The present invention relates to the field of pre-operative diagnostics and, in particular, to pre-operative diagnostic systems and methods for measuring and assessing spine instability.
Lower back pain (LBP) is one of the most prevalent causes of disability and interferes with the ability to work and decreases quality of life. Such pain is multifactorial and can result from a variety of spinal pathologies, however, spinal instability is considered to be a significant cause. Damage to the vertebral bodies, intervertebral discs, laminae, spinous processes, articular processes, or facets of one or more spinal vertebrae can result in the vertebrae no longer properly articulating or aligning with each other. When one spinal segment deteriorates in this way, to the point of instability, it can lead to localized or radicular pain, spinal stenosis, an undesired anatomy, and/or loss of mobility.
The widespread prevalence of LBP is reflected in the high cost to society in general, as well as high costs associated with treating LBP. It has been reported that the approximately 50 million patients suffering from LBP cost society in the United States a total of $240 billion annually. Of these costs, $50 billion is spent on spine surgery, and approximately $6 billion being directly attributable to diagnostics alone. Orthopaedic interventions, such as spinal fusion surgery, have become the standard of care in the United States, however, oftentimes such interventions have relatively poor outcomes and morbidity following failure is significant.
The ineffectiveness of current diagnostic methods, to identify proper candidates for these interventions, is to a significant amount responsible for the failure to successfully treat spinal instability. The lack of effective diagnostics has resulted in the absence of an agreed upon diagnostic standard and standard treatment protocols. For the most part, qualitative interpretation of radiologic tests are typically relied on to measure spinal instability. For example, X-rays of the spine in the neutral position (standing straight) and in flexion and extension are used to determine the amount of space between vertebrae and the condition of the vertebrae. A CT scan may further be used to get a better look at the vertebrae and facet joints including any bone spurs and small or complex fractures that may be present. In most cases, an MRI is also used to check for soft tissue lesions such as a herniated disc, degeneration or sites of inflammation. Static radiologic tests, used alone or in combination, are ineffective for assessing the movement of the spine throughout the entire range of motion. As such, current methods to diagnose and measure instability remain ineffective.
U.S. Pat. No. 8,676,293, describes an apparatus for positioning a patient through various joint motions in order to produce digital moving images of the joint motion. Electromyography is further combined in order to simultaneously produce data relating to muscle involvement associated with the specific types of joint motion. In this way, the process allows the relative motion, and associated muscle involvement, of certain skeletal structures of the patient to be measured. The diagnostic data that is produced, specifically two-dimensional linear and angle measurements, may be applied to generate clinically useful diagnostic data.
There continues to be a need for dynamic joint motion diagnostic methods that can provide the level of three-dimensional precision necessary for measuring spinal instability in a way that is clinically practicable and thus able to be integrated into a standard of care for spine instability diagnostics.
This background information is provided for the purpose of making known information believed by the applicant to be of possible relevance to the present invention. No admission is necessarily intended, nor should be construed, that any of the preceding information constitutes prior art against the present invention.
The embodiments of the present disclosure relate to systems and methods for measuring and assessing spine instability. In accordance with one aspect, there is described a diagnostic method for quantitatively measuring spinal instability in a patient, the method comprising: a) capturing a series of multi-frame stereo radiographic images of a target region of the patient's spine, wherein the patient is moving through a range of motion that allow for motion of vertebrae in the target region of the spine to be captured in the series of multi-frame stereo radiographic images; b) reconstructing a three-dimensional model of the target region of the patient's spine moving through the range of motion, wherein a relative three-dimensional position and orientation for each vertebra in the target region is calculated based on the radiographic images for each frame of the series of images; and c) measuring a change in the relative three-dimensional position and orientation of each vertebra in the three-dimensional model of the target region throughout the motion, wherein the measured change reflects the amount of spinal instability in the patient. According to certain embodiments, the method further comprises: d) displaying the change in the relative three-dimensional position and orientation of each vertebra as a three-dimensional movie. According to certain embodiments, the method further comprises: e) determining and analyzing the shape of the vertebrae.
