The present disclosure relates to an ultrasound observation device that observes a tissue of an observation target using ultrasound, a method of operating the ultrasound observation device, and a computer-readable recording medium.
In the related art, in an ultrasound observation device that observes an observation target tissue using ultrasound, a technique of calculating a feature of a frequency spectrum of an ultrasound signal having characteristics corresponding to tissue characteristics and generating a feature image for identifying the tissue characteristics on the basis of the feature is known. In this technique, after the frequency of the received ultrasound signal is analyzed to acquire a frequency spectrum, an approximate expression of the frequency spectrum in a predetermined frequency band is calculated and a feature is extracted from the approximate expression.
When a feature is extracted, it may not be possible to obtain an accurate feature in a noise region which is a low echo region due to the influence of noise. As a technique of determining a noise region, an ultrasound diagnosis device that identifies a noise region as a low S/N region and displays information on the low S/N region together with an attenuation image (a feature image) which is an image based on an attenuation factor is known (for example, see JP 2013-005876 A). In this technique, it is determined whether each of predetermined regions corresponds to a low S/N region and a determination result is displayed as the information on the low S/N region. In this way, an operator such as a physician can determine whether a position being analyzed corresponds to a noise region.
In some embodiments, an ultrasound observation device is configured to acquire an ultrasound signal obtained by converting ultrasound received by an ultrasound transducer to an electric signal, the ultrasound transducer transmitting the ultrasound to an observation target and receiving ultrasound reflected from the observation target. The ultrasound observation device includes: a processor configured to perform predetermined computation on the ultrasonic signal. The processor is configured to: analyze a frequency of a signal generated based on the ultrasound signal to calculate a plurality of frequency spectra; compare a physical quantity based on the ultrasound reflected from the observation target with a threshold set according to the physical quantity; and calculate a frequency feature based on a frequency spectrum calculated by the analyzing and a comparison result obtained by the comparing.
In some embodiments, provided is a method of operating an ultrasound observation device configured to acquire an ultrasound signal obtained by converting ultrasound received by an ultrasound transducer to an electric signal, the ultrasound transducer transmitting the ultrasound to an observation target and receiving ultrasound reflected from the observation target. The method includes: analyzing a frequency of a signal generated based on the ultrasound signal to calculate a plurality of frequency spectra; comparing a physical quantity based on the ultrasound reflected from the observation target with a threshold set according to the physical quantity; and calculating a frequency feature based on a frequency spectrum calculated by the analyzing and a comparison result obtained by the comparing.
In some embodiments, provided is a non-transitory computer-readable recording medium with an executable program stored thereon. The program causes an ultrasound observation device configured to acquire an ultrasound signal obtained by converting ultrasound received by an ultrasound transducer to an electric signal, the ultrasound transducer transmitting the ultrasound to an observation target and receiving ultrasound reflected from the observation target, to execute: analyzing a frequency of a signal generated based on the ultrasound signal to calculate a plurality of frequency spectra; comparing a physical quantity based on the ultrasound reflected from the observation target with a threshold set according to the physical quantity; and calculating a frequency feature based on the frequency spectrum calculated by the analyzing and a comparison result obtained by the comparing.
The above and other features, advantages and technical and industrial significance of this disclosure will be better understood by reading the following detailed description of presently preferred embodiments of the disclosure, when considered in connection with the accompanying drawings.
Hereinafter, modes (hereinafter referred to as “embodiments”) for carrying out the disclosure will be described with reference to the accompanying drawings.
The ultrasound endoscope 2 has an ultrasound transducer 21 provided at a distal end thereof so as to convert an electric pulse signal received from the ultrasound observation device 3 to an ultrasound pulse (an acoustic pulse) to radiate the ultrasound pulse to a subject and convert an ultrasound echo reflected from the subject to an electric echo signal that represents the reflected ultrasound echo as a change in voltage to output the electric echo signal. The ultrasound transducer 21 may be a convex oscillator, a linear oscillator, or a radial oscillator. The ultrasound endoscope 2 may be configured such that the ultrasound transducer 21 performs scanning mechanically and may be configured such that a plurality of elements are provided in an array as the ultrasound transducer 21 and the elements associated with transmission and reception are electronically switched or the transmission and reception of the respective elements are delayed whereby the ultrasound transducer 21 performs scanning electronically.
The ultrasound endoscope 2 generally includes an imaging optical system and an imaging device. The ultrasound endoscope 2 can be inserted into a digestive tract (esophagus, stomach, duodenum, large intestine) or a respiratory organ (trachea/bronchus) of a subject and may capture the images of the digestive tract, the respiratory organ and surrounding organs (pancreas, gallbladder, bile duct, biliary tract, lymph node, mediastinum, blood vessels, or the like). Moreover, the ultrasound endoscope 2 includes a light guide that guides illumination light radiated to the subject during imaging. The light guide has a distal end reaching a distal end of an insertion portion of the ultrasound endoscope 2 inserted into the subject and a proximal end being connected to a light source device that generates illumination light. Without being limited to the ultrasound endoscope 2, an ultrasound probe that does not have an imaging optical system and an imaging device may be used.
