Colonic polyp detection in endoscopic videos with single shot detection based deep Convolutional Neural Network Journal Article


Authors: Liu, M.; Jiang, J.; Wang, Z.
Article Title: Colonic polyp detection in endoscopic videos with single shot detection based deep Convolutional Neural Network
Abstract: A major rise in the prevalence and influence of colorectal cancer (CRC) leads to substantially increasing healthcare costs and even death. It is widely accepted that early detection and removal of colonic polyps can prevent CRC. Detection of colonic polyps in colonoscopy videos is problematic because of complex environment of colon and various shapes of polyps. Currently, researchers indicate feasibility of Convolutional Neural Network (CNN)-based detection of polyps but better feature extractors are needed to improve detection performance. In this paper, we investigated the potential of the single shot detector (SSD) framework for detecting polyps in colonoscopy videos. SSD is a one-stage method, which uses a feed-forward CNN to produce a collection of fixed-size bounding boxes for each object from different feature maps. Three different feature extractors, including ResNet50, VGG16, and InceptionV3 were assessed. Multi-scale feature maps integrated into SSD were designed for ResNet50 and InceptionV3, respectively. We validated this method on the 2015 MICCAI polyp detection challenge datasets, compared it with teams attended the challenge, YOLOV3 and two-stage method, Faster-RCNN. Our results demonstrated that the proposed method surpassed all the teams in MICCAI challenge and YOLOV3 and was comparable with two-stage method. Especially in detection speed aspect, our proposed method outperformed all the methods, met real-time application requirement. Meanwhile, we also indicated that among all the feature extractors, InceptionV3 obtained the best result of precision and recall. In conclusion, SSD- based method achieved excellent detection performance in polyp detection and can potentially improve diagnostic accuracy and efficiency. © 2013 IEEE.
Keywords: complex environments; endoscopy; diseases; neural networks; convolution; convolutional neural network; detection performance; colorectal cancers (crc); deep neural networks; colonic polyp detection; single shot detector (ssd); tunneling (excavation); multi-scale features; real-time application; single shots
Journal Title: IEEE Access
Volume: 7
ISSN: 2169-3536
Publisher: IEEE  
Date Published: 2019-01-01
Start Page: 45058
End Page: 45066
Language: English
DOI: 10.1109/access.2019.2921027
PROVIDER: scopus
PMCID: PMC7889061
PUBMED: 33604228
DOI/URL:
Notes: Article -- Export Date: 2 August 2019 -- Source: Scopus
Altmetric
Citation Impact
BMJ Impact Analytics
MSK Authors
  1. Jue Jiang
    78 Jiang