Summary
The ongoing rapid expansion of health data year-over-year, coupled with escalating regulatory demands for data management, necessitates a collaborative effort. Data Governance Teams are crucial in establishing overarching goals, policies, and procedures within healthcare organizations. This blog explores the essential role of healthcare data governance and outlines key steps organizations should follow to develop a robust strategy for managing their legacy data.
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What is Data Governance in Healthcare and Why It Matters?
Healthcare data governance is a systematic approach to the transparent collection, management, analysis, and sharing of medical data, aligned with ethical and regulatory guidelines. It focuses on implementing best practices for handling clinical records such as patient information, test results, medical images, and prescriptions.
Strong data governance ensures healthcare data is properly managed, safeguarded, and utilized, resulting in better patient outcomes, compliance with regulations, and increased operational efficiency. There are several primary factors, each of which holds vital importance in successfully managing organizational data. These factors include data supervision, data quality, data security, and data privacy.
Healthcare organizations face three major challenges in data governance, which include:
1. Inconsistent and inaccurate patient data
Without proper data governance, patient information can be fragmented across various systems, leading to discrepancies and inaccuracies. For instance, patient records may be scattered across EMRs, lab systems, and billing platforms, lacking a unified view. This fragmentation complicates access to complete patient data, resulting in increased administrative efforts like manual data entry, reconciliation, and searching through different sources.
2. Risks related to regulatory compliance
Healthcare organizations must adhere to strict regulations for data storage and reuse. Poor storage and reuse practices can drive up costs and lead to data misuse or usage without proper consent, creating compliance risks.
The Health Insurance Portability and Accountability Act (HIPAA) of 1996 enforces privacy protections for healthcare data in the U.S., applying to all entities managing health information, including healthcare app developers targeting the U.S. market.
Non-compliance with HIPAA can result in significant fines. In 2024, Plastic Surgery Associates of South Dakota was investigated by the Department of Health and Human Services (HHS) Office for Civil Rights (OCR) over a 2017 ransomware attack and data breach involving the electronic protected health information (ePHI) of 10,229 patients. OCR identified multiple potential violations of the HIPAA Rules and agreed to a $500,000 settlement to resolve the alleged non-compliance issues. This was OCR’s sixth investigation of a ransomware-related data breach to result in a financial penalty for noncompliance with the HIPAA Rules.
3. Data sharing and interoperability
The Health Data Collaborative identifies interoperability as a major hurdle in utilizing health data to improve patient outcomes. Healthcare data exists in multiple formats and originates from diverse sources, such as EHRs, medical devices, health surveys, and clinical trials, often stored in isolated systems.
Effective data governance can set standards for data exchange, formats, and sharing protocols. This allows for smooth integration across different systems and providers. This leads to an interoperable healthcare data environment, improving care coordination, minimizing redundant tests, and ensuring comprehensive patient care.
Key Regulations Shaping Data Governance In Healthcare
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- Health Insurance Portability and Accountability Act (HIPAA): Under the US Federal Law of 1996, protecting patient data privacy is a regulatory compliance requirement that all organizations must adhere to in order to handle sensitive patient data. All mandated precautions and measures must be taken to achieve this.
- Health Information Technology for Economic and Clinical Health (HITECH): This act of 2009 is legislation that was created to stimulate the adoption of electronic health records (EHR) and the supporting technology in the United States is a US federal law that promotes the use of health information technology to improve healthcare quality, safety, and efficiency.
- General Data Protection Regulation (GDPR): This act of 2018 is a pivotal element within the data governance framework, specifically addressing the privacy and protection of personal data within the European Union. It establishes legal requirements for organizations to manage and protect personal information, making GDPR compliance a crucial component of a foolproof data governance strategy.
How To Implement Data Governance In Healthcare?
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- Data cataloging: An enterprise data catalog, enhanced by automated metadata harvesting and cross-platform semantic mapping, serves as a central hub for healthcare organizations to efficiently discover, comprehend, and utilize relevant data.
- Metadata management: Effective management of metadata (clinical, operational, administrative, and custom) enables easier data discovery, usage, and governance. Automation, such as syncing metadata updates and automated profiling, is vital for maintaining data accuracy, ensuring compliance, and supporting governance at scale.
- Data lineage: Tracking the movement of data across healthcare systems is essential for identifying its source, usage, and transformations. Healthcare organizations should seek detailed data lineage mapping that is both actionable and automated, incorporating impact and root cause analysis.
- Access controls and security: Establishing precise access controls and robust security measures is crucial for safeguarding sensitive data and maintaining regulatory compliance. Healthcare data governance solutions should also facilitate risk assessments and align with regulations such as HIPAA.
