Cargando…

Real‐time use of artificial intelligence (CADEYE) in colorectal cancer surveillance of patients with Lynch syndrome—A randomized controlled pilot trial (CADLY)

BACKGROUND: Lynch syndrome (LS), an autosomal dominant disorder caused by pathogenic germline variants in DNA mismatch repair (MMR) genes, represents the most common hereditary colorectal cancer (CRC) syndrome. Lynch syndrome patients are at high risk of CRC despite regular endoscopic surveillance....

Descripción completa

Detalles Bibliográficos
Autores principales: Hüneburg, Robert, Bucksch, Karolin, Schmeißer, Friederike, Heling, Dominik, Marwitz, Tim, Aretz, Stefan, Kaczmarek, Dominik J., Kristiansen, Glen, Hommerding, Oliver, Strassburg, Christian P., Engel, Christoph, Nattermann, Jacob
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley and Sons Inc. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9892476/
https://www.ncbi.nlm.nih.gov/pubmed/36571259
http://dx.doi.org/10.1002/ueg2.12354
_version_ 1784881332406452224
author Hüneburg, Robert
Bucksch, Karolin
Schmeißer, Friederike
Heling, Dominik
Marwitz, Tim
Aretz, Stefan
Kaczmarek, Dominik J.
Kristiansen, Glen
Hommerding, Oliver
Strassburg, Christian P.
Engel, Christoph
Nattermann, Jacob
author_facet Hüneburg, Robert
Bucksch, Karolin
Schmeißer, Friederike
Heling, Dominik
Marwitz, Tim
Aretz, Stefan
Kaczmarek, Dominik J.
Kristiansen, Glen
Hommerding, Oliver
Strassburg, Christian P.
Engel, Christoph
Nattermann, Jacob
author_sort Hüneburg, Robert
collection PubMed
description BACKGROUND: Lynch syndrome (LS), an autosomal dominant disorder caused by pathogenic germline variants in DNA mismatch repair (MMR) genes, represents the most common hereditary colorectal cancer (CRC) syndrome. Lynch syndrome patients are at high risk of CRC despite regular endoscopic surveillance. OBJECTIVE: Our aim was to investigate the diagnostic performance of artificial intelligence (AI)‐assisted colonoscopy in comparison to High‐Definition white‐light endoscopy (HD‐WLE) for the first time. METHODS: Patients ≥18 years with LS, with a pathogenic germline variant (MLH1, MHS2, MSH6), and at least one previous colonoscopy (interval 10–36 months) were eligible. Patients were stratified by previous CRC and affected MMR gene with a 1:1 allocation ratio (AI‐assisted vs. HD white‐light endoscopy) in this exploratory pilot trial. RESULTS: Between Dec‐2021 and Dec‐2022, 101 LS patients were randomised and 96 patients were finally analyzed after exclusion of 5 patients due to insufficient bowel preparation. In the HD‐WLE arm, adenomas were detected in 12/46 patients compared to 18/50 in the AI arm (26.1% [95% CI 14.3–41.1] vs. 36.0% [22.9–50.8]; p = 0.379). The use of AI‐assisted colonoscopy especially increased detection of flat adenomas (Paris classification 0‐IIb) (examinations with detected flat adenomas: 3/46 [6.5%] vs. 10/50 [20%]; p = 0.07; numbers of detected flat adenomas: 4/20 vs. 17/30, p = 0.018). The median withdrawal time did not differ significantly between HD‐WLE and AI (14 vs. 15 min; p = 0.170). CONCLUSION: We here present first data suggesting that real‐time AI‐assisted colonoscopy is a promising approach to optimize endoscopic surveillance in LS patients, in particular to improve the detection of flat adenomas.
format Online
Article
Text
id pubmed-9892476
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher John Wiley and Sons Inc.
record_format MEDLINE/PubMed
spelling pubmed-98924762023-02-06 Real‐time use of artificial intelligence (CADEYE) in colorectal cancer surveillance of patients with Lynch syndrome—A randomized controlled pilot trial (CADLY) Hüneburg, Robert Bucksch, Karolin Schmeißer, Friederike Heling, Dominik Marwitz, Tim Aretz, Stefan Kaczmarek, Dominik J. Kristiansen, Glen Hommerding, Oliver Strassburg, Christian P. Engel, Christoph Nattermann, Jacob United European Gastroenterol J Endoscopy BACKGROUND: Lynch syndrome (LS), an autosomal dominant disorder caused by pathogenic germline variants in DNA mismatch repair (MMR) genes, represents the most common hereditary colorectal cancer (CRC) syndrome. Lynch syndrome patients are at high risk of CRC despite regular endoscopic surveillance. OBJECTIVE: Our aim was to investigate the diagnostic performance of artificial intelligence (AI)‐assisted colonoscopy in comparison to High‐Definition white‐light endoscopy (HD‐WLE) for the first time. METHODS: Patients ≥18 years with LS, with a pathogenic germline variant (MLH1, MHS2, MSH6), and at least one previous colonoscopy (interval 10–36 months) were eligible. Patients were stratified by previous CRC and affected MMR gene with a 1:1 allocation ratio (AI‐assisted vs. HD white‐light endoscopy) in this exploratory pilot trial. RESULTS: Between Dec‐2021 and Dec‐2022, 101 LS patients were randomised and 96 patients were finally analyzed after exclusion of 5 patients