1 / 81

Introduction to Systems Biology

Introduction to Systems Biology. 國立台灣大學資訊工程系 博士後研究員 詹鎮熊. What is a system?. Features of a system. Components Interrelated components Boundary Purpose Environment Interfaces Input Output Constrain . Examples of Systems. Life ‘ s Complexity Pyramid. System. Functional modules.

kevina
Télécharger la présentation

Introduction to Systems Biology

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Introduction to Systems Biology 國立台灣大學資訊工程系 博士後研究員 詹鎮熊

  2. What is a system?

  3. Features of a system • Components • Interrelated components • Boundary • Purpose • Environment • Interfaces • Input • Output • Constrain

  4. Examples of Systems

  5. Life‘s Complexity Pyramid System Functional modules Building blocks Components Z. N. Oltvai and A.-L. Barabási, Science 298, 763 (2002)

  6. 生物圈 個體 生態體系 器官系統 社區 組織 族群 細胞 個體 分子 原子

  7. 個體 – 細胞 – 胞器 – 分子Organism – Cell – Organelle – Molecules 人體由上兆個細胞組成 每個細胞具有: 46 條染色體 2 米長的DNA 30 億個鹼基 (A, T, G, C) 2~3萬個基因

  8. The Central Dogma

  9. Bottom-up • From genes to phenotypes • If the genome sequence can be fully sequenced, can we resolve all the secrets hidden in the DNA?

  10. The -omics (-ome) era

  11. Genomics (Genome) • Human Genome Project • Other Genome Projects • Mouse • Fly • Dog • Worm • Bacteria • … • Most recently … Cat

  12. Human genome project • Sequence the whole genome sequence of several individuals • Competition between Celera and NIH • Took over a decade • Draft in 2000, complete in 2003

  13. The next stage: HapMap • HapMap is a catalog of common genetic variants that occur in human beings • It describes: • what these variants are • where they occur in our DNA • and how they are distributed among people within populations and among populations in different parts of the world

  14. Single Nucleotide Polymorphism (SNP)

  15. Personalized genome • James Watson (454 Life Science) • Craig Venter (Venter Institute) • 23andme (backed by Google, focus on social/family relationships) • Navigenics (focus on medical conditions) • Personal Genome Project (PGP, Harvard)

  16. Proteomics (Proteome) • Categorize all proteins (and their relationships) in a temporal-spatial confined system • Identities of these proteins • Quantities • Variants of these proteins • Alternative splicing forms • Post-translational modifications (Phosphorylation, Methylation, Ubiqutination, …)

  17. Proteomics

  18. Mass Spectrometry

  19. Co-localization (interaction) between protein-protein, protein-DNA pairs Fluorescence Resonance Energy Transfer (FRET)

  20. Transcriptome • Identify all transcription factors (TF) functioning in a specific temporal-spatial confined system • Identify all genes regulated by specific TFs • ChIP-chip • TransFac database

  21. a well-established procedure used to investigate interactions between DNA-binding proteins and DNA in vivo Chromatin Immuno-Precipitation (ChIP)

  22. ChIP-chip

  23. Transcription Factor Binding Motifs

  24. Interactome • Categorized all interactions (protein-protein or protein-DNA) within an organism • Yeast Two-Hybrid • Immuno-coprecipitation (co-IP) • Mass Spectrometry • FRET • …

  25. Yeast Two-hybrid

  26. Metabolomics (Metabolome) • “systematic study of the unique chemical fingerprints that specific cellular processes leave behind” • Collection of all metabolites in a biological organism

  27. Analytical methods for metabolomics • Separation • Gas Chromatography (GC) • High performance liquid chromatography (HPLC) • Capillary electrophoresis (CE) • Detection • Mass Spectrometry • Nuclear magnetic resonance (NMR) spectroscopy

  28. Glycomics • Oligosaccharide • Glycoprotein/Proteoglycan • Proteins attached to oligosaccharides • Important to cell recognition • Cancer targeting • Influenza

  29. Model Organisms • Yeast (S. cerevisiae) • Worm (C. elegans) • Fruit Fly (D. melanogaster) • Mouse (M. musculus)

  30. Monitoring the System • High throughput monitoring of gene expression • Microarray • Protein microarray • GC/HPLC/MASS/Tandem MASS • Phenotype/Disease

  31. Microarray

  32. Protein Microarray

  33. Phenotypes • Lethality • Synthetic lethal • Developmental • Morphological • Behavioral • Diseases

  34. Genotypes and Phenotypes genotype + environment → phenotype genotype + environment + random-variation → phenotype

  35. Importance of Computer Models • Interactions in cell are too complex to handle by pen-and-paper • With high-throughput tools, biology shifts from descriptive to predictive • Computers are required to store, processing, assemble, and model all high-throughput data into networks

  36. Types of Computer Models • Chemical Kinetic Model • Defined by concentrations of different molecular species in the cell • Represented with a number of equations • Some processes may be stochastic • Simplified Discrete Circuit • Network with nodes and arrows • Nodes represent quantity or other attributes • Directed edges represent effect of nodes on other nodes

  37. Different Mathematical Formulations • Differential Equations • Linear (ordinary) • Partial • Stochastic • S-Systems • Power-law formulation • Captures complicate dynamics • Parameter estimation is computation intensive

  38. Model details • Selection of genes, gene products, and other molecules to be included • Cellular compartments: nucleus, golgi, or other organelles • Too much details may lead to more noises • Minimal model able to predict system properties (mRNA level, growth rate, etc) is sufficient

  39. Construct Model from Global Patterns • Microarray gene expression patterns: Up-regulated/down-regulated • Gene expression profiles under different conditions: Tumor/normal, cell cycle, drug treatment, … • Methods: • Bayesian Inferences • Machine learning (clustering, classification) • …

  40. Framework for Systems Biology

  41. Tools for Simulation • E-cell • Cell Illustrator • Virtual Cell • Standardizing efforts: • BioJake • SBML (systems biology markup language) • Facilitate the exchange of models

  42. E-Cell System • A software to construct object models equivalent to a cell system or a part of the cell system • Employing Structured Variable-Process model (previously called the Substance-Reactor model, or SRM) • Objects: • Variables, Processes, Systems

  43. Cell Illustrator

  44. Computational Databases • Protein-protein interaction • DIP, BIND, MIPS, MINT, IntAct, POINT, BioGRID • Protein-DNA interaction • TRANSFAC, SCPD • Metabolic pathways • KEGG, EcoCyc, WIT, Reactome • Gene Expression • GEO, ArrayExpress, GNF, NCI60, commercial • Gene Ontology

  45. Network Biology • The entities within a system form intertwined complex networks • Genes • Proteins • Metabolites • External factors…

  46. Gene (Transcription) Regulatory Network

  47. Protein-Protein Interaction Network

  48. Metabolic Pathways

More Related