Clinical Needs Assessment of a Machine Learning–Based Asthma Management Tool: User-Centered Design Approach

BackgroundPersonalized asthma management depends on a clinician’s ability to efficiently review patient’s data and make timely clinical decisions. Unfortunately, efficient and effective review of these data is impeded by the varied format, location, and workflow of data acqui...

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Main Authors: Lu Zheng, Joshua W Ohde, Shauna M Overgaard, Tracey A Brereton, Kristelle Jose, Chung-Il Wi, Kevin J Peterson, Young J Juhn
Format: Article
Language:English
Published: JMIR Publications 2024-01-01
Series:JMIR Formative Research
Online Access:https://formative.jmir.org/2024/1/e45391
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author Lu Zheng
Joshua W Ohde
Shauna M Overgaard
Tracey A Brereton
Kristelle Jose
Chung-Il Wi
Kevin J Peterson
Young J Juhn
author_facet Lu Zheng
Joshua W Ohde
Shauna M Overgaard
Tracey A Brereton
Kristelle Jose
Chung-Il Wi
Kevin J Peterson
Young J Juhn
author_sort Lu Zheng
collection DOAJ
description BackgroundPersonalized asthma management depends on a clinician’s ability to efficiently review patient’s data and make timely clinical decisions. Unfortunately, efficient and effective review of these data is impeded by the varied format, location, and workflow of data acquisition, storage, and processing in the electronic health record. While machine learning (ML) and clinical decision support tools are well-positioned as potential solutions, the translation of such frameworks requires that barriers to implementation be addressed in the formative research stages. ObjectiveWe aimed to use a structured user-centered design approach (double-diamond design framework) to (1) qualitatively explore clinicians’ experience with the current asthma management system, (2) identify user requirements to improve algorithm explainability and Asthma Guidance and Prediction System prototype, and (3) identify potential barriers to ML-based clinical decision support system use. MethodsAt the “discovery” phase, we first shadowed to understand the practice context. Then, semistructured interviews were conducted digitally with 14 clinicians who encountered pediatric asthma patients at 2 outpatient facilities. Participants were asked about their current difficulties in gathering information for patients with pediatric asthma, their expectations of ideal workflows and tools, and suggestions on user-centered interfaces and features. At the “define” phase, a synthesis analysis was conducted to converge key results from interviewees’ insights into themes, eventually forming critical “how might we” research questions to guide model development and implementation. ResultsWe identified user requirements and potential barriers associated with three overarching themes: (1) usability and workflow aspects of the ML system, (2) user expectations and algorithm explainability, and (3) barriers to implementation in context. Even though the responsibilities and workflows vary among different roles, the core asthma-related information and functions they requested were highly cohesive, which allows for a shared information view of the tool. Clinicians hope to perceive the usability of the model with the ability to note patients’ high risks and take proactive actions to manage asthma efficiently and effectively. For optimal ML algorithm explainability, requirements included documentation to support the validity of algorithm development and output logic, and a request for increased transparency to build trust and validate how the algorithm arrived at the decision. Acceptability, adoption, and sustainability of the asthma management tool are implementation outcomes that are reliant on the proper design and training as suggested by participants. ConclusionsAs part of our comprehensive informatics-based process centered on clinical usability, we approach the problem using a theoretical framework grounded in user experience research leveraging semistructured interviews. Our focus on meeting the needs of the practice with ML technology is emphasized by a user-centered approach to clinician engagement through upstream technology design.
