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PANDA: pathway and annotation explorer for visualizing and interpreting gene-centric data. PeerJ 2015;3:e970

Date

06/04/2015

Pubmed ID

26038725

Pubmed Central ID

PMC4451017

DOI

10.7717/peerj.970

Scopus ID

2-s2.0-84930614304 (requires institutional sign-in at Scopus site)   3 Citations

Abstract

Objective. Bringing together genomics, transcriptomics, proteomics, and other -omics technologies is an important step towards developing highly personalized medicine. However, instrumentation has advances far beyond expectations and now we are able to generate data faster than it can be interpreted. Materials and Methods. We have developed PANDA (Pathway AND Annotation) Explorer, a visualization tool that integrates gene-level annotation in the context of biological pathways to help interpret complex data from disparate sources. PANDA is a web-based application that displays data in the context of well-studied pathways like KEGG, BioCarta, and PharmGKB. PANDA represents data/annotations as icons in the graph while maintaining the other data elements (i.e., other columns for the table of annotations). Custom pathways from underrepresented diseases can be imported when existing data sources are inadequate. PANDA also allows sharing annotations among collaborators. Results. In our first use case, we show how easy it is to view supplemental data from a manuscript in the context of a user's own data. Another use-case is provided describing how PANDA was leveraged to design a treatment strategy from the somatic variants found in the tumor of a patient with metastatic sarcomatoid renal cell carcinoma. Conclusion. PANDA facilitates the interpretation of gene-centric annotations by visually integrating this information with context of biological pathways. The application can be downloaded or used directly from our website: http://bioinformaticstools.mayo.edu/research/panda-viewer/.

Author List

Hart SN, Moore RM, Zimmermann MT, Oliver GR, Egan JB, Bryce AH, Kocher JA

Author

Michael T. Zimmermann PhD Director, Associate Professor in the Data Science Institute department at Medical College of Wisconsin