Stable polyp-scene classification via subsampling and residual learning from an imbalanced large dataset.
3D CNN
biological organs
cancer
colonoscopic video dataset
computer-assisted diagnosis system
computerised tomography
convolutional neural nets
endoscopes
false positive detection
feature extraction
high-performance CAD system
image classification
imbalanced large dataset
learning (artificial intelligence)
medical image processing
nonpolyp scenes
polyp-detection dataset
residual learning
stable polyp-scene classification method
subsampling
three-dimensional convolutional neural network
unstable polyp detection
Journal
Healthcare technology letters
ISSN: 2053-3713
Titre abrégé: Healthc Technol Lett
Pays: England
ID NLM: 101646459
Informations de publication
Date de publication:
Dec 2019
Dec 2019
Historique:
received:
19
09
2019
accepted:
02
10
2019
entrez:
11
2
2020
pubmed:
11
2
2020
medline:
11
2
2020
Statut:
epublish
Résumé
This Letter presents a stable polyp-scene classification method with low false positive (FP) detection. Precise automated polyp detection during colonoscopies is essential for preventing colon-cancer deaths. There is, therefore, a demand for a computer-assisted diagnosis (CAD) system for colonoscopies to assist colonoscopists. A high-performance CAD system with spatiotemporal feature extraction via a three-dimensional convolutional neural network (3D CNN) with a limited dataset achieved about 80% detection accuracy in actual colonoscopic videos. Consequently, further improvement of a 3D CNN with larger training data is feasible. However, the ratio between polyp and non-polyp scenes is quite imbalanced in a large colonoscopic video dataset. This imbalance leads to unstable polyp detection. To circumvent this, the authors propose an efficient and balanced learning technique for deep residual learning. The authors' method randomly selects a subset of non-polyp scenes whose number is the same number of still images of polyp scenes at the beginning of each epoch of learning. Furthermore, they introduce post-processing for stable polyp-scene classification. This post-processing reduces the FPs that occur in the practical application of polyp-scene classification. They evaluate several residual networks with a large polyp-detection dataset consisting of 1027 colonoscopic videos. In the scene-level evaluation, their proposed method achieves stable polyp-scene classification with 0.86 sensitivity and 0.97 specificity.
Identifiants
pubmed: 32038864
doi: 10.1049/htl.2019.0079
pii: HTL.2019.0079
pmc: PMC6952261
doi:
Types de publication
Journal Article
Langues
eng
Pagination
237-242Références
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