Asset Details
MbrlCatalogueTitleDetail
Do you wish to reserve the book?
Real-time artificial intelligence for detection of upper gastrointestinal cancer by endoscopy: a multicentre, case-control, diagnostic study
by
He, Longjun
, Yuan, Chu-ming
, Xu, Rui-hua
, Wu, Qiubao
, Luo, Linna
, Jing, Bingzhong
, Li, Yin
, Seeruttun, Sharvesh Raj
, Chen, Hai-xin
, He, Caisheng
, He, Yun
, Jin, Ying
, Wang, Zixian
, Chen, Bin
, Huang, Jun
, Xu, Guoliang
, Chen, Qin-ming
, Huang, De-wang
, Zhou, Feng
, Li, Bin
, Lin, Shao-bin
, Luo, Huiyan
, Tan, Wencheng
, Li, Chaofeng
, Deng, Yishu
, Pu, Heng-ying
in
Accuracy
/ Artificial intelligence
/ Clinical medicine
/ Endoscopy
/ Esophageal cancer
/ Esophagus
/ Gastric cancer
/ Gastrointestinal cancer
/ Hematology, Oncology, and Palliative Medicine
/ Hospitals
/ Learning algorithms
/ Medical diagnosis
/ Medical prognosis
/ Studies
/ Tumors
2019
Hey, we have placed the reservation for you!
By the way, why not check out events that you can attend while you pick your title.
You are currently in the queue to collect this book. You will be notified once it is your turn to collect the book.
Oops! Something went wrong.
Looks like we were not able to place the reservation. Kindly try again later.
Are you sure you want to remove the book from the shelf?
Real-time artificial intelligence for detection of upper gastrointestinal cancer by endoscopy: a multicentre, case-control, diagnostic study
by
He, Longjun
, Yuan, Chu-ming
, Xu, Rui-hua
, Wu, Qiubao
, Luo, Linna
, Jing, Bingzhong
, Li, Yin
, Seeruttun, Sharvesh Raj
, Chen, Hai-xin
, He, Caisheng
, He, Yun
, Jin, Ying
, Wang, Zixian
, Chen, Bin
, Huang, Jun
, Xu, Guoliang
, Chen, Qin-ming
, Huang, De-wang
, Zhou, Feng
, Li, Bin
, Lin, Shao-bin
, Luo, Huiyan
, Tan, Wencheng
, Li, Chaofeng
, Deng, Yishu
, Pu, Heng-ying
in
Accuracy
/ Artificial intelligence
/ Clinical medicine
/ Endoscopy
/ Esophageal cancer
/ Esophagus
/ Gastric cancer
/ Gastrointestinal cancer
/ Hematology, Oncology, and Palliative Medicine
/ Hospitals
/ Learning algorithms
/ Medical diagnosis
/ Medical prognosis
/ Studies
/ Tumors
2019
Oops! Something went wrong.
While trying to remove the title from your shelf something went wrong :( Kindly try again later!
Do you wish to request the book?
Real-time artificial intelligence for detection of upper gastrointestinal cancer by endoscopy: a multicentre, case-control, diagnostic study
by
He, Longjun
, Yuan, Chu-ming
, Xu, Rui-hua
, Wu, Qiubao
, Luo, Linna
, Jing, Bingzhong
, Li, Yin
, Seeruttun, Sharvesh Raj
, Chen, Hai-xin
, He, Caisheng
, He, Yun
, Jin, Ying
, Wang, Zixian
, Chen, Bin
, Huang, Jun
, Xu, Guoliang
, Chen, Qin-ming
, Huang, De-wang
, Zhou, Feng
, Li, Bin
, Lin, Shao-bin
, Luo, Huiyan
, Tan, Wencheng
, Li, Chaofeng
, Deng, Yishu
, Pu, Heng-ying
in
Accuracy
/ Artificial intelligence
/ Clinical medicine
/ Endoscopy
/ Esophageal cancer
/ Esophagus
/ Gastric cancer
/ Gastrointestinal cancer
/ Hematology, Oncology, and Palliative Medicine
/ Hospitals
/ Learning algorithms
/ Medical diagnosis
/ Medical prognosis
/ Studies
/ Tumors
2019
Please be aware that the book you have requested cannot be checked out. If you would like to checkout this book, you can reserve another copy
We have requested the book for you!
