| Literature DB >> 28645319 |
Lysanne Lessard1,2, Wojtek Michalowski3,4, Michael Fung-Kee-Fung5,6, Lori Jones7, Agnes Grudniewicz3.
Abstract
BACKGROUND: The vision of transforming health systems into learning health systems (LHSs) that rapidly and continuously transform knowledge into improved health outcomes at lower cost is generating increased interest in government agencies, health organizations, and health research communities. While existing initiatives demonstrate that different approaches can succeed in making the LHS vision a reality, they are too varied in their goals, focus, and scale to be reproduced without undue effort. Indeed, the structures necessary to effectively design and implement LHSs on a larger scale are lacking. In this paper, we propose the use of architectural frameworks to develop LHSs that adhere to a recognized vision while being adapted to their specific organizational context. Architectural frameworks are high-level descriptions of an organization as a system; they capture the structure of its main components at varied levels, the interrelationships among these components, and the principles that guide their evolution. Because these frameworks support the analysis of LHSs and allow their outcomes to be simulated, they act as pre-implementation decision-support tools that identify potential barriers and enablers of system development. They thus increase the chances of successful LHS deployment. DISCUSSION: We present an architectural framework for LHSs that incorporates five dimensions-goals, scientific, social, technical, and ethical-commonly found in the LHS literature. The proposed architectural framework is comprised of six decision layers that model these dimensions. The performance layer models goals, the scientific layer models the scientific dimension, the organizational layer models the social dimension, the data layer and information technology layer model the technical dimension, and the ethics and security layer models the ethical dimension. We describe the types of decisions that must be made within each layer and identify methods to support decision-making.Entities:
Keywords: Architectural framework; Decision-support tools; Learning health system; Pre-implementation
Mesh:
Year: 2017 PMID: 28645319 PMCID: PMC5481948 DOI: 10.1186/s13012-017-0607-7
Source DB: PubMed Journal: Implement Sci ISSN: 1748-5908 Impact factor: 7.327
Fig. 1Sample of current LHSs initiatives categorized by focus and scale [16, 17, 19–23, 42, 46, 60, 62]
Fig. 2LHS architectural framework
Overview of decision layers in the proposed architectural framework
| Decision layer | Consolidated Reference Model | Role in the LHS architectural framework | Relevant LHS dimension |
|---|---|---|---|
| Performance | Prescribes priority and strategic goals, and measures to track goal achievement. | Prescribes goals taken from IOM Strategic Map | Goals |
| Scientific | N/A | Develops new transferable knowledge | Scientific |
| Organizational | Provides taxonomy with hierarchical description of the Federal Government in terms of sectors, business functions, and services. | Provides organizational taxonomy of a health system and its organizational units as well as its external stakeholders | Social |
| Data | Provides four domain taxonomies relating to mission, enterprise, guidance, and resource data. | Captures data sources for clinical and point-of-care data, and specifies data standards and lifecycle management procedures | Technical |
| Information technology | Categorizes applications and their components at three levels (systems, application components, and interfaces); categorizes information technology infrastructure components (platform, network, facility). | Brings together applications and infrastructure components given their varying importance across LHSs | Technical |
| Ethics and security | Defines security controls and measurements related to, e.g., regulatory conditions, risks, and compliance. | Adds ethical dimension related to privacy and security of patient data in line with existing legislative frameworks | Ethical |
N/A not applicable
Fig. 3Categories of goals and possible measures in the performance layer
Fig. 4Generic learning cycle within the scientific layer
Illustration of the application of the proposed LHS architectural framework
| Layer | Learn From Every Patient initiative [ | PaTH clinical data research network initiative [ |
|---|---|---|
| Performance | Goal: continuous quality improvement in clinical care for children with cerebral palsy. | Goal: informatics-supported infrastructure for cohort identification and data sharing for idiopathic pulmonary fibrosis, atrial fibrillation, and obesity. |
| Scientific | 12-month study of one cohort, within a series of learning projects for continuous quality improvement | Comparative effectiveness |
| Organizational | Program team includes key clinical stakeholders, clinical and information technology teams | Steering Committee includes representatives from each site, three advisory committees (including patients), four working groups (research questions, information technology, methodology, regulations) |
| Data | Source: data fields and questions added to institution’s EHR. | Source: Complete set of longitudinal data about target populations taken from site EHRs. |
| Information technology | Existing EHRs and related infrastructure | Source data loaded onto centrally-maintained data warehouse; queriable through analytics interface |
| Ethics and security | No review board authorization required (all data collected appropriate for standard clinical care) | Not directly discussed; data transformation process includes de-identification prior to loading into warehouse |