Cargando…
Computational pathology in 2030: a Delphi study forecasting the role of AI in pathology within the next decade
BACKGROUND: Artificial intelligence (AI) is rapidly fuelling a fundamental transformation in the practice of pathology. However, clinical integration remains challenging, with no AI algorithms to date in routine adoption within typical anatomic pathology (AP) laboratories. This survey gathered curre...
Autores principales: | , , , , , , , , , , , , , , , , , , , , , , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
Elsevier
2023
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9823157/ https://www.ncbi.nlm.nih.gov/pubmed/36603288 http://dx.doi.org/10.1016/j.ebiom.2022.104427 |
_version_ | 1784866093513310208 |
---|---|
author | Berbís, M. Alvaro McClintock, David S. Bychkov, Andrey Van der Laak, Jeroen Pantanowitz, Liron Lennerz, Jochen K. Cheng, Jerome Y. Delahunt, Brett Egevad, Lars Eloy, Catarina Farris, Alton B. Fraggetta, Filippo García del Moral, Raimundo Hartman, Douglas J. Herrmann, Markus D. Hollemans, Eva Iczkowski, Kenneth A. Karsan, Aly Kriegsmann, Mark Salama, Mohamed E. Sinard, John H. Tuthill, J. Mark Williams, Bethany Casado-Sánchez, César Sánchez-Turrión, Víctor Luna, Antonio Aneiros-Fernández, José Shen, Jeanne |
author_facet | Berbís, M. Alvaro McClintock, David S. Bychkov, Andrey Van der Laak, Jeroen Pantanowitz, Liron Lennerz, Jochen K. Cheng, Jerome Y. Delahunt, Brett Egevad, Lars Eloy, Catarina Farris, Alton B. Fraggetta, Filippo García del Moral, Raimundo Hartman, Douglas J. Herrmann, Markus D. Hollemans, Eva Iczkowski, Kenneth A. Karsan, Aly Kriegsmann, Mark Salama, Mohamed E. Sinard, John H. Tuthill, J. Mark Williams, Bethany Casado-Sánchez, César Sánchez-Turrión, Víctor Luna, Antonio Aneiros-Fernández, José Shen, Jeanne |
author_sort | Berbís, M. Alvaro |
collection | PubMed |
description | BACKGROUND: Artificial intelligence (AI) is rapidly fuelling a fundamental transformation in the practice of pathology. However, clinical integration remains challenging, with no AI algorithms to date in routine adoption within typical anatomic pathology (AP) laboratories. This survey gathered current expert perspectives and expectations regarding the role of AI in AP from those with first-hand computational pathology and AI experience. METHODS: Perspectives were solicited using the Delphi method from 24 subject matter experts between December 2020 and February 2021 regarding the anticipated role of AI in pathology by the year 2030. The study consisted of three consecutive rounds: 1) an open-ended, free response questionnaire generating a list of survey items; 2) a Likert-scale survey scored by experts and analysed for consensus; and 3) a repeat survey of items not reaching consensus to obtain further expert consensus. FINDINGS: Consensus opinions were reached on 141 of 180 survey items (78.3%). Experts agreed that AI would be routinely and impactfully used within AP laboratory and pathologist clinical workflows by 2030. High consensus was reached on 100 items across nine categories encompassing the impact of AI on (1) pathology key performance indicators (KPIs) and (2) the pathology workforce and specific tasks performed by (3) pathologists and (4) AP lab technicians, as well as (5) specific AI applications and their likelihood of routine use by 2030, (6) AI's role in integrated diagnostics, (7) pathology tasks likely to be fully automated using AI, and (8) regulatory/legal and (9) ethical aspects of AI integration in pathology. INTERPRETATION: This systematic consensus study details the expected short-to-mid-term impact of AI on pathology practice. These findings provide timely and relevant information regarding future care delivery in pathology and raise key practical, ethical, and legal challenges that must be addressed prior to AI's successful clinical implementation. FUNDING: No specific funding was provided for this study. |
