scispace - formally typeset
Search or ask a question
Proceedings ArticleDOI

Adaptive spatial compounding for improving ultrasound images of the epidural space on human subjects

06 Mar 2008-Vol. 6920, Iss: 37, pp 157-168
TL;DR: The development of an updated compounding algorithm and results from a clinical study show a significant improvement in quality when median-based compounding with warping is used to align the set of beam-steered images and combine them.
Abstract: Administering epidural anesthesia can be a difficult procedure, especially for inexperienced physicians. The use of ultrasound imaging can help by showing the location of the key surrounding structures: the ligamentum flavum and the lamina of the vertebrae. The anatomical depiction of the interface between ligamentum flavum and epidural space is currently limited by speckle and anisotropic reflection. Previous work on phantoms showed that adaptive spatial compounding with non-rigid registration can improve the depiction of these features. This paper describes the development of an updated compounding algorithm and results from a clinical study. Average-based compounding may obscure anisotropic reflectors that only appear at certain beam angles, so a new median-based compounding technique is developed. In order to reduce the computational cost of the registration process, a linear prediction algorithm is used to reduce the search space for registration. The algorithms are tested on 20 human subjects. Comparisons are made among the reference image plus combinations of different compounding methods, warping and linear prediction. The gradient of the bone surfaces, the Laplacian of the ligamentum flavum, and the SNR and CNR are used to quantitatively assess the visibility of the features in the processed images. The results show a significant improvement in quality when median-based compounding with warping is used to align the set of beam-steered images and combine them. The improvement of the features makes detection of the epidural space easier.

Summary (4 min read)

1.1 Epidural anesthesia in obstetrics

  • Anesthesia is injected into the epidural space as shown on Fig. 1 and a nerve block for the lower body is then provided.
  • The catheter is then inserted through the epidural needle shaft into the epidural space.
  • The ultrasound group achieved a success rate of 84% in the first 10 attempts whereas the control group had a success rate of 60%.
  • Which is around 7mm and much smaller than the epidural depth of adults (20-90mm), it shows the potential benefit of using ultrasound to visualize the lumbar region during an epidural needle insertion procedure.

1.2 Ultrasound imaging of lumbar region

  • Ultrasound is noninvasive, harmless at low power, portable, accurate and cost effective.
  • Ultrasound of the lumbar region shows an image filled with speckle and artifacts which can impede detection of important features such as the ligamentum flavum and other hard to detect structures.
  • The received echo is based on ultrasound reflections from large-scale (relative to wavelength) structures, such as bone (i.e. specular reflection) and reflections from small-scale structures, such as cells (i.e. random scattering).
  • If the specular reflection is strong enough, such as a bone, it casts shadows in the beam direction and structures underneath are obstructed.
  • Terms of Use: http://spiedl.org/terms with respect to the reflectors.

1.3 Image processing techniques

  • Many post-processing methods employ filters to reduce speckle.
  • Examples are the diffusion filter 10 , the adaptive weighted median filter11 , homogeneous region growing mean filter, and aggressive region growing filter 12 .
  • Frequency compounding captures several images at the same location at different transmission frequencies, decorrelating the speckle patterns among images.
  • Spatial compounding is now popular among commercial manufacturers and will be presented in the next section.

2.1 Spatial compounding

  • Spatial compounding uses beam steering19 20 21 , which captures several frames by sending the ultrasound pulses at different angles of incidence (see Fig. 2(b) for an illustration of the principle).
  • The application of spatial compounding to these images reduced speckle noise and improved the boundary continuity.
  • Spatial compounding also has other benefits, such as the possibility of enhancing structures that are only visible at certain beam angles.
  • Certain weak but important features, such as a biopsy needle 9 24 only appear at certain Proc. of SPIE Vol.
  • The structure of main interest in this work is the epidural space, which is immediately under the ligamentum flavum and initial experience suggests it is only clear at certain beam angles.