The ultrasound observation device 3 further includes a transceiving unit 31 electrically connected to the ultrasound endoscope 2 to transmit a transmission signal (a pulse signal) made up of a high voltage pulse to the ultrasound transducer 21 on the basis of a predetermined waveform and a transmission timing and receive an echo signal which is an electric reception signal from the ultrasound transducer 21 to generate and output digital radio frequency (RF) signal data (hereinafter referred to as RF data), a signal processing unit 32 that generates digital B-mode reception data on the basis of the RF data received from the transceiving unit 31, a computing unit 33 that performs predetermined computation on the RF data received from the transceiving unit 31, an image processing unit 34 that generates various pieces of image data, an input unit 35 that is realized using a user interface such as a keyboard, a mouse, or a touch panel to receive input of various pieces of information, a control unit 36 that controls the entire ultrasound observation system 1, and a storage unit 37 that stores various pieces of information necessary for the operation of the ultrasound observation device 3.
The transceiving unit 31 has a signal amplification unit 311 that amplifies an echo signal. The signal amplification unit 311 performs sensitivity time control (STC) such that the larger the reception depth of an echo signal, the higher the amplification factor with which the echo signal is amplified.
The transceiving unit 31 generates RF data in a time domain by performing processing such as filtering on the echo signal amplified by the signal amplification unit 311 and then A/D converting the processed echo signal and outputs the generated RF data to the signal processing unit 32, the computing unit 33, and the storage unit 37. When the ultrasound endoscope 2 has a configuration in which the ultrasound transducer 21 having a plurality of elements arranged in an array performs scanning electronically, the transceiving unit 31 has a multi-channel circuit for beam synthesis corresponding to the plurality of elements.
A frequency band of the pulse signal transmitted by the transceiving unit 31 may be a wide band that covers an approximately entire linear-response frequency band for electro-acoustic conversion from a pulse signal to an ultrasound pulse by the ultrasound transducer 21. Moreover, various processing frequency bands of the echo signal in the signal amplification unit 311 may be a wide band that covers an approximately entire linear-response frequency band for acoustic-electric conversion from an ultrasound echo to an echo signal by the ultrasound transducer 21. Due to this, when a frequency spectrum approximation process to be described later is executed, it is possible to perform approximation with high accuracy.
The transceiving unit 31 also has a function of transmitting various control signals output by the control unit 36 to the ultrasound endoscope 2 and receiving various pieces of information including an identification ID from the ultrasound endoscope 2 to transmit the information to the control unit 36.
The signal processing unit 32 performs known processes such as band-pass filtering, envelope detection, and logarithmic conversion with respect to RF data to generate digital B-mode reception data. The logarithmic conversion involves taking a common logarithm of a quantity obtained by dividing RF data by a reference voltage Vc to express the RF data as a decibel value. In the B-mode reception data, an amplitude or an intensity of a reception signal indicating the reflection strength of an ultrasound pulse is arranged in a transceiving direction (a depth direction) of the ultrasound pulse. The signal processing unit 32 outputs the generated B-mode reception data to the image processing unit 34. The signal processing unit 32 is realized using a general purpose processor such as a central processing unit (CPU) or a specific purpose integrated circuit that executes a specific function such as an application specific integrated circuit (ASIC) or a field programmable gate array (FPGA).
The computing unit 33 includes an amplification correction unit 331 that performs amplification correction with respect to the RF data generated by the transceiving unit 31 so that the amplification factor β is constant regardless of a reception depth, a frequency analysis unit 332 that performs fast fourier transform (FFT) with respect to the amplification-corrected RF data to perform frequency analysis to thereby calculate a frequency spectrum, a feature calculation unit 333 that calculates a feature of the frequency spectrum, and a valid region determining unit 334 that determines whether a target region is a region that does not include a noise region and is a region (a valid region) valid for generating a feature image on the basis of the feature calculated by the feature calculation unit 333. The computing unit 33 is realized using a CPU and various computation circuits.
The reasons for performing such amplification correction will be described. STC correction is a correction process of eliminating the influence of attenuation from an amplitude of an analog signal waveform by amplifying the amplitude of the analog signal waveform by an amplification factor that is uniform over an entire frequency band and increases monotonically in relation to the depth. Due to this, when a B-mode image used for converting an amplitude of an echo signal to a luminance and displaying the amplitude is generated, and a uniform tissue is scanned, the luminance value is constant regardless of the depth when STC correction is performed. That is, an effect of eliminating the influence of attenuation from the luminance value of a B-mode image can be obtained.
On the other hand, when the frequency spectrum of ultrasound is calculated and the analysis result thereof is used as in the present embodiment, it may be difficult to eliminate the influence of attenuation resulting from propagation of ultrasound accurately even when STC correction is performed. This is because although an attenuation amount generally differs depending on a frequency (see Equation (1) below), the amplification factor of STC correction changes depending on a distance only and is not dependent on a frequency.
