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Biological Gene and Protein Networks. Xin Zhang Department of Computer Science and Engineering. Biological Networks. Gene regulatory network : two genes are connected if the expression of one gene modulates expression of another one by either activation or inhibition
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Biological Gene and Protein Networks Xin Zhang Department of Computer Science and Engineering
Biological Networks • Gene regulatory network: two genes are connected if the expression of one gene modulates expression of another one by either activation or inhibition • Protein interaction network: proteins that are connected in physical interactions or metabolic and signaling pathways of the cell; • Metabolic network: metabolic products and substrates that participate in one reaction;
Background Knowledge • Cell reproduction, metabolism, and responses to the environment are all controlled by proteins; • Each gene is responsible for constructing a single protein; • Some genes manufacture proteins which control the rate at which other genes manufacture proteins (either promoting or suppressing); • Hence some genesregulate other genes (via the proteins they create) ;
What is Gene Regulatory Network? • Gene regulatory networks (GRNs) are the on-off switches of a cell operating at the gene level. • Two genes are connected if the expression of one gene modulates expression of another one by either activation or inhibition • An example.
Sources: http://www.ornl.gov/sci/techresources/Human_Genome/graphics/slides/images/REGNET.jpg
Simplified Representation of GRN • A gene regulatory network can be represented by a directed graph; • Noderepresents a gene; • Directed edge stands for the modulation (regulation) of one node by another: • e.g. arrow from gene X to gene Y means gene X affects expression of gene Y
Why Study GRN? • Genes are not independent; • They regulate each other and act collectively; • This collective behavior can be observed using microarray; • Some genes control the response of the cell to changes in the environment by regulating other genes; • Potential discovery oftriggering mechanism and treatments for disease;
Modeling Gene Regulatory Networks • Linear Model; • Bayesian Networks; • Differential Equations; • Boolean Network • Originally introduced by Kauffman (1969) • Boolean network is a kind of Graph • G(V, F) – V is a set of nodes ( genes ) as x1 , x2, …, xn F is a list of Boolean functionsf(x1 , x2, …, xn) • Gene expression is quantized to only two level: • 1 (On) and 0 (OFF); • Every function has the result value of each node;
Iteration 1 2 3 4 5 6 x1 0 1 X1 1 1 0 0 0 0 x2 0 1 X2 1 1 1 0 0 0 X3 0 1 1 1 0 0 x3 0 1 110 111 011 001 000 trajectory 1 100 010 101 trajectory 2 Start! Boolean Network Example Nodes (genes) Source From Biosystems 20033443
cdk7 cdk2 CAK Rb Cycin H Cyclin E p21/WAF1 DNA synthesis cdk2 cdk7 cyclin H cyclin E Rb p21/WAF1 Boolean Network as models of gene regulatory networks • Cyclin E and cdk2 work together to phosphorylate the Rb protein and inactivate it • Cdk2/Cyclin E is regulated by two switches: • Positive switch complex called CAK; • Negative switch P21/WAF1; • The CAK complex can be composed of two gene products: • Cyclin H; • Cdk7 • When cyclin H and cdk7 are present, the complex can activate cdk2/cyclin E.
Learning Causal Relationships • High-throughput genetic technologies empowers to study how genes interact with each other; • Learning gene causal relationship is important: • Turning on a gene can be achieved directly or through other genes, which have causal relationship with it.
Causality vs. Correlation Example: rainand falling_barometer • Observed that they are either both true or both false, so they are related. Then write rain = falling_barometer • Neither rain causes falling_barometer nor vice-versa. • Thus if one wanted rain to be true, one could not achieve it by somehow forcing falling_barometer to be true. This would have been possible if falling_barometer caused rain. • We say that the relationship between rain and falling_barometer is correlation, but not cause.
Learning Causal Relationship with Steady State Data • How to infer causal relationship? • In wet-labs, knocking down the possible subsets of a gene; • Use time series gene expression data; • Problem? • Human tissues gene expression data is only available in the steady state observation; • (IC) algorithm by Pearl et al to infer causal information but not in biological domain;
Samples Genes Microarray data • Gene up-regulate, down-regulate;
How we Study Gene Causal Network? • We present an algorithm for learning causal relationship with knowledge of topological ordering information; • Studying conditional dependencies and independencies among variables; • Learning mutual information among genes; • Incorporating topological information;
We applied the learning algorithm in Melanoma Dataset • melanoma -- malignant tumor occurring most commonly in skin;
Knowledge we have • The 10 genes involved in this study chosen from 587 genes from the melanoma data; • Previous studies show that WNT5A has been identified as a gene of interest involved in melanoma; • Controlling the influence of WNT5A in the regulation can reduce the chance of melanoma metastasizing; Partial biological prior knowledge: MMP3 is expected to be the end of the pathway
Pirin causatively influences WNT5A – “In order to maintain the level of WNT5A we need to directly control WNT5A or through pirin”. WNT5A Causal connection between WNT5A and MART-1 “WNT5A directly causes MART-1” Important Information we discovered
Future Work and Possible Project Topic • Build a GUI simulation system for studying gene causal networks; • Learning from multiple data sources; • Learning causality in Motifs; • Learning GRN with feedback loops;
Build a GUI Simulation System • We have done the simulation study and real data application; • Need to develop a GUI interface for systematically studying causal network;
Learning from multiple data sources • We have gene expression data and topological ordering information; • Incorporating some other data sources as prior knowledge for the learning; • Transcription factor binding location data; • …
Learning Causality in Motifs • Network motifs are the simplest units of network architecture. • They be used to assemble a transcriptional regulatory network.
