Medical Image Classification Based on Information Interaction Perception Mechanism.
Wang WeiYihui HuYanhong LuoWang XinPublished in: Computational intelligence and neuroscience (2021)
Colorectal cancer originates from adenomatous polyps. Adenomatous polyps start out as benign, but over time they can become malignant and even lead to complications and death which will spread to adherent and surrounding organs over time, such as lymph nodes, liver, or lungs, eventually leading to complications and death. Factors such as operator's experience shortage and visual fatigue will directly affect the diagnostic accuracy of colonoscopy. To relieve the pressure on medical imaging personnel, this paper proposed a network model for colonic polyp detection using colonoscopy images. Considering the unnoticeable surface texture of colonic polyps, this paper designed a channel information interaction perception (CIIP) module. Based on this module, an information interaction perception network (IIP-Net) is proposed. In order to improve the accuracy of classification and reduce the cost of calculation, the network used three classifiers for classification: fully connected (FC) structure, global average pooling fully connected (GAP-FC) structure, and convolution global average pooling (C-GAP) structure. We evaluated the performance of IIP-Net by randomly selecting colonoscopy images from a gastroscopy database. The experimental results showed that the overall accuracy of IIP-NET54-GAP-FC module is 99.59%, and the accuracy of colonic polyp is 99.40%. By contrast, our IIP-NET54-GAP-FC performed extremely well.
Keyphrases
- deep learning
- convolutional neural network
- machine learning
- chronic rhinosinusitis
- lymph node
- healthcare
- health information
- ulcerative colitis
- colorectal cancer screening
- risk factors
- magnetic resonance
- high resolution
- optical coherence tomography
- adverse drug
- network analysis
- mass spectrometry
- magnetic resonance imaging
- depressive symptoms
- sleep quality
- loop mediated isothermal amplification
- neural network
- early stage