ARTICLE
Received 11 Nov 2012 | Accepted 17 May 2013 | Published 21 Jun 2013
DOI: 10.1038/ncomms3032 OPEN
In vivo assessment of human brain oscillations during application of transcranial electric currents
Surjo R. Soekadar1,2,3, Matthias Witkowski1,2,3, Eliana G. Cossio2,3, Niels Birbaumer3,4, Stephen E. Robinson5
& Leonardo G. Cohen1
Brain oscillations reect pattern formation of cell assemblies activity, which is often disturbed in neurological and psychiatric diseases like depression, schizophrenia and stroke. In the neurobiological analysis and treatment of these conditions, transcranial electric currents applied to the brain proved benecial. However, the direct effects of these currents on brain oscillations have remained an enigma because of the inability to record them simultaneously. Here we report a novel strategy that resolves this problem. We describe accurate reconstructed localization of dipolar sources and changes of brain oscillatory activity associated with motor actions in primary cortical brain regions undergoing transcranial electric stimulation. This new method allows for the rst time direct measurement of the effects of non-invasive electrical brain stimulation on brain oscillatory activity and behavior.
1 Human Cortical Physiology and Stroke Neurorehabilitation Section, National Institute of Neurological Disorders and Stroke, NIH, 10 Center Drive, Building 10, Bethesda, Maryland 20892, USA. 2 University Hospital of Tbingen, Applied Neurotechnology Lab, Department of Psychiatry and Psychotherapy, Calwerstr. 14, D-72076 Tbingen, Germany. 3 University of Tbingen, Institute of Medical Psychology and Behavioral Neurobiology, Silcherstrasse 5, D-72076 Tbingen, Germany. 4 Ospedale San Camillo, IRCCS, Via Alberoni 70, 30126 Venice, Italy. 5 MEG Core Facility, National Institute of Mental Health, NIH,10 Center Drive, Building 10, Bethesda, Maryland 20892, USA. Correspondence and requests for materials should be addressed to S.R.S.(email: mailto:[email protected]
Web End [email protected] ).
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Understanding of the role of brain oscillations in human cognition and behavior has substantially advanced in the last decade1,2. Specic features of brain oscillations, such
as amplitude3 and phase4, are causally linked to brain functions and showed to be fundamental for perception, cognition and learning2, often disturbed in neurological or psychiatric diseases5. In this context, brain oscillatory activity was shown to be closely related to specic neurochemical processes6 and short-range and long-range cortico-cortical communication7,8. Thus, brain oscillations represent a potential target for controlled interventions aiming at modulation of brain function9 (neuromodulation). Such interventions include the application of extracranial electric currents to the human brain in order to modify brain function. However, in vivo effects of electrical brain stimulation on oscillatory activity are unknown, as electromagnetic noise generated by electrical stimulation blocks accurate recording of neurophysiological signals. Knowledge of the effects of electrical stimulation on brain oscillations would yield a better understanding of brain functions and may lead to improvements in treatment protocols related to brain stimulation for patient populations with neurological and psychiatric diseases10,11.
A well-tolerated form of electrical brain stimulation is transcranial direct current stimulation (tDCS), which was shown to modulate brain activity at weak stimulus intensities(0.12 mA)12,13. tDCS has polarity-dependent effects on brain excitability13, and can inuence cognition14, motor function15, learning16 and memory consolidation17,18. Over the last two decades, tDCS has become increasingly used in the treatment of neurological and psychiatric diseases19, such as stroke20, depression21 and dementia22.
The inuence of tDCS on millisecond-by-millisecond brain oscillatory activity is not known. Work using positron emission tomography (PET) and functional MRI (fMRI)23,24 is incapable of providing the temporal resolution needed to test the hypotheses evaluated in this investigation2527. Similarly, electroencephalography (EEG) has a limited capability of
localizing underlying source generators due to its dependency on volume conduction boundaries, including the poorly conducting skull. Additionally, any conductive agents used with the EEG electrodes may not contact the stimulating electrodes as this would lead to saturation of the EEG ampliers with the risk of damaging the EEG system. Thus, we used magneto-encephalography (MEG) as a tool to evaluate oscillatory activity, as it provides high-temporal resolution and also overcomes the limitations of EEG. MEG is a non-invasive technique that measures neuromagnetic activity in the range of femtoTesla (fT) and is nearly independent of the distorting effects of biological conduction boundaries like the scalp28. MEG sensors are superconducting quantum interference devices (SQUIDs)29 organized in a helmet-shaped high-density array that covers the human head (Fig. 1a,b).
Other important prerequisites to test the reliability of signal source reconstruction of brain oscillations during application of transcranial electric currents include the availability of ultra-stable electric current sources (current variance during stimulation o0.02% to allow well-controlled application of electric currents) and the use of recently developed radio-translucent, non-ferrous, rubber-based stimulation electrodes that let neuromagnetic brain oscillations pass so that activity directly underneath the stimulation electrodes can be recorded.
