Method and system for analysis of 3D deformations and regional function of a heart with 3D SinMod
10776998 ยท 2020-09-15
Assignee
Inventors
Cpc classification
G01R33/5608
PHYSICS
G01R33/56
PHYSICS
A61B5/055
HUMAN NECESSITIES
A61B5/02
HUMAN NECESSITIES
G01R33/56333
PHYSICS
G01R33/3607
PHYSICS
International classification
A61B5/055
HUMAN NECESSITIES
G01R33/36
PHYSICS
A61B5/02
HUMAN NECESSITIES
A61B5/11
HUMAN NECESSITIES
Abstract
A system and method for analysis of 3D deformations and regional function of a heart includes: a magnetic resonance imaging (MRI) scanner configured to acquire three tagged volume data series with mutually perpendicular tag lines of a heart; a data storage device in communication with the MRI scanner and configured to store the three tagged volume data series; and an image processing machine in communication with data storage device. The image processing machine is configured to: model an intensity distribution around each voxel of each tagged volume data series as a moving sine wave front with a local frequency and an amplitude; and determine a phase and frequency for each voxel from the local frequency and amplitude and a displacement from a quotient of a phase difference and the local frequency.
Claims
1. A method for analysis of 3D deformations and regional function of a heart comprising: receiving, by an image processing device, three sets of 3D plus time volumetric data with mutually perpendicular tag lines of a volume of a heart; modeling in 3D, by the image processing device, using the three sets of 3D plus time volumetric data, a neighborhood around each voxel in the volume as a moving sine wave front with local frequency and amplitude, separately, in each of x, y, and z directions as:
2. The method of claim 1, wherein each of the three sets of 3D plus time volumetric data is acquired, by a magnetic resonance imaging (MRI) scanner, using a 3D complementary spatial modulation of magnetization (3D CSPAMM) tagging technique.
3. The method of claim 2, wherein the 3D CSPAMM tagging technique includes rotating, by the MRI scanner, a tagging gradient in such a way as to acquire 3D+t data with orthogonal tags.
4. The method of claim 1, wherein determining the phase and frequency for each voxel and the displacement comprises: Fourier transforming, by the image processing device, the 3D volume V.sub.1(x, y, z) and the 3D volume V.sub.2(x, y, z) in a first tagging direction; applying, by the image processing device, identical 3D band-pass filters to the Fourier-transformed volumes to isolate corresponding spectral peaks and produce two complex volumes in the Fourier domain, V.sub.bf1(.sub.x; .sub.y, .sub.z) and V.sub.bf2(.sub.x, .sub.y, .sub.z); applying, by the image processing device, a low frequency band-pass filter and a high frequency band-pass filter to the two complex volumes in the Fourier domain, followed by an inverse Fourier transform to produce four complex volumes, V.sub.bfLf1(x, y, z), V.sub.bfHf1(x, y, z), V.sub.bfLf2(x, y, z), and V.sub.bfHf2(x, y, z); determining, by the image processing device, the power spectra and cross power spectrum given by:
P.sub.Lf(x,y,z)=|V.sub.bfLf1|.sup.2+|V.sub.bfLf2|.sup.2
P.sub.Hf(x,y,z)=|V.sub.bfHf1|.sup.2+|V.sub.bfHf2|.sup.2
P.sub.cc(x,y,z)=V.sub.bfLf1
5. The method of claim 1, wherein the one or more mid-wall contour deformation of the heart at the beginning of systole, the one or more mid-wall contour deformations of the heart at end-systole, or both are compared using a motion field from a 3D SinMod. algorithm with 3D HARP.
6. The method of claim 1, further comprising generating average radial, circumferential, and longitudinal strain curves during systole.
7. The method of claim 6, wherein the average radial, circumferential, and longitudinal strain curves comprise strain curves for one or more regions of the heart selected from the group consisting of mid-ventricular anterior, mid-ventricular antero-septal, mid-ventricular infero-septal, mid-ventricular inferior, mid-ventricular posterior, and mid-ventricular lateral, or any combination thereof.
8. The method of claim 7, wherein the average radial, circumferential, and longitudinal strain curves comprise strain curves for each of the mid-ventricular anterior, mid-ventricular antero-septal, mid-ventricular infero-septal, mid-ventricular inferior, mid-ventricular posterior, and mid-ventricular lateral regions of the heart.
