Open Access
1 May 2007 Combined magnetic resonance and bioluminescence imaging of live mice
Mathieu Allard, Daniel Coté, Lorinda Davidson, Jun Dazai, Mark Henkelman
Author Affiliations +
Abstract
We perform combined magnetic resonance and bioluminescence imaging of live mice for the purpose of improving the accuracy of bioluminescence tomography. The imaging is performed on three live nude mice in which tritium-powered light sources are surgically implanted. High-resolution magnetic resonance images and multispectral, multiview bioluminescence images are acquired in the same session. An anatomical model is constructed by segmenting the magnetic resonance images for all major tissues. The model is subsequently registered with nonlinear transformations to the 3-D light exittance (exiting intensity) surface map generated from the luminescence images. A Monte Carlo algorithm, along with a set of tissue optical properties obtained from in vivo measurements, is used to solve the forward problem. The measured and simulated light exittance images are found to differ by a factor of up to 2. The greatest cause of this moderate discrepancy is traced to the small errors in source positioning, and to a lesser extent to the optical properties used for the tissues. Discarding the anatomy and using a homogeneous model leads to a marginally worse agreement between the simulated and measured data.

1.

Introduction

Molecular imaging is concerned with detecting, localizing, and quantifying specific biomolecular processes in living cells.1, 2, 3 Many uses have been proposed and demonstrated, such as tracking of specific cells, cancerous or not,4, 5, 6, 7 and observation of patterns of gene expression.8, 9, 10 Among all the imaging modalities that are used for molecular imaging, optical techniques stand out because of the inherent ease of use, safety, and low cost. Optical imaging can be accomplished either with fluorescence, using fluorescent proteins [green fluorescent protein (GFP) and its variants] or exogenous probes,11 or with bioluminescence, for which luciferases produce light.4 In this paper, we focus exclusively on bioluminescence imaging.

There has been much effort lately devoted to transforming bioluminescence imaging from a 2-D, planar imaging technique into a truly 3-D tomographic imaging modality applicable to small animals. 12, 13, 14, 15, 16, 17, 18 A parallel effort has been carried out with fluorescence imaging.7, 11, 19 The steps needed to realize bioluminescence tomography are, first, to acquire 2-D bioluminescence images (possibly multispectral) from different views and to generate a map of the light exittance (the intensity of the light exiting the body) on the animal skin; second, to generate an anatomical model of the animal from independently acquired tomographic images and to register it with the optical images; third, to solve the forward problem, that is, to compute the light exittance map given the anatomical model and a volumetric distribution of the source of bioluminescence; fourth, to solve the inverse problem, that is, to find the source distribution that minimizes the difference between the computed and measured exittance maps. The first two steps offer many challenges of their own, and some researchers have devoted extensive efforts in constructing elaborate anatomical models.20, 21 However, most of the research has been focused on the forward and inverse problems.

The forward problem can be solved using Monte Carlo simulations,22, 23 finite-element methods,24, 25 or analytical methods (approximate or perturbative) based on Green’s function.12, 13, 18 All of them have in common that they operate on an anatomical model consisting of the union of several regions corresponding to different tissues in the animal. When building such a model, one must assign an absorption coefficient and a reduced scattering coefficient to each tissue. These values should be measured independently of the bioluminescence imaging experiment. How accurate bioluminescence tomography can be as an imaging modality therefore critically depends on how the chosen values for the optical properties are representative of the true properties of the tissues. Obtaining accurate optical tissue properties is quite challenging, however. First, measurements of absorption and scattering coefficients are notoriously difficult to accomplish.26, 27, 28, 29 Most published values were measured on fixed or frozen tissue samples and may not be representative of the in vivo properties of tissues. Second, even properties measured in vivo on one animal may not be accurate when applied to another animal of another age, strain, or disease state. Third, the validity of the implicit assumption that the optical properties are homogeneous within a given organ or tissue is open to questioning, especially in organs with obvious heterogeneity such as kidneys and gut.

Several algorithms that can solve the inverse problems have been described in recent published work. 15, 16, 17, 18, 30, 31, 32 Generally, numerical or experimental phantoms are used to test the accuracy of the algorithms. The phantoms have well-characterized optical properties, and the three problems just described do not arise.

In this paper, we present a methodology to acquire and coregister magnetic resonance imaging (MRI) and bioluminescence imaging (BLI) images on live mice. From MRI images, we constructed an anatomical model and solve the forward problem of bioluminescence tomography. Our main goal is to investigate how accurately the forward problem can be solved in a real mouse. Another objective is to evaluate how much a detailed anatomical model contributes to the accuracy of the solution, and whether bioluminescence tomography is feasible without. We believe that the accuracy of the anatomical models and of the tissue optical properties in this paper is as good as it can be, given the restrictions imposed by working with live mice. We expect that our findings will be applicable to real bioluminescence imaging experiments for preclinical studies.

The experiments on which we report here consisted of implanting artificial light sources at known locations in live mice, and performing combined MRI and BLI. Strictly speaking, this is not bioluminescence, however, we will keep the BLI acronym for clarity. The anatomical model was created by segmenting the MRI images. The optical properties, obtained from collaborators, were measured in vivo directly on the organs of a live mouse with a multifiber probe. Simulated exittance maps, obtained with a Monte Carlo algorithm, were then directly compared to the measured data. To ensure that the findings are applicable to bioluminescence sources located in various tissues, we performed identical experiments on three mice, with the artificial sources implanted at three different locations.

