Toward a Learning Health Care System: A Systematic Review and Evidence-Based Conceptual Framework for Implementation of Clinical Analytics in a Digital Hospital

Author:

Lim Han Chang12,Austin Jodie A.12,van der Vegt Anton H.3,Rahimi Amir Kamel14,Canfell Oliver J.145,Mifsud Jayden1,Pole Jason D.1,Barras Michael A.67,Hodgson Tobias5,Shrapnel Sally18,Sullivan Clair M.19

Affiliation:

1. Centre for Health Services Research, Faculty of Medicine, The University of Queensland, Herston, Brisbane, Australia

2. Department of Health, eHealth Queensland, Queensland Government, Brisbane, Australia

3. Information Engineering Lab, School of Information Technology and Electrical Engineering, The University of Queensland, St Lucia, Brisbane, Australia

4. Digital Health Cooperative Research Centre, Australian Government, Sydney, New South Wales, Australia

5. UQ Business School, Faculty of Business, Economics and Law, The University of Queensland, St. Lucia, Brisbane, Australia

6. School of Pharmacy, Faculty of Health and Behavioural Sciences, The University of Queensland, PACE Precinct, Woolloongabba, Brisbane, Australia

7. Pharmacy Department, Princess Alexandra Hospital, Woolloongabba, Brisbane, Australia

8. School of Mathematics and Physics, Faculty of Science, The University of Queensland, St Lucia, Brisbane, Australia

9. Department of Health, Metro North Hospital and Health Service, Queensland Government, Herston QLD, Australia

Abstract

Abstract Objective A learning health care system (LHS) uses routinely collected data to continuously monitor and improve health care outcomes. Little is reported on the challenges and methods used to implement the analytics underpinning an LHS. Our aim was to systematically review the literature for reports of real-time clinical analytics implementation in digital hospitals and to use these findings to synthesize a conceptual framework for LHS implementation. Methods Embase, PubMed, and Web of Science databases were searched for clinical analytics derived from electronic health records in adult inpatient and emergency department settings between 2015 and 2021. Evidence was coded from the final study selection that related to (1) dashboard implementation challenges, (2) methods to overcome implementation challenges, and (3) dashboard assessment and impact. The evidences obtained, together with evidence extracted from relevant prior reviews, were mapped to an existing digital health transformation model to derive a conceptual framework for LHS analytics implementation. Results A total of 238 candidate articles were reviewed and 14 met inclusion criteria. From the selected studies, we extracted 37 implementation challenges and 64 methods employed to overcome such challenges. We identified common approaches for evaluating the implementation of clinical dashboards. Six studies assessed clinical process outcomes and only four studies evaluated patient health outcomes. A conceptual framework for implementing the analytics of an LHS was developed. Conclusion Health care organizations face diverse challenges when trying to implement real-time data analytics. These challenges have shifted over the past decade. While prior reviews identified fundamental information problems, such as data size and complexity, our review uncovered more postpilot challenges, such as supporting diverse users, workflows, and user-interface screens. Our review identified practical methods to overcome these challenges which have been incorporated into a conceptual framework. It is hoped this framework will support health care organizations deploying near-real-time clinical dashboards and progress toward an LHS.

Funder

Digital Health CRC

Publisher

Georg Thieme Verlag KG

Subject

Health Information Management,Computer Science Applications,Health Informatics

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