Nevzat Gencer
Transkript
Nevzat Gencer
International Summer School and Workshop on Brain Dynamics, July 23 - 28 , 2012 ELECTRO-MAGNETIC SOURCE IMAGING OF THE HUMAN BRAIN Nevzat G. Gençer Department of Electrical and Electronics Engineering, Middle East Technical University, 06800, Balgat, Ankara, Turkey Institute of Theoretical and Applied Physics (ITAP), Marmaris, TURKEY 1 Outline • METU Brain Research Laboratory • Electro-Magnetic Source Imaging (EMSI) – – – – Signal properties Realistic Head Modeling using MRI data Forward/Inverse Problem Solutions Instrumentation • Electrical Impedance Imaging – Forward/Inverse Problem Solutions – Instrumentation – Experimental Results 2 METU MAP 3 Brain Research Laboratory Department of Electrical and Electronics Engineering Middle East Technical University, TURKEY Research interests : Numerical Methods applied to EEG and MEG research Mathematical and Computational aspects of Medical Imaging Medical Instrumentation Multi-channel EEG system design Novel imaging systems Medical Image Processing Image segmentation from MRI data Parallel Processing Numerical solution of electromagnetic field problems using Beawolf Clusters Visulalization Facilities: 2 Laboratories, Programming resources, 2 Computer Clusters, 256-channel EEG device, Electronic measurement devices, Prototype novel imaging systems Education Support: Analog Electronics, Semiconductor Devices and Modeling, Medical Imaging, Bioelectricity and Biomagnetism, Physiological Control Systems Prof. Dr. Nevzat G. Gençer Tel : +90-312-2102314 Fax: +90-312-2102304 Web: http://www.eee.metu.edu.tr/~biomed/brl 4 Brain Research Laboratory Department of Electrical and Electronics Engineering Middle East Technical University, TURKEY Research Projects : Faculty: Electro-magnetic source imaging of the human brain Prof. Dr. Nevzat G. Gençer Extraction of Evoked Responses Segmentation using MR images Finite Element/Boundary Element Method Modeling Inverse Problem algorithms Multi-channel EEG devices Graduate students : Electrical impedance imaging Electrical Impedance Imaging via contactless measurements Applied/Induced Current Electrical Impedance Imaging Conductivity imaging via evoked potentials Brain Computer Interfaces (BCIs) P300 based BCI systems Cue based Motor imagery BCI systems Balkar Erdoğan, Berna Akıncı Reyhan Tutuk, Feza Carlak, C. Barış Top Koray Özkan Software support: Didem Menekşe Prof. Dr. Nevzat G. Gençer Tel : +90-312-2102314 Fax: +90-312-2102304 Web: http://www.eee.metu.edu.tr/~biomed/brl E-mail: [email protected] 5 ELECTO-MAGNETIC SOURCE IMAGING 6 Role of Electro-magnetic Source Imaging • Magnetoencephalography (MEG) and electroencephalography (EEG) devices respectively measure the magnetic fields near the head and the electric potentials on the scalp surface due to the electrical activities inside the human brain. • Localization of the brain activities using EEG and MEG measurements is called electromagnetic source imaging (EMSI). EEG sensors MEG sensors (Vectorview from Elekta Neuromag) 7 Applications • Localizing centers (audial, visual, language, motor) of the human brain prior to brain surgery, • Improved understanding and treatment of serious neurological and neuropsychological disorders such as intractable epilepsy, schizophrenia, depression, and Parkinson’s and Alzheimer’s diseases. 8 Basic properties compared to other functional brain imaging modalities • Direct measurement of electrical brain activity and offer the potential for superior temporal resolution (ms) when compared to PET and fMRI (1 s). • The spatial resolving power of MEG and EEG does not, in general, match that of PET and fMRI (1-3 mm). Resolution is limited by: – the relatively small number of measurements, – The inherent ambiquity of the underlying static electromagnetic inverse problem (ill-posedness). 9 Forward and Inverse problems • The electrical activities in the brain are usually modeled using current dipoles. • The purpose of EMSI is to obtain information about the spatio-temporal behavior of these dipoles. • The solution of the scalp potentials and magnetic fields for a specific dipole configuration is the forward problem of EMSI. • Complementarily, the inverse problem is the localization of the sources based on the measurements and the calculations. 