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UCSD NeuronCentered Database

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Designing a database system such that it can be used to ... Integrating heterogeneous data (a short detour) Quantitative morphology. Protein localization ... – PowerPoint PPT presentation

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Title: UCSD NeuronCentered Database


1
UCSD Neuron-Centered Database
  • Amarnath Gupta
  • Bertram Ludäscher
  • Maryann Martone

2
What is Neuron-Centering (AKA The Holy Grail)?
  • Designing a database system such that it can be
    used to represent, store and access
  • Any property, measurements,
  • of Any Nerve Cell or its constituent parts
  • from Any part of the brain
  • acquired through Any experiment
  • at Any spatial resolution
  • located at Any physical site
  • in a way that any biologist and biological
    applications can use or interface with it

3
Designing the database
  • Three problems
  • Modeling the neuronal structure
  • To what level of detail?
  • Modeling correlated information building on the
    neuronal structure
  • Structured as complex graphs
  • Integrating heterogeneous data (a short detour)
  • Quantitative morphology
  • Protein localization
  • Time-series study from physiological experiments
  • Current Schema (and evolving ..)

4
Integration through Mediation
User Query
Mediator
Mediators query language
XML documents
XML View(s)
XML View(s)
XML View(s)
Wrappers also export 1. Schemas Metadata 2.
Description of supported queries...
Wrapper
Wrapper
Database
Image Features
Web Site
and back
5
The Knowledge-Base
  • Situate every data object in its anatomical
    context
  • a programmable knowledge-base that integrates and
    correlates every observed piece of data
  • An illustration
  • New data is registered with the knowledge-base
  • Insertion of new data reconciles the current
    knowledge-base with the new information by
  • Extending the knowledge-base
  • Creating new views with complex rules to encode
    additional domain knowledge

6
Query Processing
  • Query Types
  • Exploratory queries
  • Ad-hoc queries
  • Our current approach
  • Databases and knowledge-bases are integrated
    through a mediator built using a deductive
    database
  • Many queries such as protein localization need
    complex grouping of data across the nodes of the
    knowledge-base
  • We support some traversal queries on graph of
    data and knowledge entities
  • Painted Neurons as maps exploring XML/VML-based
    interfaces (Ilya Zaslavsky, SDSC, UCSD)

7
Next Steps
  • Modeling
  • Maturing the schema
  • More data types
  • Richer knowledge-base constructs (e.g.
    has-part-of)
  • Connecting with atlases as spatial data objects
  • Integration with SDSCs large-scale distributed
    data handling system
  • Querying
  • Capabilities to handle more generic graph queries
  • Better integration of pure querying with other
    functionality such as statistical computation
  • More expressive query interfaces
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