9. A system for analysis of 3D deformations and regional function of a heart comprising: a magnetic resonance imaging (MRI) scanner configured to acquire three sets of 3D plus time volumetric data with mutually perpendicular tag lines of a volume of a heart; a data storage device in communication with the MRI scanner and configured to store the three sets of 3D plus time volumetric data; and an image processing device in communication with data storage device and configured to: model in 3D, using the three sets of 3D plus time volumetric data, a neighborhood around each voxel in the volume as a moving sine wave front with local frequency and amplitude, separately, in each of x, y, and z directions as:
10. The system of claim 9, wherein the MRI scanner acquires each of the three sets of 3D plus time volumetric data using a 3D complementary spatial modulation of magnetization (3D CSPAMM) tagging technique.
11. The system of claim 10, wherein the MRI scanner, performing the 3D CSPAMM tagging technique, rotates a tagging gradient in such a way as to acquire 3D+t data with orthogonal tags.
12. The system of claim 9, wherein the image processing device determines the phase and frequency for each voxel and the displacement by: Fourier transforming the 3D volume V.sub.1(x, y, z) and the 3D volume V.sub.2(x, y, z) in a first tagging direction; applying identical 3D band-pass filters to the Fourier-transformed volumes to isolate corresponding spectral peaks and produce two complex volumes in the Fourier domain, V.sub.bf1(.sub.y, .sub.y, .sub.z) and V.sub.bf2(.sub.x, .sub.y, .sub.z); applying a low frequency band-pass filter and a high frequency band-pass filter to the two complex volumes in the Fourier domain, followed by an inverse Fourier transform to produce four complex volumes, V.sub.bfLf1(x, y, z), V.sub.bfHf1(x, y, z), V.sub.bfLf(x, y, z), and V.sub.bfHf2(x, y, z); determining the power spectra and cross power spectrum given by:
P.sub.Lf(x,y,z)=|V.sub.bfLf1|.sup.2+|V.sub.bfLf2|.sup.2
P.sub.Hf(x,y,z)=|V.sub.bfHf1|.sup.2+|V.sub.bfHf2|.sup.2
P.sub.cc(x,y,z)=V.sub.bfLf1
Description
BRIEF DESCRIPTION OF THE DRAWINGS
(1) The patent or application file contains at least one drawing executed in color. Copies of this patent or patent application publication with color drawing(s) will be provided by the Office upon request and payment of the necessary fee.
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DETAIL DESCRIPTION OF EXEMPLARY EMBODIMENTS
(58) The details of one or more embodiments of the presently-disclosed subject matter are set forth in the attachments to this document. Modifications to embodiments described in these attachments, and other embodiments, will be evident to those of ordinary skill in the art after a study of the information provided in these attachments. The information provided in these attachments, and particularly the specific details of the described exemplary embodiments, is provided primarily for clearness of understanding and no unnecessary limitations are to be understood therefrom. In case of conflict, the specification of this document, including definitions, will control.
(59) While the terms used herein are believed to be well understood by one of ordinary skill in the art, definitions are set forth herein to facilitate explanation of the presently-disclosed subject matter.
(60) Unless defined otherwise, all technical and scientific terms used herein have the same meaning as commonly understood by one of ordinary skill in the art to which the presently-disclosed subject matter belongs. Although any methods, devices, and materials similar or equivalent to those described herein can be used in the practice or testing of the presently-disclosed subject matter, representative methods, devices, and materials are now described.
(61) Following long-standing patent law convention, the terms a, an, and the refer to one or more when used in this application, including the claims.
(62) Unless otherwise indicated, all numbers expressing quantities of ingredients, properties such as reaction conditions, and so forth used in the specification and claims are to be understood as being modified in all instances by the term about. Accordingly, unless indicated to the contrary, the numerical parameters set forth in this specification and claims are approximations that can vary depending upon the desired properties sought to be obtained by the presently-disclosed subject matter.
(63) As used herein, the term about, when referring to a value or to an amount of mass, weight, time, volume, concentration or percentage is meant to encompass variations of in some embodiments 20%, in some embodiments 10%, in some embodiments 5%, in some embodiments 1%, in some embodiments 0.5%, and in some embodiments 0.1% from the specified amount, as such variations are appropriate to perform the disclosed method.
(64) As used herein, ranges can be expressed as from about one particular value, and/or to about another particular value. It is also understood that there are a number of values disclosed herein, and that each value is also herein disclosed as about that particular value in addition to the value itself. For example, if the value 10 is disclosed, then about 10 is also disclosed. It is also understood that each unit between two particular units are also disclosed. For example, if 10 and 15 are disclosed, then 11, 12, 13, and 14 are also disclosed.
