The present invention is directed to methods and instrumentation for imaging of linear and nonlinear propagation and scattering parameters of an object using transmission of dual frequency pulse complexes composed of a high frequency (HF) and low frequency (LF) pulse. Imaging with acoustic pressure waves is shown as an example, but the methods are also useful for imaging with shear elastic waves and coherent electromagnetic waves. Applications of the invention are for example, but not limited to, medical imaging and therapy, non-destructive testing, industrial and biological inspections, geological applications, SONAR and RADAR applications.
Transmission of dual frequency pulse complexes composed of a high frequency (HF) and low frequency (LF) pulse for imaging of nonlinear propagation and scattering parameters of an object is described in US patents 1-4 (U.S. Pat. Nos. 7,641,613; 8,038,616; 8,550,998; 9,291,493). The methods also provide suppression of multiple scattering noise (reverberation noise) and improved imaging of linear and nonlinear scatterers. Imaging with coherent acoustic pressure waves is shown as an example, but it is clear that the methods are also useful for imaging with all types of coherent wave imaging, such as shear elastic waves and electromagnetic waves.
The cited methods require estimation of one or both of a nonlinear propagation delay (NPD) and a nonlinear propagation pulse form distortion (PFD) which both are challenging tasks. The present invention describes new methods and instrumentation for improved estimation of both the NPD and the PFD, and provides scatter images with reduced multiple scattering noise and images of nonlinear scatterers. Combined with measurements with zero LF pulse, the invention also provides estimates of linear propagation and scattering parameters, that combined with the estimates of nonlinear parameters is used to obtain a thermo-elastic description of the object.
This summary gives a brief overview of components of the invention and does not present any limitations as to the extent of the invention, where the invention is solely defined by the claims appended hereto.
The current invention provides methods and instrumentation for estimation and imaging of linear and nonlinear propagation and scattering parameters in a material object where the material parameters for wave propagation and scattering have a nonlinear dependence on the wave field amplitude. The methods have general application for both acoustic and shear elastic waves such as found in SONAR, seismography, medical ultrasound imaging, and ultrasound nondestructive testing, and also coherent electromagnetic waves such as found in RADAR and laser imaging. In the description below one uses acoustic waves as an example, but it is clear to anyone skilled in the art how to apply the methods to elastic shear waves and coherent electromagnetic waves.
In its broadest form the methods comprises transmitting at least two pulse complexes composed of a co-propagating high frequency (HF) and a low frequency (LF) pulse along at least one LF and HF transmit beam axis, where said HF pulse propagates close to the crest or trough of the LF pulse along at least one HF transmit beam, and where one of the amplitude and polarity of the LF pulse varies between at least two transmitted pulse complexes, where the amplitude of the LF pulse can be zero for a pulse complex and the amplitude of at least one LF pulse of said at least two transmitted pulse complexes is non-zero.
The LF pulse produces a manipulation of the propagation velocity of the co-propagating HF pulse. At the first scattering, the amplitude of the LF pulse drops so much that one can neglect the LF manipulation of the propagation velocity for the scattered signal. The LF pulse polarity and/or amplitude hence produces a modification of the HF pulse delay from transmission to reception that we call the nonlinear propagation delay (NPD) that i) accumulates with the propagation distance to the first scatterer, and ii) is proportional to the LF pulse amplitude, and iii) changes polarity with the LF pulse amplitude. Variations of the LF pulse along the HF pulse produces a pulse form distortion (PFD) that also i) accumulates with the propagation distance to the first scatterer, and ii) is proportional to the LF pulse amplitude, and iii) changes polarity with the LF pulse amplitude.
Multiple scattered HF pulses, that arrive to the receiver at the same time as 1st order scattered HF pulses, appear in the received signal as multiple scattered noise (MSN) that often reduces ultrasound image quality, and provide challenges for clutter suppression with Doppler measurements. The drop in the amplitude of the HF pulse for each scattering implies in practice that higher than 3rd order scattered HF pulses give negligible noise. Because the drop of the LF pulse at the first scattering, the co-propagating LF pulse produces a NPD and a PFD of the MSN given by those of the HF pulse at the 1st scattering, and are hence different from the NPD and a PFD of the 1st order scattered signal arriving at the same time at the HF receiver transducer.
High quality estimation of the NPD opens for suppression of multiple scattering noise and imaging of nonlinear scattering, as shown in U.S. Pat. Nos. 7,641,613; 8,038,616; 8,550,998; 9,291,493. In US Parent patent application Ser. No. 16/258,251 it is also shown that good estimates of the NPD opens for quantitative estimation of the nonlinear bulk elasticity of tissues.
For back scatter imaging, it is described in U.S. Pat. No. 9,291,493 how the MSN can be separated into two classes, Class I and Class II, with opposite paths of the scattering: The 1st scatterer of Class I is the last scatterer of Class II, and the 1st scatterer of Class II is the last scatterer of Class I. The NPD and PFD of the Class I and Class II MSN pulses are therefore different, and also different from the NPD and a PFD of the 1st order scattered signal arriving at the same time. For backscatter imaging, the signal received at a given arrival time is therefore generally composed of three components: i) a 1st order scattered signal, and ii) a Class I MSN component, and iii) a Class II MSN component, where all three components have different NPDs and PFDs. This makes estimation of the NPD and PFD from backscattered signals difficult in many practical situations.
According to the invention, and also as described in U.S. Parent patent application Ser. No. 16/258,251, it is shown that using HF receive beams that crosses the HF transmit beam gives receive signals with low MSN that produces an advantage for estimation of the NPD. The NPD at the HF cross-beam observation cell can for example be obtained by transmitting two pulse complexes along the same LF and HF beams and with opposite polarities of the LF pulse. Comparing the difference in arrival time of the HF signal from the two pulse complexes and the same HF cross-beam observation cell, for example through correlation, gives the NPD, as described in more detail below.
The HF cross-beam receive signals are processed to estimate one or both of i) a nonlinear propagation delay (NPD), and ii) a nonlinear pulse form distortion (PFD) of the transmitted HF pulse for said cross-beam observation cell, where one or both of said NPD and PFD are used in the further processing to estimate one or more of i) a local nonlinear propagation parameter, and ii) a local quantitative nonlinear propagation parameter βp, and iii) a local value of the linear pulse propagation velocity c0, and iv) a linearly scattered HF signal, and v) a nonlinearly scattered HF signal, and vi) local changes in tissue structure during therapy, and vii) local changes in tissue temperature during HIFU therapy. The spatial variations of the estimated linear propagation velocity is used for corrections of wave-front aberrations to improve focal resolution of transmit and receive beams used for the images.
In general said at least one HF receive cross-beam is focused on the HF transmit beam axis forming a cross-beam observation cell as the cross-over region of the HF transmit and HF receive cross-beams.
A local nonlinear propagation parameter can be estimated through receiving scattered signals from the HF transmitted pulse for at least two HF receive cross-beams with close distance along the HF transmit beam, and estimating a nonlinear propagation delay (NPD) of the transmitted HF pulse at the at least two cross-beam observation cells determined by the cross-over between the HF transmit beam and each of the said at least two HF receive cross-beams. Said estimated NPDs from neighboring cross-beam observation cells along a HF transmit beam are combined to form estimates of the local nonlinear propagation parameter. Scaling said estimated local nonlinear propagation parameter by an estimate of the LF pulse pressure at the location of the HF pulse gives a quantitative estimate of the nonlinear propagation parameter βp. The estimated βp gives rise to an estimate of the local linear propagation velocity c0, a change in tissue structure during therapy, and a change in the local tissue temperature during HIFU therapy. Both a local nonlinearly and a linearly scattered signal may be obtained through correcting said at least two HF receive signals with one or both of i) the NPD, and ii) the PFD to produce two corrected signals, and combining said at least two corrected signals.