10 Head Models • Accurate modeling of the human head is necessary to increase the accuracy of EMSI solutions. • Realistic head models are usually obtained via MRI data. This requires image processing, more specifically, application of segmentation algorithms. • When the realistic head models are used, a numerical method must be adopted to solve the forward problems. • The most widely used numerical methods are the boundary element method (BEM), the finite element method (FEM) and the finite difference method (FDM). • To increase the numerical accuracy in the solutions either the numerical formulation is improved or the quality of the meshes used in the calculations is increased. 11 Electro-Magnetic Source Imaging Imaging/Image processing Forward problem Computing Data Acquisition (EEG/MEG) Inverse Problem MRI Segmentation Head Modeling Source Localization 12 Critical Steps for succesful localization Inverse Problem Algorithm Reference Electrode Selection Appropriate Data Period Registration Forward Problem Approach Electrode/sensor Locations Data Acquisition System Mesh Generation Segmentation Source Localization Apriori assumption about the source 13 Milestones in elecrophysiology literature Sheerington introduced the concept of synapse, in 1897 The term neuron was applied to neural cell by Weldeyer in 1891 The first high quality ECG recorder was developed by Eindhoven (1908) The first magnetocardiogram (MCG) was recorded by Baule and McFee (1963) Young shows the applicabiity of the squid axon for electrophysiology studies in 1936. In 1902 Bernstein developed the "membrane theory" of electrical potential in biological cells and tissues. 1900 Hodgkin and Huxley developed an accurate mathematical model of the activation process in 1952 MEG devices with multiple sensors are developed (1980s) Cohen and Zimmermann recorded the first magnetoencephalogram (MEG) using SQUIDs (1972) 2000 1950 Neher and Sakmann invented the patch clamp technique (1976) Gasser and Erlanger record the time courses of nerve impulses in 1922. Basic research into the study of neurons was undertaken by August Forell, Wilhelm His and Santiago Cajal Adrian formulated all-ornothing law of the neural cell, 1912. Granit developed a microelectrode that permits the measurement of electric potentials inside a cell (1939). Berger made the first recording of the electroencephalography (EEG) on a human (1924) MEG devices that contain about 300 sensors are developed. The RF squid was invented by Jaklevic, Lambe, Silver and Zimmerman (1965) Eccless investigated synaptic transmission in 1950s. EEG devices that acquire data from 256 electrodes are developed. Cohen measured the magnetic alpha rhythm with an induction coil magnetometer (1968) 14 Origin of EEG/MEG signals cortical surface Structure of cortex Structure of Neuron 3 mm dentrites soma (Wikipeida.org) 1010 neurons 1014 connections 50000 neurons/cm3 70 % of neurons are pyramidal cells white matter axon 15 Basic properties • Nerve cells (neurons) are excitable. • Cell membranes generate electrochemical impulses (action potentials APs) as a consequence of excitation. • Membranes conduct APs without attenuation. Action potential Amplitude (Wikipedia.org) Action potential Postsynaptic potential 100 mV 10 mV Postsynaptic potential 16 Period 1 ms 10 ms Resting-Graded-Action potentials Silverthorn, Human Physiology, Prentice Hall,1996 (http://cwx.prenhall.com/bookbind/pubbooks/silverthorn2/) 17 Obserbing a propagating AP e (r ) observation point - Vm + 1 i Vm e (r ) a z (1 / R) dV 4 e V z ' Vm i e R r r' z’ e :extracellular potential i :intracellular potential Vm :transmembrane voltage 18 Q: How do we model the source of APs? ELECTRICAL POTENTIAL OF DIFFERENT SOURCE TYPES SOURCE TYPE Monopole Volume distribution of monopolar sources Surface layer of of monopolar sources SYMBOL Io UNIT A POTENTIAL EXPRESSION (r ) I0 4 r r 1 I sv (r ) dV r r I s (r ) dS r r Isv A/m3 1 (r ) 4 Is A/m2 1 (r ) 4 Am p (r r ) (r ) 4 r r 3 Dipole p Volume distribution of dipolar sources pv A/m2 (r ) Surface distribution of monopolar sources ps A/m (r ) V S 1 1 pv (r ) (1 / R) dV 4 V ps (r )(1 / R) n dS 4 S 19 For a volume distribution of current dipole sources pv(r), expressed in A/m2 , in an unbounded medium of conductivity , we have 1 e ( r ) 4 pv (r ' ) (1 / R) dV V It is evident that, an AP propagating in a single fiber posesses an equivalent volume dipole density: pv (r ) i (Vm / z)a z 20 Source model of propagating AP is a quadrupole. field point e (z ) i (z ' ) fiber 21 z’ Q: How do we model for the source of postsynaptic potentials? intracellular current Postsynaptic cell z Excitatory -Io Presynaptic cell Depolarization AP d Io dendrite Hyperpolarization soma p I0 d axon Presynaptic cell Inhibitory AP ‘’The primary source of the evoked field is the intracellular current from dendrite to soma and can be represented by a current dipole as a first approximation (Okada, 1983).