Digestive endoscopy image abnormal feature real-time labeling system and method

A technology for image abnormality and digestive endoscopy, applied in the direction of endoscopy, gastroscope, esophagus, etc., can solve the problems of low time performance and difficulty in satisfying real-time detection of gastroscope images, achieve good results, shorten detection time, and improve efficiency Effect

Inactive Publication Date: 2018-11-23
ZHEJIANG UNIV
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Problems solved by technology

CNN is widely used in image feature extraction and classification detection, especially CNN for object detection based on candidate regions. Its recognition accuracy has been continuously improved, but due to the requirement of millions of model training parameters, the time performance is low, and it is difficult to meet the requirements of Requirements for real-time detection of gastroscope images in gastroscope video scenarios

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  • Digestive endoscopy image abnormal feature real-time labeling system and method

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Embodiment Construction

[0044] The technical solution of the present invention will be further described in detail below in conjunction with the accompanying drawings, but the protection scope of the present invention is not limited to the following description.

[0045] Such as figure 1 As shown, a real-time marking system for abnormal features of digestive endoscopy images, the system runs on a computer system, including:

[0046] The image acquisition module acquires the video stream of the conventional white light endoscope of the stomach input in real time through the endoscope image system, eliminates invalid frames, and screens effective key frames. The K-means clustering method is used to screen key frames. Through this clustering algorithm, the images in the image database can be divided into k categories, and the prior classification processing can be completed to speed up the efficiency of key frame extraction.

[0047] The image preprocessing module is used to perform image preprocessing o...

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Abstract

The invention discloses a digestive endoscopy image abnormal feature real-time labeling system and method. The system comprises an image acquisition module, an image preprocessing module, a model training module, an anomaly detection module and a label display module; the model training module comprises an image data set, a classification model training unit and a detection model training unit. Classification information of suspicious stomach precancerous diseases is acquired through a deep learning CNN classification model, and a target detection model is utilized to quickly and accurately acquire the focus position by means of deep learning CNN and on the basis of a regression method. By using the method, stomach abnormal features are effectively classified and detected under digestive endoscopy, the missed diagnosis rate on the basis of long-time and subjective diagnosis of doctors can be reduced, real-time analysis and real-time suspicious focus display under an endoscope are supported when the doctors conduct endoscopic tests, the working burden of the doctors is reduced, and the efficiency of medical diagnosis work is improved.

Description

technical field [0001] The invention belongs to the field of medical data mining, in particular to a real-time marking system and method for abnormal features of digestive endoscope images. Background technique [0002] There are 405,000 new gastric cancer cases and 325,000 deaths each year in my country, accounting for 42.6% and 45.0% of the global total respectively. Reducing the incidence and mortality of gastric cancer in my country is an urgent public health problem. Clinical studies have shown that the prognosis of gastric cancer is closely related to the treatment effect. For patients with advanced gastric cancer (advanced gastric cancer, AGC), even if they receive surgery-based gastric cancer resection, the postoperative five-year survival rate of the patient is still lower than 30%, and the postoperative quality of life of the patient is low. It is a huge burden on the family and society. If patients receive endoscopic examination and treatment in time in the earl...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): A61B1/273
CPCA61B1/00009A61B1/00043A61B1/2736
Inventor 段会龙胡伟玲刘济全吴加国王良静陈淑洁张旭陈飞余涛姒健敏
Owner ZHEJIANG UNIV
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