The invention further devices to also use a HF back-scatter receive beam with the same beam axis as the HF transmit beam to record HF back-scatter receive signals. The NPD and the PFDs are determined by the LF and HF transmit beams and the LF pulse polarity and the amplitude, according to Eqs.(12,13). As we are using the same LF and HF transmit beams as for the cross-beam receive signals, we get the same NPD and PFD for the back-scatter as for the cross beam receive signals. The estimated PFD and/or the NPD are processed to estimate delay and speckle/pulse form corrections of the HF back-scatter receive signals for suppression of multiple scattering noise, for example as described in U.S. Pat. Nos. 7,641,613, 8,038,616, 8,550,998, 9,291,493. For each HF back-scatter receive beams the at least two HF back-scatter signals from at least two transmitted pulse complexes with different LF pulses are corrected with the estimated delay and speckle/pulse form corrections to produce at least two corrected HF back-scatter signals that are combined to provide HF noise-suppressed back-scatter signals with suppression of multiple scattering noise, for example as described in U.S. Pat. Nos. 8,038,616, 8,550,998, 9,291,493.
2D and 3D images of the estimated parameters and signals may be obtained by scanning the transmit beam and matched HF cross-beam and HF back-scatter beams across a 2D or a 3D region of the object, and recording HF back-scatter and/or cross-beam receive signals and back-scattered signals with further processing according to the invention to produce local estimates of propagation and scattering parameters.
The size of the cross-beam observation cell may with 2D or 3D scanning be synthetically reduced through spatial filtering of the HF cross-beam receive signals from several neighboring cross-beam observation cells. In this process one can use the estimated linear propagation velocity to correct for wave front aberrations in the spatial filtering.
The invention further devices to use HF back-scatter receive beams that are equal to the HF transmit beams, and for multiple depths carry through lateral filtering of one of i) the HF back-scatter receive signals, and ii) the HF noise-suppressed back-scatter signals, to produce HF signals from combined HF transmit and receive beams that are synthetically focused for said multiple depths, for example as described in U.S. Pat. No. 9,291,493. In this process one can use the estimated linear propagation velocity to correct for wave front aberrations in the spatial filtering.
The invention also describes instruments for carrying through the practical measurements and processing according to the invention, in particular to obtain local estimates of the PFD and/or the NPD, and one or more of the parameters: i) a local nonlinear propagation parameter, and ii) a local quantitative nonlinear propagation parameter βp, and iii) a local value of the linear pulse propagation velocity c0, and iv) a linearly scattered HF signal with suppression of multiple scattering noise, and v) a nonlinearly scattered HF signal, and vi) local changes in tissue structure during therapy, and vii) local changes in tissue temperature during therapy.
With one version of the instrument, HF back-scatter and/or cross beam receive signals are generated in dedicated beam forming HW according to known methods, and digital HF receive signals are transferred to the processing structure for storage and further processing in a general SW programmable processor structure of different, known types.
In another version of the instrument the individual receiver element signals are digitized and transferred to a general SW programmable processor structure where the receive beam forming and further processing is SW programmed.
The instrument comprises a display system for display of estimated parameters and images according to known technology, and user input to the instrument according to known methods. The transmit and receive of HF and LF pulses are obtained with known transducer arrays, for example as described in U.S. Pat. Nos. 7,727,156 and 8,182,428.
Other objects and features of the present invention will become apparent from the following detailed description considered in conjunction with the accompanying drawings. It is to be understood, however, that the drawings are designed solely for purposes of illustration and not as a definition of the limits of the invention, for which reference should be made to the appended claims. It should be further understood that the drawings are not necessarily drawn to scale and that, unless otherwise indicated, they are merely intended to conceptually illustrate the structures and procedures described herein.
5.1 Theory of Nonlinear Propagation and Scattering
A. Wave Equation for 2nd Order Nonlinear Bulk Elasticity
For acoustic waves in fluids and solids, nonlinear bulk elasticity is commonly defined through a Taylor series expansion of the acoustic pressure to the 2nd order in relation to the mass density as
p(r,t) is the instantaneous, local acoustic pressure as a function of space vector, r, and time t, ρ(r,t)=ρ0(r,t)+ρ1(r,t) is the instantaneous mass density with ρ0 as the equilibrium density for p=0, κ(r) is the isentropic compressibility, and B is a nonlinearity parameter. We use the Lagrange spatial description where the co-ordinate vector r refers to the location of the material point in the unstrained material (equilibrium), and ψ(r,t) describes the instantaneous, local displacement of a material point from its unstrained position r, produced by the particle vibrations in the wave.
The term A·(ρ1/ρ0) describes linear bulk elasticity, and hence does the last term (B/2A)(ρ1/ρ0) in the parenthesis represent deviation from linear elasticity. The parameter B/2A is therefore commonly used to describe the magnitude of nonlinear bulk elasticity.
The continuity equation in Lagrange coordinates takes the form
To the 2nd order in ∇ψ we then get isentropic state equation as
Eqs.(1, 3) describes isentropic compression, where there is no transformation of elastic energy to heat, i.e. no absorption of acoustic energy in the wave propagation. Linear absorption can be introduced by adding a temporal convolution term hab⊗∇ψ, where hab (r,t) is a convolution kernel that represents absorption of wave energy to heat due to deviation from fully isentropic compression.
For the analysis of wave propagation and scattering it is convenient to invert Eq.(3) to the 2nd order in p and add the absorption term that gives a material equation for bulk elasticity to the 2nd order in p
where the absorption term is small and we include only 1st order in p. Attenuation of a propagating wave is given by both the extinction coefficient of the incident wave, which is the sum of absorption to heat given by hab, and scattering of the wave.
The 2nd order approximation of Eqs.(1, 3, 4) holds for soft tissues in medical imaging, fluids and polymers in non-destructive testing, and also rocks in seismography that show special high nonlinear bulk elasticity due to their granular micro-structure. Gases generally show stronger nonlinear elasticity, where higher order terms in the pressure often might be included. Micro gas-bubbles with diameter much lower than the acoustic wavelength in fluids, show in addition a resonant compression response to an oscillating pressure which gives a differential equation (frequency dependent) form of the nonlinear elasticity, as described by the Rayleigh-Plesset equation [18].
