Cargando…

A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound

BACKGROUND: Detailed evaluation of bile duct (BD) is main focus during endoscopic ultrasound (EUS). The aim of this study was to develop a system for EUS BD scanning augmentation. METHODS: The scanning was divided into 4 stations. We developed a station classification model and a BD segmentation mod...

Descripción completa

Detalles Bibliográficos
Autores principales: Yao, Liwen, Zhang, Jun, Liu, Jun, Zhu, Liangru, Ding, Xiangwu, Chen, Di, Wu, Huiling, Lu, Zihua, Zhou, Wei, Zhang, Lihui, Xu, Bo, Hu, Shan, Zheng, Biqing, Yang, Yanning, Yu, Honggang
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7921468/
https://www.ncbi.nlm.nih.gov/pubmed/33639404
http://dx.doi.org/10.1016/j.ebiom.2021.103238
_version_ 1783658476070764544
author Yao, Liwen
Zhang, Jun
Liu, Jun
Zhu, Liangru
Ding, Xiangwu
Chen, Di
Wu, Huiling
Lu, Zihua
Zhou, Wei
Zhang, Lihui
Xu, Bo
Hu, Shan
Zheng, Biqing
Yang, Yanning
Yu, Honggang
author_facet Yao, Liwen
Zhang, Jun
Liu, Jun
Zhu, Liangru
Ding, Xiangwu
Chen, Di
Wu, Huiling
Lu, Zihua
Zhou, Wei
Zhang, Lihui
Xu, Bo
Hu, Shan
Zheng, Biqing
Yang, Yanning
Yu, Honggang
author_sort Yao, Liwen
collection PubMed
description BACKGROUND: Detailed evaluation of bile duct (BD) is main focus during endoscopic ultrasound (EUS). The aim of this study was to develop a system for EUS BD scanning augmentation. METHODS: The scanning was divided into 4 stations. We developed a station classification model and a BD segmentation model with 10681 images and 2529 images, respectively. 1704 images and 667 images were applied to classification and segmentation internal validation. For classification and segmentation video validation, 264 and 517 videos clips were used. For man-machine contest, an independent data set contained 120 images was applied. 799 images from other two hospitals were used for external validation. A crossover study was conducted to evaluate the system effect on reducing difficulty in ultrasound images interpretation. FINDINGS: For classification, the model achieved an accuracy of 93.3% in image set and 90.1% in video set. For segmentation, the model had a dice of 0.77 in image set, sensitivity of 89.48% and specificity of 82.3% in video set. For external validation, the model achieved 82.6% accuracy in classification. In man-machine contest, the models achieved 88.3% accuracy in classification and 0.72 dice in BD segmentation, which is comparable to that of expert. In the crossover study, trainees’ accuracy improved from 60.8% to 76.3% (P < 0.01, 95% C.I. 20.9–27.2). INTERPRETATION: We developed a deep learning-based augmentation system for EUS BD scanning augmentation. FUNDING: Hubei Provincial Clinical Research Center for Digestive Disease Minimally Invasive Incision, Hubei Province Major Science and Technology Innovation Project, National Natural Science Foundation of China.
format Online
Article
Text
id pubmed-7921468
institution National Center for Biotechnology Information
language English
publishDate 2021
publisher Elsevier
record_format MEDLINE/PubMed
spelling pubmed-79214682021-03-12 A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound Yao, Liwen Zhang, Jun Liu, Jun Zhu, Liangru Ding, Xiangwu Chen, Di Wu, Huiling Lu, Zihua Zhou, Wei Zhang, Lihui Xu, Bo Hu, Shan Zheng, Biqing Yang, Yanning Yu, Honggang EBioMedicine Research Paper BACKGROUND: Detailed evaluation of bile duct (BD) is main focus during endoscopic ultrasound (EUS). The aim of this study was to develop a system for EUS BD scanning augmentation. METHODS: The scanning was divided into 4 stations. We developed a station classification model and a BD segmentation model with 10681 images and 2529 images, respectively. 1704 images and 667 images were applied to classification and segmentation internal validation. For classification and segmentation video validation, 264 and 517 videos clips were used. For man-machine contest, an independent data set contained 120 images was applied. 799 images from other two hospitals were used for external validation. A crossover study was conducted to evaluate the system effect on reducing difficulty in ultrasound images interpretation. FINDINGS: For classification, the model achieved an accuracy of 93.3% in image set and 90.1% in video set. For segmentation, the model had a dice of 0.77 in image set, sensitivity of 89.48% and specificity of 82.3% in video set. For external validation, the model achieved 82.6% accuracy in classification. In man-machine contest, the models achieved 88.3% accuracy in classification and 0.72 dice in BD segmentation, which is comparable to that of expert. In the crossover study, trainees’ accuracy improved from 60.8% to 76.3% (P < 0.01, 95% C.I. 20.9–27.2). INTERPRETATION: We developed a deep learning-based augmentation system for EUS BD scanning augmentation. FUNDING: Hubei Provincial Clinical Research Center for Digestive Disease Minimally Invasive Incision, Hubei Province Major Science and Technology Innovation Project, National Natural Science Foundation of China. Elsevier 2021-02-24 /pmc/articles/PMC7921468/ /pubmed/33639404 http://dx.doi.org/10.1016/j.ebiom.2021.103238 Text en © 2021 The Authors http://creativecommons.org/licenses/by-nc-nd/4.0/ This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Research Paper