(65) The term image processing machine is used herein to describe one or more microprocessors, microcontrollers, central processing units, Digital Signal Processors (DSPs), Field-Programmable Gate Arrays (FPGAs), Application-Specific Integrated Circuits (ASICs), or the like for executing instructions stored on a data storage device.
(66) The term data storage device is understood to mean physical devices (computer readable media) used to store programs (sequences of instructions) or data (e.g. program state information) on a non-transient basis for use in a computer or other digital electronic device, including primary memory used for the information in physical systems which are fast (i.e. RAM), and secondary memory, which are physical devices for program and data storage which are slow to access but offer higher memory capacity. Traditional secondary memory includes tape, magnetic disks and optical discs (CD-ROM and DVD-ROM). The term memory is often (but not always) associated with addressable semiconductor memory, i.e. integrated circuits consisting of silicon-based transistors, used for example as primary memory but also other purposes in computers and other digital electronic devices. Semiconductor memory includes both volatile and non-volatile memory. Examples of non-volatile memory include flash memory (sometimes used as secondary, sometimes primary computer memory) and ROM/PROM/EPROM/EEPROM memory. Examples of volatile memory include dynamic RAM memory, DRAM, and static RAM memory, SRAM.
(67) 1. Cardiac Anatomy
(68) The heart is a muscular cone-shaped organ located in the upper body between the lungs [1]. The essential function of the heart is to pump blood around the body. The heart is divided into separate right and left sections by the interventricular septum, as shown in
(69) Cardiac cycle refers to the events of one complete heartbeat. In normal adults, the length of the cardiac cycle is usually about 0.8 second. The cardiac cycle consists of two phases: systole and diastole. During diastole the ventricles are filled and the atria contract. Then during systole, the ventricles contract while the atria are relaxed and filled. In detail, the pumping action starts with the simultaneous contraction of the two atria. This contraction gives an added push to get the flood into the ventricles during diastole. Shortly after that, the ventricles contract, signifying the beginning of systole. The aortic and pulmonic valves open and blood is ejected from the ventricles, while the mitral and tricuspid valves close to prevent back flow. At the same time, the atria start to fill with blood again. After a while, the ventricles relax, the aortic and pulmonic valves close, the mitral and tricuspid valves open, and the ventricles start to fill with blood again, signifying the end of systole and the beginning of diastole. In a normal ECG waveform over an R-R interval, the P wave indicates the activation of atria, corresponding to their contraction. The QRS complex indicates the activation of the ventricles. Both P and QRS are known as depolarization waves. T wave indicates the ventricular recovery (repolarization wave). Systole covers the period from the onset of QRS complex to the end of T wave. The remaining part of a cardiac cycle is diastole. In cardiac MRI, where imaging typically requires synchronization with the ECG, the pulse sequence is triggered when the amplitude of the R wave reaches its maximum. This can be determined either by threshold detection or peak-slope detection.
(70) Another important concept is the coronary circulation [1], from which the heart receives the energy and nourishment it needs (
(71) 2. Stress and Strain
(72) The primary function of the heart is fundamentally mechanical [2]. The basic measurements of myocardial mechanics are the three-dimensional stresses and strains, which depend on position and orientation in the myocardium and vary in time throughout the cardiac cycle. The terms strain and stress are often used together in cardiology. But they are different physical quantities with distinct units. Stress is defined as force per unit area, so it has the same unit F/m.sup.2 as pressure. In cardiology, stress is interaction forces acting across surfaces between adjacent regions of muscle, while strain represents the change of shape at any point in the wall between the original reference state and the subsequent deformed state, which is dimensionless [2].
(73) The matrix components of the stress and strain tensors depend on the selected frame of reference. It is conventional to choose the orthogonal system, such as the local circumferential, longitudinal, and radial axes, as shown in
(74) Ventricular wall stress and strain are inhomogeneous. Their components can change significantly from place to place in the myocardium. This heterogeneity makes understanding ventricular mechanics a significant challenge, but also gives tagged MRI an opportunity to stand out from other techniques in measuring strains. Development of tagged MRI was a major milestone in the field of cardiac mechanics. The tagged MRI technique will be discussed in detail later.
(75) Regional myocardial stress and strain have direct or indirect relationship with cardiac diseases. At present, regional strain distribution measurement is much more practical than the stress measurement. For measuring systolic function, end-diastole is a conventional unstrained reference state. An illustration of the relationship between the initial (initial, reference, and undeformed configurations are interchangeable throughout this section) and deformed configuration is shown in
u(t)=x(t)X(1)
One measurement of the deformation in the reference configuration is the length change of a segment dX at point X:
dx=(X+dX)(X)[(X)].Math.dX=F.Math.dX(2)
where is gradient operator and F is the deformation gradient at X. According to chain rule, the relationship between dx in deformed configuration and dX in reference configuration is:
(76)
The mapping in the above equation is called deformation gradient tensor (DGT) F.sub.ij.