By utilizing these technical advances and combining them with synthetic aperture magnetometry (SAM)30, a mathematical approach offering intrinsic spatially-selective noise reduction and source localization, we developed a novel strategy that allows Transcranial Electric Stimulation during Assessment of Neuromagnetic Activity (TESANA). The reliability and robustness of this novel strategy was tested using an electrolyte-lled sphere (phantom head) with an oscillating dipole source inside. Stimulator-dependent electromagnetic noise levels were quantied. We then tested whether SAM is a robust tool to localize and reconstruct activity of an oscillating signal source in the presence of signicant electromagnetic noise (430 dB relative to sensor noise) generated by electrodes placed in the immediate
a b
DC stimulation electrode
MEG sensor
Phantom head with simulated dipole source inside
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Figure 1 | Schematic illustration of the experimental setup. Magnetoencephalographic (MEG) recordings were performed with a phantom head (a) and healthy human volunteers (b). The electric stimulator was located outside the shielded MEG room and delivered 1 mA. The distance between the electric stimulation electrodes and the MEG sensor array (turquoise tubes) was 26 cm.
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proximity (26 cm) of the MEG sensor array, the usual distance for MEG recordings in human adults31. This approach was then tested in ve healthy human volunteers by assessing task-related changes in brain oscillatory activity in the rolandic alpha (also called sensori-motor rhythm, SMR, 813 Hz) and beta (1330 Hz) frequency bands recorded from motor cortical areas undergoing 1 mA anodal tDCS during a self-paced button-press task. Power spectra of brain oscillations during task-free intervals were computed in the absence of and during electric current stimulation to test for the generalizability of this novel strategy to other MEG signals. Additionally, generalization to other head locations was tested by embedding a set of simulated dipoles into the measured interference data at different head locations and quantifying reliability of their reconstruction. We found that characterization of changes in brain oscillatory activity and motor behavior during transcranial electric brain stimulation is now possible using this novel approach. Generalizability to other MEG signals (for example, task-free activity) and other head locations was successfully proven. Respecting the theoretical and practical limitations of the MEG system, our data suggest that this novel strategy can also be used with other stimulation protocols such as oscillating current stimulation or transcranial alternating current
stimulation (tACS), and thus will allow development of a broad spectrum of applications in cognitive neuroscience and neuromodulation of brain function.
ResultsQuantication of noise induced by tDCS. Evaluation of noise characteristics of two different tDCS devices using the phantom head (Fig. 1a) indicated that both stimulators generated signicant electromagnetic noise resulting in signal power changes up to 4 dB (relative to sensor noise) on average across the MEG sensor array (device A: 11.48 dB; device B: 4.01 dB). Noise was highest at lower frequencies and decreased by 6.70 dB per octave exhibiting the characteristic features of brown noise32. Noise levels were highest around the stimulating tDCS electrodes (device A: 30.6 dB, device B: 10.2 dB relative to sensor noise), but still detectable in areas remote from the stimulation electrode (48 cm) (Fig. 2).
Identication of the articial dipole source is precise. Activating the oscillating signal source inside the phantom head and employing SAM for source localization and reconstruction
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Figure 2 | Topographic illustration of signal power during different experimental conditions. Signal power is shown in absence of electric stimulation (black), during stimulation with device A (red) and device B (blue) using a phantom head. Noise levels as measured in a magnetoencephalography (MEG) sensor with the highest level of noise above the extracephalic stimulation electrode (a), anterior of the electrode (b), in the most frontal (c) and occipital (d) MEG sensor. While noise is strongest above the electrode during stimulation with device A (NeuroConn DC Stimulator Plus); device B (prototype of NeuroConn DC Stimulator nG) generates much less noise (a), decreasing with distance from the electrode (b,c). We used different stimulation devices to investigate whether robustness of TESANA depends on the magnitude of stimulator noise.
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Table 1 | Localization of the generated oscillating dipole signal.
Deviation (mm) between actual and reconstructed localization of the generated signalx y z
Coordinates (mm)
Run
In the absence of stimulation1 3 37 25 4.24
2 2 43 23 4.12
3 1 42 25 2.23
During stimulation with device A1 5 41 23 5.47
2 2 40 25 2
3 2 40 22 3.61
During stimulation with device B1 6 32 20 11.18
2 2 40 26 2.24
3 1 42 24 2.45
Mean deviation 4.172.88
resulted in accurate characterization of the pre-determined source activity (mean deviation in mm: 4.172.88) (see Table 1). Accuracy of localization was stable and did not change with the onset of tDCS stimulation (one-way ANOVA, F(2,6) 0.02,
P 0.98) (Fig. 3ac).
TESANA results in undistorted reconstruction of oscillations. The reconstructed signal at the identied location exhibited high coherence during electrical stimulation when compared with recordings in the absence of stimulation (device A: rolandic alpha and beta: 0.990.002; device B: alpha: 0.990.000; beta:0.9970.001) (see Table 2 and Figure 3d). For validation of generalizability of the results at other head locations, localization and reconstruction of 11 simulated dipoles embedded into the interference data recorded in the presence of stimulation resulted in high coherence between conditions in all simulated dipoles (mean coherence: 0.9967 / 0.004, Supplementary Fig. S1,
Supplementary Table S1).
