The present disclosure pertains to the field of medical imaging, and more particular to the segmentation of medical images to allow for accurate calculation of the volumes of structures of interest within the medical images.
Medical imaging, including X-ray, magnetic resonance (MR), computed tomography (CT), ultrasound, and various combinations of these techniques are utilized to provide images of internal patient structure for diagnostic purposes as well as for interventional procedures. One application of medical imaging (e.g., 3D imaging) is the measurement of volume and/or assessment of shape of internal structures of interest. These measurements typically require segmentation of image data, to separate structures of interest from the background, such that accurate calculations may be made.
One area where measurement of shape and volume is utilised is in the detection of prostate cancer. As will be appreciated, prostate cancer is one of the most common types of cancer among American men. Typically for a physician to diagnose prostate cancer, a biopsy of the prostate is performed. Biopsies are typically performed on patients that have either a suspect digital rectal exam (DRE) or abnormal PSA levels. PSA or ‘prostate-specific antigen’ is a protein produced by the cells of the prostate gland. A PSA test measures the level of PSA in the blood. In this regard, a doctor takes a blood sample, and the amount of PSA is measured in a laboratory.
Volume assessment of the prostate is an important and integral part of the decision to perform a biopsy. That is, the decision to perform biopsy in patients with abnormal PSA levels can be bolstered by PSA density (PSAD), which is defined as the PSA level divided by the prostate volume. In this regard, an expected PSA value may be based at least in part on the volume of a given prostate volume. The volume of the prostate gland can also be used to determine treatment options. Accordingly, it is important to identify the boundaries of the prostate from a medical image such that an accurate volume determination of the prostate can be made.
In addition, biopsy of the prostate requires guidance to a desired location. Such guidance may be provided by transrectal ultrasound imaging (TRUS). In such an application, a 3D image of the prostate may be generated to allow guidance of a biopsy needle to a prostate location of interest. As with volume determination, it is important that the boundaries of the prostate are identified from a medical image in order to allow for accurate biopsy guidance.
Unfortunately, boundary identification (e.g., segmentation) inn medical images is sometimes difficult. Even manual segmentation of medical images, such as ultrasound images, is difficult given the low signal to noise ratio and the presence of imaging artifacts.
Segmentation of the ultrasound prostate images is a very challenging task due to the relatively poor image qualities. In this regard, segmentation has often required a technician to at least identity an initial boundary of the prostate such that one or more segmentation techniques may be implemented to acquire the actual boundary of the prostate. Generally, such a process of manual boundary identification and subsequent processing has made real time imaging (e.g., generating a segmented image while a TRUS remains positioned) of the prostate impractical. Rather images have been segmented after an imaging procedure to identify structures of interest. Accordingly, subsequent biopsy would require repositioning of a TRUS and alignment of the previous image with a current position of the prostate.
Provided herein are systems and methods (i.e., utilities) that allow for automated segmentation of medical images, including, without limitation, ultrasound prostate images. In this regard, the utilities may be implemented in processing systems that are integrated into medical imaging devices and/or that are interconnected to the medical imaging devices and operative to receive data therefrom. The ability to identify and segment structures within medical images in the automated process allows for such segmentation to be done substantially in real time. In this regard, such segmentation may be done while a patient remains in view of the imaging device. Accordingly, this may allow for guidance to the structure of interest without repositioning the patient.
According to a first aspect, an automated method for use in obtaining a boundary of a structure within a medical image is provided. The method includes obtaining a two-dimensional image including a structure of interest. A center point is identified within the structure of interest in an automated process. Once such a center point is identified, a plurality of radial lines may be extended from the center point. Energy values along the radial lines may be identified in order to identify a boundary of the structure of interest. That is, energy along the radial lines may change within the image based on differences between the structure of interest and the surrounding tissue. Accordingly, by identifying such differences in energy values, edge points associated with the structure may be identified in each radial line. Likewise, such edge points may be connected with a curve to define at least a first boundary.
