research papers
Exploring experimental parameter choice for rapid speckle-tracking phase-contrast X-ray imaging with a paper analyzer
aCentral Medical School, Faculty of Medicine, Nursing and Health Sciences, Monash University, Clayton, VIC 3800, Australia, and bSchool of Physics and Astronomy, Monash University, Clayton, VIC 3800, Australia
*Correspondence e-mail: isobelaloisio@gmail.com
Phase-contrast X-ray imaging using a paper analyzer enables the visualization of X-ray transparent biological structures using the refractive properties of the sample. The technique measures the sample-induced distortions of a spatially random reference pattern to retrieve quantitative sample information. This phase-contrast method is promising for biomedical application due to both a simple experimental set-up and a capability for real-time imaging. The authors explore the experimental configuration required to achieve robustness and accuracy in terms of (i) the paper analyzer feature size, (ii) the sample-to-detector distance, and (iii) the exposure time. Results using a synchrotron source confirm that the technique achieves accurate phase retrieval with a range of paper analyzers and at exposures as short as 0.5 ms. These exposure times are sufficiently short relative to characteristic physiological timescales to enable real-time dynamic imaging of living samples. A theoretical guide to the choice of sample-to-detector distance is also derived. While the measurements are specific to the set-up, these guidelines, the example speckle images, the strategies for analysis in the presence of noise and the experimental considerations and discussion will be of value to those who wish to use the speckle-tracking paper analyzer technique.
Keywords: X-ray imaging; phase contrast; phase retrieval; speckle imaging.
1. Introduction
Phase-contrast X-ray imaging (PCXI) allows soft tissue discrimination of X-ray-transparent biological samples, with contrast improvements and the additional possibility of smaller radiation doses when compared with conventional absorption-based imaging (Paganin et al., 2002; Zambelli et al., 2010). As such, PCXI is increasingly used in biomedical research and shows potential for future clinical application (Castelli et al., 2011; Olivo & Castelli, 2014). However, many existing phase-contrast methods require multiple exposures for quantitative phase retrieval and thus do not permit the quantitative imaging of dynamic samples. Propagation-based phase-contrast imaging is a simple single-exposure method suitable for live imaging, and provides useful edge enhancement but has limited sensitivity to slowly varying phase gradients (Gureyev et al., 2009). More sensitive techniques include crystal analyzer-based (Davis et al., 1995; Ingal & Beliaevskaya, 1999) and interferometric methods (Momose et al., 2003; Pfeiffer et al., 2006). However, multiple images are usually required for phase retrieval using these techniques. Some quantitative information can be gained from a single image, but this requires assumptions, for example regarding sample composition (Paganin et al., 2002).
Morgan et al. (2012) and Berujon et al. (2012) first described a single-image `paper analyzer' or speckle-tracking method that is sensitive to slowly varying phase gradients and can extract differential phase information in two directions from a single exposure, combining them to give quantitative phase depth. The technique uses the sample-induced distortion of a spatially random reference pattern to extract this differential phase contrast. A spatially random phase mask is responsible for creating the detailed high-contrast reference pattern via propagation-based phase contrast, making the technique inexpensive and practical. The paper analyzer technique has the set-up simplicity and speed of propagation-based PCXI, as well as the imaging sensitivity to small transverse phase shifts seen with crystal analyzer and interferometric methods. As such, this method is effective for the imaging of dynamic processes using short single-exposure times.
Whilst the paper analyzer technique has been demonstrated with both sandpaper and biological filtering membrane as the reference pattern (Berujon et al., 2012; Morgan et al., 2012), it is unknown how sensitive the experimental set-up is to the phase reference objects. Similarly, the choice of imaging parameters required to achieve accurate phase retrieval is not well defined. In this paper, we first study the effect of the feature size of the phase mask on the achievable sample size resolution and the accuracy of the image reconstruction. Secondly, we look at the analysis of noisy images to push the limits of exposure time to enable high-speed imaging of dynamic processes. Finally, we consider the effect of sample-to-detector distance on the reconstructed image quality. As propagation distance increases we increase phase contrast and the magnitude of the sample-induced transverse shift in the reference pattern, at the expense of a loss in and increasing artifacts from propagation-based fringes at the edges of the sample. We formulate some general rules that can be used to guide propagation distance selection.
