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Models of cellular regulation. A genetic switch Lambda lysogeny/lysis Three operator sites controlling two promoters P RM and P R Cro and CI dimers bind to the operator sites, generating two antagonistic feedback loops
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Models of cellular regulation • A genetic switch • Lambda lysogeny/lysis • Three operator sites controlling two promoters PRM and PR • Cro and CI dimers bind to the operator sites, generating two antagonistic feedback loops • Cro dimer represses expression of CI, while CI represses Cro; bind to operators with different affinities and in opposite order • Concentration dependent logic
How do cells obtain signals from noise? • Uneven distribution of biomolecules among cells • Stochastic gene expression has been observed in both eukaryotic and prokaryotic cells • How do cells focus a signal for specific gene expression?
A paradigm shift • Reductionism Integration • System properties are determined by concentration of each component and reaction rates – even with steady state assumptions still a complex issue • Model systems • Metabolism • Signal transduction
Genomics, proteomics, structural genomics, etc. • Looking to reveal networks inherent to cell physiology • Looking at models • Turning stochastic processes into deterministic events
Biological signaling occurs at multiple levels • Intracellular signaling complexity results from: • Interactions between pathways • Compartmentalization • Signal channeling
Compartments • Many signaling components are membrane-bound, and there is a distinct dearth in our understanding of membrane biochemistry. • Still, it has been readily identified that cells use compartments to derive specific microenvironments, which can offer distinct responses to the same signals • Look at compartments as wires or appliances
Reaction channeling • Central tenet of metabolism • Compartments communicate via transporters • Consider transporters as switches (?) controlling the flow of signals down gradients • An intersection between cell biology and biochemistry
Fatty acids are activated and transported into the mitochondria
Transduction by carnitine is the major regulatory point of fatty acid oxidation
Molecular scaffolds • Once considered the function of rRNA • Term used for a new class of signaling proteins that do not have information transfer capability of their own but interact with multiple signaling proteins in a pathway
“The scaffold provides an assembly line along which a series of enzymes process their substrates in a well-defined sequence and with an efficiency and specificity that are orders of magnitude higher than would be possible.”
Approaches to the complexity issue • Development of signaling databases (ie. BIND) • Systematic cataloging of proteins, lipids, sugars, and other signaling molecules together with genomic data of model systems
An example in modeling – metabolic phenomics • “It is now clear that we need to develop creative approaches and technologies to use all of this information [genomics and proteomics] to explore and determine genome function. We must essentially take on the view of a gene that we began with over 50 years ago, wherein the focus was on the functional attributes of a gene within the context of the whole organism.”
Surprise! • Even when multiple knockouts are generated, a surprising number of mutants result in no effect on growth. • Flexibility in metabolic genotype – rerouting of metabolites • Clear example given by PK knockout in E. coli
Yet, some metabolic modeling and engineering successes • Prediction and correlation of defined growth media • Glucose transporter confers heterotrophic growth upon a photosynthetic algae • Check out PLAS
Integrated circuits • How do metabolic pathways communicate? • How do signal transduction pathways illicit appropriate responses? • Etc.