To develop a full wave equation, we must include Newtons law of acceleration, that for waves with limited curvature of the wave-fronts can be described in the Lagrange description as
Both the mass density, the compressibility, and the absorption have spatial variation in many practical materials, like soft tissue and geologic materials. We separate the spatial variation into a slow variation that mainly influences the forward propagation of the wave (subscript a), and a rapid variation that produces scattering of the wave (subscript f), as
ρ0(r)=ρa(r)+ρf(r)κ(r)=κa(r)+κf(r)βp(r)=βpa(r)+βpf(r) (6)
Combining Eqs.(4-6)), using 1/ρ0=ρa/ρaρ0=(ρ0−ρf)/ρaρ0=1/ρa−γ/ρa, γ=ρf/ρ0, produces a wave equation of a form that includes nonlinear forward propagation and scattering phenomena as [4,18]
where we have neglected ∇(1/ρa), the low amplitude terms ββpf of σn, and the 2nd order p2 term in the absorption. c0(r) is the linear wave propagation velocity for low field amplitudes. The left side terms determine the spatial propagation of the wave from the slowly varying components of the material parameters c0(r), βpa(r), and hab(r, t). The right side terms represent scattering sources that originate from the rapid spatial variation of the material parameters, β(r), γ(r), and σn(r). β(r) represents the rapid, relative variation of the isentropic compressibility, γ(r) represents the rapid, relative variation of the mass density, while σn(r) represents the rapid, relative variation of the nonlinear parameters βp(r)κ(r) of Eqs.(4,6) [4,18].
The linear propagation terms (1) of Eq.(7) guide the linear forward spatial propagation of the incident wave with propagation velocity c0(r) and absorption given by term (3), without addition of new frequency components. The linear scattering source terms (4) produce local linear scattering of the incident wave that has the same frequency components as the incident wave, with an amplitude modification of the components ˜−ω2/c02 produced by the 2nd order differentiation in the scattering terms, where ω is the angular frequency of the incident wave.
The slow variation of the nonlinear parameters give a value to βpa(r) that provides a nonlinear forward propagation distortion of the incident wave that accumulates in magnitude with propagation distance through term (2) of Eq.(7). A rapid variation of the nonlinear material parameters gives a value to σn(r) that produces a local nonlinear distorted scattering of the incident wave through term (5) of Eq.(7).
Similar equations for elastic shear waves and electromagnetic waves can be formulated that represents similar propagation and local scattering phenomena, linear and nonlinear, for the shear and EM waves.
B. Nonlinear Propagation and Scattering for Dual Band Pulse Complexes
For estimation of non-linear material parameters, we transmit dual frequency pulse complexes where two examples are shown in
We study the situation where the total incident wave is the sum of the LF and HF pulses, i.e. p(r,t)=pL(r, t)+pH(r, t). The nonlinear propagation and scattering are in this 2nd order approximation both given by
Inserting Eq.(8) into Eq.(7) we can separate Eq.(7) into one equation for the LF and a second equation for the HF pulses as
where the material parameters c0(r), βpa(r), β(r), γ(r), σn(r) all have spatial variation, and the wave fields and absorption kernel pL(r,t), pH(r,t), hab(r,t) depend on space and time. We note that with zero LF pulse, the HF pulse propagates according to Eq.(9 b) with term (2b) and (5b) as zero. The low amplitude, linear propagation velocity is c0 (r) of Eq.(9) that produces linear propagation, term (1), modified by a self-distortion propagation term (2b), that is responsible for the harmonic propagation distortion utilized in harmonic imaging. The scattering is dominated by the linear term (4) where the self-distortion scattering term (5b) is important for scattering from micro-bubbles in a more complex form.
As shown in
The numerator in front of the temporal derivative in this propagation operator is the square propagation velocity, and we hence see that the LF pulse pressure pL modifies the propagation velocity for the co-propagating HF pulse pH as
c0(r,pL)=c02(r)(1+2ρpa(r)pL(r,t))≈c0(r)βpa(r)pL(r,t) (11)
where pL(r,t) is the actual LF field variable along the co-propagating HF pulse. Solving Eqs.(9a,b) for LF and HF transmit apertures with transmit pulse complexes as shown in
The HF pulse propagates close to the crest or trough of the LF pulses. The orthogonal trajectories of the HF pulse wave-fronts are paths of energy flow in the HF pulse propagation. We define the curves Γ(r) as the orthogonal trajectories of the HF pulse wave-fronts that ends at r. Let pc (s)=p·pLc(s) and c0(s) be the LF pressure and linear propagation velocity at the center of gravity of the HF pulse at the distance coordinate s along Γ(r), and p is a scaling factor for polarity and amplitude of the LF pulse. The propagation time-lag of the HF pulse at depth r along the orthogonal trajectories to the HF pulse wave-fronts, can then be approximated as
The propagation lag with zero LF pulse is t0(r) given by the propagation velocity c0(r) that is found with no LF manipulation of the tissue bulk elasticity. τ□(r) is the added nonlinear propagation delay (NPD) of the center of gravity of the HF pulse, produced by the nonlinear manipulation of the propagation velocity for the HF pulse by the LF pressure pc(s) at the center of gravity of the HF pulse.
Variations of the LF pressure along the co-propagating HF pulse, outside the center of gravity of the HF pulse, produces a variation of the propagation velocity along the HF pulse, that in addition to the NPD produces a nonlinear pulse form distortion (PFD) of the HF pulse that accumulates with propagation distance. For HF pulses much shorter than the LF half period, as shown in
and the subscript p designates the amplitude/polarity/phase of the LF pulse. Ptp(r, ω) is obtained from the temporal Fourier transform of pH in Eq.(9b). Vp includes all nonlinear forward propagation distortion, where the linear phase component of Vp is separated out as the nonlinear propagation delay (NPD) σp(r) up to the point r as described in Eq.(12). The filter {tilde over (V)}p hence represents the nonlinear pulse form distortion (PFD) of the HF pulse by the co-propagating LF pulse, and also the nonlinear attenuation produced by the nonlinear self-distortion of the HF pulse.
We note that when the 1st scattering/reflection occurs, the scattered LF pressure amplitude drops so much that after the scattering the LF modification of the propagation velocity is negligible for the scattered HF wave. This means that we only get essential contribution of the LF pulse to the NPD, τp(r) of Eq.(12), and the PFD, {tilde over (V)}p, of Eq.(13), up to the 1st scattering, an effect that we will use to estimate the spatial variation of the nonlinear propagation parameter βpa(r), and the nonlinear scattering given by σn(r), and suppress multiple scattered waves (noise) in the received signal to enhance the 1st order linear and nonlinear scattering parameters.
In summary, the nonlinear terms (2a, b) in Eq.(9b) produces a propagation distortion of the HF pulse as:
The HF scattering cross section given in the right side of Eq.(9b) is composed of a linear component. term (4), and a nonlinear component, term (5), where term (5a) takes care of the variation of the HF fundamental band scattering produced by the LF pulse, while term (5b) represents self distortion scattering that produces scattered signal in the harmonic and sub-harmonic components of the HF-band. This scattering term is however so low that it can be neglected, except for micro-bubbles at adequately low frequency, where the scattering process is described by a differential equation, i.e. highly frequency dependent scattering with a resonance frequency, producing a well known, more complex Rayleigh-Plesset term for HF self distortion scattering.
Because the temporal pulse length of the HF pulse TpH<<TL/2, we can approximate pL (r)≈pc (r) also in the interaction scattering term (5a) of Eq.(9 b)
where pc(r) is the LF pressure at the center of gravity of the co-propagating HF pulse as for the NPD propagation term in Eq.(12).
