Brainstorm Ideas
  Tim David
    The neurovascular coupling models have a large number of variables. We 
    should look at the best way to analyse the sensitivity of these parameters. 
    Uncertainty quantification analysis will help. What other methods can we utilise 
    to investigate the complex mechanisms?
  Marc Thiriet
    1. Targeting BBB for selected mass transfer (nanopartcles) - Modeling
    2. Influence of nervous impulse frequency on neuropeptide release.
    3. Interaction between brain cell populations.
  Pierre Gremaud
    Brainstorming topics:We ought to talk about data analysis especially with 
    a view towards patient specific simulation. We've done some work with a student 
    of mine that shows scary patient dependent biases in standard measurement 
    protocols. 
    Questions of interest:
    -Can one detect, quantify or even predict these biases? 
    -Can methods from machine learning be helpful here? (I think they can).
  
    Franck Plouraboue 
    three possible topics for discussions :
    (i) Future issues and developments for in-vivo and ex-vivo brain microvascular 
    network ?
    (ii) How to model neuro-vascular couplings : from qualitative to quantitative 
    ?
    (iii) How high performance computing can be useful to model cerebral brain 
    flow ?
  James Kozloski
    Possible topics:Multiscale modeling of neural tissue and vasculature and 
    
    Constitutive parameters estimation from tissue microstructure models
  
  
  WORKSHOP ABSTRACTS
  Brian Carlson
    Models of acute blood flow regulation incorporating physiologically- 
    and experimentally-based constraints.
   
    A critical part of defining the practical complexity of a theoretical model 
      of a physiological system is understanding what measurements can be made 
      in an in vivo or in vitro setting and the limitations that the experimental 
      preparation impose on the ability to define the theoretical model in addition 
      to an understanding of the relevant physiology. So in order to represent 
      a physiological system theoretically and identify the parameters of this 
      model with experimental data the researcher must wear the three hats of 
      an experimental, physiological and mathematical researcher simultaneously. 
      In the field of acute blood flow regulation there is a wealth of existing 
      experimental data and the methods of both in vivo and in vitro measurements 
      are very well defined. This gives us an opportunity to capture our current 
      understanding of the physiology of blood flow regulation in a manner that 
      can be identified by a variety of experimental data sets.
      This talk will present a couple examples of how our understanding of the 
      physiology of blood flow regulation and experimental methods to quantify 
      vascular responses can constrain the parameter space of the theoretical 
      model. The first example focuses on the passive response of isolated vessels 
      to pressure. Many models have been developed to characterize this response 
      however it can be shown that many of these models cannot be uniquely identified 
      by existing experimental data without imposing physiologically based constraints. 
      In a second example the experimental method of measuring the response of 
      an isolated vessel to pressure, phenylephrine and acetylcholine cannot uniquely 
      define our existing models incorporating cellular smooth muscle and endothelial 
      cell function. However combining these measurements with a secondary experiment 
      aimed at determining the passive and active vessel response to pressure 
      is sufficient to identify these cellular scale theoretical models of blood 
      flow regulation.
  
  Joshua Chang
   
    The necessity of blood flow to the brain is obvious. The relationship between 
      blood flow and brain pathologies however is much more subtle. In this talk 
      I discuss a mathematical model for how blood flow changes influence a homeostatic 
      phenomenon in the brain known as spreading depression. In spreading depression, 
      a multiphase derangement of neurovascular coupling is known to occur.
     In our model, the activity of neurons is coupled to the availability of 
      oxygen delivered by blood vessels through modulation of ATPase pump activity. 
      The major finding is that in some situations the metabolic needs of the 
      brain can be elevated such that blood flow dynamics (to some extent) have 
      a minimal effect on the recovery of the brain. After the recovery of ionic 
      gradients in the brain, vascular dynamics are still perturbed. I will discuss 
      a possible theory for this derangement which lasts on a long time scale 
      and may be relevant to compromised brain states.
  
