, such as for the subcutaneous fat surrounding the liver in an axial image.
- RF radiofrequency
- MRI nuclear magnetic resonance imaging
- Instrumental effects include inhomogeneous RF excitation, non-uniformities in receiving coil sensitivity, and gradient field eddy currents, whilst measurement object effects include variable RF penetration and standing wave effects. These intensity variations are detrimental to the meaningful comparison of image intensities in separate parts of the image, and must be corrected for if accurate quantitative information is to be obtained. Methods that can correct for the effects of the RF signal intensity gradient are thus an important area of development in quantitative MRI.
- pre- and post-processing techniques have been developed with the aim to correct for the spatial variation in RF signal intensity within the object being measured, as discussed by L. Q. Zhou, Y. M. Zhu, C. Bergot, A.-M. Laval- Jeantet, V. Bousson, J.-D. Laredo, and M. Laval-Jeantet, in "A method of radio-frequency inhomogeneity correction for brain tissue segmentation in MRI", Computerized Medical Imaging and Graphics, Vol. 25, pp. 379-389, 2001.
- Preprocessing techniques have focussed on the measurement of homogeneous phantoms prior to measurement of the object under study to estimate the inhomogeneities in the RF field.
- Post-processing techniques attempt to rectify this situation by estimating the decay profile of the RF signal intensity within the object from analysis of the object data set itself. This enables both correction of object independent effects, such as bias in the RF field, as well as object dependent effects, such as signal intensity attenuation within the object.
- object independent effects such as bias in the RF field
- object dependent effects such as signal intensity attenuation within the object.
- the assumption behind most post-processing techniques is that the non-uniformity in RF signal intensity may be attributed to a low spatial frequency component throughout the image.
- a number of approaches to estimating RF inhomogeneities are thus based on intensity correction schemes that employ image smoothing. Homomorphic filters are predominantly used in this situation as they account for the low frequency signal intensity components without altering structural boundaries.
- Other post-processing methods are based on structural classification techniques and intensity surface interpolation.
- the number of reference points may be increased by a tissue classification technique.
- the thin-plate spline surface is then fitted to the reference points by the method of least-squares rather than by interpolation.
- the main limitation of the intensity surface correction technique described above is that there is no measured data with which to justify the extrapolated intensity reference values at the periphery of the head, given that the signal intensity gradient is not known at these peripheral points. Further, there is no physical basis to the selection of the thin plate spline surface to model the RF signal intensity gradient. As such, the thin-plate spline surface may not adequately account for local variations in RF attenuation throughout the object being imaged.
- RF radiofrequency
- a method of estimating the spatial variation of magnetic resonance imaging radio frequency (RF) signal intensities within an object from measured RF signal intensities of a uniform spin density medium surrounding the object comprising: acquiring a magnetic resonance image of an object bounded by a medium which is of essentially uniform spin density, on the length scale of resolution of the image;
- RF radio frequency
- said step of formulating said semi-empirical mathematical model of the spatial variation in RF signal intensity within the object comprises: locating a plurality of points in a plane of said image which are notionally considered to act as apparent receivers of RF signals (hereinafter referred to as "RF receiver points" ) ; and,
- said RF receiver points are located on said surrounding medium.
- said spatial intensity profile is formulated in a manner which provides a concentric reduction in RF signal intensity with increasing distance from said RF receiver points .
- said reduction in RF signal intensity is formulated as having the same rate of reduction in signal intensity with increasing distance from all said RF receiver points .
- said spatial profile is formulated as having an exponential reduction in signal intensity with increasing distance from said RF receiver points .
- said spatial profile is formulated as having a reduction in signal intensity with the reciprocal of the distance from said RF receiver points raised to a chosen power.