It will be appreciated that, due to irregularities, artifacts and/or speckling within the medical image, the energy values along each radial line may fluctuate, which may result m identification of one or more false edge points. Accordingly, a related aspect involves eliminating false edge points from a plurality of potential edge points. In one arrangement, a prior shape model is utilized for such edge point elimination. In one arrangement, calculating the energy value along each radial line includes calculating a least-squares value and a gradient value. These values may be added together. Further, smoothing may be done on the resulting values along the length of the radial lines. In such an arrangement, multiple maxima values rosy be identified along the length of the radial lines. Initially, the largest maxima value in each radial line may be initially selected as a likely candidate position for the edge point of the structure of interest. An ellipse may be fit to these points in order to allow for aligning a predetermined shape model with these points. Once the ellipse is fit to the initial points, the shape model may be aligned with the initial points. At this time, the shape model may be expanded and contracted in order to define a narrow band region.
Once a narrow band region is determined, maxima points on each radial line outside of the narrow band may be disregarded/eliminated. Accordingly, the largest remaining maxima value in each radial line within the narrow band may then be selected and plotted. Again, an ellipse may be fit to these points and a prior shape model may be fit to the points; A new narrow band may then be redefined, and the process may be repeated until, for example, there is no change between successive iterations.
At this time, the remaining maxima points may be connected with a closed curve that defines an intermediate boundary. This closed curve may then be expanded and contracted to define a second narrow band region. Tins curve may also define a level set function. The level set function may be initiated by setting image values inside the curve as negative values and image values outside the curve as positive values, or vice versa. In any case, the curve within the second narrow band may be an active contour, and by minimising the level set function, an actual boundary of the structure of interest may be identified.
In conjunction with identification of a boundary, the utility may further include a related aspect wherein boundary calibration is performed. Such boundary calibration may include bump removal processes, smoothing processes and/or bias correction processes. In relation to bump removal processes, the curvature of an identified boundary may be examined to identify irregularities. For instance, when curvature exceeds a predetermined threshold, a start and/or end point of a bump/irregularity in the boundary may be identified. By identifying these start and end points, a smooth curve may be fit therebetween, effectively removing the hump from the curvature. The smoothing process may include identifying, predetermined regions of the prostate and applying correspondingly predetermined smoothing processes for those regions. Finally, bias correction may allow for applying corrections to the final boundary based on differences between the identified boundary and predetermined shape models.
In any aspect, the two-dimensional images may be downsized in order to reduce the processing requirements and thereby enhancing the speed of the segmentation process. For instance, one or more wavelet transforms may be applied to the initial image in order to reduce the size of the image without losing image information. Accordingly, the reduced image size may allow for reducing the total amount for processing. In this regard, segmentation may be performed on the downsized image in order to find a boundary of the structure of interest. Once the boundary is identified, the boundary and/or the downsized image may be rescaled to the original size of the original image. Likewise, the resized boundary may be applied to an original copy of the two-dimensional image in order to illustrate the boundary thereon and/or utilize the boundary for calculation purposes.
According to another aspect, the method for automated center point detection is provided. The method includes obtaining a two-dimensional image including the structure of interest therein. A plurality of lines (e.g., parallel lines) may be extended through the two-dimensional image. A portion of these lines may pass through the structure of interest. By identifying energy intensities along these lines, rough edge boundaries of the structure of interest may be identified along the length of each line. Accordingly, by determining the midpoint of the structure of interest between these edge boundaries in each of these lines, midpoint information for the structure of interest in each line, may be identified. A weighted average of this midpoint information may be utilized to determine a center point for the structure of interest. Furthermore, the process may be repeated for a plurality of two-dimensional slices of a 3-D image. Accordingly, a centroid for the 3-D image may be generated.
Though discussed above in relation to two-dimensional images, it will be appreciated that all of the aspects may be applied to a plurality of two-dimensional images in order to generate information for a common 3-D image/structure.
a illustrates a motorized scan of the TRUS of
b illustrates two-dimensional images generated by the TRUS of
c illustrates a 3-D volume image generated from the two dimensional images of
a illustrates a two-dimensional prostate image.
b illustrates a downscaled version of the two-dimensional prostate image of
c illustrates the two-dimensional prostate image of 3a having radial lines extending from an identified center point and a narrow band region.
d illustrates capture of the prostate boundary in a narrow band region.
a and 17b illustrate hump removal from different regions of the prostate.