format | Online Article Text |
id | pubmed-9823157 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2023 |
publisher | Elsevier |
record_format | MEDLINE/PubMed |
spelling | pubmed-98231572023-01-08 Computational pathology in 2030: a Delphi study forecasting the role of AI in pathology within the next decade Berbís, M. Alvaro McClintock, David S. Bychkov, Andrey Van der Laak, Jeroen Pantanowitz, Liron Lennerz, Jochen K. Cheng, Jerome Y. Delahunt, Brett Egevad, Lars Eloy, Catarina Farris, Alton B. Fraggetta, Filippo García del Moral, Raimundo Hartman, Douglas J. Herrmann, Markus D. Hollemans, Eva Iczkowski, Kenneth A. Karsan, Aly Kriegsmann, Mark Salama, Mohamed E. Sinard, John H. Tuthill, J. Mark Williams, Bethany Casado-Sánchez, César Sánchez-Turrión, Víctor Luna, Antonio Aneiros-Fernández, José Shen, Jeanne eBioMedicine Articles BACKGROUND: Artificial intelligence (AI) is rapidly fuelling a fundamental transformation in the practice of pathology. However, clinical integration remains challenging, with no AI algorithms to date in routine adoption within typical anatomic pathology (AP) laboratories. This survey gathered current expert perspectives and expectations regarding the role of AI in AP from those with first-hand computational pathology and AI experience. METHODS: Perspectives were solicited using the Delphi method from 24 subject matter experts between December 2020 and February 2021 regarding the anticipated role of AI in pathology by the year 2030. The study consisted of three consecutive rounds: 1) an open-ended, free response questionnaire generating a list of survey items; 2) a Likert-scale survey scored by experts and analysed for consensus; and 3) a repeat survey of items not reaching consensus to obtain further expert consensus. FINDINGS: Consensus opinions were reached on 141 of 180 survey items (78.3%). Experts agreed that AI would be routinely and impactfully used within AP laboratory and pathologist clinical workflows by 2030. High consensus was reached on 100 items across nine categories encompassing the impact of AI on (1) pathology key performance indicators (KPIs) and (2) the pathology workforce and specific tasks performed by (3) pathologists and (4) AP lab technicians, as well as (5) specific AI applications and their likelihood of routine use by 2030, (6) AI's role in integrated diagnostics, (7) pathology tasks likely to be fully automated using AI, and (8) regulatory/legal and (9) ethical aspects of AI integration in pathology. INTERPRETATION: This systematic consensus study details the expected short-to-mid-term impact of AI on pathology practice. These findings provide timely and relevant information regarding future care delivery in pathology and raise key practical, ethical, and legal challenges that must be addressed prior to AI's successful clinical implementation. FUNDING: No specific funding was provided for this study. Elsevier 2023-01-04 /pmc/articles/PMC9823157/ /pubmed/36603288 http://dx.doi.org/10.1016/j.ebiom.2022.104427 Text en © 2022 The Author(s) https://creativecommons.org/licenses/by/4.0/This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/). |
spellingShingle | Articles Berbís, M. Alvaro McClintock, David S. Bychkov, Andrey Van der Laak, Jeroen Pantanowitz, Liron Lennerz, Jochen K. Cheng, Jerome Y. Delahunt, Brett Egevad, Lars Eloy, Catarina Farris, Alton B. Fraggetta, Filippo García del Moral, Raimundo Hartman, Douglas J. Herrmann, Markus D. Hollemans, Eva Iczkowski, Kenneth A. Karsan, Aly Kriegsmann, Mark Salama, Mohamed E. Sinard, John H. Tuthill, J. Mark Williams, Bethany Casado-Sánchez, César Sánchez-Turrión, Víctor Luna, Antonio Aneiros-Fernández, José Shen, Jeanne Computational pathology in 2030: a Delphi study forecasting the role of AI in pathology within the next decade |
title | Computational pathology in 2030: a Delphi study forecasting the role of AI in pathology within the next decade |