‘’ 22 Source model of postsynaptic potentials is a current dipole. Postsynaptic cell Depolarization dendrite p I0 d Hyperpolarization soma axon 23 Q: Which model is more appropriate for EEG and MEG signals? Quadrupole or dipole model? • The fields of a quadrupole decreases much faster compared to the fields of a current dipole. • The frequency content of the evoked fields (0.5-50 Hz) is much lower than the frequency content of an action potential. Whereas it is in the range of the post synaptic potentials. • Consequently, one may assume 1) the scalp potentials as the cumulative effect of the postsnaptic potentials, 2) the source model of EEG/MEG is a current dipole. • Note that, EEG/MEG measurements are due to a large number of (1015-1016) synchronously fired pyramidal cells. Action potential Postsynaptic potential Amplitude 100 mV 10 mV Period 1 ms 10 ms Model quadrupole dipole 24 Fields of a shallow dipole Potential field 25 Magnetic field INSTRUMENTATION AND MEASUREMENT SENSITIVITY 26 EEG Measurements • The amplitude of background EEG is on the order of few V – 75 V. • The frequency band is divided into 4 intervals: Delta () 0.5 Hz - 4.0 Hz Theta () 4.0 Hz - 8.0 Hz Alpha () 8.0 Hz - 13 Hz Beta () 13.0 Hz - 50 Hz • The amplitude of the evoked potentials are on the order of 1 V and one should apply special techniques to extract it. The international 10-20 system 27 Properties of the research/commercial EEG devices (Usakli and Gencer, 2007) 28 Multi-channel EEG device design A multichannel EEG device for ESI should satisfy a number of requirements based on signal dependent, environmental, medical, and economical reasons (Usakli and Gencer, 2007). • • • • • • • • • • • • The system must accurately measure signals with an amplitude less than 300 mV in the frequency range of 0–30 Hz. The recordings should preserve the original waveform. To obtain a high spatial resolution, more than one hundred electrodes should be placed on the scalp surface. Considering possible contact impedance, the input impedance of the circuit should be sufficiently large (for example, >1 G). To reduce power line interference, the CMRR of the instrumentation amplifiers (IA) should be high (>100 dB) and the system should be battery powered. The noise (referred to input) should be less than 2 V (rms). To reduce electronic noise, the analog and digital grounds should be properly isolated. To follow the signal details, the digital resolution of ADCs should be high (number of effective bits >12). The cross talk rejection figure between the channels should be high. There should be no delay in the sampling instants of different channels. The system should be transportable and a PC interface must be provided with no additional I/O card installed in PC. The communication means should handle the transfer rate of a multichannel high resolution digital data. The above-given requirements should be satisfied by using available and less expensive components. 29 Sensitivity of surface electrodes to the electrical activities in the brain. (Puikkonen and Malmivuo, 1987) 30 MEG Measurements • Information about the brain activity can also be obtained from the recorfing of magnetic fields outside the skull. These recordings are called Magnetoencephalogram (MEG). • Baule and McFee’s coil arrangement was used by Cohen (1968) to detect the magnetic field of the alpha rhythm of the brain. • Introduction of the SQUID (Superconducting Quantum Interference Device) into biomagnetic studies (James Edward Zimmerman) improved the sensitivity of magnetic field measurements by several orders of magnitude, thus enabling the realtime monitoring of spontaneous brain activity. Early MEG studies (Williamson, Romani,Kaufman and Modena, 1983) 31 MEG Measurements Coil configurations MEG sensors (Vectorview from Elekta Neuromag) 32 Magnetic signals produced by various sources Magnetic shielding (Malmivuo and Plonsey 1995) (Wikipedia.org) 33 Sensitivity of a circular coil to the electrical activities in the brain. Isosensitivity lines in MEG measurement in a spherical head model with a single coil magnetometer having a radius 10 mm . The sensitivity is everywhere oriented tangential to the symmetry axis which is the line of zero sensitivity. Within the brain area the maximum sensitivity is located at the surface of the brain and it is indicated with shading (Malmivuo and Plonsey, 1995). 