- said semi-empirical mathematical model is formulated as :
- x and y are image coordinates
- I (x,y) is the model of the spatial intensity profile of the RF signal
- N is the number of RF receiver points
- I n is the estimated signal intensity at the n th RF receiver point and is to be determined by the fitting procedure
- R is the rate of decay in signal intensity with distance from said RF receiver points and is to be determined by the fitting procedure
- x n is the x position of the n th RF receiver point
- y n is the y position of the n th RF receiver point
- f is the degree of ellipticity to the concentric decay in RF signal intensity with increasing distance from said RF receiver points and is to be determined by the fitting procedure.
- said selected measured RF signal intensities comprise pixels of maximal signal intensity in respective radial line segments of an image of the surrounding medium (hereinafter referred to as "selected pixels”) .
- said method further comprises connecting said selected pixels by a line.
- said method further comprises deriving from said trace local maxima in signal intensity.
- said RF receiver points are located at the local maxima in signal intensity of the said selected pixels from said surrounding medium.
- said local maxima in signal intensity of the selected pixels are no closer than 12 pixels.
- said local maxima in signal intensity determined from the selected pixels serve as starting values for the signal intensities I n of the said RF receiver points in the said fitting procedure.
- said fitting procedure includes deriving an initial estimate of the rate R of decay of signal intensity with distance from said RF receiver points determined by: locating local minima amongst said selected pixels in a manner consistent with determination of said local maxima;
- the elliptical contours of the decay in the RF signal intensity from a given RF receiver point have their minor axes approximately normal to a plane of an RF receiver coil element of an MRI machine acquiring said image of said object in closest proximity to the given RF receiver point .
- the angular alignment of each of the elliptical contours of the decay in the RF signal intensity from the RF receiver points is determined relative to said trace.
- the angular alignment of the major axes of the elliptical contours of the decay in the RF signal intensity from the RF receiver points is determined relative to said trace by: centering a window kernel on each RF receiver point and finding the two furthest positions from said RF receiver point at which said trace of the selected pixels passes through the perimeter of the window kernel; and,
- said window kernel which is centered on said RF receiver points to determine the angular alignment of the elliptical contours of the decay in the RF signal intensity from said RF receiver points is a square window kernel not less than 13 pixels in width.
- said model is formulated as :
- I (x, y) is the model of the spatial intensity profile of the RF signal
- N is the number of RF receiver points
- I n is the estimated signal intensity at the n th RF receiver point and is to be determined by the fitting procedure
- R is the rate of decay in signal intensity with distance from the RF receiver points and is to be determined by the fitting procedure
- x n is the x position of the n th RF receiver point
- y n is the y position of the n th RF receiver point
- f is the degree of ellipticity to the concentric reduction in RF signal intensity with increasing distance from the RF receiver points and is to be determined by the fitting procedure
- Q n is the angular alignment of the major axis of the elliptical contour to the decay in the RF signal intensity from the n th RF receiver point with the coronal plane.
- model spatial intensity profile l (x,y) is fitted to the image intensities of the selected pixels from the medium bordering the object for optimum parameterisation of I n , R and f to obtain an estimate of the spatial variation in RF signal intensity throughout the object.
- said method further comprises determining a RF spatial attenuation profile with which to rescale the magnetic resonance image intensities within the said object and thus minimise the spatial variation in RF signal intensity throughout the object.
- said RF spatial attenuation profile is determined by dividing the estimated RF signal intensity profile l (x, y) by the minimum or maximum value of l (x,y) within the region occupied by the object.
- the spatial variation in RF signal intensity throughout the object is be minimised by dividing the image intensities within the object by the RF spatial attenuation profile.
- said method further comprises, when the magnetic resonance image is a spin echo image, providing an estimate of the image intensities within the object at zero echo time by dividing the estimated signal intensities within the object at the given echo time by a percentage remaining signal intensity expected within the surrounding medium at the given echo time and then dividing this result by a ratio of hydrogen proton spin density expected of the bounding medium relative to hydrogen proton spin density expected of the object itself.
- Preferably said method also comprises calculating transverse relaxation rates within the object from a series of spin echo images acquired of the object and surrounding medium at different echo times.