(77)
The matrix form of deformation gradient tensor is:
(78)
From Equation (1), we have:
x.sub.i=X.sub.i+u.sub.i(6)
Taking the derivative of the above equation with respect to X.sub.1, X.sub.2, and X.sub.3 and writing in matrix form in terms of the displacement field u, F becomes
(79)
To find a measure of the change in length of dX, let us define strain:
(80)
Lagrangian strain tensor (also called Green's strain tensor) E is often used to characterize the infinitesimal deformation at a point.
(81)
The normal strain in the direction of the unit vector m can be calculated from the Lagrangian strain tensor through the quadratic form
n.sup.TEn(10)
where n may point to any direction on the unit sphere. Due to the geometry of the ventricle, the normal strains are usually calculated in radial, circumferential, and longitudinal directions (See
(82) Since F is nonsingular, the inverse map, F.sup.1, exists and allows for the Eulerian description of strain which is given by
(83)
where G is often called the Eulerian strain tensor which is defined as follows:
(84)
(85) Regional myocardial strains have direct or indirect relationship with cardiac diseases. Most of the motion tracking and analysis methods aim to extract strains in the heart, for the reason that strain encapsulates the basic mechanical function of the myocardium and has clinical potential. This invention is concerned with novel MR imaging techniques and image postprocessing methods to analyze left ventricular deformations.
(86) 3. Basic Principles of MRI
(87) The magnetic resonance phenomenon can be described by both microscopic and macroscopic perspectives. The microscopic perspective explains the fundamental behavior of the net magnetization of spinning protons within a strong magnetic field when external energy is added by a short-duration radio frequency (RF) pulse. Once the fundamentals are understood, the formation of MR signals is more easily described by a macroscopic perspective, where the effect of the RF pulse is to move spins from a lower energy state to a higher energy state. In a vector model, this corresponds to transverse magnetization, which normally is zero, having a non-zero value. A detectable MR signal is only possible from components of the transverse magnetization. By applying current through RF coils surrounding the sample, the spin system can be deliberately excited using RF pulses so that the stimulated system will in turn induce RF signals as output. When the RF pulse is turned off, spins relax back to an equilibrium state. The time constant for decay of transverse magnetization is called T.sub.2 relaxation. Longitudinal relaxation, also called T.sub.1 relaxation, governs the process of return of spins from high energy state to the low energy state. In order to detect the emitted signal, an RF coil is placed close to the object. Farady's Law states that when the magnetic flux enclosed by a loop of wire changes with time, current is produced in the loop, thus inducing a voltage. In fact, this is precisely why the net magnetization needs to be tipped into transverse plane. The free induction decay (FID) signal however is from the entire sample. The MR signal needs to be distinguished in local groups of voxels in order to make an image.
(88) In 1973, Lauterbur [3] proposed the use of magnetic field gradients for spatial localization of MR signals which laid the foundation for magnetic resonance imaging. When the gradient fields are turned on, precessional frequencies of the spins become linearly dependent on their spatial locations. The frequency and the phase of the precessing magnetization are measured by an RF receiver coil. The basic approach to MRI performs slice selection, phase encoding, and frequency encoding multiple times to make an image.
(89) 4. MR Tagging Techniques for Imaging Cardiac Function
(90) MRI has revolutionized medicine due to its broad ability to image many organ systems. However, in the case of the heart, development of MRI has been hampered because of heart's inherent motion. Myocardial tagging is a technique that is useful in assessing ventricular function.
(91) The fundamental challenges to cardiac MRI are movement of the heart throughout the cardiac cycle and movement of the lungs during the respiratory cycle, both requiring mitigation to avoid motion artifacts. Respiratory motion can be alleviated with breath holding during imaging. The subject is typically asked to hold his/her breath for 10-15 seconds which is typically sufficient to collect a cine at one slice location. It should be noted that in sick patients and/or those unable to hold their breath, navigator-gated acquisition is an alternative. Cardiac gating/triggering provides methods to synchronize data collection with the cardiac rhythm. It is used to minimize the motion artifacts arising from cardiac motion and from flowing blood or cerebrospinal fluid (CSF). The goal is to acquire an entire set of k-space data at approximately the same slice location for the cardiac cycle.