Your request is successful and it will be processed during the Library working hours. Please check the status of your request in My Requests.
Oops! Something went wrong.
Looks like we were not able to place your request. Kindly try again later.
Real-time artificial intelligence for detection of upper gastrointestinal cancer by endoscopy: a multicentre, case-control, diagnostic study
Journal Article
Real-time artificial intelligence for detection of upper gastrointestinal cancer by endoscopy: a multicentre, case-control, diagnostic study
2019
Request Book From Autostore
and Choose the Collection Method
Overview
Upper gastrointestinal cancers (including oesophageal cancer and gastric cancer) are the most common cancers worldwide. Artificial intelligence platforms using deep learning algorithms have made remarkable progress in medical imaging but their application in upper gastrointestinal cancers has been limited. We aimed to develop and validate the Gastrointestinal Artificial Intelligence Diagnostic System (GRAIDS) for the diagnosis of upper gastrointestinal cancers through analysis of imaging data from clinical endoscopies.
This multicentre, case-control, diagnostic study was done in six hospitals of different tiers (ie, municipal, provincial, and national) in China. The images of consecutive participants, aged 18 years or older, who had not had a previous endoscopy were retrieved from all participating hospitals. All patients with upper gastrointestinal cancer lesions (including oesophageal cancer and gastric cancer) that were histologically proven malignancies were eligible for this study. Only images with standard white light were deemed eligible. The images from Sun Yat-sen University Cancer Center were randomly assigned (8:1:1) to the training and intrinsic verification datasets for developing GRAIDS, and the internal validation dataset for evaluating the performance of GRAIDS. Its diagnostic performance was evaluated using an internal and prospective validation set from Sun Yat-sen University Cancer Center (a national hospital) and additional external validation sets from five primary care hospitals. The performance of GRAIDS was also compared with endoscopists with three degrees of expertise: expert, competent, and trainee. The diagnostic accuracy, sensitivity, specificity, positive predictive value, and negative predictive value of GRAIDS and endoscopists for the identification of cancerous lesions were evaluated by calculating the 95% CIs using the Clopper-Pearson method.
1 036 496 endoscopy images from 84 424 individuals were used to develop and test GRAIDS. The diagnostic accuracy in identifying upper gastrointestinal cancers was 0·955 (95% CI 0·952–0·957) in the internal validation set, 0·927 (0·925–0·929) in the prospective set, and ranged from 0·915 (0·913–0·917) to 0·977 (0·977–0·978) in the five external validation sets. GRAIDS achieved diagnostic sensitivity similar to that of the expert endoscopist (0·942 [95% CI 0·924–0·957] vs 0·945 [0·927–0·959]; p=0·692) and superior sensitivity compared with competent (0·858 [0·832–0·880], p<0·0001) and trainee (0·722 [0·691–0·752], p<0·0001) endoscopists. The positive predictive value was 0·814 (95% CI 0·788–0·838) for GRAIDS, 0·932 (0·913–0·948) for the expert endoscopist, 0·974 (0·960–0·984) for the competent endoscopist, and 0·824 (0·795–0·850) for the trainee endoscopist. The negative predictive value was 0·978 (95% CI 0·971–0·984) for GRAIDS, 0·980 (0·974–0·985) for the expert endoscopist, 0·951 (0·942–0·959) for the competent endoscopist, and 0·904 (0·893–0·916) for the trainee endoscopist.
GRAIDS achieved high diagnostic accuracy in detecting upper gastrointestinal cancers, with sensitivity similar to that of expert endoscopists and was superior to that of non-expert endoscopists. This system could assist community-based hospitals in improving their effectiveness in upper gastrointestinal cancer diagnoses.
The National Key R&D Program of China, the Natural Science Foundation of Guangdong Province, the Science and Technology Program of Guangdong, the Science and Technology Program of Guangzhou, and the Fundamental Research Funds for the Central Universities.
Publisher
Elsevier Ltd,Elsevier Limited
This website uses cookies to ensure you get the best experience on our website.