  Tim David 
   
    A numerical model of neurovascular coupling (NVC) is presented based on 
      neuronal activity coupled to vasodilation/contraction models via the astrocytic 
      mediated perivascular \gls{K} and the smooth muscle cell \gls{Ca} pathway. 
      Luminal agonists acting on P2Y receptors on the endothelial cell surface 
      provide a flux of \gls{IP3} into the endothelial cytosol. This concentration 
      of \gls{IP3} is transported via gap junctions between endothelial and smooth 
      muscle cells providing a source of sacroplasmic derived \gls{Ca} in the 
      smooth muscle cell. The model is able to relate a neuronal input signal 
      to the corresponding vessel reaction. Results indicate the induced vasomotion 
      by increased \gls{IP3} induced calcium from the SMC stores and the resulting 
      CICR oscillation inhibits neurovascular coupling thereby relating blood 
      flow to vessel contraction and dilation following neuronal activation. \gls{IP3} 
      coupling between endothelial and smooth muscle cells seems to be important 
      in the dynamics of the smooth muscle cell. The VOCC channels are, due to 
      the hyperpolarisation from \gls{K} SMC efflux, almost entirely closed and 
      do not seem to play a significant role during neuronal activity. The presented 
      model shows that astrocytic \gls{Ca} is not necessary for neurovascular 
      coupling to occur in contrast to a number of experiments outlining the importance 
      of astrocytic \gls{Ca} in NVC whereas the current model makes clear that 
      this pathway is not the only one mediating NVC. Agonists in flowing blood 
      have a significant influence on the endothelial and smooth muscle cell dynamics. 
    
    We embed this complex model into an H-tree simulating the cerebro-vascular 
      bed. A parallel environment is set up to solve the vascular tree where each 
      leaf (perfusing vessel) of the tree is dynamically controlled by the solution 
      of the NVU under neuronal activation. Our results show that the vascular 
      bed properly dilates to accommodate increased flow to the neuronally activated 
      tissue block. In addition the tree dynamics shows a "steal" phenomenon 
      of blood from tissue blocks outside of the local activated tissue blocks. 
    
  
  Pierre Gremaud 
    Impedance boundary conditions for general transient hemodynamics (slides)
   
    I will discuss the implementation and calibration of a new generalized 
      structure tree boundary condition for hemodynamics. The main idea is to 
      approximate the impedance corresponding to the vessels downstream from a 
      specific outlet. Unlike previous impedance conditions, the one considered 
      here is applicable to general transient flows as opposed to periodic ones 
      only. The physiological character of the approach significantly simplifies 
      calibration. The performance of the method will be illustrated and validated 
      on examples with in vivo data. I will also describe a novel way to incorporate 
      autoregulation mechanisms in structured arterial trees at minimal computational 
      cost. Joint work with Will Cousins (MIT). 
  
  James Kozloski
    Generative Algorithms for Scaling Microstructural Models of Dendrites, 
    Axons, and Synapses to Whole Tissues and Brain
   
    We developed a novel neural tissue simulator to generate arbitrary neuronal 
      morphologies, compose them into tissues, and solve for different compartment 
      variables over shared topological constraints imposed by the tissue. Branched 
      dendrites are generated using a simulation of diffusion subject to self 
      referential path biases, and branched axons using a Poisson potential model 
      for selecting longer fiber paths. With these capabilities, we demonstrate 
      a simultaneous calculation of transmembrane voltage and calcium concentrations 
      over a simulated Inferior Olive tissue. We introduce gap junctions at specific 
      clusters of neuronal contacts selected based on structural criteria for 
      olivary glomeruli. The glomeruli exchange both current and calcium among 
      compartments across gap junctions, and we solve these without fixed point 
      iteration beyond our two step predictor-corrector method. Robust synchronization 
      across neurons in the tissue is achieved via these currents and calcium 
      diffusion across coupled dendrites. We also present a novel tissue volume 
      decomposition, and a hybrid branched cable equation solver for performing 
      large-scale simulations of neural tissue (2011). The decomposition divides 
      the simulation into regular tissue blocks and distributes them on a parallel 
      multithreaded machine. The solver computes neurons that have been divided 
      arbitrarily across blocks and can be considered a tunable hybrid of Hines' 
      fully implicit method (1984), and the explicit predictor-corrector method 
      of Rempe and Chopp (2006). We demonstrate thread, strong, and weak scaling 
      of our approach on a machine of 4,096 nodes with 4 threads per node. Scaling 
      synapses to physiological numbers had little effect on performance, since 
      our decomposition approach generates synapses that are almost always computed 
      locally.
    Kozloski, J. and Wagner, J. (2011). Front. Neuroinform. 5:15.
      Rempe, M. J., and Chopp, D. L. (2006). SIAM J. Sci. Comput. 28, 2139-2161.
      Hines, M. (1984). Int. J. Biomed. Comput. 15, 69-76.
  