We chose to focus exclusively on the forward problem, and have not attempted to reconstruct bioluminescence images, even though reconstruction of images is the end-goal of bioluminescence tomography. Although the progress has been rapid in this field, the algorithms for solving the inverse problems are known to introduce errors, which could complicate the interpretation of the results presented here.

This paper is structured as follows. Section 2, describes how the magnetic resonance and luminescence measurements were carried out. The construction of the anatomical models and the simulations of the propagation of light in the mice is presented in Sec. 3. Section 4 presents the simulated and the measured light exittance maps, and quantifies the agreement between the two. We discuss the implications of our results in Sec. 5, and conclude the article.

2.

Experiment

CD1-Nude mice (Charles River Labs, Wilmington, Massachusetts) were used as animal models since hair interferes with optical measurements. The experiments were performed on three female mice, aged from 3to9months and weighing from 24to28g . All animal protocols were approved by the Animal Care Committee of the Hospital for Sick Children, which is subject to the Canadian Council on Animal Care regulations.

To simulate bioluminescent sources, we surgically implanted Trasers from MB-Microtec (Bern, Switzerland) in three live nude mice. These permanent light sources are cylindrical glass vessels ( 0.9mm in diameter, 2.5mm in length) internally coated with an orange phosphor and filled with tritium gas. The total light output from the Trasers was typically 2.0×108photonss , or about 6.6pW . We measured the spectrum of the light emitted by the Traser; it is shown in Fig. 1 . In the first nude mouse (henceforth called mouse 1), a Traser was glued to the left kidney capsule with Vetbond from 3M. In the second mouse (mouse 2), a Traser was glued to a liver lobe near the gall bladder. In the third mouse (mouse 3), a Traser was glued to the outer wall of the small intestine. The wounds were allowed to heal for at least 1week before imaging was performed. The implantation of the Trasers did not appear to have any lasting impact on the health of the mice.

Fig. 1

Spectrum of the light emitted by the tritium-powered light source (Traser) implanted in the mice.

034018_1_018703jbo1.jpg

The MRI was performed with a 7-T Inova scanner from Varian (Palo Alto, California, USA). The BLI was performed with an IVIS-3D prototype system from Xenogen (Alameda, California, USA), which is capable of acquiring luminescence images at multiple wavelengths and from multiple views and to produce 3-D images of the animal. To enable sequential MRI and BLI while the mouse remained in the same posture, we built a MRI-compatible platform that could be used in both instruments (see Fig. 2 ). For MRI, the platform is integrated in a larger setup that comprises an rf coil, delivery and scavenging systems for the anesthetic gas, a warm-air heating system, and monitors for respiration, heart rate and temperature.

Fig. 2

(a) Exploded computer drawing of the platform on which the MRI and the BLI were performed. The setup comprises three independent parts: first, the top piece of the rf coil; second, the platform itself (which comprises the anesthetic gas inlet); third, the supporting base, which incorporates the heating, monitoring systems and the bottom piece of the rf coil. All three parts are used in the MRI scan, while only the platform is used in the BLI scan. (b) Photograph of the platform alone; the mouse is supported by a net made of a fine nylon filament, and held in place by a bite bar and a tail restraint. (c) Photograph of the assembled platform. The pipe on the left brings warm air; the ones on the right deliver the anesthetic gas and connects to the scavenging pump. The white rods are used to tune and match the rf coil.

034018_1_018703jbo2.jpg

To maximize the signal-to-noise ratio (SNR) in the MRI images, we custom-designed and built a modified birdcage coil, 5cm in diameter and 15cm long. The dimensions were selected to enable the mouse to be imaged with stretched limbs; this is preferable for BLI. Since the platform was 8.5cm wide, the coil was split into two asymmetric parts (above and below the platform) that were inductively coupled. The capacitors in the coil end-rings were individually selected to balance the current in the rungs. Standard MRI tests showed that the coil had a quality factor Q of 60 when loaded.

The MRI images were acquired with a 3-D fast spin-echo sequence. The scan parameters were echo time (TE)=7.1ms (effective), repetition time (TR)300ms , isotropic resolution of 0.208mm , field of view of 25×37×100mm3 , six echos, and four averages. The field of view covered the entire mouse. Prospective gating was used for both the respiration and the heart rate to ensure that the acquisition was all done during the quiescent part of the breathing cycle and at the same point of the cardiac cycle. The TR was selected to be two heartbeats. The total imaging time was approximately 120min . No contrast agent was used. The mouse was maintained under anesthesia with isoflurane during the scan. The image contrast was characteristic of the first echo and the average SNR was 23.