2. PCXI using a paper analyzer
The simple experimental set-up is shown in Fig. 1. First, an incident X-ray wave is distorted by the paper analyzer and using propagation-based X-ray imaging produces a `reference' speckle pattern around 1 m downstream of the sandpaper. The sample is then introduced a few centimeters downstream of the paper analyzer, which, with further propagation, produces a slightly distorted `sample-and-reference' speckle pattern as a result of the phase changes induced by the differing refractive indices and thickness of the sample. Local transverse shifts in the spatially random speckles of the reference image occur when the sample changes the local direction of propagation of the X-ray wavefront, hence distorting the pattern observed downstream at the detector.
The transverse local shifts of the speckles in the reference pattern are then determined at each position (x, y) using a cross-correlation technique. An interrogation window is placed around each pixel in the `sample-and-reference' image and is scanned to locate the same reference pattern at the original position in the reference image. A variety of feature tracking techniques have been developed, each with benefits and limitations, as described by Lewis (1995). However, few comparisons have been made between these. Normalized cross-correlation is preferred in order to overcome the variations in image intensity that occur across the interrogation field, and cross-correlation is performed in the Fourier domain for computational speed. Other techniques may pose difficulties for use with highly speckled reference images, as some require adequate low-frequency information or result in errors in the presence of textured images (Lewis, 1995). The cross-correlation analysis used in the experiments is described in detail by Morgan et al. (2011a). The transverse shift, = [Sx(x,y),Sy(x,y)], required to locally align the images, is resolved into x and y components Sx and Sy to give two differential phase-contrast images. A typical experimental result is shown in Fig. 2, where panel (a) shows the horizontal components Sx of the shift, and panel (b) shows the vertical components Sy of the shift at each location across the image. Experimental details are discussed in §3.
Two sample phase gradients and are calculated from the two shift images (Sx and Sy) and integrated according to the Fourier derivative theorem (Kottler et al., 2007; de Jonge et al., 2008) to give
where is the sample phase depth, for radiation with a wavenumber k, and sample-to-detector distance z, where denotes the Fourier transform with respect to (x, y) and kx and ky are the Fourier-space coordinates corresponding to (x, y).
The resulting phase depth map of the spheres is shown in Fig. 2, where panel (d) shows the two-dimensional grayscale map, and panel (e) shows the three-dimensional projected phase depth. The projected thickness can be calculated from the phase depth for a homogeneous sample of thickness T(x, y) and complex decrement δ [where = ].
Profiles of the retrieved sphere thickness taken using the paper analyzer method were compared with a theoretical projected thickness, using the normalized root-mean-square (RMS) error as a measure of accuracy, defined as
Here, TT is the theoretical sample thickness, TR is the reconstructed sample thickness, and m is the integer pixel co-ordinate. A comparison between the profiles of a reconstructed image and the theoretical image is shown in Fig. 2(f). The RMS error was calculated for the entire profile, to encompass both spheres and the vacuum space in between.
3. Experiment
We assessed the effect of changing imaging parameters, including (i) the paper analyzer feature size, (ii) propagation distance and (iii) exposure time. To do this we compared images of both Perspex spheres of diameter 1.5 mm and glass spheres with a specified diameter size range of 63–75 µm in order to test the paper analyzer technique on materials of different refractive indices, sizes and phase gradients (a perfect sphere, according to the projection approximation, provides phase gradients from zero to infinity in all directions). A simple phantom is also required in order to calculate an accurate theoretical thickness to compare with the experimental retrieved thickness.
Images were acquired at the biomedical imaging beamline BL20XU at the SPring-8 synchrotron facility, Hyogo, Japan. A crystal Si-111 monochromator was used to select X-rays at an energy of 25 keV. The source-to-sample distance was 245 m and the sample-to-detector distance was varied between 25 cm and 100 cm. The paper random phase mask was placed 7 cm before the sample. The detector system comprised a 2560 × 2160 pixel sCMOS camera (pco.Edge) and a YAG 30 µm-thick phosphor with a 20× magnification lens to give an effective pixel size of 0.29 µm.
