We use diffuse optical tomography to quantitatively reconstruct images of complex phantoms with millimeter sized features located centimeters deep within a highly-scattering medium. A non-contact instrument was employed to collect large data sets consisting of greater than 107 source-detector pairs. Images were reconstructed using a fast image reconstruction algorithm based on an analytic solution to the inverse scattering problem for diffuse light.
© 2008 Optical Society of America
The study of light propagation in highly scattering random media such as clouds, paint and tissue is of fundamental interest and considerable applied importance . Novel physical effects such as the dynamic correlations of speckle patterns and weak localization arise from coherent effects in multiple scattering. Incoherent effects are also of interest and have lead to new experimental tools to probe the structure of highly-scattering media. One such technique, known as diffuse optical tomography (DOT), uses highly scattered near-infrared light to image biological tissue and provide functional information about physiological parameters such as blood volume and oxygenation [2–4]. Current clinical applications of DOT include breast imaging [5–12] and functional brain mapping [13–21].
In an optically-thick medium such as the human breast, multiple scattering of light creates a fundamental obstruction to the direct formation of images. DOT overcomes this problem to some extent by solving an appropriate inverse problem, usually based on the diffusion equation, wherein the optical properties of a highly-scattering medium are reconstructed from boundary measurements. Since such inverse scattering problems are severely ill-posed , the resultant image quality in DOT is expected to be poor; typical images resemble structureless ‘blobs’. As a result many accept that anatomically accurate DOT images cannot be reconstructed. Accordingly, the emphasis in DOT has been on functional imaging, and on multi-modality imaging, in which simultaneously acquired MRI or CT images are used to provide anatomical detail .
It has been suggested that the relatively low quality of images in DOT can be improved by the use of large data sets [22–26]. Moreover, data sets of approximately 108 measurements may be readily acquired with non-contact DOT systems [27–29]. For example, Turner et al. have shown that simple shapes can be imaged in an experiment using an optically-thin sample by employing time gating of early-arriving photons . However, this approach uses photons that travel ballistically through the sample and is therefore not useful in optically thick tissues such as breast and brain.
In this contribution, we demonstrate for the first time that three-dimensional, quantitative images of the interior of such an optically thick medium, with millimeter scale complex structure, can be acquired using DOT. The reconstructed images exhibit spatially-resolved features that are much smaller than the overall size of the sample and are obtained by utilizing large data sets and fast image reconstruction algorithms developed in earlier work [23–26, 30, 31]. Our findings have important implications for biomedical applications, since we achieve image quality and spatial resolution sufficient for visualization of anatomical detail.
We have applied fast reconstruction methods to DOT imaging in previous work . However, in that work we imaged a sample with very strong absorption and a simple geometrical structure (i.e. two perfectly absorbing balls). This choice did not allow us to explore the full potential of large data sets and is of limited relevance to conditions encountered in tissue. The experimental reconstructions obtained in Ref.  appeared as spherical inhomogeneities correctly positioned in space, but slightly larger than the actual balls. Thus the detection and localization of targets was shown, but neither the ability to reconstruct the shapes of spatially extended objects nor the ability to image objects with more biologically realistic absorption contrast was demonstrated. To overcome these limitations, in the present work we have reconstructed images of several objects that have complex structure and have optical properties comparable to those of tissue. Experiments with these objects immersed in an optically-thick medium reveal that DOT is capable of producing quantitative images of complex structures with spatially-resolved features on the sub-centimeter scale. This level of detail and the spatial resolution achieved in our experiment are expected to significantly enhance the practical utility of DOT, especially for localization and demarcation of breast tumors. We have quantified the maximum attainable resolution with the current experimental system, and we have demonstrated the effects of sampling on image quality. The effect of noise on the practical limits of diffuse optical experimental resolution was also characterized.
