This is an application to establish the University of Michigan Proteogenomic Data Analysis Center (UM- PGDAC). The National Cancer Institute (NCI) has made significant investments in new technology platforms for cancer proteomics through the Clinical Proteomic Tumor Analysis Consortium (CPTAC) initiative. Proteomics provides complementary information not apparent from the analysis of genomic and transcriptomic data alone. First, it is critical to identify which of the thousands of novel or previously poorly characterized transcripts or sequence variants discovered using genomic and transcriptomic approaches are expressed at the protein level, prioritizing such variants for subsequent validation studies. Second, integration of quantitative information across multiple data types has emerged as a powerful strategy for reconstructing targetable pathways in cancer and for nomination of potential drug targets. At the same time, sophisticated, integrative analyses across genome and proteome data require advanced bioinformatics tools and stringent quality control measures. UM-PGDAC is uniquely positioned to implement advanced bioinformatics infrastructure to address these challenges and apply it across CPTAC data. It brings together a multi-disciplinary team of scientists who are leading experts in the areas of computational proteomics, transcriptomics, genomics, cancer systems biology and precision oncology. The team is anchored at the Michigan Center for Translational Pathology (MCTP), which has a long history of successful collaborations between the individual investigators. UM-PGDAC builds upon more than a decade of highly relevant work that resulted in the development of a comprehensive infrastructure required for proteogenomics and multi- omics data integration research. UM-PGDAC investigators will work to further improve the speed and accuracy of proteogenomics analyses. The integrated genome/transcriptome/proteome pipelines used by the UM-PDGAC will be enhanced with automated data visualization capabilities and report generation tools for presenting the findings to cancer biologists in a transparent and easy to interpret manner. UM-PGDAC will work collaboratively with other members of the CPTAC to ensure minimal duplication of efforts, efficient exchange of data and bioinformatics methods and tools and interoperability via the use of common file formats and data standards. Building upon its extensive experience in the area of biomarker discovery and precision oncology, further enhanced through participation of UM-PGDAC investigators in the EDRN, SPORE, and other NIH funded initiatives, UM-PGDAC will engage in a second round of prioritization work to select candidate cancer-specific proteins and peptides for subsequent targeted validation using multiplex proteomic assays. Finally, UM-PGDAC will take advantage of a unique opportunity ? in the form of the NCI funded T32 Proteome Informatics Training Program at the University of Michigan ? to create a unique environment for training the new generation of cancer researchers versed in proteomics technology.

Public Health Relevance

This is an application to establish the University of Michigan Proteogenomic Data Analysis Center (UM- PGDAC) in support of the Clinical Proteomic Tumor Analysis Consortium (CPTAC) initiative. UM-PGDAC, working in collaboration with other PGDACs, will develop advanced computational infrastructure for comprehensive and global characterization of genomics (DNA), transcriptomics (RNA), and proteomics (protein) data collected from several cohorts of human tumors using NCI-provided biospecimens. UM- PGDAC will conduct integrative analyses of data across these different data types with a goal to identify potentially cancer-related molecular alterations and to elucidate how distinct changes at the protein level are related to abnormalities in cancer genomes. A second priority of UM-PGDAC is to select cancer-specific protein candidates for subsequent functional studies in order to evaluate their potential for clinical utility.

Agency
National Institute of Health (NIH)
Institute
National Cancer Institute (NCI)
Type
Resource-Related Research Projects--Cooperative Agreements (U24)
Project #
5U24CA210967-02
Application #
9353342
Study Section
Special Emphasis Panel (ZCA1)
Program Officer
Rodriguez, Henry
Project Start
2016-09-15
Project End
2021-08-31
Budget Start
2017-09-01
Budget End
2018-08-31
Support Year
2
Fiscal Year
2017
Total Cost
Indirect Cost
Name
University of Michigan Ann Arbor
Department
Pathology
Type
Schools of Medicine
DUNS #
073133571
City
Ann Arbor
State
MI
Country
United States
Zip Code
48109
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