In order to solve the above-described problem (that is, a problem that when the frequency spectrum of ultrasound is calculated and the analysis result thereof is used as in the present embodiment, it may be difficult to eliminate the influence of attenuation resulting from propagation of ultrasound accurately even when STC correction is performed), a STC-corrected reception signal may be output when a B-mode image is generated, and another transmission different from transmission for generating a B-mode image may be performed to output a non-STC-corrected reception signal when an image based on a frequency spectrum is generated. However, in this case, there is a problem that the frame rate of image data generated based on the reception signal decreases.
Therefore, in the present embodiment, the amplification correction unit 331 corrects an amplification factor of a STC-corrected signal for B-mode images in order to eliminate the influence of STC correction while maintaining the frame rate of generated image data.
The frequency analysis unit 332 samples RF data of respective sound rays which are amplification-corrected by the amplification correction unit 331 at predetermined time intervals to generate sample data. The frequency analysis unit 332 performs FFT processing on a sample data group to calculate a frequency spectrum at a plurality of positions (data positions) on the RF data. The “frequency spectrum” mentioned herein means a “frequency distribution of intensity at a certain reception depth z” obtained by performing FFT processing on a sample data group. Moreover, the “intensity” mentioned herein indicates one of parameters such as, for example, a voltage of an echo signal, an electric power of an echo signal, a sound pressure of an ultrasound echo, or an acoustic energy of an ultrasound echo, an amplitude of these parameters, a time integral value of the parameters, or one of the combinations thereof.
Generally, when an observation target is a living tissue, a frequency spectrum shows different tendencies depending on the characteristics of the living tissue scanned by ultrasound. This is because a frequency spectrum is correlated with the size, the number, the density, the acoustic impedance, or the like of scatters scattering the ultrasound. The examples of the “characteristics of living tissue” mentioned herein include a malignant tumor (cancer), a benign tumor, an endocrine tumor, a mucinous tumor, a normal tissue, a cyst, and a vascular channel.
The data group Fj (j=1, 2, . . . , K) illustrated in
In the frequency spectrum C1 illustrated in
The feature calculation unit 333 calculates features of a plurality of frequency spectra on the basis of the determination result obtained by the valid region determining unit 334, calculates corrected features of the respective frequency spectra by performing attenuation correction for eliminating the influence of attenuation of ultrasound with respect to features (hereinafter referred to as pre-correction features) of the respective frequency spectra in each of a plurality of attenuation factor candidate values that give different attenuation characteristics when ultrasound propagate through an observation target, and sets an attenuation image optimal for the observation target among a plurality of attenuation factor candidate values using the corrected feature or performs attenuation correction using a predetermined attenuation factor.
The feature calculation unit 333 includes an approximation unit 333a that calculates a feature of a frequency spectrum (hereinafter, referred to as a pre-correction feature) before performing an attenuation correction process by approximating the frequency spectrum with a straight line, an attenuation correction unit 333b that calculates a feature by performing an attenuation correction process with respect to the pre-correction feature calculated by the approximation unit 333a, and an optimal attenuation factor setting unit 333c that sets an optimal attenuation factor among a plurality of attenuation factor candidate values on the basis of a statistical variation in the corrected features calculated by the attenuation correction unit 333b for all frequency spectra.
The approximation unit 333a performs a regression analysis of the frequency spectrum in a predetermined frequency band and approximates the frequency spectrum with a linear equation (regression line) to calculate the pre-correction feature featuring the approximated linear equation. For example, in the case of the frequency spectrum C1 illustrated in
Among the three pre-correction features, the slope a0 has a correlation with the size of the scatterer of the ultrasound, and it is generally considered that the larger the scatterer, the smaller the slope. The intercept b0 has a correlation with the size of the scatterer, a difference in acoustic impedance, the number density (concentration) of the scatterers, and the like. Specifically, it is considered that the intercept b0 has a larger value as the size of the scatterer is larger, has a larger value as the difference in acoustic impedance is larger, and has a larger value as the number density of the scatterers is larger. The mid-band fit c0 is an indirect parameter derived from the slope a0 and the intercept b0 and gives the intensity of the spectrum at the center within the effective frequency band. For this reason, it is considered that the mid-band fit c0 has a certain degree of correlation with luminance of the B-mode image in addition to the size of the scatterer, a difference in acoustic impedance, and the number density of the scatterers. Moreover, the feature calculation unit 333 may approximate the frequency spectrum with a polynomial of second or higher order by regression analysis.
The correction performed by the attenuation correction unit 333b will be described. In general, the attenuation amount A(f,z) of the ultrasound is an attenuation occurring while the ultrasound reciprocates between the reception depth 0 and the reception depth z, the attenuation amount is defined as a change in intensity before and after the reciprocation (a difference in decibel expression). It is empirically known that the attenuation amount A(f,z) is proportional to the frequency in a uniform tissue and is expressed by Equation (1) below.
