Chapter 3 Data Governance and Stewardship (321)
Chapter definition of DG
The enterprise authority that ensures control and accountability for enterprise data and establishes decision rights, data policies, and data standards Implements and monitors these through a formal stucture of assigned roles, responsibilities and accountabilities
Analysis
The process of translating data into meaningful information
Collection
The processes by which data elements are accumulated
Application
The purpose for the data collection
Information
Understanding relationships or context
Value
Utility or business purpose of specific informaiton
Consistency
Value of data should be reliable and the same across applications
Accurate Data represent what
What was intended or defined by the official source, objective or unbiased data, complance worh known standards
Information governance is a what?
asset
Difference between Data Governance and Information Governance
correlation between the two but also differences
Healthcare revolves around what?
data and information
Data governence
emerged in the 1990s to address data quality in data warehouses
Data stakeholders
executive and senior management, line of business units, service units, and information technology groups
Governance is an enterprise activity that
exercises authority across the entire org and includes an enforcement component
Data Governence
includes policies to ensurer data are consisently defined, structured, accurate, and current across the enterprise
The continuos monitoring of their proper implementation is put in place to
manage organization assets and enhance the propserity and viability of the organization
Data Life Cycle Cycle Management ****
manages data fron beginning to end
Data Goveernance
overarching authority ensuring cohesive operation and intergration of the data management domains
Data Governance
policy related to data content, structure, reliability, validity, interopearibility
policies,requires, standards, accoutabilities, controls and data definitions
rules
Metadata Management
structured information that describes, explains, locates, or helps retrieve, use or manage an information resource
Data stewards****
subject matter stewards, data definition stewards, production stewards, data usage stewards
To ensure relevance may use:
1. A pilot of the data collection instrument 2. A parallel test completing a new instrument and the current one simultaneously
10 characteristics of data quality
1. Accuracy 2. Accessibility 3. Comprehensive 4. Consistency 5.currency 6.definiton 7. Granularity 8.Precision 9.Relevance 10.Timeliness
Core concepts across most definitions of DG
1. Consists of interprise-level authority and accountability for effective data asset management 2. Establishes and monitors data policies, standards, practices, decision rights, and accountabilities for managing, using, improving, and protecting organizational information corporate data 3.Executes policies, standards, and practices through formal structures, roles, and responsibilties
Consistency should be facilitated through the use of
1. Data definitions 2. Extensive training 3. Standardized data collection 4.Inteegeated orninterfaces systems
Terminology anf Classfication Management
1. Ensuring appropriate adoption, maintenace, dissenmination, and accessibility of vocabularies, terminologies, classification systems, and code sets for semantic interoperability and data integrity 2.Developing algorithmic translations, concept representations, and mapping among clinical nomenclatures 3.Providing oversight for clinical and diagnostic coding to ensure compliance with established standards
Integrity May be threatened by
1. Hardware problems 2. Power outages 3. Disk crashes 4. Application software 5. Viruses
Data Quality Management
1. Identifying data quality requirements and establishing data quality metrics 2.Identifying and carrying out data quality projects 3.Profilling data and measuring conformance to established quality metrics and business rules 4.Identifying data quality problems and assessing their root cause 5.Managing data quality issues 6.Implementing data quality and improvement measures 7.providing training for ensuring data quality
Master Data Management
1. Identifying reference data sources (databases, files) 2. Maintaining authoritative value lists and metadata 3. Establishing and organization data sets 4. Defining and maintaining match rules 5. Reconciing system of record
3 Overarching segments in DG Institute Framework
1. Rules and rules of engagement 2.People and organizational bodies 3.Processes
Data Governance
1.Advocating for the data asset 2.Establishing data strategy 3.Establishing data policies 4.Approving data procedures and standards 5.Communicating, monitoring, and enforcing data policy and standards 6.Ensuring regulatory compliance 7.Resolving data issues 8.Approving data management projects 9.Coordinating data management organization
Information intelligence and Big Data
1.Assessing current intelligence, needs resources and use 2.Determining scope, requirements, and architecture for enterprise intelligence 3.Developing and implementing policies and procedures for enterprise information inteligence
Implement framework through a formal structure
1.Assigned roles 2. Responsibilities 3. Accountabilities
Data definition
1.Clear definitons assure that current and future data users know what they mean 2.Each data element should have clear meaning and acceptable values 3. Clear, consise data defintions facilitate accurate data collection 4. Acceptable values should be defined 5. Instrument of collections should include the data definitons and ensure that data integrity characteristics are managed
Rules and Rules of Engagement in DG Institute Framework
1.Creating a mission statement 2.Developing DG goals 3. Establishing DG metrics 4.Determining funding strategies 5.Developing data rules and definition 6.Assigning decision rights 7.Assigning accountabilities 8.Establishing controls
Data Security Management
1.Data security planning and organization 2.Development, implementation, and enforcement of data security policies and procedures 3.Risk management 4.Business continuity 5.Audit trails
