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Adoption of Machine Learning Systems for Medical Diagnostics in Clinics: Qualitative Interview Study

BACKGROUND: Recently, machine learning (ML) has been transforming our daily lives by enabling intelligent voice assistants, personalized support for purchase decisions, and efficient credit card fraud detection. In addition to its everyday applications, ML holds the potential to improve medicine as...

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Autores principales: Pumplun, Luisa, Fecho, Mariska, Wahl, Nihal, Peters, Felix, Buxmann, Peter
Formato: Online Artículo Texto
Lenguaje:English
Publicado: JMIR Publications 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8556641/
https://www.ncbi.nlm.nih.gov/pubmed/34652275
http://dx.doi.org/10.2196/29301
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author Pumplun, Luisa
Fecho, Mariska
Wahl, Nihal
Peters, Felix
Buxmann, Peter
author_facet Pumplun, Luisa
Fecho, Mariska
Wahl, Nihal
Peters, Felix
Buxmann, Peter
author_sort Pumplun, Luisa
collection PubMed
description BACKGROUND: Recently, machine learning (ML) has been transforming our daily lives by enabling intelligent voice assistants, personalized support for purchase decisions, and efficient credit card fraud detection. In addition to its everyday applications, ML holds the potential to improve medicine as well, especially with regard to diagnostics in clinics. In a world characterized by population growth, demographic change, and the global COVID-19 pandemic, ML systems offer the opportunity to make diagnostics more effective and efficient, leading to a high interest of clinics in such systems. However, despite the high potential of ML, only a few ML systems have been deployed in clinics yet, as their adoption process differs significantly from the integration of prior health information technologies given the specific characteristics of ML. OBJECTIVE: This study aims to explore the factors that influence the adoption process of ML systems for medical diagnostics in clinics to foster the adoption of these systems in clinics. Furthermore, this study provides insight into how these factors can be used to determine the ML maturity score of clinics, which can be applied by practitioners to measure the clinic status quo in the adoption process of ML systems. METHODS: To gain more insight into the adoption process of ML systems for medical diagnostics in clinics, we conducted a qualitative study by interviewing 22 selected medical experts from clinics and their suppliers with profound knowledge in the field of ML. We used a semistructured interview guideline, asked open-ended questions, and transcribed the interviews verbatim. To analyze the transcripts, we first used a content analysis approach based on the health care–specific framework of nonadoption, abandonment, scale-up, spread, and sustainability. Then, we drew on the results of the content analysis to create a maturity model for ML adoption in clinics according to an established development process. RESULTS: With the help of the interviews, we were able to identify 13 ML-specific factors that influence the adoption process of ML systems in clinics. We categorized these factors according to 7 domains that form a holistic ML adoption framework for clinics. In addition, we created an applicable maturity model that could help practitioners assess their current state in the ML adoption process. CONCLUSIONS: Many clinics still face major problems in adopting ML systems for medical diagnostics; thus, they do not benefit from the potential of these systems. Therefore, both the ML adoption framework and the maturity model for ML systems in clinics can not only guide future research that seeks to explore the promises and challenges associated with ML systems in a medical setting but also be a practical reference point for clinicians.
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spelling pubmed-85566412021-11-10 Adoption of Machine Learning Systems for Medical Diagnostics in Clinics: Qualitative Interview Study Pumplun, Luisa Fecho, Mariska Wahl, Nihal Peters, Felix Buxmann, Peter J Med Internet Res Original Paper BACKGROUND: Recently, machine learning (ML) has been transforming our daily lives by enabling intelligent voice assistants, personalized support for purchase decisions, and efficient credit card fraud detection. In addition to its everyday applications, ML holds the potential to improve medicine as well, especially with regard to diagnostics in clinics. In a world characterized by population growth, demographic change, and the global COVID-19 pandemic, ML systems offer the opportunity to make diagnostics more effective and efficient, leading to a high interest of clinics in such systems. However, despite the high potential of ML, only a few ML systems have been deployed in clinics yet, as their adoption process differs significantly from the integration of prior health information technologies given the specific characteristics of ML. OBJECTIVE: This study aims to explore the factors that influence the adoption process of ML systems for medical diagnostics in clinics to foster the adoption of these systems in clinics. Furthermore, this study provides insight into how these factors can be used to determine the ML maturity score of clinics, which can be applied by practitioners to measure the clinic status quo in the adoption process of ML systems. METHODS: To gain more insight into the adoption process of ML systems for medical diagnostics in clinics, we conducted a qualitative study by interviewing 22 selected medical experts from clinics and their suppliers with profound knowledge in the field of ML. We used a semistructured interview guideline, asked open-ended questions, and transcribed the interviews verbatim. To analyze the transcripts, we first used a content analysis approach based on the health care–specific framework of nonadoption, abandonment, scale-up, spread, and sustainability. Then, we drew on the results of the content analysis to create a maturity model for ML adoption in clinics according to an established development process. RESULTS: With the help of the interviews, we were able to identify 13 ML-specific factors that influence the adoption process of ML systems in clinics. We categorized these factors according to 7 domains that form a holistic ML adoption framework for clinics. In addition, we created an applicable maturity model that could help practitioners assess their current state in the ML adoption process. CONCLUSIONS: Many clinics still face major problems in adopting ML systems for medical diagnostics; thus, they do not benefit from the potential of these systems. Therefore, both the ML adoption framework and the maturity model for ML systems in clinics can not only guide future research that seeks to explore the promises and challenges associated with ML systems in a medical setting but also be a practical reference point for clinicians. JMIR Publications 2021-10-15 /pmc/articles/PMC8556641/ /pubmed/34652275 http://dx.doi.org/10.2196/29301 Text en ©Luisa Pumplun, Mariska Fecho, Nihal Wahl, Felix Peters, Peter Buxmann. Originally published in the Journal of Medical Internet Research (https://www.jmir.org), 15.10.2021. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work, first published in the Journal of Medical Internet Research, is properly cited. The complete bibliographic information, a link to the original publication on https://www.jmir.org/, as well as this copyright and license information must be included.
spellingShingle Original Paper
Pumplun, Luisa
Fecho, Mariska
Wahl, Nihal
Peters, Felix
Buxmann, Peter
Adoption of Machine Learning Systems for Medical Diagnostics in Clinics: Qualitative Interview Study
title Adoption of Machine Learning Systems for Medical Diagnostics in Clinics: Qualitative Interview Study
title_full Adoption of Machine Learning Systems for Medical Diagnostics in Clinics: Qualitative Interview Study
title_fullStr Adoption of Machine Learning Systems for Medical Diagnostics in Clinics: Qualitative Interview Study
title_full_unstemmed Adoption of Machine Learning Systems for Medical Diagnostics in Clinics: Qualitative Interview Study
title_short Adoption of Machine Learning Systems for Medical Diagnostics in Clinics: Qualitative Interview Study
title_sort adoption of machine learning systems for medical diagnostics in clinics: qualitative interview study
topic Original Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8556641/
https://www.ncbi.nlm.nih.gov/pubmed/34652275
http://dx.doi.org/10.2196/29301
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