In accordance with another aspect, there is described a method for assessing a patient's suitability for an orthopaedic procedure, the method comprising: a) capturing a series of multi-frame stereo radiographic images of a target region of the patient's spine, wherein the patient is moving through a range of motion that allow for motion of vertebrae in the target region of the spine to be captured in the series of multi-frame stereo radiographic images; b) reconstructing a three-dimensional model of the target region of the patient's spine moving through the range of motion, wherein a relative three-dimensional position and orientation for each vertebra in the target region is calculated based on the radiographic images for each frame of the series of images; c) measuring a change in the relative three-dimensional position and orientation of each vertebra in the three-dimensional model of the target region throughout the motion; and d) comparing the measured change in the three-dimensional model to instability data standards for normative and varying levels of instability, wherein the comparison indicates the degree of instability and the patient's suitability for an orthopaedic procedure. According to certain embodiments, the method further comprises: e) classifying the measured change by type and degree of instability of the vertebrae to determine the suitability of the patient for the orthopaedic procedure. According to certain embodiments, the method further comprises determining the shape of the vertebrae and comparing the shape of the vertebrae to normative shapes and shapes of patients with spinal pathology, wherein the comparison indicates the degree of pathology and the patient's suitability for an orthopaedic procedure. In such embodiments, the shape of the vertebrae can be classified by type and degree of pathology associated with LBP and/or spinal instability. According to other embodiments, the method is for assessing a patient's suitability for spinal fusion, artificial disk replacement, dynamic stabilization procedures, or conservative treatment, among other treatments.
In accordance with a further aspect, there is described a radiographic imaging method for generating a three-dimensional reconstruction of the movement of a target region of a patient's spine, the method comprising: a) capturing a series of multi-frame radiographic images of the target region of the patient's spine, the radiographic images comprising a pair of images taken at an angle of each other to capture images within a viewing volume wherein the patient is moving through a range of motion; b) calculating foci and edge data of vertebrae captured in a radiographic image in the series and consolidating the data to a common reference frame; c) determining a general three-dimensional position and orientation of the vertebrae; d) iteratively manipulating the general three-dimensional position and orientation of the vertebrae against the data in the common reference frame to achieve a best-fit three-dimensional position and orientation for each vertebra in the radiographic image; and e) repeating steps b to d for each image pair of a series; wherein a three-dimensional model of the target region of the patient's spine moving through the range of motion is generated. According to certain embodiments, step (c) of the method involves using a model encapsulating anatomical variability of a population, such as a statistical shape model to also iteratively determine the shapes of the vertebrae. According to other embodiments, step (c) of the method involves a three-dimensional model of the patient's vertebral spine derived from, for example, from a CT-scan or an MRI of the patient's spine.
According to another aspect, there is described a positioning apparatus for maintaining the position of a patient in a viewing area during radiographic imaging throughout a series of patient movements, for example lumbar flexion and extension, the apparatus comprising: a base for supporting a foot platform on which the patient stands when in position for radiographic imaging, the foot platform having a front end and a rear end; and a pelvic support extending from the base above the foot platform at the rear end, the pelvic support configured to support the patient's pelvis. According to certain embodiments, the positioning apparatus further comprises a knee support extending from the base above the foot platform at the front end, the knee support configured to support the patient's knees when the patient is positioned with ankles, knees and hips flexed.
These and other features of the invention will become more apparent in the following detailed description in which reference is made to the appended drawings.
Diagnosis of spinal instability is routinely based on established static imaging methods, however, there is no single imaging modality to date which discriminates with sufficient certainty “normal” and “abnormal” motion. Imaging-based methods, therefore, are generally considered to be ineffective in the diagnosis of instability.
The embodiments of the present disclosure describe stereo imaging-based methods that allow instability of a patient's spine to be quantitatively assessed in 3D, multiple times per second while the patient is in a loaded or unloaded state. Specifically, the embodiments of the present disclosure include diagnostic methods for quantitatively measuring spinal instability based on reconstruction of a three-dimensional model of the patient's spine moving through a range of motion. Optimization of the three-dimensional model, provides shape and relative three-dimensional position and orientation data for each vertebra in the spine throughout the motion. From this relative data, the vertebral movement can be accurately measured and instability can thereby be quantitatively assessed.
According to certain embodiments, the present disclosure describes methods in which the vertebral movement of a patient's spine is presented in a user-friendly display having quantitative information overlaid for easy interpretation by the user. Such embodiments offer the user methods for assessing a patient's suitability for an orthopaedic procedure that is easy to understand without necessarily requiring qualitative interpretation of the images by a specialist such as a radiologist or an orthopaedic surgeon. According to embodiments described herein, methods for assessing a patient's suitability for an orthopaedic procedure involve comparing the measured change in the reconstructed three-dimensional model, described herein, to instability data standards for normative and varying levels of instability, wherein the comparison indicates the degree of instability and the patient's suitability for an orthopaedic procedure. According to further embodiments, the degree of instability and, hence the patient's suitability for an orthopaedic procedure, can be displayed in a user-friendly presentation for the user to quickly determine the suitability of the patient for an orthopaedic procedure. According to certain embodiments, the presentation can be displayed in a variety of formats and is adaptable to various vehicles such as a mobile phone, tablet, or laptop.