People and Organizational Bodies in DG Institute Framework
1.Data stakeholders 2.Data governance council 3.Data stewards 4.Data steward program committee 5.Data governane office
Reasons for DG in Healthcare
1.Ensure data intergrity to support and improve all org clinical and business units 2.Coordinate and improve access to and protect sensitive data 3.Facilitate data intergration and reduce data silos 4.Estabish and maintain a consistent set of business and clinical defintions, clinical, terminology, and metadata 5.Facilitate seamless exchange of patient data for patient care and health info exchange 6.Adhere to compliance and reporting regulations
Data Governance Processes in DG Institute Framework
1.Establishing ules and processes for governing data 2.Establishing rules and process for coordinating the DG program
Metadata Management
1.Manage data dictionaries 2.Establish enterprise metadata strategy 3.Develop policies and procedures or metadata identification, management, and use 4.Establish standards for metadata schemas 5.Monitor policy implementation 6.Establish and implement metadata metrics
Data Architecture Management establishes:
1.Standards, policies, procedures for data collection, storage, and intergration 2. Standards fo IS design 3. Identification and documention of requirements 4.Development and maintencance of data models
Making the Business Case for DG
1.The desired outcome or benefit of implementing or changing a process or activity anabling stakeholder interations 2.DG impact goes beyond data quality 3.Linking DG to improved business processes is the business cae
Data Life Cycle Management establishes:
1.What data are collected 2.Standards for data capture 3.Standards for data storage and rentention 4.Processes for data access and distribution 5.Standards for data archival and disposal
Governance uses a framework
1.policies 2.standards 3.rules 4.decision rights
Quality
A degree of excellene of a thing and/or a requires character or property that belongs to a thing's essential nature
Precision
Acceptable values or value ranges for each data item must be defined
Comprehensiveness
All required data items are included, entire scope of data should be collected and intentional limitations should be documented
Ensuring accuracy involves what?
Appropriate education and training and timely and appropriate communication of data definitions to those who collect data
Granularity
Atrributes and value of data should be defined at the correct level of detail
Currency
Changes should be documented so current and future users know the meaning of the data
Integrity
Data are true to the aource and have not been alteres or deatroyed in an unauthorized manner or by unauthorized users
Currency
Data defenitions chabce or are modified over time
Accessibility
Data items should be easily obtainvale and legal to collect
Currency
Data shoud be up-to-date
Relevance
Data that are meaningful to the performance of the process or application for which they are collected
Precision
Data values should be just large enough to support the application or process
Timeliness
Determined by how the data are being used and their context
Data Governance Institute Framework
Developed by Data Governace Institute and consists os three overarching segments
Content and Record Management
Developing and adopting taxonomic systems
Content and Record Management
Developing and maintaining an information architecture and metadata schema that identify links and relationships among documents and defines the content within a document
Content and Record Management
Develping and implementing policies and procedures for the organization and catergorizing unstructures data (content) in electronic, paper, image, and audio files for its delivery, use, rse, and preservation
Information Governance
Emerged in 2004 as a framework for information privacy and security
Goal of Information Management Plan
Enable enterprise data managment
Data Quality Management
Ensure data are meeting quality characteristics
Governance
Establishment of policies, and continuous monitoring of their proper implementation, by the members of the governing body of an organization.
Data Governance
Focuses on the input: data
Information Governance
Focuses on the output: informtion
Organizational Strategic Plan objective:
IM infrastructure that advances quality patient care, effecient operations,competitive advantage and decision making, and ensures compliance with data regulations and manadates
Information Governance
Includes policies for records and information management for confidentaility, regulartoy compliance, retention, disposal, and ethical use
Data Governence
Includes structured and instructured data
Data are identically maintained during any operation
Integrity
Security principle that protects information from being modified or corrupted
Integrity
Data Architecture Management
Intergrated specification artifacts
Wisdom
Knwoledge insight and action. Understanding principles
Knowledge
Learning, interpretation,pattern, recognition. Informetion meaning
Duty
Legal obligation for specific information
Granularity
Level of detail=
Information Intelligence and Big Data
Management of applications and technologies for gathering, storing, analyzing and providing data for decisions
Master Data Management
Management of key business entity data
Content and Record Management
Management of unstructured data
DG Plan Relationship to Organizational Planning
Organization Strategic Plan > Information Management Plan >Data Governance Program Plan
Information Governance
Policy related to information, use, protection, compliance
Warehousing
Processes and systems used to archive data
Data Security management
Protection measures and safeguards for data
Data
Raw Facts
The way that stakholders (policy makers, data woners , data stewards, and so on) interact with each other
Rules and Rules of Engagement
Asset
Specific container of information
Qualities of Data refers to what
The caharacteristics or attributes that make up data or factual information