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Simulation of Near-Infrared Light Absorption Considering Individual Head and Prefrontal Cortex Anatomy: Implications for Optical Neuroimaging

  • Florian B. Haeussinger ,

    Contributed equally to this work with: Florian B. Haeussinger, Sebastian Heinzel

    Affiliation Department of Psychiatry and Psychotherapy, University of Tuebingen, Tuebingen, Germany

  • Sebastian Heinzel ,

    Contributed equally to this work with: Florian B. Haeussinger, Sebastian Heinzel

    Sebastian.Heinzel@med.uni-tuebingen.de

    Affiliations Department of Psychiatry and Psychotherapy, University of Tuebingen, Tuebingen, Germany, Department of Psychiatry, Psychosomatics and Psychotherapy, University of Wuerzburg, Wuerzburg, Germany, German Center for Neurodegenerative Diseases (DZNE), Bonn, Germany

  • Tim Hahn,

    Affiliations Department of Psychiatry, Psychosomatics and Psychotherapy, University of Wuerzburg, Wuerzburg, Germany, Department of Cognitive Psychology II, University of Frankfurt am Main, Frankfurt am Main, Germany

  • Martin Schecklmann,

    Affiliation Department of Psychiatry and Psychotherapy, University of Regensburg, Regensburg, Germany

  • Ann-Christine Ehlis,

    Affiliation Department of Psychiatry and Psychotherapy, University of Tuebingen, Tuebingen, Germany

  • Andreas J. Fallgatter

    Affiliation Department of Psychiatry and Psychotherapy, University of Tuebingen, Tuebingen, Germany

Abstract

Functional near-infrared spectroscopy (fNIRS) is an established optical neuroimaging method for measuring functional hemodynamic responses to infer neural activation. However, the impact of individual anatomy on the sensitivity of fNIRS measuring hemodynamics within cortical gray matter is still unknown. By means of Monte Carlo simulations and structural MRI of 23 healthy subjects (mean age: years), we characterized the individual distribution of tissue-specific NIR-light absorption underneath 24 prefrontal fNIRS channels. We, thereby, investigated the impact of scalp-cortex distance (SCD), frontal sinus volume as well as sulcal morphology on gray matter volumes () traversed by NIR-light, i.e. anatomy-dependent fNIRS sensitivity. The NIR-light absorption between optodes was distributed describing a rotational ellipsoid with a mean penetration depth of considering the deepest of light. Of the detected photon packages scalp and bone absorbed and absorbed of the energy. The mean volume was negatively correlated () with the SCD and frontal sinus volume () and was reduced by in subjects with relatively large compared to small frontal sinus. Head circumference was significantly positively correlated with the mean SCD () and the traversed frontal sinus volume (). Sulcal morphology had no significant impact on . Our findings suggest to consider individual SCD and frontal sinus volume as anatomical factors impacting fNIRS sensitivity. Head circumference may represent a practical measure to partly control for these sources of error variance.

Introduction

Functional near-infrared spectroscopy (fNIRS) is an optical neuroimaging technique increasingly used to investigate neural processing in healthy subjects and in psychiatric patients [1]. fNIRS relies on the differential absorption of near-infrared (NIR) light by oxygenated and deoxygenated hemoglobin (O2-Hb; H-Hb) and the change in the concentration of O2-Hb and H-Hb mediated by the neurovascular coupling following neural activation. However, other molecules in biological tissue such as melanin also absorb NIR-light [2], but since their concentrations are constant the relative change in NIR-light absorbance during the hemodynamic responses is not impacted by these chromophores [3]. However, due to the highly scattering properties of the heterogeneous biological tissues, a plethora of paths of the emitted NIR-light are possible. As a consequence of NIR-light scattering, only about to of the light reaches the detector, which is commonly positioned in a distance of 3 cm on the head surface of adults. The average path of the emitted NIR-light has been reported to describe a “banana-shaped” [4], [5] or ellipsoid path [6] with an approximate head penetration depth of about 2 cm to 3 cm [4], [6]. Importantly, fNIRS is a reliable technique [7][9] to indirectly detect and quantify neural activity by measuring changes in NIR-light absorption due to O2-Hb and H-Hb concentration changes [3], [10]. Neural signals are mainly integrated, processed and reliably coupled to functional hemodynamic responses within gray matter. Thus, functional neuroimaging commonly focusses on this tissue type.

NIR-light penetration depth has been shown to depend on the scalp-cortex distance (SCD) using spatial distributions of correlations between hemodynamic responses concurrently measured with fNIRS and functional magnetic resonance imaging (fMRI) [6]. However, an impact of individual anatomy and tissue composition on the traversed gray matter volume and its variability between subjects as well as fNIRS-channels, has not been investigated yet. Moreover, while fNIRS measurements of functional hemodynamics within anterior orbitofrontal cortex (OFC) have been conducted [11], the feasibility of fNIRS to measure functional hemodynamics within gray matter underneath frontal sinus sites is still unclear.

The frontal sinus is a fronto-polar air-filled cavity, whose morphology is highly inter-individually variable and may differ among races (mean volume standard deviation (SD): () cm, assessed in adult Caucasians [12]; () cm assessed in (young) adult Asians [13]). The frontal sinus is mostly located rostrally to parts of the OFC. Since air-filled frontal sinus has previously been suggested to affect NIR-light propagation [14], [15], we systematically assessed the relationship between frontal sinus volume and NIR-light penetration depth as well as gray matter volume absorbing NIR-light.