Unless defined otherwise, all technical and scientific terms used herein have the same meaning as commonly understood by one of ordinary skill in the art to which this invention belongs.
As used herein, the term “x-ray” and “radiographic imaging” are used interchangeably throughout the application to mean the same thing.
As used herein, the term “about” refers to an approximately +/−10% variation from a given value. It is to be understood that such a variation is always included in any given value provided herein, whether or not it is specifically referred to.
For purposes of illustration, the devices and methods of the invention are described below with reference to the spine of the human body. However, as will be appreciated by those skilled in the art, the devices and methods can be employed with any mammal and for any joint. Embodiments of the present disclosure will now be described by reference to
A feature of the embodiments of the present disclosure relates to the 3D reconstruction of shape, position, and orientation of the vertebrae in a patient's spine. Specifically, a three-dimensional reconstruction of the movement of the spine is generated and optimized based on a series of multi-frame radiographic images of the patient's spine. From this optimized dynamic three-dimensional model, the 3D micro stability of the spine can be measured. Persons of skill in the art will recognize that a series of progressive static radiographic images may be used to generate multi-frame radiographic images.
Persons of skill in the art will recognize that there are a variety of imaging and reconstruction methods that may be used to generate the three-dimensional model of the spine. For example, biplane or dual-plane fluoroscopy may be an alternative imaging technology, or dynamic radiostereometric analysis (RSA) may be an alternative reconstruction method. Without limiting the foregoing, certain embodiments of the present disclosure relate to a radiographic imaging method for generating a three-dimensional reconstruction of the movement of a target region of a patient's spine that comprises capturing a series of multi-frame stereo x-ray exposures of a patient who is upright (loaded position) or lying on a table (unloaded supine position). According to further embodiments, as is readily understood by those skilled in the art, weights, rubber bands, etc., can further be used to load the spine.
Referring to
The timing of each exposure is precisely controlled, for synchronous and asynchronous applications. According to certain embodiments, the exposures are accurately synchronized such that both x-ray systems 20 are imaging at the same time. According to embodiments, short exposures are desirable to minimize motion blurring. The two x-ray imaging systems 20 are positioned at an angle to each other such that the x-ray beams 50 overlap in part to create a 3D viewing volume 60. In operation, the target region 70 of the patient's spine is positioned and maintained within this 3D viewing volume 60 throughout the series of exposures of a given range of patient motion. In this way, a dynamic multi-frame series of images may be captured. Persons of skill in the art may recognize that x-ray exposures may also be alternated as long as the timing is accurately controlled and known.
The 3D viewing volume 60, corresponding to the volume of the overlapping beams, provides the accuracy in the 3D reconstruction capabilities of the system 10. According to embodiments of the present disclosure, the angle between the two x-ray systems 20 is up to about 45 degrees. According to certain embodiments, the angle between the two x-ray systems 20 is up to about 60 degrees. According to other embodiments, the angle between the two x-ray systems 20 is up to about 90 degrees. According to further embodiments, the angle between the two x-ray systems 20 is at least about 60 degrees. According to preferred embodiments, the angle between the two x-ray systems 20 is about 90 degrees.
The dynamic stereo radiography system 10 also includes a reference box 80 (
In order to ensure accuracy in the series of multi-frame images, the target region 70 of the patient's spine must be positioned and maintained within the 3D viewing volume 60 throughout the series of exposures of a given range of patient motion. In this way, a dynamic multi-frame series of images may be captured.
According to certain embodiments, a positioning apparatus is used to maintain the position of a patient in the 3D viewing area 60 while allowing the patient to move freely in a supported manner during radiographic imaging throughout a series of patient movements. Referring to
The three-dimensional reconstruction of the movement of a patient's spine consists of establishing a geometric relation between the vertebral representation in the stereo radiographic images and a 3D model of the patient's spine. According to embodiments of the present disclosure, methods for the 3D reconstruction involves fitting a vertebral shape template to foci and edge or gradient data of the patient's corresponding vertebrae captured in the radiographic images (
As described, image registration 200 (
Image feature extraction 210, according to embodiments of the present disclosure, includes filtering of the images for improved image quality and advanced gradient calculations, the robust detection of edges in the images, and the creation of a dynamic edge map.