The sample comprised Goodfellows ME306810/3 PMMA (Perspex) 1.5 mm spheres with a ±5% tolerance in diameter, and glass spheres with a specified diameter size range of 63–75 µm. The sample was imaged using eight types of KMCA silicon carbide electro-coated abrasive sandpaper with different grain sizes as the paper analyzer. Two pieces of paper were also used: a piece of paper towel and a piece of Reflex Ultra White A4 Paper. Images were also recorded at exposure times of 0.5 ms, 1 ms, 5 ms and 10 ms. In all cases the speckle features were resolved by the detector, which is a limiting factor since reconstruction is impossible if this criterion is not met. We focused on increasing the analyzer feature size with respect to the sample feature size.
When performing the cross-correlation computation, an interrogation window (20 × 20 pixels) was stepped pixel by pixel for a total shift of 10 pixels in both the horizontal and vertical planes, in order to locate the sample-induced distortions of the reference image. This interrogation window was sufficiently large to always include a reference feature, but not so large as to smooth out sample features. Ten pixels was the maximum shift observed in the images. Image profiles were aligned manually to perform RMS error evaluation. The variation in RMS error was less than 0.2% for shifts of ten pixels relative to the aligned position for the different paper analyzers, and less than 1% for different exposure times and propagation distances. This can be taken as an indication of the magnitude of error bars on the plots below.
4. Results
4.1. Paper analyzer
A plot of the RMS error in the reconstructed sample projected thickness for each of the different types of sandpaper and two types of paper is shown in Fig. 3. The profiles for each of the eight pieces of sandpaper showed good correspondence with a normalized RMS error of less than 9% for all papers tested. The lowest error was 5.6%, achieved with the sandpaper of 58.5 µm feature size. This error is comparable with previous studies by Morgan et al. (2011a), which obtained a normalized RMS error of 3.2% on the same 1.5 mm Perspex spheres using a periodic grating in place of the sandpaper. The vacuum error for the reconstruction was also minimal, as seen in the profile of Fig. 2(f). Using sandpaper of grain size 15.3 µm, the retrieved phase depth of the vacuum had a mean error of 1.6 rad in the presence of 50 rad features.
Fig. 3 demonstrates that in our images the RMS error does not change significantly with increasing grain size. This is despite the average grain size ranging from 15 µm to 200 µm. Images of four different pieces of sandpaper are shown in Figs. 4(a)–(d).
The sandpaper image shows that all the pieces of sandpaper had a similar high-frequency reference pattern in the background despite their differing average grain size. This is likely due to the texture of the paper, which supports the sand grains, as well as the glue that binds the grains onto the paper. To confirm this observation we performed a rotationally averaged autocorrelation on each of the sandpaper images, which is shown in Fig. 5.
In spite of the great variation in grain sizes and contrast across the sandpaper, the paper analyzer technique was able to utilize the high-frequency background features as a reference pattern and reconstruct images with an approximately uniform RMS error calculated for each of the different pieces of sandpaper. This result is testament to the robustness of the technique to a range of reference objects. Even the coarsest sandpaper (Fig. 4d) with very strong propagation-based fringes seen at the grain edges and varying contrast across the reference image (inside/outside/at the edges of grains) achieved a reconstruction with only 7.6% error. This is in contrast to grating interferometry and spatial harmonic methods where grating imperfections can lead to artifacts or loss of contrast (Bech et al., 2009; Olivo et al., 2009; Wen et al., 2010). Image reconstruction was performed using both a piece of paper towel and a piece of printer paper as the analyzer, with an RMS error of 6.9% and 7.9%, respectively, which shows how simple and inexpensive the optics for this method can be, particularly when using a highly coherent X-ray source. Random phase objects will also avoid aliasing artefacts when imaging periodic objects, in contrast to purpose-built periodic grids. Moreover, there is a possibility that the image imperfections caused by rough or imperfect optical elements could in fact be utilized in or as the speckled reference pattern, turning what is ordinarily detrimental to an imaging system into a constructive component of the imaging process. It is recognized that a purpose-built analyzer has the advantage of being able to analyze with maximum sensitivity in a particular direction and can create reference patterns of optimized visibility for reliable tracking of reference pattern shifts in the presence of noise.
