Copyright
©The Author(s) 2024.
World J Gastrointest Surg. Apr 27, 2024; 16(4): 988-998
Published online Apr 27, 2024. doi: 10.4240/wjgs.v16.i4.988
Published online Apr 27, 2024. doi: 10.4240/wjgs.v16.i4.988
Modality | Clinical presentation/ diagnosis | Application |
Upper GI endoscopy | Barrett’s oesophagus | Identification of early cancerous lesion; target site for biopsy; endoscopic assistance |
Oesophageal cancer | In the diagnosis of SCC | |
H. pylori infection | Atrophy vs metaplasia | |
Gastric cancer | Tumor vs non tumorous tissue; depth of invasion | |
Capsule endoscopy | GI bleed | Source of bleed; detecting pathologic lesions such as erosions and ulcers |
Celiac | Finding villous atrophy | |
Colonoscopy | Colorectal cancer | Bowel preparation assessment; adenoma detection; assistance |
Ulcerative colitis | Severity and relapses | |
Ultrasound-based test-fibro scan/elastography | Various liver diseases; benign & malignant | Fibrosis stage |
Pancreatic diseases | Tumour assessment, degree of intrapancreatic fat | |
GI pathology | Survival prediction in colorectal cancer; identification of MSI; HCC vs cholangiocarcinoma; predict prognosis and survival in HCC |
Disease/pathology | Aim | Artificial intelligence used | Ref. |
GERD, atrophic gastritis | Diagnosis | Artificial neural network | Pace et al[45], 2005; Lahner et al[50], 2005 |
Acute pancreatitis | Prediction of prognosis- comparing with RANSON, APACHE score | Artificial neural network | Yang et al[51], 2019 |
Ulcerative colitis | Prediction of prognosis after apheresis therapy | Artificial neural network | Takayama et al[52], 2015 |
Colorectal cancer | To predict lymph node metastasis | SVM | Ichimasa et al[53], 2018 |
Recognition of ureter in endoscopic images | Convolutional neural network | Harangi et al[54], 2017 | |
To distinguish normal colonic mucosa from malignant lesions with confocal laser endomicroscopy | Fractal analysis and neural network modelling | Ştefănescu et al[55], 2016 | |
Differentiation of colonic carcinoma from adenoma and healthy mucosa using hyperspectral imaging | Artificial neural network | Jansen-Winkeln et al[56], 2021 | |
Gastric cancer | To define safe dissection planes | Deep learning model based on u net | Kumazu et al[57], 2021 |
GI bleed | Predicting mortality, recurrent bleeding, need for therapeutic intervention | Artificial neural network | Das et al[58], 2003 |
GI polyp | On colonoscopy | SVM | Billah et al[59], 2017 |
HBV related fibrosis | Shear wave elastography | Convolutional neural network | Wang et al[60], 2019 |
Pancreatic adenocarcinoma | Image analysis of endoscopic ultrasound | Multilayer perception network | Săftoiu et al[61], 2012 |
- Citation: Kumar A, Goyal A. Emerging molecules, tools, technology, and future of surgical knife in gastroenterology. World J Gastrointest Surg 2024; 16(4): 988-998
- URL: https://www.wjgnet.com/1948-9366/full/v16/i4/988.htm
- DOI: https://dx.doi.org/10.4240/wjgs.v16.i4.988