The BLI images were acquired immediately after the MRI was complete. During the transfer between the two instruments, the mouse remained under anesthesia and in the same posture. Luminescence images were acquired in eight views ( 45deg apart), at three different wavelengths (580, 620, and 640nm ), and for 3min each. The IVIS-3D system uses a structured illumination system to reconstruct the 3-D surface of the mouse.15 The luminescence images are then projected on this surface to create an intensity map on the skin of the mouse. The IVIS-3D can compute an approximate volume reconstruction of the distribution of the luminescence source.15 This algorithm does not take into account the anatomy of the mouse, however, and was not used in this study.

3.

Model

Before the propagation of light from the source to the skin could be simulated with the Monte Carlo algorithm, the following steps had to be taken: registration of BLI and MRI images to each other, segmentation of MRI images, and generation of surfaces defining the interfaces between tissues. These steps were performed independently on all three mice.

The MRI and BLI images were first aligned manually using the 3-D visualization software AMIRA from Mercury Computer Systems (San Diego, California, USA). The MRI image was rotated (along three axes) and translated (along three axes) until the skin in both images coincided. No scaling was applied since both instruments are absolutely calibrated in millimeters. The BLI and MRI images were both cropped in the rostral-caudal direction to the abdominal region, where luminescence was detected. Because the MRI and BLI images were acquired with the mouse in the same posture, the location of the body surface generally coincided in the two images. To remove any residual differences, the two images were registered automatically with a nonlinear transformation. This was accomplished with the MINCTRACC program, distributed by the Montreal Neurological Institute of the McGill University.33, 34 The algorithm searched for the transformation that maximized the cross-correlation between the binary interior-exterior images generated from the MRI and BLI images. We selected for the algorithm a blurring kernel of 1mm and a stiffness parameter of 0.99.

The registered MRI image was then manually segmented for all major tissues with AMIRA. The following tissues were identified in the mouse abdomen: heart, lungs, liver, stomach, small intestines, colon, kidneys, spleen, bladder, uterus, muscle, fat, bones, and spine. As it is difficult to differentiate the intestines from the pancreas and other conjunctive tissues in the MRI image, all of these were considered part of the same tissue. The few remaining unlabeled voxels (mostly in the skin, conjunctive tissue, and small muscles) were considered to be part of a single tissue group. Following the segmentation, the volume data was transformed into a series of surfaces that defined the interfaces between the tissues, again with AMIRA. The surfaces consisted of closed meshes of triangles. The surfaces were then automatically simplified to reduce the total number of triangles to approximately 25,000 for all interfaces combined.

The optical properties for each segmented tissue [absorption coefficient μa and reduced scattering coefficient μs=(1g)μs ] were provided by (and are proprietary to) Xenogen. For all tissues considered here, μa ranged from 4.4to41cm1 at 580nm and from 0.35to3.2cm1 at 640nm . Values of μs ranged from 4.5to45cm1 , with little dependence on wavelength. The refractive index was taken to be 1.4 for all tissues.28 The optical properties were measured in vivo with optical fiber probes.29, 35

The position of the Trasers was determined directly from the MRI images, where they appear as dark cylinders. The optical power (at each wavelength) of the bare Trasers was measured with the IVIS-3D systems prior to their implantation in the mice.

The optical simulations were carried out with the POLMC software,36 which employs a standard Monte Carlo algorithm to generate paths of photons from the source to the skin of the mouse. In each simulation, 107 photons paths were generated, which was large enough to effectively eliminate statistical noise. The algorithm was implemented with isotropic scattering, that is, with g=0 and μs=μs . For each mouse, the simulation was carried once for each wavelength (580, 620, and 640nm ). The simulation was then run twice again at 620nm using a homogeneous medium for the entire body; we used, first, the optical properties of muscle (the largest tissue group), and second, the properties of the tissue surrounding the Traser (liver or intestines). Each simulation took of the order of 8h to run on a personal computer.

4.

Results

Magnetic resonance images were acquired under the same conditions on all three mice. A sagittal slice from the MRI image of mouse 3 is shown in Fig. 3 , along with an image showing the labels in the same slice. In the same figure we also show a 3-D view of the tissue interfaces, which by themselves alone constitute the anatomical model. Apart from small postural differences, there are no striking differences between the images of the three mice.

Fig. 3

(a) Magnetic resonance image of mouse 3 (sagittal slice); (b) same slice as (a), where the different tissues have been colored and the labeled tissues are listed in the text, and (c) 3-D dorsal view of the segmented tissues.

034018_1_018703jbo3.jpg

The BLI images are shown in Fig. 4 . The planar ventral view of mouse 3 clearly shows the illumination spot due to the Traser glued to the outer intestinal wall. The 3-D views provide a better overall picture, however. The spots due to the Traser glued to the left kidney (for mouse 1) and the one implanted in the liver (for mouse 2) are clearly visible. Within the imaging conditions selected, no luminescence other than that of the Traser could be detected; in other words, there is no detectable autoluminescence. Instrument noise is the only source of background signal, and was eliminated by applying a suitable threshold to the data ( 2700photonss1cm2sr1 , or 0.14% of the peak luminescence, in Figs. 4a and 4b) before reconstructing the surface luminescence images.

Fig. 4

(a) Ventral view of mouse 3. This is a color-coded luminescence image (taken at 620nm ) superimposed on a black and white photograph. (b) Dorsal view of mouse 3. Images in (a) and (b) are shown on the same color scale. (c) 3-D dorsal view of mouse 1; the luminescence is denoted by a logarithmic color scale, normalized to the peak exittance and covering two orders of magnitude in brightness. (d) Same, with mouse 2 (ventral view). (e) Same, with mouse 3 (ventral view).