Yao, Liwen
Zhang, Jun
Liu, Jun
Zhu, Liangru
Ding, Xiangwu
Chen, Di
Wu, Huiling
Lu, Zihua
Zhou, Wei
Zhang, Lihui
Xu, Bo
Hu, Shan
Zheng, Biqing
Yang, Yanning
Yu, Honggang
A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound
title A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound
title_full A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound
title_fullStr A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound
title_full_unstemmed A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound
title_short A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound
title_sort deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound
topic Research Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7921468/
https://www.ncbi.nlm.nih.gov/pubmed/33639404
http://dx.doi.org/10.1016/j.ebiom.2021.103238
work_keys_str_mv AT yaoliwen adeeplearningbasedsystemforbileductannotationandstationrecognitioninlinearendoscopicultrasound
AT zhangjun adeeplearningbasedsystemforbileductannotationandstationrecognitioninlinearendoscopicultrasound
AT liujun adeeplearningbasedsystemforbileductannotationandstationrecognitioninlinearendoscopicultrasound
AT zhuliangru adeeplearningbasedsystemforbileductannotationandstationrecognitioninlinearendoscopicultrasound
AT dingxiangwu adeeplearningbasedsystemforbileductannotationandstationrecognitioninlinearendoscopicultrasound
AT chendi adeeplearningbasedsystemforbileductannotationandstationrecognitioninlinearendoscopicultrasound
AT wuhuiling adeeplearningbasedsystemforbileductannotationandstationrecognitioninlinearendoscopicultrasound
AT luzihua adeeplearningbasedsystemforbileductannotationandstationrecognitioninlinearendoscopicultrasound
AT zhouwei adeeplearningbasedsystemforbileductannotationandstationrecognitioninlinearendoscopicultrasound
AT zhanglihui adeeplearningbasedsystemforbileductannotationandstationrecognitioninlinearendoscopicultrasound
AT xubo adeeplearningbasedsystemforbileductannotationandstationrecognitioninlinearendoscopicultrasound
AT hushan adeeplearningbasedsystemforbileductannotationandstationrecognitioninlinearendoscopicultrasound
AT zhengbiqing adeeplearningbasedsystemforbileductannotationandstationrecognitioninlinearendoscopicultrasound
AT yangyanning adeeplearningbasedsystemforbileductannotationandstationrecognitioninlinearendoscopicultrasound
AT yuhonggang adeeplearningbasedsystemforbileductannotationandstationrecognitioninlinearendoscopicultrasound
AT yaoliwen deeplearningbasedsystemforbileductannotationandstationrecognitioninlinearendoscopicultrasound
AT zhangjun deeplearningbasedsystemforbileductannotationandstationrecognitioninlinearendoscopicultrasound
AT liujun deeplearningbasedsystemforbileductannotationandstationrecognitioninlinearendoscopicultrasound
AT zhuliangru deeplearningbasedsystemforbileductannotationandstationrecognitioninlinearendoscopicultrasound
AT dingxiangwu deeplearningbasedsystemforbileductannotationandstationrecognitioninlinearendoscopicultrasound
AT chendi deeplearningbasedsystemforbileductannotationandstationrecognitioninlinearendoscopicultrasound
AT wuhuiling deeplearningbasedsystemforbileductannotationandstationrecognitioninlinearendoscopicultrasound
AT luzihua deeplearningbasedsystemforbileductannotationandstationrecognitioninlinearendoscopicultrasound
AT zhouwei deeplearningbasedsystemforbileductannotationandstationrecognitioninlinearendoscopicultrasound
AT zhanglihui deeplearningbasedsystemforbileductannotationandstationrecognitioninlinearendoscopicultrasound
AT xubo deeplearningbasedsystemforbileductannotationandstationrecognitioninlinearendoscopicultrasound
AT hushan deeplearningbasedsystemforbileductannotationandstationrecognitioninlinearendoscopicultrasound
AT zhengbiqing deeplearningbasedsystemforbileductannotationandstationrecognitioninlinearendoscopicultrasound
AT yangyanning deeplearningbasedsystemforbileductannotationandstationrecognitioninlinearendoscopicultrasound
AT yuhonggang deeplearningbasedsystemforbileductannotationandstationrecognitioninlinearendoscopicultrasound