In order to provide a numerical solution for the forward problem of photon migration in highly scattering biological tissues, we implemented a Monte Carlo simulation (MCS) of a large number of photon packages. MCS have repeatedly been used to describe characteristics of photon scattering and migration using head or tissue layer models [16][19]. Also, MCS has been applied to segmented MRI data to compute fNIRS sensitivity spread functions within the visual cortex [20][22]. Hitherto, a MCS of spatial tissue-specific distributions of NIR-light absorbance in the prefrontal cortex has not been conducted.

The MCS implemented in our study considered the following basic principles. The light attenuation between an emitter-detector pair is decribed by where is the intensity of light eradiated by the emitter and is the intensity measured by the detector. The rate of absorption and scattering of a certain tissue depends on the absorption coefficient and the scattering coefficient . Derived from the Radiation Transport Equation the Beer-Lambert law can be used to calculate the attenuation between arbitrarily arranged optodes in an optically homogeneous medium () [23],(1)where is the mean pathlength of all photons and is the fraction of attenuation solely caused by scattering and not by absorption [24]. The total attenuation of light traveling through different homogeneous tissue types, can be calculated by the sum of the partial attenuations. The differential of the total attenuation over () tissue types is proprotional to fNIRS signal changes during a measurement and can be described by:(2)Neural activity is followed by a local increase in blood flow, predominantly in gray matter, which relatively increases -Hb and decreases H-Hb concentrations in the blood, thereby changing the absorption coefficient of a given wavelength and thereby the NIR-light attenuation . However, is proportional to the mean pathlength of the light through gray matter. Thus, the sensitivity of fNIRS to detect changes in -Hb and H-Hb concentrations directly depends on the traversed gray matter volume and the mean partial pathlength through this tissue type. In the present study, we applied a MCS to 24 prefrontal channel positions of a typical fNIRS probe-set using three-dimensional segmented structural MRI data of 23 subjects. We simulated channel-wise NIR-light spatial absorbance maps to systematically quantify the impact of forehead anatomy on gray matter volumes traversed by the NIR-light before detection, i.e. the fNIRS sensitivity. Specifically, we studied the impact of individual and inter-channel anatomical variability of frontal sinus, SCD as well as sulcal geometry on these gray matter volumes.

Results

Spatial distribution of NIR-light absorption

The total absorbed energy from photon packages reaching the detector was of emitted light. The mean number of NIR-light absorbing voxels within the six tissue types is displayed in Table 1. Of the voxels involved in NIR-light absorption within a channel cube, scalp and skull volumes outnumbered CSF , gray matter , white matter and air . Similarily, the energy absorbed from photon packages reaching the detector differed between tissue types (scalp: , skull: , CSF: , gray matter: , white matter: , air: ). Absorbing gray matter had a mean volume of per channel.

Slices through three individual channel cubes (subject #20) exemplify the spatial distribution of different tissues and NIR-light absorbing voxels in (figure 1a, b). Slices of channel-cubes show an absorption pattern similar to an ellipsoid shape as slices move through the emitter-detector plane. The simulated individual absorption distributions reached gray matter in all channel-cube simulations, except in one case (subject #14, channel #18), and had similar spatial characteristics compared to the layer model simulations.

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Figure 1. Illustration of SCD dependent light penetration.

(A) The mean scalp to cortex distance (SCD) is indicated for the 24 channel positions showing an increase of SCD from right lateral prefontal cortex to posterior medial frontal cortex. (B) Three channels (subject #20) illustrate the spatial absorption distribution of NIR-light; Channel #22 (highest SCD), channel #6 (lowest SCD) and channel #1 (highest association with frontal sinus). The seven slices of each cube (cube: #1 transversal, #6 sagittal, #22 coronal) show the individual anatomically segmented images superimposed with the simulated absorption data. The logarithmic color scale indicates the percentage of energy absorbed in each voxel in relation to the total amount of energy absorbed in the whole channel cube.

https://doi.org/10.1371/journal.pone.0026377.g001

Scalp-cortex distance and NIR-light absorption

The mean SCD over all channels and subjects was . Mean SCD of NIRS-channels was between (channel #6) and (channel #22). Channel #1 located over the frontal sinus had a mean SCD of . The mean SCD for each NIRS-channel (displayed in figure 1a) was negatively correlated with the corresponding simulated (, ). NIRS-channels with high mean SCD had significantly smaller compared to channels with low mean SCD (median split; , ; mean difference: ). Similarily, between subjects the mean SCD (over channels) also significantly impacted the simulated absorbing NIRS-light (correlation: ; median split: , ; mean difference: ). Note, that is highly correlated with the partial pathlength of NIR-light through gray matter tissue (). Furthermore, the circumference of the individual heads (mean: was positively correlated with the mean SCD () and negatively correlated with the mean () of the subjects. The correlation between inion-nasion distance with SCD and , respectively, had the same sign of coefficient, but was not significant.

Based on the assumption of a rotational ellipsoid traverse of NIR-light through the tissue [6], we derived a function describing the relationship between SCD and . Here, is represented by the ellipsoid calotte and as a function of SCD is solely dependent on the ellipsoid parameter (see scheme of figure 2). can thus be calculated by:(3)where is the ellipsoid radius at the optode level and is the ellipsoid function.

