ReDWINE: A Clinical Datamart with Text Analytical Capabilities to Facilitate Rehabilitation Research
Rehabilitation research focuses on determining the components of a treatment intervention, the mechanism of how these components lead to recovery and rehabilitation, and ultimately the optimal intervention strategies to maximize patients' physical, psychologic, and social functioning. Tradition...
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Zusammenfassung: | Rehabilitation research focuses on determining the components of a treatment
intervention, the mechanism of how these components lead to recovery and
rehabilitation, and ultimately the optimal intervention strategies to maximize
patients' physical, psychologic, and social functioning. Traditional randomized
clinical trials that study and establish new interventions face several
challenges, such as high cost and time commitment. Observational studies that
use existing clinical data to observe the effect of an intervention have shown
several advantages over RCTs. Electronic Health Records (EHRs) have become an
increasingly important resource for conducting observational studies. To
support these studies, we developed a clinical research datamart, called
ReDWINE (Rehabilitation Datamart With Informatics iNfrastructure for rEsearch),
that transforms the rehabilitation-related EHR data collected from the UPMC
health care system to the Observational Health Data Sciences and Informatics
(OHDSI) Observational Medical Outcomes Partnership (OMOP) Common Data Model
(CDM) to facilitate rehabilitation research. The standardized EHR data stored
in ReDWINE will further reduce the time and effort required by investigators to
pool, harmonize, clean, and analyze data from multiple sources, leading to more
robust and comprehensive research findings. ReDWINE also includes deployment of
data visualization and data analytics tools to facilitate cohort definition and
clinical data analysis. These include among others the Open Health Natural
Language Processing (OHNLP) toolkit, a high-throughput NLP pipeline, to provide
text analytical capabilities at scale in ReDWINE. Using this comprehensive
representation of patient data in ReDWINE for rehabilitation research will
facilitate real-world evidence for health interventions and outcomes. |
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DOI: | 10.48550/arxiv.2304.05929 |