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From assessment to improvement of elderly care in general practice using decision support to increase adherence to ACOVE quality indicators: study protocol for randomized control trial

From assessment to improvement of elderly care in general practice using decision support to increase adherence to ACOVE quality indicators: study protocol for randomized control trial
From assessment to improvement of elderly care in general practice using decision support to increase adherence to ACOVE quality indicators: study protocol for randomized control trial

BACKGROUND: Previous efforts such as Assessing Care of Vulnerable Elders (ACOVE) provide quality indicators for assessing the care of elderly patients, but thus far little has been done to leverage this knowledge to improve care for these patients. We describe a clinical decision support system to improve general practitioner (GP) adherence to ACOVE quality indicators and a protocol for investigating impact on GPs' adherence to the rules.

DESIGN: We propose two randomized controlled trials among a group of Dutch GP teams on adherence to ACOVE quality indicators. In both trials a clinical decision support system provides un-intrusive feedback appearing as a color-coded, dynamically updated, list of items needing attention. The first trial pertains to real-time automatically verifiable rules. The second trial concerns non-automatically verifiable rules (adherence cannot be established by the clinical decision support system itself, but the GPs report whether they will adhere to the rules). In both trials we will randomize teams of GPs caring for the same patients into two groups, A and B. For the automatically verifiable rules, group A GPs receive support only for a specific inter-related subset of rules, and group B GPs receive support only for the remainder of the rules. For non-automatically verifiable rules, group A GPs receive feedback framed as actions with positive consequences, and group B GPs receive feedback framed as inaction with negative consequences. GPs indicate whether they adhere to non-automatically verifiable rules. In both trials, the main outcome measure is mean adherence, automatically derived or self-reported, to the rules.

DISCUSSION: We relied on active end-user involvement in selecting the rules to support, and on a model for providing feedback displayed as color-coded real-time messages concerning the patient visiting the GP at that time, without interrupting the GP's workflow with pop-ups. While these aspects are believed to increase clinical decision support system acceptance and its impact on adherence to the selected clinical rules, systems with these properties have not yet been evaluated.

TRIAL REGISTRATION: Controlled Trials NTR3566.

Age Factors, Aged, Aging, Decision Support Systems, Clinical, Decision Support Techniques, Feedback, Female, General Practice, Geriatrics, Guideline Adherence, Humans, Male, Netherlands, Practice Guidelines as Topic, Practice Patterns, Physicians', Quality Improvement, Quality Indicators, Health Care, Reminder Systems, Research Design, Treatment Outcome, User-Computer Interface, Vulnerable Populations, Workflow, Journal Article, Multicenter Study, Randomized Controlled Trial, Research Support, Non-U.S. Gov't
1745-6215
81
Eslami, Saeid
5caf6c12-8677-48c9-ae69-1dade0609aa7
Askari, Marjan
8b71b784-964b-44ff-aa1b-38cb7bd97319
Medlock, Stephanie
8238e4a7-2ae9-4924-bce9-dc4369bb8ef3
Arts, Derk L
57cf935a-4152-4a36-9e24-3c4f133885ff
Wyatt, Jeremy C
8361be5a-fca9-4acf-b3d2-7ce04126f468
van Weert, Henk C P M
e99da36a-3736-40fc-badf-036eb8197137
de Rooij, Sophia E
17b2c1a0-1200-4de5-b1b4-ff507954e532
Abu-Hanna, Ameen
c8d1e7fa-82ec-4ac1-88cc-f5c3f8489824
Eslami, Saeid
5caf6c12-8677-48c9-ae69-1dade0609aa7
Askari, Marjan
8b71b784-964b-44ff-aa1b-38cb7bd97319
Medlock, Stephanie
8238e4a7-2ae9-4924-bce9-dc4369bb8ef3
Arts, Derk L
57cf935a-4152-4a36-9e24-3c4f133885ff
Wyatt, Jeremy C
8361be5a-fca9-4acf-b3d2-7ce04126f468
van Weert, Henk C P M
e99da36a-3736-40fc-badf-036eb8197137
de Rooij, Sophia E
17b2c1a0-1200-4de5-b1b4-ff507954e532
Abu-Hanna, Ameen
c8d1e7fa-82ec-4ac1-88cc-f5c3f8489824

