Stroke is a disabling and often fatal disease that affects all ages, but mostly in the elderly. Stroke incidence is expected to rise in the US as its population ages; therefore, its impact on public health and health resources utilization will continue to be significant. The Stroke Progress Review Group and NINDS have identified a need for a network of stroke clinical trials centers in order to prioritize and efficiently design nd conduct translational and exploratory early Phase I/II clinical trials and large Phase III clinical trials to identify and advance stroke treatments. The NINDS Stroke Trials Network is a multidisciplinary stroke research infrastructure that consists of a National Clinical Coordinating Center, a National Data Management Center (NDMC), and 25 Regional Coordinating Centers. The NDMC's role is to establish a collaborative relationship with all parties involved in the Network and provide efficient and standardized central data management that yields high quality data and statistical support in the planning and execution of the stroke trials. To this en, the Data Coordination Unit (DCU) at the Medical University of South Carolina has developed a web-based comprehensive integrated data and project management system, WebDCU, that enables distributed data entry from the participating clinical sites with extensive data quality control and also provides the necessary tools to efficiently manage operational activities for multiple trials, while ensuring compliance with the NINDS Common Data Elements and FDA regulations. Using the WebDCU system, we will develop, implement and maintain a central database that streamlines and maximizes efficiency in the management of data collection, processing, and monitoring of clinical, biomarker and neuroimaging data. In addition, the WebDCU will incorporate trial management information system that will provide full support for all study operational activities in the Stroke Trials Network. The Neuroimaging Core of the NDMC will create neuroimaging repository for the stroke trials. In collaboration with the study Principal Investigator and the other parties of the Stroke Trials Network, the DCU biostatistics faculty members will: contribute to the innovative and efficient protocol development (including study design and case report forms development); statistically monitor study progress; generate reports for the DSMB and the study teams; conduct interim and final analysis and dissemination of study results via presentations and publications; and create public use datasets for data sharing. Finally, as the Statistics and Data Management Center for the Neurological Emergencies Treatment Trials (NETT) Network, the DCU offers unique advantage of seamless collaboration between the NETT and Stroke Trials Networks.

Public Health Relevance

The NINDS Stroke Trials Network will establish the infrastructure to conduct clinical trials to identify treatments to minimize death and disability ater stroke; to prevent stroke recurrence; and to recover functionality after stroke. The National Data Management Center (NDMC) of the Network offers economies of scale that will enable the Network to conduct multiple clinical trials simultaneously and efficiently. This in turn will have n impact on the public health by potentially reducing stroke occurrences and the burden of stroke to the individuals as well as to the society.

Agency
National Institute of Health (NIH)
Institute
National Institute of Neurological Disorders and Stroke (NINDS)
Type
Research Project--Cooperative Agreements (U01)
Project #
3U01NS087748-02S1
Application #
9128156
Study Section
Program Officer
Vivalda, Joanna
Project Start
2015-08-18
Project End
2018-07-31
Budget Start
2015-08-18
Budget End
2016-07-31
Support Year
2
Fiscal Year
2016
Total Cost
$52,325
Indirect Cost
$17,325
Name
Medical University of South Carolina
Department
Public Health & Prev Medicine
Type
Schools of Medicine
DUNS #
183710748
City
Charleston
State
SC
Country
United States
Zip Code
29403
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