(92) A variety of approaches to gated/triggered data acquisition can be adopted including: electrocardiography (ECG), Vectorcardiogram (VCG), and peripheral gating. However, the methods more widely used to synchronize with cardiac motion essentially rely on the ECG and VCG, since the signal from peripheral devices which provide blood oxygen situation levels are delayed relative to the electrical activity of the heart. There are two types of triggering: prospective triggering and retrospective triggering. Prospective triggering uses the R-wave to determine the starting point of the acquisition. Slices are acquired at the same time after each new R-wave in successive R-R intervals. Artifacts are reduced by keeping slice excitation consistent in relation to the R-peak. In prospective triggering, only one part of the cardiac cycle is imaged. To account for heart rate variability, retrospective triggering, a continuous acquisition method, can be adopted. With retrospective triggering, k-space data are continuously acquired through-out time and retrospectively binned relative to the R-wave. The advantage of retrospective triggering is that it permits imaging the entire cardiac cycle, whereas in prospective gating, there is dead time at the end of the diastole.
(93) The process of MR tagging uses a special pulse sequence to spatially modulate the longitudinal magnetization in the imaging volume, prior to image acquisition using conventional imaging, as shown in
(94) Spatial Modulation of Magnetization (SPAMM) [4] is the most commonly used technique to produce sinusoidal tag patterns. Optimal tagging and acquisition of MR images for cardiac motion analysis was investigated by Nguyen et al. [5]. Pai and Axel [6] gave a thorough review of tagged cardiac MR imaging methods, including advances in pulse sequence development, image acquisition, high temporal and spatial resolution imaging, high field strength imaging, and 3D whole heart tagging. A review paper covering clinical applications of myocardial tagging is [7].
(95) A one-dimensional 1-1 SPAMM sequence is shown in
(96) Complementary SPAMM (CSPAMM) was introduced by Fischer et al. to improve tagging contrast in later phases of the cardiac cycle [9]. Two SPAMM images which are out of phase by 180 are acquired and subtracted. CSPAMM has the advantage of longer net tag persistence while suppressing untagged blood. In CSPAMM, the longitudinal magnetization M is decomposed into two terms: one for tagging information Q.sub.T and the other for the relaxation part Q.sub.R.
(97)
(98) At time t.sub.0 immediately after the SPAMM tagging sequence, the modulated longitudinal magnetization is:
M.sub.z(t.sub.0)=M.sub.ssTAG(x,y)(13)
where M.sub.ss is the steady state magnetization before tagging and TAG(x, y) represents a spatially varying sinusoidal function introduced by tagging sequence. At time t.sub.1>t.sub.0, longitudinal magnetization becomes
(99)
where M.sub.0 is the equilibrium magnetization, and T.sub.1 is the longitudinal relaxation time. At time t.sub.k,
(100)
Therefore, the two components of the longitudinal magnetization just before the k.sub.th RF pulse are:
(101)
where Q.sub.Tk is the tagging component, while Q.sub.Rk is the relaxed term. After the k.sub.th RF imaging pulse of flip angle .sub.k, the longitudinal magnetization is rotated to the transverse plane which contributes to the k.sub.th image.
I.sub.k=M.sub.z(t.sub.k)sin .sub.ke.sup.TE/T*.sup.
(102)
(103) 5. Local Sine Wave Modeling as a Cardiac Deformation Analysis Technique from Tagged MRI Data
(104) In recent times, MRI tagging has seen increased applications and is becoming the gold standard for quantifying regional cardiac function. Local parameters such as twist, strain, and strain rate can be derived from tagged MRI data.
(105) Local sine wave modeling (SinMod) is a frequency-based method to analyze the heart displacement and deformation from tagged MRI sequences using phase information [10]. SinMod detects both local spatial phase shift and local spatial frequency from band-pass filtered images. The speed of SinMod method is as fast as Harmonic Phase Analysis (HARP), another frequency-based method, but SinMod method has advantages in accuracy, noise reduction, and lack of artifacts [10]. In SinMod, the intensity distribution around each pixel (p, q) is modeled as a cosine wave front.
(106)
where .sub.p and are the spatial frequency and phase of the wave, respectively. A.sub.1 and A.sub.2 are wave magnitudes for the first image I.sub.1 and the second image i.sub.2, while N.sub.1 and n.sub.2 are additive noise. u is the displacement between these two images at position (p, q) along the p direction.