  Fuyou Liang, SJTU-CU International Cooperative 
    Research Center, School of Naval Architecture, Ocean & Civil Engineering, 
    Shanghai Jiao Tong University,
    Patient-specific multi-scale modeling of the cardiovascular system
  
   
    Cardiovascular diseases are the world's largest killers, claiming 17.1 
      million lives a year (WHO). At present, the pathogenesis underlying many 
      cardiovascular diseases remains to be fully understood. Hemodynamic factors 
      have long been speculated to correlate closely with the onset and progression 
      of cardiovascular diseases, which has accordingly motivated a large number 
      of studies aimed to investigate the characteristics of hemodynamics in the 
      context of certain cardiovascular diseases1. In these studies, model-based 
      hemodynamic simulation has played an important role due to its ability to 
      provide insight into the details of blood flows. The human cardiovascular 
      system is highly complex in terms of both anatomic structure and hemodynamic 
      behaviors. The extreme complexity of the system prevents a fully three-dimensional 
      (3-D) modeling of the entire system. At this point, multi-scale modeling 
      has emerged as a practical approach to obtaining detailed flow information 
      in regions of interest while accounting for the global circulation at an 
      affordable computational cost2. However, applying a general hemodynamic 
      model in the clinical setting is challenging due to the presence of significant 
      inter-patient differences in cardiovascular properties and pathological 
      conditions3. This problem has raised the concept of patient-specific modeling, 
      and numerous studies have contributed to this field in recent years. In 
      this lecture, we will present several hemodynamic models that have been 
      developed to describe various hemodynamic phenomena and introduce some methods 
      for clinical data-based model personalization.
      References
      [1] Ku DN. Blood flow in arteries, Annu. Rev. Fluid Mech.1997; 29:399-434.
      [2]Taelman L, Degroote J, Verdonck P, Vierendeels J, Segers P. Modeling 
      hemodynamics in vascular networks using a geometrical multiscale approach: 
      numerical aspects. Ann Biomed Eng. 2013; 41(7):1445-1458.
      [3]Taylor CA, Figueroa CA. Patient-specific modeling of cardiovascular mechanics. 
      Annu Rev Biomed Eng. 2009;11:109-134.
  
  Greg Mader 
    Modeling cerebral blood flow velocity during orthostatic stress 
   
    Cerebral autoregulation (CA) is the brain's regulation mechanism by which 
      cerebral blood flow (CBF) is maintained at its nominal level despite changes 
      in the arterial blood pressure (ABP). Many previous models for CA use a 
      lumped parameters approach or create statistical black-box models. In this 
      work we propose a new simple quantitative model predicting CBFV from ABP 
      on a patient-specific basis. The model is motivated by the viscoelastic-like 
      trends observed in filtered patient pressure-flow data collected during 
      a sit-to-stand experiment. After describing the nature of the experimental 
      data and deriving the mechanical components of the model, the stability 
      and identifiability of the model will be shown. Qualitative model behavior 
      and parameter estimation will also be discussed. The model will be validated 
      against time-series data from one normotensive young and one normotensive 
      elderly subject.
  
  Yoichiro Mori
    Modeling Electrodiffusion and Osmosis in Physiological Systems 
  
   
    Electrolyte and cell volume regulation is essential in physiological systems. 
      After a brief introduction to cell volume control and electrophysiology, 
      I will discuss the classical pump-leak model of electrolyte and cell volume 
      control. I will then generalize this to a PDE model that allows for the 
      modeling of tissue-level electrodiffusive, convective and osmotic phenomena. 
      This model will then be applied to the study of cortical spreading depression.
  
  Franck Plouraboue (slides)
   
    Albeit cerebral blood flow is a critical clinical parameter for brain function 
      assessment, its intimate relationship to micro-vascular structure and hemodynamic 
      is still under progress.
      The first part of the presentation will be devoted to the topic's overview, 
      either from the experimental and the modeling side. Recent In-vivo and ex-vivo 
      imaging techniques and perspectives will be provided. Those advances in 
      physiological imaging provides astonishing in vivo measurements to nourish 
      and challenge modeling's predictions. Yet most valuable, local measurements 
      are difficult to embrace in a more global picture, so that modeling is needed.
      Modeling issues will also be exposed, either from the mechanical, the physiological 
      and the mathematical view-point.
      In a second part, we present recent results of cerebral blood flow from 
      high-resolution micro-vascular images providing evidences that modeling 
      offers new perspective to decipher brain's perfusion robustness, vascular 
      territories, and input/output coupling between penetrating vessels.
      Moreover, modeling also permit to challenge simple evidence such as cerebral 
      blood flow (CBF) normalization, to be useful for the comparison of CBF estimated 
      with different measurements or different clinical contexts.
      Finally, the presentation will expose some recent advances in transfer modeling 
      in very simple counter-current configurations, to motivate and challenge 
      future modeling and approximations in more complex configurations.
  