From: Towards a proteome-scale map of the human protein–protein interaction network Rual, Vidal et al. Nature 437, 1173-1178 (2005) Protein-Protein Interactions
Why Study Protein-Protein Interactions • Most proteins perform functions by interacting with other proteins; • Broader view of how they work cooperatively in a cell; • Studies indicate that many diseases are related to subtle molecular events such as protein interactions; • Beneficial for the process of drug design.
Interactions MIPS DIP YPD Intact (EBI) BIND/ Blueprint GRID MINT Reference databases • Prediction server • Predictome (Boston U) • Plex (UTexas) • STRING (EMBL) • Protein complexes • MIPS • YPD
How to Study PPI? • High-throughput data • Two-hybrid systems • Mass Spectrometry • Microarrays • Genomic data • Phylogenetic profile • Rosetta Stone method • Gene neighboring • Gene clustering • Other Data Sources
Using phylogenetic profiles to predict protein function • Basic Idea: Sequence alignment is a good way to infer protein function, when two proteins do the exact same thing in two different organisms. • But can we decide if two proteins function in the same pathway? • Assume that if the two proteins function together they must evolve in a correlated fashion: • every organism that has a homolog of one of the proteins must also have a homolog of the other protein
Phylogenetic Profile • The phylogenetic profile of a protein is a string consisting of 0s and 1s, which represent the absenceor presence of the protein in the corresponding sequenced genome; Protein P1: 0 0 1 0 1 1 0 0 • For a given protein, BLAST against N sequenced genomes. • If protein has a homolog in the organism n, set coordinate n to 1. Otherwise set it to 0.
Species Proteins Phylogenetic Profile
Pellegrini M, Marcotte EM, Thompson MJ, Eisenberg D, Yeates TO, Assigning protein functions by comparative genome analysis: protein phylogenetic profiles. Proc Natl Acad Sci U S A. 96(8):4285-8,. 1999
Rosetta Stone Method Identifies Protein Fusions Monomeric proteins that are found fused in another organism are likely to be functionally related and physically interacting. Marcotte EM, Pellegrini M, Ng HL, Rice DW, Yeates TO, Eisenberg D, Detecting protein function and protein-protein interactions from genome sequences. Science 285(5428):751-3, 1999
What we have done (1) • Logic analysis on phylogenetic profile; • Plus combine phylogenetic profile data with Rosetta Stone method;
What we have done (2) • Combining more data sources to learn disease related protein protein interactions: • Phylogenetic profiles • Other genome sequence data • Gene ontology • OMIM database: provides rich sources regarding human genes and genetic disorders.
Selecting the terms allows you to view an Ontology database which displays a list of proteins associated with these particular words/concepts or their children (Ontology tutorial available also) . Learning from multiple data sources – Gene ontology • Gene ontology (GO) is a controlled vocabulary used to describe the biology of a gene product in any organism. • molecular function of a gene product, • the biological process in which the gene product participates, and • the cellular component where the gene product can be found
Disease related protein protein interactions Mad Cow disease related protein protein interactions
Future work and Possible Project Topics • Learning from multiple data sources; • Disease related protein-protein interactions; • Learning from different species;
References • Pearl, J. Causality : Models, Reasoning, and Inference. 2000 • Akutsu, T., et al. Identification of Genetic Networks from A Small Number of Gene Expression Patterns under the Boolean Network Models. • Lee, et al, Transcriptional Regulatory Networks in Saccharomyces cerevisiae Science 298: 799-804 (2002). • Pellegrini, et al. Assigning protein functions by comparative genome analysis: Protein phylogenetic profiles. (1999) PNAS 96, 4285-4288. • Marcotte, et al. Localizing proteins in the cell from their phylogenetic profiles. (2000) PNAS 97, 12115-12120 • David Eisenberg, Edward M. Marcotte, Ioannis Xenarios & Todd O. Yeates(2000) Nature 405, 823-826