Affiliation:
1. Department of Medical Education, Geisinger Commonwealth School of Medicine, Scranton, Pennsylvania, United States
2. Steele Institute for Health Innovation, Geisinger Health, Danville, Pennsylvania, United States
Abstract
Abstract
Objectives Rapid digitization in health care during the 21st century has created significant data and analytics challenges for our providers and health systems. Just as information technology (IT) governance has helped manage exploding demand for IT services and increased efficiencies, analytics governance promises to bring these same benefits to data and analytics efforts. Potential governance models exist in other industries yet have not significantly penetrated health care.
Methods and Results Geisinger has implemented analytics governance throughout our enterprise. We identified and accomplished six core goals toward the establishment of analytics governance, including developing a vision; defining the organizational structure, roles, and responsibilities; managing our data assets; implementing robust data governance; establishing standardized analytics processes; and utilizing metrics to evaluate our progress. Early outcomes include improved tracking and intelligence around data/analytics requests, decreases in duplicative data/analytics efforts, the creation of the Enterprise Analytics Hub for employees to consume data, and initial steps toward self-service analytics.
Conclusion Our experiences support the proposition that analytics governance can provide meaningful benefits to health systems. It is clear from the experiences in other industries that health systems who can best manage their data and analytics will have a significant competitive advantage. Analytics governance will also provide a proper foundation for the use of advanced analytics, machine learning, and visualization tools, and prepare our workforce to utilize these tools for the benefit of patients.
Subject
General Earth and Planetary Sciences,General Environmental Science
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