Real‐time artificial intelligence for endoscopic diagnosis of early esophageal squamous cell cancer (with video)
Background and aims Endoscopic diagnosis of early esophageal squamous cell cancer (ESCC) is complicated and dependent on operators' experience. This study aimed to develop an artificial intelligence (AI) model for automatic diagnosis of early ESCC. Methods Non‐magnifying and magnifying endoscop...
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Published in | Digestive endoscopy Vol. 33; no. 7; pp. 1075 - 1084 |
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Main Authors | , , , , , , , , , , , , , |
Format | Journal Article |
Language | English |
Published |
Australia
01.11.2021
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Subjects | |
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Abstract | Background and aims
Endoscopic diagnosis of early esophageal squamous cell cancer (ESCC) is complicated and dependent on operators' experience. This study aimed to develop an artificial intelligence (AI) model for automatic diagnosis of early ESCC.
Methods
Non‐magnifying and magnifying endoscopic images of normal/noncancerous lesions, early ESCC, and advanced esophageal cancer (AEC) were retrospectively obtained from Qilu Hospital of Shandong University. A total of 10,988 images from 5075 cases were chosen for training and validation. Another 2309 images from 1055 cases were collected for testing. One hundred and four real‐time videos were also collected to evaluate the diagnostic performance of the AI model. The diagnostic performance of the AI model was compared with endoscopists by magnifying images and the assistant efficiency of the AI model for novices was evaluated.
Results
The AI diagnosis for non‐magnifying images showed a per‐patient accuracy, sensitivity, and specificity of 99.5%, 100%, 99.5% for white light imaging, and 97.0%, 97.2%, 96.4% for optical enhancement/iodine straining images. Regarding diagnosis for magnifying images, the per‐patient accuracy, sensitivity, and specificity were 88.1%, 90.9%, and 85.0%. The diagnostic accuracy of the AI model was similar to experts (84.5%, P = 0.205) and superior to novices (68.5%, P = 0.005). The diagnostic performance of novices was significantly improved by AI assistance. When it comes to the diagnosis for real‐time videos, the AI model showed acceptable performance as well.
Conclusions
The AI model could accurately recognize early ESCC among noncancerous mucosa and AEC. It could be a potential assistant for endoscopists, especially for novices. |
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AbstractList | Endoscopic diagnosis of early esophageal squamous cell cancer (ESCC) is complicated and dependent on operators' experience. This study aimed to develop an artificial intelligence (AI) model for automatic diagnosis of early ESCC.BACKGROUND AND AIMSEndoscopic diagnosis of early esophageal squamous cell cancer (ESCC) is complicated and dependent on operators' experience. This study aimed to develop an artificial intelligence (AI) model for automatic diagnosis of early ESCC.Non-magnifying and magnifying endoscopic images of normal/noncancerous lesions, early ESCC, and advanced esophageal cancer (AEC) were retrospectively obtained from Qilu Hospital of Shandong University. A total of 10,988 images from 5075 cases were chosen for training and validation. Another 2309 images from 1055 cases were collected for testing. One hundred and four real-time videos were also collected to evaluate the diagnostic performance of the AI model. The diagnostic performance of the AI model was compared with endoscopists by magnifying images and the assistant efficiency of the AI model for novices was evaluated.METHODSNon-magnifying and magnifying endoscopic images of normal/noncancerous lesions, early ESCC, and advanced esophageal cancer (AEC) were retrospectively obtained from Qilu Hospital of Shandong University. A total of 10,988 images from 5075 cases were chosen for training and validation. Another 2309 images from 1055 cases were collected for testing. One hundred and four real-time videos