The experimental apparatus consisted of a continuous-wave diode laser (Model TC40, SDL Inc., San Jose, CA) operating at 785 nm and coupled via a 100 µm multi-mode fiber to a pair of galvanometer-controlled mirrors (Innovations in Optics, Woburn, MA). The mirrors raster scanned the beam (on a 35×35 rectangular grid with 4 mm step size) over a 13.6×13.6 cm2 square on one side of an imaging tank containing a target. For each laser beam position, the light transmitted through the tank was collected by a f=25 mm F/0.95 lens and focused on a front-illuminated thermoelectric-cooled 16-bit CCD array (DV887ECS-UV, Andor Technology, Belfast, Ireland). A 20×20 cm2 square area of the opposite surface was mapped onto a square grid of 512×512 CCD pixels; this corresponds to a grid of detectors with 0.4 mm step. The signal recorded by each CCD pixel for a given source beam position defined an independent measurement. The total size of the data set recorded in a single experiment was (35×512)2≈3×108. Somewhat smaller subsets of the data were used for image reconstruction.
The imaging tank had an inner thickness L=6 cm, and was filled with a mixture of water, a highly scattering fat emulsion (Liposyn III, 30%, Abbott Laboratories, Chicago, IL), and India ink (Black India 4415, Sanford, Bellwood, IL). The absorption and the reduced scattering coefficients of the mixture at 786 nm were µa=0.05 cm-1 and µ′s=7.5 cm-1, respectively. The transport mean free path was ℓ*=1/(µa+µ′s) ≈ 1.3 mm. The diffuse wave number (i.e. the inverse characteristic length over which the diffuse waves decay exponentially) was . The tank thickness was therefore much larger than ℓ*, and thus the experiments were carried out in the diffusion regime. In addition kdL≈6.6, and thus the transmitted light was substantially attenuated. These parameters are typical of human breast tissues in the NIR spectral region.
Targets were made of a mixture of silicone rubber (RTV-12, General Electric, Waterford, NY), titanium dioxide (T-8141,Sigma-Aldrich, St. Louis, MO), and carbon black (Raven 5000 Ultra Powder II, Columbian Chemicals Co., Marietta, GA) . The ingredients were mixed in a proportion such that the reduced scattering coefficient of the targets was approximately matched to that in the surrounding fluid while the absorption coefficient µa was four times larger. Targets were made in the shape of letters (3 cm tall, 2 cm wide, 5 mm thick with individual components 3 mm in width), and bars (6 cm tall, 5 mm thick, with widths of 7–9 mm).
Titration experiments were performed using an 18 mm tall clear plastic cylinder with a diameter of 17 mm and 1 mm thick walls. It was positioned in the center of the tank. Laboratory tubing (outer diameter 2 mm) was used to flow fluid through the cylinder. During the first scan, the cylinder contained matching fluid identical to the fluid in the tank. Twelve titrations were then performed in which the ratio of ink concentration in the cylinder to that in the tank gave an expected absorption contrast ranging from 2:1 to 64:1.
2.3. Theoretical background
We use the diffusion approximation to the radiative transport equation [1, 33] to model the propagation of multiply-scattered light. The approximation is valid if µa≪µ′s. This condition was satisfied everywhere in the experimental medium. In the diffusion approximation, the electromagnetic energy density u(r) inside the medium obeys the diffusion equation
Here D=cℓ*/3=c/3(µa+µ′s) the diffusion coefficient, c is the average speed of light in the medium and S is the power density of the source. The diffusion equation (1) is supplemented by the boundary condition
where ℓ is the extrapolation distance [33, 34]. In the same limit that is required for validity of the diffusion approximation, D≈c/3µ′s. Thus, if the reduced scattering coefficient µ′s is the same inside the target and the surrounding medium, we have D≈D (0)=const. In this case, the goal of DOT is to reconstruct µa(r) from a set of boundary measurements of u(r), assuming D (0) is known. We, however, do not imply that reconstruction of µ′s (r) is not possible or not important in general. As was discussed in references [30, 31], simultaneous reconstruction of µa and µ′s is possible with the use of either time-resolved or frequency resolved measurements. The fast image reconstruction method described in Section 2.4 can easily be generalized to the case of heterogeneous µ′s [30, 31].