Motor task-related changes of brain oscillations during tDCS. Topographic eld analyses of task-related changes in neuro-magnetic activity during self-paced nger tapping motions of the left index nger in sensor space indicated a central dipole source with the highest eld strength around the time of the button press (Fig. 4a). This nding was consistent with numerous previous studies33. During active electrical brain stimulation, the dipole source could not be identied anymore (Fig. 4b). Stimulation-dependent artifacts were most pronounced in left and right anterior and central MEG sensors (Fig. 4b).
SAM-based analyses computing neuromagnetic dipole activity in an assumptive source space and co-registering such space with actual anatomical data of each individual localized the voxel with the most signicant task-related signal source change in the primary motor cortex (M1, Brodman area 4) (Fig. 5a). Localization was not inuenced by active tDCS (average deviation:4.562.89 mm) (Fig. 5b), and results matched with ndings in other neuroimaging studies34,35. Task-related signal source changes (for example, rolandic alpha desynchronization before or beta synchronization after button press) in the absence of and during DC stimulation (Fig. 6ae) were consistent with previous
results in studies that extensively investigated motor-related changes of brain oscillatory activity36,37. Further frequency-specic analyses of changes in alpha and beta power values indicated no signicant differences between runs recorded in the absence of and during electrical brain stimulation (alpha pre-button-press: T(4) 0.338, P 0.563; alpha post-button
press: T(4) 0.696, P 0.525; beta pre-button-press:
T(4) 0.338, P 0.753; beta post-button press: T(4) 0.332,
P 0.757). Comparison of power spectra of task-free activity in
M1 during and in absence of stimulation showed no signicant distortions (Fig. 6, right column).
DiscussionThis is the rst study demonstrating the feasibility of identifying changes in oscillatory brain activity during non-invasive electrical brain stimulation. The effects of tDCS are well documented in the behavioral and cognitive domain1416,22,38. However, the online effects of electrical brain stimulation on a millisecond-by-millisecond scale of human brain physiology are not known39. Here, we introduced a strategy that allows for millisecond-by-millisecond in vivo investigation of changes in pattern formation of neural cell assemblies activity and evaluation of changing functional connectivity during exctracephalic electric current stimulation.
While application of tDCS is associated with signicant electromagnetic noise, which peaks in close proximity to the electrodes (Figs 2, 4), we demonstrated elimination of such noise and accurate characterization of neuromagnetic oscillatory activity, despite proximity to the electrodes. Neuromagnetic activity passing the radiotranslucent, non-ferrous electrodes resulted in reliable localization and reconstruction of signal sources (Fig. 5). Self-paced button press-related changes of neuromagnetic activity in alpha and beta frequencies during electric stimulation were not different from measurements recorded in the absence of externally applied electric currents (Fig. 6). The robustness of TESANA was independent of the electrical stimulators noise characteristics as two devices exhibiting different characteristics were tested.
Acquisition of neuromagnetic activity during tDCS using a whole-head MEG proved practical and safe. Recorded neuro-magnetic activity was unaffected by radiotranslucent electrodes and allowed further processing of the cortical dipole sources directly underneath the stimulation site on the skull.
This study, which was designed to evaluate a novel strategy allowing simultaneous electric brain stimulation during whole-head MEG recordings, was not powered to relate this activity with previously demonstrated changes of brain excitability13 or motor behavior15, an issue of interest for future investigations.
Besides SAM-based beam-forming, other techniques such as signal space separation40 or minimum norm41 shown to be advantageous in the reconstruction of correlated sources42 or minimizing leakage43, might complement SAM beam forming. However, while signal space separation is a noise-reduction algorithm without providing source localization, minimum norm does not constitute an adaptive solution and must be used in conjunction with additional methods for interference reduction such as ICA that increases the risk for mis-localization in the presence of interference.
Apart from tDCS, other stimulation protocols also showed to have specic effects on brain function and behavior, for example, transcranial oscillating current stimulation44, tACS45 or random noise stimulation46. Our data and consideration of theoretical boundaries suggest that this new strategy can be generalized to other stimulation protocols as long as the electromagnetic interference from the stimulator does not exceed the dynamic
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Figure 3 | Signal localization and reconstruction during and in absence of electric stimulation. Synthetic aperture magnetometry (SAM)-based localization of the generated oscillating dipole signal (5 Hz, 8 nAm) in absence (a) and during electric stimulation with device A (b) and device B (c) within the electrolyte-lled phantom head. Localization of the signal source characterized by the largest signal power changes (maximum in red) was consistent across conditions (ac). (d) SAM-based reconstruction of the generated dipole signal oscillating at 11 Hz (left) and 23 Hz (right). Field strength of the dipole signal was changed from 310 nAm to resemble task-related changes of neuromagnetic oscillatory brain activity typically found in the human brain. Similarity between the generated and reconstructed signal source reects the delity of TESANA. Frequency spectra (e) of recorded activity while the generated dipole signal was oscillating at 11 Hz (left) and 23 Hz (right) indicate a clear and undistorted power peak at the tested frequencies, and no stimulation specic distortions in other frequencies.