The vertebral shape template 220 can be generated using a variety of methods known to those skilled in the art. According to embodiments of the present disclosure, the vertebral shape template can be derived from a CT-scan or MRI, or other patient-specific 3D imaging of the patient's spine. According to other embodiments, the vertebral shape template can be derived from population data to generate a shape model that encapsulates the anatomical variations among a population. This includes, but is not limited to, statistical shape models, statistical appearance models, statistical bone density models, parameterized shape models, or population atlases.
Statistical shape models (SSM) use principal component analysis to separate a set of shapes from a population into an average shape and a set of orthogonal shape variations (called modes) that behave much like a mean and a multidimensional set of standard deviations. Each shape can then be represented by a greatly reduced set of numbers describing how much of each anatomical variation (mode) is present in this particular shape. Moreover, it is quite common that an even more limited set of modes accounts for the vast majority of shapes, reducing the set of numbers needed to describe the shape even further. The general process for generating an SSM, according to embodiments of the present disclosure, is shown in
Referring to
According to embodiments of the present disclosure, the optimized dynamic three-dimensional model provides an accurate representation of the target region of the patient's spine moving through a range of motion to enable quantitative measurements to be determined. In particular, a change in the relative three-dimensional position and orientation of each vertebra in the three-dimensional model of the target region throughout a motion can be measured, reflecting the amount of spinal instability in the patient. According to particular embodiments, the change in the relative three-dimensional position and orientation of each vertebra can be presented as a three-dimensional movie to show the patient's 3D motion of the spine during the imaging exercise. According to some embodiments, the change in the relative three-dimensional position and orientation of each vertebra may be normalized relative to the relative 3D position and orientation of the other vertebrae of the patient's spine.
According to embodiments of the present disclosure, the measured change derived from the three-dimensional model can be applied as a diagnostic. According to such embodiments, the 3D measurements of two vertebrae derived from the optimized 3D model, is compared to instability data standards for normative (i.e., measurements taken from healthy people) and varying levels of instability (i.e., measurements taken from patients with (lumbar spine) instability). According to embodiments of the present disclosure, the instability measures at one particular spinal level may also be compared to the other (healthy) spinal levels within the same patient to determine the varying levels of instability. Based on multivariate or discriminant analyses (or similar techniques known in the art), the variables that are most able to separate the healthy and unstable joints are selected. These variables are then used to most optimally separate the two groups and to generate a spine instability score. In addition, gradations between healthy and unstable spines can be developed based on this instability score. Multiple instability types may become apparent and scores related to each type and an aggregate score may further be developed (
The descriptive data of the spine motion will contain a large number of variables that will change over time during a given motion. Such data is complicated and requires specialist expertise in order to decipher diagnostic meaning from the data. For example, specialized knowledge is required to fully understand the complicated set of motion values and scores as well as their respective diagnostic thresholds and instability severity grades. Methods of the present disclosure, however, offer a user interface that overlays quantitative information on top of a familiar qualitative presentation of the data to assist the physician in interpreting the results. According to certain embodiments, the user interface will focus and alert the physician to those portions of the data that are suggestive or indicative of pathology.
Specifically, a colour coding can be used in various display types that is uniform across the display types and indicative of the grade or severity of the clinical instability. According to exemplary embodiments, a colour coding scheme can be presented wherein Grade 0 indicates a healthy diagnosis represented by a Green colour code; Grade I indicates minor instability, represented by a Yellow colour code; Grade II indicates moderate instability, represented by an Orange colour code; and Grade III indicates severe instability, represented by a Red colour code. Other coding schemes can be utilized as will be apparent to those skilled in the art.
A number of display options are further contemplated. According to one embodiment, the type of instability may be exaggerated in a 3D movie display by de-emphasizing deviations from normal that are low risk and emphasizing deviations from normal that are high risk by using multiplication factors in the display of motion. Alternatively, the type and severity may be communicated through the addition of colour to the bones to show severity or type of instability. As illustrated in
According to another embodiment, the visualization of variables or scores as dynamic bar graphs that move up and down during the motion is contemplated. In such an embodiment, the dynamic bars can be colour-coded based on the colour scheme described above and further depending on their magnitude (
According to another embodiment, highlighted plots of variables are contemplated wherein the colour plots of variables can change over time depending on whether the variable exceeds the grade thresholds or not. The normal range for the variable may be displayed and a bar moving across the plot indicating the current time point may be displayed.
