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Artificial Intelligence for Caries Detection: Value of Data and Information

If increasing practitioners’ diagnostic accuracy, medical artificial intelligence (AI) may lead to better treatment decisions at lower costs, while uncertainty remains around the resulting cost-effectiveness. In the present study, we assessed how enlarging the data set used for training an AI for ca...

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Autores principales: Schwendicke, F., Cejudo Grano de Oro, J., Garcia Cantu, A., Meyer-Lueckel, H., Chaurasia, A., Krois, J.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: SAGE Publications 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9516598/
https://www.ncbi.nlm.nih.gov/pubmed/35996332
http://dx.doi.org/10.1177/00220345221113756
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author Schwendicke, F.
Cejudo Grano de Oro, J.
Garcia Cantu, A.
Meyer-Lueckel, H.
Chaurasia, A.
Krois, J.
author_facet Schwendicke, F.
Cejudo Grano de Oro, J.
Garcia Cantu, A.
Meyer-Lueckel, H.
Chaurasia, A.
Krois, J.
author_sort Schwendicke, F.
collection PubMed
description If increasing practitioners’ diagnostic accuracy, medical artificial intelligence (AI) may lead to better treatment decisions at lower costs, while uncertainty remains around the resulting cost-effectiveness. In the present study, we assessed how enlarging the data set used for training an AI for caries detection on bitewings affects cost-effectiveness and also determined the value of information by reducing the uncertainty around other input parameters (namely, the costs of AI and the population’s caries risk profile). We employed a convolutional neural network and trained it on 10%, 25%, 50%, or 100% of a labeled data set containing 29,011 teeth without and 19,760 teeth with caries lesions stemming from bitewing radiographs. We employed an established health economic modeling and analytical framework to quantify cost-effectiveness and value of information. We adopted a mixed public–private payer perspective in German health care; the health outcome was tooth retention years. A Markov model, allowing to follow posterior teeth over the lifetime of an initially 12-y-old individual, and Monte Carlo microsimulations were employed. With an increasing amount of data used to train the AI sensitivity and specificity increased nonlinearly, increasing the data set from 10% to 25% had the largest impact on accuracy and, consequently, cost-effectiveness. In the base-case scenario, AI was more effective (tooth retention for a mean [2.5%–97.5%] 62.8 [59.2–65.5] y) and less costly (378 [284–499] euros) than dentists without AI (60.4 [55.8–64.4] y; 419 [270–593] euros), with considerable uncertainty. The economic value of reducing the uncertainty around AI’s accuracy or costs was limited, while information on the population’s risk profile was more relevant. When developing dental AI, informed choices about the data set size may be recommended, and research toward individualized application of AI for caries detection seems warranted to optimize cost-effectiveness.
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spelling pubmed-95165982022-09-29 Artificial Intelligence for Caries Detection: Value of Data and Information Schwendicke, F. Cejudo Grano de Oro, J. Garcia Cantu, A. Meyer-Lueckel, H. Chaurasia, A. Krois, J. J Dent Res Research Reports If increasing practitioners’ diagnostic accuracy, medical artificial intelligence (AI) may lead to better treatment decisions at lower costs, while uncertainty remains around the resulting cost-effectiveness. In the present study, we assessed how enlarging the data set used for training an AI for caries detection on bitewings affects cost-effectiveness and also determined the value of information by reducing the uncertainty around other input parameters (namely, the costs of AI and the population’s caries risk profile). We employed a convolutional neural network and trained it on 10%, 25%, 50%, or 100% of a labeled data set containing 29,011 teeth without and 19,760 teeth with caries lesions stemming from bitewing radiographs. We employed an established health economic modeling and analytical framework to quantify cost-effectiveness and value of information. We adopted a mixed public–private payer perspective in German health care; the health outcome was tooth retention years. A Markov model, allowing to follow posterior teeth over the lifetime of an initially 12-y-old individual, and Monte Carlo microsimulations were employed. With an increasing amount of data used to train the AI sensitivity and specificity increased nonlinearly, increasing the data set from 10% to 25% had the largest impact on accuracy and, consequently, cost-effectiveness. In the base-case scenario, AI was more effective (tooth retention for a mean [2.5%–97.5%] 62.8 [59.2–65.5] y) and less costly (378 [284–499] euros) than dentists without AI (60.4 [55.8–64.4] y; 419 [270–593] euros), with considerable uncertainty. The economic value of reducing the uncertainty around AI’s accuracy or costs was limited, while information on the population’s risk profile was more relevant. When developing dental AI, informed choices about the data set size may be recommended, and research toward individualized application of AI for caries detection seems warranted to optimize cost-effectiveness. SAGE Publications 2022-08-22 2022-10 /pmc/articles/PMC9516598/ /pubmed/35996332 http://dx.doi.org/10.1177/00220345221113756 Text en © International Association for Dental Research and American Association for Dental, Oral, and Craniofacial Research 2022 https://creativecommons.org/licenses/by/4.0/This article is distributed under the terms of the Creative Commons Attribution 4.0 License (https://creativecommons.org/licenses/by/4.0/) which permits any use, reproduction and distribution of the work without further permission provided the original work is attributed as specified on the SAGE and Open Access pages (https://us.sagepub.com/en-us/nam/open-access-at-sage).
spellingShingle Research Reports
Schwendicke, F.
Cejudo Grano de Oro, J.
Garcia Cantu, A.
Meyer-Lueckel, H.
Chaurasia, A.
Krois, J.
Artificial Intelligence for Caries Detection: Value of Data and Information
title Artificial Intelligence for Caries Detection: Value of Data and Information
title_full Artificial Intelligence for Caries Detection: Value of Data and Information
title_fullStr Artificial Intelligence for Caries Detection: Value of Data and Information
title_full_unstemmed Artificial Intelligence for Caries Detection: Value of Data and Information
title_short Artificial Intelligence for Caries Detection: Value of Data and Information
title_sort artificial intelligence for caries detection: value of data and information
topic Research Reports
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9516598/
https://www.ncbi.nlm.nih.gov/pubmed/35996332
http://dx.doi.org/10.1177/00220345221113756
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