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Translatability Analysis of National Institutes of Health–Funded Biomedical Research That Applies Artificial Intelligence

IMPORTANCE: Despite the rapid growth of interest and diversity in applications of artificial intelligence (AI) to biomedical research, there are limited objective ways to characterize the potential for use of AI in clinical practice. OBJECTIVE: To examine what types of medical AI have the greatest e...

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Autores principales: Eweje, Feyisope R., Byun, Suzie, Chandra, Rajat, Hu, Fengling, Kamel, Ihab, Zhang, Paul, Jiao, Zhicheng, Bai, Harrison X.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Medical Association 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8787619/
https://www.ncbi.nlm.nih.gov/pubmed/35072720
http://dx.doi.org/10.1001/jamanetworkopen.2021.44742
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author Eweje, Feyisope R.
Byun, Suzie
Chandra, Rajat
Hu, Fengling
Kamel, Ihab
Zhang, Paul
Jiao, Zhicheng
Bai, Harrison X.
author_facet Eweje, Feyisope R.
Byun, Suzie
Chandra, Rajat
Hu, Fengling
Kamel, Ihab
Zhang, Paul
Jiao, Zhicheng
Bai, Harrison X.
author_sort Eweje, Feyisope R.
collection PubMed
description IMPORTANCE: Despite the rapid growth of interest and diversity in applications of artificial intelligence (AI) to biomedical research, there are limited objective ways to characterize the potential for use of AI in clinical practice. OBJECTIVE: To examine what types of medical AI have the greatest estimated translational impact (ie, ability to lead to development that has measurable value for human health) potential. DESIGN, SETTING, AND PARTICIPANTS: In this cohort study, research grants related to AI awarded between January 1, 1985, and December 31, 2020, were identified from a National Institutes of Health (NIH) award database. The text content for each award was entered into a Natural Language Processing (NLP) clustering algorithm. An NIH database was also used to extract citation data, including the number of citations and approximate potential to translate (APT) score for published articles associated with the granted awards to create proxies for translatability. EXPOSURES: Unsupervised assignment of AI-related research awards to application topics using NLP. MAIN OUTCOMES AND MEASURES: Annualized citations per $1 million funding (ACOF) and average APT score for award-associated articles, grouped by application topic. The APT score is a machine-learning based metric created by the NIH Office of Portfolio Analysis that quantifies the likelihood of future citation by a clinical article. RESULTS: A total of 16 629 NIH awards related to AI were included in the analysis, and 75 applications of AI were identified. Total annual funding for AI grew from $17.4 million in 1985 to $1.43 billion in 2020. By average APT, interpersonal communication technologies (0.488; 95% CI, 0.472-0.504) and population genetics (0.463; 95% CI, 0.453-0.472) had the highest translatability; environmental health (ACOF, 1038) and applications focused on the electronic health record (ACOF, 489) also had high translatability. The category of applications related to biochemical analysis was found to have low translatability by both metrics (average APT, 0.393; 95% CI, 0.388-0.398; ACOF, 246). CONCLUSIONS AND RELEVANCE: Based on this study's findings, data on grants from the NIH can apparently be used to identify and characterize medical applications of AI to understand changes in academic productivity, funding support, and potential for translational impact. This method may be extended to characterize other research domains.
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spelling pubmed-87876192022-02-07 Translatability Analysis of National Institutes of Health–Funded Biomedical Research That Applies Artificial Intelligence Eweje, Feyisope R. Byun, Suzie Chandra, Rajat Hu, Fengling Kamel, Ihab Zhang, Paul Jiao, Zhicheng Bai, Harrison X. JAMA Netw Open Original Investigation IMPORTANCE: Despite the rapid growth of interest and diversity in applications of artificial intelligence (AI) to biomedical research, there are limited objective ways to characterize the potential for use of AI in clinical practice. OBJECTIVE: To examine what types of medical AI have the greatest estimated translational impact (ie, ability to lead to development that has measurable value for human health) potential. DESIGN, SETTING, AND PARTICIPANTS: In this cohort study, research grants related to AI awarded between January 1, 1985, and December 31, 2020, were identified from a National Institutes of Health (NIH) award database. The text content for each award was entered into a Natural Language Processing (NLP) clustering algorithm. An NIH database was also used to extract citation data, including the number of citations and approximate potential to translate (APT) score for published articles associated with the granted awards to create proxies for translatability. EXPOSURES: Unsupervised assignment of AI-related research awards to application topics using NLP. MAIN OUTCOMES AND MEASURES: Annualized citations per $1 million funding (ACOF) and average APT score for award-associated articles, grouped by application topic. The APT score is a machine-learning based metric created by the NIH Office of Portfolio Analysis that quantifies the likelihood of future citation by a clinical article. RESULTS: A total of 16 629 NIH awards related to AI were included in the analysis, and 75 applications of AI were identified. Total annual funding for AI grew from $17.4 million in 1985 to $1.43 billion in 2020. By average APT, interpersonal communication technologies (0.488; 95% CI, 0.472-0.504) and population genetics (0.463; 95% CI, 0.453-0.472) had the highest translatability; environmental health (ACOF, 1038) and applications focused on the electronic health record (ACOF, 489) also had high translatability. The category of applications related to biochemical analysis was found to have low translatability by both metrics (average APT, 0.393; 95% CI, 0.388-0.398; ACOF, 246). CONCLUSIONS AND RELEVANCE: Based on this study's findings, data on grants from the NIH can apparently be used to identify and characterize medical applications of AI to understand changes in academic productivity, funding support, and potential for translational impact. This method may be extended to characterize other research domains. American Medical Association 2022-01-24 /pmc/articles/PMC8787619/ /pubmed/35072720 http://dx.doi.org/10.1001/jamanetworkopen.2021.44742 Text en Copyright 2022 Eweje FR et al. JAMA Network Open. https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the CC-BY License.
spellingShingle Original Investigation
Eweje, Feyisope R.
Byun, Suzie
Chandra, Rajat
Hu, Fengling
Kamel, Ihab
Zhang, Paul
Jiao, Zhicheng
Bai, Harrison X.
Translatability Analysis of National Institutes of Health–Funded Biomedical Research That Applies Artificial Intelligence
title Translatability Analysis of National Institutes of Health–Funded Biomedical Research That Applies Artificial Intelligence
title_full Translatability Analysis of National Institutes of Health–Funded Biomedical Research That Applies Artificial Intelligence
title_fullStr Translatability Analysis of National Institutes of Health–Funded Biomedical Research That Applies Artificial Intelligence
title_full_unstemmed Translatability Analysis of National Institutes of Health–Funded Biomedical Research That Applies Artificial Intelligence
title_short Translatability Analysis of National Institutes of Health–Funded Biomedical Research That Applies Artificial Intelligence
title_sort translatability analysis of national institutes of health–funded biomedical research that applies artificial intelligence
topic Original Investigation
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8787619/
https://www.ncbi.nlm.nih.gov/pubmed/35072720
http://dx.doi.org/10.1001/jamanetworkopen.2021.44742
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