Eslami, Saeid, Askari, Marjan, Medlock, Stephanie, Arts, Derk L, Wyatt, Jeremy C, van Weert, Henk C P M, de Rooij, Sophia E and Abu-Hanna, Ameen (2014) From assessment to improvement of elderly care in general practice using decision support to increase adherence to ACOVE quality indicators: study protocol for randomized control trial. Trials, 15, 81. (doi:10.1186/1745-6215-15-81).

Record type: Article

Abstract

BACKGROUND: Previous efforts such as Assessing Care of Vulnerable Elders (ACOVE) provide quality indicators for assessing the care of elderly patients, but thus far little has been done to leverage this knowledge to improve care for these patients. We describe a clinical decision support system to improve general practitioner (GP) adherence to ACOVE quality indicators and a protocol for investigating impact on GPs' adherence to the rules.

DESIGN: We propose two randomized controlled trials among a group of Dutch GP teams on adherence to ACOVE quality indicators. In both trials a clinical decision support system provides un-intrusive feedback appearing as a color-coded, dynamically updated, list of items needing attention. The first trial pertains to real-time automatically verifiable rules. The second trial concerns non-automatically verifiable rules (adherence cannot be established by the clinical decision support system itself, but the GPs report whether they will adhere to the rules). In both trials we will randomize teams of GPs caring for the same patients into two groups, A and B. For the automatically verifiable rules, group A GPs receive support only for a specific inter-related subset of rules, and group B GPs receive support only for the remainder of the rules. For non-automatically verifiable rules, group A GPs receive feedback framed as actions with positive consequences, and group B GPs receive feedback framed as inaction with negative consequences. GPs indicate whether they adhere to non-automatically verifiable rules. In both trials, the main outcome measure is mean adherence, automatically derived or self-reported, to the rules.

DISCUSSION: We relied on active end-user involvement in selecting the rules to support, and on a model for providing feedback displayed as color-coded real-time messages concerning the patient visiting the GP at that time, without interrupting the GP's workflow with pop-ups. While these aspects are believed to increase clinical decision support system acceptance and its impact on adherence to the selected clinical rules, systems with these properties have not yet been evaluated.

TRIAL REGISTRATION: Controlled Trials NTR3566.

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More information

Published date: 19 March 2014
Keywords: Age Factors, Aged, Aging, Decision Support Systems, Clinical, Decision Support Techniques, Feedback, Female, General Practice, Geriatrics, Guideline Adherence, Humans, Male, Netherlands, Practice Guidelines as Topic, Practice Patterns, Physicians', Quality Improvement, Quality Indicators, Health Care, Reminder Systems, Research Design, Treatment Outcome, User-Computer Interface, Vulnerable Populations, Workflow, Journal Article, Multicenter Study, Randomized Controlled Trial, Research Support, Non-U.S. Gov't
Organisations: Wessex Institute

Identifiers

Local EPrints ID: 408800
URI: http://eprints.soton.ac.uk/id/eprint/408800
ISSN: 1745-6215
PURE UUID: 1640e1a7-1c82-44fc-a640-9dc58743bea5
ORCID for Jeremy C Wyatt: ORCID iD orcid.org/0000-0001-7008-1473

Catalogue record

Date deposited: 28 May 2017 04:01
Last modified: 16 Mar 2024 04:23

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Contributors

Author: Saeid Eslami
Author: Marjan Askari
Author: Stephanie Medlock
Author: Derk L Arts
Author: Jeremy C Wyatt ORCID iD
Author: Henk C P M van Weert
Author: Sophia E de Rooij
Author: Ameen Abu-Hanna

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