Cargando…

Spatiotemporal analysis of small bowel capsule endoscopy videos for outcomes prediction in Crohn’s disease

BACKGROUND: Deep learning techniques can accurately detect and grade inflammatory findings on images from capsule endoscopy (CE) in Crohn’s disease (CD). However, the predictive utility of deep learning of CE in CD for disease outcomes has not been examined. OBJECTIVES: We aimed to develop a deep le...

Descripción completa

Detalles Bibliográficos
Autores principales: Kellerman, Raizy, Bleiweiss, Amit, Samuel, Shimrit, Margalit-Yehuda, Reuma, Aflalo, Estelle, Barzilay, Oranit, Ben-Horin, Shomron, Eliakim, Rami, Zimlichman, Eyal, Soffer, Shelly, Klang, Eyal, Kopylov, Uri
Formato: Online Artículo Texto
Lenguaje:English
Publicado: SAGE Publications 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10333642/
https://www.ncbi.nlm.nih.gov/pubmed/37440929
http://dx.doi.org/10.1177/17562848231172556
_version_ 1785070706999951360
author Kellerman, Raizy
Bleiweiss, Amit
Samuel, Shimrit
Margalit-Yehuda, Reuma
Aflalo, Estelle
Barzilay, Oranit
Ben-Horin, Shomron
Eliakim, Rami
Zimlichman, Eyal
Soffer, Shelly
Klang, Eyal
Kopylov, Uri
author_facet Kellerman, Raizy
Bleiweiss, Amit
Samuel, Shimrit
Margalit-Yehuda, Reuma
Aflalo, Estelle
Barzilay, Oranit
Ben-Horin, Shomron
Eliakim, Rami
Zimlichman, Eyal
Soffer, Shelly
Klang, Eyal
Kopylov, Uri
author_sort Kellerman, Raizy
collection PubMed
description BACKGROUND: Deep learning techniques can accurately detect and grade inflammatory findings on images from capsule endoscopy (CE) in Crohn’s disease (CD). However, the predictive utility of deep learning of CE in CD for disease outcomes has not been examined. OBJECTIVES: We aimed to develop a deep learning model that can predict the need for biological therapy based on complete CE videos of newly-diagnosed CD patients. DESIGN: This was a retrospective cohort study. The study cohort included treatment-naïve CD patients that have performed CE (SB3, Medtronic) within 6 months of diagnosis. Complete small bowel videos were extracted using the RAPID Reader software. METHODS: CE videos were scored using the Lewis score (LS). Clinical, endoscopic, and laboratory data were extracted from electronic medical records. Machine learning analysis was performed using the TimeSformer computer vision algorithm developed to capture spatiotemporal characteristics for video analysis. RESULTS: The patient cohort included 101 patients. The median duration of follow-up was 902 (354–1626) days. Biological therapy was initiated by 37 (36.6%) out of 101 patients. TimeSformer algorithm achieved training and testing accuracy of 82% and 81%, respectively, with an Area under the ROC Curve (AUC) of 0.86 to predict the need for biological therapy. In comparison, the AUC for LS was 0.70 and for fecal calprotectin 0.74. CONCLUSION: Spatiotemporal analysis of complete CE videos of newly-diagnosed CD patients achieved accurate prediction of the need for biological therapy. The accuracy was superior to that of the human reader index or fecal calprotectin. Following future validation studies, this approach will allow for fast and accurate personalization of treatment decisions in CD.
format Online
Article
Text
id pubmed-10333642
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher SAGE Publications
record_format MEDLINE/PubMed
spelling pubmed-103336422023-07-12 Spatiotemporal analysis of small bowel capsule endoscopy videos for outcomes prediction in Crohn’s disease Kellerman, Raizy Bleiweiss, Amit Samuel, Shimrit Margalit-Yehuda, Reuma Aflalo, Estelle Barzilay, Oranit Ben-Horin, Shomron Eliakim, Rami Zimlichman, Eyal Soffer, Shelly Klang, Eyal Kopylov, Uri Therap Adv Gastroenterol Original Research BACKGROUND: Deep learning techniques can accurately detect and grade inflammatory findings on images from capsule endoscopy (CE) in Crohn’s disease (CD). However, the predictive utility of deep learning of CE in CD for disease outcomes has not been examined. OBJECTIVES: We aimed to develop a deep learning model that can predict the need for biological therapy based on complete CE videos of newly-diagnosed CD patients. DESIGN: This was a retrospective cohort study. The study cohort included treatment-naïve CD patients that have performed CE (SB3, Medtronic) within 6 months of diagnosis. Complete