- said method further comprises using the estimates of the image intensities within the object at zero echo time in the calculation of transverse relaxation rates within the object where the estimates are determined from a spin echo time image of shortest duration in the spin echo image series .
- the transverse relaxation time of said surrounding medium is significantly greater than the spin echo time at which the image is acquired such that there is negligible decay in signal intensity throughout the medium from zero echo time.
- said surrounding medium is a layer of subcutaneous fat surrounding the abdomen.
- the subcutaneous fat is used to estimate image intensities within the liver at zero echo time to assist in the calculation of the transverse relaxation rates .
- MR magnetic resonance
- estimating the spatial variation of magnetic resonance imaging radio frequency (RF) signal intensities within the object from measured RF signal intensities of a uniform spin density medium surrounding the object by:
- Figure 1 is a magnetic resonance spin echo image of the abdomen of a patient with liver iron overload acquired at an echo time of 6 ms and a repetition time of 2500 ms;
- Figure 2 shows a trace of maximal pixel signal intensities determined within a layer of subcutaneous fat surrounding the liver to a width of one pixel for the patient in Figure 1;
- Figure 3 shows the local maxima in signal intensity determined from the trace of the maximal pixel signal intensities in Figure 2, which correspond to the positions of the RF receiver points .
- Figure 4 illustrates the manner in which an angle ⁇ n of a major axis of an elliptical contour to the decay in the RF signal intensity from a given RF receiver point is determined relative to the coronal plane from the trace of the maximal signal intensities throughout the subcutaneous fat;
- Figure 5A shows a selected RF receiver point from Figure 3 and the two nearest neighbouring local minima
- Figure 5B shows the intensity of the local maximum at the RF receiver point and the intensity of the two nearest neighbouring local minima plotted as a function of distance in pixels from the RF receiver point and to which has been fitted an exponential signal intensity decay curve for the determination of R n ;
- Figure 6 shows the result of fitting the model spatial intensity profile of the decay in signal intensity from the RF receiver points to the image intensities of selected pixels within the subcutaneous fat to obtain an estimate of the spatial variation in RF signal intensity throughout the liver of the patient in Figure 1;
- Figures 7A & 7B show the spin echo image of Figure 1 before (Figure 7A) and after ( Figure 7B) reduction of the RF signal intensity non-uniformities throughout the liver via the estimated spatial variation in RF signal intensity of Figure 6 (with the contrast enhanced to accentuate image differences) ;
- Figure 8 shows a bi-exponential transverse magnetisation decay curve fitted to the signal intensity within the liver for a pixel p at position (x,y) of the patient in Figure 1 (for seven different spin echo image measurements) plotted as a function of the spin echo time, with the estimate of the initial signal intensity within the liver at zero echo time at pixel position p is included as an additional datum in the fit. Also shown is the expected signal decay rate within the subcutaneous fat relative to the RF spatial intensity profile value I ( (x p/ y p ) at pixel position
- embodiments of the present invention provide a method of estimating the spatial variation in RF signal intensity within magnetic resonance images of an object through the solution of a boundary value problem presented by a medium of essentially uniform spin density surrounding the object. From analysis of the surrounding medium, and the location of notional points of RF signal reception (hereinafter simply referred to as "RF receiver points"), a semi-empirical mathematical formulation of the decay profile of the RF signal intensity within the object is determined.
- the RF receiver points are located about the object in a manner consistent with the geometry of the RF detection coil elements in a magnetic resonance imager producing images of the object and the pattern of RF penetration throughout the object.
- RF receiver points are considered to be notional RF receiver points as they are not (usually) at the location of the actual RF detection coil elements of the imager but at locations which for the purposes of mathematical modelling have a substantially similar appearance to the positioning of the RF detection coil elements.
- the detection sensitivity of the RF receiver points is assumed to diminish in a concentric manner with increasing distance from the points, with the degree of ellipticity adjusted relative to the signal intensity pattern throughout the medium surrounding the object. To this end the RF receiver points may be located on the surrounding medium though this is not essential to the present invention.
