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Recommendations to overcome barriers to the use of artificial intelligence-driven evidence in health technology assessment

BACKGROUND: Artificial intelligence (AI) has attracted much attention because of its enormous potential in healthcare, but uptake has been slow. There are substantial barriers that challenge health technology assessment (HTA) professionals to use AI-generated evidence for decision-making from large...

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Autores principales: Zemplényi, Antal, Tachkov, Konstantin, Balkanyi, Laszlo, Németh, Bertalan, Petykó, Zsuzsanna Ida, Petrova, Guenka, Czech, Marcin, Dawoud, Dalia, Goettsch, Wim, Gutierrez Ibarluzea, Inaki, Hren, Rok, Knies, Saskia, Lorenzovici, László, Maravic, Zorana, Piniazhko, Oresta, Savova, Alexandra, Manova, Manoela, Tesar, Tomas, Zerovnik, Spela, Kaló, Zoltán
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10171457/
https://www.ncbi.nlm.nih.gov/pubmed/37181704
http://dx.doi.org/10.3389/fpubh.2023.1088121
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author Zemplényi, Antal
Tachkov, Konstantin
Balkanyi, Laszlo
Németh, Bertalan
Petykó, Zsuzsanna Ida
Petrova, Guenka
Czech, Marcin
Dawoud, Dalia
Goettsch, Wim
Gutierrez Ibarluzea, Inaki
Hren, Rok
Knies, Saskia
Lorenzovici, László
Maravic, Zorana
Piniazhko, Oresta
Savova, Alexandra
Manova, Manoela
Tesar, Tomas
Zerovnik, Spela
Kaló, Zoltán
author_facet Zemplényi, Antal
Tachkov, Konstantin
Balkanyi, Laszlo
Németh, Bertalan
Petykó, Zsuzsanna Ida
Petrova, Guenka
Czech, Marcin
Dawoud, Dalia
Goettsch, Wim
Gutierrez Ibarluzea, Inaki
Hren, Rok
Knies, Saskia
Lorenzovici, László
Maravic, Zorana
Piniazhko, Oresta
Savova, Alexandra
Manova, Manoela
Tesar, Tomas
Zerovnik, Spela
Kaló, Zoltán
author_sort Zemplényi, Antal
collection PubMed
description BACKGROUND: Artificial intelligence (AI) has attracted much attention because of its enormous potential in healthcare, but uptake has been slow. There are substantial barriers that challenge health technology assessment (HTA) professionals to use AI-generated evidence for decision-making from large real-world databases (e.g., based on claims data). As part of the European Commission-funded HTx H2020 (Next Generation Health Technology Assessment) project, we aimed to put forward recommendations to support healthcare decision-makers in integrating AI into the HTA processes. The barriers, addressed by the paper, are particularly focusing on Central and Eastern European (CEE) countries, where the implementation of HTA and access to health databases lag behind Western European countries. METHODS: We constructed a survey to rank the barriers to using AI for HTA purposes, completed by respondents from CEE jurisdictions with expertise in HTA. Using the results, two members of the HTx consortium from CEE developed recommendations on the most critical barriers. Then these recommendations were discussed in a workshop by a wider group of experts, including HTA and reimbursement decision-makers from both CEE countries and Western European countries, and summarized in a consensus report. RESULTS: Recommendations have been developed to address the top 15 barriers in areas of (1) human factor-related barriers, focusing on educating HTA doers and users, establishing collaborations and best practice sharing; (2) regulatory and policy-related barriers, proposing increasing awareness and political commitment and improving the management of sensitive information for AI use; (3) data-related barriers, suggesting enhancing standardization and collaboration with data networks, managing missing and unstructured data, using analytical and statistical approaches to address bias, using quality assessment tools and quality standards, improving reporting, and developing better conditions for the use of data; and (4) technological barriers, suggesting sustainable development of AI infrastructure. CONCLUSION: In the field of HTA, the great potential of AI to support evidence generation and evaluation has not yet been sufficiently explored and realized. Raising awareness of the intended and unintended consequences of AI-based methods and encouraging political commitment from policymakers is necessary to upgrade the regulatory and infrastructural environment and knowledge base required to integrate AI into HTA-based decision-making processes better.