- Data contracts: These agreements between data producers and consumers define expectations, responsibilities, and quality standards for data use, ensuring alignment across the ecosystem and minimizing the risk of disputes while enhancing data reliability within the organization.
- AI-assisted policy creation: AI simplifies the development of data governance policies by analyzing existing data, recommending suitable policies, and automating updates to ensure they remain relevant.
- Transparency center for data governance: A transparency center offers a comprehensive view of policy coverage across your healthcare data, helping monitor where policies are applied and assess their effectiveness.
- Real-time incident alerts: These alerts notify stakeholders immediately of policy breaches or incidents, allowing swift action to address issues and prevent them from escalating into significant operational or compliance problems.
How Does A Data Governance Team Support Successful Healthcare Data Management ?
Given the vast volume and importance of health data, its management must be a collective effort. Ensuring that clinical, financial, and operational data remains secure, accessible, compliant, and interoperable requires collaboration across the healthcare organization.
A Data Governance Team plays a key role by coordinating this effort. This cross-functional group helps to establish effective strategies, policies, and plans. It includes representatives from compliance, legal, business, and technical teams, with senior leadership (C-suite and senior management) forming a Data Governance Council to set overall direction and policies.
The Role Of Legacy Data Management In A Data Governance Plan
The primary options for legacy data management that can support compliance with the 21st Century Cures Act include:
Convert legacy data to new EHR: While clinical and HIM teams may prefer having all historical data in the new EHR, migrating everything is often expensive, complex, and time-consuming. Most healthcare providers opt to convert only essential clinical data (PAMI+P) from the past 12-24 months into the new EHR system.
Migrate legacy data to an active archive: An active archive offers an open database where discrete data elements can be easily mapped, migrated, and consolidated. This data remains accessible for clinicians via Single Sign-On from the new EHR and by HIM teams through direct login for release of information workflows.
Establishing a legacy data strategy, guided by data governance, is essential to align with the organization’s broader data management objectives.
We’ve outlined some steps to get started.
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- Promote a culture that values lifecycle data management- Legacy data is vital to the healthcare system and should be prioritized like other projects. Share insights and examples from leadership to show how access to longitudinal data improves outcomes.
- Assign a project manager for each legacy software application. While the Governance Team should have cross-functional members from IT, HIM, Legal, and Finance, it’s essential to have a project manager for each legacy system to address barriers and ensure validation.
- Evaluate each legacy data source to determine its archival and storage needs. Frequently accessed data can use active archives like Triyam’s Fovea with comprehensive workflows. Also, consider needs like DICOM viewers, data migration to EHR, and integration with other systems such as population health or research databases.
- Monitor progress by establishing a framework that uses systematic tools to support strategic, operational, and tactical levels within the organization. Implement specialized solutions, either on-premises or cloud-based, to enhance business, IT, and security initiatives.
- Create a reusable application rationalization and data governance playbook. This dynamic guide will help navigate future mergers and acquisitions, addressing legacy systems, outdated hardware, costs, and security concerns.
Promote open communication. Change can be challenging, but proactive updates about data and system transitions will help clinicians and other users adjust and gain confidence in the new processes, potentially leading to greater appreciation for the improvements.
7 Benefits of Effective Data Governance for Healthcare Organizations
Improved decision-making in healthcare: A robust data governance program enhances data quality, leading to better decision-making. The World Economic Forum highlights that accurate data is essential for tasks like predicting disease spread, identifying infection clusters, and tracing contacts.
Cost savings: Data governance optimizes operations by reducing duplication, centralizing data management, and automating workflows, lowering costs. A hospital, for example, can save on managing multiple fragmented systems and redirect resources to patient care.
Compliance assurance: Effective data governance ensures compliance with regulations such as HIPAA, helping organizations avoid fines, prevent breaches, and maintain patient trust.
Innovation and competitive edge: Data governance enables healthcare organizations to leverage AI and automation, driving innovation. AI-powered tools help quickly find information and offer insights from patient data, enabling personalized treatment and improved outcomes.
Ensures high-quality data analysis: Managing multiple databases can result in data fragmentation, leading to inconsistent usage. Data governance provides a framework for intelligent data grouping and ensures high-quality data forms the foundation of all analyses, avoiding duplicate or outdated information.
Better patient outcomes: Properly governed data enables healthcare providers to make timely, informed decisions. This improves diagnosis, reduces errors, and leads to more effective treatment plans, strengthening trust between patients and providers.
Data protection: Without knowing what data exists or where it’s stored, protecting it is nearly impossible. Data governance begins with cataloging and labeling sensitive data, empowering leaders to protect it against cyber threats while ensuring compliance.