34 REALISTIC HEAD MODELING 35 Image segmentation • To create a realistic head model, one must first classify the main tissues of the head from high resolution volume images. Segmentation is the process of classifying image elements that have the same properties. • There are three major segmentation methods in the literature: (1) the deterministic methods that use classical image processing tools like thresholding, region growing and morphological operations, 2) the statistical methods based on probabilistic methods that may also estimate the inhomogeneity in the MR images ; and (3) methods that use a deformable atlas • To use realistic head models, in general, only the main tissues in the head, such as scalp, skull and brain layers, are included. • To classify these tissues, usually, T1-weighted MR images are employed, since it provides high soft tissue contrast. • If cerebrospinal fluid (CSF) is to be included in the model, T1-weighted images are not sufficient since CSF cannot be distinguished from the skull. 36 • In the METU BRL, the scalp, skull, CSF, eyes, GM and WM are segmented from the threedimensional multimodal MR images of the head. • A hybrid algorithm is developed that applies the snakes algorithm, region growing, thresholding and morphological operations (Akalın and Gencer 2000). 37 Segmentation The background is segmented using the PD images 38 Segmentation The skull is segmented using the PD images 39 Segmentation The eye tissue is obtained from T1 images using a template 40 Segmentation The segmented images are discarded from the head images. The scalp is segmented from the remaining T1 images 41 Segmentation The scalp is removed from the head images. Using the raw image of the cortex, the CSF, the cortex and the WM are segmented 42 Segmentation The remaining voxels are labeled according to their neighboring. 43 Segmentation Results Scalp White matter Skull Cortex 44 FORWARD PROBLEM 45 Quasi-static approximation for biological systems • The capacitive component of tissue impedance is negligible in the frequency band of internal bioelectric events (Schwan and Kay,1957). • The volume conductor currents were essentially conduction currents and only tissue resistivity must be specified. • The electromagnetic propagation effect can also be neglected (Geselowitz, 1963). 46 • Thus the time-varying bioelectric currents and voltages in the human body can be examined in the conventional quasistatic limit (Plonsey and Heppner, 1967). • All currents and fields behave, at any instant, as if they are stationary. • The description of the fields resulting from the applied current sources is based on the understanding that the medium is resistive only. • The phase of the time variation can be ignored (i.e., all fields vary synchronously). 47 / ratio for various tissues at different frequencies 10 Hz 100 Hz 1000 Hz 10000Hz Lung 0.15 0.025 0.05 0.14 Fatty tissue - 0.01 0.03 0.15 Liver 0.2 0.035 0.06 0.20 Heart muscle 0.1 0.04 0.15 0.32 48 Poisson’s Equations As a consequence of the above conditions E J J s E J s Starting from the continuity equation we obtain J ( J s ) 0 ( ) J s I sv 49 Forward problem of electrical source imaging To calculate the scalar potential outside the head due to a given primary current distribution. J 0 n s inside V B S on S p J dV s 50 Integral equation We obtain the well known formula in the literature of the EEG forward problem formulation: 2 1 ( P) Vo (P) ( k k ) 2 j 1 S j ( j j ) (1 / R) dS j ( k k ) This integral equation is the basis of the Boundary Element Method (BEM) formulation for the numerical calculation of the potential function. 1 V0 ( P ) 4 s J (1/ R) dV V V0 represents the potential at P due to Js in an infinite homogeneous medium with unit conductivity. 51 Forward problem of neuromagnetism • To calculate the magnetic field B outside the head or thorax from a given primary current distribution. • The starting point is the Maxwell’s equation using the quasi-static approximation. B o J • A solution to B that obeys Maxwell’s third equation (divergence of B is zero), and the condition that B vanishes at infinity is given by the Ampere-Laplace law. 52 Ampere-Laplace Law o B 4 J R dV R3 R (1 / R) (1 / R) 3 R R J 3 J (1 / R) ( J ) / R ( J / R) R o o B ( J ) / R dV ( J / R)dV 4 4 53 Applying the Stoke’s theorem A dV A dS ( J / R) dV ( J / R) dS This term is equal to zero when there are no sources on the object surface. o B ( J ) / R dV 4 54 Components of the measured