034018_1_018703jbo4.jpg

As explained in Sec. 3, the MRI images (along with the tissue labels) were registered in two steps to the surfaces created from the luminescence imaging software. Figure 5 shows the accuracy of the registration, after the first (manual and linear) step and after the second (automatic and nonlinear) step. Over the midbody sagittal slice, the contours of the MRI and BLI images were at most 2.8mm from each other after the first step. The largest distance was found where the mouse was resting on the raised respiration monitoring pad during the MRI; this pad was absent during the BLI. The second registration step successfully brought into coincidence the position of the skin in the two images: the contours were then at most 0.4mm (2 voxels) of each other everywhere.

Fig. 5

Left: binary MRI (top) and BLI (middle) images (sagittal slice) of mouse 3, with the interior shown in white and the exterior in black, after they were linearly coregistered. The image at the bottom is a superposition of the other two, with gray areas denoting where they do not coincide. Right: Same slice, after the nonlinear automatic registration step. The gray areas have almost disappeared.

034018_1_018703jbo5.jpg

Monte Carlo simulations of the propagation of light were carried out on the registered anatomical models for all three mice. The computed light exittance patterns were then compared to the measured exittance patterns shown in Fig. 4. For mouse 3, the simulated and measured images are shown side by side (on the same intensity scale) in Fig. 6 . The position of the illumination spot is the same in both images, and its spatial extent is slightly larger in the measured image. The peak intensity is also about 2.5 times greater in the measured image, although this is not obvious because of the logarithmic scale. Although the intensity scale was chosen to fit the range of exittance in the images, we emphasize that this is an absolute measurement. Integrating the exittance over the whole body surface shows that 5.3% of the light emitted by the Traser (2.1% in the simulation) escapes the mouse’s body at 620nm .

Fig. 6

(a) Measured light exittance on mouse 3. (b-d) Simulated light exittance on mouse 3 (b) using heterogeneous optical properties, (c) using homogeneous optical properties equal to those of intestines, and (d) using homogeneous optical properties equal to those of muscles. The four images are shown on the same logarithmic color scale, normalized to the peak of image (a) and spanning two orders of magnitude.

034018_1_018703jbo6.jpg

Table 1

Comparison of measurements and simulations.

Data setExittanceSpot Area (mm2) Peak Distance (mm)NRMS Difference (%)
Peak (mm−2) Total (—)
Mouse 1: Traser on kidney
580nm
  Measured 3.9×105 3.3×104 7
  Simulated
   Heterogeneous 8.0×106 9.5×105 102.5200
620nm
  Measured 4.0×104 1.9×102 22
  Simulated
   Heterogeneous 4.5×104 1.8×102 251.632
   Homogeneous: intestines1 4.6×104 1.9×102 260.529
   Homogeneous: muscle1 9.0×104 4.8×102 300.598
640nm
  Measured 5.3×104 3.0×102 28
  Simulated
   Heterogeneous 7.0×104 3.4×102 280.542
Mouse 2: Traser in liver
580nm
  Measured222
  Simulated
   Heterogeneous 1.4×108 1.9×108 4
620nm
  Measured 9.7×105 3.8×103 17
  Simulated
   Heterogeneous 2.2×105 2.2×103 280.9150
   Homogeneous: liver1 1.4×105 1.2×103 220.6230
   Homogeneous: muscle1 1.0×104 1.6×102 390.955
640nm
  Measured 1.6×104 7.2×103 21
  Simulated
   Heterogeneous 5.3×103 3.6×103 360.6100
Mouse 3: Traser in intestines
580nm
  Measured 1.0×104 2.4×103 18
  Simulated
   Heterogeneous 8.1×106 1.8×104 211.0340
620nm
  Measured 1.1×103 5.3×102 25
  Simulated
   Heterogeneous
    Center of Traser 3.8×104 2.1×102 361.095
    Ventral end of Traser4 1.3×103 4.3×102 251.029
    Dorsal end of Traser4 1.6×104 1.1×102 431.6200
    Extended source5 6.1×104 2.5×102 281.071
    Center, μa reduced3 6.3×104 3.6×102 391.052
   Homogeneous: intestines1 2.9×104 1.1×102 291.0150
   Homogeneous: muscle1 6.1×104 3.1×102 331.063
640nm
  Measured 1.3×103 7.3×102 27
  Simulated
   Heterogeneous 6.1×104 3.5×102 391.075
Peak exittance: peak intensity on skin, normalized to source power. Total exittance: integrated intensity on skin, normalized to source power. Spot area: area over which exittance exceeds half of peak value. Peak distance: distance between peak locations in measured and simulated images. NRMS difference: normalized root mean square difference between measured simulated and measured images.

1The optical properties of the given tissue were used in the homogeneous model.

2The exittance was too small to enable an accurate measurement.

3The absorption coefficient was reduced by 33% for every tissue.

4The source was moved in the ventral or dorsal directions by 1.2mm (half the length of the Traser).