were also collected to evaluate the diagnostic performance of the AI model. The diagnostic performance of the AI model was compared with endoscopists by magnifying images and the assistant efficiency of the AI model for novices was evaluated.The AI diagnosis for non-magnifying images showed a per-patient accuracy, sensitivity, and specificity of 99.5%, 100%, 99.5% for white light imaging, and 97.0%, 97.2%, 96.4% for optical enhancement/iodine straining images. Regarding diagnosis for magnifying images, the per-patient accuracy, sensitivity, and specificity were 88.1%, 90.9%, and 85.0%. The diagnostic accuracy of the AI model was similar to experts (84.5%, P = 0.205) and superior to novices (68.5%, P = 0.005). The diagnostic performance of novices was significantly improved by AI assistance. When it comes to the diagnosis for real-time videos, the AI model showed acceptable performance as well.RESULTSThe AI diagnosis for non-magnifying images showed a per-patient accuracy, sensitivity, and specificity of 99.5%, 100%, 99.5% for white light imaging, and 97.0%, 97.2%, 96.4% for optical enhancement/iodine straining images. Regarding diagnosis for magnifying images, the per-patient accuracy, sensitivity, and specificity were 88.1%, 90.9%, and 85.0%. The diagnostic accuracy of the AI model was similar to experts (84.5%, P = 0.205) and superior to novices (68.5%, P = 0.005). The diagnostic performance of novices was significantly improved by AI assistance. When it comes to the diagnosis for real-time videos, the AI model showed acceptable performance as well.The AI model could accurately recognize early ESCC among noncancerous mucosa and AEC. It could be a potential assistant for endoscopists, especially for novices.CONCLUSIONSThe AI model could accurately recognize early ESCC among noncancerous mucosa and AEC. It could be a potential assistant for endoscopists, especially for novices. Background and aims Endoscopic diagnosis of early esophageal squamous cell cancer (ESCC) is complicated and dependent on operators' experience. This study aimed to develop an artificial intelligence (AI) model for automatic diagnosis of early ESCC. Methods Non‐magnifying and magnifying endoscopic images of normal/noncancerous lesions, early ESCC, and advanced esophageal cancer (AEC) were retrospectively obtained from Qilu Hospital of Shandong University. A total of 10,988 images from 5075 cases were chosen for training and validation. Another 2309 images from 1055 cases were collected for testing. One hundred and four real‐time videos were also collected to evaluate the diagnostic performance of the AI model. The diagnostic performance of the AI model was compared with endoscopists by magnifying images and the assistant efficiency of the AI model for novices was evaluated. Results The AI diagnosis for non‐magnifying images showed a per‐patient accuracy, sensitivity, and specificity of 99.5%, 100%, 99.5% for white light imaging, and 97.0%, 97.2%, 96.4% for optical enhancement/iodine straining images. Regarding diagnosis for magnifying images, the per‐patient accuracy, sensitivity, and specificity were 88.1%, 90.9%, and 85.0%. The diagnostic accuracy of the AI model was similar to experts (84.5%, P = 0.205) and superior to novices (68.5%, P = 0.005). The diagnostic performance of novices was significantly improved by AI assistance. When it comes to the diagnosis for real‐time videos, the AI model showed acceptable performance as well. Conclusions The AI model could accurately recognize early ESCC among noncancerous mucosa and AEC. It could be a potential assistant for endoscopists, especially for novices. Endoscopic diagnosis of early esophageal squamous cell cancer (ESCC) is complicated and dependent on operators' experience. This study aimed to develop an artificial intelligence (AI) model for automatic diagnosis of early ESCC. Non-magnifying and magnifying endoscopic images of normal/noncancerous lesions, early ESCC, and advanced esophageal cancer (AEC) were retrospectively obtained from Qilu Hospital of Shandong University. A total of 10,988 images from 5075 cases were chosen for training