Reference will now be made to the accompanying drawings, which assist in illustrating the various pertinent features of the present disclosure. Although the present disclosure is described primarily in conjunction with transrectal ultrasound imaging for prostate imaging, it should be expressly understood that aspects of the present invention might be applicable to other medical imaging applications. In this regard, the following description is presented for purposes of illustration and description.
In the process disclosed herein, a prostate capsule volume computation is made with an automated segmentation method using 2-D ultrasound image. In this process, a 3-D ultrasound prostate image is sliced into the series of contiguous 2-D images, in either a rotational manner, about an axis approximately through the center of the prostate, with a uniform angular spacing (e.g., 3°), or in a parallel manner, with a uniform spacing (e.g. 1 mm). Segmentation for the 2D ultrasound images is a complex process due to speckle in ultrasound images and motion artifacts in biopsy applications. In the present process, an automated multi-resolution method is used for the segmentation of the 2D images. This process includes 5 stages of which are novel alone as well as in combination: (a) Down-Sampling of the 2d image, (b) initial boundary estimation, (c) final boundary estimation, (d) boundary correction and, (e) scale-space method for the final boundary. In step (b), an integrated method may be used to obtain the initial boundary: the radial lines emit from a point inside the prostate towards the edge extending into the search region band. Then with the help of ellipse fitting, a prior shape contour it aligned to the initial points. Around the contour, a narrow band is generated. Based on the gradient information in the narrow band (this narrow band is larger than that in the next step), an edge of the prostate is estimated. A prior shape contour is fit to the estimated points as the initial curve boundary. This initial curve is then used as a basis for estimating the second narrow band region, in which the final estimated boundary is computed. In step (c) to refine the boundary of the prostate, the prostate is modeled in another narrow band region as combination of homogeneous regions with different gray levels and the energy functional is minimized based on the regional information of the image. This strategy is implemented in a level set framework. In step (d), a bump removal algorithm is applied which is based on the segmentation results from step (c). A final boundary is determined and applied to the original image.
As shown in
In order to generate an accurate three-dimensional image of the prostate for biopsy and/or other diagnostic purposes, the present disclosure provides an improved method for segmentation of ultrasound images. As will be appreciated, ultrasound images often do not contain sharp boundaries between a structure of interest and background of the image. That is, while a structure, such as a prostate, may be visible within the image, the exact boundaries of the structure may be difficult to identify in an automated process. The system utilizes a narrow band estimation system that allows the specification of a limited volume of interest within an image to identify boundaries of the prostate. This allows for avoiding rendering the entire volume of the image, which may slow the process or be excessively computationally intensive. To further reduce the computational requirements, the present utility may down sample the prostate images prior to segmentation. As may be appreciated, various wavelength transforms may be applied to an image to reduce the data size of the image without substantially affecting (i.e., while preserving) the information within the image.
a illustrates a prostate within an ultrasound image. In practice, the boundary of the prostate 12 would not be as clearly visible as shown in
In order to perform a narrow band volume rendering, an initial estimate of the boundary must be obtained. As will be discussed herein, this initial estimation may be provided using gradient and least squares energies as well as using a predetermined shape model, which may be based on age and/or ethnicity of the patient. The shape model may be fit to initial points determined by energies along predetermined radials within the image to provide an initial boundary 12. This initial boundary 12 may be expanded or contracted to generate an inner 14 and outer 16 boundaries See
As discussed herein, an automated boundary estimation system is provided for computing the boundary of the individual ultrasound images (e.g., individual images or slices of a plurality of images that may be combined together to generate a volume). The boundary estimation system is operative to generate boundary information slice by slice for an entire volume. Accordingly, once the boundaries are determined, volumetric information may be obtained and/or a detailed image may be created for use in, for example, guiding a biopsy needle. Further, the system operates quickly, such that the detailed image may be generated while a TRUS probe remains positioned relative to the prostate. That is, an image may be created in substantially real-time.
