PhenCode: connecting ENCODE data with mutations and phenotype.
Journal
  Magnetic resonance in medicine : official journal of the Society of Magnetic Resonance in Medicine / Society of Magnetic Resonance in Medicine.
Human mutation.
Citation
  Hum Mutat. 28(6):554-62
Publication date
  2007 Jun
Authors
  Giardine B
Riemer C
Hefferon T
Thomas D
Hsu F
Zielenski J
Sang Y
Elnitski L
Cutting G
Trumbower H
Kern A
Kuhn R
Patrinos GP
Hughes J
Higgs D
Chui D
Scriver C
Phommarinh M
Patnaik SK
Blumenfeld O
Gottlieb B
Vihinen M
Väliaho J
Kent J
Miller W
Hardison RC
Investigators
  Ross Hardison
Grant agencies
  National Center for Research Resources
National Institute for Biomedical Imaging and Bioengineering
National Human Genome Research Institute
National Institute of Diabetes and Digestive and Kidney Diseases
Grants
  NHGRI 1P41HG02371
NIDDK DK65806
NHGRI HG002238
MeSH headings
  Databases, Genetic
Mutation
Phenotype
Abstract
  PhenCode (Phenotypes for ENCODE; http://www.bx.psu.edu/phencode) is a collaborative, exploratory project to help understand phenotypes of human mutations in the context of sequence and functional data from genome projects. Currently, it connects human phenotype and clinical data in various locus-specific databases (LSDBs) with data on genome sequences, evolutionary history, and function from the ENCODE project and other resources in the UCSC Genome Browser. Initially, we focused on a few selected LSDBs covering genes encoding alpha- and beta-globins (HBA, HBB), phenylalanine hydroxylase (PAH), blood group antigens (various genes), androgen receptor (AR), cystic fibrosis transmembrane conductance regulator (CFTR), and Bruton's tyrosine kinase (BTK), but we plan to include additional loci of clinical importance, ultimately genomewide. We have also imported variant data and associated OMIM links from Swiss-Prot. Users can find interesting mutations in the UCSC Genome Browser (in a new Locus Variants track) and follow links back to the LSDBs for more detailed information. Alternatively, they can start with queries on mutations or phenotypes at an LSDB and then display the results at the Genome Browser to view complementary information such as functional data (e.g., chromatin modifications and protein binding from the ENCODE consortium), evolutionary constraint, regulatory potential, and/or any other tracks they choose. We present several examples illustrating the power of these connections for exploring phenotypes associated with functional elements, and for identifying genomic data that could help to explain clinical phenotypes.