A(f,z)=2αzf (1)
Herein, the proportional constant α is an amount called an attenuation factor. Moreover, z is the reception depth of the ultrasound, and f is the frequency. A specific value of the attenuation factor α is determined depending on a portion of a living body when the observation target is the living body. The unit of the attenuation factor α is, for example, dB/cm/MHz. Moreover, in the embodiment, it is possible to change the value of the attenuation factor α by the input from the input unit 35. The attenuation correction unit 333b performs attenuation correction with respect to a predetermined attenuation factor or an attenuation factor candidate value.
The attenuation correction unit 333b performs the attenuation correction on the pre-correction features (slope a0, intercept b0, and mid-band fit c0) extracted by the approximation unit 333a according to Equations (2) to (4) below to calculate features “a”, “b”, and “c”.
a=a
0+2αz (2)
b=b0 (3)
c=c
0
+A(fM,z)=c0+2αzfM (=afM+b) (4)
As apparent from Equations (2) and (4), the attenuation correction unit 333b performs the correction such that the larger the reception depth z of ultrasound, the larger becomes the correction amount. Moreover, according to Equation (3), the correction on the intercept is the identity transformation. This is because the intercept is a frequency component corresponding to frequency 0 (Hz) and is not influenced by the attenuation.
I=af+b=(a0+2αz)f+b0 (5)
As apparent from Equation (5), the straight line L1 has a larger slope (a>a0) and the same intercept (b=b0) in comparison with the straight line L10 before the attenuation correction.
The optimal attenuation factor setting unit 333c sets an attenuation factor candidate value in which a statistical variation in the corrected feature that the attenuation correction unit 333b has calculated for each attenuation factor candidate value with respect to all frequency spectra is smallest as an optimal attenuation factor. In the present embodiment, a variance is used as a quantity indicating the statistical variation. In this case, the optimal attenuation factor setting unit 333c sets an attenuation factor candidate value in which a variance is smallest as an optimal attenuation factor. Two corrected features are independent among the three corrected features a, b, and c. Moreover, the corrected feature b does not depend on an attenuation factor. Therefore, when an operating time is set for the corrected features a and c, the optimal attenuation factor setting unit 333c may calculate a variance of any one of the corrected features a and c.
However, the corrected feature used when the optimal attenuation factor setting unit 333c sets the optimal attenuation factor is preferably the same type as the corrected feature used when a feature image data generation unit 342 generates feature image data. That is, it is preferable that a variance of the corrected feature a is applied when the feature image data generation unit 342 generates feature image data using a slope as a corrected feature and that a variance of the corrected feature c is applied when the feature image data generation unit 342 generates feature image data using a mid-band fit as a corrected feature. This is because Equation (1) that gives an attenuation amount A(f,z) is an ideal equation and practically, Equation (6) below is appropriate.
A(f,z)=2αzf+2α1z (6)
α1 of the second term on the right side of Equation (6) is a coefficient indicating the magnitude of a change in a signal intensity changing in proportion to the reception depth z of ultrasound and is a coefficient indicating the change in a signal intensity occurring due to non-uniformity of an observation target tissue or a change in the number of channels during beam synthesis. Since the second term on the right side of Equation (6) is present, when feature image data is generated using a mid-band fit as a corrected feature, it is possible to correct attenuation accurately by setting the optimal attenuation factor using a variance of the corrected feature c (see Equation (4)). On the other hand, when feature image data is generated using a slope which is a coefficient proportional to frequency f, it is possible to correct attenuation accurately while eliminating the influence of the second terminal on the right side by setting the optimal attenuation factor using a variance of the corrected feature a. For example, the unit of the coefficient α1 is dB/cm when the unit of the attenuation factor α is dB/cm/MHz.
Here, the reason why an optimal attenuation factor can be set on the basis of a statistical variation will be described. It is thought that, when an attenuation factor optimal for an observation target is applied, a feature converges to a value unique to the observation target and a statistical variation decreases regardless of the distance between the observation target and the ultrasound transducer 21. On the other hand, when an attenuation factor candidate value that is not suitable for an observation target is set as an optimal attenuation factor, since attenuation correction is excessive or insufficient, it is thought that a variation occurs in the feature according to the distance between the observation target and the ultrasound transducer 21 and a statistical variation of the feature increases. Therefore, an attenuation factor candidate value in which the statistical variation is smallest can be said to be an optimal attenuation factor of the observation target.
The valid region determining unit 334 determines whether a target region is a region that does not include a noise region and is a region (a valid region) valid for generating a feature image on the basis of the feature calculated by the feature calculation unit 333. Here, a noise region is a low echo region and is a region that includes water, a cyst, distant noise, or the like. A low echo region contains many noise components and it may be difficult to calculate a feature appropriately.
The valid region determining unit 334 calculates an average value of features calculated by the feature calculation unit 333 for each of division regions (division regions RS1 to RS9) and compares the average value with a predetermined threshold to thereby determine whether a determination target region is a valid region. Specifically, the valid region determining unit 334 determines that the division region is a valid region when an average value of the corrected features c in the determination target division regions among the corrected features c (mid-band fit) calculated by the attenuation correction unit 333b is equal to or larger than a threshold and determines that the division region is not a valid region (is a non-valid region) when the average value is smaller than the threshold. The threshold mentioned herein is a value set on the basis of a value of a mid-band fit calculated from an echo signal of a low echo region when a valid region or a non-valid region is determined using a mid-band fit, for example, as described above. The valid region determining unit 334 functions as a comparison unit.
