| Literature DB >> 30508880 |
Youngbae Hwang1, Junseok Park2, Yun Jeong Lim3, Hoon Jai Chun4.
Abstract
Unlike wired endoscopy, capsule endoscopy requires additional time for a clinical specialist to review the operation and examine the lesions. To reduce the tedious review time and increase the accuracy of medical examinations, various approaches have been reported based on artificial intelligence for computer-aided diagnosis. Recently, deep learning-based approaches have been applied to many possible areas, showing greatly improved performance, especially for image-based recognition and classification. By reviewing recent deep learning-based approaches for clinical applications, we present the current status and future direction of artificial intelligence for capsule endoscopy.Entities:
Keywords: Artificial intelligence; Capsule endoscopy; Deep learning; Lesion detection
Year: 2018 PMID: 30508880 PMCID: PMC6283750 DOI: 10.5946/ce.2018.173
Source DB: PubMed Journal: Clin Endosc ISSN: 2234-2400
State-of-the-Art Deep Learning Based Methods for Capsule Endoscopy
| Study | Class | No. of training/testing images | No. of patients or videos | Features | Accuracy | Sensitivity/Specificity |
|---|---|---|---|---|---|---|
| Zou et al. (2015) [ | Localization[ | 60K/15K | 25 patients | Alexnet | 95.5% | No info. |
| Seguí et al. (2016) [ | Scene classification[ | 100K/20K | 50 videos | CNN | 96.0% | No info. |
| Jia et al. (2016) [ | Bleeding | 8.2K/1.8K | No info. | Alexnet | 99.9% | 99.2%/No info. |
| Li et al. (2017) [ | Haemorrhage | 9,672/2,418 | No info. | LeNet | 100% | 98.7%/No info. |
| AlexNet | ||||||
| GoogLeNet | ||||||
| VGG-Net | ||||||
| Yuan et al. (2017) [ | Polyp | 4,000 (No info.) | 35 patients | SSAE | 98.0% | No info. |
| Iakovidis et al. (2018) [ | Various lesions[ | 465/233 | 1,063 volunteers | CNN | 96.3% | 90.7%/88.2% |
| 852/344 | No info. | |||||
| He et al. (2018) [ | Hookworm | 400K/40K | 11 patients | CNN | 88.5% | 84.6%/88.6% |
| Leenhardt et al. (2018) [ | Angiectasia | 600/600 | 200 videos | CNN | No info. | 100%/96% |
CNN, convolutional neural networks; SSAE, stacked sparse autoencoder.
Localization, Localization of stomach, small intestine, colon.
Scene classification, Scene classification of Bubble, wrinkle, turbid, wall, clear.
Various lesions, Gastritis, Cancer, bleeding, ulcer.