Difference between revisions of "Reports"

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=== ONC & PAC Semi-Annual Reports ===
 
=== ONC & PAC Semi-Annual Reports ===
 +
[[media:SHARP_Annual_Report_2011_Final.pdf|2011 Annual Progress Report (01/01/2011-12/31/2011)]]
 +
 
[[media:SHARP_Progress_Report_2011.pdf|2011 Semi-Annual Progress Report (01/01/2011-06/30/2011)]]
 
[[media:SHARP_Progress_Report_2011.pdf|2011 Semi-Annual Progress Report (01/01/2011-06/30/2011)]]
  

Revision as of 15:41, 12 January 2012

ONC & PAC Semi-Annual Reports

2011 Annual Progress Report (01/01/2011-12/31/2011)

2011 Semi-Annual Progress Report (01/01/2011-06/30/2011)

Dr. Friedman Site Visit Presentation (09/03/2010)

2010 Annual Progress Report (04/01/2010-12/31/2010)

ARRA Reports

2011 QTR 2
2011 QTR 1
2010 QTR 4
2010 QTR 3
2010 QTR 2
2010 QTR 1

Publications & Presentations

  1. C. Chute; J. Pathak; G. Savova; K. Bailey; M. Schor; L. Hart; C. Beebe; S. Huff. The SHARPn Project on Secondary Use of Electronic Medical Record Data: Progress,Plans, and Possibilities.AMIA Annual Symposium 2011; AMIA-0910-A2011.
  2. C. Tao; C. Parker; T. Oniki; J. Pathak; S. Huff; C. Chute. An OWL Meta-Ontology for Representing the Clinical Element Model. AMIA Annual Symposium 2011; AMIA-0482-A2011.
  3. Chute CG et al. Strategic Health IT Advanced Research Project (SHARP) Area 4: Secondary Use of EH R Data. CTSA‐VA Informatics Symposium on Enhancing Clinical Phenotyping, Bethesda, MD. HR
  4. Chute CG. ONC Announces SHARP Awards: A Look at Secondary Use of EData Research. April 2010 issue of HIMSS Clinical Informatics Insights. #
  5. Tao C et al. Time‐Oriented Question Answering from Clinical Narratives Using Semantic‐Web Techniques. International Semantic Web Confere2010, Shanghai, China
  6. MITRE System for Clinical Assertion Status Classification, JAMIA 2011;Published Online First: 22 April 2011 doi:10.1136/amiajnl-­‐2011-­‐ 000164
  7. Wei W et al. A High Throughput Semantic Concept Frequency Based Approach for Patient Identification: A Case Study using Type 2 DiabMellitus Clinical Notes. 2010 AMIA Annual Symposium, pp. 857‐861.
  8. Welch SR et al. Cohort Amplification: An Associative Classification ework for Identification of Disease Cohorts in the Electronic Health d. 2010 AMIA Annual Symposium, pp. 862‐866.

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