2.2 Registration techniques

  • Conventional spatial compounding still suffers from blurring due to misalignment of features.
  • The speed of sound varies by as much as 14% in soft tissue25 and the resulting distortion (including refraction) causes the apparent positions of structures to be slightly different under different angles of incidence.
  • Re-alignment of the features using an additional block-matching non-rigid registration was previously proposed by their group to properly align the structures of each image 13 .
  • The result was a sharper ultrasound image.
  • Building on those results, the warping/compounding method is extended here to improve visibility of the ligamentum flavum in vivo, and therefore the epidural space.

2.2.1 Similarity measures

  • Registration performance is highly dependent on the similarity measure used as a cost function for finding the best alignment.
  • A good similarity measure will yield a single strong peak upon best alignment.
  • Previous literature used several methods such as sum of absolute differences (SAD), mean squared error (MSE) 27 , normalized covariance (NCOV), normalized crosscorrelation (NCC), entropy of the difference image and mutual information28 .
  • Mutual information29 30 is a very popular similarity measure for registration of multimodality images but is too easily affected by artifacts.
  • Since the two images to be registered are quite similar, the means are assumed to be small enough so that the NCC and NCOV will yield similar results.

2.2.2 Interpolation and mapping

  • The beam-steered images are divided into blocks and each block registered to the reference image.
  • Once the individual warping vectors have been found for each block, each pixel is assigned a warping vector by smooth interpolation.
  • Many interpolation techniques are well known and have been compared on operations such as resizing and rotation31 32 33 .
  • Popular interpolation techniques are placed in order of performance as follows: nearest neighbour, linear, cubic and cubic B-spline.
  • Inverse mapping does not encounter the problem of holes and overlapping like in forward mapping as each pixel has only one associated value.

2.3 Linear prediction techniques

  • In order to further reduce computational cost, a coarse to fine or multi-resolution approach is often used where lower resolution blocks are registered and then higher resolution blocks are registered using a smaller search region 13 .
  • The top of the image is often noisy with poor resolution so it is not suitable as the basis for finding the initial warping vectors.
  • It is not guaranteed to be the location with strong feature content and may contain shadows.
  • The Canny edge detector is used to detect areas containing edges, and then the block with the highest count is assumed to be the best starting candidate.

2.4 Median-based compounding

  • Since the features of interest do not appear on all frames, taking the average may not highlight weak anisotropic reflectors.
  • Accordingly, any edges are weighted more than homogeneous regions.
  • Many gradient calculation methods can be used.
  • This parameter should be set according to each type of image since speckle scale depends on probe characteristics such as frequency and depth setting.

2.5 Finding the right parameters

  • The first choice is the number of beam-steered images and the number of degrees between each image.
  • Too small an angle between each image and the speckle noise pattern will be highly correlated; too large and there will be few images within the range of angles that provide good image quality.

2.5.1 Warping parameters

  • The second parameter to choose is the size of the blocks.
  • The blocks must be large enough so that a block contains significant anatomical features, therefore making the registration more accurate, and small enough to produce a different warping vector for each block as each block is associated with a different refraction error.
  • A small search region size means that the best registration may not be found.
  • Quantitative measures are computed on the regions of interest in each image and the parameters giving the best results are chosen.
  • Table 1 shows the maximum Laplacian at the ligamentum flavum as the measure of interest.

3.1 Experimental setting

  • This study was approved by the Ethical Review Boards of the University of British Columbia and British Columbia Children’s and Women’s Health Centre and written informed consent was obtained from all subjects.
  • Subjects who had contraindictions to neuraxial anesthesia or who could not communicate in English were excluded.
  • Each subject was scanned in the sitting position with L3/L4 or L2/L3 interspaces identified using surface landmarks and confirmed by ultrasound.
  • Pre-scan converted B-mode images showing the ligamentum flavum and laminas were captured over the range of beam steering angles.
  • The sonographer finds the best image and then the beam-steered frames are acquired.

3.2 Qualitative evaluation

  • The authors now compare the images before and after compounding with different compounding methods.
  • Simple compounding (Fig. 4(b) and 5(b)) averages out most speckle, however, the ligamentum flavum and the bone boundaries are blurred.
  • Using warping (Fig. 4(c) and 5(c)) sharpens the compounded image and the ligamentum flavum is seen as a doublet again.
  • Fig. 5 shows a case where the doublet is a very faint structure, compounding indeed loses the depiction of the doublet by blurring.