The image processing unit 34 is configured to include a B-mode image data generation unit 341 that generates B-mode image data which is an ultrasound image to be displayed by converting the amplitude of an echo signal to a luminance and a feature image data generation unit 342 that generates feature image data in which the feature calculated by the feature calculation unit 333 is displayed together with the B-mode image in correlation with visual information.
The B-mode image data generation unit 341 generates the B-mode image data by performing signal processing using known techniques such as gain processing and contrast processing on the B-mode reception data received from the signal processing unit 32 and performing data thinning according to a data step width determined according to the display range of images on the display device 4. The B-mode image is a grayscale image in which the values of R (red), G (green), and B (blue) which are variables when an RGB color system is used as a color space are matched.
The B-mode image data generation unit 341 performs coordinate transformation for rearranging the B-mode reception data from the signal processing unit 32 so that the scanning range can be spatially correctly expressed and, after that, performs interpolation between the B-mode reception data to fill gaps between the B-mode reception data and generate the B-mode image data. The B-mode image data generation unit 341 outputs the generated B-mode image data to the feature image data generation unit 342.
The feature image data generation unit 342 generates feature image data by superimposing visual information related to the features calculated by the feature calculation unit 333 on each pixel of the image in the B-mode image data. The feature image data generation unit 342 allocates, for example, to a pixel region corresponding to the data amount of one sample data group Fj (j=1, 2, . . . , K) illustrated in
Here, the feature image data generated by the feature image data generation unit 342 is such image data that a feature image of a region corresponding to a region of interest (ROI) segmented by a specific depth width and a sound ray width in a scanning region S is displayed on the display device 4.
The control unit 36 is realized using a general purpose processor such as a CPU having computation and control functions or specific purpose integrated circuit such as an ASIC or an FPGA. The control unit 36 reads the information stored and retained by the storage unit 37 from the storage unit 37 and executes various computation processes related to a method of operating the ultrasound observation device 3, so as to control the ultrasound observation device 3 in a unified manner. It is also possible to configure the control unit 36 using a general purpose processor common to the signal processing unit 32 and the computing unit 33 or a specific purpose integrated circuit.
The storage unit 37 stores the plurality of features calculated for each frequency spectrum by the feature calculation unit 333 and the image data generated by the image processing unit 34. Moreover, the storage unit 37 includes a feature information storage unit 371 that stores a plurality of features calculated for each frequency spectrum according to an attenuation factor candidate value by the attenuation correction unit 333b and a variance that gives a statistical variation of the plurality of features in correlation with the attenuation factor candidate value, a determination information storage unit 372 that stores a threshold for allowing the valid region determining unit 334 to determine whether a determination target region is a valid region, and an attenuation factor information storage unit 373 that stores an attenuation factor for calculating a corrected feature before the determination of the valid region determining unit 334 and an attenuation factor for performing attenuation correction on the feature of a region which is determined to be a non-valid region by the valid region determining unit 334.
In addition to the above-mentioned information, the storage unit 37 stores, for example, information necessary for the amplification process (a relationship between the amplification factor and the reception depth illustrated in
Moreover, the storage unit 37 stores various programs including an operation program for executing the method of operating the ultrasound observation device 3. The operation program may also be recorded on a computer-readable recording medium such as a hard disk, a flash memory, a CD-ROM, a DVD-ROM, or a flexible disk and distributed widely. Moreover, the above-described various programs may also be acquired by downloading via a communication network. The communication network mentioned herein is realized by, for example, an existing public line network, a local area network (LAN), a wide area network (WAN), and the like and may be wired or wireless.
The storage unit 37 having the above configuration is realized using a read only memory (ROM) in which various programs and the like are preliminarily installed, a random access memory (RAM) for storing computation parameters and data of each process, and the like.
Upon receiving the echo signal from the ultrasound transducer 21, the signal amplification unit 311 amplifies the echo signal (Step S2). Here, for example, the signal amplification unit 311 performs amplification (STC correction) of the echo signal on the basis of the relationship between the amplification factor and the reception depth illustrated in
Subsequently, the B-mode image data generation unit 341 generates a B-mode image data using the echo signal amplified by the signal amplification unit 311 and outputs the B-mode image data to the display device 4 (Step S3). Upon receiving the B-mode image data, the display device 4 displays a B-mode image corresponding to the B-mode image data (Step S4).
The amplification correction unit 331 performs amplification correction on the signal output from the transceiving unit 31 so that the amplification factor is constant regardless of the reception depth (Step S5). Herein, for example, the amplification correction unit 331 performs amplification correction such that the relationship between the amplification factor and the reception depth illustrated in
After that, the frequency analysis unit 332 calculates frequency spectra for all the sample data groups by performing frequency analysis using the FFT process (Step S6: frequency analysis step).
First, the frequency analysis unit 332 sets a counter k for identifying an analysis target sound ray as k0 (Step S21).
