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CHEMOMETRICS IN VIRTUAL CELL

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Title: CHEMOMETRICS IN VIRTUAL CELL


1
CHEMOMETRICS IN VIRTUAL CELL
Analytical/Radio/Nuclear (ARN) Seminar
  • NILESH RAUT

DEPARTMENT OF CHEMISTRY UNIVERSITY OF KENTUCKY
2
OVERVIEW
  • Chemometrics basics.
  • Virtual cell basics.
  • Components of virtual cell model.
  • Use of virtual cell model in Ca2 transport.
  • Use of chemometrics in virtual cell modeling of
    Ran transport.
  • Results.
  • Conclusions.

3
The Need
  • To understand the overall design principle of
    complex biological systems.
  • To understand transport phenomenon within cell.
  • To aid in genomics and proteomics studies.
  • To develop full understanding of mechanisms
    underlying a cell biological event.
  • To overcome communication problem between
    chemists and chemometricians

4
Chemometrics
  • Extracting chemically relevant information from
    data produced in chemical experiments.
  • Makes use of mathematical model.
  • Structure the chemical problem to a form that can
    be expressed as a mathematical relationship.
  • A chemical model (M) relates experimental
    variables (X) to each other, and it also has a
    statistical model (E) associated with it.

5
Chemometrics
  • The statistical model also describes variability,
    noise of the data obtained from chemical model.
  • X M E.
  • i.e. Data Chemical Model Noise.
  • More imphasis is to be given on the chemical
    model representing a situation.

6
Virtual Cell What is it? And How is it done?
  • Computational framework for modeling cell
    biological processes.
  • Models are constructed from biochemical and
    electrophysical data.
  • Couples chemical kinetics, membrane fluxes and
    diffusions.
  • Resultant equations are solved numerically.

7
System architecture for virtual cell
8
System architecture for virtual cell
  • Modeling framework gives biological abstractions
    necessary to model and simulate cellular
    physiology
  • Mathematics framework Provides a general purpose
    solver for mathematical problems in the
    application domain of computational cellular
    physiology.

9
Components of Physiological Model 1. Cellular
Structure
  • Represents mutually exclusive regions in cell.
  • Compartments 3D volumetric regions.
  • Membranes 2D surfaces separating compartments
    and filaments.
  • Filaments 1D contours lying within single
    compartment.
  • Can also contain molecular species and reactions
    describing those species.

10
Components of Physiological Model 2. Molecular
Species
  • Within cellular structures.
  • Behavior of molecular species
  • Diffusion within compartments, membranes, etc.
  • Directed motion along filaments.
  • Flux between compartments through membranes.
  • Advections between cellular structures.

11
Components of Physiological Model 3. Reactions
and Fluxes
  • Complete description of stoichiometry and
    kinetics of biochemical reactions.
  • Associated with a single cellular structure.
  • Stoichiometry in terms of reactants, products
    and catalysts related to species in a cellular
    structure.
  • Kinetics specified as mass action kinetics.

12
Specifications of Cellular Geometry
  • Describes the behavior of cellular system.
  • Defines morphology of the cell, and its spatially
    resolvable organelles.
  • Taken directly from experimental images (from
    pixel density).

13
Design of Virtual Cell
Interplay between model development and
experiment during modeling process
14
Design of Virtual Cell
  • Inputs to the model can be derived from the
    users own experiments as well as the literature.
  • Physiology includes the topological arrangements
    of compartments and membranes, the molecules
    associated with each of these, and the reactions
    between the molecules.
  • Geometry can be derived from either analytical
    expressions or from an experimental image
    acquired from a microscope.
  • Numbers represent the relative surface densities
    of the BKR.

15
Use of Virtual Cell in Ca2 transport
The pathway for bradykinin-induced calcium
release in differentiated neuroblastoma cells.
16
Use of Virtual Cell in Ca2 transport
  • Bradykinin (BK) binds to its receptor (BKR) in
    the plasma membrane.
  • Sets off a G-protein cascade, activates
    phospholipase C (PLC), hydrolyzes the
    glycerolphosphate bond in phosphatidylinositol
    bisphosphate (PIP2), releases IP3 from the
    membrane.
  • IP3R is a calcium channel that is triggered to
    open when IP3 is bound and when calcium itself
    binds to an activation site.
  • Calcium released binds to calcium buffers (B) in
    the cytosol including the fluorescent calcium
    indicator.
  • Finally, calcium is pumped back into the ER via a
    calcium ATPase (SERCA).

