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The TIR domain Family of Immediate-Early Host Defence Proteins TIR Domain Ig Domain Death Domain Leucine Rich Repeat Extracellular sI L1R II sST2 sI L1R I PlantPathogenResistanceProteins B 15R IL1R II N -protein R RP1 ST2 IL1R I A cP IL18A cP IL18R IL1R rP Tlr1 Tlr2 Tlr3 Tlr4 Tlr5 Tlr6 Tlr7 Tlr8 Tlr9 Tlr10 Tolls 1-8 A 46R A 52R MyD 88 MyD 88 Viral Gene Products Human Cytokine Receptors Cytoplasmic Human Tolls Dros ophila L6 R RP5 Schematic of TIR signalling Cells as computational devices Temperature Nutrients Chemical Stress Mechanical Hormones Secretion Division locomotion Differentiation Apoptosis • Contains 1 copy of the genome • Contains ca 1010- 1011 protein molecules in a volume of ca 1 picolitre • Contains ca 104 different proteins present at 104 - 107 copies/cell • The proteins plus small molecules and ions form a spatially distributed, dissipative computational network capable of robust self regulation within a narrow range of physical environments. • The network is non-linear- binary (?) • The network is embodied as a semi-solid state device - most reactions do not occur in free solution The Computational Network is Built from Noisy Components Nuclear Concentration of NFkB Measured by Confocal Imaging of Anti-relA Labelled Fibroblasts Protein concentration in cells is controlled in part by rate of gene transcription transcription is stochastic The concentration of any given protein must therefore vary between different cells in clonal population Since most if not all proteins participate in the control network, this will in turn affect control of gene expression differentially in each individual cell Theoretical Analysis suggests that the Segment Polarity network in Flies is Binary Random Graph Representation of Signal Transduction Network Nodes = Reactants Edges = Reactions Implementation 1. 2. 3. Chemical kinetics -ODEs Cellular Automata Software agents Basic considerations 1. 2. 3. 4. 5. Edges/nodes Edge/node distribution Rules Bit depth Word length Signal Transduction Pathways in a Network ? Input Promoter Input Perturbation of Internal State of Network Can Mimic Agonist Example Mechanisms 1. Titre out inhibitor 2. Increase concentration above Kd for activator brightness TK-RL Positive pools are detectable by both screen strategies 0.9 0.8 0.7 Dual-Luciferase assay 0.6 0.5 0.4 0.3 0.2 0.1 0 0 0.2 0.4 0.6 0.8 IL8-luc positive pool negative pool 145 145 125 125 105 105 85 85 65 65 45 45 25 25 5 EGFP assay 5 50 550 1050 1550 area 2050 50 550 1050 15 50 area 2050 Summary of clones isolated from 3% of library Clone ID Gene name Orientation Clone ID Proposed mech. of action 2E3 N10/NUR77 Sense Inhibition of survival signals 3E1 RelA Sense Induction of NFkB responsive genes 4D8 hTrb-1(hTrb-2, hTrb-3) Sense (3’ UTR) Inhibition of AP-1 activation 2B2 2G1 19-6.2 23-5.8 IFN Sense Induces TRAIL expression which activates Both apoptosis and NFkB 19-3.7 Prothymosin 4 Antisense (full) Thymosin beta is an antiinflammatory protein 83-3.8 Ferritin Sense Redox effect on NFkB 91-2.8 Mitochondrial NADPH Oxidase Antisense Redox 53-1.7 Homer1B Sense 3’ UTR Scaffold 126 Genomic clone + est Adaptation of Mammalian Expression Screen to High throughput Robotic Platform cDNA Ligate Expression Vector MEGAPIX 96 pin high speed picking head Transform E. Coli Library of 3x 10 6 independant transformants Library in trays ca 3,000 colonies per tray Q-BOT working copy Assay by mammalian transfection Cherry pick source wells for positive pools from master library Construct 20,833 pools of 48 from one copy and make Minpreps in bar coded 96 well plates Identify source well by rows and columns Backup copy 2 copies of gridded library 106 clones each in bar coded 384 well plates 1 clone per well Store at -80 VERIFY ACTIVITY SEQUENCE INSERT Output from High Throughput Screen showing Candidate Positive Pools - each Pool from 48 Library Wells 1. 2. 3. 4. 5. 1/1000 clones regulate pIL8 pIL8 has 4 TF sites 1/4000 per site 3,000,000 clones in library Each mRNA is represented by ca 10 clones 6. 200 unique cDNAs per site 7. The signal transduction network is highly overlapping. 8. Few if any components will be unique to a gene , class of genes or agonist 9. Specifity is likely to be a higher order property - ie “words” rather than letters. 10. What is the word length ? Conclusions/Speculations 1. Signal Transduction networks are likely binary 2. Data suggest ca 200 elements of network “control” a given transcription factor in the IL-8 promoter 3. Since each element is in turn coded by a gene ---4. Many elements must be used generically 5. The notion that there are dedicated/specfic pathways and pathway components cannot be correct 6. Programs that are specific may use generic elements by combining them into longer “words”.