More detailed characterization of the speckle reference patterns could calculate the et al., 2013; Berujon et al., 2012), but can also be degraded in the presence of noise and a low-visibility reference pattern with slowly varying features. In general, the main requirement for high-quality imaging is that the reference pattern is consistent across the image and that features are high contrast, well-resolved and, in size, of the order of resolution that is desired. If the reference pattern features are too close to the detector pixel size, such that they cannot be well resolved, this will result in poor reference pattern visibility, and the features will be difficult to track in the presence of noise.
scale distribution, in order to select an analyzer to provide the required reconstructed image resolution. The angular accuracy is limited by the detector pixel size and the sample-to-detector distance (Morgan4.2. Exposure time
We compared the reconstructed profiles from raw images taken with four different exposure times of 0.5 ms, 1 ms, 5 ms and 10 ms, using the smallest sized grain sandpaper (15.3 µm) as the paper analyzer. Before image reconstruction, four different pre-processing methods were applied to the raw images in order to determine a suitable method for reducing noise levels and thus improving the quality of the reconstructed images at ultra-short exposure times. A plot of the RMS errors in the phase retrieval as a function of exposure time, on a single raw image and after each of the four pre-processing methods, is shown in Fig. 6, and the five methods are outlined in detail in the caption.
Using a single unfiltered image for analysis, the RMS error of the reconstructed images decreased considerably with increasing exposure time (from 46.3% at 0.5 ms to 15.2% at 10 ms). This was expected due to the decreased noise in images with longer exposures. Averaging 20 images together also decreases the detector noise due to random fluctuations. However, at an exposure of 0.5 ms, averaging 20 images resulted in the largest RMS error of 59.7%. At very short exposure times, , which shows the differential vertical shift Sy obtained (a) when using the average of 20 images at 0.5 ms exposure for analysis, and (b) when using the single image at 0.5 ms exposure, respectively. Note that the high-frequency noise seen in Fig. 7(b) is damped during the integration when reconstructing the projected sample thickness. In Fig. 7(a) the speckle-tracking process biases towards no shift (gray) since the dominant and hot pixels do not shift and therefore the process fails to detect the vertical gradient across the spheres. The high-frequency low-count noise in the single exposure is of a similar frequency to the and hot pixels and hence can help to `drown out' the structure inherent in the detector images. We attempted to `correct' for the by subtracting an averaged dark-current image from both the reference speckle image and the sample-and-reference speckle image. While subtracting the from either one of these images reduced the problem of the bias towards zero shift, if the image was subtracted from both these images this actually increased the similarity of the two images (particularly given that the dark-current signal occupied more gray levels than the speckle signal), and increased the problem of a bias towards zero shift. A similar effect is seen with a flat-field correction. Filtering out high-frequency noise (by median-filtering any pixels that were greater than two standard deviations from the gray-level value of their neighbors) was more effective at removing and hot pixel structure without introducing similarities between the speckle reference and the sample-and-reference speckle images. Fig. 7(c) shows our best differential phase reconstruction at 0.5 ms, the result of comparing a single sample-and-reference speckle image (with high-frequency noise filtering but no dark-current subtraction) to a 20-image-averaged reference speckle image, that has undergone both dark-current subtraction and high-frequency noise filtering.