17
Output of Virtual Cell
  • Left column shows the experimental
  • calcium changes following addition of
  • BK at time 0 s in a differentiated
  • N1E-115 neuroblastoma cell.
  • Center column displays the output
  • of the Virtual Cell simulation.
  • Right column displays the output of
  • the simulation for IP3.
  • Hence permits simulation permits
  • estimation of the spatiotemporal
  • distribution of molecules that are not
  • accessible experimentally.

18
Chemometric Studies of Ran Transport Setup
  • Ran is guanine nucleotide triphosphatase.
  • Two cellular compartments cytosol and nucleus.
  • Behavior under consideration Flux of Ran.
  • Flux rate is calculated as a product of
    permeability constant and concentration
    difference across nuclear envelope.
  • For visualization aid, recombinant protein was
    modified with a fluorescent maleimide.

19
Kinetic Studies of Ran Transport
Fine solid lines denote reversible interactions,
dashed lines indicate enzyme-mediated reactions,
and bold, double-headed arrows indicate flux.
20
Kinetic Studies of Ran Transport
  • NTF Nuclear transport factor. RCC Ran exchange
    factor.
  • In the cytosolic compartment, RanGDP associates
    with NTF2 to form the NTF2RanGDP complex.
  • Nuclear NTF2RanGDP decomposes to NTF2 and
    RanGDP.
  • Interaction of RCC1 with NTF2 or RanGDP produced
    25 RanGDP and 75 RanGTP, to account for the
    estimated GTP/GDP ratio in the cell.
  • RanGTP associates with transport cargo Carriers
    to form a CarrierRanGTP complex.
  • Cytosolic Carrier RanGTP associates with RanBP1
    to form a CarrierRanGTPBP1 complex. RanGAP
    interacts with CarrierRanGTPBP1 complex to form
    BP1, RanGDP, and Carrier.

21
Kinetic Studies of Ran Transport
  • Results of injection of FL-Ran

Nuclear accumulation of FL-Ran in BHK-21 cells
after cytosolic injection.
22
Virtual Cell Modeling of Ran Transport
  • 3D geometry from experimental images is used.
  • Microinjection is modeled as a brief localized
    increase of the cytosolic FL-Ran concentration.
  • Result 3D simulation resembles experimental
    FL-Ran nuclear import and diffusion through
    cytosol.

23
Comparison of Virtual Cell Modeling and
Experimental Result
Comparison of Ran transport in a time series for
an FL-Ran nuclear import at initial cytosolic
conc. 1µM (in gray) with a sample plane from a 3D
spatial model of Ran transport (In color)
24
Analysis of Compartmental model for Ran Transport
Transients for simulated endogenous nuclear
species concentrations, followed over time during
recovery from addition of 1µM FL-Ran to cytosol
compartment.
25
In Vivo Analysis of Ran Import and Shuttling
A Time courses for nuclear accumulation of wild
type FL-Ran for the indicated initial cytosolic
concentrations. B Fluorescence loss in
photobleaching (FLIP) on FL-Ran at steady-state
in micro-injected BHK-21 cells. Boxed area was
repetitively photobleached.
26
Conclusions
  • Virtual cell has broad applicability in
    biological systems.
  • Chemometric methods are an important tool in
    predicting the results.
  • It serves as a confirmative test for a particular
    biological reactions.
  • Failures in obtaining results using chemometric
    methods, insures that the thought process is not
    yet perfect.

27
References
  • Alicia E. Smith, Boris M. Slepchenko, James C.
    Schaff, Leslie M. Loew, Ian G. Macara Science
    295, 488-491 (2002).
  • Svante Wold Chemometrics and Intelligent
    Laboratory Systems 30, 109-115 (1995).
  • Stanislaw Gorski, Tom Misteli Journal of Cell
    Science 118(18), 4083-4092 (2005).
  • Boris M. Slepchenko, James C. Schaff, Ian Macara,
    Leslie M. Loew TRENDS in Cell Biology 13(11),
    570-576 (2003).
  • Leslie M. Loew and James C. Schaff TRENDS in Cell
    Biology 19(10), 401-406 (2001).
  • Zoltan Szallasi TRENDS In Pharmacological
    Sciences 23(4), 158-159 (2002).

28
  • THANK YOU
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