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Figure 2. Illustration of the ellipsoid model used to estimate the volume

of light absorbing gray matter as a function of the scalp to cortex distance (SCD). within the rotational ellipsoid calotte is solely dependent on the two length parameters and , whereby is half the optode distance (1.5 cm) and is a measure for the depth of light penetration.

https://doi.org/10.1371/journal.pone.0026377.g002

The parameter is a function of the cumulative probability distribution () of the spatial distance of absorbing voxels within the channel-cubes (figure 3). The cumulative absorption distribution with increasing penetration depth of all channel-cubes is shown in (figure 4). We used these distributions to gain a value of producing the best fit of the function to the data, which was obtained for (i.e., the mean distance of the most proximal absorbing voxels calculated over all subjects and channels). This value of generating a rotational ellipsoid best describing the traversed depth of all channels and subjects we refer to as “relevant” penetration depth (). The (arbitrary threshold) most distal reaching pathways have a mean penetration depth of .

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Figure 3. The relationship between scalp to cortex distance (SCD) and light absorbing gray matter volume

averaged over channels (crosses) or averaged over subjects (asterisks). In order to define a curve (continuous line) describing this relationship, we fit the depth parameter from the analytical expression for to the data, whereby is the percentage of light absorption beyond a certain depth according to figure 4. For the best fit (least square) of the ellipsoid is achieved, which corresponds to referred to as the relevant penetration depth .

https://doi.org/10.1371/journal.pone.0026377.g003

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Figure 4. The cumulative absorption distribution within all channel-cubes shows the integral of the distribution of light absorbing voxels at a given distance

to the reference point between the respective optodes on the head surface. The shaded area indicates SD. and the mean penetration depth of the most distal reaching pathways are indicated.

https://doi.org/10.1371/journal.pone.0026377.g004

However, since mere distance from scalp to cortex may not fully explain the variance of , we investigated, if (1) scalp, skull and CSF, respectively, and (2) SCD-dependent proportional changes in tissue type compositions would underlie the profound reduction in as SCD increases. First, we used a stepwise multiple linear regression of and the tissue type layer thickness as independent variables. Layer thickness of skull (), scalp () as well as CSF () layer thickness significantly predicted . Second, we plotted the mean depth distribution of scalp, scull, CSF and gray matter tissue against SCD. The linear increase in CSF layer thickness with increasing SCD had a slope twice as steep compared to scalp and skull (figure 5). Previously, the presence of low scattering CSF has been shown to increase the partial pathlength through brain tissue compared to a head model with the same SCD but lacking CSF [18]. Therefore, the ellipsoid callote model as a function describing the relationship between SCD and (figure 6) may be affected by the overproportional increase in CSF layer thickness with increasing SCD. To test this, we correlated the difference between simulated (MCS) and analytically determined (ellipsoid function) with the proportional ratio of CSF/(scalp+skull) layer thickness. These variables were significantly correlated (; figure 6). Thus, the overproportional increase in CSF may attenuate the reduction of with increasing SCD.

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Figure 5. Scalp to skull distance (squares), scalp to CSF distance (triangles) and scalp to cortex distance (SCD, circles) are plotted against SCD to illustrate the proportional change of tissue types with increasing SCD.

The smallest increase of thickness is observed for the skull layer (slope ), whereas the increase in CSF layer thickness with increasing SCD is twice as steep (slope ). Note, that the -axis is flipped, thus decreasing lines have positive slopes.

https://doi.org/10.1371/journal.pone.0026377.g005

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Figure 6. The ratio between the CSF layer thickness

and the thickness of the superficial tissue layer plotted against the difference of the simulated light absorbing gray matter volume and the analytically determined gray matter volume (see figure 3). The significant positive correlation indicates, that the simple ellipsoid model underestimates when the CSF layer is relatively thick compared to the superficial tissue layer.

https://doi.org/10.1371/journal.pone.0026377.g006

Frontal sinus and NIR-light absorption

In order to investigate the feasibility of fNIRS measuring functional hemodynamics within neural structures behind the frontal sinus, we assessed the impact of its volume on the NIR-light penetration depth as well as generated by the MCS.

Derived from the relationship between cumulative absorption distribution and penetration depth, we assessed the distance of the of absorbing voxels for each channel and subject to relate this distance () to the volume of air-filled frontal sinus traversed by the simulated photon packages. In channel #1 these variables were correlated (); i.e. the larger the frontal sinus the deeper the penetration.

However, frontal sinus volume was negatively correlated with the simulated in channel #1 (). The correlation of the sum of traversed frontal sinus volumes of all respective channels (#1, #2, #4) with the sum of of these channels was even more pronounced (;. Subjects with relatively large frontal sinus volume (sum of channel #1, #2, #4) showed a reduction in compared to subjects with low or no frontal sinus volume (median split; independent samples t-test: ; mean difference in : ). The individual head circumference was positively correlated with the sum of traversed frontal sinus volumes of channel #1, #2 and #4 ().

Gyrification and NIR-light absorption

To investigate the potential influence of gyrification and sulcal geometry we calculated the mean standard deviation of gray matter surface vectors in , , direction, respectively. The lenght of the resulting standard deviation vector indicated the magnitude of gyrification. We selected all gray matter surface voxels within ellipsoid volumes, which were individually selected by . Three examples of gray matter surface vector constellations, ellipsoid slices and the corresponding standard deviations are given in (figure 7B). The gyrification estimates for each fNIRS channel (averaged over subjects) are shown in (figure 7A). Channel #4 and #11 located over the interhemispheric sulcus as well as channel #2 (probably over the orbital part of the middle frontal gyrus) showed increased gyrification. The mean gyrification estimate per channel was not correlated with the corresponding mean ().