The scattering from the rapid, relative fluctuations in the compressibility, β(r), is a monopole term that from small scatterers (dim<˜¼ HF wave length) give the same scattering in all directions, while the scattering from the rapid, relative fluctuations in the mass density, γ(r), is a dipole term where the scattering from small scatterers depends on cosine to the cross-angle between the transmit and receive beams [18]. For a given cross-angle between the transmit and receive beams one can hence for the fundamental HF band write the scattering coefficient as a sum of a linear scattering coefficient and a nonlinear scattering coefficient as
σl (r) represents the sum of the linear scattering from fluctuations in compressibility and mass density. For larger structures of scatterers (dim>˜HF wave length), like for example layers of fat, muscle, connective tissue, or a vessel wall, the total scattered wave will be the sum of contributions from local parts of the structures which gives a directional scattering also influenced by the detailed shape of the structures [18].
The effect of the low frequency (LF) pulse on the received HF signal, can hence be split into three groups with reference to Eq.(9 b):
Example embodiments of the invention will now be described in relation to the drawings. The methods and structure of the instrumentation are applicable to both electromagnetic (EM) and elastic (EL) waves, and to a wide range of frequencies with a wide range of applications. For EL waves one can apply the methods and instrumentation to both shear waves and compression waves, both in the subsonic, sonic, and ultrasonic frequency ranges. We do in the embodiments describe by example ultrasonic measurements or imaging, both for technical and medical applications. This presentation is meant for illustration purposes only, and by no means represents limitations of the invention, which in its broadest aspect is defined by the claims appended hereto.
For estimation of nonlinear parameters the methods comprises transmitting at least two pulse complexes composed of co-propagating high frequency (HF) and low frequency (LF) pulses, where said HF pulse propagates close to the crest or trough of the LF pulse along at least one HF transmit beam, and where at least one of the amplitude and polarity of the LF pulse varies between at least two transmitted pulse complexes, where the amplitude of the LF pulse can be zero for a pulse complex and the amplitude of at least one LF pulse of said at least two transmitted pulse complexes is non-zero, as described in relation to
An example HF beam in the object is indicated as 202, with the HF pulse propagating to the right along the beam indicated as 203 at a particular time in the propagation. A LF pulse is, at the same time point, indicated as 205 with the positive swings as grey, co-propagating with the HF pulse to the right to manipulate both the propagation velocity and the scattering of the HF pulse, as discussed in Section 5.1B above. The HF pulse is indicated to be located at the crest of the LF pulse as indicated in
208 shows a HF receive array and processing system, where the Figure shows by example one HF receive cross-beam 209, where the HF receive cross-beam axis 212 crosses the HF transmit beam axis 213 at 211. An x-y-z Cartesian coordinate system shows the HF transmit beam axis along the z-direction and the HF receive cross-beam in the x-direction, where the x-axis is in the paper plane, and the y-axis is vertical to the paper plane. In this example, the coordinate system is defined so that the HF transmit aperture has the center rti=(xi, yi, 0), and the HF receive cross-beam aperture has the center at rrj=(−xr, yj, zj), preferably with focus at the crossing of the HF transmit and receive beam axes. The overlap of the HF transmit and receive beams define a cross-beam observation cell Rij of scatterers, centered at 211 with the position rij=(xi,yi,zj) that defines an image measurement point r.
With single HF transmit and receive cross-beams one will observe a scattered signal from a single cross-beam observation cell R(r) centered at r. However, scanning the HF receive cross-beam axis along the HF transmit beam axis as indicated by the dots 210, allows measurement of scattered HF cross-beam receive signals from cross-beam observation cells centered at a set of crossing positions rij between the HF transmit axis starting at rti, and receive beam axes starting at rrj, j=1, . . . , J. This can be done in time series by transmitting a LF-HF pulse complex for each HF receive cross-beam position, or with time parallel HF receive beam forming with focus at several locations along the HF transmit beam, for measurements of the scattered HF cross-beam receive signal at these locations along the HF transmit beam. The array 208 can for example be a linear array, or a phased array, receiving in parallel on all elements where the element signals are coupled to a parallel receive beam former, producing in parallel individual receive signals for a set of receive cross-beams, all focused at different locations on the HF transmit beam axis.
For 2D or 3D imaging, one can use as system set up to scan the LF-HF transmit beam laterally (x-direction) or vertically (y-direction) as indicated by the arrows 204, in order to irradiate a 2D or 3D section of at least a region of the object. With a matched scanning of the HF receive cross-beam focus along each HF transmit beam axes, gives a 2D/3D set of HF cross-beam receive signals scattered from cross-beam observation cells Rij defined by the crossings of the HF transmit and receive beams and centered at the crossing of the HF transmit and receive cross-beam axes at rij. We label the positions of the array origin of the HF transmit beam axes by the coordinate vectors rti, i=1, . . . , I, and the positions of the array origin of the receive beam axes by the coordinate vectors rrj, j=1, . . . , J. The distance between transmit beam axes is Δrt, and between the receive beam axes the distance is Δrr. Note that to minimize the dimension of Rij one would adjust the aperture and focus of the HF receive cross-beams for narrow receive focus at the actual HF transmit beam axis.
The HF cross-beam receive signals are processed in the receive unit 208 to provide linear and nonlinear propagation and scattering parameters for each measurement point rij, in the scanned region with spatial resolution given by the dimension of the cross-beam observation cells Rij, as described below. The unit 208 also contains a display system for the images. To give an impression of a continuous image in the display, one typically introduces interpolated image display values between the image measurement points rij.
To simplify notation in the equations below, we label rij=r. The HF cross-beam receive signals are composed of three components: i) a linear scattering component ylp(t,r), and ii) a nonlinear scattering component 2pC(r)ynp(t,r) where pc is the LF pulse amplitude defined in Eq.(12,14), and iii) followed by a multiple scattering component np (t,r), illustrated in
yp(t,r)=ylp(t,r)+2pc(r)ynp(t,r)+np(t,r)
yl/np(t,r)=∫d3r0A(r−r0,r)up(t−τp(r)−τf(r−r0,r)−(|r0−rt|+|r0−rr|)/c0,r)σl/n(r0) (16)
where we have defined p as a scaling and polarity factor of the LF pressure as in Eq.(12), i.e. pc(r)=p·pLC(r)·r0=(x0, y0, z0) is the scatterer source point, and σl (r0) and σn (r0) are the linear and nonlinear HF scattering densities from Eqs.(9b,14,15). The combined HF receive, Ar, and HF transmit beam, At, amplitude weighting around the image measurement point r=(x, y, z) defines the cross-beam observation cells A(r−r0,r)=Ar(y−y0,z−z0,x)At(x−x0,y−y0,z)·up(·,r) is the received HF pulse from a point scatterer within the cross-beam observation cell R(r) centered around the image point r, that observes a nonlinear propagation delay (NPD) τp (r) according to Eq.(12), a nonlinear pulse form distortion (PFD) according to Eq.(13), and a propagation nonlinear self distortion according to Eq.(9 b, term 2b) for the HF transmit pulse propagation up to depth r. The NPD and PFD vary so slowly with position that we approximate it as constant within each observation cell.
τf(r−r0,r)=τt(r−r0,z)+τr(r−r0,x) is the sum of the HF transmit beam focusing phase delay τt and the HF receive beam focusing phase delay τr, and |r0−rt|+|r0−rr| is the total propagation distance of the pulse from the transmit aperture centered at rt to the scatterer at r0 and to the receiver aperture centered at rr. Close to the focus of a HF receive or transmit beam we can approximate τr or τt≈0. A preferred system allows for adjustment of the HF receive cross-beam focus onto the HF transmit beam axis, which allows the approximation τr≈0 in the observation cell, while for a fixed transmit focus τt≈0 for r outside the HF transmit focus.