In our experiments, light entered the tank at the point r s=(ρs, zs). The CCD camera measured the intensity of the beam exiting through the opposite surface at the point r d=(ρd, zd). Here the z-axis is perpendicular to the slab, and |zd-zs|=L is the slab thickness, while ρs and ρd are the two-dimensional radius-vectors characterizing the transverse coordinates of the source and detector, respectively. The measured intensity in such an experiment, I(r d,r s), is mathematically related to the Green’s function of the diffusion equation (1), G(r d,r s), by I(r d,r s)=CdCsG(r d,r s). Here Cd and Cs are coupling constants which depend, in particular, on the extrapolation distance ℓ, the transport mean free path ℓ* (see Refs. [30,31]), and on other factors; these constants can be excluded from consideration as shown below. Note that for two arbitrary spatial arguments r and r′ which may be either on the surface or inside the medium, G(r,r′) can be found from the equation
and the boundary conditions (2). We next decompose the absorption coefficient µa(r) as µa(r)=µ (0) a+δµa(r). where µ(0) a is the constant value of the absorption coefficient in the fluid while δµa(r) represents a spatial fluctuation due to the target. Then the Green’s function satisfies the Dyson equation
where the integral is taken over the volume of the sample and G0 is the Green’s function in the reference medium with µa=µ (0) a. G 0 satisfies Eq. (3) with the substitution µa(r)→µ (0) a and can be found analytically in an infinite slab . The left-hand side of Eq. (4) is directly measurable but G(r,r s), which appears in the right-hand side, can not be measured since the point r lies inside the medium. Since G depends on δµa, the right-hand side of (4) is, generally, a nonlinear functional of the latter. Several approximate linearization methods can be used to transform Eq. (4) to an equation which is linear in δµa. We have used the first Rytov approximation, according to which, the right-hand side in (4) is replaced by the expression
Note that this expression coincides with the right-hand side of (4) to leading order in δµa. We then define the data function as
where T(r d,r s)≡I(r d,r s)/I 0(r d,r s) is the experimentally measurable transmission function. Here I 0(r d,r s) is the result of a measurement in a reference homogeneous medium with δµa=0. We then obtain the following linear integral equation:
The kernel Γ(r d,r s;r)=G 0(r d,r)G 0(r,r s) is known analytically and the right-hand side ϕ (r d,r s) is measured experimentally. Note that we have used the fact that I(r d,r s)/I 0(r d,r s)=G(r d,rs)/G 0(r d,r s) to eliminate the coupling constants Cd and Cs. Equations (5) and (6) are the main equations of linearized DOT. The method we have used for inverting (6) is briefly described below.
2.4. Inversion formula
The image reconstruction method used by us is based on the translational symmetry of the slab geometry. The latter allows one to write G 0 as
where the explicit expressions for g(q; z, z′) are given in Ref. . Note, both g(q; z, z′) and G 0(ρ, z;ρ′, z′) are real for continuous-wave measurements. We substitute this plane-wave decomposition of G 0 into (6) and take a four-dimensional Fourier transform with respect to the source and detector transverse coordinates to obtain
where the Fourier-transforms are defined as
With the change of variables q d=q+p, q s=-p, we can now re-write (8) as
where ψ(q,p)=(q+p,-p) and κ(q,p; z)=cg(q+p; zs, z)g(-p; z, zd).
Thus, the problem has been reduced to inverting a set of linear one-dimensional integral equations with known kernels κ(q,p; z). We do so for a discrete set of samples of the Fourier variable q and then use the inverse Fourier transform to obtain δµa(ρ, z). Note that Eq. (11) is inverted for each sample of q by utilizing multiple discrete values of p. To this end, we construct analytically the pseudoinverse to the linear integral operator of the left-hand side of (11). The mathematical details of this construction are given in Ref. . Computing δµa(ρ, z) by the inverse Fourier transform accounting for sampling and truncation of real-space data is discussed in Refs. [25,31]. In Ref. , we have considered symmetry-based image reconstruction algorithms from a more general point of view and a number of special cases have been derived, including the specific modality used in this paper (Section 3.C.1, “Fourier tomography”).