  Shu Tagaki 
    A Full Eulerian Method for Fluid-Membrane Interaction Problems and its 
    Application to Blood Flows
    Shu Takagi*1, Satoshi Ii2, Kazuyasu Sugiyama2, Seiji Shiozaki3 and Huaxiong 
    Huang4
    1 The University of Tokyo, 2 Osaka University, 3 Tokai University, 4York University
   
     
      A novel full Eulerian fluid-elastic membrane coupling method on the fixed 
        Cartesian coordinate mesh was proposed within the framework of the volume-of-fluid 
        approach [1]. The present method is based on a full Eulerian fluid-(bulk) 
        structure coupling solver [2]. In this talk, numerical results of flowing 
        vesicles encapsulated by the hyperelastic membrane are presented. The 
        membrane is described by volume-fraction information generally called 
        VOF function. A smoothed phase indicator function is introduced as a phase 
        indicator which results in a smoothed VOF function. This smoothed VOF 
        function uses a smoothed delta function, and it enables a membrane singular 
        force to be incorporated into a mixture momentum equation. In order to 
        deal with a membrane deformation on the Eulerian fixed mesh, a deformation 
        tensor is introduced and updated within a compactly supported region near 
        the interface. Both the neo-Hookean and the Skalak models for red blood 
        cells are employed in the numerical simulations. A smoothed (and less 
        dissipative) interface capturing method is employed for the advection 
        of the VOF function and the quantities defined on the membrane [3]. The 
        stability restriction due to membrane stiffness is relaxed by using a 
        quasi-implicit approach. The present method is validated by using the 
        spherical membrane deformation problems, and is applied to a pressure-driven 
        flow with red blood cells. The numerical results of flowing red blood 
        cells and platelets are shown. The method was also extended to simulate 
        platelet adhesion process which occurs at the initial stage of thrombosis. 
        The platelet adhesion to the vessel wall is given by the large numbers 
        of protein-protein bindings. This binding process of protein molecules 
        are treated stochastically using the Monte Carlo method. More detail discussion 
        will be given in the talk.
      REFERENCES 
        [1] S. Ii, X. Gong, K. Sugiyama, J. Wu, H. Huang and S. Takagi, A Full 
        Eulerian Fluid-Membrane Coupling Method. Commun. Comput. Phys, 12, pp. 
        544-576 (2012)
        [2] K. Sugiyama, S. Ii, S. Takeuchi, S. Takagi and Y. Matsumoto, A full 
        Eulerian finite difference approach for solving fluid-structure coupling 
        problems. J. Comput. Physics. 230 , pp. 596-627 (2011)
        [3] S. Ii, K. Sugiyama, S. Takeuchi, S. Takagi, Y. Matsumoto and F. Xiao, 
        An interface capturing methodwith a continuous function: the THINCmethod 
        withmulti-dimensional reconstruction. J. Comput. Phys., 231, 2328-2358 
        (2012)
    
  
  Jingdong Tang 
    Inhibiting the superficial femoral artery sympathetic nervous to treat 
    the Buerger diseases
    Tang Jingdong, Gan Shujie, Zhang Ci, Li ke, Qian Shuixian 
    Corresponding Author: Tang Jingdong
   
    Objective: To assess the inhibiting the superficial femoral artery sympathetic 
      nervous to treat the Buerger diseases.Methods: The records of 30 cases of 
      Buerger. All of the cases' treatment was the inhibiting the superficial 
      femol artery sympathetic nervous by Radiofrequency ablation. Results: It 
      was safe that all of the cases' treatment was the inhibiting the superficial 
      femoral artery sympathetic nervous by Radiofrequency ablation. The checking 
      results of the cases were ABI, CTA and DSA. Conclusions: It was not only 
      preventing the human body from the complication of Lumbar sympathectomy, 
      and also recovering Buerger's arteries. However, it was a few cases and 
      follow up time, we should have a lot work to do.
      Key Words: Radiofrequency ablation; Buerger; inhibiting the superficial 
      femoral artery sympathetic nervous.
  
