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Independent real‐world application of a clinical‐grade automated prostate cancer detection system

Artificial intelligence (AI)‐based systems applied to histopathology whole‐slide images have the potential to improve patient care through mitigation of challenges posed by diagnostic variability, histopathology caseload, and shortage of pathologists. We sought to define the performance of an AI‐bas...

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Autores principales: da Silva, Leonard M, Pereira, Emilio M, Salles, Paulo GO, Godrich, Ran, Ceballos, Rodrigo, Kunz, Jeremy D, Casson, Adam, Viret, Julian, Chandarlapaty, Sarat, Ferreira, Carlos Gil, Ferrari, Bruno, Rothrock, Brandon, Raciti, Patricia, Reuter, Victor, Dogdas, Belma, DeMuth, George, Sue, Jillian, Kanan, Christopher, Grady, Leo, Fuchs, Thomas J, Reis‐Filho, Jorge S
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley & Sons, Ltd 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8252036/
https://www.ncbi.nlm.nih.gov/pubmed/33904171
http://dx.doi.org/10.1002/path.5662
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author da Silva, Leonard M
Pereira, Emilio M
Salles, Paulo GO
Godrich, Ran
Ceballos, Rodrigo
Kunz, Jeremy D
Casson, Adam
Viret, Julian
Chandarlapaty, Sarat
Ferreira, Carlos Gil
Ferrari, Bruno
Rothrock, Brandon
Raciti, Patricia
Reuter, Victor
Dogdas, Belma
DeMuth, George
Sue, Jillian
Kanan, Christopher
Grady, Leo
Fuchs, Thomas J
Reis‐Filho, Jorge S
author_facet da Silva, Leonard M
Pereira, Emilio M
Salles, Paulo GO
Godrich, Ran
Ceballos, Rodrigo
Kunz, Jeremy D
Casson, Adam
Viret, Julian
Chandarlapaty, Sarat
Ferreira, Carlos Gil
Ferrari, Bruno
Rothrock, Brandon
Raciti, Patricia
Reuter, Victor
Dogdas, Belma
DeMuth, George
Sue, Jillian
Kanan, Christopher
Grady, Leo
Fuchs, Thomas J
Reis‐Filho, Jorge S
author_sort da Silva, Leonard M
collection PubMed
description Artificial intelligence (AI)‐based systems applied to histopathology whole‐slide images have the potential to improve patient care through mitigation of challenges posed by diagnostic variability, histopathology caseload, and shortage of pathologists. We sought to define the performance of an AI‐based automated prostate cancer detection system, Paige Prostate, when applied to independent real‐world data. The algorithm was employed to classify slides into two categories: benign (no further review needed) or suspicious (additional histologic and/or immunohistochemical analysis required). We assessed the sensitivity, specificity, positive predictive values (PPVs), and negative predictive values (NPVs) of a local pathologist, two central pathologists, and Paige Prostate in the diagnosis of 600 transrectal ultrasound‐guided prostate needle core biopsy regions (‘part‐specimens’) from 100 consecutive patients, and to ascertain the impact of Paige Prostate on diagnostic accuracy and efficiency. Paige Prostate displayed high sensitivity (0.99; CI 0.96–1.0), NPV (1.0; CI 0.98–1.0), and specificity (0.93; CI 0.90–0.96) at the part‐specimen level. At the patient level, Paige Prostate displayed optimal sensitivity (1.0; CI 0.93–1.0) and NPV (1.0; CI 0.91–1.0) at a specificity of 0.78 (CI 0.64–0.89). The 27 part‐specimens considered by Paige Prostate as suspicious, whose final diagnosis was benign, were found to comprise atrophy (n = 14), atrophy and apical prostate tissue (n = 1), apical/benign prostate tissue (n = 9), adenosis (n = 2), and post‐atrophic hyperplasia (n = 1). Paige Prostate resulted in the identification of four additional patients whose diagnoses were upgraded from benign/suspicious to malignant. Additionally, this AI‐based test provided an estimated 65.5% reduction of the diagnostic time for the material analyzed. Given its optimal sensitivity and NPV, Paige Prostate has the potential to be employed for the automated identification of patients whose histologic slides could forgo full histopathologic review. In addition to providing incremental improvements in diagnostic accuracy and efficiency, this AI‐based system identified patients whose prostate cancers were not initially diagnosed by three experienced histopathologists. © 2021 The Authors. The Journal of Pathology published by John Wiley & Sons, Ltd. on behalf of The Pathological Society of Great Britain and Ireland.