field J J i E J i o J i o ( ) B dV dV 4 V R 4 V R o J i o B dV dV 4 V R 4 V R direct effect of the primary current contribution of the volume currents 55 Another form of the B field expression o J R B dV 3 4 R o B J (1 / R)dV 4 o o B J i (1 / R)dV (1 / R)dV 4 4 56 NUMERICAL MODELING • An essential part of this methodology is the solution of the forward problem, i.e. solving the potentials and magnetic fields knowing the source distribution and physical properties of the head. • A homogeneous sphere has been widely used in literature to model the head (Barnard 1967, Brody et al 1973, Cuffin 1978, Budiman and Buchanan 1993). This simple model provides a quick way of calculating the associated field patterns approximately. • In a realistic head model, complicated numerical methods have to be employed to solve these fields accurately. 57 NUMERICAL MODELING Boundary Element Method (BEM) • Formulated using integral equations. • More efficient than other methods in terms of computational resources for problems with small surface/volume ratio. • Results in dense coefficient matrix. Finite Element Method (FEM) • Finds approximate solutions to the partial differential equations. • Handles complicated geometries with relative ease. • Results in sparse coefficient matrices. Finite Difference Method (FDM) • FDM in its basic form is restricted to rectangular shapes • Very easy to implement. • Results in sparse coefficient matrices. 58 Head models and solution methods 3-4 surface spherical models (analytical solutions) Realistic models Boundary Element Method (BEM) (Akalın ve Gencer, 2004) Realistic Models Finite Element Method (FEM) (Gencer ve Acar, 2004) 59 BEM Formulation Integral equation for the Potential Field: 1 (r ) 2 g (r ) 2 1 pR g (r ) 4 0 R 3 k k ' R ' ( r ) dS ( r ) k 1 k 3 R i Sk i n Integral equation for the Magnetic Field: ' 0 n ' R B(r ) B0 (r ) ( k k ) (r ) 3 dS k (r ) k 1 4 R S 0 p R B0 (r ) 4 R 3 k 60 Spherical Meshes 61 BEM Formulation Each surface S k is discretized into N area elements. N R R i (r ) 3 dS k (r ) S (r ) R3 dSk (r ) R i 1 S i k k Shape functions m m x N i ( , , ) x i 1 e i m y N i ( , , ) y i 1 z N i ( , , ) zie i 1 m e i N i ( , , )ie i 1 62 BEM Formulation Element surface integrations can be expressed in terms of the local coordinates (,). 1 1 N R R (r ) 3 nGdd S (r ) R3 dS (r ) R i 1 0 0 k G can be expressed as: r r G The integral on the local coordinates can be approximated by Gauss-Legendre quadrature 1 1 0 0 1 gp f ( , )dd f ( j , j ) w j 2 j 1 63 BEM Formulation Thus the surface integrals can be expressed as: gp N R( j , j ) R 1 ( j , j ) w j n ( j , j )G ( j , j ) 3 S (r ) R3 dS (r ) R( j , j ) i 1 2 j 1 k The potential at any local coordinate can be expressed in terms of the node potentials Mk R c j j S (r ) R3 dS (r ) j 1 k In matrix notation we obtain M 1 CM M g M 1 [ I C ]1 g M: number of nodes 64 FEM Elements and Source Models • Linear or quadratic isoparametric hexahedral volume elements with constant conductivity • Two Source models: – Element volume current (Gencer, et. al.) – Dipole inside element (Yan, et. al.) Linear element: 8 nodes • Sparse, symmetric, positivedefinite matrix equation: A=b Quadratic element: 20 nodes 65 Sample Volume meshes: Realistic-Grid Skull CSF Eyes Grid-based mesh obtained from segmented MR images 66 FEM Formulation J 0 n P B inside V S on S Using Galerkin’s weighted residuals method: p Ni (σ e ) dV Ni J dV Ve Ni : ith shape function e : conductivity of the element i 1 ... 20 Ve Jp : Current density inside the element (source) 67 FEM Formulation After applying appropriate vector identities and Gauss’s theorem: σ eNi dVe Ni σ e dSe i 1... 20 Ve Se p e n J n p σ Ni dVe Ni J n dSe Ve i 1 ... 20 Se 68 FEM Formulation 20 Since N i ie i 1 e p σ N Ν dV i 1 ... 20 e i j e j N i J n dS e j 1 Ve Se 20 In matrix form: Global matrix equation: A Φ b e e AΦ = b e A : M M Matrix - geometry and conductivity information. : M 1 Unknown potentials b : M 1 Source vector 69 FEM & BEM Comparison • • • • FEM Volume Elements Can model arbitrary conductivity distributions including anisotropy High number of nodes (200,000 – 2,000,000) Sparse Matrix • • • • BEM Surface Elements Conductivity is assumed to be homogeneous in compartments Low number of nodes (1,000 – 10,000) Dense matrix 70 FEM Computational Problems • Realistic Mesh = Large Matrix Edge length 5 mm 2 mm Elements 37 600 588 000 Nodes (linear) 38 000 560 000 Nodes (quadratic) 150 000 2 240 000 71 Parallel implementation of the accelerated BEM approach