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recording range and maximum slew rate of the MEG system. Strong magnetic elds close to the SQUIDS can cause magnetic ux trapping47, an issue that requires caution, as degradation of the SQUID sensors can result. The MEG that was used for the
study was a CTF 275-sensor whole-head MEG system with a dynamic recording range of 192 dB. This system employs a digital ux-locked loop that allows for slew rates of up to 36.000 F0 s 1 (F0 equals one ux quantum). Based on a sensor gain of3.25 10 16 T per bit, the theoretical bounds for this device
are therefore 6.13 mT s 1. Given a current intensity of 1 mA generating a magnetic eld with a peak signal value of B5 nT, a maximum frequency of 195 Hz would be possible (see Supplementary Methods), allowing frequency-tuned tACS48 at any previously investigated frequency. To our knowledge, no stimulation protocol previously tested in human non-invasive electrical brain stimulation (except high-frequency RNS46 with frequency peaks of up to 640 Hz) exceeds these theoretical boundaries.
This novel technique for the in vivo assessment of brain oscillations during transcranial electric brain stimulation promises to make important contributions towards a better understanding of the effects of non-invasive electric current stimulation on brain function and behavior. An important
Table 2 | Coherence of signal reconstruction.
Signal frequency Run Coherence device A
Coherence device B
11 Hz 1 0.998 0.998
2 0.997 0.997
3 0.994 0.997
23 Hz 1 0.998 0.998 2 0.997 0.997 3 0.994 0.996
Total mean deviation 0.9960.002 0.9970.001
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Figure 4 | Topographic maps of motor task-related signal power changes. Absolute signal power changes (0.530 Hz) during self-paced left index nger button presses across participants in the absence of stimulation (a) and during electric stimulation (b). Note the stimulation artefacts (dark red) superimposing task-related neuromagnetic motor cortex activity in the centro-parietal sensor space (white dotted circle).
a
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In the absence of electric stimulation
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Figure 5 | Localization of motor task-related signal changes. The voxels with the most signicant task-related signal source change in the rangeof 0.530 Hz during self-paced button pressing (here of participant 1 for illustration) were reliably localized in the primary motor cortex (M1, Brodman area 4) irrespective of the absence (a) or presence of electric stimulation (b). In (b) electric stimulation was applied by a radiotranslucent, non-ferrous electrode placed over M1.
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Figure 6 | Cross-frequency spectrum of brain oscillations during a motor task. Cross-frequency spectrum of self-paced left index nger button press-related signal source changes in the primary motor cortex (M1) in absence (left) and during (middle) electric stimulation across all participants (ae). Note the typical motor task-related changes of signal power in alpha (813 Hz) (alpha desynchronization shortly before and after button press; most prominent in participants 2 and 4) and beta (1330 Hz) (beta synchronization approximately one second after the button press) as described by Pfurtscheller and Aranibar37 and others. Frequency spectra of MEG activity during task-free intervals (right) exhibit the typical physiologic alpha and beta peaks, and indicate no stimulation specic distortions in other frequencies.
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advantage of this novel strategy is that it mainly combines existing materials, devices and mathematical models for a new use, allowing fast implementation in other laboratories.
Findings resulting from this novel strategy may allow for enhanced and more individualized brain-stimulation-based treatment strategies for patient populations suffering from a wide variety of neurological or psychiatric disorders, including stroke, depression, chronic pain or schizophrenia49.
Finally, recent studies have demonstrated that beam forming can be used in online braincomputer interfaces (BCI) translating neuromagnetic signals into control signals of external devices50. Such paradigms allow for learned control of brain activity of specic cortical and subcortical areas51. The combination of BCI systems and TESANA, as introduced here, might be a new way to modulate BCI control through brain-state-dependent electrical stimulation non-invasively and to establish a bidirectional BCI or brainmachinebrain interface52 previously described in an invasive setup. Articial sensory feedback was applied by intracortical microstimulation enabling a monkey to feel when an actuator (in this case, a virtual reality arm) touched a virtual object52. Our results suggest that such a paradigm might be also feasible non-invasively. Future studies investigating the application of brain-state dependent transcranial electric currents during MEG-based BCI control may result in new strategies in the restoration of brain function (neurorestoration).
Materials and methods
Magnetoencephalography. Magnetoencephalography (MEG) is optimally designed to identify the timing and direction of currents and is thus an ideal tool for reconstructing and localizing oscillating signal sources with superior temporal and spatial resolution53,54, as shown by the reliable mapping of signal sources in the sensory, motor, visual and auditory cortices55. Magnetic signals were recorded at 600 Hz with a bandwidth of 0150 Hz using an MEG instrument with a whole-head array comprising 275 radial rst order gradiometer/SQUID channels (CTF MEG by MISL, Coquitlam, Canada) housed in a magnetically shielded room (Vacuumschmelze, Germany). Synthetic third gradient balancing was used to remove online background noise.
Phantom dipole model. A spherical phantom head with a diameter of 13 cm containing two electrodes and lled with a saline electrolyte solution was used to generate an oscillating dipole at a xed location relative to the center of the sphere (coordinates [ 40 mm, 0 mm, 25 mm] according to RAI) (Fig. 1a). The dipole-
generating electrodes had an inter-electrode distance of 4 mm. The dipole signal was set to oscillate at different frequencies (11 and 23 Hz) and reconstruction was tested during variable activity (at 310 nAm source strength) to resemble task-related changes of brain oscillatory activity.