3.3 Quantitative measures

  • There are two structures of interest in this clinical application: the ligamentum flavum and the lamina which is the bone seen in the images.
  • Ideally, the authors would see a set of sharp lines, therefore the Laplacian of the leading line is taken as the quantitative measure.
  • The quantitative measures are calculated on all 20 sets of images and results are compiled in Table 2.
  • The features are difficult to discern due to speckle, as shown in Figs. 4(a) and 5(a).
  • Here the compounding methods show a large improvement.

3.4 Computational cost

  • The different methods presented above have various individual computational costs which are summarized in Table 4.
  • Spatial compounding alone adds very little extra cost.
  • Terms of Use: http://spiedl.org/terms frame rate down to two frames per second which makes it impractical for real-time implementation.

4.1 Summary

  • One usually relies on the lamina which is a stronger reflector to predict where the ligamentum flavum is.
  • The images are heavily affected by speckle noise.
  • Using warping makes edges clearer and thus makes the skin-to-epidural depth easier to measure.
  • The choice of parameters will not only affect the intelligibility of the compounded image but also affects the computational cost.
  • The median-based compounding yields sharper edges and certain details on surrounding tissues can be resolved but at a very high cost.

Did you find this useful? Give us your feedback

Figures (8)

Content maybe subject to copyright    Report

Citations
More filters
Journal ArticleDOI
TL;DR: Paramedian ultrasound can be used to estimate the midline depth to the epidural space, but the surrogate measures are not sufficiently correlated with the Depth of the Epidural space to recommend them as a replacement for the actual depth.
Abstract: BACKGROUND: Ultrasound is receiving growing interest for improving the guidance of needle insertion in epidural anesthesia. Defining a paramedian ultrasound scanning technique would be helpful for correctly identifying the vertebral level. Finding surrogate measures of the depth of the epidural space may also improve the ease of scanning. METHODS: We examined 20 parturients with pre-epidural ultrasound in the paramedian plane, and the predicted depth was compared with the actual midline depth. The actual depth was also compared with subject biometrics, depth of transverse process, and thickness of lumbar fat. RESULTS: The scanning technique allowed the depth of the epidural space to be measured in all subjects. The depth measured in ultrasound was strongly correlated to the actual depth (R 2 = 0.8 and 95% limits of agreement of -14.8 to 5.2 mm), unlike patient biometrics (R 2 < 0.25), the depth of the neighboring transverse processes (R 2 = 0.35 and 95% limits of agreement of -13.8 to 19.1 mm), or the thickness of overlying fat (R 2 = 0.66). The duration of the ultrasound scan was 10 min at the beginning of the trial and 3 min for the last subjects. CONCLUSIONS: Paramedian ultrasound can be used to estimate the midline depth to the epidural space. The surrogate measures are not sufficiently correlated with the depth to the epidural space to recommend them as a replacement for the actual depth to the epidural space measurement.

56 citations


Cites background from "Adaptive spatial compounding for im..."

  • ...The possible correlation with fat thickness was initially thought to be helpful with automatic image processing of the features to emphasize the epidural space.(13,14) This is being investigated further because speed of sound variations can cause image distortion through compression and refraction....

    [...]

Proceedings ArticleDOI
23 Jun 2008
TL;DR: This paper investigates reconstruction of the acoustic impedance from ultrasound images for the first time by combining multiple images to improve the estimation and uses phase information to determine regions of high reflection from an ultrasound image.
Abstract: Reflection of sound waves, due to acoustic impedance mismatch at the interface of two media, is the principal physical property which allows visualization with ultrasound. In this paper, we investigate reconstruction of the acoustic impedance from ultrasound images for the first time. Similar to spatial compounding, we combine multiple images to improve the estimation. We use phase information to determine regions of high reflection from an ultrasound image. We model the physical imaging process with an emphasis on the reflection of sound waves. The model is used in computing the acoustic impedance (up to a scale) from areas of high reflectivity. The acoustic impedance image can either be directly visualized or be used in simulation of ultrasound images from an arbitrary point of view. The experiments performed on in-vitro and in-vivo data show promising results.