and validation. Another 2309 images from 1055 cases were collected for testing. One hundred and four real-time videos were also collected to evaluate the diagnostic performance of the AI model. The diagnostic performance of the AI model was compared with endoscopists by magnifying images and the assistant efficiency of the AI model for novices was evaluated. The AI diagnosis for non-magnifying images showed a per-patient accuracy, sensitivity, and specificity of 99.5%, 100%, 99.5% for white light imaging, and 97.0%, 97.2%, 96.4% for optical enhancement/iodine straining images. Regarding diagnosis for magnifying images, the per-patient accuracy, sensitivity, and specificity were 88.1%, 90.9%, and 85.0%. The diagnostic accuracy of the AI model was similar to experts (84.5%, P = 0.205) and superior to novices (68.5%, P = 0.005). The diagnostic performance of novices was significantly improved by AI assistance. When it comes to the diagnosis for real-time videos, the AI model showed acceptable performance as well. The AI model could accurately recognize early ESCC among noncancerous mucosa and AEC. It could be a potential assistant for endoscopists, especially for novices. |
Author | Zheng, Meng‐Qi Li, Zhen You, Hang Yang, Xiao‐Yun Li, Yan‐Qing Ji, Rui Zhou, Ru‐Chen Feng, Jian Yang, Xiao‐Xiao Qu, Jun‐Yan Li, Li‐Xiang Zuo, Xiu‐Li Sun, Yi‐Ning Shao, Xue‐Jun |
Author_xml | – sequence: 1 givenname: Xiao‐Xiao surname: Yang fullname: Yang, Xiao‐Xiao organization: Shandong University – sequence: 2 givenname: Zhen surname: Li fullname: Li, Zhen organization: Shandong University – sequence: 3 givenname: Xue‐Jun surname: Shao fullname: Shao, Xue‐Jun organization: Qingdao Medicon Digital Engineering Co. Ltd – sequence: 4 givenname: Rui surname: Ji fullname: Ji, Rui organization: Shandong University – sequence: 5 givenname: Jun‐Yan surname: Qu fullname: Qu, Jun‐Yan organization: Shandong University – sequence: 6 givenname: Meng‐Qi surname: Zheng fullname: Zheng, Meng‐Qi organization: Shandong University – sequence: 7 givenname: Yi‐Ning surname: Sun fullname: Sun, Yi‐Ning organization: Shandong University – sequence: 8 givenname: Ru‐Chen surname: Zhou fullname: Zhou, Ru‐Chen organization: Shandong University – sequence: 9 givenname: Hang surname: You fullname: You, Hang organization: Shandong University – sequence: 10 givenname: Li‐Xiang surname: Li fullname: Li, Li‐Xiang organization: Shandong University – sequence: 11 givenname: Jian surname: Feng fullname: Feng, Jian organization: Qingdao Medicon Digital Engineering Co. Ltd – sequence: 12 givenname: Xiao‐Yun surname: Yang fullname: Yang, Xiao‐Yun organization: Shandong University – sequence: 13 givenname: Yan‐Qing surname: Li fullname: Li, Yan‐Qing organization: Shandong University – sequence: 14 givenname: Xiu‐Li surname: Zuo fullname: Zuo, Xiu‐Li email: zuoxiuli@sdu.edu.cn organization: Shandong University |
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Cites_doi | 10.1111/j.1442-2050.2009.01039.x 10.1016/j.asjsur.2016.10.005 10.1016/j.gie.2012.03.1234 10.1016/j.gie.2017.03.011 10.1055/s-0043-120830 10.1055/a-0855-3532 10.1007/s10388-016-0527-7 10.1016/S0016-5107(04)02736-1 10.1111/den.13354 10.1136/gutjnl-2017-314547 10.3322/caac.21492 10.1053/j.gastro.2017.07.041 10.1016/S1470-2045(19)30637-0 10.1016/j.gie.2018.07.037 10.1177/2050640618821800 10.1007/s10388-005-0060-6 10.1053/j.gastro.2018.06.037 10.1053/j.gastro.2019.06.025 10.1055/s-0034-1390858 10.1016/j.gie.2019.04.245 10.1016/j.gie.2019.09.034 10.1111/j.1443-1661.2001.0116b.x 10.1111/den.13317 10.4293/JSLS.2017.00053 10.1055/s-0042-105284 10.1016/j.gie.2020.05.043 10.1016/j.gie.2019.08.018 |
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References | 2019; 7 2017; 86 2019; 90 2019; 51 2019; 31 2018; 41 2005; 61 2018; 22 2012; 75 2018; 68 2010; 23 2018; 6 2018; 155 2018; 154 2015; 47 2019; 20 2017; 14 2019; 68 2019; 89 2020; 92 2020; 91 2020; 90 2019; 157 2016 2005; 2 2001; 13 2016; 48 e_1_2_7_6_1 e_1_2_7_5_1 e_1_2_7_4_1 e_1_2_7_3_1 e_1_2_7_9_1 e_1_2_7_8_1 e_1_2_7_7_1 e_1_2_7_19_1 e_1_2_7_18_1 e_1_2_7_17_1 e_1_2_7_16_1 e_1_2_7_2_1 e_1_2_7_15_1 e_1_2_7_14_1 e_1_2_7_13_1 e_1_2_7_12_1 e_1_2_7_11_1 e_1_2_7_10_1 e_1_2_7_26_1 e_1_2_7_27_1 e_1_2_7_28_1 e_1_2_7_29_1 e_1_2_7_30_1 e_1_2_7_25_1 e_1_2_7_24_1 e_1_2_7_23_1 e_1_2_7_22_1 e_1_2_7_21_1 e_1_2_7_20_1 |