Participants. Five healthy human volunteers (three male, two female, 285.8 years old; all right-handed) without a history of neurological or psychiatric disorders participated in this study. The study was approved by the ethics committee of the Medical Faculty at the University of Tbingen. All studies were carried out at the University of Tbingen. Before the rst MEG measurement, the location of M1 was assessed by single-pulse transcranial magnetic stimulation according to Rossini et al.56 and marked with a water-resistant skin marker. Three ducial localization coils were placed at the nasion and pre-auricular points (right and left) to determine the head position in real time during MEG recordings. Before each measurement, coil positions were photographed for ofine co-registration of the recorded MEG data with structural T1 MR images.
MRI images. A cranial MRI exam in a 3-T whole-body scanner with a 12-channel head coil (Magnetom Trio, Siemens, Erlangen, Germany) was carried out, while the participants were placed supine in the scanner. Vitamin E capsules served as radiological markers for the nasion and pre-auricular points corresponding to locations used for MEG head localization. T1-weighted structural scan of the whole brain were obtained using the sequence MPRAGE (matrix size 256 256, 160
partitions, 1 mm3 isotropic voxels, TA 5:17 m, TR 2300 ms, TE 3.93 ms, ip
angle 8, FOVRO 256, FOVPE 224, PAT 2, PAT mode GRAPPA) and
served as the anatomical reference.
Electric brain stimulation. Direct current was applied to the phantom head using a commercial and a prototype stimulator (NeuroConn GmbH, Ilmenau, Germany). The radiotranslucent stimulator electrodes were placed in a bipolar montage over
C4 (stimulating electrode) and below FP1 (reference electrode) according to the International 1020 system (Fig. 1a), and had a size of 6 4 cm. The battery-driven
stimulator device was located outside the magnetically shielded room and delivered electric currents via a twisted pair of wires with an intensity of 1 mA. A conductive paste (Ten20, D.O. Weaver, Aurora, CO, USA) was applied to the surface of the phantom, allowing a constant current ow between the electrodes at impedance values of 812 kO matching the values of a real head. This allowed for quantication of stimulator-dependent electromagnetic noise levels as well as changesin the reconstructed signal source compared with the predened location and oscillating activity of the dipole. As due to the low conductivity of the skull(5.52 10 3 S/m)57 only a fraction of the applied currents enter the head, this
phantom model was considered most appropriate compared with other models, for example, the use of an agar sphere. Two different stimulator devices with different noise characteristics were tested separately (device A: DC Stimulator plus and device B: a new stimulator prototype/DC Stimulator nG, both NeuroConn GmbH). Electromagnetic noise recorded by the MEG sensor array was evaluated by computing the power spectrum for all MEG channels in the absence of any oscillating dipoles. The same stimulator (device A) and stimulation electrodes were used for the experiments with healthy human volunteers. Electrodes were placed in a bi-cephalic montage (anode placed over the right M1, reference electrode placed to the supraorbital area; Fig. 1b). Recordings in absence of stimulation were conducted without the stimulating electrodes in place, to allow proper validation of the control condition. For tDCS, electric currents were gradually ramped up from0.01.0 mA over 15 s and kept constant until all 60 self-paced button presses were completed. Impedance levels of the tDCS electrodes were kept below 12 kO.
Self-paced button press task during MEG recordings. All participants were seated upright in the shielded MEG room with their hands placed on a cushion on their laps and their head centrally positioned within the MEG sensor array. A closed-circuit video system was used to constantly monitor the experiment, while instructions were given during rest periods via an intercom system. The participants were instructed to voluntarily press a button placed under the left index nger with a time interval of at least 812 s between each press. After collecting MEG data during three runs with 60 button presses in the absence of electric brain stimulation, recordings continued, while anodal tDCS was delivered by device A (3 runs, 60 button presses).
Ofine analysis. Electromagnetic noises generated by device A and device B were evaluated for every MEG sensor and averaged across the whole MEG sensor array. Changes in sensor signal power were topographically mapped. A Fourier transformation of the MEG signals recorded from four different locations in the MEG sensor array (above the stimulating tDCS electrode, anterior to the stimulating electrode, one frontal and one occipital midline MEG sensor) was performed for data acquired in the absence of tDCS and during tDCS with devices A and B. Fourier transformations were also performed for MEG data recorded during simulation of the 11 and 23 Hz dipoles and during task-free intervals ( 4 to 2 s
before button presses) in all tested healthy participants.
Statistical analysis. All data are presented as mean s.d. and were analyzed using a two-tailed Students t-test or one-way ANOVA. Statistical signicance was set at Po0.05 and is indicated on gures with an asterix (*). The specic text,
P-value and F-statistics (ANOVA) for each comparison are described in the Results section.