due to insufficient bowel preparation. In the HD‐WLE arm, adenomas were detected in 12/46 patients compared to 18/50 in the AI arm (26.1% [95% CI 14.3–41.1] vs. 36.0% [22.9–50.8]; p = 0.379). The use of AI‐assisted colonoscopy especially increased detection of flat adenomas (Paris classification 0‐IIb) (examinations with detected flat adenomas: 3/46 [6.5%] vs. 10/50 [20%]; p = 0.07; numbers of detected flat adenomas: 4/20 vs. 17/30, p = 0.018). The median withdrawal time did not differ significantly between HD‐WLE and AI (14 vs. 15 min; p = 0.170). CONCLUSION: We here present first data suggesting that real‐time AI‐assisted colonoscopy is a promising approach to optimize endoscopic surveillance in LS patients, in particular to improve the detection of flat adenomas. John Wiley and Sons Inc. 2022-12-26 /pmc/articles/PMC9892476/ /pubmed/36571259 http://dx.doi.org/10.1002/ueg2.12354 Text en © 2022 The Authors. United European Gastroenterology Journal published by Wiley Periodicals LLC. on behalf of United European Gastroenterology. https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article under the terms of the http://creativecommons.org/licenses/by-nc-nd/4.0/ (https://creativecommons.org/licenses/by-nc-nd/4.0/) License, which permits use and distribution in any medium, provided the original work is properly cited, the use is non‐commercial and no modifications or adaptations are made.
spellingShingle Endoscopy
Hüneburg, Robert
Bucksch, Karolin
Schmeißer, Friederike
Heling, Dominik
Marwitz, Tim
Aretz, Stefan
Kaczmarek, Dominik J.
Kristiansen, Glen
Hommerding, Oliver
Strassburg, Christian P.
Engel, Christoph
Nattermann, Jacob
Real‐time use of artificial intelligence (CADEYE) in colorectal cancer surveillance of patients with Lynch syndrome—A randomized controlled pilot trial (CADLY)
title Real‐time use of artificial intelligence (CADEYE) in colorectal cancer surveillance of patients with Lynch syndrome—A randomized controlled pilot trial (CADLY)
title_full Real‐time use of artificial intelligence (CADEYE) in colorectal cancer surveillance of patients with Lynch syndrome—A randomized controlled pilot trial (CADLY)
title_fullStr Real‐time use of artificial intelligence (CADEYE) in colorectal cancer surveillance of patients with Lynch syndrome—A randomized controlled pilot trial (CADLY)
title_full_unstemmed Real‐time use of artificial intelligence (CADEYE) in colorectal cancer surveillance of patients with Lynch syndrome—A randomized controlled pilot trial (CADLY)
title_short Real‐time use of artificial intelligence (CADEYE) in colorectal cancer surveillance of patients with Lynch syndrome—A randomized controlled pilot trial (CADLY)
title_sort real‐time use of artificial intelligence (cadeye) in colorectal cancer surveillance of patients with lynch syndrome—a randomized controlled pilot trial (cadly)
topic Endoscopy
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9892476/
https://www.ncbi.nlm.nih.gov/pubmed/36571259
http://dx.doi.org/10.1002/ueg2.12354
work_keys_str_mv AT huneburgrobert realtimeuseofartificialintelligencecadeyeincolorectalcancersurveillanceofpatientswithlynchsyndromearandomizedcontrolledpilottrialcadly
AT buckschkarolin realtimeuseofartificialintelligencecadeyeincolorectalcancersurveillanceofpatientswithlynchsyndromearandomizedcontrolledpilottrialcadly
AT schmeißerfriederike realtimeuseofartificialintelligencecadeyeincolorectalcancersurveillanceofpatientswithlynchsyndromearandomizedcontrolledpilottrialcadly
AT helingdominik realtimeuseofartificialintelligencecadeyeincolorectalcancersurveillanceofpatientswithlynchsyndromearandomizedcontrolledpilottrialcadly
AT marwitztim realtimeuseofartificialintelligencecadeyeincolorectalcancersurveillanceofpatientswithlynchsyndromearandomizedcontrolledpilottrialcadly
AT aretzstefan realtimeuseofartificialintelligencecadeyeincolorectalcancersurveillanceofpatientswithlynchsyndromearandomizedcontrolledpilottrialcadly
AT kaczmarekdominikj realtimeuseofartificialintelligencecadeyeincolorectalcancersurveillanceofpatientswithlynchsyndromearandomizedcontrolledpilottrialcadly
AT kristiansenglen realtimeuseofartificialintelligencecadeyeincolorectalcancersurveillanceofpatientswithlynchsyndromearandomizedcontrolledpilottrialcadly
AT hommerdingoliver realtimeuseofartificialintelligencecadeyeincolorectalcancersurveillanceofpatientswithlynchsyndromearandomizedcontrolledpilottrialcadly
AT strassburgchristianp realtimeuseofartificialintelligencecadeyeincolorectalcancersurveillanceofpatientswithlynchsyndromearandomizedcontrolledpilottrialcadly
AT engelchristoph realtimeuseofartificialintelligencecadeyeincolorectalcancersurveillanceofpatientswithlynchsyndromearandomizedcontrolledpilottrialcadly
AT nattermannjacob realtimeuseofartificialintelligencecadeyeincolorectalcancersurveillanceofpatientswithlynchsyndromearandomizedcontrolledpilottrialcadly