ACRP 2018 Meeting & Expo

332 - Applying Implementation Science to Improve the Quality of Clinical Trials in Academia

Apr 30, 2018 1:45pm ‐ Apr 30, 2018 2:45pm


Credits: None available.

Members: $25.00
Standard: $75.00

Description

Unlike clinical studies conducted by industry in which companies provide monitors to help verify data quality, studies conducted in academia often lack such oversight. These investigator-initiated studies would benefit from internal monitoring by, for example, a group of research personnel who might monitor each other’s trials. While all research professionals are frequently training on Good Clinical Practice, the tactical instructions on how to achieve positive outcomes - including approaches to proper monitoring - are lacking. Learn about a novel learning module developed and launched to address this need and an applied framework based on applied science to maximize its effectiveness. The speaker will discuss reasons and methods for developing this initiative, as well as implementation strategies, tools utilized to assess successful implementation, and findings.

Learning Objectives:

  • Understand the necessity for quality initiatives in investigator-initiated clinical trials
  • Understand how an implementation science framework can be used to improve the effectiveness of training initiatives
  • Understand metrics used to determine the success of the training initiative and the resulting findings

Speaker(s):

  • Amelia Spinrad, RegulatoryScience MS Candidate, Regulatory Knowledge Support Specialist, University of Southern California
  • Eunjoo Pacifici, PharmD, PhD, Director of the USC International Center for Regulatory Science and Assista, University of Southern California

Credits Available


Applying Implementation Science to Improve the Quality of Clinical Trials in Academia

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