References_xml | – volume: 13 start-page: S40 year: 2001 end-page: 1 article-title: Magnification endoscopy in the esophagus and stomach publication-title: Dig Endosc – volume: 48 start-page: 617 year: 2016 end-page: 24 article-title: Computer‐aided detection of early neoplastic lesions in Barrett's esophagus publication-title: Endoscopy – volume: 86 start-page: 839 year: 2017 end-page: 46 article-title: Computer‐aided detection of early Barrett's neoplasia using volumetric laser endomicroscopy publication-title: Gastrointest Endosc – volume: 91 start-page: 301 year: 2020 end-page: 9 article-title: Endoscopic detection and differentiation of esophageal lesions using a deep neural network publication-title: Gastrointest Endosc – volume: 47 start-page: 122 year: 2015 end-page: 8 article-title: Utility of intrapapillary capillary loops seen on magnifying narrow‐band imaging in estimating invasive depth of esophageal squamous cell carcinoma publication-title: Endoscopy – volume: 68 start-page: 394 year: 2018 end-page: 424 article-title: Global cancer statistics 2018: GLOBOCAN estimates of incidence and mortality worldwide for 36 cancers in 185 countries publication-title: CA Cancer J Clin – volume: 89 start-page: 25 year: 2019 end-page: 32 article-title: Diagnostic outcomes of esophageal cancer by artificial intelligence using convolutional neural networks publication-title: Gastrointest Endosc – volume: 20 start-page: 1645 year: 2019 end-page: 54 article-title: Real‐time artificial intelligence for detection of upper gastrointestinal cancer by endoscopy: A multicentre, case‐control, diagnostic study publication-title: Lancet Oncol – volume: 61 start-page: 435 year: 2005 end-page: 43 article-title: Magnification endoscopy publication-title: Gastrointest Endosc – volume: 157 start-page: 1044 year: 2019 end-page: 54 article-title: Gastroenterologist‐level identification of small‐bowel diseases and normal variants by capsule endoscopy using a deep‐learning model publication-title: Gastroenterology – volume: 75 year: 2012 article-title: Tu1588 usefulness of Japan Esophageal Society classification of magnified endoscopy for the diagnosis of superficial esophageal squamous cell carcinoma publication-title: Gastrointest Endosc – volume: 6 start-page: E139 year: 2018 end-page: 44 article-title: Deep learning analyzes infection by upper gastrointestinal endoscopy images publication-title: Endosc Int Open – volume: 90 start-page: 407 year: 2019 end-page: 14 article-title: Classification for invasion depth of esophageal squamous cell carcinoma using a deep neural network compared with experienced endoscopists publication-title: Gastrointest Endosc – volume: 23 start-page: 480 year: 2010 end-page: 6 article-title: Prospective evaluation of narrow‐band imaging endoscopy for screening of esophageal squamous mucosal high‐grade neoplasia in experienced and less experienced endoscopists publication-title: Dis Esophagus – volume: 2 start-page: 191 year: 2005 end-page: 7 article-title: Evaluation of microvascular patterns of superficial esophageal cancers by magnifying endoscopy publication-title: Esophagus – volume: 155 start-page: 1069 year: 2018 end-page: 78 article-title: Deep learning localizes and identifies polyps in real time with 96% accuracy in screening colonoscopy publication-title: Gastroenterology – volume: 31 start-page: 378 year: 2019 end-page: 88 article-title: Artificial intelligence and upper gastrointestinal endoscopy: Current status and future perspective publication-title: Dig Endosc – volume: 90 start-page: 41 year: 2020 end-page: 51 article-title: Real‐time automated diagnosis of precancerous lesions and early esophageal squamous cell carcinoma using a deep learning model (with videos) publication-title: Gastrointest Endosc – volume: 14 start-page: 105 year: 2017 end-page: 12 article-title: Prediction of the invasion depth of superficial squamous cell carcinoma based on