5Obtained by averaging the luminescence maps for the three source positions.

To provide a better and more quantitative measure of how close the measured and simulated data are, we compared relevant statistics on the two data sets. The peak exittance, the fraction of the total emitted optical power exiting the mouse, and the area of the illumination spot (taken to be the region where the exittance exceeds half of its peak value) were computed for all three mice and are shown in Table 1 . The distance between the exittance peak positions in the measured and simulated exittance images was also computed. These numbers were computed independently at all three wavelengths. These numerical measures enable an easier comparison of the simulated and measured data sets than the graphical images. Accordingly, to save space, we chose not to show the simulated images on mice 1 and 2, or those obtained at 580 and 640nm .

To directly compare the measured and simulated data sets, the measured and simulated exittance patterns must first be mapped onto a common surface mesh. Although the meshes in the anatomical model and in the measured BLI image are defined on approximately the same surface, the locations of the vertices in the two meshes are independent. This was done with a linear 2-D interpolation scheme, where the position of the vertices above or below the surface was ignored. The mapping enabled us to compute a normalized root mean square (NRMS) difference between the two data sets, according to the following formula:

Eq. 1

NRMSdifference={i[(IimeasIisim)ai]2[i(Iimeasai)2]12[i(Iisimai)2]12}12,
where the sum is made over all triangles; and Iimeas and Iisim are the measured and simulated intensity mapped to the same triangle i , of which ai is the area.

The absorption of tissue is known to increase significantly below 600nm , where hemoglobin absorbs strongly.28 Accordingly, we find that the fraction of the emitted light that exits the body at 580nm is at least one order of magnitude smaller than at 620nm , both in the simulated and in the measured data. Another direct consequence of the increased absorption is the smaller illumination spots. There is, on the other hand, a much smaller difference between the 620- and 640-nm data sets.

A direct comparison of measured and simulated exittance shows different degrees of correspondence for the three Traser locations. The agreement is generally excellent for mouse 1 (Traser on kidney), for which the differences in peak and total exittance are less than 10%. The distance between the measured and simulated location of the peak exittance is small: 1.6mm is about the length of the mesh triangles. This small difference is, however, large enough to cause a significant NRMS difference of 32%. This shows how sensitive the latter is to small differences in data sets. The agreement between simulation and measurement is not as good for mouse 2 (Traser in liver), for which the peak and total exittance differ by factors of about 4 and 2, respectively. Accordingly, the NRMS difference takes a very large value, over 100%. For mouse 3 (Traser in intestines), the peak and total exittance both differ by a factor of about 2.5. The origin and significance of these discrepancies are discussed in the next section.

Figure 6 and Table 1 also show the simulated exittance data when the mouse body was assumed to be a single homogeneous medium. The results show that the measured exittance was, in all cases, in marginally worse agreement with the simulated exittance in the homogeneous case than in the heterogeneous case, when the properties of the homogeneous medium were taken to be those of the tissue in which the Traser was located. The difference between the heterogeneous and the homogeneous simulation was moderate, and in all cases smaller than the difference between the measured and the simulated data. Using muscle properties for the homogeneous medium, however, resulted in large changes in the simulated exittance and made the agreement with the measurement much worse.

In the Monte Carlo simulations, we used the reduced scattering coefficient and assumed isotropic scattering. It is, however, straightforward to implement anisotropic scattering in a Monte Carlo simulation. Although the anisotropy parameter g is not known for every tissue in the model, it is known that its value is quite high and that animal tissues are generally forward scattering.27, 28 To estimate how much of an error is made by assuming isotropic scattering, we have repeated the simulation on mouse 3 (at 620nm ) with g=0.9 for all tissues; accordingly, μs was multiplied by 10 to keep μs=μs(1g) unchanged. We found that the exittance patterns appeared to be essentially the same in the two cases, except that the exittance computed with g=0.9 was systematically 10% lower. This number is approximately equal to the amount of energy lost by a photon at every scattering step, and is considered to be small and acceptable in this simulation. This confirms that, at the scale relevant to bioluminescence tomography, the anisotropy of the light scattering is inconsequential.35

5.

Discussion

In the previous section, the discrepancy between the simulated and the measured bioluminescence images was quantified in terms of the differences in the peak exittance, total exittance, spot size and peak position, as well as with the NRMS difference. Generally, these numerical measures provide a good quantitative measure of the “difference” between the simulated and measured data, more so than a visual comparison between the 3-D exittance images. It is obvious, however, that global statistical measures of this difference, such as the NRMS difference, are of limited use, because their magnitude is determined mostly by small errors in the placement of the source. The cross-correlation of the measured and computed exittances is of no use here, because all the mesh triangles with zero exittance contribute to generate a very high number for it.

Ultimately, it is the discrepancy between the reconstructed BLI image and the true source distribution that will matter. This discrepancy will strongly depend on the details of the inverse algorithm: how many wavelengths are used simultaneously, what prior knowledge and assumptions are incorporated in the algorithm, what regularization function is used, etc. As the inverse problem in bioluminescence tomography is known to be underdetermined,37 each of these factors can have a significant impact on the reconstructed image.