The gray scale processor 406 of
The automatic initial contour processor 504 is further illustrated in
In conjunction with the identification of the center point and radial line generation, a gradient calculation 610 is performed. This gradient calculation provides a gradient 612 of the images and a convolution processor 614 smoothes the gradient image using a Gaussian kernel. In this process, we used a 1-D convolution strategy instead of the 2D convolution, which is more time consuming. This produces a smoothed gradient image 616, which is provided to the radial search processor 620. The purpose of smoothing the image is to low-pass filter the ultrasound images to substantially eliminate the high-frequency noises and speckles. The radial search processor utilizes the center point, radial line and gradient information to generate a raw boundary 622, as will be further discussed herein. This radial search processor 620 generates an initial raw boundary for fitting.
Center Calculation Processor
The center calculation processor utilizes a down-sampled imaged to automatically detect the center point of that image. As shown in
To fit the square wave the cost function we needs to minimized with regards to the positions.
Where B1 and B2 are the boundaries of the signal, a and w are the positions to detect, h1, h2 and h3 are the average values in the integration region.
Taking derivatives of the function;
Using a gradient method, optimal positions are searched for and the prostate center is the square wave center.
For the real image data, based on these weighted averages, the center point for each two-dimensional image may be determined. Further, the information from the plurality of two-dimensional images may be combined to identify a centroid of the three-dimensional image. As will be appreciated, this process allows for the automatic center point determination within the prostate. This in conjunction with the radial line generation and edge point detection, described herein, allows for full automation of the segmentation process.
Accordingly, once this center point/centroid is identified, radial lines may be generated (See
The radial search processor is illustrated in
Here, G is the windowed gradient; s is the signal obtained by windowed average; p is the position to separate the signal; N is the total number of signal points; C1 and C2 are the average values of each signal parts; and A and B are the weights of the two energy terms with the same value 1. Note that the first term is the windowed gradient value at position p, and the second term is the least square value of a piece-wise constant approximation of the signal.
The goal is to maximize the following energy at each of the radial lines:
Etot(i)=EG(i)−ELS(i)−c*ECL(i) (4)
Where EG is the gradient energy, ECL is the contour length energy, and c is the weight of be contour length energy is called the external energy. EG and ELS are independent of other points of the contour, while ECL (internal energy) is dependent with other points. Since the necessary condition of the position where edge point resides is that the energy term be a local maxima.
That is, the windowed gradient energy and least-squares energy is calculated for each radial line. These two energies are added together and represent an indication of the energy along the radial line. This is performed in an initial segmentation processor 1006. The initial segmentation processor 1006 may smooth the energy curve with a low pass filter to find local maximum along the radial lines, which are candidate positions for the actual edge of the prostate. Such a smoothed radial line with multiple maxima is illustrated in
Shape Model
A shape model may be generated from a database of ultrasound volumes. Such ultrasound volumes may be compiled and segmented either manually or using a segmentation program to obtain several prostate ultrasound surfaces. These surfaces can be used to train a shape model. A shape model may include a mean shape and one or more vectors (e.g., Eigen vectors) that correspond to the principal modes of variation. The projections on these vectors can then be used to describe any shape resembling the training data accurately. The advantage of using shape models is that these projections may represent the direction of largest variance of the data. For instance, 10-15 such projections may adequately represent a large range of shapes accounting for more than 95% of the variance in the data. The projections can be either directly optimized to maximize the similarity between the given shape and the model or the model can be allowed to warp freely and can then be constrained by the requirements of the model that prevent the model from fitting (e.g., warping) into shapes that do not resemble a prostate. The generation and applications of such a shape model are further discussed in co-pending U.S. application Ser. No. 11/740,807, entitled, “Improved System and Method for 3-D Biopsy,” filed on Apr. 26 2007, the entire contents of which are incorporated herein by reference.
As noted above, the shape model finds an average shape for the prostate. However, prior to applying the shape model to the raw boundary defined by the initial points, the shape model must be aligned to a common frame of reference with the initial points. In this regard, an ellipse is fit to the initial maxima points in each radial having the largest energy value. As will be appreciated, the prostate is typically walnut-shaped, and an ellipse may be fit to a prostate in a common manner from prostate image to prostate image. Accordingly, as illustrated in
More specifically, an iterative process 1400 may be performed using a contour 1402 defined by maxima points in the narrow band. Energy may be updated 1404 for each radial line within the narrow band, and a new maximum may be found 1406. Accordingly, for the new maximum positions, a new contour 1408 may be generated. If the new contour is the same as the previous contour, the initial boundary is determined 1410. Alternatively, if the new contour is different from the previous contour, the process may be repeated, and new energy calculations may be made for each radial line and a new contour may be generated. This process may be repeated until little or no change occurs between successive contours. Once completed, the raw boundary is generated.