- the sensitivity of each RF receiver point is also adjusted relative to the amplitude of the signal intensities throughout the bounding medium.
- the resulting semi-empirical mathematical formulation of the decay profile of the RF signal intensity throughout the object is then fitted to selected signal intensities from the medium bordering the object to obtain an estimate of the spatial variation in RF signal intensity within the object.
- a method for estimating magnetic resonance image intensities (as illustrated in Figure 6) within an object such as a liver 10 (shown in Figures 1 and 7A) to map the spatial variation in RF signal intensity ( Figure 6) within the object 10 that is due to instrumental and/or object effects.
- the method involves acquiring a magnetic resonance image of the object 10 surrounded by a medium of essentially uniform spin density, such as that provided by a layer of subcutaneous fat 12.
- a semi-empirical mathematical model is formulated of the spatial variation in RF signal intensity within the region encompassed by the surrounding medium 12 and which includes the object 10.
- the model provides for a reduction, and in particular an exponential reduction, in RF signal intensity with increasing distance away from notional points of RF signal reception 14 (referred to as "RF receiver points 14") within the surrounding medium 12.
- the RF receiver points 14 are located at the local maxima of a selection of measured RF signal intensities from the surrounding medium 12.
- an estimate of the rate of decay in signal intensity from the RF receiver points is determined with reference to local minima 16 amongst the selected pixels from the surrounding medium 12.
- the model is then fitted to the image intensities of the selected pixels from the surrounding medium 12 to obtain an estimate of the spatial variation in RF signal intensity within the object 10 that is due to instrumental and/or object effects.
- Figure 1 illustrates an input image for the present method.
- Figure 1 illustrates a T 2 -weighted magnetic resonance image acquired of the abdomen of a patient in which the object under particular study is a liver 10.
- the layer of subcutaneous fat 12 which surrounds the liver 10 provides a suitable surrounding medium of essentially uniform spin density which is used in the present method to estimate the spatial variation in RF signal intensity throughout the liver.
- the image illustrated in Figure 1 shows a patient with liver iron overload, the image being acquired at a spin echo time TE of 6 ms and a repetition time TR of 2500 ms .
- Figure 2 illustrates a trace 18 of selected pixels within the subcutaneous fat 12 of the patient to be used in the estimation of the spatial variation in RF signal intensity within the liver 10.
- the selected pixels used to produce the trace 18 are pixels of maximal signal intensity 19 in respective radial line segments 17 of the image of the subcutaneous fat 12.
- the pixels 19 are selected by an edge detection algorithm that locates the maximal signal intensities within the subcutaneous fat 12 to a width of one pixel around the periphery of the patient.
- a region of interest 20, drawn around the patient in Figure 2 within which is shown the trace 18 of the maximal signal intensities within the subcutaneous fat 12, is used as a reference for the edge detection algorithm.
- the edge detection algorithm in essence look for the pixel of maximum intensity along each of the radial line segments 17 in the subcutaneous fat 12. It should be understood that the maximal intensities could be derived in relation to horizontal and vertical line segments from the region of interest 20 toward the centre of the body, rather than with reference to the radial line segments.
- Figure 3 shows the local maxima 14 in signal intensity within the subcutaneous fat 12 determined from the trace 18 of the maximal signal intensities shown in Figure 2.
- the local maxima 14 are located by sliding a window of constant width along the trace and for each position of the window ascertaining the maximum signal intensity for the length of the window. A second pass is then performed by sliding the window along the maximised signal trace and calculating the mean signal intensity of the maximised signal trace at each position of the window. Where the mean signal intensity is equal to the maximised signal intensity at a central window position, a local maximum 14 in signal intensity is recorded.
- the window is selected to be at least 12 pixels wide so that adjacent local maxima are no closer than 12 pixels.