Source reconstruction using SAM. Source reconstruction was performed using SAM, a scalar linearly constrained minimum variance beam former acting as a spatial lter for estimating cortical source activity on a voxelby-voxel basis (see Supplementary Methods). Source power was calculated at 1-mm intervals on a regular three-dimensional grid throughout the phantom head. A dual-state SAM analysis included a nonparametric U-test to identify the location of the voxel with the most signicant amplitude change. A second order Butterworth band-pass lter was applied with cutoff frequencies of 8 and 15 Hz for the simulated 11 Hz signal source and 15 and 30 Hz for the simulated 23 Hz signal source, respectively. A oneway ANOVA was used to test for differences in accuracy of source localization (as measured by deviation from the given coordinates of the simulated dipole) and coherence of source reconstruction. Coherence, a measure of similarity between two given signals58, was quantied using the following equation.
Cxyf
Pxy
f j2
Pxxf Pyyf
where Pxy is the cross power spectral density and Pxx and Pyy, the power spectral density of each signal, x and y, respectively. For all statistical tests, the signicance level was set to Po05.
MEG data recorded from healthy human volunteers was band-pass-ltered with cutoff frequencies between 0.5 and 30 Hz and segmented into epochs of 2 s based on button-press-related trigger markers. Task-related changes in alpha and beta frequencies were quantied in sensor space for time windows of 1 s before and
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1 s after the button presses. Signal changes were averaged across all epochs in the absence of and during tDCS, and topographically displayed.
For signal source reconstruction and localization in source space, MEG data was co-registered using the radiological markers in the participants T1-weighted MR images and the MEG ducial coil coordinates. A time-frequency analysis was performed using a multitaper spectral method59 implemented in Fieldtrip60. Signal power in alpha (813 Hz) and beta (1330 Hz) were computed for 1-s time windows 0.5 s before button-press and 1 s after button press, and compared between runs recorded in the absence of and during DC stimulation using a paired-samples t-test.
References
1. Buzski, G. & Draguhn, A. Neuronal oscillations in cortical networks. Science 304, 19261929 (2004).
2. Thut, G., Miniussi, C. & Gross, J. The functional importance of rhythmic activity in the brain. Curr. Biol. 22, R658R663 (2012).
3. Wang, X. J. Neurophysiological and computational principles of cortical rhythms in cognition. Physiol. Rev. 90, 11951268 (2010).
4. Kayser, C., Montemurro, M. A., Logothetis, N. K. & Panzeri, S. Spike-phase coding boosts and stabilizes information carried by spatial and temporal spike patterns. Neuron 61, 597608 (2009).
5. Schnitzler, A. & Gross, J. Normal and pathological oscillatory communication in the brain. Nat. Rev. Neurosci. 6, 285296 (2005).
6. Muthukumaraswamy, S. D., Edden, R. A., Jones, D. K., Swettenham, J. B. & Singh, K. D. Resting GABA concentration predicts peak gamma frequency and fMRI amplitude in response to visual stimulation in humans. Proc. Natl Acad. Sci. USA 106, 83568361 (2009).
7. Fries, P. A mechanism for cognitive dynamics: neuronal communication through neuronal coherence. Trends Cogn. Sci 9, 474480 (2005).
8. Womelsdorf, T. et al. Modulation of neuronal interactions through neuronal synchronization. Science 316, 16091612 (2007).
9. Polania, R., Nitsche, M., Kormann, C., Batsikadze, G. & Paulus, W.
The importance of timing in segregated theta-phase-coupling for cognitive performance. Curr. Biol. 22, 13141318 (2012).
10. Schulz, R., Gerloff, C. & Hummel, F. C. Non-invasive brain stimulation in neurological diseases. Neuropharmacology 64, 579587 (2013).
11. George, M. S. et al. Brain stimulation for the treatment of psychiatric disorders. Curr. Opin. Psychiatry 20, 250254 (2007).
12. Elbert, T., Lutzenberger, W., Rockstroh, B. & Birbaumer, N. The inuence of low-level transcortical DC-currents on response speed in humans.
Int. J. Neurosci. 14, 101114 (1981).
13. Nitsche, M. A. & Paulus, W. Excitability changes induced in the human motor cortex by weak transcranial direct current stimulation. J. Physiol. 527, 633639 (2000).
14. Metuki, N., Sela, T. & Lavidor, M. 2012. Enhancing cognitive control components of insight problems solving by anodal tDCS of the left dorsolateral prefrontal cortex. Brain Stimul. 5, 110115 (2012).
15. Hummel, F. C. et al. Facilitating skilled right hand motor function in older subjects by anodal polarization over the left primary motor cortex. Neurobiol. Aging 31, 21602168 (2010).
16. Schambra, H. M. et al. Probing for hemispheric specialization for motor skill learning: a transcranial direct current stimulation study. J. Neurophysiol. 106, 652661 (2011).
17. Reis, J. et al. Noninvasive cortical stimulation enhances motor skill acquisition over multiple days through an effect on consolidation. Proc. Natl Acad. Sci. USA 106, 15901595 (2009).
18. Dockery, C. A., Liebetanz, D., Birbaumer, N., Malinowska, M. & Wesierska, M. J. Cumulative benets of frontal transcranial direct current stimulation on visuospatial working memory training and skill learning in rats. Neurobiol. Learn. Mem. 96, 452460 (2011).