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Figure 7. Illustration of gyrification analysis.

(A) The mean gyrification estimate over all subjects is displayed on the averaged normalized probe-set. Conclusively, channels (#4 and #11) over the interhemispheric sulcus as well as channel #2, which probably covers parts of the middle frontal gyrus, showed the highest gyrification. (B) Three expamples illustrate the estimation of the gyrification magnitude of the cortex surface, i.e. the length of the standard deviation vectors () of the normal vectors (red arrows). These vectors were attached to the gray matter boundary to CSF within an ellipsoid with a depth parameter . Individual slices from channel #17 (lowest gyrification), channel #11 (interhemispheric sulcus) and channel #2 (highest gyrification) with the respective ellipsoid slices (blue) are shown.

https://doi.org/10.1371/journal.pone.0026377.g007

Discussion

In the present study, we implemented a Monte Carlo simulation of NIR-light traversing individual forehead tissue compositions. We investigated the impact of individual and inter-channel variability in anatomy on the tissue-specific distribution of NIR-light absorption from emitter to detector. The present study replicates two previous findings: (1) While NIR-light traverses biological tissues of the head (and is partly absorbed),the average pathway of the light and the average absorption distribution are best described by an elliptical curve [6] [16]. (2) Penetration depth of NIR-light (of about 2 cm to 3 cm at 3 cm interoptode distance) is negatively correlated with SCD, and SCD increases from right lateral to medial PFC [6].

Moreover, this study shows that (3) not only penetration depth, but also the simulated is highly negatively correlated with SCD. (4) While NIR-light absorption within skull and scalp mainly underlie the reduction of with increasing SCD, the low scattering CSF layer becomes overproportionally thick as SCD increases, thereby attenuating the reduction. (5) Penetration depth is larger for fNIRS channels located over air-filled frontal sinus, but is significantly reduced. (6) The magnitude of gyrification has no significant impact on .

These findings are discussed with regard to previous studies and their implications for fNIRS as a functional neuroimaging technique in human neuroscience and clinical research. MCS have repeatedly been used to provide numerical solutions for the forward problem of photon migration in highly scattering biological tissues [16], [18], [20], [21] to infer the NIR-light migration within head and tissue models. Another approch is to map NIR-light pathways using the spatial distribution of correlations between functional hemodynamic responses using simultaneous fNIRS and fMRI [6]. Our findings are in line with these previous studies, which were (relatively) consistent regarding shape (banana, ellipsoid) of NIR-light pathways and penetration depth estimates (about 2 cm to 3 cm). Complementing these studies we investigated a relatively large number () of individual segmented MRI data-sets to assess the impact of individual anatomy on NIR-light pathways and tissue-specific absorption profiles.

By comparing the spatial sensitivity profile of simulated NIR-light between a virtual head phantom (132 averaged T1 weighted MR images, segmented) and a simplified layered slab model [25] with uniform superficial tissue layer thickness, Kawaguchi et al. (2007) [26] showed that the uneven distribution of superficial tissue layer thickness in the head phantom impacts the mapping of simulated hemodynamics in the temporal area. While our study investigated frontal and not temporal areas, our results confirm and extend these findings by simulating the NIR-light penetration and absorption individually considering anatomical parameters for a large number of subjects. Moreover, we suggest, that a rotational ellipsoid of NIR-light absorption, that reaches to a variable degree (e.g. depending on SCD) into gray matter (see figure 4 and 5, equation 3) might be an illustrative explanation for this result.

Although biological tissues absorb relatively little of the NIR-light, the exponential attenuation of light intensity along a given pathway explains the differences in tissue-wise absorption (scalp and bone: , gray matter: ). The total energy absorbed from photon packages reaching the detector amounts to leaving some variability in absorption, i.e. fNIRS signal changes due to a functional increase of oxygenated and decrease of deoxygenated hemoglobin, respectively. However, fNIRS sensitivity is dependent on the traversed volume of gray matter in which this absorption change occurs. Since several sources of error variance may be part of the fNIRS-signal (e.g. extracranial blood flow, motor-artefacts, blood pressure), might be critically small in some subjects and/or channels associated with large SCD. We found, that especially skull layer thickness () represents a good predictor for reduction. Previously, a layer model with thicker skull layer instead of low scattering CSF has been shown to decrease partial optical pathlength in brain tissue compared to a model with the same SCD including CSF [18]. We show, that skull, scalp as well as CSF contribute to the reduction of in healthy adult subjects. However, an overproportional CSF layer thickness may attenuate the reduction, thus, not the mere SCD but the partial pathlengths in specific tissue types have to be considered for the estimation of or anatomy-dependent fNIRS-sensitivity.

Since structural MRI might not be available for most participants of fNIRS studies, we suggest to consider head circumference as a practical predictor of SCD and , thus, the fNIRS sensitivity. Head circumference could easily be accounted for when introduced as a covariate of fNIRS data or could be matched when comparing groups. Also, large differences in head circumference may affect the reliability of the assignment and functional measurement of putative neural structures spatially associated with a certain fNIRS channel. In this regard, mean head circumference has been shown to significantly differ between men with and women witch [27], which may play an important role in the light of our findings.