  Tim Secomb 
    Oxygen transport in the brain and implications for neurovascular coupling 
     
     
   
     
      Oxygen transport to the brain may be regarded as the most critical function 
        of the circulatory system. Because oxygen can diffuse only a short distance 
        (of order 50 microns) into oxygen-consuming tissue, a dense network of 
        microvessels carrying oxygenated blood is necessary to ensure that all 
        tissue points are adequately supplied. Using a Green's function method, 
        we simulated oxygen delivery by a three-dimensional network of microvessels 
        in rat cerebral cortex, and predicted the distribution of partial pressure 
        of oxygen (PO2) in tissue and its dependence on blood flow and oxygen 
        consumption rates. In a typical control state with consumption 10 cm3O2/100cm3/min 
        and perfusion 160 cm3/100cm3/min, the predicted minimum tissue PO2 was 
        7 mmHg. In comparison, a Krogh-type model with the same density of vessels, 
        but with uniform spacing, predicted a minimum tissue PO2 of 23 mmHg. With 
        a 40% reduction in perfusion, tissue hypoxia (PO2 < 1 mmHg) was predicted. 
        These results suggest that the normal microcirculation operates with a 
        relatively small 'safety' margin of excess supply relative to basal requirements. 
        Although one might intuitively expect that hypoxia provides a feedback 
        signal for the short-term regulation of blood flow to ensure tissue oxygenation, 
        a substantial amount of evidence argues against this mechanism. Nonetheless, 
        it appears that the structure of the brain microvasculature is finely 
        tuned for oxygen delivery. As a resolution of this apparent paradox, we 
        suggest that the structural control of the brain vasculature, through 
        the processes of angiogenesis and vascular remodeling, is sensitive to 
        the occurrence of tissue hypoxia, thus providing the necessary feedback 
        control on a slow timescale. Supported by NIH grant HL070657. 
    
  
  Marc Thiriet
    Signaling to the brain via nervous and endocrine inputs. Illustration by 
    a biological and mathematical model of acupuncture (slides)
   
    The brain is a complex processor that can sense chemical, physical, and 
      mechanical signals, treat them, and transmit an output for bodily adaptation 
      extremely quickly and more slowly using neural and vascular routes. 
      Surgical interventions can be carried out using either general anesthesia, 
      that is, a medically induced coma, or acupuncture, that is, performing tasks 
      in concious subjects naturally anesthetized. In the latter case, the brain 
      that is capable of synthesizing opioids and antalgics is stimulated from 
      acupoints that are known since 2~millenaries. In addition to a better confort 
      for the patient who avoids coma, the cost for the health service is much 
      lower. The lecture will emphasize signaling from a given acupoint to the 
      brain and on the corresponding mathematical model.
    1. Targeting BBB for selected mass transfer (nanopartcles) - Modeling
      2. Influence of nervous impulse frequency on neuropeptide release.
      Intercation between brain cell populations.
  
  Qiming Wang
    Modeling cardiovascular response to the umbilical cord occlusions in fetal 
    sheep: the impact of hypoxia and asphyxia
    Author:Qiming Wang, Martin G. Frasch, Huaxiong Huang, Steven Wang
   
    One of the main issues during childbirth is the possibility of developing 
      severe fetal acidemia caused by umbilical cord occlusions (UCO) due to repetitive 
      uterine contractions. Despite of the extensive physiological insights provided 
      by these studies, an important question remains open. From clinical point 
      of view, developing an online detection of potential brain injuries is of 
      vital importance. On the other hand, it is often difficult to measure fetal 
      acidemia directly during childbirth. The question is: can we develop an 
      indirect mean to detect fetal acidemia before it is too late so that clinical 
      intervention can be applied? In current work, we carry out numerical simulations 
      via a mathematical model to study the effects of the UCO on the fetal heart 
      rate (FHR), arterial blood pressure, cerebral oxygen deficit as well as 
      carbon dioxide accumulation in the fetus. For FHR control, our model incorporated 
      known established mechanisms such as parasympathetic and sympathetic responses, 
      with proper modifications motivated by experiments. Our model is capable 
      of reproducing variability of FHR in response to the UCOs observed in experiments 
      and addressing the role of different mechanisms on FHR when frequency and 
      severity of UCO change. 
      In addition, our model also provides insights on the onset of asphyxia due 
      to UCO. We show that the accumulation of carbon dioxide in the fetus can 
      enhance the late deceleration and suppress the intermediate growth in FHR 
      during UCOs, hence serve as a potential indicator in detecting severe asphyxia.
  