The computational complexity of the image reconstruction algorithm described in this section is O(NqN 3 p), where Nq is the number of discrete values of the vector q, while Np is the number of discrete values of p used to invert each one-dimensional equation (11). This is the computational cost of inverting the integral operator only. To this one should add the cost of Fourier-transforming the real-space data function and computing ψ(q,p). With the use of the fast Fourier transform, the latter scales as O(N 2 qlnNq). If the same amount of data and the same grid of voxels is used with a purely algebraic image reconstruction method, the computational cost of matrix inversion scales as O((NqNp)3). In the above estimate, we have assumed that the number of measurements is equal to the number of voxels. We thus see that the fast image reconstruction methods exploit the block structure of the linear operator that couples the data to the unknown function. Instead of inverting a large matrix of size NqNp, these methods require inversion of Nq matrices of the size Np each, thus gaining a factor of N 2 p in computation time. We note that reconstructions which utilized data sets of up to 107 source-detector pairs required less than one minute of CPU time on a 1.3GHz workstation.
2.5. Simulated data
Simulated data functions for a point absorber were generated within the linear approximation by representing δµa(r) as a delta-function. Data for infinite lattices of sources and detectors was computed directly in the Fourier domain using (8). For finite lattices we computed G 0 numerically using (7) and substituted the result into (9); in the latter formula, summation over real space variables was truncated.
We then added noise to the data function generated for the finite lattice as follows.We expect the standard deviation due to shot noise for repeated measurements of a single source detector pair to be equal to the square root of the mean number of detected photo-electrons ( ). Propogating the error to the data function defined in equation (5) we get to first order . We scaled both the simulated data function and the simulated reference intensity I 0 to have the same maximum values as were experimentally measured. The resulting data function with shot noise was then
Here R is a random variable with a Gaussian distribution and a variance of one. We note that since I 0≫ϕ, the shot noise depends primarily on the reference intensity, not on the data function itself. In order to simulate the effect of read noise and dark current, we determined the stardard deviation σbg of a background image taken with the light source blocked. This error was propagated as , and the resulting data function was calculated according to (12).
3. Experimental results
For the reconstructions shown in Fig. 1, the target was constructed of silicone rubber and shaped in the form of the letters “DOT” and “PENN”. In the first experiment, we placed the letters “DOT” one centimeter from the source plane and the letters “PENN” one centimeter from the detector plane, directly behind the “DOT” letters. The reconstruction is shown in Fig. 1(b). The letters are clearly visible. Note that the central slice from the middle of the tank is empty, as expected. In a second experiment we placed the letters “DOT” in the center of the tank (the letters “PENN” were not present) three centimeters from source and detector planes. The reconstruction is shown in Fig. 1(c). The letters are clearly reconstructed.
In Fig. 2 we show the data used to reconstruct the images. Only data corresponding to a single source beam position is shown. For each reconstruction we show, from left to right, the reference intensity I 0 when the target is not present (scattering fluid only), the intensity I when the target is present, and the Rytov data, ϕ=-log(I/I 0), which is used in the reconstruction algorithm (see Methods). Note that the letters cannot be identified by simply inspecting images of the transmitted light. Structure is visible in the Rytov data when the letters “PENN” are close to the detector plane (Fig. 2(a)). However, when the letters “DOT” are in the center of the tank (Fig. 2(b)) their shape is completely blurred.
In order to quantify the transverse resolution of the reconstructed images, we prepared several bar targets from the same material described above. The bars were 7 mm to 9 mm thick and placed consecutively (one at a time) in the center of the slab. Fig. 3(a) shows the corresponding reconstructions. As the bar widths decrease, the modulation depth between bars decreases. As can be seen, all but the 7 mm bar target are well resolved. Fig. 3(b) shows reconstructions for two experiments in which the 7mm bar target was positioned 1 cm from the source and detector planes, respectively. The bars in this figure are well resolved and the images are smoother and have fewer artifacts. As can be expected, the image is better resolved when the target is closer to the detector plane. This is because the detectors are sampled on a finer grid than the sources. Experiments were also performed with bar targets having an absorption contrast of 2:1. The resulting images were very similar to those acquired with a 4:1 absorption contrast bar targets, but they contained less contrast and more noise.