small bowel videos were extracted using the RAPID Reader software. METHODS: CE videos were scored using the Lewis score (LS). Clinical, endoscopic, and laboratory data were extracted from electronic medical records. Machine learning analysis was performed using the TimeSformer computer vision algorithm developed to capture spatiotemporal characteristics for video analysis. RESULTS: The patient cohort included 101 patients. The median duration of follow-up was 902 (354–1626) days. Biological therapy was initiated by 37 (36.6%) out of 101 patients. TimeSformer algorithm achieved training and testing accuracy of 82% and 81%, respectively, with an Area under the ROC Curve (AUC) of 0.86 to predict the need for biological therapy. In comparison, the AUC for LS was 0.70 and for fecal calprotectin 0.74. CONCLUSION: Spatiotemporal analysis of complete CE videos of newly-diagnosed CD patients achieved accurate prediction of the need for biological therapy. The accuracy was superior to that of the human reader index or fecal calprotectin. Following future validation studies, this approach will allow for fast and accurate personalization of treatment decisions in CD. SAGE Publications 2023-06-30 /pmc/articles/PMC10333642/ /pubmed/37440929 http://dx.doi.org/10.1177/17562848231172556 Text en © The Author(s), 2023 https://creativecommons.org/licenses/by-nc/4.0/This article is distributed under the terms of the Creative Commons Attribution-NonCommercial 4.0 License (https://creativecommons.org/licenses/by-nc/4.0/) which permits non-commercial use, reproduction and distribution of the work without further permission provided the original work is attributed as specified on the SAGE and Open Access page (https://us.sagepub.com/en-us/nam/open-access-at-sage).
spellingShingle Original Research
Kellerman, Raizy
Bleiweiss, Amit
Samuel, Shimrit
Margalit-Yehuda, Reuma
Aflalo, Estelle
Barzilay, Oranit
Ben-Horin, Shomron
Eliakim, Rami
Zimlichman, Eyal
Soffer, Shelly
Klang, Eyal
Kopylov, Uri
Spatiotemporal analysis of small bowel capsule endoscopy videos for outcomes prediction in Crohn’s disease
title Spatiotemporal analysis of small bowel capsule endoscopy videos for outcomes prediction in Crohn’s disease
title_full Spatiotemporal analysis of small bowel capsule endoscopy videos for outcomes prediction in Crohn’s disease
title_fullStr Spatiotemporal analysis of small bowel capsule endoscopy videos for outcomes prediction in Crohn’s disease
title_full_unstemmed Spatiotemporal analysis of small bowel capsule endoscopy videos for outcomes prediction in Crohn’s disease
title_short Spatiotemporal analysis of small bowel capsule endoscopy videos for outcomes prediction in Crohn’s disease
title_sort spatiotemporal analysis of small bowel capsule endoscopy videos for outcomes prediction in crohn’s disease
topic Original Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10333642/
https://www.ncbi.nlm.nih.gov/pubmed/37440929
http://dx.doi.org/10.1177/17562848231172556
work_keys_str_mv AT kellermanraizy spatiotemporalanalysisofsmallbowelcapsuleendoscopyvideosforoutcomespredictionincrohnsdisease
AT bleiweissamit spatiotemporalanalysisofsmallbowelcapsuleendoscopyvideosforoutcomespredictionincrohnsdisease
AT samuelshimrit spatiotemporalanalysisofsmallbowelcapsuleendoscopyvideosforoutcomespredictionincrohnsdisease
AT margalityehudareuma spatiotemporalanalysisofsmallbowelcapsuleendoscopyvideosforoutcomespredictionincrohnsdisease
AT aflaloestelle spatiotemporalanalysisofsmallbowelcapsuleendoscopyvideosforoutcomespredictionincrohnsdisease
AT barzilayoranit spatiotemporalanalysisofsmallbowelcapsuleendoscopyvideosforoutcomespredictionincrohnsdisease
AT benhorinshomron spatiotemporalanalysisofsmallbowelcapsuleendoscopyvideosforoutcomespredictionincrohnsdisease
AT eliakimrami spatiotemporalanalysisofsmallbowelcapsuleendoscopyvideosforoutcomespredictionincrohnsdisease
AT zimlichmaneyal spatiotemporalanalysisofsmallbowelcapsuleendoscopyvideosforoutcomespredictionincrohnsdisease
AT soffershelly spatiotemporalanalysisofsmallbowelcapsuleendoscopyvideosforoutcomespredictionincrohnsdisease
AT klangeyal spatiotemporalanalysisofsmallbowelcapsuleendoscopyvideosforoutcomespredictionincrohnsdisease
AT kopylovuri spatiotemporalanalysisofsmallbowelcapsuleendoscopyvideosforoutcomespredictionincrohnsdisease