Title
Endoscopic Ultrasound Image Recognition Based on Data Mining and Deep Learning
Abstract
The recognition of medical images, especially endoscopic ultrasound images, has the characteristics of changing images and insignificant gray-scale changes, which requires repeated observation and comparison by medical staff. In view of the above-mentioned characteristics of ultrasound imaging, a system scheme suitable for image processing is proposed, which can analyze the biliary tract, gallbladder, abdominal lymph nodes, liver, descending duodenum, duodenal bulb, stomach, pancreas, pancreatic lymph nodes, there are a total of 10 ultrasonic organs, including 21 kinds of sub-categories and 3510 images. The images are preprocessed using binarization, histogram equalization, median filtering and edge enhancement algorithms. The improved YoloV4 convolutional neural network algorithm is used to train the data set and perform high accuracy is detected in real time. Finally, the average accuracy of this algorithm has reached 91.59%. The algorithm proposed in this paper can make up for the shortcomings of manual detection in the original image detection system, improve the efficiency of detection, and at the same time as an auxiliary system can reduce detection misjudgments, and promote the development of automated and intelligent detection in the medical field.
Year
DOI
Venue
2022
10.1109/ACCESS.2022.3143580
IEEE ACCESS
Keywords
DocType
Volume
Ultrasonic imaging, Biomedical imaging, Medical diagnostic imaging, Stomach, Histograms, Gray-scale, Interference, Endoscopic ultrasonography, image processing, data mining, convolutional neural network
Journal
10
ISSN
Citations 
PageRank 
2169-3536
0
0.34
References 
Authors
0
6
Name
Order
Citations
PageRank
Yufei Xie100.34
Yu Cai200.34
Yang Yu39455.24
Sen Wang447737.24
Wenlin Wang500.34
Shasha Song600.34