13 citations

Journal ArticleDOI
TL;DR: A significant improvement in quality is shown when using warping with adaptive median-based compounding, and linear prediction is used to find the warping vectors and decrease computational cost.

11 citations

Patent
08 Dec 2014
TL;DR: In this paper, a pixel processor for beamforming with respect to a pixel from among the pixels, and for assessing the amount of local information content of respective ones of the images.
Abstract: An image compounding apparatus acquires, via ultrasound, pixel-based images (126-130) of a region of interest for, by compounding, forming a composite image of the region. The image includes composite pixels (191) that spatially correspond respectively to pixels of the images. Further included is a pixel processor for beamforming with respect to a pixel from among the pixels, and for assessing, with respect to the composite pixel and from the data acquired (146), amounts of local information content of respective ones of the images. The processor determines, based on the assessment, weights for respective application, in the forming, to the pixels, of the images, that spatially correspond to the composite pixel. In some embodiments, the assessing commences operating on the data no later than upon the beamforming. In some embodiments, brightness values are assigned to the spatially corresponding pixels; and, in spatial correspondence, the maximum and the mean values are determined. They are then utilized in weighting the compounding.

2 citations

References
More filters
Journal ArticleDOI
TL;DR: The goal of this study was to present a comprehensive catalogue of methods in a uniform terminology, to define general properties and requirements of local techniques, and to enable the reader to select that method which is optimal for his specific application in medical imaging.
Abstract: Image interpolation techniques often are required in medical imaging for image generation (e.g., discrete back projection for inverse Radon transform) and processing such as compression or resampling. Since the ideal interpolation function spatially is unlimited, several interpolation kernels of finite size have been introduced. This paper compares 1) truncated and windowed sine; 2) nearest neighbor; 3) linear; 4) quadratic; 5) cubic B-spline; 6) cubic; g) Lagrange; and 7) Gaussian interpolation and approximation techniques with kernel sizes from 1/spl times/1 up to 8/spl times/8. The comparison is done by: 1) spatial and Fourier analyses; 2) computational complexity as well as runtime evaluations; and 3) qualitative and quantitative interpolation error determinations for particular interpolation tasks which were taken from common situations in medical image processing. For local and Fourier analyses, a standardized notation is introduced and fundamental properties of interpolators are derived. Successful methods should be direct current (DC)-constant and interpolators rather than DC-inconstant or approximators. Each method's parameters are tuned with respect to those properties. This results in three novel kernels, which are introduced in this paper and proven to be within the best choices for medical image interpolation: the 6/spl times/6 Blackman-Harris windowed sinc interpolator, and the C2-continuous cubic kernels with N=6 and N=8 supporting points. For quantitative error evaluations, a set of 50 direct digital X-rays was used. They have been selected arbitrarily from clinical routine. In general, large kernel sizes were found to be superior to small interpolation masks. Except for truncated sine interpolators, all kernels with N=6 or larger sizes perform significantly better than N=2 or N=3 point methods (p/spl Lt/0.005). However, the differences within the group of large-sized kernels were not significant. Summarizing the results, the cubic 6/spl times/6 interpolator with continuous second derivatives, as defined in (24), can be recommended for most common interpolation tasks. It appears to be the fastest six-point kernel to implement computationally. It provides eminent local and Fourier properties, is easy to implement, and has only small errors. The same characteristics apply to B-spline interpolation, but the 6/spl times/6 cubic avoids the intrinsic border effects produced by the B-spline technique. However, the goal of this study was not to determine an overall best method, but to present a comprehensive catalogue of methods in a uniform terminology, to define general properties and requirements of local techniques, and to enable the reader to select that method which is optimal for his specific application in medical imaging.

1,360 citations


"Adaptive spatial compounding for im..." refers background in this paper

  • ...Many interpolation techniques are well known and have been compared on operations such as resizing and rotation[26][27][28]....

    [...]