Subsequently, the frequency analysis unit 332 sets an initial value Z(k)0 of a data position (corresponding to a reception depth) Z(k) representing a series of data groups (sample data groups) acquired for the FFT process (Step S22). For example,
After that, the frequency analysis unit 332 acquires the sample data group (Step S23), and applies a window function stored in the storage unit 37 to the acquired sample data group (Step S24). In this manner, by applying the window function to the sample data group, it is possible to prevent the sample data group from becoming discontinuous at the boundary and to prevent artifacts from occurring.
Subsequently, the frequency analysis unit 332 determines whether the sample data group at the data position Z(k) is a normal data group (Step S25). As described with reference to
As a result of the determination in Step S25, in a case where the sample data group at the data position Z(k) is normal (Step S25: Yes), the frequency analysis unit 332 proceeds to Step S27 to be described later.
As a result of the determination in Step S25, in a case where the sample data group at the data position Z(k) is not normal (Step S25: No), the frequency analysis unit 332 generates a normal sample data group by inserting zero data corresponding to the shortage (Step S26). In the sample data group (for example, the sample data group FK in
In Step S27, the frequency analysis unit 332 performs the FFT process using the sample data group to obtain a frequency spectrum which is the frequency distribution of amplitude (Step S27).
Subsequently, the frequency analysis unit 332 changes the data position Z(k) by the step width D (Step S28). It is assumed that the storage unit 37 previously stores the step width D. In
After that, the frequency analysis unit 332 determines whether or not the data position Z(k) is larger than the maximum value Z(k)max on the sound ray SRk (Step S29). In a case where the data position Z(k) is larger than the maximum value Z(k)max (Step S29: Yes), the frequency analysis unit 332 increments the counter k by 1 (Step S30). This means that the process is shifted to an adjacent sound ray. On the other hand, in a case where the data position Z(k) is equal to or smaller than the maximum value Z(k)max (Step S29: No), the frequency analysis unit 332 returns to Step S23. In this manner, the frequency analysis unit 332 performs the FFT process on [(Z(k)max−Z(k)0+1/D+1] sample data groups on the sound ray SRk. Here, [X] represents the largest integer not exceeding X.
After Step S30, the frequency analysis unit 332 determines whether or not the counter k is larger than the maximum value kmax, (Step S31). In a case where the counter k is larger than the maximum value kmax (Step S31: Yes), the frequency analysis unit 332 ends a series of the frequency analysis processes. On the other hand, in a case where the counter k is equal to or smaller than the maximum value kmax (Step S31: No), the frequency analysis unit 332 returns to Step S22. The maximum value kmax is set to a value arbitrarily entered by the user such as a doctor through the input unit 35 or set in advance in the storage unit 37.
In this manner, the frequency analysis unit 332 performs the FFT process multiple times for each of (kmax−k0+1) sound rays within the analysis target region. The result of the FFT process is stored in the feature information storage unit 371 together with the reception depth and the reception direction.
Following the frequency analysis process in Step S6 described above, the feature calculation unit 333 calculates the pre-correction features of the plurality of frequency spectra, performs the attenuation correction for eliminating the influence of the attenuation of ultrasound on the pre-correction feature of each frequency spectrum in each of a plurality of attenuation factor candidate values that give different attenuation characteristics when ultrasound propagates through an observation target to calculate the corrected feature of each frequency spectrum, and sets an attenuation factor optimal for the observation target among a plurality of attenuation factor candidate values using the corrected feature (Steps S7, S8, and S10 to S18: feature calculation step). Hereinafter, the processes of Steps S7 to S18 will be described in detail.
In Step S7, the approximation unit 333a performs the regression analysis on each of the frequency spectra generated by the frequency analysis unit 332 to calculate the pre-correction feature corresponding to each frequency spectrum (Step S7). Specifically, the approximation unit 333a approximates each frequency spectrum with a linear equation by performing the regression analysis and calculates the slope a0, the intercept b0, and the mid-band fit c0 as pre-correction features. For example, the straight line L10 illustrated in
Subsequently, the attenuation correction unit 333b calculates the corrected feature by performing the attenuation correction using the predetermined attenuation factor stored in the attenuation factor information storage unit 373 on the pre-correction feature approximated to each frequency spectrum by the approximation unit 333a (Step S8). The straight line L1 illustrated in
When the corrected feature is calculated in Step S8, the valid region determining unit 334 determines whether a determination target division region is a valid region or a non-valid region using the corrected feature (Step S9: comparing step). In the present embodiment, the corrected feature c (mid-band fit) is used, and it is determined that the division region is a valid region if the average value of the corrected feature c is equal to or larger than the threshold and determines that the division region is a non-valid region if the average value is smaller than the threshold by referring to the determination information storage unit 372. Here, when the valid region determining unit 334 determines that the determination target division region is a valid region (Step S9: Yes), the control unit 36 proceeds to Step S10. On the other hand, when the valid region determining unit 334 determines that the determination target division region is a non-valid region (Step S9: No), the control unit 36 proceeds to Step S17.