Going back to peak and total exittance and spot areas, we found significant differences between the simulated and measured data; a factor of 4 in the worst case. From our analysis, it seems reasonable to expect, in solving the forward problem in a general case, an error in the exittance of a factor of 2 or so. This discrepancy is expected to carry over to the reconstructed BLI images. Its impact would depend on the nature of the study in which the BLI images are used. For example, when tracking the exponential growth of a tumor, an error by a factor of 2 may not be important.

Still, the reasons for this discrepancy must be investigated further. The source of the error could be in any one or more of the following: the spatial map of the tissue optical properties, the position of the Traser, or the Monte Carlo algorithm itself. Since the general Monte Carlo algorithm (and the POLMC code itself, in particular) has been extensively tested, it is not a likely candidate. We chose instead to investigate, through more simulations, how a small change in the absorption coefficient of every tissue, or changes in the Traser position, affect the exittance patterns.

First, we repeated the simulation with the model for mouse 3, with which the largest overall discrepancy was obtained, but this time we decreased the absorption coefficient μa by 33% for all tissues. Note that the magnitude of this change is much smaller than the variation in μa between tissues, which is as large as a factor of 10. The results are presented in Table 1. The lower absorption brought the peak and total exittance more in line with the measured value, but the spot size in the simulation increased further away from the measured value, as is to be expected.

Second, we placed the source at either extremity of the Traser, which were found to be (in the MRI image) 1.2mm away from the original source in the ventral and dorsal directions. Moving the source ventrally improved substantially the agreement between the measurement and the simulation, whereas moving it dorsally worsened it. Finally, we averaged the luminescence maps obtained with the source at the three positions, which is close to equivalent to the simulation of an extended source. This is the most realistic case, and it also improves the agreement. Overall, this demonstrates how sensitive the simulation is to small errors in source positioning, more so than to small errors in optical properties. Accordingly, how extended sources are handled in the calculation, even at the submillimeter scale, is expected to play a major role in its accuracy.

One of our initial objectives was to determine what error is incurred by ignoring the anatomy of the mouse, that is, by replacing the tissue map by a homogeneous medium in the simulation. It is obvious that using a single set of optical properties for sources located in different organs or tissues (as we did with muscle properties) causes large errors, by an order of magnitude or more. When the properties of the tissue in which the source is located are used, the agreement with the measured data is still worse than when the heterogeneous model is used. However, the additional error incurred is comparable to the original difference between the measured data and the data simulated with the heterogeneous model. We repeated the homogeneous simulation once more with the model of mouse 3 using three source positions and averaging, as we did with the heterogeneous model. The conclusion was the same: the agreement with the measured data improved substantially, but the data obtained from the heterogeneous model was still better.

Overall, the heterogeneous model is always superior to the homogeneous model, but only marginally so. In some cases, it may still be possible, though not as accurate, to carry out the bioluminescence image reconstruction with a homogeneous model, for example, when the source is confined to a region where the optical properties do not vary greatly between the tissues present, or when the tissue containing the source extends all the way to the skin.

6.

Conclusions

We investigated how an anatomical model may be constructed from magnetic resonance images and incorporated in solving the forward problem (the propagation of light in tissue) in a live mouse. Our analysis was performed on three live mice in which tritium-powered artificial sources were surgically implanted. The model was successfully registered, with nonlinear transformations, to the 3-D exittance image. A direct and absolute comparison of the simulated and measured exittance images show differences ranging from a few percents to a factor of two or so. The main cause of the discrepancy was traced back to small errors in source placement and in the way by which extended sources were handled. A lesser part of the disagreement is likely due to inevitable errors in the optical properties (particularly in the absorption coefficient).

Our analysis reveals that a detailed anatomical model of the mouse marginally improves the accuracy of the simulated bioluminescence images and, by extension, should do so also for the reconstructed images. The improvement in the simulated images is not large enough to lead us to believe that bioluminescence tomography is impossible without this anatomical model: it may be sufficient to know in which tissue the source is generally located. Having the anatomical model and a realistic list of optical properties is also not sufficient to eliminate the discrepancy between the simulated and measured exittance patterns. The way that extended sources are handled and the accuracy of the a priori knowledge of the optical properties of tissues in the mouse that is imaged will put an ultimate limit on the accuracy of forward-simulated images.

Acknowledgments

We wish to thank Xenogen for their support. M. Allard acknowledges the support of the National Science and Engineering Research Council of Canada. R. M. Henkelman holds a Canada Research Chair in Imaging.

References

1. 

R. Weissleder and V. Ntziachristos, “Shedding light onto live molecular targets,” Nat. Med., 9 123 –128 (2003). 1078-8956 Google Scholar

2. 

T. F. Massoud and S. S. Gambhir, “Molecular imaging in living subjects: Seeing fundamental biological processes in a new light,” Genes Dev., 17 545 –580 (2003). https://doi.org/10.1101/gad.1047403 0890-9369 Google Scholar

3. 

S. R. Cherry, “In vivo molecular and genomic imaging: New challenges for imaging physics,” Phys. Med. Biol., 49 R13 –48 (2004). https://doi.org/10.1088/0031-9155/49/3/R01 0031-9155 Google Scholar

4. 