  Alix Witthoft 
    Bidirectional neurovascular communication: modeling the vascular influence 
    on astrocytic and neural function
  
   
    The neurovascular unit is a relatively new concept, and many of the interaction 
      pathways are still unclear. To help establish a complete picture, we have 
      developed some of the first bidirectional models for communication at each 
      interface (gliovascular, neuroglial, neurovascular) of the neurovascular 
      unit.
      Astrocytes are considered the critical link in inducing vasodilation during 
      functional hyperemia. We present a bidirectional model wherein astrocytes 
      trigger vasodilation by releasing potassium through inward rectifier (Kir) 
      and BK channels, while vessel movements activate mechanosensitive TRPV4 
      calcium channels in the astrocyte endfoot.
      At the neuroglial interface, neurons and astrocytes release and uptake neurotransmitters 
      and other diffusibles at the synaptic space. Our model focuses on the astrocyte 
      response to synaptic activity and its regulation of extracellular potassium, 
      which alters neural excitability. The model demonstrates how astrocytic 
      multidirectional potassium regulation is achieved through the balance of 
      three transport mechanisms: Kir channels, sodium/potassium/chloride cotransport 
      (NKCC), and sodium/potassium exchange (Na-K).
      While astrocytes mediate communications between neurons and vasculature, 
      there may also be direct pathways. Cortical interneurons are found in contact 
      with microvessels, and express mechanosensitive pannexin (Px1) channels. 
      To couple fluid dynamic blood flow simulations with neurovascular interactions, 
      we are developing a discrete particle model of a flexible anisotropic microvessel. 
      The multi-layer model comprises various collagen fibers attached to an elastin 
      matrix, mimicking the structure of the vascular tissue. We use dissipative 
      particle dynamics (DPD), a coarse-grained, mesoscopic simulation approach 
      ideal for complex fluids.
      We are simultaneously collaborating with experimental neuroscientists to 
      develop a model for vessel-adjacent interneurons to explain observed network 
      reactions to vascular movements. We use the model to formulate hypotheses 
      about interneuron responses to changes in single-file red blood cell flow 
      in tight capillaries.
  
  Yuan-nan Young
    
   
     
      Mechanical coupling between cell membrane and a transmembrane protein
        The dynamics of red blood cells (RBCs) has been extensively studied experimentally, 
        theoretically and numerically. When under shear stress, RBCs are known 
        to release adenosine triphosphate (ATP) as a vasodilatory signaling in 
        response to the increased shear stress inside arterial constriction. Although 
        shear-induced ATP release from RBCs has been observed, the underlying 
        mechanosensing mechanism inside RBCs is still controversial. In this work 
        we couple a cell membrane under shear to a transmembrane protein, and 
        examine the dynamical consequence of the protein configuration in a continuum 
        model. A brief introduction to cell dynamics under flow will be presented, 
        and results on modeling and simulating cell dynamics will be summarized.
        A simple model for coupling the membrane dynamics to a transmembrane protein 
        will be discussed, followed by some preliminary results. This work is 
        a collaboration with On Shun Pak (Princeton University), Howard Stone 
        (Princeton University), and Shravan Veerapaneni (University of Michigan). 
        Support from NSF-DMS1222550 is gratefully acknowledged.
    
  
  Bas-Jan Zandt
    Modeling of metabolism, activity and ion concentrations in the neurovascular 
    unit
  
   
     
      Through feedback and feedforward mechanisms, functional hyperemia follows 
        increased neuronal and synaptic activity. Indeed, the functioning of neural 
        tissue is critically dependent on a sufficient supply of energy in the 
        form of oxygen and glucose from the blood. Most energy in the brain is 
        consumed by ion transporters and pumps, notably the Na/K-pump, responsible 
        for homeostasis of the intra and extracellular ion concentrations. Their 
        workload depends on activity of synapses and neuronal action potentials. 
        In turn, neuronal activity depends on the ion concentrations. Many modeling 
        work has been done on this in the context of spreading depression with 
        single cell models, however, these neglect the important contribution 
        of synaptic input and network dynamics.
        I will present a model describing neuronal activity, ion concentration 
        dynamics and metabolism. As part of this work, a method was developed 
        to create a neural mass model of neuronal activity with a bottom-up approach, 
        which naturally includes the effects of excitation and depolarization 
        block by extracellular potassium.
        This model may provide insight in the dynamics of the pathophysiological 
        processes following ischemia (stroke, cardiac arrest).
       
         
           
             
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