Lateral filtering of the HF cross-beam receive signal provides a synthetic focusing in the actual image range, as discussed in relation to Eqs.(18,19) below. This allows the approximation of both τt, τr≈0.
Schematic example received scattered signals from example HF receive cross-beam 209/210 are shown in
From Eqs.(11,12) we see that p>0 provides a nonlinear increase in the HF propagation velocity that advances the arrival time (negative delay) of the scattered signal compared to for p=0, and p<0 provides a nonlinear decrease in the HF propagation velocity that delays the arrival time (positive delay) of the scattered signal compared to that for p=0. The 304 part of 301 is an advancement of the 304 part of 302, i.e. a negative NPD τ+(r)<0 according to Eq.(12). The 304 part of 303 is in the same way a delay of 302, i.e. a positive NPD τ−(r)>0, where the subscript + and − and 0 indicates with reference to
Yp(ω,r)=Up(ω,r)e−iωτ
Xl/n(ω,r)=∫d3r0A(r−r0,r)e−iω(τ
where Xl(ω,r) and Xn(ω,r) are the temporal Fourier transforms of the linear and nonlinear scattering components from the cross-beam observation cell centered at r. The exponential function arises from the delay components in the temporal argument of up in Eq.(16).
The nonlinear self-distortion according to Eq.(9 b, term 2b) introduces harmonic components of the fundamental band of the HF transmit pulse that varies with depth in a balance between propagation distance and absorption of the transmitted HF pulse. Through well-known methods of radiofrequency filtering of the receive HF signal, or the use of pulse inversion where one transmits two pulse complexes with opposite polarity of the HF pulse and the same LF pulse, one can extract harmonic components of Yp(ω, r) for further processing in the receive processor, as described in front of the
One will ideally set a narrow focus of the HF receive cross-beam essentially on the transmit beam axis. In the y- and z-directions the observation region is therefore generally limited by a narrow receive beam, but in the x-direction the observation region is limited by the x-width of the transmit beam. As the transmit beam operates with a fixed transmit focus, the transmit beam width varies with depth z outside the focus. For z outside the focal region, the HF transmit beam can therefore be wide both in the azimuth (x-) and elevation (y-) directions.
When 3D scanning of a stationary object is available, one can obtain synthetically focused transmit and receive beams through spatial filtering of measurement signals as
Ŷp(ω,r)=∫d3r0W(ω,r−r0,r)Yp(ω,r0)
W(ω,r−r0,r)=B(ω,r−r0,r)eiωτ
where B is a weighting function to reduce spatial side-lobes of the filter. The filter kernel can be obtained from simulation of the transmit and receive beams to obtain τt(r−r0,r) and τr(r−r0,r). Eqs.(31-33) below also present methods of estimating τt(r−r0,r) and τr(r−r0, r) that corrects for wave front aberrations due to spatial variations in the propagation velocity within the object. The filter amplitude weighting B, can conveniently be proportional to the amplitude of the simulated beams, potentially with added windowing. When the receive beam is focused onto the transmit beam axis, we can approximate τr≈0 within the observation region. The integration is then done over the transversal coordinate to the transmit beam axis, r⊥=(x,y), as
Ŷp(ω,r)=∫d2r⊥W(ω,r−r⊥,z)Yp(ω,r⊥,z)
W(ω,r−r⊥,z)=B(ω,r−r⊥,z)eiωτ
When the y-width of the receive beam focus is sufficiently narrow, the integration over r⊥ can be approximated by an integration in the x-direction (azimuth) only, with a filter adapted for use with 2D scanning of the transmit beam in the x-direction.
One advantage of the synthetic focusing is that the cross beam observation cell is reduced, and the approximation that the NPD and PFD are constant in the observation cell becomes more accurate, i.e. improves the approximation of taking τp(r) and Up(ω, r) outside the integral in Eqs.(17). The synthetic focus filtering also provides images with improved spatial resolution.
From the models in Eqs.(12, 16, 17), we can determine τp(r) from the delay between the front parts 304 of two of the signals 301-303, or all three signals in combination. This can for example be done through correlation between the 1st order scattered front part 304 of the HF cross-beam receive signals from pulse complexes with different LF pulses, or by measuring the arrival time difference between the front edge or the maximum amplitude of the signals, or a combination of these. An advantage of the method as described is that we have first intervals of the measured signals that comprises mainly 1st order scattering, which gives a clear definition of τp(rt,z) in Eq.(12) at depth z along the transmit beam axis starting at rt. A schematic example of τ−(rt,zj) is shown as 401 in
Having measured τp(rt,zj) at a set of points zi with distance Δz we can from Eq.(12) estimate the nonlinear propagation parameter
where 402 in
where an are filtering coefficients and N describes an interval of terms. Allowing for reduced spatial resolution in the estimate of βpa, one can also in Eq.(21) include weighted sums along neighboring transmit beams (i.e. along rt) to reduce noise in the estimate, according to known methods. One can also use nonlinear differentiation, for example through minimizing a functional of the form
where βpa(rt,z)z denotes the gradient with respect to z, and Wβ and Wn are weights to be chosen to balance between rapid response to spatial changes in βp( ) for high values of Wβ/Wn, and noise reduction for low values of Wβ/Wn. We can also include integration/summation for neighboring transmit beams, i.e. along rt to reduce noise at the cost of lower spatial resolution, as for the linear estimation in Eq.(21).
With a 2D or 3D scanning of the transmit and receive beams, we note that Eqs.(20-22) presents a quantitative spatial imaging of the nonlinear elastic tissue parameter, where
The nonlinear scattering is found at highly local points from micro-bubbles and hard particles like micro-calcifications, and the nonlinear pulse form distortion (PFD) can hence from Eqs.(13, 17-19) be estimated as
We define a Wiener form of inversion of {tilde over (V)}p(z,ω;rt) as
where the parameter μ is adjusted to maximize the signal to noise ratio in the filtered signal.
Ŷp(ω,ri) as given in Eqs.(17-19) for image points rij is subject to absorption of the HF pulse both along the HF transmit and the HF receive cross-beams. When estimates of the tissue absorption exist, for example from ultrasound tomography imaging [13-17], the absorption can be compensated for. When such estimates do not exist, it is in ultrasound imaging common to use a depth varying gain control, either set manually or through some automatic estimation. Assuming that the receive signal in Eqs.(16-19) has undergone some depth gain adjustment to compensate for absorption, we can from Eqs.(17-19) obtain absorption compensated estimates of the linear and nonlinear scattering components as
We could then for example display |{circumflex over (X)}l(ω,ri)| and |{circumflex over (X)}n(ω,ri)| at a typical frequency, say the center frequency ω0 of the fundamental HF band or a harmonic of the fundamental HF band, or an average of |{circumflex over (X)}l| and |{circumflex over (X)}n| across a band B of strong frequency components within the HF fundamental or harmonic bands, for example
Other alternatives are to show the average of the square |{circumflex over (X)}l/n(ω,ri)|2.
When pc is unknown, we still get an interesting visualization of the spatial variation of the nonlinear scattering without the scaling of 1/pc in Eqs.(14), similar to Eq.(20,21) for the nonlinear elasticity parameter, for example to detect and visualize micro-bubbles or micro-calcifications in the tissue. When estimates of local absorption are available, these can be combined with Eq.(25) by anyone skilled in the art to obtain quantitative estimates of both linear and nonlinear scattering, that is useful for tissue characterization, for example of cancer tumors and atherosclerotic plaques.
