Copyright
©The Author(s) 2020.
World J Gastroenterol. Oct 14, 2020; 26(38): 5784-5796
Published online Oct 14, 2020. doi: 10.3748/wjg.v26.i38.5784
Published online Oct 14, 2020. doi: 10.3748/wjg.v26.i38.5784
I-scan optical enhancement | NBI | BLI | |
Ref. | Everson et al[11] | Sharma et al[12] | Subramaniam et al[13] |
Features assessed | Mucosal pit pattern, vessels | Mucosal pit pattern, vessels | Colour, mucosal pit patterns, vessels |
Accuracy | Experts = 84%, non-experts = 76% | 85% | Experts = 95.2%, non-experts = 88.3% |
Sensitivity | Experts = 77%, non-experts = 81% | 80% | Experts = 96%, non-experts = 95.7% |
Specificity | Experts = 92%, non-experts = 70% | 88% | Experts = 94.4%, non-experts = 80.8% |
Ref. | Year | Endoscopic processor | Study design | Study aim | Algorithm used | No. of patients | No. of BE images | Sensitivity | Specificity |
Van der Sommen et al[21] | 2016 | WLE Fujinon | Retrospective | Assess feasibility of computer system to detect early neoplasia in BE | Machine learning, specific textures and colour filters | 44 | 100 (60 dysplasia, 40 NDBE) | 83% (per image), 86% (per patient) | 83% (per image), 87% (per patient) |
Sweger et al[28] | 2017 | VLE | Retrospective | Assess feasibility of computer algorithm to identify BE dysplasia on ex vivo VLE images | Several machine learning methods; discriminant analysis, support vector machine, AdaBoost, random forest, K-nearest neighbors | 19 | 60 (30 dysplasia, 30 NDBE) | 90% | 93% |
Ebigbo et al[29] | 2018 | WLE, NBI, Olympus | Retrospective | Detection of early oesophageal cancer | Deep CNN with a residual net architecture | 50 with early neoplasia | 248 | 97% (WLE), 94% (NBI) | 88% (WLE), 80% (NBI) |
de Groof et al[30] | 2019 | WLE, Fujinon | Prospective | Develop CAD to detect early neoplasia in BE | Supervised Machine learning. Trained on colour and texture features | 60 | 60 (40 dysplasia, 20 NDBE) | 95% | 85% |
de Groof et al[22] | 2020 | WLE Fujinon, WLE Olympus | Retrospective, Prospective | Develop and validate deep learning CAD to improve detection of early neoplasia in BE | CNN pretrained on GastroNet. Hybrid ResNet/U-Net model | 669 | 1704 (899 dysplasia, 805 NDBE) | 90% | 88% |
Hashimoto et al[31] | 2020 | WLE, Olympus | Retrospective | Assess if CNN can aid in detecting early neoplasia in BE | CNN pretrained on image net and based on Xception architecture and YOLO v2 | 100 | 1832 (916 dysplasia, 916 NDBE) | 96.4% | 94.2% |
de Groof et al[23] | 2020 | WLE, Fujinon | Prospective | Evaluate CAD assessment of early neoplasia during live endoscopy | CNN pretrained on GastroNet; hybrid ResNet/U-Net Model | 20 | - | 91% | 89% |
Struyvenberg MR et al[27] | 2020 | VLE | Prospective | Evaluate feasibility of automatic data extraction followed by CAD using mutiframe approach to detect to dysplasia in BE | CAD multiframe analysis with principal component analysis | 29 | - | - | - |
Ref. | Year | Endoscopic processor | Study design | Study aim | Algorithm used | No. of patients | No. of images | Sensitivity | Specificity |
Shin et al[37] | 2015 | High resolution micro-endoscopy | Retrospective | Differentiate neoplastic and non-neoplastic squamous oesophageal mucosa | Quantitative image analysis. Two-class linear discriminant analysis to develop classifier | 177 | 375 | 87% | 97% |
Quang et al[38] | 2016 | High resolution micro-endoscopy | Retrospective | Differentiate neoplastic and non-neoplastic squamous oesophageal mucosa | Two-class linear discriminant analysis to develop classifier | 3 | - | 95% | 91% |
Horie et al[39] | 2018 | WLE, NBI, Olympus | Retrospective | Ability of AI to detect oesophageal cancer | Deep CNN (Multibox detector architecture) | 481 | - | 97% | - |
Everson et al[16] | 2019 | Magnified NBI, Olympus | Retrospective | Develop AI system to classify IPCL patterns as normal/abnormal in endoscopically resectable lesions real time | CNN, explicit class activation maps generated to depict area of interest for CNN | 17 | 7046 | 89% | 98% |
Nakagawa et al[34] | 2019 | Magnified and non-magnified, NBI, BLI, Olympus, Fujifilm | Retrospective | Predict depth of invasion of ESCN | Deep CNN (multibox detector architecture) | 959 | 15,252 | 90.1% | 95.8% |
Kumagai et al[36] | 2019 | ECS | Retrospective | Deep learning AI to analyse ECS images as possible replacement of biopsy-based histology | CNN constructed based on GoogLeNet | - | 6235 | 92.6% | 89.3% |
Zhao et al[40] | 2019 | ME NBI, Olympus | Retrospective | Classification of IPCLs to improve ESCN detection | A double-labeling fully convolutional network | 219 | - | 87% | 84.1% |
Guo et al[3] | 2020 | ME and non-ME NBI, olympus | Retrospective | Develop a CAD for real-time diagnosis of ESCN | Model based on SegNet architecture | 2672 | 13144 images (4250 malignant, 8894 non-cancerous), 168865 video frames | Images = 98.04%, non-magnified video = 60.8%, magnified video = 96.1% | Images = 95.03%, non-magnified /magnified video = 99.9% |
Tokai et al[41] | 2020 | WLE, NBI, Olympus | Retrospective | Ability of AI to measure squamous cell cancer depth | Deep CNN | - | 2044 | 84.1% | 73.3% |
Ohmori et al[42] | 2020 | Magnified and non-magnified, WLE, NBI, BLI, Olympus, Fujifilm | Retrospective | Detect Oesophageal squamous cell cancer | CNN | - | 11806 non- magnified images, 11483 magnified images | Non-ME WLE = 90%, non-ME NBI/BLI = 100%, ME = 98% | Non-ME WLE = 76%, non-ME NBI/BLI = 63%, ME = 56% |
- Citation: Hussein M, González-Bueno Puyal J, Mountney P, Lovat LB, Haidry R. Role of artificial intelligence in the diagnosis of oesophageal neoplasia: 2020 an endoscopic odyssey. World J Gastroenterol 2020; 26(38): 5784-5796
- URL: https://www.wjgnet.com/1007-9327/full/v26/i38/5784.htm
- DOI: https://dx.doi.org/10.3748/wjg.v26.i38.5784