- the locations of the local maxima are taken as the positions of the notional RF receiver points for the mathematical description of the spatial intensity profile I (x,y) of the detected RF signal within the liver. While the local maxima in the bounding medium 12 are used as the RF receiver points 14, it is important to note that these points do not have to be located on the medium 12. The location of these points is used to determine the geometry of the spatial intensity profile. In providing the mathematical model of the spatial intensity profile l (x, y) it is assumed that signal strength diminishes or decays with distance from the points 14.
- this decay is modelled as being an exponential decay and it is further assumed in the formulation of the model that RF signal intensity diminishes in a concentric manner from the points 14.
- the following two mathematical models of the spatial intensity profile l (x. , y) may be provided:
- N is the number of RF receiver points 14, i n is the signal intensity at the n th RF receiver point 14 ⁇ and is to be determined by the fitting procedure, R is the rate of decay in intensity of the detected RF signal with distance from the RF receiver points 14 and is to be determined by the fitting procedure, x n is the x position of the n th RF receiver point 14 n , y n is the y position of the n th RF receiver point 14 n , f is the degree of ellipticity to the concentric reduction in RF signal intensity with increasing distance from the RF receiver points 14 and is to be determined by the fitting procedure, and 0 n is the angle of the major axis of the elliptical contour to the decay in the RF signal intensity from the n th RF receiver point 14 n with the coronal plane.
- the intensity values of the local maxima are taken as initial estimates of the signal intensities l n at the N
- the mathematical model (2) above is a more general form of mathematical model (1) . Both models provide for an exponential decay in signal intensity or strength from the RF receiver points in an elliptical manner. However model (2) also allows for orientation of the major and minor axes of the elliptical decay in signal intensity for each of the RF receiver points 14. The model (2) reduces to the model (1) if it is assumed that major axis of the elliptical decay contours is aligned with the coronal plane 13 , this is equivalent to 0 n being 0°.
- Figure 4 illustrates the manner in which the angular alignment of the major axis of the elliptical contour of the decay in the RF signal intensity from a given RF receiver point 14 is determined relative to the coronal plane 13 from the trace of the maximal signal intensities throughout the subcutaneous fat as shown in Figure 2.
- a window kernel 15 is centered on a given RF receiver point and the two most extreme positions at which the trace 18 of the maximal signal intensities passes through the perimeter of the window kernel 21 are determined.
- the window kernel 15 is square with a width of 25 pixels.
- the angle Q of the line bisecting the two said extreme positions on the perimeter of the window kernel is then determined relative to the coronal plane 13 , as denoted in Figure 4.
- this angle is denoted Q n ⁇ and is used in the model (2) of the spatial intensity profile I (x, y) of the detected RF signal intensity within the liver.
- Figures 5A and 5B illustrate how an initial estimate of the rate R of decay in intensity of the RF signal with distance from the RF receiver points 14 is determined by way of example to one RF receiver point 14 ⁇ .
- Figure 5A shows a selected RF receiver point 14 ⁇ from Figure 3 , and the two nearest neighbouring local minima 16a and 16b, determined in a manner consistent with that for location of the local maxima in the subcutaneous fat 12.
- Figure 5B shows the intensity of the local maxima at the RF receiver point 14 and the intensity of the two neighbouring local minima plotted as a function of distance in pixels from the RF receiver point 14.
- An exponential decay curve is fitted to the signal intensity data points with the rate R n of decay in signal intensity as the unknown parameter, and with the intensity at zero distance from the RF receiver point 14 ⁇ fixed to the intensity of the local maxima at that point. This procedure is repeated for each RF receiver point 14, for which the estimates of the rate R n of decay in signal intensity with distance from each RF receiver point 14 are averaged to give an initial estimate of R, the rate of decay in intensity of the detected RF signal with distance from the RF receiver points .
- Figure 6 shows the result of fitting the model spatial intensity profile I (x,y) to the selected image intensities from the subcutaneous fat 12 to obtain an estimate of the spatial variation in RF signal intensity throughout the liver 10.