In Step S10, the optimal attenuation factor setting unit 333c sets the value of the attenuation factor candidate value α to be applied when performing attenuation correction to be described later to a predetermined initial value α0 (Step S10). The value of the initial value α0 may be stored in advance in the storage unit 37 so that the optimal attenuation factor setting unit 333c refers to the storage unit 37.
Subsequently, the attenuation correction unit 333b performs attenuation correction using the attenuation factor candidate value α with respect to the pre-correction feature that the approximation unit 333a has approximated for each frequency spectrum to calculate the corrected feature and stores the corrected feature in the feature information storage unit 371 together with the attenuation factor candidate value α (Step S11).
In Step S11, the attenuation correction unit 333b calculates the corrected feature by inserting the data position Z=(fsp/2vs)Dn obtained using the data array of the sound rays of ultrasound signals to the reception depth z in Equations (2) and (4) described above. Here, fsp is the data sampling frequency, vs is the sound velocity, D is the data step width, and n is the number of data steps from the first data of the sound ray to the data position of the sample data group to be processed. For example, if the data sampling frequency fsp is 50 MHz, the sound velocity vs is 1530 m/sec, and the data arrangement illustrated in
The optimal attenuation factor setting unit 333c calculates a variance of a representative corrected feature among a plurality of corrected features obtained by the attenuation correction unit 333b performing attenuation correction on each frequency spectrum and stores the variance in the feature information storage unit 371 in correlation with the attenuation factor candidate value α (Step S12). When the corrected feature is the slope a and the mid-band fit c, the optimal attenuation factor setting unit 333c calculates a variance of the corrected feature c, for example. In Step S13, it is preferable that the optimal attenuation factor setting unit 333c applies a variance of the corrected feature a when the feature image data generation unit 342 generates feature image data using a slope and applies a variance of the corrected feature c when the feature image data generation unit 342 generates feature image data using a mid-band fit.
After that, the optimal attenuation factor setting unit 333c increases the value of the attenuation factor candidate value α by Δα (Step S13) and compares the attenuation factor candidate value α after the increase with a predetermined maximum value αmax (Step S14). When the comparison result in Step S14 shows that the attenuation factor candidate value α is larger than the maximum value αmax (Step S14: Yes), the ultrasound observation device 3 proceeds to Step S15. On the other hand, when comparison result in Step S14 shows that the attenuation factor candidate value α is equal to or smaller than the maximum value αmax (Step S14: No), the ultrasound observation device 3 returns to Step S11.
In Step S15, the optimal attenuation factor setting unit 333c sets an attenuation factor candidate value of which the variance is the smallest as an operating time by referring to the variances of respective attenuation factor candidate values stored in the feature information storage unit 371 (Step S15).
The approximation unit 333a may calculate a curve that interpolates the value of a variance S(α) at the attenuation factor candidate value α by performing regression analysis before the optimal attenuation factor setting unit 333c sets the optimal attenuation factor. After that, the minimum value S(α)′min in a range of 0 (dB/cm/MHz)≤α≤1.0 (dB/cm/MHz) may be calculated for this curve, and the value α′ of the attenuation factor candidate value at that time may be set as the optimal attenuation factor. In the case of
For each pixel in the B-mode image data generated by the B-mode image data generation unit 341, the feature image data generation unit 342 generates feature image data by superimposing the visual information (for example, hue) correlated with the corrected feature based on the optimal attenuation factor set in Step S15 on the position corresponding to the determination target division region and adding the information on the optimal attenuation factor thereto (Step S16: feature image data generation step).
In Step S17, the attenuation correction unit 333b calculates a corrected feature by performing attenuation correction on the pre-correction feature that the approximation unit 333a has approximated to each frequency spectrum by referring to the attenuation factor information storage unit 373 and stores the calculated corrected feature in the feature information storage unit 371 (Step S17). Here, the attenuation factor in the non-valid region is set to an arbitrary value in the range of 0.0 to 2.0 (dB/cm/MHz).
For each pixel in the B-mode image data generated by the B-mode image data generation unit 341, the feature image data generation unit 342 generates feature image data by superimposing the visual information (for example, hue) correlated with the corrected feature calculated in Step S17 on the position corresponding to the determination target division region and adding the information on the attenuation factor thereto (Step S18: feature image data generation step).
In Step S19, the control unit 36 determines whether a subsequent determination target division region is present (Step S19). Here, the control unit 36 proceeds to Step S20 when it is determined that the subsequent determination target division region is not present (Step S19: No). On the other hand, the control unit 36 returns to Step S9 when it is determined that the subsequent determination target division region is present (Step S19: Yes).
After that, in Step S20, under the control of the control unit 36, the display device 4 displays a feature image corresponding to the feature image data generated by the feature image data generation unit 342 (Step S20).
In the above-described series of processes (Steps S1 to S20), the process of Step S3 and the processes of Steps S5 to S19 may be performed in parallel.