A possible explanation for the frontal sinus to decrease could be the presence of an air-filled cavity, which represents an extreme case of differential tissue layer composition. Regarding the transition of the light between skull and CSF (transition 1, normal case) on the one hand and between skull and air (transition 2, only possible at frontal sinus) on the other hand the most striking difference is the ratio of refractive indices (table 2), i.e. difference of optical impedance is higher for transition 2 than for transition 1. Using Snell's Law and equation (9) and considering total internal reflection the probability for the light to be reflected at transition 1 () and transition 2 () was calculated. Thus, the light reflection increased by ca. at the frontal sinus (transition 2) compared to the transition (transition 1) without frontal sinus. By means of Monte Carlo simulation Seunghwan et al. (2005) [28] investigated the effect of an refractive index mismatch between tissue and CSF and found that such a mismatch can lead to changes in measured light intensity.

The air-filled frontal sinus mostly covers parts of the OFC. As the OFC has been shown to be centrally involved in decision-making and the processing of the subjective evaluation of reward, emotional, social, and sensory information [29], future fNIRS measurements will probably aim to further study its function. Our findings suggest, that a reduction in , restricted or in extreme cases lack of fNIRS sensitivity due to large frontal sinus volume may have to be considered as sources of error variance in studies aiming to measure OFC activity. While we found traversed frontal sinus volume to be correlated with the head circumference (), the morphology of the frontal sinus has been shown to be individually highly variable [12]. Future fNIRS studies aiming to measure the OFC may, thus, benefit from additional anatomical information of individual CT or MRI scans.

Although we found no significant impact of the gyrification estimate on the simulated in prefrontal cortex, we cannot exclude the possibility that extreme cases of sulcal geometry as in the area of the fronto-temporal junction may affect fNIRS sensitivity.

Currently, the feasibility of fNIRS for single subject analyses of functional hemodynamics to derive an individual psychiatric diagnosis of e.g. depression, biploar disorder or schizophrenia is controversially debated [30]. Here, our findings suggest cautious interpretation of fNIRS signals on a single subject basis, because individual anatomy regarding SCD and frontal sinus volume may profoundly impact fNIRS sensitivity. Aforementioned psychiatric illnesses themselves are associated with anatomical changes such as a reduction in gray matter layer thickness [31][33]. Also, the impact of cortical atrophy and increased CSF volumes after long-term alcohol abuse or in patients with Alzheimer's disease on fNIRS sensitivity has not been investigated yet. Because the participating subjects were young and healthy, this question could not be addressed in the present study. Thus, further functional measurements and simulation studies of anatomical factors modulating fNIRS signals are necessary to quantify the influence anatomical differences exert on fNIRS sensitivity.

Materials and Methods

Participants

A total of 23 adult healthy subjects (12 male) with a mean age of years including 4 left-handed subjects (2 male) were included in the study. One subject (#10) was excluded due to noisy structural MRI. To exclude any history of Axis I or II pathology, neurological disorders or psychoactive medication all subjects were screened by questionnaires based on DSM-IV criteria for Axis I mental disorders. All participants gave written informed consent. The study was in accordance with the latest version of the Declaration of Helsinki and approved by the Ethics Committee of the University of Wuerzburg.

fNIRS optode positions

We precisely defined optode locations using a typical fNIRS probe arrangement (ETG-4000, Hitachi Medical Systems, Japan), which was positioned over the right prefrontal cortex. A set of optodes, which correspond to 24 fNIRS recording channels each consisting of an NIR-light emitter-detector pair, was used in the present study. The probe set was placed in respect to the Fpz surface marker of the International EEG 10–20 system (figure 8). Specifically, the light emitter of the NIRS-channel #1 and #4, respectively, was placed on Fpz while the bottom row of NIRS optodes of the probe set was located on a line from Fpz to F8. A previous pilot fNIRS-fMRI measurement confirmed feasibility of identification of precise optode positions as probe-holder of each optode and/or slight skin indentation by optode tips were visible in the structural image. This positional information defined native spatial coordinates of the 24 NIRS channels in each subject using the MRIcro software [34]. The channel coordinates between two optodes were normalized to MNI-space using SPM8 normalization routines. The normalized coordinates were then spatially averaged over all subjects and indicated by blobs of 5 voxels diameter using MRIcro. The channels #1, #2 and #4 are mostly associated with parts of the frontal sinus with most volume underneath channel #1. The normalized and averaged probe set is displayed in figure 8.

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Figure 8. Normalized and averaged fNIRS channel positions on the right lateral forehead.

Numbers indicate channels, bright and dark crosses indicate NIR-light emitter and detector positions, respectively. By using the International EEG 10–20 system the emitter of channel #1 and #4, respectively, was positioned on the Fpz marker point while the bottom row of channels was placed on a line between Fpz and F8.

https://doi.org/10.1371/journal.pone.0026377.g008

Head circumferences

The head circumference of each subject was measured using the individual Fpz marker point (International 10–20 system) and inion head surface position. From these two points the head circumference was assessed by a mearsuring tape.

Individual tissue models

Structural MRI images were acquired using a Tesla Siemens MAGNETOM Avanto syngo (MR B17) scanner. -weighted structural images were recorded with a spatial resolution of voxels with a voxel size of using 3D magnetization prepared rapid gradient echo (MPRAGE) sequences with a repetition time (TR) of and an echo time (TE) of .

