PANTHER version 10: expanded protein families and functions, and analysis tools

@article{Mi2015PANTHERV1,
  title={PANTHER version 10: expanded protein families and functions, and analysis tools},
  author={Huaiyu Mi and Sagar Poudel and Anushya Muruganujan and John T. Casagrande and Paul D. Thomas},
  journal={Nucleic Acids Research},
  year={2015},
  volume={44},
  pages={D336 - D342}
}
PANTHER (Protein Analysis THrough Evolutionary Relationships, http://pantherdb.org) is a widely used online resource for comprehensive protein evolutionary and functional classification, and includes tools for large-scale biological data analysis. Recent development has been focused in three main areas: genome coverage, functional information (‘annotation’) coverage and accuracy, and improved genomic data analysis tools. The latest version of PANTHER, 10.0, includes almost 5000 new protein… 

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