- the accuracy of the fit is improved by removing any signal intensities from the trace 18 of the maximal signal intensities throughout the subcutaneous fat 12 that are either inconsistent with the presence of fat or are otherwise erroneous.
- the projected signal intensities may be used to rescale the magnetic resonance image intensities within the liver and thus minimise the spatial variation in RF signal intensity throughout the liver, as shown in Figures 7A and 7B.
- Figure 7A is the spin echo image of Figure 1 redisplayed with increased image contrast, and for which a region of interest has been drawn about the liver 10.
- Figure 7B shows the liver signal intensities with a reduced variation in RF signal intensity, in which the liver signal intensities have been divided through by a RF spatial attenuation profile determined from the fitted spatial intensity profile I (x, y) .
- the RF spatial attenuation profile was determined by dividing the fitted RF signal intensity profile I (x, y) by the minimum value of I (x, y) within the region occupied by the liver.
- Figure 8 illustrates application of the estimated spatial variation in RF signal intensity within the liver to facilitate the calculation of transverse relaxation rate (R) within the liver.
- This application is particularly useful where the transverse relaxation rates within the liver are determined from a series of spin echo images where the signal intensities are predominantly less than 50% of the initial signal intensity at zero echo time.
- the RF signal intensity profile I (x, y) fitted to the maximal signal intensities within the subcutaneous fat is transformed into an estimate of the image intensities within the liver at zero echo time by dividing l (x,y) by the percentage remaining signal intensity expected within the subcutaneous fat at the given echo time, and then dividing this result by the ratio of the hydrogen proton spin density expected of the subcutaneous fat relative to the hydrogen proton spin density expected of the liver.
- the estimate of the image intensities within the liver at zero echo time may be then included as additional data points at zero echo time in calculation of the transverse relaxation rates within the liver.
- Figure 8 where the signal intensity within the liver for a pixel p at position (x p ,y ) from seven separate spin echo time measurements is plotted versus echo time, with the estimate of the initial signal intensity within the liver at zero echo time (determined from the 6ms spin echo image) at pixel postion p is included as an additional datum at zero echo time.
- the percentage remaining signal intensity expected within the subcutaneous fat at the given echo time of 6ms as shown in Figure 8 is effectively given by the values X divided by Y which are marked on the signal intensity axis.
- the value for the percentage remaining signal intensity expected within the subcutaneous fat is in practice estimated from the expected signal decay rate for the subcutaneous fat (R 2 Fat) relative to the given echo time (TE) by the expression exp(-R2 Fa t.TE) , where exp ( ) is the exponential function.
- the ratio of the hydrogen proton spin density expected of the subcutaneous fat relative to the hydrogen proton spin density expected of the liver is evidenced in Figure 8 by the signal intensity axis values of Y divided by Z.
- the transverse relaxation rate characteristic of the liver in the example of Figure 8 was determined by fitting a bi-exponential signal decay to the data points.
- the inclusion of the estimated signal intensity at zero echo time implicitly improves the accuracy of the calculated R 2 by including extractable information about signal intensities at points in time much earlier than that captured in the shortest echo time image. This method is especially important in the accurate modelling of bi- exponential transverse magnetisation decay processes .
- the present method has numerous advantages and benefits over prior art methods for correcting spatial non-uniformities in RF signal intensity within magnetic resonance images.
- the present method enables the determination of a RF signal intensity correction surface that is particularly sensitive to non- uniformities in the RF receiving coil profile as well as signal intensity attenuation within the object under study. This is facilitated through the concurrent imaging of a medium of essentially uniform spin density bordering the object from which the pattern of RF signal intensity attenuation within the object is estimated.
- a semi-empirical mathematical model of the spatial variation in RF signal intensity within the object is determined through the location of notional RF receiver points about the boundary medium, from which a concentric decay to the detected RF signal intensity is assumed with increasing distance from the said points .
- the concentric pattern of decay from each RF receiver points is taken to be elliptical, with the major axes of the elliptical contours approximately aligned with the RF coil .