for EMSI of the human brain • Computational complexity is a limiting factor that prevents the use of detailed BEM models. In order to avoid long processing times and to prevent running out of memory, even the recent studies use coarse meshes for realistic models. • Recent work by Akalın-Acar and Gencer (2004), introduced the accelerated BEM formulation for EEG and MEG in order to speed-up the FP solutions. • Accelerated BEM formulation computes transfer matrices from the BEM system matrix (coefficient matrix) and electrode/sensor positions. Once these matrices are computed, the FP solutions are reduced to simple matrix-vector multiplications. • Unfortunately, even with accelerated BEM approach, the pre-computation phase takes a long time for detailed meshes, and the transfer matrices require additional memory. 72 METU Marvin cluster The four Nodelin workstations are connected to each other over a 100 Mb/s Ethernet switch and the Athlin nodes are connected to each other over a Gigabit Ethernet switch. All cluster nodes are running under the Linux operating system. The controlling workstation is running FreeBSD and provides access to the cluster nodes. The computation nodes have the following libraries for parallel processing and numerical operations: message passing interface (MPI), automatically tuned linear algebra subroutines (ATLAS) version of basic linear algebra subprograms (BLAS), linear algebra package (LAPACK), and PETSc . These libraries are organized in a layered structure, in which the PETSc is the top most layer. 73 Contributions Our main contributions are summarized as follows: (1) A feasible and scalable parallelization scheme is presented for the accelerated BEM approach. (2) The performance of the proposed parallelization scheme is tested. It was observed that our scheme provides memory scaling as well as faster operation with a considerable speed-up in the matrix filling, transfer matrix calculation and solution phases. 74 Sensitivity of EEG and MEG measurements to tissue conductivity 75 Main motivation • To identify the region(s) where a particular measurement is more sensitive • To reveal the tissue type that is more effective in the measurements • To compare the sensitivity of electrical and magnetic measurements to conductivity perturbations • To provide a means for updating the assigned conductivity values. 76 Relating the change in the potential measurements to change in conductivity perturbations Expression for : ( ) J p Insert 0 and 0 00 0( ) 0 ( ) J p ( 0( )) (0 ) ( ) 0 n 77 Special cases: 1) Perturbation confined on a specific tissue: 2) Uniform initial conductivity distribution 2 ( ) 0 0 0 n 0 2 ( ) 0 0 n 3) Uniform perturbation in an initially uniform conducting body 0 ( ) 2 0 n 0 0 ( J p ) ( J p ) 77 Field Profiles 0 ( ) 79 Interpretation of the sensitivity equations • The resulting fields are due to secondary dipole sources located at the position of conductivity perturbations. • These dipoles are in the direction of the initial electric field at the perturbation point 80 Relating the change in the magnetic measurements to changes in the conductivity perturbations 0 R Secondary B field: B s ( ) dV 3 4 R 0 B s ( 0 ) 4 R 0 0 R3 dV 0 0 R R B 0 3 dV 0 3 dV 4 R 4 R 81 Sensitivity: Numerical Implementation From: ( 0( )) (0 ) Using: 0 ( 0( )) (0 ) ( 00 ) A( 0 ) (A( ) 0 A( 0 ) 0 ) For s sensors: s S 1 A( ) 0 s SA( 0 ) s S 0 82 Sensitivity: Numerical Implementation 0 0 R R B 0 3 dV 0 3 dV 4 R 4 R B 0 0 R d V 0 4 R3 4 R 0 0 0 3 dV R B C( 0 ) C( )0 C( 0 ) 0 1 C( ) 0 C( 0 )A( 0 ) A( ) 0 B 0 0 B SB 83 Mapping Sensitivity Distributions • The sensitivity matrix reveals the sensitivity of measurements at the selected sensors to element conductivity for each dipole. • It presents a 3D data for each sensor/dipole combination. • Total Sensitivity concept visualizes the sum of the sensitivity matrix rows. 84 Sensitivity Distributions Spherical Head - EEG Electrode Pair Sensitivity 85 Sensitivity Distributions Spherical Head - MEG Single Lead Sensitivity 86 Total lead sensitivity: Spherical Head Problem Geometry 87 EEG Total Lead Sensitivity 88 MEG Total Lead Sensitivity 89 Total lead sensitivity: Realistic Head Problem geometry 90 EEG Total Lead Sensitivity Realistic Head - EEG Total Sensitivity 91 MEG Total Lead Sensitivity Realistic Head - MEG Total Sensitivity 92 Contributions • Two equations are derived that relate change in measurements to conductivity perturbations. • A numerical formulation is obtained to find the sensitivity using a realistic head model. • Total lead sensitivity concept is used to analyze the sensitivity maps. 93 Summary • EEG measurements are more sensitive to conductivity perturbations on the skull and the brain tissue in the vicinity of the dipole. • The sensitivity values for perturbations in the skull and brain conductivity were found comparable and strong function of dipole orientation. • The sensitivity to scalp conductivity is important only when the perturbation is very close to the measurement electrodes and it is less dependent on the dipole orientation. 