Cargando…

Clean mucosal area detection of gastroenterologists versus artificial intelligence in small bowel capsule endoscopy

Studies comparing the detection of clean mucosal areas in capsule endoscopy (CE) using human judgment versus artificial intelligence (AI) are rare. This study statistically analyzed gastroenterologist judgments and AI results. Three hundred CE video clips (100 patients) were prepared. Five gastroent...

Descripción completa

Detalles Bibliográficos
Autores principales: Ju, Jeongwoo, Oh, Hyun Sook, Lee, Yeoun Joo, Jung, Heechul, Lee, Jong-Hyuck, Kang, Ben, Choi, Sujin, Kim, Ji Hyun, Kim, Kyeong Ok, Chung, Yun Jin
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Lippincott Williams & Wilkins 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9907992/
https://www.ncbi.nlm.nih.gov/pubmed/36820545
http://dx.doi.org/10.1097/MD.0000000000032883
_version_ 1784884290619703296
author Ju, Jeongwoo
Oh, Hyun Sook
Lee, Yeoun Joo
Jung, Heechul
Lee, Jong-Hyuck
Kang, Ben
Choi, Sujin
Kim, Ji Hyun
Kim, Kyeong Ok
Chung, Yun Jin
author_facet Ju, Jeongwoo
Oh, Hyun Sook
Lee, Yeoun Joo
Jung, Heechul
Lee, Jong-Hyuck
Kang, Ben
Choi, Sujin
Kim, Ji Hyun
Kim, Kyeong Ok
Chung, Yun Jin
author_sort Ju, Jeongwoo
collection PubMed
description Studies comparing the detection of clean mucosal areas in capsule endoscopy (CE) using human judgment versus artificial intelligence (AI) are rare. This study statistically analyzed gastroenterologist judgments and AI results. Three hundred CE video clips (100 patients) were prepared. Five gastroenterologists classified the video clips into 3 groups (≥75% [high], 50%–75% [middle], and < 50% [low]) according to their subjective judgment of cleanliness. Visualization scores were calculated using an AI algorithm based on the predicted visible area, and the 5 gastroenterologists’ judgments and AI results were compared. The 5 gastroenterologists evaluated CE clip video quality as “high” in 10.7% to 36.7% and as “low” in 28.7% to 60.3% and 29.7% of cases, respectively. The AI evaluated CE clip video quality as “high” in 27.7% and as “low” in 29.7% of cases. Repeated-measures analysis of variance (ANOVA) revealed significant differences in the 6 evaluation indicators (5 gastroenterologists and 1 AI) (P < .001). Among the 300 judgments, 90 (30%) were consistent with 5 gastroenterologists’ judgments, and 82 (91.1%) agreed with the AI judgments. The “high” and “low” judgments of the gastroenterologists and AI agreed in 95.0% and 94.9% of cases, respectively. Bonferroni’s multiple comparison test showed no significant difference between 3 gastroenterologists and AI (P = .0961, P = 1.0000, and P = .0676, respectively) but a significant difference between the other 2 with AI (P < .0001). When evaluating CE images for cleanliness, the judgments of 5 gastroenterologists were relatively diverse. The AI produced a relatively universal judgment that was consistent with the gastroenterologists’ judgements.
format Online
Article
Text
id pubmed-9907992
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher Lippincott Williams & Wilkins
record_format MEDLINE/PubMed
spelling pubmed-99079922023-02-10 Clean mucosal area detection of gastroenterologists versus artificial intelligence in small bowel capsule endoscopy Ju, Jeongwoo Oh, Hyun Sook Lee, Yeoun Joo Jung, Heechul Lee, Jong-Hyuck Kang, Ben Choi, Sujin Kim, Ji Hyun Kim, Kyeong Ok Chung, Yun Jin Medicine (Baltimore) 4500 Studies comparing the detection of clean mucosal areas in capsule endoscopy (CE) using human judgment versus artificial intelligence (AI) are rare. This study statistically analyzed gastroenterologist judgments and AI results. Three hundred CE video clips (100 patients) were prepared. Five gastroenterologists classified the video clips into 3 groups (≥75% [high], 50%–75% [middle], and < 50% [low]) according to their subjective judgment of cleanliness. Visualization scores were calculated using an AI algorithm