C. H. Contag and B. D. Ross, “It’s not just about anatomy: In vivo bioluminescence imaging as an eyepiece into biology,” J. Magn. Reson Imaging, 16 378 –387 (2002). 1053-1807 Google Scholar

5. 

C. H. Contag and M. H. Bachmann, “Advances in in vivo bioluminescence imaging of gene expression,” Annu. Rev. Biomed. Eng., 4 235 –260 (2002). https://doi.org/10.1146/annurev.bioeng.4.111901.093336 1523-9829 Google Scholar

6. 

J. Virostko, Z. Chen, M. Fowler, G. Poffenberger, A. C. Powers, and E. D. Jansen, “Factors influencing quantification of in vivo bioluminescence imaging: application to assessment of pancreatic islet transplants,” Mol. Imaging, 3 333 –342 (2004). https://doi.org/10.1162/1535350042973508 1535-3508 Google Scholar

7. 

X. Montet, V. Ntziachristos, J. Grimm, and R. Weisslader, “Tomographic fluorescence mapping of tumor targets,” Cancer Res., 65 6330 –6336 (2005). https://doi.org/10.1158/0008-5472.CAN-05-0382 0008-5472 Google Scholar

8. 

Y. Xu, D. W. Piston, and C. H. Johnson, “A bioluminescence resonance energy transfer (BRET) system: application to interacting circadian clock protein,” Proc. Natl. Acad. Sci. U.S.A., 96 151 –156 (1999). https://doi.org/10.1073/pnas.96.1.151 0027-8424 Google Scholar

9. 

S. Y. Lee, Zh. Wang, C.-K. Lin, C. H. Contag, L. C. Olds, A. D. Coopers, and E. Sibley, “Regulation of intestine-specific spatiotemporal expression by the rat lactase promoter,” J. Biol. Chem., 277 13099 –13105 (2002). https://doi.org/10.1074/jbc.M112152200 0021-9258 Google Scholar

10. 

D. E. Jenkins, S.-F. Yu, Y. S. Hornig, T. Purchio, and P. R. Contag, “In vivo monitoring of tumor relapse and metastasis using bioluminescent PC-3M-luc-C6 cells in murine models of human prostate cancer,” Clin. Exp. Metastasis, 20 745 –756 (2003). 0262-0898 Google Scholar

11. 

V. Ntziachristos, C. Bremer, and R. Weissleder, “Fluorescence imaging with near-infrared light: New technological advances that enable in vivo molecular imaging,” Eur. Radiol., 13 195 –208 (2003). 0938-7994 Google Scholar

12. 

S. R. Arridge and J. C. Hebden, “Optical imaging in medicine: II. Modelling and reconstruction,” Phys. Med. Biol., 42 841 –853 (1997). https://doi.org/10.1088/0031-9155/42/5/008 0031-9155 Google Scholar

13. 

S. R. Arridge, “Optical tomography in medical imaging,” Inverse Probl., 15 R41 –93 (1999). https://doi.org/10.1088/0266-5611/15/2/022 0266-5611 Google Scholar

14. 

H. Dehghani, B. W. Pogue, J. Shudong, B. Brooksby, and K. D. Paulsen, “Three-dimensional optical tomography: resolution in small-object imaging,” Appl. Opt., 42 3117 –3128 (2003). 0003-6935 Google Scholar

15. 

C. Kuo, O. Coquoz, D. G. Stearns, and B. W. Rice, “Diffuse luminescence tomography of in vivo bioluminescent markers using multi-spectral data,” 180 (2004). Google Scholar

16. 

X. Gu, Q. Zhang, L. Larcom, and H. Jiang, “Three-dimensional bioluminescence tomography with model-based reconstruction,” Opt. Express, 12 3996 –4000 (2004). https://doi.org/10.1364/OPEX.12.003996 1094-4087 Google Scholar

17. 

A. J. Chaudhari, F. Darvas, J. R. Bading, R. A. Moats, P. S. Conti, D. J. Smith, S. R. Cherry, and R. M. Leahy, “Hyperspectral and multispectral bioluminescence optical tomography for small animal imaging,” Phys. Med. Biol., 50 5421 –5441 (2005). https://doi.org/10.1088/0031-9155/50/23/001 0031-9155 Google Scholar

18. 

W. Cong, K. Durairaj, L. V. Wang, and G. Wang, “A Born-type approximation method for bioluminescence tomography,” Med. Phys., 33 679 –686 (2006). https://doi.org/10.1118/1.2168293 0094-2405 Google Scholar

19. 

A. X. Cong and G. Wang, “A finite-element-based reconstruction method for 3D fluorescence tomography,” Opt. Express, 13 9847 –9857 (2005). https://doi.org/10.1364/OPEX.13.009847 1094-4087 Google Scholar

20. 

W. P. Segars, B. M. W. Tsui, E. Frey, G. A. Johnson, and S. S. Berr, “Development of a 4-D digital mouse phantom for molecular imaging research,” Molec. Imaging Biol., 6 149 –159 (2004). Google Scholar

21. 

C. Kuo, D. G. Stearns, and B. W. Rice, “Photon source localization and intensity quantification in diffuse luminescence tomograghy,” 290 (2004). Google Scholar

22. 

