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Biomedical Informatics and Computational Biology (BICB)

   

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  Home > BICB

BICB Research Symposium
June 26, 2009

Leighton Auditorium
Mayo Clinic - Siebens Building
Rochester, Minnesota

 

Agenda

Last updated: June 15, 2009

Download Agenda (PDF file 73kb)

ActivityTimeLocation
Bus Travel (Twin Cities)8:00-10:00amUMTC->ROCH
Welcome Reception10:00-10:10amMayo-Leighton Aud
BICB Program Status10:10-10:20amMayo-Leighton Aud
Symposium Logistics10:20-10:30amMayo-Leighton Aud
Research Team #1 Report:
Machine Learning Methods for Reliable Biomarker Identification
10:30-10:50amMayo-Leighton Aud
Research Team #2 Report:
Identification of Small-Molecule Inhibitors of Selected Proteins in MAP Kinase Pathways
10:50-11:10amMayo-Leighton Aud
Research Team #3 Report:
Multi-modality Data Mining: Application to Brain Development and Schizophrenia
11:10-11:30amMayo-Leighton Aud
Lunch & Displays/Posters11:30am-1:00pmUMR & Mayo
Research/Team Meetings
OTC & Hormel Inst Briefings
1:00-3:00pm
1:00-3:00pm
UMR 3rd Floor
UMR 397
Break/Refreshments3:00-3:10pmMayo-Leighton Aud
Research Team #4 Report:
Computational Models for Global Proteomic Mass Spectrometry Data
3:10-3:30pmMayo-Leighton Aud
Research Team #5 Report:
Next-generation Petascale Computing Tools for Bioinformatics, Biocatalysis and Drug Discovery
3:30-3:50pmMayo-Leighton Aud
Bus Boarding3:50-4:00pmMayo Bldg-2nd St SW
Bus Travel (Twin Cities)4:00-6:00pmROCH->UMTC

Research Team Reports

Reports on the work funded by the 2007-08 Collaborative Seed Grant Program will be given by speakers from each of the BICB seed grant teams. The abstract and list of authors for each project can be found at the following links.

  1. Machine Learning Methods for Reliable Biomarker Identification
  2. Identification of Small-Molecule Inhibitors of Selected Proteins in MAP Kinase Pathways
  3. Multi-modality Data Mining: Application to Brain Development and Schizophrenia
  4. Computational Models for Global Proteomic Mass Spectrometry Data
  5. Next-generation Petascale Computing Tools for Bioinformatics, Biocatalysis and Drug Discovery



Participating Organizations: The University of Minnesota, 
The Mayo Clinic, IBM and the Hormel Institute.

Biomedical Informatics and Computational Biology

 
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