Title: Computational Modelling
1- Computational Modelling
- of Biological Pathways
Kumar Selvarajoo kumars_at_bii.a-star.edu.sg
2Outline
- Background of Research
- Methodology
- Discovery of Cell-type Specific Pathways
- Analysis of Complex Metabolic Diseases
3The levels in Biology
The Central Dogma of Molecular Biology
4Is Genome Sequence Enough?
- The genome sequence contains the information for
living systems propagation - The functioning of living system involves many
complex molecular interactions within the cell - How do we understand these complex interactions
with static sequence information?
5From Genome to Cellular Phenotype
Eg. Human
Eg. ESR Coding
Eg. Glycolysis
Eg. Cancer, Diabetes
The steps involved to convert genome sequence
into useful phenotypic description
6From Genome to Cellular Phenotype
- Understanding the individual function of genes,
proteins or metabolites does not allow us to
understand biological systems behaviour - It is therefore important to know how each gene,
protein or metabolite is connected to each other
and how they are regulated over time - Recent technological breakthroughs in biology has
made generating high throughput experimental data
a reality - But by analysing high throughput experimental
data of biological systems without understanding
the underlying mechanism or circuitry is not very
useful
7Computation in Biology
- Computational methods hence become essential to
help understand the complexity of biological
systems (Hartwell et al, Nature,1999) - However, the currently available computational
techniques are insufficient to accurately model
complex biological networks (Baily, Nature
Biotechnology, 2001) - This is mainly due to the general lack of
formalised theory in biology at present. - Biology is yet to see its Newton or Kepler
(Baily, Nature Biotechnology, 2001)
8Advantages Computer Simulations
- Easy to mathematically conceptualise
- Able to develop and predict highly complex
processes - Rapid creation and testing of new hypotheses
- Serves to guide wet-bench experimentation
- Potential cost reductions with accelerated
research
9Simulation Techniques
- Bottom-Up
- Predominant in biology (e.g. Enzyme Kinetics)
- Deliberately COMPREHENSIVE (include everything)
- Need lots of experimentally determined parameters
- Very long process
- Very expensive
- Top-Down or Phenomic
- Common in engineering
- Deliberate use of APPROXIMATIONS (reduce
complexity) successful in engineering (e.g.
Finite Element Analysis) - Very fast
- Inexpensive
10Problems with Bottom-Up Approaches
- The correlation between mRNA levels and protein
expression levels are very poor - Protein post-translational modifications cannot
be predicted from the genome sequence - The kinetic parameters used to determine the
rate of protein activity is very difficult to
determine - In vitro determination of kinetic parameters
fail to capture the robustness of biological
systems found in vivo - Even if all parameters are determined, the model
is not versatile or scalable, that is, usually
only applied to one cell-type at one specific
condition (e.g. muscle cells at aerobic condition)
11Top-Down Approach
Metabolic Network
- Attempt to develop a network module, hence
cannot be comprehensive - First look at a well known network and try to
understand the topology through phenotypic
observation - Formulate the interactions within the network
with guessing parameters for protein activity - Check with experiments once parameters are fixed
- Perform perturbation experiments to confirm the
hypothesis - Useful for drug perturbation studies
Proteins
mRNA
Genomic Sequence
A functional module is, by definition, a
discrete entity whose function is separable from
those of other modules. (Hartwell et al, 1999,
Nature)
12Modules in Metabolic Networks
13We chose the glycolytic module
14Our Methodology
Knowing the true system
k
A
B
Systems Approach
15Our Methodology
Consider a simple (ideal) reaction, one mole of
substrate A converted to one mole of product B by
the enzyme E1
E1
A
B
Assume
16Our Methodology
In a typical enzymatic reaction (non ideal),
physical constraints exist that prevent complete
depletion of substrate. Therefore,
where kf is the fitting parameter and 0lt kflt1
(Constraint)
17Our Methodology
For feedback/feedforward mechanisms k2 could be a
function of the upstream/downstream substrate
18Constraints
- Constraints are introduced to increase the
coefficient confidence - Examples
- - lead coefficient
- - rate coefficient
- - frequency coefficient
19Constraints
Lead coefficient constraint, 0lt kflt1
E1
A
B
20Constraints
- Rate coefficient constraint, 0.1ltkblt1.0
21Features of Our Methodology
- Fewer parameters required
- Able to construct complex networks
- Able to produce accurate predictions even under
reduced complexity - Uses and predicts metabolite concentrations,
rather than enzyme activity
22Glycolytic Network and Measured Values for
Erythrocytes (RBC)
23Comparison between Measured and Predicted Values
in RBC
Model of 2,3-biphosphoglycerate metabolism in
the human erythrocyte Biochem. J. 342 (1999),
Mulquiney Kuchel
24Robustness of Model Parameters/- 20 Variation
in Input G6P Values
25Robustness of Model Parameters/- 20 Variation
in All Model Parameters
26Model Application
- Model applied to other cell types and conditions
- These are predictions - No experimental data from
the test cell type is used (unless stated
otherwise) - Model parameters are fixed unless stated
otherwise - Points of accurate prediction represented by
green, otherwise indicated as red
27 Metabolic Phenotypes of Erythrocytes and
Myocytes are Highly Distinct
28Prediction of Myocyte Glycolytic Phenotype
29Discovery of Cell-type Specific Pathways Using
Computational Simulations
30Trypanosoma Brucei (T.brucei)
- is a parasite
- causes the African Sleeping
Disease or Trypanosomiasis - carried by Tsetse fly
31Prediction of T.brucei Glycolytic Phenotype
(Aerobic Condition)
32(No Transcript)
33Prediction of T.brucei Glycolytic Phenotype
under Aerobic Condition
34Comparison of Predicted T.brucei Glycolytic
Phenotype Against a Literature Model
Glycolysis in Bloodstream Form Trypansoma brucei
J. Bio. Chem, 342 (1997), Bakker B. M. et al
35Optimising model for Cell-Specificity, T.brucei
36Prediction of T.brucei Glycolytic Phenotype after
Optimisation, Aerobic Condition
37Prediction of T.brucei Glycolytic Phenotype under
Anaerobic Condition
38T.brucei
Aerobic Condition