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spelling pubmed-101714572023-05-11 Recommendations to overcome barriers to the use of artificial intelligence-driven evidence in health technology assessment Zemplényi, Antal Tachkov, Konstantin Balkanyi, Laszlo Németh, Bertalan Petykó, Zsuzsanna Ida Petrova, Guenka Czech, Marcin Dawoud, Dalia Goettsch, Wim Gutierrez Ibarluzea, Inaki Hren, Rok Knies, Saskia Lorenzovici, László Maravic, Zorana Piniazhko, Oresta Savova, Alexandra Manova, Manoela Tesar, Tomas Zerovnik, Spela Kaló, Zoltán Front Public Health Public Health BACKGROUND: Artificial intelligence (AI) has attracted much attention because of its enormous potential in healthcare, but uptake has been slow. There are substantial barriers that challenge health technology assessment (HTA) professionals to use AI-generated evidence for decision-making from large real-world databases (e.g., based on claims data). As part of the European Commission-funded HTx H2020 (Next Generation Health Technology Assessment) project, we aimed to put forward recommendations to support healthcare decision-makers in integrating AI into the HTA processes. The barriers, addressed by the paper, are particularly focusing on Central and Eastern European (CEE) countries, where the implementation of HTA and access to health databases lag behind Western European countries. METHODS: We constructed a survey to rank the barriers to using AI for HTA purposes, completed by respondents from CEE jurisdictions with expertise in HTA. Using the results, two members of the HTx consortium from CEE developed recommendations on the most critical barriers. Then these recommendations were discussed in a workshop by a wider group of experts, including HTA and reimbursement decision-makers from both CEE countries and Western European countries, and summarized in a consensus report. RESULTS: Recommendations have been developed to address the top 15 barriers in areas of (1) human factor-related barriers, focusing on educating HTA doers and users, establishing collaborations and best practice sharing; (2) regulatory and policy-related barriers, proposing increasing awareness and political commitment and improving the management of sensitive information for AI use; (3) data-related barriers, suggesting enhancing standardization and collaboration with data networks, managing missing and unstructured data, using analytical and statistical approaches to address bias, using quality assessment tools and quality standards, improving reporting, and developing better conditions for the use of data; and (4) technological barriers, suggesting sustainable development of AI infrastructure. CONCLUSION: In the field of HTA, the great potential of AI to support evidence generation and evaluation has not yet been sufficiently explored and realized. Raising awareness of the intended and unintended consequences of AI-based methods and encouraging political commitment from policymakers is necessary to upgrade the regulatory and infrastructural environment and knowledge base required to integrate AI into HTA-based decision-making processes better. Frontiers Media S.A. 2023-04-26 /pmc/articles/PMC10171457/ /pubmed/37181704 http://dx.doi.org/10.3389/fpubh.2023.1088121 Text en Copyright © 2023 Zemplényi, Tachkov, Balkanyi, Németh, Petykó, Petrova, Czech, Dawoud, Goettsch, Gutierrez Ibarluzea, Hren, Knies, Lorenzovici, Maravic, Piniazhko, Savova, Manova, Tesar, Zerovnik and Kaló. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Public Health
Zemplényi, Antal
Tachkov, Konstantin
Balkanyi, Laszlo
Németh, Bertalan
Petykó, Zsuzsanna Ida
Petrova, Guenka
Czech, Marcin
Dawoud, Dalia
Goettsch, Wim
Gutierrez Ibarluzea, Inaki
Hren, Rok
Knies, Saskia
Lorenzovici, László
Maravic, Zorana
Piniazhko, Oresta
Savova, Alexandra
Manova, Manoela
Tesar, Tomas
Zerovnik, Spela
Kaló, Zoltán
Recommendations to overcome barriers to the use of artificial intelligence-driven evidence in health technology assessment
title Recommendations to overcome barriers to the use of artificial intelligence-driven evidence in health technology assessment
title_full Recommendations to overcome barriers to the use of artificial intelligence-driven evidence in health technology assessment
title_fullStr Recommendations to overcome barriers to the use of artificial intelligence-driven evidence in health technology assessment
title_full_unstemmed Recommendations to overcome barriers to the use of artificial intelligence-driven evidence in health technology assessment
title_short Recommendations to overcome barriers to the use of artificial intelligence-driven evidence in health technology assessment
title_sort recommendations to overcome barriers to the use of artificial intelligence-driven evidence in health technology assessment
topic Public Health
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10171457/
https://www.ncbi.nlm.nih.gov/pubmed/37181704
http://dx.doi.org/10.3389/fpubh.2023.1088121
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