Journal ArticleDOI
TL;DR: Results show that the introduction of soft-tissue structures and interventional instruments into the phantom image can have a large effect on the performance of some similarity measures previously applied to 2-D-3-D image registration.
Abstract: A comparison of six similarity measures for use in intensity-based two-dimensional-three-dimensional (2-D-3-D) image registration is presented. The accuracy of the similarity measures are compared to a "gold-standard" registration which has been accurately calculated using fiducial markers. The similarity measures are used to register a computed tomography (CT) scan of a spine phantom to a fluoroscopy image of the phantom. The registration is carried out within a region-of-interest in the fluoroscopy image which is user defined to contain a single vertebra. Many of the problems involved in this type of registration are caused by features which were not modeled by a phantom image alone. More realistic "gold-standard" data sets were simulated using the phantom image with clinical image features overlaid. Results show that the introduction of soft-tissue structures and interventional instruments into the phantom image can have a large effect on the performance of some similarity measures previously applied to 2-D-3-D image registration. Two measures were able to register accurately and robustly even when soft-tissue structures and interventional instruments were present as differences between the images. These measures were pattern intensity and gradient difference. Their registration accuracy, for all the rigid-body parameters except for the source to film translation, was within a root-mean-square (rms) error of 0.53 mm or degrees to the "gold-standard" values. No failures occurred while registering using these measures.

912 citations


"Adaptive spatial compounding for im..." refers methods in this paper

  • ...Previous literature use several methods such as sum of absolute differences (SAD), mean squared error (MSE)[22], normalized covariance (NCOV), normalized crosscorrelation (NCC), entropy of the difference image and mutual information[23]....

    [...]

Journal ArticleDOI
TL;DR: Based on the theory of approximation, this paper presents a unified analysis of interpolation and resampling techniques and shows that, contrary to the common belief, those that perform best are not interpolating.
Abstract: Based on the theory of approximation, this paper presents a unified analysis of interpolation and resampling techniques. An important issue is the choice of adequate basis functions. The authors show that, contrary to the common belief, those that perform best are not interpolating. By opposition to traditional interpolation, the authors call their use generalized interpolation; they involve a prefiltering step when correctly applied. The authors explain why the approximation order inherent in any basis function is important to limit interpolation artifacts. The decomposition theorem states that any basis function endowed with approximation order ran be expressed as the convolution of a B spline of the same order with another function that has none. This motivates the use of splines and spline-based functions as a tunable way to keep artifacts in check without any significant cost penalty. The authors discuss implementation and performance issues, and they provide experimental evidence to support their claims.

842 citations


"Adaptive spatial compounding for im..." refers background in this paper

  • ...Many interpolation techniques are well known and have been compared on operations such as resizing and rotation[26][27][28]....

    [...]

Journal ArticleDOI
TL;DR: In this article, the adaptive weighted median filter (AWMF) is proposed for reducing speckle noise in medical ultrasonic images. But it is not suitable for image segmentation.
Abstract: A method for reducing speckle noise in medical ultrasonic images is presented. It is called the adaptive weighted median filter (AWMF) and is based on the weighted median, which originates from the well-known median filter through the introduction of weight coefficients. By adjusting the weight coefficients and consequently the smoothing characteristics of the filter according to the local statistics around each point of the image, it is possible to suppress noise while edges and other important features are preserved. Application of the filter to several ultrasonic scans has shown that processing improves the detectability of small structures and subtle gray-scale variations without affecting the sharpness or anatomical information of the original image. Comparison with the pure median filter demonstrates the superiority of adaptive techniques over their space-invariant counterparts. Examples of processed images show that the AWMF preserves small details better than other nonlinear space-varying filters which offer equal noise reduction in uniform areas. >

715 citations

Journal ArticleDOI
TL;DR: It is shown that the Infinite Symmetric Exponential Filter (ISEF), derived from the well-known mono-step edge model, is optimal for both mono- and multiedge detection.

410 citations


"Adaptive spatial compounding for im..." refers methods in this paper

  • ...The Canny edge detection technique[30] is a gradient-based method and is currently the most commonly used method as no methods have shown to consistently yield better performance[29][31][32][33]....

    [...]