The images in Fig. 3 were reconstructed using approximately 107 measurements. The effect of changing the size of the data set was investigated by sampling the detectors on a grid with a step size of 2 mm, five times larger than the minimum experimentally available detector spacing. We found that increasing the number of detectors up to the experimentally available maximum did not improve image quality. That is, reconstructions performed using 2mmsource separations or with a denser sampling of CCD pixels were visually indistinguishable from those in Fig. 3. However, decreasing the number of data points does result in poorer image quality, as is illustrated in Fig. 4. From left to right, three separate reconstructions of the 8 mm bar target are shown. The data for these reconstructions were taken from a single experiment with the target positioned in the center of the tank. All reconstruction parameters are kept constant, except for the number of measurements used. The reconstruction on the left uses 8×106 measurements with sources and detectors sampled with 4 mm and 2 mm steps, respectively. In the center reconstruction, we use 4 mm spacing for both the sources and detectors, which corresponds to 2×106 data points. In the reconstruction on the right, the sampling is 8 mm for sources and 4 mm for detectors, or, approximately, 5×105 data points. It can be seen that as the number of measurements decreases, image artifacts become more prominent and resolution is lost. We note that the optimal number measurements for a given experiment will vary depending on factors such as experimental geometry and noise level. For example, smaller/larger data sets would be optimal if the reconstruction field of view was smaller/larger.
To investigate the capability for quantitative reconstruction of the absorption coefficient, we have performed a titration experiment. A clear plastic cylinder was positioned in the center of the tank, and laboratory tubing was used to flow fluid through the cylinder. During the first scan, the cylinder contained scattering fluid identical to the fluid in the tank. Twelve titrations were then performed in which the ratio of ink concentration in the cylinder, to that in the tank, gave an expected absorption contrast ranging from 2:1 to 64:1. The absorption contrast, i.e., the ratio of the absorption coefficient in the cylinder to that in the surrounding fluid, was taken from the corresponding reconstructed value for a single voxel located inside the cylinder. This voxel was chosen to be the voxel with the maximum reconstructed value of the absorption coefficient for the tenth titration. In Fig. 5, the reconstructed contrast µa/µ (0) a is plotted against the expected contrast. It can be seen that the absorption is quantitatively reconstructed with a linear dependence on ink concentration over nearly a decade in absorption contrast. Deviation from linearity occurs at higher concentrations, as expected.
4.1. Transverse resolution and Fourier analysis of data
Factors that limit the ability to achieve even greater spatial resolution include the finite size of the source and detector grids, the shot noise in the measured light, the noise in the CCD array (a combination of dark current and read noise), and systematic errors. The latter are errors of the model. In particular, the light transmitted through the tank is described by the diffusion equation only approximately. There are also systematic errors associated with non-ideal optics (diffraction, multiple reflections on the lens and tank surfaces). Finally, there are systematic errors associated with the nonlinearity of the inverse problem of DOT.