We notice from Eqs.(16-19) that several scatterers within the cross-beam observation cell can participate to the front signal 304 in
The separate transmit and receive array systems in
601 of
612 shows a further example HF receive cross-beam that crosses the HF transmit beam at the same cross-beam observation cell 615 as the HF receive cross-beam 609 with a different direction, and hence obtains a different speckle pattern of the front part 304 HF cross-beam receive signal, than for the HF receive cross-beam 609, as discussed in relation to
Because the modification of the bulk elasticity of the tissue by the LF pulse severely drops at the first scattering, as discussed following Eq.(13), the methods according to the invention as described above, do not require through-transmission through the object. A full ring array is therefore not necessary for these methods, where one for example could operate with a “horse-shoe” array extraction of the ring array 600 to emulate the functional essence of the array system in
We further notice that measurement of through transmission of the HF pulses with a ring array can also be used to improve accuracy of estimates of the nonlinear propagation and scattering parameters with tomographic methods, where for example the values obtained according to the methods described above could be used as starting values in an iterative tomographic procedure, e.g. the “bent ray” method described in [13-17], to obtain more accurate values.
An example structure for assessment of nonlinear propagation and scattering parameters using a limited access area of the object, is shown in
The strong angular steering of the HF transmit and receive beams in
The coupling medium 714 between the transmit and receive arrays (712, 713) and the object allows the transmit and receive arrays to have an angle to the object surface, which hence allows for larger pitch of the array elements. With linear arrays one can scan the transmit and receive beams side-ways for imaging of linear and nonlinear propagation and scattering parameters as presented in relation to
The system according
where τ(cell) is the measured NPD at the cross-beam observation cell 719, τ(0) is a previously measured NPD from the transmit array 712 through the acoustic contact medium 714 to the surface of the object, and T(tissue) is the propagation time from the probe surface to the center of the cross-beam observation cell. The composition of the homogeneous tissue can then for example be obtained from a table of prior data.
We note that the direct measurement of the effect of nonlinear elasticity parameter {circumflex over (β)}pa as in Eqs.(20-22) produces a result that according to Eqs.(1-11) depend on both the direct nonlinear elasticity parameter B(r) and the compressibility κ=1/A. When we have an estimate of κ(r) we note from Eqs.(4-11) that we can estimate the pure nonlinear elasticity term B(r) from the estimate {circumflex over (β)}pa(r) in Eqs,(20-22, 27) as
where the hat denotes estimates. This introduces a pure nonlinear elasticity parameter with less correlation to the linear parameter A(r)=1/κ(r) and c0(r). However, the effect of B on the nonlinear elasticity is also determined by how much the material compresses from a given pressure, that makes B/A=Bκ a better description of the relative effect of nonlinear elasticity on wave propagation, as described following Eq.(1). With the further development to the wave equation, Eqs.(7,9), we note that it is the slowly varying component βpa=(1+Baκa/2)κa that affects the forward wave propagation and determines the NPD and the PFD. This is one reason that Ballou found a high correlation between B/A and c0 [11].
When estimates of c0(r) exist, for example from ultrasound tomography or other, one can also obtain estimates of the nonlinear elasticity parameters B/A and B defined in Eqs.(1-4). One can for example use an empirical relation κ=κ(c0), or for example an approximate linear correlation between the mass density and the isentropic compressibility as [16]
Within this approximation one can hence obtain estimates of both the local mass density and the local compressibility of the tissue from c0(r). One could also use more complex parametric models of the relationship between mass density and isentropic compressibility.
The high correlation between βpa and κa can also be used to generate estimates ĉ0(r), for example as
where {circumflex over (κ)}({circumflex over (β)}pa) is an empirical relation between {circumflex over (β)}pa and {circumflex over (κ)}. Eq.(30) then implies that ĉ0 itself could be directly obtained from an empirical relation between {circumflex over (β)}pa and ĉ0, for example as shown in
When a first image of c0(rij) is estimated, one can use these values to estimate corrections for wave front aberrations in the heterogeneous medium for both the transmit and the receive beams [8,9]. We describe two methods for estimation of corrections for wave front aberrations for focusing the transmit and/or receive beams from an array aperture Srf onto the focal point rf. We assume Srf comprises a set of K elements out of the total number of elements in the array, where rk is the center of array element #k. We first by example do spatial interpolation of c0(rij) to c0(r) with an adequately low spatial sampling distance.
In the first method we start by numerical simulation of the wave propagation from a point source in the focal point at rf to the actual array aperture, through the heterogeneous object with spatially varying propagation velocity c0(r). We write the simulated wave function at the center rk of array element #k as g(rk,rf,ω), where ω is the angular frequency of the point source at the focal point rf. We note that g(rk,rf,ω) is the Greens function for the point source at rf. We then filter the transmit pulse for each element by the filter
h(rk,rf,ω)=a(rk,rf)g(rk,rf,ω)* k=1, . . . ,k (31)
where A(rk,rf) is the standard amplitude apodization of the transmit pulse across the actual aperture Srf. The phase of g represents both the standard focusing delay for beam forming in a homogeneous medium, and together with the amplitude of g an optimal correction for the wave front aberrations due to the spatially varying propagation velocity [8,9]. The major component of this filter is however the linear component of the phase that represents a delay correction for the wave front aberrations.
This first method requires a large numerical simulation capacity, which has a practical solution using Graphics Processing Units (GPUs). A less computer intensive approach can be obtained with ray acoustics techniques. We define
where s is the arc-length along the ray (i.e. r(s) is a taxameter representation of the ray) and n(r) is the spatially varying refractive index of the material. To focus the transmit or receive beams onto the focal point rf, we simulate numerically Eq.(32) for the acoustic ray rfk(s) from the focal point rf to the center rk of array element #k. The beam steering delay for element #k is then calculated as
where al(rk,rf) is the acoustic length of the acoustic ray rfk(s) from rf to rk.
For best results one should do 3D scanning of the beams to obtain 3D images of c0(rij) as described above. For corrections of wave front aberrations, the array should with mechanical elevation scanning be of the 1.75D type with larger elements in the elevation direction used for beam focusing and aberration corrections. With a full matrix array, one obtains electronic focusing and beam steering both in the azimuth and elevation directions. For stationary objects the aberration corrections can be included in the filter functions W(ω,r−r0,r) of Eqs.(18,19) for synthetic focusing of the observed beams. Hence with mechanical scanning in the elevation direction, we can avoid dividing of the arrays in the elevation direction, as focusing in the elevation direction can be done in the synthetic focusing.
We note that the NPD and the PFD estimated with the crossing transmit and receive beams can also be used in the processing of back-scattered HF signals obtained with a HF receive beam axis along or close to the HF transmit beam axis, as for example described in U.S. Pat. Nos. 7,641,613, 8,038,616, 8,550,998, 9,291,493 to suppress multiple scattering noise and estimate nonlinear scattering for received HF back-scatter signals. The back scatter images have better spatial resolution in range, and is also the type of images currently in general use, while the cross beam method provides more accurate estimation of the spatial variation of the NPD and PFD with less influence from multiple scattering noise.