94 • The effects of the perturbations on the skull are more pronounced for shallow dipoles. • For deep dipoles, the measurements are more sensitive to the conductivity of the brain tissue near the dipole. • MEG measurements are more sensitive to perturbations near the dipole location. • Sensitivity to other tissues (CSF, scalp, and skull) between the dipole and sensor is comparable but smaller than the sensitivity to the brain tissue near the dipole. • The sensitivity to perturbations in the brain tissue is much greater when the primary source is tangential and it decreases as the dipole depth increases. • The derived equations can be used to update the initially assumed tissue conductivities. They can also be used to reconstruct the conductivity distribution from a known source distribution. 95 Critical Steps for succesful localization Inverse Problem Algorithm Reference Electrode Selection Appropriate Data Period Registration Forward Problem Approach Electrode/sensor Locations Data Acquisition System Mesh Generation Segmentation Source Localization Apriori assumption about the source 96 INVERSE PROBLEM 97 A priori assumptions • Inverse problem solutions should not be mathematical solutions that solely satisfy the equations. • Realistic a priori assumptions are necessary to solve the actual biological sources. • The chosen a priori assumption determines the characteristics of the solution. • As we obtain more information about the sources these assumptions will change and new approaches will be developed. 98 Overdetermined (dipolar) models A priori assumption: The electrical potentials can be determined by small number of electrical dipoles. • To obtain a unique solution the number of unknowns should be less than the number of measurements. • Non-linear optimization methods are employed. • The solutions may converge to a local minimum. 99 • As the number of dipoles increases the probability to converge a local minimum increases. Single dipole localization performance (Mosher et al. 1993) • 4-shell sphere model, • 127 electrodes, • Single tangential dipole , • S/N =10 • Referans electrode is at infinity. • To avoid local minimum, initial point is 1 cm close to the actual solution • Result of Monte Carlo simulations with 100 repetitions. 100 Genetic Algorithm • Global iterative optimization algorithm • Starts with a population of estimates (chromozomes). • New estimates (generations) are obtained via genetic operations like Selection/crossover and mutation • The relative difference between the calculated and measured data decreases for each generation. 101 • Uses the cost function itself, does not require its derivative. • Use more computational resources compared to other methods. How many dipoles do wee need? • Investigated in a number of experimental and numerical studies (Achim et al., 1991; Cabrera Fernandez et al., 1995; Miltner et al., 1994; Zhang and Jewett, 1993, 1994; Scherg et al., 1999) • In the earlier studies, evoked responses and epileptic activities were modeled using small number of dipoles. Recent studies sho that this is not always valid (Michel et al., 2004; Scherg et al., 1999). • To find optimum number of dipoles mathematical techniques like MUSIC can be used (Mosher et al., 1992). However, there are difficulties in implemetation when realistic head models are used. To ovecome these difficulties a new algorith called RAP-MUSIC was proposed (Mosher and Leahy, 1998). • fMRI could be used to estimate the number of dipoles. Some studies report independent analysis is better (Ahlfors et al., 1999; Liu et al., 1998). There are also studies that use fMRI and EEG together (tough MR compatiple electrodes are requried). 102 Underdetermined (distributed) source models • Do not require the number of activities • Electrical activity is reconstructed on a known surface in the 3D space. • The number of unknowns is much larger than measurements. • The goal is to find a solution as a linear combination of the known activities. 