To better understand the dependence of transverse spatial resolution on the factors listed above, we performed the following analysis. Let all inhomogeneities be confined in a thin slice of the medium parallel to the slab, z 0-h/2<z<z 0+h/2, where h is small. We seek to reconstruct the deviation of the absorption coefficient in this slice, δµa(ρ, z 0), from the respective value in the surrounding fluid, as a function of the transverse variable ρ=(x,y). The formula (11) derived in the Methods Section becomes in this case
Here ψ(q,p) is the measurable data function, κ(q,p) is known analytically (see Methods for precise definitions of ψ and κ), and δµa(q, z 0) is the transverse Fourier transform of δµa(ρ, z 0) with respect to ρ. The real-space function δµa(ρ, z 0) is obtained by inverse Fourier transformation, namely, The choice of p in the above formula is arbitrary since the problem is overdetermined (we use four-dimensional data to reconstruct a two-dimensional function); it is sufficient to choose p=0. We then use the data function ψ(q,0) for reconstruction. The latter is taken from experiment and contains noise. It is important to note that the “ideal” data function is rapidly (exponentially) decreasing with |q|. However, the experimental noise is approximately white, i.e., the amplitude of its Fourier transform is approximately constant in the range of |q| which is of interest. In image reconstruction, integration in the above formula is over a disc |q| < q max such that outside of this disc, the signal-to-noise ratio in ψ(q,0) becomes smaller than unity. It then follows that the minimum spatial feature that can be resolved has a characteristic transverse dimension of Δx~π/q max.
A few comments on the above analysis are necessary. First, if the target is not confined to a thin slice, the transverse resolution can only be lower than the estimate π/q max. Second, one can attempt to use additional degrees of freedom (i.e., N distinct values of p) to improve the resolution. This approach, however, is not expected to yield a significant improvement since the noise amplitude decreases no faster than 1/√N, while the function ψ(q,p) decreases exponentially with |q|.
To illustrate the above resolution estimate, we plot in Fig. 6 the power spectrum of the data for a point absorber located in the center of the tank. The data function ψ(q,0) is in this case cylindrically symmetric and we can write ψ(q,0)=Ψ(q), where q=|q|. The five curves shown in Fig. 6 contain (i) simulated ideal data corresponding to infinitely large and dense grids of noiseless sources and detectors, (ii) simulated data (without noise) for the finite grids of sources and detectors that were used in the experiments, (iii) simulated data for the finite grids with background noise added (i.e. Gaussian distributed noise with a variance equal to the variance of the detected signal when the laser is off), (iv) simulated data for the finite grid with shot noise added (i.e. Gaussian distributed noise with a variance equal to the number of photoelectrons detected experimentally), and (v) data from an experiment with a small (4 mm) highly absorbing target in the tank (see Methods for details of the simulations). The early onset of noise in the simulated data with shot noise, suggests the latter is the limiting factor in our experiments. We thus conclude that the other errors discussed above (e.g. the finite numbers of sources and detectors, CCD noise, errors in the diffusion model, non-ideal optics, and non-linearity) do not play a significant role in limiting image resolution. We see that noise begins to dominate the data at q max/π≈0.1 mm-1. This corresponds to a spatial resolution of ℓ1 cm. For objects closer to the surface, the power spectrum decays more slowly. For example, for a point absorber located 1 cm from the surface, shot noise begins to dominate the data at q max/π≈0.25 mm-1, which corresponds to a spatial resolution of ℓ4 mm.
4.2. Titration experiments
The saturation effect seen in Fig. 5 can be explained as follows. When the absorption of the target is very high, most of the light is absorbed as soon as it enters the target and almost no light reaches its interior; the absorption coefficient of the interior can be arbitrarily changed with no significant effect on the measured signal. This is a manifestation of the nonlinearity of the inverse problem of DOT. Note that the onset of nonlinearity in Fig. 5 occurs at absorber concentrations which are well beyond the range of contrast encountered in biological tissues. We finally note that the nonlinearity becomes stronger when the absorbing target becomes larger, as less and less light can penetrate the interior.
We have obtained high quality, quantitatively accurate, reconstructed images of complex structures deeply embedded in highly-scattering media. This result was achieved by using both a non-contact scanner capable of collecting large amounts of data and a fast image reconstruction algorithm capable of utilizing this data. We expect that these techniques will greatly improve the utility of diffuse optical methods in biomedical imaging.
This research was supported, in part, by the NIH grants R01-CA75124, R01-EB-002109, NTROI 1U54CA105480, P41RR02305, R21EB004524, R01-EB-004832 and by the NSF under grants DMS-0554100 and EEC-0615857.
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