Automatic anatomical tissue segmentation was performed using the SPM8 tool New Segment, that is an extension of the default unfied segmentation [35]. The new segmentation tool was used because it is possible to obtain probability images for scalp and skull and not only for background ( = air), CSF, gray and white matter. The algorithm classfies different tissue types by using their respective intensity distribution and a segmented template. Because voxel intensities are used for tissue classification the structural images must be corrected for modulations of intensity caused by noise. In low intensity regions (such as frontal sinus) the noise after segmentation was suppressed by smoothing the individual probability images with a Gaussian kernel. These probability images are used to create an individual tissue model for each subject. To summarize the results of the segmentation table 3 and figure 7 give an overview of the tissue layer thickness of scalp, skull and CSF.

However, the segmentation may have been improved by using multi-spectral data, e.g. additonal weigthed images [35]. Unfortunately, such additional structural information was not available in the current study.

Monte Carlo simulation

The purpose of the Monte Carlo simulation (MCS) implemented in this study is to describe the interaction of light within different tissue types in individually segmented human heads. We thereby characterize the spatial distribution of absorbed energy in voxels along NIR-light pathways from emitter to detector. As a guideline for implementation served the MCS by [36]. The source code of the MCS was written in C++ and compiled with MinGW 4.4.0. Data preparation and analyses of simulation data were performed using custom software written in MATLAB 7.9 (The MathWorks, Natick, MA, USA). Statistical analyses were performed using SPSS 17.0 (SPSS Inc., Chicago, IL, USA).

Photon packages

The MCS consecutively and perpendicularly launches photon packages from the emitter into the individual foreheads. For the packages of photons an energy amount referred to as weight was defined and initialized with . These packages moved through the native space of the segmented brains, which was described by a three dimensional vector in carthesian coordinates [mm]. The direction of the photon package migration was described by a unit vector , that holds the three direction cosines in its components. A positional change from to with a given step size was given by:(4)In order to reduce computational load of the channel-wise MCS, a cube of voxels was selected comprising the emitter-detector positions on the scalp and segmented tissue underneath. In the following, we refer to these cubic volumes of interest as channel-cubes.

Probabilistic light interactions

Because the absorption and scattering coefficient and were defined as rates, the probability of a photon interacting after a step size follows an exponential decay and the normalized probability distribution was calculated by:(5)After the photon traveled this random step size , the current weight was reduced due to absorption:(6)The scattering caused a direction change from to . To describe this process a coordinate system was created, in which the unit vector of the -axis was equal to . Thereafter, the new direction was specified by the two angles and :(7)Due to the cylindrical symmetry of the scattering process, the angle is uniformly distributed between and . The probability distribution of the angle is given by the Henyey-Greenstein phase function [37]:(8)where the parameter quantifies the anisotropy of the scattering. For values of close to as in biological tissues () forward scattering strongly prevails.

NIR-light reflection and refraction

Depending on the difference in refractive indices () between two tissues, a photon hitting the phase transition with an incident angle is either reflected with the angle or transmitted with a refraction angle, which was calculated using Snell's law (). To obtain the incident angle of the photon relative to a boundary between two tissues, a normal vector was attached to all voxels of this boundary. These normal vectors were defined as unit vectors perpendicular to the surface while considering 3 to 6 neighboring surface voxels in two perpendicular directions, respectively.

The acute incident angle of a photon hitting a surface was calculated by the dot product between the photon direction and the normal vector at the corresponding voxel: . By including the refraction angle from Snell's law, the reflection probability was obtained using the Fresnel equations under the assumption of equally distributed polarization directions:(9)The probability that a photon is refracted was: .

Random processes

The step size with its probability distribution from equation (5) was given by(10)where is an equally distributed pseudorandom number. Wheather a photon hitting a phase transition was reflected or transmitted was determined by the test ( from equation (9)). If the test is true, the photon was reflected, otherwise it was transmitted. The cosine of the scattering angle was given by:(11)using the distribution from equation (8).

Measured quantities

We simulated the spatial distribution of voxel-wise absorbed energy of NIR-light photon packages reaching the detector within the channel-cubes. Each weight loss at a location was registered to the corresponding location in the cubic voxel-space ()). By using the tissue type information of each voxel, the magnitude as well as the tissue volume contributing to were calculated. Location data of all simulated light-matter interactions were collected and used to generate NIR-light pathways reaching the detector. Then, the partial pathlength through gray matter was calculated for each photon package. To quantify the penetration depth the distances between each voxel contributing to and a reference point centered between respective channel optodes on the scalp were calculated.

MCS configuration

Optical properties of each tissue type were described by four coefficients taken from the literature: Absorption coefficient , scattering coefficient , anisotropic parameter and refraction index . The coefficient values are listed in table 2.

Depending on the coefficient is reduced, and deduced from the diffusion approximation of the radiative transport equation is defined as:(12)

For close to the coefficient is strongly reduced. Thereby, the mean step size increases by the factor reducing the number of interactions. In order to reduce MCS calculation time by the factor 6, we used -dependent , but instead simulated isotropic () instead of anisotropic () scattering. Another advantage of this approach is that the calculation of the scattering angle following equation (8) is faster and not prone to errors as described by [38]. A possible impact of this procedure on the distribution of absorption was ruled out by applying the simulation to a simple layer model (figure 9a, b). Due to variability of absorption coefficients (in the literature) we used the simple tissue layer model to investigate the impact of coefficent value variations on the simulated absorption pattern. We found that the absorption distributions of a run with original coefficients and a run with scattering coefficients decreased by factor still overlapped by %. Thus, the simulation was stable under coefficient variations.