19. Brunoni, A. R. et al. Clinical research with transcranial direct current stimulation (tDCS): Challenges and future directions. Brain Stimul. 5, 175195 (2012).
20. Hummel, F. C. et al. Effects of brain polarization on reaction times and pinch force in chronic stroke. BMC Neurosci. 7, 73 (2006).
21. Kalu, U. G., Sexton, C. E., Loo, C. K. & Ebmeier, K. P. Transcranial direct current stimulation in the treatment of major depression: a meta-analysis. Psychol. Med. 1, 110 (2012).
22. Nardone, R. et al. Effect of transcranial brain stimulation for the treatment of Alzheimer disease: a review. Int. J. Alzheimers Dis. 2012, 687909 (2011).
23. Toga, A. W. & Mazziotta, J. C. Brain Mapping: the Methods (Academic Press, San Diego, 1996).
24. Logothetis, N. K., Pauls, J., Augath, M., Trinath, T. & Oeltermann, A. Neurophysiological investigation of the basis of the fMRI signal. Nature 412, 150157 (2001).
25. Lang, N. et al. How does transcranial DC stimulation of the primary motor cortex alter regional neuronal activity in the human brain? Eur. J. Neurosci. 22, 495504 (2005).
26. Antal, A. et al. Cathodal stimulation of human MT leads to elevated
fMRI signal: A tDCS-fMRI study. Restor. Neurol. Neurosci. 30, 255263 (2012).27. Antal, A., Polania, R., Schmidt-Samoa, C., Dechent, P. & Paulus, W. Transcranial direct current stimulation over the primary motor cortex during fMRI. Neuroimage 55, 590596 (2011).
28. Okada, Y. C., Lahteenmaki, A. & Xu, C. Experimental analysis of distortion of magnetoencephalography signals by the skull. Clin. Neurophysiol. 110, 230238 (1999).
29. Silver, A. H. & Zimmerman, J. E. Quantum transitions and loss in multiply connected superconductors. Phys. Rev. Lett. 15, 888891 (1965).
30. Robinson, S. E. & Vrba, J. Functional neuroimaging by synthetic aperture magnetometry (SAM). in Recent Advances in Biomagnetism (eds Yoshimoto,T., Kotani, M., Kuriki, S., Karibe, H. & Nakasato, N.) 302305 (Tohoku
University Press, Sendai, 1999).31. Fife, A. A. et al. Synthetic gradiometer systems for MEG. IEEE Trans. Appl. Superconduct. 9, 40634068 (1999).
32. Gardiner, C. W. Stochastic Methods: A Handbook for the Natural and Social Sciences 4th edn. (Springer, Berlin, 2009).
33. Weinberg, H., Cheyne, D. & Crisp, D. Electroencephalographic and magnetoencephalographic studies of motor function. Adv. Neurol. 54, 193205 (1990).
34. Joliot, M. et al. Anatomical congruence of metabolic and electromagnetic activation signals during a self-paced motor task: a combined PET-MEG study. Neuroimage 7, 337351 (1998).
35. Cohen, D. et al. MEG versus EEG localization test using implanted sources in the human brain. Ann. Neurol. 28, 811817 (1990).
36. Stanck, Jr A. & Pfurtscheller, G. Event-related desynchronisation of central beta-rhythms during brisk and slow self-paced nger movements of dominant and nondominant hand. Brain Res. Cogn. Brain Res. 4, 171183 (1996).
37. Pfurtscheller, G. & Aranibar, A. Evaluation of event-related desynchronization (ERD) preceding and following voluntary self-paced movement. Electroencephalogr. Clin. Neurophysiol. 46, 138146 (1979).
38. Reis, J. et al. Consensus: can transcranial direct current stimulation and transcranial magnetic stimulation enhance motor learning and memory formation? Brain Stimul. 1, 363369 (2008).
39. Stagg, C. J. & Nitsche, M. A. Physiological basis of transcranial direct current stimulation. Neuroscientist 17, 3753 (2011).
40. Taulu, S., Kajola, M. & Simola, J. Suppression of interference and artifacts by the signal space separation method. Brain Topogr. 16, 269275 (2004).
41. Komssi, S., Huttunen, J., Aronen, H. J. & Ilmoniemi, R. J. EEG minimum-norm estimation compared with MEG dipole tting in the localization of somatosensory sources at S1. Clin. Neurophysiol. 115, 534542 (2004).
42. Quraan, M. A. & Cheyne, D. Reconstruction of correlated brain activity with adaptive spatial lters in MEG. Neuroimage 49, 23872400 (2010).
43. Reddy, V. U., Paulraj, A. & Kailath, T. Performance analysis of the optimum beamformer in the presence of correlated sources and its behavior under spatial smoothing. IEEE Trans. Acoust. Speech Signal Process. 35, 927936 (1987).
44. Marshall, L., Helgadttir, H., Mlle, M. & Born, J. Boosting slow oscillations during sleep potentiates memory. Nature 444, 610613 (2006).
45. Kanai, R., Paulus, W. & Walsh, V. Transcranial alternating current stimulation (tACS) modulates cortical excitability as assessed by TMS-induced phosphene thresholds. Clin. Neurophysiol. 121, 15511554 (2010).
