Seminar in Bioinformatics Winter 11/12 An Introduction To System Biology Uri Alon Chapters 3-4 Presented by: Nitsan Chrizman.

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Seminar in Bioinformatics Winter 11/12 An Introduction To System Biology Uri Alon Chapters 3-4 Presented by: Nitsan Chrizman

What's on the menu?  Starter  Reminder  Main course  Network motifs Autoregulation The feed forward loop  Desert  Summary

let's remind ourselves...

Transcription  Process of creating a complementary RNA copy of a sequence of DNA  The first step leading to gene expression

Transcription Factor  Protein that binds to specific DNA, thereby controlling the flow of genetic information from DNA to mRNA

Transcription Factor (Cont.)  Environmental signals activate specific transcription factor proteins

Transcription Factor (Cont.)

Transcription Factor - Activators  Increases the rate of mRNA transcription when it binds

Transcription Factor - Repressors  Decreases the rate of mRNA transcription when it binds

Transcription Networks  Describes the regulatory transcription interactions in a cell  Input: Signals GENE X GENE Y

Transcription Networks (Cont.)  Bacterium E. coli

Transcription Networks (Cont.)  Signs on the edges:  + for activation  - for repression  Numbers on the edges: The Input Function

 Rate of production of Y = f(X*)  Hill Function  Describes many real gene input functions Activator: Repressor: X Y

The Input Function (Cont.) Logic Input Function  The gene is either OFF: f(X*)=0 ON:f(X*)= β  The threshold is K  For activator:  For repressor:

The Input Function (Cont.)

Dynamics And Response Time  β - constant rate in which the cell produces Y  Production balanced by:  Degradation ( α deg ) α= α dil + α deg  Dilution ( α dil )

Dynamics And Response Time (Cont.)  Concentration change: dY/dt = β – α *Y  Concentration In steady state: Yst = β / α

Dynamics And Response Time (Cont.)  The signal stops ( β = 0) :  Response Time- reach the halfway between initial and final levels

Dynamics And Response Time (Cont.)  Unstimulated gene becoming provided with signal:  Response Time-

AUTOREGULATION: A network motif

Autoregulation  Goals: Define a way to detect building blocks patterns- network motifs Examine the simplest network motif – autoregulation Show that this motif has useful functions

Detecting Network Motifs  Edges easily lost/ added  Compare real networks to randomized networks  Patters that occur more often in real networks = Network motifs Real network N=4 E=5 Randomized network N=4 E=5

Detecting Network Motifs (Cont.)  N nodes  possible pairs of nodes :[N(N-1)]+N = N 2  edge position is occupied: p= E/ N 2

Autoregulation  Regulation of a gene by its own gene product  How does it look in the graph?  E. coli network:  40 self edges 34 repressors 6 activators

Cont.)) Autoregulation  Probability for self edge: P self = 1/N  Expected number of self edges: rand ~ E*P self ~ E/N  Standard deviation:

Cont.)) Autoregulation  Number of self edges:  Conclusion: Self edges are a network motif  But… why? Random network 40E. coli network

Negative Autoregulation

Negative Autoregulation- Response time  Reminder:  Logic input function:   Steady- state level:  Response time:

Negative Autoregulation- Response time (Cont.)  response time comparison: Negative autoregulation Simple regulation

Negative Autoregulation- Response time (Cont.)

Negative Autoregulation- Robustness  Production rate ( β ) fluctuates over time  Steady- state level comparison: Negative autoregulation Simple regulation

THE FEED FORWARD LOOP (FFL): A network motif

Three nodes subgraphs  13 possible three- nodes patterns  Which ones are motifs?