title_full | Computational pathology in 2030: a Delphi study forecasting the role of AI in pathology within the next decade |
title_fullStr | Computational pathology in 2030: a Delphi study forecasting the role of AI in pathology within the next decade |
title_full_unstemmed | Computational pathology in 2030: a Delphi study forecasting the role of AI in pathology within the next decade |
title_short | Computational pathology in 2030: a Delphi study forecasting the role of AI in pathology within the next decade |
title_sort | computational pathology in 2030: a delphi study forecasting the role of ai in pathology within the next decade |
topic | Articles |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9823157/ https://www.ncbi.nlm.nih.gov/pubmed/36603288 http://dx.doi.org/10.1016/j.ebiom.2022.104427 |
work_keys_str_mv | AT berbismalvaro computationalpathologyin2030adelphistudyforecastingtheroleofaiinpathologywithinthenextdecade AT mcclintockdavids computationalpathologyin2030adelphistudyforecastingtheroleofaiinpathologywithinthenextdecade AT bychkovandrey computationalpathologyin2030adelphistudyforecastingtheroleofaiinpathologywithinthenextdecade AT vanderlaakjeroen computationalpathologyin2030adelphistudyforecastingtheroleofaiinpathologywithinthenextdecade AT pantanowitzliron computationalpathologyin2030adelphistudyforecastingtheroleofaiinpathologywithinthenextdecade AT lennerzjochenk computationalpathologyin2030adelphistudyforecastingtheroleofaiinpathologywithinthenextdecade AT chengjeromey computationalpathologyin2030adelphistudyforecastingtheroleofaiinpathologywithinthenextdecade AT delahuntbrett computationalpathologyin2030adelphistudyforecastingtheroleofaiinpathologywithinthenextdecade AT egevadlars computationalpathologyin2030adelphistudyforecastingtheroleofaiinpathologywithinthenextdecade AT eloycatarina computationalpathologyin2030adelphistudyforecastingtheroleofaiinpathologywithinthenextdecade AT farrisaltonb computationalpathologyin2030adelphistudyforecastingtheroleofaiinpathologywithinthenextdecade AT fraggettafilippo computationalpathologyin2030adelphistudyforecastingtheroleofaiinpathologywithinthenextdecade AT garciadelmoralraimundo computationalpathologyin2030adelphistudyforecastingtheroleofaiinpathologywithinthenextdecade AT hartmandouglasj computationalpathologyin2030adelphistudyforecastingtheroleofaiinpathologywithinthenextdecade AT herrmannmarkusd computationalpathologyin2030adelphistudyforecastingtheroleofaiinpathologywithinthenextdecade AT hollemanseva computationalpathologyin2030adelphistudyforecastingtheroleofaiinpathologywithinthenextdecade AT iczkowskikennetha computationalpathologyin2030adelphistudyforecastingtheroleofaiinpathologywithinthenextdecade AT karsanaly computationalpathologyin2030adelphistudyforecastingtheroleofaiinpathologywithinthenextdecade AT kriegsmannmark computationalpathologyin2030adelphistudyforecastingtheroleofaiinpathologywithinthenextdecade AT salamamohamede computationalpathologyin2030adelphistudyforecastingtheroleofaiinpathologywithinthenextdecade AT sinardjohnh computationalpathologyin2030adelphistudyforecastingtheroleofaiinpathologywithinthenextdecade AT tuthilljmark computationalpathologyin2030adelphistudyforecastingtheroleofaiinpathologywithinthenextdecade AT williamsbethany computationalpathologyin2030adelphistudyforecastingtheroleofaiinpathologywithinthenextdecade AT casadosanchezcesar computationalpathologyin2030adelphistudyforecastingtheroleofaiinpathologywithinthenextdecade AT sanchezturrionvictor computationalpathologyin2030adelphistudyforecastingtheroleofaiinpathologywithinthenextdecade AT lunaantonio computationalpathologyin2030adelphistudyforecastingtheroleofaiinpathologywithinthenextdecade AT aneirosfernandezjose computationalpathologyin2030adelphistudyforecastingtheroleofaiinpathologywithinthenextdecade AT shenjeanne computationalpathologyin2030adelphistudyforecastingtheroleofaiinpathologywithinthenextdecade |