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Figure 9. Slice through optode plane of a simple tissue layer model, that was implemented to validate the configuration.

The absorption intensity is logarithmically scaled showing the distribution of high (red) and low (blue) absorption. (A) Absorption distribution using scattering coefficients and anisotropic scattering (). (B) Absorption distribution using reduced scattering coefficients in conjunction with isotropic scattering ( for all tissues). The two distributions overlap more than , while the simulation under the conditions of (B) runs around six times faster.

https://doi.org/10.1371/journal.pone.0026377.g009

To estimate how many photons are required for the MCS to obtain stable absorption distributions, the MCS was conducted for channel #1 and #9 of two subjects with increasing number of emitted photon packages . We used seven equal photon package number increments (from to ) and calculated the overlap of the normalized absorptions between two runs. The absorption overlap comparing and emitted photons was greater , while approximately and , respectively, were detected. Therefore, we simulated each channel until photons hit the detector. In total, we conducted simulations of 24 channels23 subjectsapproximately 5 million photon packages photon package simulations.

Scalp-cortex distance

The SCD was individually assessed for each subject and NIRS channel. We calculated the radial distance between the reference point on the head surface and the closest volume per mille of gray matter within a channel cube. The layer thickness of scalp, skull and CSF layers (, , ) were obtained analogously.

Acknowledgments

The authors would like to thank Dr. Felix Breuer and Dr. Martin Blaimer for their technical support regarding the MR-measurements at the Research Center for Magnetic Resonance, Bavaria, (MRB) in Wuerzburg.

Author Contributions

Conceived and designed the experiments: SH FBH TH AJF. Performed the experiments: SH FBH MS. Analyzed the data: FBH SH. Wrote the paper: SH FBH ACE.

