| Literature DB >> 35721881 |
Hai-Yang Chen1, Peng Ge1, Jia-Yue Liu1, Jia-Lin Qu1, Fang Bao1, Cai-Ming Xu1, Hai-Long Chen1, Dong Shang1, Gui-Xin Zhang1.
Abstract
Given the breakthroughs in key technologies, such as image recognition, deep learning and neural networks, artificial intelligence (AI) continues to be increasingly developed, leading to closer and deeper integration with an increasingly data-, knowledge- and brain labor-intensive medical industry. As society continues to advance and individuals become more aware of their health needs, the problems associated with the aging of the population are receiving increasing attention, and there is an urgent demand for improving medical technology, prolonging human life and enhancing health. Digestive system diseases are the most common clinical diseases and are characterized by complex clinical manifestations and a general lack of obvious symptoms in the early stage. Such diseases are very difficult to diagnose and treat. In recent years, the incidence of diseases of the digestive system has increased. As AI applications in the field of health care continue to be developed, AI has begun playing an important role in the diagnosis and treatment of diseases of the digestive system. In this paper, the application of AI in assisted diagnosis and the application and prospects of AI in malignant and benign digestive system diseases are reviewed. ©The Author(s) 2022. Published by Baishideng Publishing Group Inc. All rights reserved.Entities:
Keywords: Artificial intelligence; Convolutional neural network; Deep learning; Digestive disease; Review
Mesh:
Year: 2022 PMID: 35721881 PMCID: PMC9157617 DOI: 10.3748/wjg.v28.i20.2152
Source DB: PubMed Journal: World J Gastroenterol ISSN: 1007-9327 Impact factor: 5.374
Figure 1Artificial intelligence and digestive diseases. AI: Artificial intelligence; GC: Gastric cancer; LC: Liver cancer; PDAC: Pancreatic ductal adenocarcinoma; UC: Ulcerative colitis; AP: Acute pancreatitis; GU: Gastric ulcer.
Figure 2Artificial intelligence and Intelligent guidance. CNN: Convolutional neural network; DL: Deep learning; ML: machine learning; CAD: Computer-aided design.
Recent researches on artificial intelligence in malignant digestive system diseases
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| Tang | Retrospective | Hospital | 2020 | GC | China | 45240 Images | DCNN | Accuracy: 85.1%-91.2%; Sensitivity: 85.9%-95.5%; Specificity: 81.7%-90.3%; AUC: 0.887-0.940 |
| Zhang | Retrospective | Hospital | 2020 | GC | China | 21,217 Images | CNN | Accuracy: 78.7% |
| Nagao | Retrospective | Hospital | 2020 | GC | Japan | 16557 images | CNN | Accuracy: WLI (94.5%); Accuracy: NBI (94.3%); Accuracy: Indigo (95.5%) |
| Song | Retrospective | Hospital | 2020 | GC | China | 3212 Images | DL | Accuracy: 0.873; Sensitivity: 0.996; Specificity: 0.843; AUC: 0.986 |
| Ma | Retrospective | Hospital | 2020 | GC | China | 763 Images | CNN | Accuracy: 98.4%; Specificity: 98.9%; Sensitivity: 98.0%; |
| Zhen | Retrospective | Hospital | 2020 | LC | China | 31608 Images | CNN | AUC: 0.946 |
| Giordano | Retrospective | Hospital | 2020 | LC | Italy | 167 Cases | SVM, RF | Accuracy: Exceeded 94% |
| Jeong | Retrospective | Cancer Institute | 2020 | LC | China | 1421 Cases | DL | AUC: 0.84 |
| Appelbaum | Retrospective | Hospital | 2020 | PDAC | America | 594 Cases | LR | AUC: 0.71 |
| Marya | Retrospective | Hospital | 2020 | PDAC | America | 1174461 EUS Images | EUS-CNN | Sensitivity: 99%; Specificity: 98% |
| Tonozuka | Retrospective | Hospital | 2020 | PDAC | Japan | 920 Cases | EUS-CAD | AUC: 0.94 |
GC: Gastric cancer; LC: Liver cancer; PDAC: Pancreatic ductal adenocarcinoma; DCNN: Deep convolutional neural network; CNN: Convolutional neural network; DL: Deep learning; SVM: Support vector machine; RF: Random forest; LR: Logistic regression; EUS-CNN: Endoscopic ultrasound convolutional neural network; EUS-CAD: Computer-assisted diagnosis system using deep learning analysis of EUS images; AUC: area under the curve; WLI: White-light imaging; NBI: Nonmagnifying narrow-band imaging.
Recent researches on artificial intelligence in benign digestive system diseases
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| Maeda | Retrospective | Hospital | 2019 | UC | Japan | 12900 Images | CAD | Sensitivity: 74%; Specificity: 97%; Accuracy: 91% |
| Popa | Retrospective | Hospital | 2020 | UC | Romania | 55 Cases | ML | Accuracy: 90%; AUC: 0.92 |
| Tong | Retrospective | Hospital | 2020 | UC | China | 6399 Cases | RF, CNN | Sensitivity: RF (0.89); Sensitivity: CNN (0.90) |
| Qiu | Retrospective | Hospital | 2019 | SAP | China | 263 Cases | ANN | Sensitivity: 80.99%; Specificity: 89.44% |
| Chen | Retrospective | Hospital | 2019 | SAP | China | 389 Cases | LR | Accuracy: 87.1% |
| Namikawa | Retrospective | Hospital | 2020 | Gastric ulcer | Japan | 720 Images | A-CNN | Sensitivity: 93.3%; Specificity: 99.0%; PPV: 99.1% |
| Steinbuss | Retrospective | Hospital | 2020 | Gastritis | Germany | 1230 Images | CNN | Accuracy: 84%; Sensitivity: 100%; Specificity: 93% |
| Ozawa | Retrospective | Hospital | 2020 | Colorectal polyps | Japan | 16418 Images | CNN | Sensitivity: 92%; PPV: 86% |
UC: Ulcerative colitis; SAP: Severe acute pancreatitis; CAD: Computer-aided diagnosis; ML: Machine learning; RF: Random forest; CNN: Convolutional neural network; ANN: Artificial neural networks; LR: Logistic regression; A-CNN: Advanced convolutional neural network; AUC: Area under the curve; PPV: Positive predictive value.