dominates the image. We estimate that the 0.5 ms exposure image is in fact only 31% X-ray signal and 69% found by plotting the number of counts against exposure time for all images. Averaging these short exposure images decreases the amount of noise present, leaving not only a stronger X-ray signal but also a stronger image of the structured component of the When this structured makes up a larger proportion of the image than the X-ray signal, the speckle-tracking analysis `tracks' the position of the instead of the X-ray signal, biasing the detected `shift' towards zero and decreasing the quality of the reconstructed image. These errors can be seen in Fig. 7The Median filter 1, Median filter 2 and Mean filter all resulted in consistently low RMS errors for each of the reconstructed images. At 0.5 ms exposure we obtained an RMS error of only 14.5% using the Median filter 1, which is comparable with the most accurate reconstruction with an RMS error of 12.2% achieved with an exposure of 10 ms (20 times longer). Overall, the Median filter 1 (10 pixel radius) produced the most accurate reconstructions. The significant decrease in RMS error associated with applying the Median filter 1 is promising in terms of achieving high-quality images with greatly reduced exposure time and radiation dose. Note that if the reference pattern contained higher-frequency signals and/or the propagation distance was shorter, the filter width may need to be decreased in order to preserve the position and visibility of the shifted reference features.
Previous experiments using the paper analyzer method (Morgan et al., 2012) were able to visualize samples with an exposure time of 150 ms. We have demonstrated accurate phase retrieval with exposures as short as 0.5 ms. These exposure times are sufficiently short, relative to characteristic physiological timescales, to enable real-time imaging of dynamic samples. Real-time imaging enables us to visualize changes in physiological systems, and a future application of the paper analyzer technique is the in vivo imaging of function.
4.3. Propagation distance
The accuracy of the reconstructed phase depth was evaluated at propagation distances of 25 cm, 50 cm, 75 cm and 100 cm and the reconstruction of the small Perspex spheres was compared with the larger glass sphere at each of these propagation distances. To evaluate the effect of propagation on the detection of different phase gradients across the sphere the RMS error value for the thickness profile near the edge of the Perspex sphere was compared with the thickness profile in the bulk of the sphere. The very edges of the sphere (where the sphere meets air) were excluded from this RMS error calculation as they have considerably larger error values due to propagation-based fringes that affect the reconstruction process. We sought to eliminate this error in order to more fairly compare reconstructions from the large phase gradients towards the edge of the sphere with the smaller phase gradients in the bulk of the sphere. Each of these plots is shown in Fig. 8.
Overall the profile error decreased with an increase in the propagation distance, with considerable improvement in reconstruction from 29.8% error at 25 cm to 10.7% error at 100 cm. This result is expected, as the transverse shift induced by the sample will increase with propagation and therefore be more easily detected (Bennett et al., 2010; Morgan et al., 2012).
Whilst the reconstruction of the large spheres improved with increasing distance, the reconstruction of the small spheres did not and had poor correspondence with all RMS errors above 50%. The propagation-based phase-contrast fringes from the edges of the small spheres are comparable in size with the spheres themselves and so affect the quality of the reconstruction, seen in Figs. 2(a) and 2(b). The fringes impact significantly on the ability to track the sample-induced shifts in the reference image and subsequently lead to poor edge reconstruction, which is visualized in Fig. 2(f) with the comparison of the theoretical profile with the reconstructed profile. These errors represent a significant proportion of the total thickness at the edge of the sphere, and thus result in high RMS error values. Morgan et al. (2012) proposed the potential for more advanced phase extraction techniques, which could use the reconstructed spheres to estimate propagation-based fringes and then subtract these before performing the cross-correlation analysis, thus minimizing the impact of edge artifacts. Future work could also look at combining contrast mechanisms using the ideas presented by Pavlov and colleagues for unifying analyzer-based PCXI with propagation-based PCXI (Pavlov et al., 2004, 2005). It is also possible that the spatial resolution of the technique is limiting the accuracy of these smaller sample features, an issue encountered in all imaging modalities. In previous studies using this technique, the reconstruction of a 3 mm cylinder produced an RMS error of 1.8% (Morgan et al., 2011b), whereas the reconstruction of a 1.5 mm sphere resulted in an error of 3.2% (Morgan et al., 2011a). The paper analyzer technique trades spatial resolution for increased speed of imaging and sensitivity to slowly varying phase gradients. Whilst the quantitative analysis of the small glass spheres in our study was not very accurate, images were still qualitatively good and closely resembled the sample. This reaffirmed that the phase reconstruction technique is best suited to slowly varying samples that do not provide significant edge enhancement.