46. Fertonani, A., Pirulli, C. & Miniussi, C. Random noise stimulation improves neuroplasticity in perceptual learning. J. Neurosci. 31, 1541615423 (2011).
47. Polyakov, Y., Narayana, S. & Semenov, V. K. Flux trapping in superconducting circuits. IEEE Trans. Appl. Supercond. 17, 520525 (2007).
48. Feurra, M., Bianco, G., Santarnecchi, E., Del Testa, M. & Rossi, A. Frequency-dependent tuning of the human motor system induced by transcranial oscillatory potentials. J. Neurosci. 31, 1216512170 (2011).
49. Sha, M. M., Westover, M. B., Fox, M. D. & Pascual-Leone, A. Exploration and modulation of brain network interactions with noninvasive brain stimulation in combination with neuroimaging. Eur. J. Neurosci. 35, 805825 (2012).
50. Ahn, M., Hong, J. H. & Jun, S. C. Feasibility of approaches combining sensor and source features in brain-computer interface. J. Neurosci. Methods 204, 168178 (2012).
51. Soekadar, S. R. et al. ERD-based online brain-machine interfaces (BMI) in the context of neurorehabilitation: optimizing BMI learning and performance. IEEE Trans. Neural Syst. Rehabil. Eng. 19, 542549 (2011).
52. ODoherty, J. E. et al. 2001. Active tactile exploration using a brain-machine-brain interface. Nature 479, 228231 2001.
53. Hillebrand, A. & Barnes, G. R. A quantitative assessment of the sensitivity of whole-head MEG to activity in the adult human cortex. NeuroImage 16, 638650 (2002).
NATURE COMMUNICATIONS | 4:2032 | DOI: 10.1038/ncomms3032 | http://www.nature.com/naturecommunications
Web End =www.nature.com/naturecommunications 9
& 2013 Macmillan Publishers Limited. All rights reserved.
ARTICLE NATURE COMMUNICATIONS | DOI: 10.1038/ncomms3032
54. Hamalainen, M., Hari, R., Ilmoniemi, R. J., Knuutila, J. L. & Olli, V. Magnetoencephelographytheory, instrumentation, and applications to noninvasive studies of the working human brain. Rev. Mod. Phys. 65, 413497 (1993).
55. Hari, R. & Salmelin, R. Magnetoencephalography: from SQUIDs to neuroscience. Neuroimage 20th anniversary special edition. Neuroimage 61, 386396 (2012).
56. Rossini, P. M. et al. Noninvasive electrical and magnetic stimulation of the brain, spinal cord and roots: basic principles and procedures for routine clinical application. Report of an IFCN committee. Electroenceph. Clin Neurophysiol. 91, 7992 (1994).
57. Akhtari, M. et al. Conductivities of three-layer live human skull. Brain Topogr. 14, 151167 (2002).
58. Kay, S. M. Modern Spectral Estimation (Prentice-Hall, Englewood Cliffs, NJ454, 1988).
59. Mitra, P. P. & Pesaran, B. Analysis of dynamic brain imaging data. Biophys. J. 76, 691708 (1999).
60. Oostenveld, R., Fries, P., Maris, E. & Schoffelen, J. M. FieldTrip: open source software for advanced analysis of MEG, EEG, and invasive electrophysiological data. Comput. Intell. Neurosci. 2011, 156869 (2011).
Acknowledgements
This work was supported by the Intramural Research Program (IRP) of the National Institute of Neurological Disorders and Stroke (NINDS) and National Institute of Mental Health (NIMH), Bethesda, Maryland, USA, the German Federal Ministry of Education and Research (BMBF, Frderzeichen 01GQ0831, 16SV5840),
the Deutsche Forschungsgemeinschaft (DFG) and the European Union (FP7-ICT-2011-288551). We thank Sook-Lei Liew for her help in preparing the manuscript.
Authors contributions
S.R.S., M.W., S.E.R. and L.G.C. designed the experiments; S.R.S., E.G.C. and M.W. performed the experiments; S.R.S., E.G.C., S.E.R. and M.W. collected and analyzed data; S.R.S., S.E.R., N.B., L.G.C. wrote the manuscript. S.E.R. and L.G.C. contributed equally to this work.
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How to cite this article: Soekadar, S R. et al. In vivo assessment of human brain oscillations during application of transcranial electric currents. Nat. Commun. 4:2032 doi: 10.1038/ncomms3032 (2013).
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Copyright Nature Publishing Group Jun 2013
Abstract
Brain oscillations reflect pattern formation of cell assemblies' activity, which is often disturbed in neurological and psychiatric diseases like depression, schizophrenia and stroke. In the neurobiological analysis and treatment of these conditions, transcranial electric currents applied to the brain proved beneficial. However, the direct effects of these currents on brain oscillations have remained an enigma because of the inability to record them simultaneously. Here we report a novel strategy that resolves this problem. We describe accurate reconstructed localization of dipolar sources and changes of brain oscillatory activity associated with motor actions in primary cortical brain regions undergoing transcranial electric stimulation. This new method allows for the first time direct measurement of the effects of non-invasive electrical brain stimulation on brain oscillatory activity and behavior.
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