1 / 46

Programming Languages for Biology

Programming Languages for Biology. Bor-Yuh Evan Chang November 25, 2003 OSQ Group Meeting. Biological Perspective. F. FF. FF. FF. F [http://www.nocturnalvisions.freeservers.com/page6.html] FF [Matsudaira et al. Molecular Cell Biology 4.0 . Freeman, 2000]. Virus Expert.

Télécharger la présentation

Programming Languages for 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. Programming Languages for Biology Bor-Yuh Evan Chang November 25, 2003 OSQ Group Meeting

  2. Biological Perspective F FF FF FF F [http://www.nocturnalvisions.freeservers.com/page6.html] FF [Matsudaira et al. Molecular Cell Biology 4.0. Freeman, 2000]

  3. Virus Expert Cell Receptor Expert Traditional Biological Research • Experiments must focus on a small, specific piece of a system • isolate the variable • feasibility • Have led to an enormous wealth of (detailed) knowledge but in a fragmented form

  4. Systems Biology • Emerging area of biology • study of the relationships and interactions between biological components • many thousand of molecules interact in complex series of reactions to perform some function (called a pathway) • e.g., lactose interacting with a receptor triggers a series of actions to create the enzyme capable of breaking it down into usable form • “pathways” may overlap

  5. Approaching Systems Biology • Need a common language of describing/modeling all components of a system • must be modular, compositional, and provided varying levels of abstraction • Abstraction is an absolute necessity • 1 ribosome (eukaryotic) ¼ 82 proteins + rRNA • 1 protein ¼ hundreds/thousands amino acids • 1 membrane ¼ thousands of molecules (lipids, proteins, carbohydrates)

  6. The Biologist’s View • How do biologists think about or view biological entities (e.g., proteins)? • an entity can interact with certain other types of entities • an entity can be in a certain “state” • interaction causes some action or state change • Analogous to a system of thousands of concurrent computational processes • Walter Fontana, a theoretical biologist, examined -calculus and linear logic for describing biological systems (¼1995).

  7. Example “Textbook” Description http://vcell.ndsu.nodak.edu/~christjo/vcell/animationSite/lacOperon/

  8. Our Role • Finding suitable abstractions for describing computation is our specialty! • Discovering/proving/checking properties of such descriptions (i.e., programs) is also our specialty! • Goal: • Find a mathematical abstraction convenient for describing, reasoning, simulating biological systems • DNA ! string over the alphabet {A,C,G,T} • enables the use of string comparison algorithms • Cellular Pathways ! ?

  9. Outline • Why PL is at all related to Biology? • Previous Abstractions in Biology • Possible Directions of Work • PML • Conclusion

  10. Previous Abstractions • Chemical kinetic models • can derive differential equations • well-studied, with considerable theoretical basis • variables do not directly correspond with biological entities • may become difficult to see how multiple equations relate to each other

  11. Previous Abstractions • Pathway Databases (e.g., EcoCyc, KEGG) • store information in a symbolic form and provide ways to query the database • behavior of biological entities not directly described • Petri nets • directed bipartite multigraph (P,T,E) of places, transitions, and edges; places contain tokens • place = molecular species, token = molecule, transition = reaction 2

  12. Previous Abstractions • Concurrent computational processes • each biological entity is a process that may carry some state and interacts with other processes • each process described by a “program” • prior proposals based on process algebras, such as the -calculus [Regev et al. ’01]

  13. Possible Directions of Work • Biologically-motivated “process calculi” • finding a suitable machine model to serve as a common basis for describing biological systems • Cardelli, Danos, Laneve, … • High-level languages • find suitable high-level languages to make descriptions closer to informal ones • [Chang and Sridharan ’03] • Program analyses, simulation, and other tools • simulation will likely be insufficient • Creating models for obtaining results in biology

  14. Outline • Why PL is at all related to Biology? • Previous Abstractions in Biology • Possible Directions of Work • PML • Conclusion

  15. Modeling in the -calculus • The -calculus is concise and compact, yet powerful [Milner ’90] • take this as the underlying machine model • not looking for another machine model • However, it is far too low-level for direct modeling (ad-hoc structuring)

  16. sites Informal Graphical Diagrams k-1 Protein Enzyme Protein Enzyme k kcat rules Protein Enzyme domains

  17. Enzyme PML: Enzyme bind_substrate parameterized declared in outer scope interactions within the complex

  18. Protein Protein PML: Protein bind_substrate bind_product

  19. PML: A Simple System

  20. Larger Models • Modeled a general description of ER cotranslational-translocation • unclearly or incompletely specified aspects became apparent • e.g., can the signal sequence and translocon bind without SRP? Yes [Herskovits and Bibi ’00] • Extended to model targeting ER membrane with minor modifications

  21. PML: Summary • Domains • set of mutually dependent binding sites • defines at the lowest-level the reactions a biological entity can undergo • Groups • static structure for controlling namespace • may represent a large biological entity • large complex, a system, etc. • [Compartments] • special groups that define boundaries • Semantics defined via a translation to the -calculus

  22. PML: Summary • Benefits • easier to write and understand because of a more direct biological metaphor • block structure for controlling namespace and modularity • Future Work • naming? • proximity of molecules • integrating quantitative information (reaction rates, etc.) • type-checking PML specifications • exceptional / higher-level specifications • graphical and simulation tools

  23. Conclusion • Systems biology needs a mathematical foundation • languages for describing concurrent computation seem like a step in the right direction • Status: all very preliminary • biologically-motivated process calculi • BioSPI, BioAmbients, Brane Calculus, … • high-level languages • PML • analyses and tools (emerging) • creating models for results in biology (emerging)

  24. Conclusion • Abundance of new challenges for PL • language design: biologically-motivated operators • analysis and simulation: dealing with the scale • … • How much biology does one need to learn to begin?

  25. Bonus Slides

  26. Compartments

  27. Compartments • Critical part of biological pathways • prevents interactions that would otherwise occur • Description of the behavior of a molecule should not depend on the compartment • Regev et al. use “private” channels in the -calculus for both complexing and compartmentalization

  28. MolA PML: Simple Compartments Example MolB bind_a bind_a

  29. CytERBridge PML: Simple Compartments Example ER Cytosol MolB MolA

  30. MolA PML: Simple Compartments Example ER Cytosol CytERBridge MolB

  31. Semantics of PML

  32. Semantics of PML • Defined in terms of the -calculus via two translations • from PML to CorePML • “flattens” compartments, removes bridges

  33. Semantics of PML • from CorePML to the -calculus

  34. Syntax of PML

  35. Syntax of PML

  36. Syntax of PML

  37. Example: Cotranslational Translocation

  38. Example: Cotranslational Translocation • Ribosome translates mRNA exposing a signal sequence • Signal sequence attracts SRP stopping translation • SRP receptor (on ER membrane) attracts SRP • Signal sequence interacts with translocon, SRP disassociates resuming translation • Signal peptidase cleaves the signal sequence in the ER lumen, Hsc70 chaperones aid in protein folding

  39. Example: Cotranslational Translocation

  40. Example: Cotranslational Translocation

  41. Example: Cotranslational Translocation

  42. Example: Cotranslational Translocation

  43. Example: Cotranslational Translocation

  44. Example: Cotranslational Translocation

  45. Example: Cotranslational Translocation

More Related