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spelling doaj.art-0b692933a2294f638a63454947037afc2024-01-15T13:45:32ZengJMIR PublicationsJMIR Formative Research2561-326X2024-01-018e4539110.2196/45391Clinical Needs Assessment of a Machine Learning–Based Asthma Management Tool: User-Centered Design ApproachLu Zhenghttps://orcid.org/0000-0002-3131-1616Joshua W Ohdehttps://orcid.org/0000-0002-4211-4490Shauna M Overgaardhttps://orcid.org/0000-0002-4494-0008Tracey A Breretonhttps://orcid.org/0000-0003-4831-6293Kristelle Josehttps://orcid.org/0009-0008-9697-2432Chung-Il Wihttps://orcid.org/0000-0001-8938-2997Kevin J Petersonhttps://orcid.org/0000-0002-9758-4609Young J Juhnhttps://orcid.org/0000-0003-2112-4240 BackgroundPersonalized asthma management depends on a clinician’s ability to efficiently review patient’s data and make timely clinical decisions. Unfortunately, efficient and effective review of these data is impeded by the varied format, location, and workflow of data acquisition, storage, and processing in the electronic health record. While machine learning (ML) and clinical decision support tools are well-positioned as potential solutions, the translation of such frameworks requires that barriers to implementation be addressed in the formative research stages. ObjectiveWe aimed to use a structured user-centered design approach (double-diamond design framework) to (1) qualitatively explore clinicians’ experience with the current asthma management system, (2) identify user requirements to improve algorithm explainability and Asthma Guidance and Prediction System prototype, and (3) identify potential barriers to ML-based clinical decision support system use. MethodsAt the “discovery” phase, we first shadowed to understand the practice context. Then, semistructured interviews were conducted digitally with 14 clinicians who encountered pediatric asthma patients at 2 outpatient facilities. Participants were asked about their current difficulties in gathering information for patients with pediatric asthma, their expectations of ideal workflows and tools, and suggestions on user-centered interfaces and features. At the “define” phase, a synthesis analysis was conducted to converge key results from interviewees’ insights into themes, eventually forming critical “how might we” research questions to guide model development and implementation. ResultsWe identified user requirements and potential barriers associated with three overarching themes: (1) usability and workflow aspects of the ML system, (2) user expectations and algorithm explainability, and (3) barriers to implementation in context. Even though the responsibilities and workflows vary among different roles, the core asthma-related information and functions they requested were highly cohesive, which allows for a shared information view of the tool. Clinicians hope to perceive the usability of the model with the ability to note patients’ high risks and take proactive actions to manage asthma efficiently and effectively. For optimal ML algorithm explainability, requirements included documentation to support the validity of algorithm development and output logic, and a request for increased transparency to build trust and validate how the algorithm arrived at the decision. Acceptability, adoption, and sustainability of the asthma management tool are implementation outcomes that are reliant on the proper design and training as suggested by participants. ConclusionsAs part of our comprehensive informatics-based process centered on clinical usability, we approach the problem using a theoretical framework grounded in user experience research leveraging semistructured interviews. Our focus on meeting the needs of the practice with ML technology is emphasized by a user-centered approach to clinician engagement through upstream technology design.https://formative.jmir.org/2024/1/e45391
spellingShingle Lu Zheng
Joshua W Ohde
Shauna M Overgaard
Tracey A Brereton
Kristelle Jose
Chung-Il Wi
Kevin J Peterson
Young J Juhn
Clinical Needs Assessment of a Machine Learning–Based Asthma Management Tool: User-Centered Design Approach
JMIR Formative Research
title Clinical Needs Assessment of a Machine Learning–Based Asthma Management Tool: User-Centered Design Approach
title_full Clinical Needs Assessment of a Machine Learning–Based Asthma Management Tool: User-Centered Design Approach
title_fullStr Clinical Needs Assessment of a Machine Learning–Based Asthma Management Tool: User-Centered Design Approach
title_full_unstemmed Clinical Needs Assessment of a Machine Learning–Based Asthma Management Tool: User-Centered Design Approach
title_short Clinical Needs Assessment of a Machine Learning–Based Asthma Management Tool: User-Centered Design Approach
title_sort clinical needs assessment of a machine learning based asthma management tool user centered design approach
url https://formative.jmir.org/2024/1/e45391
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