Title: Gene Network Modeling
1Gene Network Modeling
- Daniel Zak
- Department of Chemical Engineering, UD
- Daniel Baugh Institute, TJU
- zak_at_che.udel.edu
- February 1, 2001
2Outline
- Gene network examples
- Modeling issues and challenges
- Opportunities with DNA microarray data
3Gene network examples
- Ribosomal proteins
- Lysis/lysogeny circuit
- Circadian rhythms
- Yeast cell cycle
- Yeast diauxic shift
- CNS development
- Human fibroblast response to serum
4Ribosomal Protein Negative Feedback
Lewin, 1999, Genes VII, p.304, (http//www.ergito.
com/docs/start.htm)
5l-phage Lysis/Lysogeny circuit
http//esg-www.mit.edu8001/esgbio/pge/pgeother.ht
ml
6Circadian rhythms (Tyson et al., 1999)
7Yeast Cell Cycle (Chen et al., 2000)
8Yeast Cell Cycle (Spellman et al., 1998)
9Yeast Diauxic Shift (DeRisi et al., 1997)
10CNS Development (Wen et al., 1998)
11Fibroblast Serum Response (Iyer et al. 1999)
12Gene network modeling
- Why model?
- Interconnections too numerous and complex for
intuition - Modeling issues
- Scale (40,000 genes in human genome)
- Nonlinearities
- Multistability
- Oscillations
- Delays
- Small numbers of molecules
13Multiple Binding Site Activator (Keller, 1994)
Steady state rate of synthesis rate of decay
14Multiple Binding Site Activator (Keller, 1994)
c 1, e 0.04, Q 0.001, n 0.1, K1 K2 0.5
15Multiple Binding Site Activator (Keller, 1994)
c 1, e 0.04, Q 0.001, n 0.1, K1 K2 0.5
16l-phage Lysis/Lysogeny circuit
- Multistability may play a role in development and
adaptation - Shows mathematically how a single genotype can
give rise to multiple phenotypes
http//esg-www.mit.edu8001/esgbio/pge/pgeother.ht
ml
17Genetic Switch (Cherry and Adler, 2000)
Steady state dX/dt dY/dt 0 Multiple
steady states possible for n gt 1 (cooperativity)
18Genetic Switch (Cherry and Alder, 2000)
time, s
k1 0.2, k2 1, m1 m2 0.05, n 2
19Circadian Rhythms (Tyson et al., 1999)
nm 1, km 0.1, vp 0.5, kp1 10, kp2
0.03 kp3 0.1, Keq 200, Pc 0.1, Jp 0.05
20Circadian Rhythms (Tyson et al., 1999)
21Delays
- Transport (Smolen et al., 2000)
- Active
- Evidence for active transport of mRNA (Femino et
al,, 1998) - Modeled with a discrete delay, X( t - t )
- Can destabilize steady states
- Passive
- Evidence for passive transport of mRNA (Femino et
al., 1998) - Modeled with diffusion equations
- Tends to damp oscillations
- Cellular processes
- Transcription (minutes)
- Translation (hours)
- Post-translational modifications (minutes -
hours) - Modeled with discrete delays or rate laws
22Time delay (Scheper et al., 1999)
rM 1, rP 1 qM 0.21, qP 0.21 n 2, m
3 t 4, k 1
23Time Delay (Scheper et al., 1999)
mRNA vs Protein
Protein vs time
t 0 hr
t 0 hr
t 2.2 hr
t 2.2 hr
t 4 hr
t 4 hr
time, hr
Protein
24Small numbers
- Many intracellular factors are present in small
numbers (McAdams and Arkin, 1999) - mRNAs, transcription factors, signaling
molecules - Conventional formalism for chemical kinetics
breaks down - r ? kXnYm
- rmean kXnYm
- Microscopic fluctuations in rates can have
macroscopic consequences - Combustion
- Gene networks
25Stochastic formulation (Gillespie, 1976)
- Assumptions
- Well-mixed environment (no geometry)
- P(reaction i , t) a rmacro(t)
- Monte Carlo approach
- generate Dt randomly from weighted distribution
- pick reaction i randomly from weighted
distribution - Applications
- Transcription/Translation (Kierzek et al., 2000)
- Lysis/Lysogeny Circuit (Arkin et al., 1998)
- Circadian rhythms (Barkai and Leibler, 2000)
26Protein vs. time (Scheper et al., Tyson et al.)
N 100
N 1000
N 10000
27Protein Period vs N with Fluctuations
Tyson et al.
Scheper et al.
N
N
28Challenges with Stochastic Approach
- Are cells well-mixed?
- Are macroscopic rate laws relevant to stochastic
processes? - Complications from active transport and
localization? - How to include spatial effects?
29DNA Microarrays
- DNA microarrays (RT-PCR, Oligos, cDNA, SAGE)
- relative transcription levels for thousand of
genes in parallel - correlate transcription levels to any phenotypic
state - transcription levels during phenotypic change may
elucidate genetic circuitry - Challenges with microarray data
- normalization
- standards
- assessing quantitative value
- Successful applications in class distinction (eg.
Leukemia class, Golub et al., 1999) - Several approaches for elucidating networks from
temporal microarray data have been developed
30CNS Development (Wen et al., 1998)
31Fibroblast Serum Response (Iyer et al. 1999)
32DNA Microarrays
- Challenges in elucidating networks from temporal
microarray data - Curse of dimensionality
- 1,000 genes, 10 time points ? 104 equations, 106
unknowns!! - Lack of control over inputs
- Causality
- Some approaches
- Cluster genes by expression profile similarity,
then elucidate network between clusters - Boolean genes are on or off (Kauffman, 1994)
- Continuous
- Linear (Dhaeseleer et al., 1999 Someren et al.,
2000) - Linear squashing (Weaver et al., 1999)
- Differential (Chen et al., 1999)
33Continuous Approaches
- Linear Successful prediction, limited inference
(Wessels et al., 2001) - Linear plus squashing
- Differential Requires initial protein levels
34Big Challenges
- Tens of thousands of cell types...
- Tens of thousands of genes...
- Tens of thousands of protein states...
- Nonlinearities...
- Spatial effects...
- Transport effects...
- Stochastic effects
- Limited data (this is changing)
- What would Jake and Elwood do?
35(No Transcript)