B. C. Wilson and G. Adam, “A Monte Carlo model for the absorption and flux distributions of light in tissue,” Med. Phys., 10 824 –830 (1983). https://doi.org/10.1118/1.595361 0094-2405 Google Scholar

23. 

H. Li, J. Tian, F. Zhu, W. Cong, L. V. Wang, E. A. Hoffman, and G. Wang, “A mouse optical simulation environment (mose) to investigate bioluminescent phenomena in the living mouse with the Monte Carlo method,” Acad. Radiol., 11 1029 –1038 (2004). 1076-6332 Google Scholar

24. 

S. R. Arridge, M. Schweiger, M. Hiraoka, and D. T. Delpy, “A finite element approach for modeling photon transport in tissue,” Med. Phys., 20 299 –309 (1993). https://doi.org/10.1118/1.597069 0094-2405 Google Scholar

25. 

M. Schweiger, S. R. Arridge, M. Hiraoka, and D. T. Delpy, “The finite element method for the propagation of light in scattering media: Boundary and source conditions,” Med. Phys., 22 1779 –1792 (1995). https://doi.org/10.1118/1.597634 0094-2405 Google Scholar

26. 

B. C. Wilson and S. L. Jacques, “Optical reflectance and transmittance of tissues: principles and applications,” IEEE J. Quantum Electron., 26 2186 –2199 (1990). https://doi.org/10.1109/3.64355 0018-9197 Google Scholar

27. 

W.-F. Cheong, S. A. Prahl, and A. J. Welch, “A review of the optical properties of biological tissues,” IEEE J. Quantum Electron., 26 2166 –2185 (1990). https://doi.org/10.1109/3.64354 0018-9197 Google Scholar

28. 

V. Tuchin, Tissue Optics, SPIE Press, Bellingham, WA (2000). Google Scholar

29. 

F. Bevilacqua, D. Piguet, P. Marquet, J. D. Gross, B. J. Tromberg, and C. Depeursinge, “In vivo local determination of tissue optical properties: applications to human brain,” Appl. Opt., 38 4939 –4950 (1999). 0003-6935 Google Scholar

30. 

G. Alexandrakis, F. R. Rannou, and A. F. Chaziioannou, “Tomographic bioluminescence imaging by use of a combined optical-PET (OPET) system: a computer simulation feasibility study,” Phys. Med. Biol., 50 4225 –4241 (2005). https://doi.org/10.1088/0031-9155/50/17/021 0031-9155 Google Scholar

31. 

H. Dehghani, S. C. Davis, S. Jiang, B. W. Pogue, K. D. Paulsen, and M. S. Patterson, “Spectrally resolved bioluminescence optical tomography,” Opt. Lett., 31 365 –367 (2006). https://doi.org/10.1364/OL.31.000365 0146-9592 Google Scholar

32. 

G. Alexandrakis, F. R. Rannou, and A. F. Chatziioannou, “Effect of optical property estimation accuracy on tomographic bioluminescence imaging: simulation of a combined optical-PET (OPET) system,” Phys. Med. Biol., 51 2045 –2053 (2006). https://doi.org/10.1088/0031-9155/51/8/006 0031-9155 Google Scholar

33. 

D. L. Collins, P. Neelin, T. M. Peters, and A. C. Evans, “Automatic 3D intersubject registration of MR volumetric data in standardized Talairach space,” J. Comput. Assist. Tomogr., 18 192 –205 (1994). https://doi.org/10.1097/00004728-199403000-00005 0363-8715 Google Scholar

34. 

D. L. Collins, C. J. Holmes, T. M. Peters, and A. C. Evans, “Automatic 3-D model-based neuroanatomical segmentation,” Hum. Brain Mapp, 3 190 –208 (1995). 1065-9471 Google Scholar

35. 

F. Bevilacqua and C. Depeursinge, “Monte Carlo study of diffuse reflectance at source-detector separations close to one transport mean free path,” J. Opt. Soc. Am. A, 16 2935 –2945 (1999). 0740-3232 Google Scholar

36. 

D. Côté and I. A. Vitkin, “Robust concentration determination of optically active molecules in turbid media with validated three-dimensional polarization sensitive Monte Carlo calculations,” Opt. Express, 13 148 –163 (2005). https://doi.org/10.1364/OPEX.13.000148 1094-4087 Google Scholar

37. 

G. Wang, Y. Li, and M. Jian, “Uniqueness theorems in bioluminescence imaging,” Med. Phys., 31 2289 –2299 (2004). https://doi.org/10.1118/1.1766420 0094-2405 Google Scholar
©(2007) Society of Photo-Optical Instrumentation Engineers (SPIE)
Mathieu Allard, Daniel Coté, Lorinda Davidson, Jun Dazai, and Mark Henkelman "Combined magnetic resonance and bioluminescence imaging of live mice," Journal of Biomedical Optics 12(3), 034018 (1 May 2007). https://doi.org/10.1117/1.2745298
Published: 1 May 2007
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Cited by 47 scholarly publications and 3 patents.
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KEYWORDS
Tissues

Monte Carlo methods

Magnetic resonance imaging

Bioluminescence

Magnetism

Optical properties

Luminescence

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