According to an embodiment of the disclosure described above, the valid region determining unit 334 determines whether each division region of the region of interest R is a valid region or a non-valid region that includes a noise region on the basis of the corrected feature, and the feature calculation unit 333 calculates the corrected feature on the basis of the optimal attenuation factor or calculates the corrected feature using a predetermined attenuation factor according to the determination result. Therefore, it is possible to calculate the feature appropriately even when a noise region is included.
According to the present embodiment, an attenuation factor optimal for an observation target is set among a plurality of attenuation factor candidate values that give different attenuation characteristics when ultrasound propagates through the observation target and the feature of each of the plurality of frequency spectra is calculated by performing attenuation correction using the optimal attenuation factor. Therefore, it is possible to obtain attenuation characteristics of the ultrasound suitable for the observation target with simple computation and to perform observation using the attenuation characteristics.
According to the present embodiment, since the optimal attenuation factor is set on the basis of the statistical variation of the corrected feature obtained by performing attenuation correction on each frequency spectrum, it is possible to reduce the amount of computation as compare to a conventional technique that performs fitting with a plurality of attenuation models.
In the present embodiment, although the valid region determining unit 334 determines whether each division region is a valid region or a non-valid region using the average value of the corrected features c related to the frequency feature as a physical quantity, the physical quantity is not limited thereto. The physical quantity may be a largest value, a smallest value, or a most frequent value without being limited to the average value. In the embodiment described above, although the corrected feature c is used as the physical quantity, examples of the other physical quantities include the corrected feature a related to the frequency feature, the luminance of a B-mode image that is not related to the frequency feature, a spectrum intensity, a value correlated with the spectrum intensity, a change in an elastography, a sound velocity, and the like. The physical quantity is preferably related to a feature used when generating feature image data. When the physical quantity is not related to the frequency feature, the valid region determining unit 334 may determine whether the region of interest is a valid region on the basis of the physical quantity before the feature calculation unit 333 calculates the corrected feature.
In the present embodiment, for example, the optimal attenuation factor setting unit 333c may calculate optimal attenuation factor corresponding values corresponding to optimal attenuation factors in all frames of an ultrasound image and may set an average value, a median value, or a most frequent value of a predetermined number of optimal attenuation factor corresponding values including the optimal attenuation factor corresponding value in a latest frame. In this case, a change in the optimal attenuation factor is smaller than in the case of setting the optimal attenuation factor in each frame, and the value thereof can be stabilized.
In the present embodiment, the optimal attenuation factor setting unit 333c may set the optimal attenuation factor at a predetermined frame interval of the ultrasound image. In this way, it is possible to reduce the amount of computation dramatically. In this case, when the next optimal attenuation factor is set, the value of the optimal attenuation factor set lastly may be used.
In the present embodiment, although division regions obtained by dividing the trapezoidal region of interest R in a lattice form are set, a region of interest and/or a division region formed by a straight line or a curve extending along the same depth and a straight line extending in a depth direction may be used, and a segment set in a sound ray may be used as a division region.
In the present embodiment, the input unit 35 may be configured to receive the input of a change in the setting of the initial value α0 of the attenuation factor candidate value.
In the present embodiment, a standard deviation, a difference between the largest value and the smallest value of features in a population, or a half-value width of a feature distribution may be used as an example of the quantity that gives a statistical variation. A reciprocal of a variance may be used as the quantity that gives a statistical variation. In this case, an attenuation factor candidate value of which the reciprocal of the variance is the largest is naturally the optimal attenuation factor.
In the present embodiment, the optimal attenuation factor setting unit 333c may calculate the statistical variations of a plurality of types of corrected features and set an attenuation factor candidate value of which the statistical variation is the smallest as the optimal attenuation factor.
In the present embodiment, the attenuation correction unit 333b may calculate the corrected feature by performing attenuation correction on the frequency spectrum using a plurality of attenuation factor candidate values and allowing the approximation unit 333a to perform regression analysis on each frequency spectrum after the attenuation correction.
In the present embodiment, although the feature is calculated for the region of interest only, the feature may be calculated without designating a particular region.
As described above, the disclosure may include various embodiments within the scope without departing from the technical idea described in the claims.
According to some embodiments, it is possible to calculate a feature appropriately even when a noise region is included.
As described above, the ultrasound observation device, the method of operating the ultrasound observation device, and the computer-readable recording medium according to the disclosure are useful for calculating the feature appropriately even when a noise region is included.
Additional advantages and modifications will readily occur to those skilled in the art. Therefore, the disclosure in its broader aspects is not limited to the specific details and representative embodiments shown and described herein. Accordingly, various modifications may be made without departing from the spirit or scope of the general inventive concept as defined by the appended claims and their equivalents.
Number | Date | Country | Kind |
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2015-233490 | Nov 2015 | JP | national |
This application is a continuation of PCT international application Ser. No. PCT/JP2016/084003 filed on Nov. 16, 2016 which designates the United States, incorporated herein by reference, and which claims the benefit of priority from Japanese Patent Application No. 2015-233490, filed on Nov. 30, 2015, incorporated
Number | Date | Country | |
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Parent | PCT/JP2016/084003 | Nov 2016 | US |
Child | 15992692 | US |