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Published in: Addiction Science & Clinical Practice 1/2021

Open Access 01-12-2021 | Addiction | Research

What do clinicians want? Understanding frontline addiction treatment clinicians’ preferences and priorities to improve the design of measurement-based care technology

Authors: Justin S. Tauscher, Eliza B. Cohn, Tascha R. Johnson, Kaylie D. Diteman, Richard K. Ries, David C. Atkins, Kevin A. Hallgren

Published in: Addiction Science & Clinical Practice | Issue 1/2021

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Abstract

Background

Measurement-based care (MBC) is the practice of routinely administering standardized measures to support clinical decision-making and monitor treatment progress. Despite evidence of its effectiveness, MBC is rarely adopted in routine substance use disorder (SUD) treatment settings and little is known about the factors that may improve its adoptability in these settings. The current study gathered qualitative data from SUD treatment clinicians about their perceptions of MBC, the clinical outcomes they would most like to monitor in MBC, and suggestions for the design and implementation of MBC systems in their settings.

Methods

Fifteen clinicians from one publicly-funded and two privately-funded outpatient SUD treatment clinics participated in one-on-one research interviews. Interviews focused on clinicians’ perceived benefits, drawbacks, and ideas related to implementing MBC technology into their clinical workflows. Interviews were audio recorded, transcribed, and coded to allow for thematic analysis using a mixed deductive and inductive approach. Clinicians also completed a card sorting task to rate the perceived helpfulness of routinely measuring and monitoring different treatment outcomes.

Results

Clinicians reported several potential benefits of MBC, including improved patient-provider communication, client empowerment, and improved communication between clinicians. Clinicians also expressed potential drawbacks, including concerns about subjectivity in patient self-reports, limits to personalization, increased time burdens, and needing to learn to use new technologies. Clinicians generated several ideas and preferences aimed at minimizing burden of MBC, illustrating clinical changes over time, improving ease of use, and improving personalization. Numerous patient outcomes were identified as “very helpful” to track, including coping skills, social support, and motivation for change.

Conclusions

MBC may be a beneficial tool for improving clinical care in SUD treatment settings. MBC tools may be particularly adoptable if they are compatible with existing workflows, help illustrate gradual and nonlinear progress in SUD treatment, measure outcomes perceived as clinically useful, accommodate multiple use cases and stakeholder groups, and are framed as an additional source of information meant to augment, rather than replace, existing practices and information sources.
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Metadata
Title
What do clinicians want? Understanding frontline addiction treatment clinicians’ preferences and priorities to improve the design of measurement-based care technology
Authors
Justin S. Tauscher
Eliza B. Cohn
Tascha R. Johnson
Kaylie D. Diteman
Richard K. Ries
David C. Atkins
Kevin A. Hallgren
Publication date
01-12-2021
Publisher
BioMed Central
Published in
Addiction Science & Clinical Practice / Issue 1/2021
Electronic ISSN: 1940-0640
DOI
https://doi.org/10.1186/s13722-021-00247-5

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