As with our previous observations, the reconstruction of both the low-gradient and high-gradient regions of the larger sphere improved with increasing sample-to-detector propagation. There were two main findings from this comparison. Firstly, the low-gradient region of the sphere had a more accurate reconstruction than the high-gradient region of the sphere at all propagation distances excepting 25 cm. This first observation is somewhat unexpected. Although the paper analyzer technique measures the first derivative of the phase and is therefore more sensitive to slowly varying phase gradients than propagation-based methods (Morgan et al., 2012), we would still expect the strong diffraction that occurs towards the edge of samples to create a transverse shift that was more easily detectable, and hence the high-gradient region would be more accurately reconstructed. A possible explanation for this is again the normalized RMS error calculation. The thickness of the sphere is greatest in the center of the sphere and so any errors in the measured gradient here make a comparatively small contribution to the total thickness. We also know that the propagation-based fringes that occur at the edges of samples can lead to poor reconstruction and this could explain the high error values calculated for the edges of the 1.5 mm sphere. The less accurate reconstruction at 25 cm could result from the weak phase gradients towards the center of the sphere, which would cause only a small transverse shift at such a short propagation distance. Because the image we evaluate is reconstructed using integration, each pixel in the reconstructed image uses information from surrounding pixels in the gradient image. Hence, the errors in the low-gradient regions of the thickness image come from errors in both the high- and low-gradient regions of the gradient image.
Secondly, the accuracy of the reconstructed projected thickness of the bulk of the sphere improved more dramatically with increased sample-to-detector distance, which was to be expected. The paper analyzer technique is more sensitive to weak phase gradients at longer sample-to-detector distances because the magnitude of the transverse reference pattern shift will increase with propagation and thus be more easily detected (Morgan et al., 2012). Comparatively, the high-gradient region of the spheres will refract the X-rays more strongly and thus create a transverse shift that is more easily detected at shorter propagation distances (Morgan et al., 2012).
Selection of a suitable propagation distance is important when considering biomedical applications, which may require visualization of particular features of a specimen. We desire a sample-to-detector distance long enough to create phase contrast so that we can detect the sample-induced transverse shift, whilst also maintaining a high ). An increased propagation distance also leads to increased edge artifacts, disrupting the phase retrieval. Our experiment was limited because we only imaged up to a propagation distance of 100 cm and did not reach a maximum distance at which the accuracy of the technique decreased, as was seen in Morgan et al. (2013) with a phase grid. We, therefore, consider theoretically the factors that affect the optimal propagation distance. These considerations also mean the results are more generally applicable.
so that we can image moving structures with short exposure times, and decrease the radiation dose (Wu & Liu, 20035. Theoretical propagation distance calculations
Our first consideration is the optimal distance for detecting transverse shift S(x, y). As propagation distance increases, the transverse shift S(x, y) will increase. The maximum propagation distance, z, beyond which the transverse shift can no longer be definitely tracked, will occur when the shift S(x, y) is equal to the speckle feature size, L. We will consider this problem in one dimension, x. We know that = Sx /z. Rearranging this, and using the small-angle approximation ( ≃ θ for small θ) we arrive at
Fig. 9 shows a sample feature of size T, approximated as a sphere of diameter T, from which the average phase gradient can be calculated as
It holds that for radiation with a wavenumber k, and a sample with phase depth , the sample will diffract the incident beam by angle θx according to
Substituting (5) into (4) we arrive at
We then substitute this into (3) to give our final result,
Equation (7) shows that the maximum propagation distance is directly proportional to the speckle feature size and inversely proportional to the decrement, δ, of the sample. For our experimental conditions, an analyzer producing a reference pattern with feature size 15 µm and sample δ value of 3.5 × 10−7, we can increase the propagation distance to 21.4 m. However, this propagation distance is unrealistic as there would be a significant drop in (particularly without a vacuum tube) as well as poor reconstruction due to propagation-based fringes at the edges of the sample (Gureyev et al., 2009). We also note that this maximum distance is calculated for the `average' gradient of the sample feature [as seen in equation (4)]. If we were to instead reconstruct a different component of the sample sphere (for example, imaging the steeper-than-average part of the large sphere) where the gradient is steeper, the maximum distance would be shorter. Using this method, one can calculate the propagation distance at which any part of the sample will be unable to be accurately reconstructed. For example, at 10% of the thickness from the edge of the sample the phase change is given by
The phase gradient can then be calculated using
Using (7), the maximum propagation distance can be calculated,
This is equal to 19.7 m in our case. It is important to note that equation (7) also demonstrates that the maximum propagation distance is not dependent upon the sample feature size, T, or directly dependent on the wavelength of the radiation, λ, simplifying the propagation distance problem.