103 Underdetermined (distributed) source models • Infinitely many solutions satisfy the measurements. • Unique solution can be obtained if additional a priori assumptions are used. • There are a number of studies that employ different assumptions. 104 • A priori assumptions: – Mathematical, – Physiological, – Structural and functional ingformation obtained from other imaging modalities. • The resultant solutions are valid as long as the assumptions are realistic. • Ölçümlerdeki gürültünün etkisini azaltmak için regularizasyon gereklidir. Minimum norm (MN) • Assumes a solution with minimum norm (Hamalainen and Ilmonemi, 1984, 1994). • Generates a unique solution. • There is no physiological basis for the validity of this assumption. • MN solutions are usually found shifted from the actual location to the scalp surface. 105 Weighted Minimum Norm (WMN) • Used to avoid shifts in the reconstructions. – Normalization with respect to the column (lead field matrix) norms (Lawson and Hanson, 1974) – Weighting using the covariance data matrix (Greenlatt, 1993) Laplacian Weighted Minimum Norm (LORETA) • More constraints are added to the depth weighting (PascalMarqui et al., 1994). • Selects the solution with a smooth spatial distribution by minimizing the Laplacian of the weighted sources. Local autoregressive average (LAURA) • Incorporates biophysical laws as constraints in the minimum norm algorithm (Grave de Peralta and Gonzales, 2002, Grave de Peralta et al., 2001, 2004) • The strength of the source falls off with – inverse of the cubic distance for vector fields, – inverse of the squared distance for potential fields. • 106 The method thus assumes that the activity will fall off according to these physical laws when moved away from the source. Beamformer • Originates from radar and sonar signal processing. • Spatial filtering of the data to discriminate signals from a region of interest and those originating from other regions. • Beamformer approaches aim to estimate the activity at one brain site by minimizing the interference of other possible simultaneous active sources. Evaluation and comparison Which source localization method should be chosen? There is no direct answer. • There is no clear established gold standard that would allow judging the goodness of the result of the inverse solutions. • Other functional imaging methods such as fMRI cannot be used as a gold standard as long as the spatial and temporal relation between electrical and heamodynamic responses are not known. • Most commonly, source localization algorithms are evaluated and compared through simulations with artifical data. • These studies are usually based on a single dipole source. • It has been used to evaluate – The variabilty in localization precision between different regions of the brain (Cuffin, 2001; Cuffin et al., 2003; Kobayashi et al., 2003) – The dependency of equivalent dipoles • on source depth (Yvert et al., 1996), • on the noise level (Achim et al., 1991; Vanrumste et al., 2002; Whittingstall et al., 2003), • on the number of recording electrodes (Krings et al., 1999; Yvert et al., 1996), • on the head model (Cuffin et al., 2001; Fuchs et al., 2002) Comparison of different algorithms PascualMarqui (1999) Leahy et al. (1999) MN WMN RWMN Bayesian Bayesian TrujilloBarreto et al. (2004) Grave de Peralta and Gonzales (2002) Philips et. al. (2002) LORETA LAURA Bayesian EPI FOCUS Other WINNER LORETA EPIFOCUS followed by LAURA WMN with constraints WMN with constraints DETEMINING THE SOURCES OF AUDITORY EVOKED FIELDS: AN EXPERIMENTAL STUDY 111 Electrode montage Suha Yağcıoğlu Zeynep Akalın Hacettepe University Medical School Dept. Biophysics, Ankara 112 Concluding Comments • Electro-magnetic source imaging is the only technique that offer millisecond responses to brain events. • EMSIs are obtained using a coordinated action of different fields: signal processing, image processing, numerical electromagnetics, parallel processing, inverse problems, and instrumentation. Each part can be improved to improve the localization performance. • Due to recent advances in technology, EMSI systems can be put in daily clinical practice, either alone or complementary to other functional imaging systems. 113
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chapter 3 - Pamukkale Üniversitesi Mühendislik Bilimleri Dergisi
This integral equation is the basis of the Boundary Element
Method (BEM) formulation for the numerical calculation of the
potential function.