(107)
P.sub.Lf(p,q)=|I.sub.bfLf1|.sup.2+|I.sub.bfLf2|.sup.2
P.sub.Hf(p,q)=|I.sub.bfHf1|.sup.2+|I.sub.bfHf2|.sup.2
P.sub.cc(p,q)=I.sub.bfLf1.sub.bfLf2+I.sub.bfHf1.sub.bfHf2(20)
where is the complex conjugation of I.
(108) The local frequency .sub.p and local displacement u can then be estimated from:
(109)
where .sub.c is the band-pass center-frequency.
(110) 6. Analysis of 3D CSPAMM Tagged MRI Data with 3D SinMod
(111) Most of the current motion analysis techniques are applicable to 2D+t tagged MR image sequences. 2D motion analysis has its inherent disadvantages, since it can only capture in-plane expansions, contractions, and rotations of the myocardium. However, the heart deforms in 3D+t with complex twisting motion combined with longitudinal shortening and wall thickening. A 3D sine wave modeling (3D SinMod) method is described below which accurately recovers true 3D cardiac deformations from 3D CSPAMM MRI. An accelerated 3D complementary spatial modulation of magnetization (3D CSPAMM) tagging technique was used to acquire 3D MR data set for the whole-heart in 7 subjects [11]. The entire framework, from data acquisition to data analysis is in the 3D domain, which overcomes the through-plane motion of the LV myocardium.
(112) The data were acquired using the 3D CSPAMM tagging sequence [11] described above. In three breath-holds each with 18 heartbeats, the acquisition was applied three times (once for each breath-hold) where in each case, the tagging gradient was rotated in such a way to acquire 3D+t data with orthogonal tags. Note that in each acquisition, two 3D SPAMM tagging volumes are acquired and subtracted from each other, which gives CSPAMM data. Typical imaging parameters were: FOV=108108108 mm.sup.3, matrix size=28 (Frequency Encoding)14 (Phase Encoding)16 (16 in slice select direction, but only 14 out of 16 were used in reconstruction). In the spatial domain, the image matrix size was 112112, slice thickness=8 mm, and tag spacing was 7 mm. Each data set consisted of 20-24 frames per cardiac cycle.
(113)
(114)
(115)
(116) As with 2D SinMod [10] that was described above, the neighborhood around each voxel in the 3D tagged volume is modeled as a moving sine wave front with local frequency and amplitude.
(117)
where .sub.x and are the spatial frequency and phase of the wave, respectively. A.sub.1 and A.sub.2 are wave magnitudes for a 3D volume V.sub.1 and a short time later, a 3D volume V.sub.2, while n.sub.1 and n.sub.2 are additive noise. u is the displacement between these two volumes at position (x, y, z) along the x direction. The displacements v and w in the y and z directions have expressions similar to Equation (22). The principle behind 3D SinMod tracking is that both phase and frequency of the moving wave front for each voxel can be determined directly from the frequency analysis and the 3D displacement can be calculated from the quotient of phase difference and local frequency.
(118)
P.sub.Lf(x,y,z)=|V.sub.bfLf1|.sup.2+|V.sub.bfLf2|.sup.2
P.sub.Hf(x,y,z)=|V.sub.bfHf1|.sup.2+|V.sub.bfHf2|.sup.2
P.sub.cc(x,y,z)=V.sub.bfLf1
where
(119) The local frequency x and local displacement u can then be estimated from:
(120)
where .sub.c is the band-pass center-frequency.
(121) This map is then up-sampled to the initial size of the volume. Repeating the same steps for the two LA directions recovers the full 3D displacements.
(122) To isolate the spectral peaks, a Butterworth filter was applied in k-space. As shown in Equation (25), the Butterworth filter is a discrete approximation to the Gaussian. In the exemplary embodiment, a 5.sup.th order Butterworth band-pass filter was used with the cutoff frequency being half of the center frequency.
(123)
where .sub.c is the off-center frequency for tagged images, .sub.cutoff is the cutoff frequency, and n is the order for Butterworth filter (in the example, n=5).
(124)
(125) 7. Computational Time
(126) In an exemplary embodiment, software code for performing the steps of the methods described above may be programmed in a high-level technical computing language such as MATLAB, by The MathWorks, Inc., of Nantic, Mass., on a personal computer (e.g., with a microprocessor such as an Core i5 2.6 GHz CPU by Intel Corporation, of Santa Clara, Calif., with 4 GB main memory, running an operating system such as a 64-bit Windows 7 operating system, by Microsoft Corporation, of Redmond, Wash.). Using such an exemplary system, the overall processing time for 3D SinMod processing is about 5-7 minutes for one 3D+t data set. The average CPU time for calculating the 3D motion fields between a pair of 3D volumes for each of the data sets was 17.37 seconds. Table 1 shows the average computational time for on 7 in-vivo data sets as well as the average time for calculating 3D displacements between a pair of 3D volumes. After zero-fill, each data set consisted of 20-24 volumetric frames each with 112112 voxels. It would be possible to further reduce the computational time by using a faster computer/workstation with implementation in C++.