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spelling pubmed-82520362021-07-07 Independent real‐world application of a clinical‐grade automated prostate cancer detection system da Silva, Leonard M Pereira, Emilio M Salles, Paulo GO Godrich, Ran Ceballos, Rodrigo Kunz, Jeremy D Casson, Adam Viret, Julian Chandarlapaty, Sarat Ferreira, Carlos Gil Ferrari, Bruno Rothrock, Brandon Raciti, Patricia Reuter, Victor Dogdas, Belma DeMuth, George Sue, Jillian Kanan, Christopher Grady, Leo Fuchs, Thomas J Reis‐Filho, Jorge S J Pathol Original Papers Artificial intelligence (AI)‐based systems applied to histopathology whole‐slide images have the potential to improve patient care through mitigation of challenges posed by diagnostic variability, histopathology caseload, and shortage of pathologists. We sought to define the performance of an AI‐based automated prostate cancer detection system, Paige Prostate, when applied to independent real‐world data. The algorithm was employed to classify slides into two categories: benign (no further review needed) or suspicious (additional histologic and/or immunohistochemical analysis required). We assessed the sensitivity, specificity, positive predictive values (PPVs), and negative predictive values (NPVs) of a local pathologist, two central pathologists, and Paige Prostate in the diagnosis of 600 transrectal ultrasound‐guided prostate needle core biopsy regions (‘part‐specimens’) from 100 consecutive patients, and to ascertain the impact of Paige Prostate on diagnostic accuracy and efficiency. Paige Prostate displayed high sensitivity (0.99; CI 0.96–1.0), NPV (1.0; CI 0.98–1.0), and specificity (0.93; CI 0.90–0.96) at the part‐specimen level. At the patient level, Paige Prostate displayed optimal sensitivity (1.0; CI 0.93–1.0) and NPV (1.0; CI 0.91–1.0) at a specificity of 0.78 (CI 0.64–0.89). The 27 part‐specimens considered by Paige Prostate as suspicious, whose final diagnosis was benign, were found to comprise atrophy (n = 14), atrophy and apical prostate tissue (n = 1), apical/benign prostate tissue (n = 9), adenosis (n = 2), and post‐atrophic hyperplasia (n = 1). Paige Prostate resulted in the identification of four additional patients whose diagnoses were upgraded from benign/suspicious to malignant. Additionally, this AI‐based test provided an estimated 65.5% reduction of the diagnostic time for the material analyzed. Given its optimal sensitivity and NPV, Paige Prostate has the potential to be employed for the automated identification of patients whose histologic slides could forgo full histopathologic review. In addition to providing incremental improvements in diagnostic accuracy and efficiency, this AI‐based system identified patients whose prostate cancers were not initially diagnosed by three experienced histopathologists. © 2021 The Authors. The Journal of Pathology published by John Wiley & Sons, Ltd. on behalf of The Pathological Society of Great Britain and Ireland. John Wiley & Sons, Ltd 2021-04-27 2021-06 /pmc/articles/PMC8252036/ /pubmed/33904171 http://dx.doi.org/10.1002/path.5662 Text en © 2021 The Authors. The Journal of Pathology published by John Wiley & Sons, Ltd. on behalf of The Pathological Society of Great Britain and Ireland. https://creativecommons.org/licenses/by/4.0/This is an open access article under the terms of the http://creativecommons.org/licenses/by/4.0/ (https://creativecommons.org/licenses/by/4.0/) License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited.
spellingShingle Original Papers
da Silva, Leonard M
Pereira, Emilio M
Salles, Paulo GO
Godrich, Ran
Ceballos, Rodrigo
Kunz, Jeremy D
Casson, Adam
Viret, Julian
Chandarlapaty, Sarat
Ferreira, Carlos Gil
Ferrari, Bruno
Rothrock, Brandon
Raciti, Patricia
Reuter, Victor
Dogdas, Belma
DeMuth, George
Sue, Jillian
Kanan, Christopher
Grady, Leo
Fuchs, Thomas J
Reis‐Filho, Jorge S
Independent real‐world application of a clinical‐grade automated prostate cancer detection system
title Independent real‐world application of a clinical‐grade automated prostate cancer detection system
title_full Independent real‐world application of a clinical‐grade automated prostate cancer detection system
title_fullStr Independent real‐world application of a clinical‐grade automated prostate cancer detection system
title_full_unstemmed Independent real‐world application of a clinical‐grade automated prostate cancer detection system
title_short Independent real‐world application of a clinical‐grade automated prostate cancer detection system
title_sort independent real‐world application of a clinical‐grade automated prostate cancer detection system
topic Original Papers
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8252036/
https://www.ncbi.nlm.nih.gov/pubmed/33904171
http://dx.doi.org/10.1002/path.5662
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