microvessel morphology: Magnifying endoscopic classification of the Japan Esophageal Society publication-title: Esophagus – volume: 7 start-page: 297 year: 2019 end-page: 306 article-title: Artificial intelligence for the real‐time classification of intrapapillary capillary loop patterns in the endoscopic diagnosis of early oesophageal squamous cell carcinoma: A proof‐of‐conception study publication-title: United Eur Gastroenterol J – volume: 51 start-page: 522 year: 2019 end-page: 31 article-title: A deep neural network improves endoscopic detection of early gastric cancer without blind spots publication-title: Endoscopy – volume: 154 start-page: 421 year: 2018 end-page: 36 article-title: Endoscopic management of early adenocarcinoma and squamous cell carcinoma of the esophagus: Screening, diagnosis, and therapy publication-title: Gastroenterology – volume: 41 start-page: 210 year: 2018 end-page: 5 article-title: Esophageal cancer: Risk factors, genetic association, and treatment publication-title: Asian J Surg – volume: 68 start-page: 94 year: 2019 end-page: 100 article-title: Real‐time differentiation of adenomatous and hyperplastic diminutive colorectal polyps during analysis of unaltered videos of standard colonoscopy using a deep learning model publication-title: Gut – volume: 22 year: 2018 article-title: Evaluation of new technologies in gastrointestinal endoscopy publication-title: JSLS – volume: 31 start-page: 270 year: 2019 end-page: 2 article-title: Applications of artificial intelligence to endoscopy practice: The view from Japan Digestive Disease Week 2018 publication-title: Dig Endosc – start-page: 2921 year: 2016 end-page: 9 – volume: 92 start-page: 848 year: 2020 end-page: 55 article-title: Comparison of performances of artificial intelligence versus expert endoscopists for real‐time assisted diagnosis of esophageal squamous cell carcinoma (with video) publication-title: Gastrointest Endosc – ident: e_1_2_7_27_1 doi: 10.1111/j.1442-2050.2009.01039.x – ident: e_1_2_7_4_1 doi: 10.1016/j.asjsur.2016.10.005 – ident: e_1_2_7_10_1 doi: 10.1016/j.gie.2012.03.1234 – ident: e_1_2_7_17_1 doi: 10.1016/j.gie.2017.03.011 – ident: e_1_2_7_11_1 doi: 10.1055/s-0043-120830 – ident: e_1_2_7_15_1 doi: 10.1055/a-0855-3532 – ident: e_1_2_7_29_1 doi: 10.1007/s10388-016-0527-7 – ident: e_1_2_7_5_1 doi: 10.1016/S0016-5107(04)02736-1 – ident: e_1_2_7_19_1 doi: 10.1111/den.13354 – ident: e_1_2_7_14_1 doi: 10.1136/gutjnl-2017-314547 – ident: e_1_2_7_2_1 doi: 10.3322/caac.21492 – ident: e_1_2_7_3_1 doi: 10.1053/j.gastro.2017.07.041 – ident: e_1_2_7_18_1 doi: 10.1016/S1470-2045(19)30637-0 – ident: e_1_2_7_23_1 doi: 10.1016/j.gie.2018.07.037 – ident: e_1_2_7_30_1 doi: 10.1177/2050640618821800 – ident: e_1_2_7_9_1 doi: 10.1007/s10388-005-0060-6 – ident: e_1_2_7_13_1 doi: 10.1053/j.gastro.2018.06.037 – ident: e_1_2_7_12_1 doi: 10.1053/j.gastro.2019.06.025 – ident: e_1_2_7_7_1 doi: 10.1111/j.1442-2050.2009.01039.x – ident: e_1_2_7_28_1 doi: 10.1055/s-0034-1390858 – ident: e_1_2_7_22_1 doi: 10.1016/j.gie.2019.04.245 – ident: e_1_2_7_21_1 doi: 10.1016/j.gie.2019.09.034 – ident: e_1_2_7_8_1 doi: 10.1111/j.1443-1661.2001.0116b.x – ident: e_1_2_7_20_1 doi: 10.1111/den.13317 – ident: e_1_2_7_6_1 doi: 10.4293/JSLS.2017.00053 – ident: e_1_2_7_16_1 doi: 10.1055/s-0042-105284 – ident: e_1_2_7_25_1 doi: 10.1016/j.gie.2020.05.043 – ident: e_1_2_7_26_1 – ident: e_1_2_7_24_1 doi: 10.1016/j.gie.2019.08.018 |
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Snippet | Background and aims
Endoscopic diagnosis of early esophageal squamous cell cancer (ESCC) is complicated and dependent on operators' experience. This study... Endoscopic diagnosis of early esophageal squamous cell cancer (ESCC) is complicated and dependent on operators' experience. This study aimed to develop an... |
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SubjectTerms | artificial intelligence esophageal squamous cell cancer magnifying endoscopy |
Title | Real‐time artificial intelligence for endoscopic diagnosis of early esophageal squamous cell cancer (with video) |
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