According to further embodiments, the presentation may be a combination of the above-described display types. All colour coding and time points in such an embodiment will be synchronized and animated between the display types.
Two separate radiography systems are used simultaneously to obtain stereo radiographic images. Each radiography system comprised an x-ray source (RAD-92 Sapphire X-Ray Tube; Varian Medical Systems, Palo Alto, Calif., USA), a generator (Hydravision SHF635RF DR X-Ray Generator, SEDECAL USA Inc., Buffalo Grove, Ill., USA), a digital imaging system (CDXI 50RF, Canon USA Inc., Melville, N.Y., USA), and a computer system to link the components together, to retrieve the imaging data, and to reconstruct the imaging data.
A 90-degree reference box (SR Reference Box; Halifax Biomedical Inc, Mabou, NS, Canada) was placed into the image field of both systems, as illustrated in
The images were captured on digital detector plates (CDXI 50RF; Canon USA Inc, Melville, N.Y., USA) as greyscale images with relative intensity values in standard medical DICOM format. The overlap of the two radiography systems' fields of view made up the 3D viewing volume.
In order to keep a patient's spine within the 3D viewing volume of the stereo radiography system during the imaging process, the patient was positioned in the positioning device (similar to that exemplified in
The radiographic images were loaded onto a computer system for calculation of the parameters that described the detailed configuration of the imaging system. The fiducial beads in the reference box were located in the images and their locations tabulated. Based on the known locations of these beads, a projective transformation was calculated that matched the bead locations to the tabulated locations from the images. The control beads of the reference box were located in the images and their locations tabulated. Based on the known locations of the fiduciary beads and the control beads, the locations of the two foci were calculated.
The statistical shape model was created based on CT datasets of adults following a process outlined in the exemplary flow chart shown in
A graphic user interface allowed the operator to manipulate the position, orientation and first three modes of the shape via sliders, and to immediately see the results of the projected contours onto the radiographic image. The location of the foci and the parameters describing the projective transform were used to calculate the projected contours onto the fiducial plane for any given position, orientation and shape of each vertebra. In this way, the operator set the initial position, orientation and first three modes of the shapes, which were saved and used as the starting points for the optimizer.
An objective function was made available to the optimizer which calculated a goodness-of-fit score between the projected contours and detected contours given a position, orientation and shape, generally following the process shown in
The optimizer used the objective function to find the position, orientation and shape that provided the best fit to the radiographic images, within a predefined search space. The entire parameter space was searched in this example, which is to say that position, orientation and shape were all optimized simultaneously. In this example, the optimizer first used Particle Swarm Optimization as a global optimization method. A second round of optimization attempted to further increase the goodness-of-fit with a local-gradient-based optimizer. The initial position of the particles was normally distributed along the predefined search space and centered on the user initialized estimates. The optimizer returned the final position, orientation and shape of the 3D vertebra model.
In the same way, the final position, orientation and shape of the 3D vertebra was calculated for every set of images in a series. The optimizer assumed that the shape of the vertebra is the same in every image of the series. The optimizer used the position and orientation of a previous image in a series, combined with knowledge of the context of the acquisition to automatically initialize the position and orientation without user interaction. The vertebrae of the target region were reconstructed for the entire set of multi-frame radiographic images throughout the motion.
With the reconstructed vertebra models, position and orientation, the motion of each vertebra was described relative to a chosen reference point, which was the vertebrae below it (or sacrum in the case of L5). Based on the relative motion of each vertebra to its neighbours, measurements of clinical relevance to vertebral instability were calculated such as anterior translation, posterior/anterior rotation and the relative translation per degree of rotation were calculated for each spinal segment of interest. These measurements were compared to normative data to assist in assessing a patient's degree and type of spinal instability. The shape of the vertebra was also compared to normative data. In this case the statistical shape model provided the reference and each mode describing the shape was related to the degree of deviation from the normal, average shape. These morphological features were compared against known combinations, from normative data, which would predispose a vertebra to a pathological condition.
The diagnostic measurements were presented to the surgeon and patient using a visualization interface. The interface was web-browser based and available for viewing with proper credentials on any internet enabled device. All the measurements were made available for viewing, with the presentation depicting the relation of the patient's measures relative to normative data. The presentation was color coded to clearly present the deviation of the patient's diagnostic measurements in relation to the normative data. An aggregate score was calculated as a global indicator of instability for each spine segment of interest.