Our second consideration is the effect on image reconstruction of propagation-based fringes created by sharp sample edges. If the fringe size becomes too large compared with the feature size of the speckle, the reconstruction of the sample edges will be poor. The fringe width corresponds to the width of the first Fresnel zone F, given by (Gureyev et al., 2009)
Here, R1 is the source-to-sample distance and R2 is the sample-to-detector distance.
Rearranging (11) to give sample-to-detector distance R2 in terms of R1, fringe width F and wavelength λ,
We then let fringe width F equal a fraction of the speckle feature size L, so that F = L/a. The result is the maximum distance as defined by the sample edge fringes, given by
Taking into consideration our experimental parameters of a source-to-sample distance of 245 m, a wavelength of 0.5 × 10−10 m and δ = 3.5 × 10−7, we plot both the shift-associated maximum distance in equation (7) and the fringe width-associated maximum distance in equation (13) as a function of the speckle feature size L. The result is shown in Fig. 10. The limiting fringe width-associated sample-to-detector distance is plotted for fringe width equal to one fifth of, one tenth of, one twentieth of and equal to the speckle feature size. It can be seen that the limit to the sample-to-detector distance is far more sensitive to the increasing width of the propagation-based fringes than the transverse feature shift induced by the sample. In fact, at increasing propagation distances, the fringe width will equal the speckle feature size well before the shift-associated maximum distance is reached.
There are additional factors that affect the ideal propagation distance and achievable spatial resolution that we did not consider in our experimental or theoretical studies. These include the detector pixel size (Gureyev et al., 2009; Wen et al., 2010), the given at different propagation distances (Wu & Liu, 2007), and the point spread function of the imaging system (Gureyev et al., 2009). The first two factors did not affect our experiments, as our effective pixel size of 0.29 µm was well below the speckle feature size and also small enough to detect weak phase gradients, and the bright synchrotron source had sufficient at all propagation distances used. However, these factors are important when considering the implementation of the technique in a clinical setting, especially if the sample is weakly diffracting or we are using a low-brilliance conventional X-ray source, as recently demonstrated by Zanette et al. (2014).
6. Conclusions
Phase-contrast X-ray imaging using a random phase mask or paper analyzer has been successfully applied to the quantitative phase retrieval of X-ray transparent samples. In particular, the technique shows promise for the imaging of dynamic samples due to its ability to accurately reconstruct images with short single-exposure times and a simple experimental set-up. However, whilst we have demonstrated the robustness of the paper analyzer method to noisy images, the next challenge is to realise dynamic imaging with these short exposure times using a conventional X-ray source, which has significantly reduced et al., 2006; Bech et al., 2009), laser wakefield accelerators (Schlenvoigt et al., 2008; Fourmaux et al., 2011) and liquid-metal-jet sources (Hemberg, 2004; Tuohimaa et al., 2007), achieving short exposure times in a clinical setting is plausible.
when compared with synchrotron X-rays. With the aid of pre-processing filters our experiments reduced exposure times by three orders of magnitude from previous work, suggesting that even with reduced the paper analyzer technique may still achieve accurate reconstruction with quite short exposure times. We were able to achieve accurate phase retrieval with an exposure of only 0.5 ms. Moreover, with the development of compact table-top synchrotron sources (HiraiAcknowledgements
We thank JASRI for the use of the SPring-8 synchrotron in Japan, beamline BL20XU, under experiment 2013A1352. We acknowledge travel funding provided by the International Synchrotron Access Program (ISAP) managed by the Australian Synchrotron and funded by the Australian Government (AS_IA132). KM is supported by a DECRA from the Australian Research Council.
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