References

  1. 1. Linden D, Fallgatter A (2010) Neuroimaging in psychiatry: from bench to bedside. Front Hum Neurosci 3: 49.
  2. 2. Crippa P, Cristofoletti V, Romeo N (1978) A band model for melanin deducted from optical absorption and photoconductivity experiments. Biochim Biophys Acta 538: 164–170.
  3. 3. Villringer A, Chance B (1997) Non-invasive optical spectroscopy and imaging of human brain function. Trends Neurosci 20: 435–42.
  4. 4. van der Zee P, Arridge S, Cope M, Delpy D (1990) The effect of optode positioning on optical pathlength in near infrared spectroscopy of brain. Adv Exp Med Biol 277: 79–84.
  5. 5. Okada E, Firbank M, Schweiger M, Arridge S, Cope M, et al. (1997) Theoretical and experimental investigation of near-infrared light propagation in a model of the adult head. Appl Opt 36: 21–31.
  6. 6. Cui X, Bray S, Bryant D, Glover G, Reiss A (2011) A quantitative comparison of nirs and fmri across multiple cognitive tasks. Neuroimage 54: 2808–21.
  7. 7. Plichta M, Herrmann M, Baehne C, Ehlis A, Richter M, et al. (2006) Event-related functional near-infrared spectroscopy (fnirs): are the measurements reliable? Neuroimage 31: 116–24.
  8. 8. Plichta M, Herrmann M, Baehne C, Ehlis A, Richter M, et al. (2007) Small head size is related to low mini-mental state examination scores in a community sample of nondemented older adults. Hum Brain Mapp 28: 733–741.
  9. 9. Schecklmann M, Ehlis A, Plichta M, Fallgatter A (2008) Functional near-infrared spectroscopy: a long-term reliable tool for measuring brain activity during verbal uency. Neuroimage 43: 147–155.
  10. 10. Cope M, Delpy D (1988) System for long-term measurement of cerebral blood and tissue oxygenation on newborn infants by near infra-red transillumination. Medical & biological engineering & computing 26: 289–94.
  11. 11. Minagawa-Kawai Y, Matsuoka S, Dan I, Naoi N, Nakamura K, et al. (2009) Prefrontal activation associated with social attachment: facial-emotion recognition in mothers and infants. Cereb Cortex 19: 284–92.
  12. 12. Pirner S, Tingelhoff K, Wagner I, Westphal R, Rilk M, et al. (2009) Ct-based manual segmentation and evaluation of paranasal sinuses. Eur Arch Otorhinolaryngol 266: 507–18.
  13. 13. Park I, Song J, Choi H, Kim T, Hoon S, et al. (2010) Volumetric study in the development of paranasal sinuses by ct imaging in asian: a pilot study. Int J Pediatr Otorhinolaryngol 74: 1347–1350.
  14. 14. Chance B, Leigh J, Miyake H, Smith D, Nioka S, et al. (1988) Comparison of time-resolved and -unresolved measurements of deoxyhemoglobin in brain. Proceedings of the National Academy of Sciences of the United States of America 85: 4971–5.
  15. 15. Okada E, Yamamoto D, Kiryu N, Katagiri A, Yokose N, et al. (2010) Theoretical and experimental investigation of the inuence of frontal sinus on the sensitivity of the nirs signal in the adult head. Adv Exp Med Biol 662: 231–6.
  16. 16. Van der Zee P, Delpy D (1987) Simulation of the point spread function for light in tissue by a monte carlo method. Adv Exp Med Biol 215: 179–91.
  17. 17. Fukui Y, Ajichi Y, Okada E (2003) Monte carlo prediction of near-infrared light propagation in realistic adult and neonatal head models. Applied optics 42: 2881–7.
  18. 18. Okada E, Delpy D (2003) Near-infrared light propagation in an adult head model. i. modeling of low-level scattering in the cerebrospinal uid layer. Applied optics 42: 2906–14.
  19. 19. Boas D, Culver J, Stott J, Dunn A (2002) Three dimensional monte carlo code for photon migration through complex heterogeneous media including the adult human head. Opt Express 10: 159–70.
  20. 20. Lee C, Sun C, Lee P, Lee H, Yang C, et al. (2005) Study of photon migration with various source-detector separations in near-infrared spectroscopic brain imaging based on three-dimensional monte carlo modeling. Opt Express 13: 8339–48.
  21. 21. Zhang X, Toronov V, Webb A (2005) Simultaneous integrated diffuse optical tomography and functional magnetic resonance imaging of the human brain. Opt Express 13: 5513–21.
  22. 22. Toronov V, Zhang X, Webb A (2010) A spatial and temporal comparison of hemodynamic signals measured using optical and functional magnetic resonance imaging during activation in the human primary visual cortex. Neuroimage 34: 1136–48.
  23. 23. Sassaroli A, Fantini S (2004) Comment on the modified Beer-Lambert law for scattering media. Physics in Medicine and Biology 49: N255–N257.
  24. 24. Tsuchiya Y (2001) Photon path distribution and optical responses of turbid media: Theoretical analysis based on the microscopic beer-lambert law. Physics in Medicine and Biology 46: 2067–2084.
  25. 25. Okada E, Delpy D (2003) Near-infrared light propagation in an adult head model. ii. effect of superficial tissue thickness on the sensitivity of the near-infrared spectroscopy signal. Applied optics 42: 2915–2922.
  26. 26. Kawaguchi H, Koyama T, Okada E (2007) Effect of probe arrangement on reproducibility of images by near-infrared topography evaluated by a virtual head phantom. Applied Optics 46: 1658–68.
  27. 27. Reynolds M, Johnston J, Dodge H, DeKosky S, Ganguli M (1999) Small head size is related to low mini-mental state examination scores in a community sample of nondemented older adults. Neurology 53: 228–9.
  28. 28. Seunghwan K, Jae Hoon L (2005) Near-infrared light propagation in an adult head model with refractive index mismatch. ETRI Journal 27: 377–384.
  29. 29. Kringelbach M, Rolls E (2004) The functional neuroanatomy of the human orbitofrontal cortex: evidence from neuroimaging and neuropsychology. Prog Neurobiol 72: 341–72.
  30. 30. Cyranoski D (2011) Neuroscience: Thought experiment. Nature 469: 148–9.
  31. 31. Lorenzetti V, Allen N, Fornito A, Yucel M (2009) Structural brain abnormalities in major depressive disorder: a selective review of recent mri studies. J Affect Disord 117: 1–17.
  32. 32. Nenadic I, Sauer H, Gaser C (2010) Distinct pattern of brain structural deficits in subsyndromes of schizophrenia delineated by psychopathology. Neuroimage 49: 1153–60.
  33. 33. Brooks J, Bonner J, Rosen A, Wang P, Hoblyn J, et al. (2009) Dorsolateral and dorsomedial prefrontal gray matter density changes associated with bipolar depression. Psychiatry Res 172: 200–4.
  34. 34. Rorden C, Brett M (2000) Stereotaxic display of brain lesions. Behav Neurol 12: 191–200.
  35. 35. Ashburner J, Friston K (2005) Unified segmentation. Neuroimage 26: 839–851.
  36. 36. Wang L, Jacquesa S, Zhengb L (1995) Mcml - monte carlo modeling of light transport in multi-layerd tissues. Computer methods ans programs in Biomedicine 47: 131–146.
  37. 37. Henyey L, Greenstein J (1940) Diffuse radiation in the galaxy. Annales d'Astrophysique 3: 117–137.
  38. 38. Binzoni T, Leung T, Gandjabkhche A, Ruefenacht D, Delpy D (2006) The use of the henyey-greenstein phase function in monte carlo simulations in biomedical optics. Physics in Medicine and Biology 51: N313–N322.
  39. 39. Pawley J (2006) Handbook of biological confocal microscopy. 377 p. Springer, 9. edition.
  40. 40. Tearney G, Brezinski M, Southern JF, Bouma BE, Hee M, et al. (1995) Determination of the refractive index of highly scattering human tissue by optical coherence tomography. Optics Letters 20: 2258–2260.
  41. 41. Cheong W, Prahl SA (1990) A review of the optical properties of biological tissues. Journal of quantum electronics 26: 2166–2185.
  42. 42. Koyama T, Iwasaki A, Ogoshi Y, Okada E (2005) Practical and adequate approach to modelling light propagation in an adult head with low-scattering regions by use of diffusion theory. Applied optics 44: 2094–103.
  43. 43. Yaroslavsky A, Schulze P, Yaroslavsky I, Schober R, Ulrich F, et al. (2002) Optical properties of selected native and coagulated human brain tissues in vitro in the visible and near infrared spectral range. Physics in medicine and biology 47: 2059–73.