Difference between revisions of "Needs Analysis Workshop/Report-out Day2"

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===Phenotype correlation (Todd Vision): Report-out===
 
===Phenotype correlation (Todd Vision): Report-out===
 
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[[Image:Day2-correlation2.whiteboard.JPG|thumb|right|384px|Whiteboard examples]]
 
* matrix showing numerical summaries
 
* matrix showing numerical summaries
 
* find cloud of similar annotations
 
* find cloud of similar annotations
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===Discussion===
 
===Discussion===
 
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[[Image:Day2-dataintegration.whiteboard.JPG|thumb|right|384px|Data interrelationships]]
 
* Other data types or dimensions we haven't looked at
 
* Other data types or dimensions we haven't looked at
 
** Time: e.g., developmental time-series
 
** Time: e.g., developmental time-series
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** availability of sufficient data
 
** availability of sufficient data
 
*Discovery of data holes
 
*Discovery of data holes
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[[Category:Needs Analysis Workshop]]

Latest revision as of 20:05, 18 January 2008

Phylogenies: Report-out (Paula Mabee)

  • ability to choose from the phylogenies in the database
    • even with the possibility of constructing a consensus tree
    • ability to move branches around
    • choose a subset (pruned phylogeny)
  • map character changes onto the phylogeny
    • choose a feature of interest, e.g. by entity
    • issues of visualizing many characters on a branch
  • link to genes
    • e.g. show genes with elevated expression
    • need to be careful about showing statistics - may be misused or of generating hypotheses for user (they should think for themselves)
  • BLAST-like similarity search for how a trait (or trait change) maps across a tree
    • for example, a user has discovered elevated expression of a gene in certain branches of the tree; are there phenotypes that are similar to this distribution?
  • Questions that this might be used for
    • Evolvability
    • Constraints
    • Parallel evolution

Phenotype correlation (Todd Vision): Report-out

Whiteboard examples
  • matrix showing numerical summaries
  • find cloud of similar annotations
    • traits vs traits, traits vs genes, genes vs genes
    • cells would be number of branches on which the two traits change in common (traits vs traits), or number of mutants they have in common (traits vs traits, and traits vs genes), or number of traits in common (genes vs genes)
    • problem of whether to use entity alone, entity and attribute (character), or EQ (character state)
    • problem of opening a can of worms by offering too detailed of an analysis, especially if it involves ancestral state reconstruction using phylogenies
    • e.g., is limblessless associated with elongation
  • tree view
    • highlight terminal taxa or phylogenies for bringing up a matrix for
  • body-plan view
    • highlight different areas and ask for traits affecting all of those
    • highlight different areas and then map the corresponding and correlated traits onto a tree

Semantics: Report-out

  • most queries aren't complex, and often simply want to have a list (e.g., genes, phenotypes)
    • for this, complex semantics may not be needed
    • shallower ontologies, or higher-level (more general) terms may largely suffice
  • searching or analyzing phenotypes by similarity would require more rigorous or deep semantics
  • too fine grained ontologies may be problematic for annotation
  • allelic links:
    • emerging dataset of genetic mutations that are experimentally proven to have caused evolutionary change (D. Stern); experiments that allow strong hypotheses for polarity of gene change
    • directionality of allelic changes may be important
    • may need an evolves-from (develops-from?) relationship
    • restrict some queries to where information (e.g. gene expression) is available for >50% of the taxa
    • Visualizations: phylogenies, body maps, time series, geography

Discussion

Data interrelationships
  • Other data types or dimensions we haven't looked at
    • Time: e.g., developmental time-series
    • Geography
  • Abilities to restrict traits by
    • high-level character modules
    • gene
    • GO
    • location
    • developmental stage
    • availability of sufficient data
  • Discovery of data holes