(127) TABLE-US-00001 TABLE 1 Data Set Average Time (sec/min) to Average Number process all 4-D data Time/phase (sec) 1 358.16/5.97 17.91 2 345.71/5.76 17.29 3 414.24/6.90 17.26 4 409.96/6.83 17.82 5 355.71/5.93 16.94 6 368.27/6.14 17.54 7 353.82/5.90 16.85
(128) 8. Validations
(129) a. Simulation
(130) In order to assess the accuracy of the tracking results, the inventors simulated 3D+t CSPAMM data with the same number of slices and spatial resolution as that of the real data. Three image sequences each containing 2 volumetric frames but with different displacement fields were generated.
(131)
(132)
(133) The 3D SinMod method was applied to the artificially deformed data sets, permitting comparison between the algorithm estimated deformations in the presence of additional Gaussian noise and the known true deformations. Tracking error was calculated for every material point within the 3D volume and then averaged. The performance of the proposed 3D SinMod method, reported here as the average error in pixels, is shown in Table 2, below.
(134) TABLE-US-00002 TABLE 2 Translation Translation Y X, Y, Z Contraction Expansion AveError 0.0043 0.0329 0.0067 0.0079
(135) b. Comparison to 3D HARP
(136) Seven real 3D+t CSPAMM data sets of healthy human subjects were used to validate the 3D SinMod method. For each data set, there were about 203 image volumes, with 14 slices in each volume. Therefore, in total, there were about 20314=840 images in each subject data set.
(137) For each image volume at reference state, ten mid-wall contours, constructed from multiple landmark points with about 5 separation were defined on different short-axis slices. The reference state was chosen to be the last cardiac phase which had good myocardial-blood pool contrast permitting good contour definition. The 3D SinMod method was applied to every consecutive pair of cardiac phases and the displacement fields were reconstructed. In order to validate the results, the mid-wall contours at the reference state were deformed to the following phases according to the motion fields obtained from 3D SinMod and results were compared with the deformed contours obtained from 3D HARP [11].
(138)
(139) TABLE-US-00003 TABLE 3 data 1 data 2 data 3 data 4 data 5 data 6 data 7 slice 2 0.90 1.16 0.86 0.86 0.70 0.74 0.82 slice 3 0.79 1.36 0.68 0.99 0.59 0.87 0.81 slice 4 0.72 1.05 0.74 0.84 0.49 0.86 0.96 slice 5 0.73 0.88 0.75 0.95 0.54 0.83 0.95 slice 6 0.72 0.92 0.67 0.78 0.67 0.87 1.05 slice 7 0.80 1.00 0.68 0.82 0.84 0.95 1.03 slice 8 0.96 0.94 0.93 0.90 1.12 0.94 1.01 slice 9 1.28 0.97 1.24 1.22 1.36 0.94 1.37 slice 10 1.40 1.16 1.60 1.36 1.64 1.07 1.98
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(141) c. Comparison of Warped with Manually Delineated Tag Lines
(142) All tag lines on 11 slices (from apex to base) and over 11 systolic phases in the same seven 3D CSPAMM tagged data sets were manually delineated. Subsequently, the manually delineated tag lines from each time were warped to time t+1 and the location of the warped tag lines were compared to location of manually delineated tag lines and an average error for all slices at each phase was computed.
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(144) 9. Results
(145) a. Visualization of Motion Fields
(146) Left ventricular endocardial and epicardial contours were traced manually at all phases for all 3D data sets. The calculated 3D motion fields at apex, apical, mid-cavity, and basal slices are shown in
(147) The projected 2D end-systolic motion fields on selected slices for each data set are shown in
(148) b. Circumferential Shortening
(149) Circumferential shortening is the relative change in length of a mid-wall contour with respect to the reference length at end-diastole.
(150)
(151) where L.sub.cur is the mid-wall contour length at the current frame, and L.sub.ref is the mid-wall contour length at the reference frame.
(152) Table 4 shows the average circumferential shortening error between the results from 3D SinMod and 3D HARP for slices 2 to 10 over all cardiac phases. The error is in percentage.