based on the predicted visible area, and the 5 gastroenterologists’ judgments and AI results were compared. The 5 gastroenterologists evaluated CE clip video quality as “high” in 10.7% to 36.7% and as “low” in 28.7% to 60.3% and 29.7% of cases, respectively. The AI evaluated CE clip video quality as “high” in 27.7% and as “low” in 29.7% of cases. Repeated-measures analysis of variance (ANOVA) revealed significant differences in the 6 evaluation indicators (5 gastroenterologists and 1 AI) (P < .001). Among the 300 judgments, 90 (30%) were consistent with 5 gastroenterologists’ judgments, and 82 (91.1%) agreed with the AI judgments. The “high” and “low” judgments of the gastroenterologists and AI agreed in 95.0% and 94.9% of cases, respectively. Bonferroni’s multiple comparison test showed no significant difference between 3 gastroenterologists and AI (P = .0961, P = 1.0000, and P = .0676, respectively) but a significant difference between the other 2 with AI (P < .0001). When evaluating CE images for cleanliness, the judgments of 5 gastroenterologists were relatively diverse. The AI produced a relatively universal judgment that was consistent with the gastroenterologists’ judgements. Lippincott Williams & Wilkins 2023-02-10 /pmc/articles/PMC9907992/ /pubmed/36820545 http://dx.doi.org/10.1097/MD.0000000000032883 Text en Copyright © 2023 the Author(s). Published by Wolters Kluwer Health, Inc. https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the Creative Commons Attribution License 4.0 (CCBY) (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle 4500
Ju, Jeongwoo
Oh, Hyun Sook
Lee, Yeoun Joo
Jung, Heechul
Lee, Jong-Hyuck
Kang, Ben
Choi, Sujin
Kim, Ji Hyun
Kim, Kyeong Ok
Chung, Yun Jin
Clean mucosal area detection of gastroenterologists versus artificial intelligence in small bowel capsule endoscopy
title Clean mucosal area detection of gastroenterologists versus artificial intelligence in small bowel capsule endoscopy
title_full Clean mucosal area detection of gastroenterologists versus artificial intelligence in small bowel capsule endoscopy
title_fullStr Clean mucosal area detection of gastroenterologists versus artificial intelligence in small bowel capsule endoscopy
title_full_unstemmed Clean mucosal area detection of gastroenterologists versus artificial intelligence in small bowel capsule endoscopy
title_short Clean mucosal area detection of gastroenterologists versus artificial intelligence in small bowel capsule endoscopy
title_sort clean mucosal area detection of gastroenterologists versus artificial intelligence in small bowel capsule endoscopy
topic 4500
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9907992/
https://www.ncbi.nlm.nih.gov/pubmed/36820545
http://dx.doi.org/10.1097/MD.0000000000032883
work_keys_str_mv AT jujeongwoo cleanmucosalareadetectionofgastroenterologistsversusartificialintelligenceinsmallbowelcapsuleendoscopy
AT ohhyunsook cleanmucosalareadetectionofgastroenterologistsversusartificialintelligenceinsmallbowelcapsuleendoscopy
AT leeyeounjoo cleanmucosalareadetectionofgastroenterologistsversusartificialintelligenceinsmallbowelcapsuleendoscopy
AT jungheechul cleanmucosalareadetectionofgastroenterologistsversusartificialintelligenceinsmallbowelcapsuleendoscopy
AT leejonghyuck cleanmucosalareadetectionofgastroenterologistsversusartificialintelligenceinsmallbowelcapsuleendoscopy
AT kangben cleanmucosalareadetectionofgastroenterologistsversusartificialintelligenceinsmallbowelcapsuleendoscopy
AT choisujin cleanmucosalareadetectionofgastroenterologistsversusartificialintelligenceinsmallbowelcapsuleendoscopy
AT kimjihyun cleanmucosalareadetectionofgastroenterologistsversusartificialintelligenceinsmallbowelcapsuleendoscopy
AT kimkyeongok cleanmucosalareadetectionofgastroenterologistsversusartificialintelligenceinsmallbowelcapsuleendoscopy
AT chungyunjin cleanmucosalareadetectionofgastroenterologistsversusartificialintelligenceinsmallbowelcapsuleendoscopy