It is in many aspects interesting to also form images from HF back-scatter receive signals using HF receive beams with the same axis as the HF transmit beams. This is obtained by a HF back-scatter receive beam forming on the HF receive array channel data, in addition to the HF receive cross-beam forming. The NPD and the PFDs are determined by the LF and HF transmit beams and the LF pulse polarity and the amplitude, according to Eqs.(12,13). When we for HF back-scatter receive signals are using the same LF and HF transmit beams as for the cross-beam receive signals, we get the same NPD and PFD for the HF back-scatter as for the cross-beam receive signals. The HF back-scatter receive signals can then be processed for suppression of multiple scattering noise and enhancement of nonlinear scattering signals, for example as described in U.S. Pat. Nos. 7,641,613, 8,038,616, 8,550,998, 9,291,493. For each HF back-scatter receive beams we estimate from the NPD and PFD one or both of i) time delay corrections, and ii) pulse form and speckle corrections, for the at least two HF back-scatter receive signals from at least two transmitted pulse complexes with different LF pulses, followed by combinations of the corrected HF back-scatter receive signals to produce HF back-scatter receive signals with suppression of multiple scattering noise. Special delay and speckle corrections can similarly be estimated for enhancement of HF nonlinear scattering signals, for example as described in U.S. Pat. No. 9,291,493.
It is shown in U.S. Pat. No. 9,291,493 that Class I and II multiple scattering noise are equal for equal transmit and receive beams, which is a great advantage for combined suppression of both noise classes, as described in the cited US patent. For back-scatter imaging it is hence an advantage to form receive beams that are equal to the transmit beams, i.e. same focus, aperture, and apodization. This, however, gives fixed focused beams, but synthetic depth focusing of the combined transmit/receive beam can be obtained by lateral filtering of the received HF back-scatter receive signals as in Eqs.(34-37) and also U.S. Pat. No. 9,291,493.
A useful method is therefore to couple the array elements to a receive beam former that produces both receive cross-beams that crosses the transmit beams like in in
The HF back-scattered receive signals can be synthetically focused at multiple depths through lateral filtering as one of before and after the suppression of the MSN, for example as described in Eqs.(34-37) and U.S. Pat. No. 9,291,493. Estimation of H(rk,rf), and the τf(rk,rf) from the cross beam signals as described in Eqs.(31-33) above, also allows for correction for the wave front aberrations in the synthetic focus filtering of Eqs.(18, 19, 34-37), according to known methods.
With the advances in compact computer storage and processing performance, the invention also devices a method for combined HF cross-beam and back-scatter imaging where the HF receive signals for the individual HF array elements are digitized and stored for each transmit pulse complex and each transmit beam. The stored receive element signals are then first processed to
In further steps, the method applies further processing on the stored element signals to
With such scanning of the HF transmit and receive beams in a 2D or 3D manner, the methods hence allow formation of 2D and 3D back-scatter images with suppression of multiple scattering noise and enhancement of nonlinear scattering and also with focus corrections for the wave front aberration effect from spatial variations in ultrasound propagation velocity.
As described above, the strong angular steering of the HF transmit and receive beams used for cross-beam estimation of the NPD as in
The NPDs and the PFDs at the different image points depend on both the transmitted LF amplitude and transmit LF/HF beam directions. From the estimated NPDs from an angled HF transmit beam and a forward HF receive beam at an harmonic band, we can estimate βp at a set of image points as described in relation to Eqs.(20-22). From the formula for the NPD, τp(r), in Eq.(12), or from a complete simulation of Eq.(9a,b), one can then obtain estimates of a new set of NPDs at the image points for LF pulses and beams with different direction and amplitudes, for example direct forward LF and HF transmit beams. The complete simulation also produces estimates of the PFD at the selected image points. For adequately stationary objects one can then use such estimated PFDs and/or NPDs for new HF back-scatter receive signals obtained with forward HF transmit beams with the same HF back-scatter receive beams as the HF transmit beams, to suppress multiple scattering noise and enhance nonlinear scattered signal for these HF back-scatter receive signals, similar to what described above and in U.S. Pat. No. 9,291,493. One can then obtain synthetic focusing with lateral filtering of the processed HF back-scatter receive signals with suppression of multiple scattering noise and enhancement of nonlinear scattering, also with compensation for wave front aberrations, as described above.
For 3D scanning of the ultrasound beams, the linear array 801 can in this example embodiment be rotated around the long axis 804 that provides a mechanical scanning of the LF/HF beam in an elevation direction, indicated by the arrows 805. For each elevation position of the array, one does electronic scanning of a combined LF/HF transmit beam in an azimuth direction indicated by the arrows 806, through electronic selection of transmitting LF and HF elements, and transmitting combined LF/HF pulse complexes similar to what is shown in
At least two pulse complexes with different LF pulses, for example as illustrated in
Two versions of the instrument are useful, where in the first version 803 comprises beam former for HF receive cross-beams, illustrated as 814 in the 2D scan plane 808, and HF back scatter receive beams with the same axis as the HF transmit beam 807. In a preferred embodiment the HF back-scatter receive beam is equal to the HF transmit beam as this improves suppression of multiple scattering noise in the HF back-scatter receive signal, as discussed in U.S. Pat. No. 9,291,493. During the scan, the HF cross-beam and back-scatter receive signals are via the high speed bus 810 transferred to the processor 811 for storage and further processing.
The processor 811 comprises a multicore central processing unit (CPU) and a graphics processor unit (GPU) that are SW programmable. The processor receives user inputs from a user/operator input unit 813 that operates according to known methods, and displays image data and other information necessary for communication with the user/operator through a combined display and audio unit 812, according to known methods.
In the second version, the digital HF receive signals from each HF receive elements and each transmitted pulse complex are via the high speed bus 810 transferred to the processor 811 for storage and further processing. For 2D imaging in the second version, a SW program in the processor 811 combines HF receive signals from multiple HF receive elements and produces a set of HF receive cross-beams crossing each HF transmit beam in the 2D set, for example as described in relation to
Example transmit and receive beams are shown in
The dimensions of the observation cells can be reduced by filtering of the received signals, as shown in Eqs.(18,19). Estimates of the NPD and PFD can then be obtained from the HF cross-beam receive signals at several observation cells along each transmit beam, f.ex. as described in relation to
Hence an adequate magnitude of the cross-angle between the HF transmit and receive beams produces suppression of the MSN in the HF cross-beam receive signal by i) directing the HF receive beams crossing the HF transmit beam at an adequately large cross-angle, and ii) focusing the HF receive cross-beams at the HF transmit beam axis, and iii) gating out HF receive signals from an interval of arrival times centered around the propagation time from the HF transmit beam axis. These three steps highly favors HF receive signals where the last scatterer is within a local HF cross-beam observation cell in the HF cross-over region around the cross-over depth between the HF transmit and receive beams axes, strongly suppressing MSN in this HF cross-beam receive signal, as MSN with arrival times within the gated HF receive interval must arrive from last scatterers outside said HF cross-over region which has low sensitivity.
To obtain HF cross-beam receive signals from a multitude of depths along the HF transmit beams one uses a set of parallel such HF receive cross-beams, that crosses the HF transmit beam at the depths one wants information from. The magnitude of suppression of HF cross-beam MSN compared to back scatter imaging depends amongst other on the cross-angle between the HF receive cross-beam and the HF transmit beam, in relation to the object structures that produces the MSN, and the type of arrays used. In medical ultrasound imaging the MSN is often given by large, plane fat-layers, parallel to a linear ultrasound transducer array. In this case one can get a ˜6 dB suppression of the MSN with a cross-angle down to ˜10 deg. A more robust suppression of the MSN for different situations is obtained if the cross-angle is typically larger than ˜10 deg often larger than ˜20 deg or even larger than ˜30 deg, where the essence of the angle choice is to adequately suppress multiple scattering noise in the HF cross-beam receive signal for robust estimation of one or both of the NPD and the PFD.