Cont.)) Three nodes subgraphs  Sub graph G with n nodes and g edges  N 2 possibilities to place an edge  Probability of an edge in a given direction between a given pair of nodes : p = E/ N 2

Cont.)) Three nodes subgraphs  Mean number of appearances:  Mean connectivity: λ = E / N -> p = λ /N 

Cont.)) Three nodes subgraphs  How scales with the network size?   Triangle-shaped patterns (3 nodes and 3 edges): ~ λ 3 N 0 ~ 1/3 λ 3 N 0

Cont.)) Three nodes subgraphs 3LOOPFFL 042E. coli Random net  FFL is the only motif of the 13 three- node patterns

FFL- Structure  E. coli example:

FFL- Structure (Cont.)

 Relative abundance of FLL types in yeast and E. coli:

FFL- Structure (Cont.)  Logic function  AND logic  OR logic  X and Y respond to external stimuli

Coherent Type-1 FFL – AND logic  Sx appear, X rapidly changes to X*  X* binds to gene Z, but cannot activate it  X* binds to gene Y, and begins to transcript it  Z begins to be expressed after T on time, when Y* crosses the activation threshold Kyz

Coherent Type-1 FFL – AND logic  Production rate of Y = β y θ(X*>K xy )  dY/dt = β y θ(X*>K xy ) – α y Y  Production rate of Z = β z θ (Y*>K yz ) θ (X*>K xz )  dZ/dt = β z θ (Y*>K yz ) θ (X*>K xz ) – α z Z

Coherent Type-1 FFL – AND logic (Cont.)  definition :  ON step- Sx moves from absent to saturated state  OFF step- Sx moves from saturated to absent state  Sy is present continuously

Coherent Type-1 FFL – AND logic (Cont.)  On step-

Coherent Type-1 FFL – AND logic (Cont.)  On step-  Y*(t) = Y ST (1-e -αyt )  Y*(T ON ) = Y ST (1-e -αyTON ) = K yz  T ON = 1/α y log[1/(1-K yz /Y st )]

Coherent Type-1 FFL – AND logic (Cont.)

 OFF step-  No delay!

Coherent Type-1 FFL – AND logic (Cont.)  Why might delay be useful?  Persistence detector-  Cost of an error is not symmetric

Coherent Type-1 FFL – AND logic (Cont.)  Arabinose system of E.coli:  T ON = 20 min

Coherent Type-1 FFL – OR logic  Delay for OFF Steps of Sx  Flagella system of E. coli:  T OFF = 1 hour

Incoherent Type-1 FFL

Incoherent Type-1 FFL- Dynamics

Incoherent Type-1 FFL- Dynamics (Cont.)  Dynamic equation of Z:  Y* < K yz dZ/dt = β z – α z Z Zm = β z /α z Z(t) = Zm (1-e -α z t )  Y* > K yz dZ/dt = β’ z – α z Z Zst = β’ z /α z Z(t) = Zst + (Z(T rep ) – Zst) e -α(1-T rep ) Y*(T rep ) = Y ST (1-e -α y T rep ) => T rep = 1/α y ln[1/(1 -K yz /Y st )]

Incoherent Type-1 FFL- Cont.))Dynamics  Repression factor (F)= β Z /β’ Z

Incoherent Type-1 FFL- Response time Z 1/2 = Z st /2 = Zm(1-e - α z t ) T 1/2 =1/ α z log[2F/(2F-1)], (F=Zm/Zst)

Incoherent Type-1 FFL- Cont.)) Response time  Zst<<Zm => F >> 1 => T 1/2  0  When Zst = Zm => F = 1 => T 1/2 = log(2)/ α

Incoherent Type-1 FFL- Cont.)) Response time  OFF step: no acceleration or delay

Incoherent Type-1 FFL- Example (Galactose)

Other FFL types  Why Are Some FFL Types Rare?  I4-FFL Feasible pattern Sy does not affect the steady-state level of Z  No answer for OR logic Sx Y* Z

Evolution of FFLs  Simple V-shaped structure  Function of the third edge  Common form- homologous FFL  Not homologous regulators  FFL rediscovered by evolution

Summary  3 kinds of motifes:  Autoregulation  Coherent type-1 Feed-Forward Loop  Inoherent type-1 Feed-Forward Loop

Questions?