However, such a raw contour may include bumps or other deformities. In this regard, such bumps may result from selection of the incorrect maximum within the narrow band region. That is, the bump may be caused by speckles, shadows or dim edge information where the external energy is very low. However, it is recognized that these bumps may be removed by connecting the surface of the contour at either end of either bump with an appropriate curve. Bumps are automatically detected utilizing a threshold of change along the contour length. In this regard, a curvature calculation is performed on the initial raw boundary. Along a predetermined length of the contour, if a change in the curvature exceeds a predetermined threshold, the beginning of a bump region is identified. Likewise, the end of the bump region may be determined. Once the ends of the bump region are determined, they are replaced with a smooth curve. At this time, the initial raw boundary 630 is completed. See
Referring again to
Active contours, or “snakes”, are dynamic curves or surfaces that move within an image domain to capture desired image features. Lots of edge detection works are done based on the “snakes” model in the present process, the level set method is applied. In this method, the boundary of the object is implicitly expressed as the zero level of a 3-dimensional function, which is called the level set function. In the present process, a modified version Chan-Vese's “Active contour without edge” model is used in which the images are modeled as “piecewise constant”. The method is based on the knowledge about the ultrasound prostate images that the gray levels of the object region and the background region are different, and in the object region, the pixels are more “homogeneous”. The purpose of the method is to find out the minimum of the cost function:
Where the F is the level set function, I0 is the image at pixel (x, y), C1 and C2 are the average intensity in the inner and outer regions, which are separated by the contour, the others are the weights of the terms. Pt is the penalty term, which is new in our application:
where the first integration is the penalized term for keeping the level set function as signed distance function, which is also represented by P. The second integration is the penalized term to keep the level set function as a single connected curve, which is also represented by S. And s and p are the weight of each term. In the inner region (e.g., inside of the boundary within the narrow band), the level set function value will be kept as negative, while in the outer region (e.g., outside of the boundary within the narrow band), the level set function will be positive. The second term can avoid the “bleeding” of the contour and keep the contour continuous in the narrow band.
Basically the need is to take the gradient of the functional according to F and find the steepest descent, and then perform the finite difference calculation for updated F. After certain iterations, F will converge.
Fn+1=Fn+dt[Delta(Fn)(I1)I−C1)2+I2(I−C2)2+m1C(F)+sS(F))+pP(F)] (7)
After the final level set function F, is obtained, the edge can be obtained by getting the zero level set of F. There will be some irregularities in the final contour, however, down sampling the contour can make a smooth connection as the estimated boundary.
Correction Process
The calibration processor 410 provides a number of corrections to the intermediate boundary. Specifically, the process includes a bump removal process, a smooth boundary estimation process, as well as bias correction for a given imaging probe. These processes are illustrated in
a illustrates an intermediate boundary 1702 of a prostate. As shown, the prostate is divided into four regions for bump correction. Specifically, the prostate is divided into left and right peripheral regions, as well as an apex region (i.e., top region) and a base region (i.e., bottom region). These regions are defined relative to a center point of the image. As shown in
This process is illustrated in
The smoothing processor is illustrated in
Referring again to
The foregoing description of the present invention has been presented for purposes of illustration and description. Furthermore, the description is not intended to limit the invention to the form disclosed herein. Consequently, variations and modifications commensurate with the above teachings, and skill and knowledge of the relevant art, are within the scope of the present invention. The embodiments described hereinabove are further intended to explain best modes known of practicing the invention and to enable others skilled in the art to utilize the invention in such, or other embodiments and with various modifications required by the particular application(s) or use(s) of the present invention. It is intended that the appended claims be construed to include alternative embodiments to the extent permitted by the prior art.
This application claims priority under 35 U.S.C, §119 to U.S. Provisional Application No. 60/908,439 entitled, “AN IMPROVED METHOD OF OBJECT RECOGNITION SYSTEM,” and having a filing date of Mar. 28, 2007, the entire contents of which are incorporated herein by reference.
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