Based on the deviation from normal in both the motion and shape combined with the clinical evidence relating the abnormality found in this patient to good clinical outcomes from a spinal fusion surgery, the treating surgeon and patient decided to schedule the spinal fusion surgery.
A stereo orthopaedic radiography system (Halifax SR Suite; Halifax Biomedical Inc, Mabou, NS, Canada) was used consisting of two radiography systems exposing consecutively to obtain stereo radiographic images. Each radiography system comprised an x-ray source (RAD-92 Sapphire X-Ray Tube; Varian Medical Systems, Palo Alto, Calif., USA), a generator (Hydravision SHF635RF DR X-Ray Generator, SEDECAL USA Inc., Buffalo Grove, Ill., USA), a digital imaging system (CDXI 50RF, Canon USA Inc., Melville, N.Y., USA), and a computer system to link the components together, to retrieve the imaging data, and to reconstruct the imaging data.
A 60-degree reference box (SR Reference Box; Halifax Biomedical Inc, Mabou, NS, Canada) was placed into the image field of both systems, as illustrated in
For each of the image sequence recordings, the patient was instructed on the posture and motions to be used during imaging. In order to keep a patient's spine within the 3D viewing volume of the stereo radiography system during the imaging process, the patient was positioned in the positioning device (similar to that exemplified in
The radiographic images were loaded onto a computer system for calculation of the parameters that described the detailed configuration of the imaging system. The fiducial beads in the reference box were located in the images and their locations tabulated. Based on the known measured locations of these beads, a projective transformation was calculated that matched the bead locations to the tabulated locations from the images. The control beads of the reference box were located in the images and their locations tabulated. Based on the known measured locations of the fiduciary beads and the control beads, the locations of the two foci were calculated.
The 3D shapes of the vertebrae were represented by triangulated meshes reconstructed from CT scans previously acquired from the patient. The location of the foci and the parameters describing the projective transform were used to calculate the projected contours onto the fiducial plane for any given position and orientation of each vertebra. A graphic user interface allowed the operator to manipulate the position and orientation via sliders, and to immediately see the results of the projected contours onto the radiographic image. In this way, the operator set the initial position and orientation, which were saved and used as the starting points for the optimizer.
An objective function was made available to the optimizer which calculated a goodness-of-fit score between the projected contours and selected image edges given a position and orientation. The detected contours were determined based on edge detection on the image using a Canny filter. The goodness of fit score was based on a modified Hausdorff Distance.
The optimizer used the objective function to find the pose and orientation that provided the best fit to the radiographic images, within a predefined search space. In this example, the optimizer first used Scatter Search Optimization as a global optimization method generally following the process illustrated in
In the same way, the final position and orientation of the 3D vertebra was calculated for every set of images in a series. The optimizer used the position and orientation of a previous image in a series, combined with knowledge of the context of the acquisition to automatically initialize the position and orientation without user interaction. In this way, the vertebrae poses of the target region were reconstructed for the entire set of multi-frame radiographic images throughout the motion.
With the final position and orientation of the 3D vertebra models determined for every set in a series, the reconstructed 3D motion was available for presentation. The data was presented via a specialized app which connected with the database server to retrieve the analysis results. A time-series of 3D data could be navigated via a slider or with movement of the cursor over the viewing area, or could be viewed with a continuous dynamic loop. The frame of reference of the motion could be set by the user to any of the vertebral segments of interest or to a static global reference frame. The user could change the viewing angle of the 3D models to achieve any viewing angle. Also, the user could select the shading and transparency of each vertebral segment. Based on diagnostic measurements relevant to the reconstructed 3D motion, color coding was used to highlight those segments which deviated from known normative motion. The color presented was based on color mapping indicative to the degree or grade of deviation from known normative motion.
A statistical shape model was fit in 3D to the CT-based mesh model of the vertebra of interest using a Particle Swarm Optimization after an initial alignment using an iterative closest point algorithm. The modes of shape variations described the morphological relationship between the patient's vertebra and the normative data contained in the statistical shape model. The patient's 3D vertebra models were then presented in their own visualization with color mapping indicative of these morphological differences. The user could select which modes of variation (or combination thereof) to select for this visualization. Known combinations established from normative data were also available as presets and available for visualization.
Filing Document | Filing Date | Country | Kind |
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PCT/CA2015/050805 | 8/21/2015 | WO | 00 |
Number | Date | Country | |
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62040342 | Aug 2014 | US |