Start with a simple model • Michaelis-Menten • Modeling interactions between adenosine receptor with adenylate cyclase with first order kinetics – Handout
b-adrenergic receptors • Integral membrane protein with 7 TM regions – serpentine receptor • Epinephrine (or adrenaline) binds and causes a conformational change that stimulates a G protein, which in turn stimulates adenylyl cyclase
Modeling this reaction • b-receptor is physically separated and activates the enzyme by “collision coupling” • Modeled as a first order reaction in the presence of non-hydrolyzable GTP analogue • Expressing the results mathematically
Activation of adenylate cyclase by adenosine • In contrast to collision coupling, the adenosine receptor is modeled as permanently coupled to adenylate cyclase • This predicts a distinct rate constant dependence for cyclase activity (cyclase activation) • Adenosine activation of adenylate cyclase is predicted to be independent of receptor concentration (k3 is unaltered), but the maximum catalytic units will decrease upon receptor activation
Braun and Levitzki • Examine figure 3; o-adenosine is a competitive inhibitor that does not affect the catalytic rate regarding adenosine activation of adenylate cyclase • This result is consistent with their model • Additional support comes from independence of adenosine activation from membrane fluidity • Relax, “permanent” means k3>>k1
Use simple models to build complicated ones … • http://occawlonline.pearsoned.com/bookbind/pubbooks/bc_mcampbell_genomics_1/medialib/method/T7list.html • http://discover.nci.nih.gov/kohnk/fig6a.html • http://www.genesis-sim.org/GENESIS/
Signal transduction • http://www.sciencemag.org/cgi/reprint/284/5411/92.pdf • Bhalla and Iyengar • Signaling pathways are wires, since not separated by insulators – signaling molecules are distinct
Other second messengers • Phospholipase C cleaves membrane lipid phosphatidylinositol 4,5 bisphospate into two messengers diacylgllycerol and inositol 1,4,5 trisphosphate (IP3) • IP3 in turn activates release of calcium ions that act as a messenger and activate protein kinase C (numerous isozymes with tissue specific roles, for instance in cell division)
Cyclin-dependent protein kinases control cell cycle • By phosphorylating specific proteins at precise time intervals these kinases orchestrate the metabolic activities of the cell for cell division • Heterodimers – one regulatory subunit (cyclin) and one catalytic subunit (cyclin-dependent protein kinase [CDK])_
Post-translational regulation through phosphorylation and proteolysis
Four mechanisms to control CDK activity • Phosphorylation • Phosphorylate tyrosine prevents ATP binding • Removal of phosphate from tyrosine and phosphorylation of threonine allows substrate binding • Controlled degradation • Feedback loop involving DBRP • Regulated synthesis of CDKs and cyclins • MAPK mediated activation of Jun and Fos • Inhibition of CDK • Specific proteins such as p21 bind and inactivate CDK
Observe variations in the activities of specific CDKs during cell cycle
MAPK kinase cascade • Many signals stimulate MAPK kinase cascade, but the wire is well conserved in biology – Handout • Why does MAPK kinase use three kinases instead of one? • Allows conversion of graded inputs into switch-like outputs
Neuron function and signal transduction • Voltage- and ligand-gated • ion channels
Glutamate receptor http://www.ibcp.fr/GGMM/Nimes/O11.html
Forming memories • http://users.rcn.com/jkimball.ma.ultranet/BiologyPages/L/LTP.html • Mini-review handout • http://www.ncbi.nlm.nih.gov/entrez/query.fcgi?cmd=Retrieve&db=PubMed&list_uids=11807168&dopt=Abstract
Integrating circuits • Circuits exhibit synergy within a cellular context • Bhalla and Iyengar modeling signal transduction in the brain and long-term potentiation (LTP) (Fig 8.15) • http://doqcs.ncbs.res.in/~bhalla/doqcs/template.php?x=home&y=index • PKC activates MAPK, while MAPK helps activate PKC (Figure 8.16)
Why does it take 100 minutes of 5 nM EGF to reach LTP? • 10 min at 5 nM or 100 min at 2 nM EGF is insufficient for LTP (Fig 8.18) • Fig 8.19 result of determining concentration dependence of MAPK activation of PKC and the converse • Three intersection points – MM 8.2 “Cobweb” • A indicates high activity for both enzymes • B indicates low activity for both • T is threshold stimulation, if EGF is sufficient to activate either PKC or MAPK above T – both will reach A (T serves as a switch between A and B)
Turning off LTP • Use a phosphatase to knock MAPK below threshold • AA (arachidonic acid) generated by PLA2 persists, which makes it hard to turn off • Takes awhile to de-phosphatase
Integrating more circuits • Start with MAPK circuit • Add calcium activation, etc. • Result in Figure 8.23 • PKC • MAPK • cAMP • Calcium
A network algorithm • Derived in analogous fashion to protein interaction algorithm • Use RegulonDB as training set • Set up a matrix where the score = 1 if an operon (j) encodes a transcription factor that regulates another operon (I) to detect network motifs • Random model – maintain number of connections but partners are chosen randomly
Applied to several model networks • Biochemistry • Ecology • Neurobiology • Engineering (WWW)