- the ellipse is a reasonable model of the decay profile in RF signal intensity that results from the convolution of the RF coil geometry with the internal attenuation effects from the object under study.
- the RF receiver points need not be constrained to location at the maximal signal intensities on the boundary medium, or even on the boundary medium itself.
- the decay in signal intensity with increasing distance from the RF receiver points need not follow an exponential decay, or the same decay rate from each point.
- the signal intensities within the object under study may be rescaled by direct division with the fitted signal intensity profile to form a signal intensity ratio of the object image intensities relative to the boundary medium intensities.
- the signal intensity ratio of liver to subcutaneous fat may be formulated at every point within the liver with reference to the projected signal intensities determined from the subcutaneous fat.
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CA002521679A CA2521679A1 (en) | 2003-04-09 | 2004-04-08 | Method of estimating the spatial variation of magnetic resonance imaging radiofrequency (rf) signal intensities within an object from the measured intensities in a uniform spin density medium surrounding the object |
AU2004236364A AU2004236364B2 (en) | 2003-04-09 | 2004-04-08 | Method of estimating the spatial variation of magnetic resonance imaging radiofrequency (RF) signal intensities within an object from the measured intensities in a uniform spin density medium surrounding the object |
JP2006504002A JP2006522619A (en) | 2003-04-09 | 2004-04-08 | Method for estimating spatial variations of a plurality of radio frequency (RF) signal intensities in a magnetic resonance image inside an object from a plurality of measured RF signal intensities of a medium having a uniform spin density around the object |
EP04760472A EP1610679A4 (en) | 2003-04-09 | 2004-04-08 | Method of estimating the spatial variation of magnetic resonance imaging radiofrequency (rf) signal intensities within an object from the measured intensities in a uniform spin density medium surrounding the object |
EGNA2005000632 EG23782A (en) | 2003-04-09 | 2005-10-09 | Method of estimating the spatial variation of magnetic resonance imaging radiofrequency (rf) signal intensities within an object from the measured intensities in a uniform spin destiny medium surrounding the object |
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US7372270B2 (en) * | 2005-09-12 | 2008-05-13 | University Of Southern California | Compensating for non-uniformity of excitation field in MRI |
WO2007058631A1 (en) * | 2005-11-21 | 2007-05-24 | Agency For Science, Technology And Research | Method and device for correction of magnetic resonance images |
RU2434645C2 (en) * | 2006-03-31 | 2011-11-27 | Конинклейке Филипс Электроникс, Н.В. | Systems and methods of cell measurement, using ultrashort t2*-relaxometry |
US20070282318A1 (en) * | 2006-05-16 | 2007-12-06 | Spooner Gregory J | Subcutaneous thermolipolysis using radiofrequency energy |
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- 2004-04-09 US US10/820,727 patent/US7053612B2/en not_active Expired - Lifetime
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EP0208522B1 (en) * | 1985-07-11 | 1990-02-07 | Kabushiki Kaisha Toshiba | Nuclear magnetic resonance system |
US6453187B1 (en) * | 1998-08-10 | 2002-09-17 | The Johns Hopkins University | Method of employing angle images for measuring object motion in tagged magnetic resonance imaging |
US6445183B1 (en) * | 1998-12-03 | 2002-09-03 | Hitachi Medical Corporation | Magnetic resonance image diagnosing apparatus |
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Also Published As
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CN1805704A (en) | 2006-07-19 |
EG23782A (en) | 2007-08-13 |
JP2006522619A (en) | 2006-10-05 |
CA2521679A1 (en) | 2004-11-18 |
KR20060030849A (en) | 2006-04-11 |
US7053612B2 (en) | 2006-05-30 |
AU2003901659A0 (en) | 2003-05-01 |
EP1610679A1 (en) | 2006-01-04 |
EP1610679A4 (en) | 2009-11-18 |
US20040222792A1 (en) | 2004-11-11 |
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