(153) TABLE-US-00004 TABLE 4 data 1 data 2 data 3 data 4 data 5 data 6 data 7 slice 2 2.12 3.36 1.55 1.09 0.93 0.91 0.94 slice 3 1.43 2.84 0.90 1.53 0.71 0.69 0.81 slice 4 1.90 1.71 0.74 0.79 0.45 0.71 0.80 slice 5 0.51 0.93 0.77 0.41 0.47 0.80 0.82 slice 6 0.31 0.87 0.50 0.35 0.42 0.90 0.54 slice 7 0.24 0.88 0.38 0.51 0.52 0.97 0.49 slice 8 0.95 1.00 0.94 0.40 0.59 0.81 0.74 slice 9 0.76 0.85 1.02 0.85 0.97 0.66 0.85 slice 10 0.67 1.00 1.94 1.57 1.95 0.70 1.27
(154) c. Strains
(155) In order to analyze regional strain patterns in the myocardium, the LV and RV are typically divided into segments and each of the directional strains (e.g., radial, circumferential, and/or longitudinal) is averaged over the segment. In 3D, the 16 segment and 17 segment models as recommended by the American Society of Echocardiography should be used [12]. In the 16 segment model, the LV is divided into 6 basal, 6 mid-ventricular, and 4 apical regions. In the 17 segment model, the apex comprises the 17th segment [13, 14, 15, 16, 17, 18, 19]. In 3D, the RV can be divided into 3 layers in the long-axis direction and each layer is further divided into 3 segments [14, 20]. However other finer or sparser partitions have also been utilized. For 2D analysis, typically, mid-ventricular strains for 4-8 regions are reported [21, 22, 23, 24].
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(157) The average circumferential and longitudinal strain curves for different segments over systole averaged for all 7 data sets are shown in
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(161) 10. Conclusions
(162) Magnetic resonance imaging (MRI) is a highly advanced and sophisticated imaging modality for cardiac motion tracking and analysis, capable of providing 3D analysis of global and regional cardiac function with great accuracy and reproducibility. The anatomy and structure of the heart, fundamentals of continuum mechanics relevant to analysis of ventricular deformations, the basics of MRI, and MRI techniques for imaging cardiac function were discussed. A review of MR tagging techniques for imaging cardiac function was given. A novel 3D sine wave modeling (3D SinMod) approach to automatic analysis of 3D+t cardiac deformations from 3D CSPAMM acquisitions was proposed. The strength of this combined imaging/image analysis approach is the speed of acquisition (3 breath holds) for 3D+t acquisition of CSPAMM tagged data in 3 orthogonal orientations and 5-7 minutes for estimation of displacement and regional strains.
(163) The novel 3D sine wave modeling (3D SinMod) method provides automatic analysis of 3D cardiac deformations [26]. An accelerated 3D complementary spatial modulation of magnetization (CSPAMM) tagging technique [11] was used to modulate the magnetization of the myocardial tissue and to acquire 3D MR data sets of the whole-heart including three orthogonal tags within three breath-holds. With the application of CSPAMM, the effect of tag fading encountered in SPAMM tagging due to T.sub.1 relaxation is mitigated and tag deformations can be visualized for the entire cardiac cycle, including diastolic phases. In 3D SinMod, the intensity distribution around each pixel is modeled as a cosine wave front. The principle behind 3D SinMod tracking is that both phase and frequency for each voxel are determined directly from the frequency analysis and the displacement is calculated from the quotient of phase difference and local frequency. The deformation fields clearly demonstrate longitudinal shortening during systole. The contraction of the LV base towards the apex as well as the torsional motion between basal and apical slices is clearly observable from the displacements. The advantages of the method are as follows. 1. The entire framework, from data acquisition to data analysis is in the 3D domain, which permits quantification of both the in-plane and through-plane motion components. 2. The method does not require acquisitions in different cardiac views (SA and LA) and makes the image acquisition planning easier for technologists in hospital. 3. The method is automatic and fast. It requires no user-interaction and the computational time for a full 3D data with 20-24 cardiac phases is about 5-7 minutes. The average CPU time for calculating 3D motion fields between a pair of 3D volumes for each of the data sets was 17.37 seconds.
(164) It will be understood that various details of the presently disclosed subject matter can be changed without departing from the scope of the subject matter disclosed herein. Furthermore, the foregoing description is for the purpose of illustration only, and not for the purpose of limitation.
(165) Throughout this document, various references are cited. All such references are incorporated herein by reference, including the references set forth in the following list:
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