When we have an estimate of the linear compressibility across the 2D scan plane, {circumflex over (κ)}(r)=1/A(r), for example from other sources, we obtain a 2D image estimate of the nonlinear parameter B(r) or B(r)/A(r) from Eq.(28). When spatial estimates of the linear propagation velocity c0(r) exists, we can produce spatial estimates of the linear compressibility according to Eq.(29). Other estimates of the compressibility can be obtained from empirical correlation with the linear compressibility and {circumflex over (β)}pa(r), for example obtained by machine learning, which then could give estimates of c0(r) as in Eq.(30). This equation also gives direct empirical correlation between {circumflex over (β)}Pa(r) and the linear propagation velocity c0(r) as shown in
From estimates of the linear propagation velocity, the processor can calculate corrections for wave front aberrations produced by the spatial variations in c0(r), for example according to Eqs.(31-33). These aberration correction estimates can then be included in the filter kernels of Eqs.(18,19) to provide improved beam focusing with corrections for these aberrations, that reduces the dimension of the observation range cells. The processing on the element signals can then be carried through in several steps, where first a synthetic focusing of the HF receive beam and the HF transmit beam for the HF cross-beam receive signal according to Eqs.(18,19) are obtained with a spatially constant propagation velocity estimate, for example c0=1540 m/s. This leads to a first estimate of a spatially varying c0(r) that opens for corrections for wave front aberrations in a second step, producing improved image estimates with lower dimension of the cross-beam observation cells. This leads to improved estimates of c0(r) that is used for improved corrections for wave front aberrations in a next step, leading to further improved image estimates with lower dimension of the cross-beam observation cells, and so on.
With the final estimate of c0(r), one can from Eqs.(31-33) calculate wave front aberration corrections for the combined HF transmit beam and the HF back-scatter receive beam. These corrections are then included in a lateral filtering of the HF back-scatter receive signals at selected depths, to provide synthetic focusing of the combined HF transmit and backscatter receive beams at said selected depths.
With 3D scanning of the beams we get 2D data from several neighboring 2D scan planes. Filters as in Eqs.(18,19) can now produce a 2D synthetic focusing of both the transmit and receive beams both in the azimuth and the elevation directions to minimize the observation cells at all depths along the transmit beams. The estimation of material data and images proceeds otherwise in the same manner as above for each 2D scan plane, to produce 3D images of material parameter estimates. The 3D synthetic focusing will produce smaller image cells with more accurate spatial estimates of the parameters, and improved corrections for wave front aberrations.
For good suppression of multiple scattering noise in the HF back-scatter receive signals, it is advantageous to use equal HF transmit and back-scatter receive beams, as described in U.S. Pat. No. 9,291,493. The HF back-scatter receive signal for an image pixel depth zk=ctk/2, where tk is the arrival time for the signal for that pixel, can be modeled as
Yp(zk,rt,ω)=Up(zk,ω)∫d2rt1Ht(zk,rt−rt1,ω)2σp(zk,rt1,ω) (34)
where HtHbr=Ht2 because the HF back-scatter receive beam and transmit beams are equal. The back-scatter observation cell is defined by the HF pulse length in the z direction, and is hence short. A very useful synthetic focusing of the HF back-scatter receive signal can then be obtained by only transversal filtering of the HF back-scatter receive signal at fixed depth as
Ŷpf(zk,rt,ω)=Up(zk,ω)∫d2rt2Wrt(zk,rt−rt2,ω)Yp(zk,rt2,ω)
=Up(zk,ω)∫z1d2rt1Hf(zk,rt−rt1,ω)σp(zk,rt1,ω)
Hf(zk,rt,ω)=∫d2rt2Wrt(zk,rt−rt2,ω)Ht(zk,rt2,ω)2 (35)
To minimize the width of Hf in the transversal direction rt we chose the filter kernel Wrt so that the phase gradient of the Fourier transform Hf in the transversal direction is zero [18]. Denoting the Fourier transform in the transversal coordinates by Frt{ } the convolution gives
Frt{Hf(zk,rt,ω)}=Frt{Wrt(zk,rt,ω)}Frt{Ht(zk,rt,ω)2}
Frt{Wrt(zk,rt,ω)}=Art(zk,kt,ω)e−iφ
where kt is the Fourier coordinates in the transversal plane, and Art is an apodization function to reduce sidelobes. In particular is the so-called matched filter
Frt{Wrt(zk,rt,ω)}=(Frt{Ht(zk,rt,ω)2})* (37)
useful, which includes both phase correction and apodization. Wave front aberrations can be included in our model of the HF transmit beam frequency response Ht according to known methods, and the focus filtering in Eqs.(35-37) then also corrects for wave front aberrations.
For special versions of the processing one might also use all LF/HF array elements to transmit LF/HF beams that are approximately plane in the azimuth direction. Transmitting azimuth plane waves in several directions one can combine the received signals from the different directions to produce synthetic transmit beams focused at different locations within the 2D plane, according to known methods [4]. With a single azimuth direction azimuth plane wave, one can obtain spatial resolution with regular back-scatter registration of several parallel, dynamically focused receive beams, where time of arrival of scattered pulses produces spatial resolution along the depth of each receive beam, while the receive beam focusing produces lateral spatial resolution, all according to known methods. This method is however more sensitive to multiple scattering noise than the cross beam method described in relation to
The methods and instrumentation described above provides quantitative tissue images that opens for improved detection of tissue diseases, such as cancer and atherosclerotic plaques. It also opens for artificial intelligence (AI) detection and characterization of such diseases, when 3D data of the diseased tissue and some surrounding tissue is available.
Thus, while there have shown and described and pointed out fundamental novel features of the invention as applied to preferred embodiments thereof, it will be understood that various omissions and substitutions and changes in the form and details of the devices illustrated, and in their operation, may be made by those skilled in the art without departing from the spirit of the invention.
It is also expressly intended that all combinations of those elements and/or method steps, which perform substantially the same function in substantially the same way to achieve the same results are within the scope of the invention. Moreover, it should be recognized that structures and/or elements and/or method steps shown and/or described in connection with any disclosed form or embodiment of the invention may be incorporated in any other disclosed or described or suggested form or embodiment as a general matter of design choice. It is the intention, therefore, to be limited only as indicated by the scope of the claims appended hereto.
This application is a continuation in part of U.S. Ser. No. 16/258,251 which claims priority from provisional application No. 62/621,952 filed on Jan. 25, 2018; provisional application No. 62/732,409 filed on Sep. 17, 2018; and provisional application No. 62/780,810 filed on Dec. 17, 2018. This application also claims priority from provisional application No. 63/044,679 filed Jun. 26, 2020. The entire content of the forgoing being incorporated by reference.
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Number | Date | Country | |
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20210286059 A1 | Sep 2021 | US |
Number | Date | Country | |
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63044679 | Jun 2020 | US |
Number | Date | Country | |
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Parent | 16258251 | Jan 2019 | US |
Child | 17127561 | US |