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Early lung cancer detection and classification integrated equipment based on deep learning and system

A deep learning, lung cancer technology, applied in the field of image analysis, can solve the problems of heavy workload, large number of doctors, confusion of other organizations, etc., and achieve the effect of improving quality

Pending Publication Date: 2020-11-13
内蒙古医科大学附属人民医院
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  • Summary
  • Abstract
  • Description
  • Claims
  • Application Information

AI Technical Summary

Problems solved by technology

Early lung cancer is often manifested as pulmonary nodules, which are large in number, small in size, low in contrast, and easily confused with other tissues; currently, lung CT examinations are mainly used to diagnose pulmonary nodules. size and shape to judge its malignancy, while the number of CT images of a lung cancer patient is at the level of hundreds, and the doctor’s workload is heavy. The accuracy of the evaluation will be affected by subjective factors such as the doctor’s experience, fatigue, and personal emotions. The resources of experts and doctors in different regions are unevenly distributed, and traditional diagnosis and treatment methods are prone to missed and misdiagnosed cases
[0003] In recent years, with the improvement of computer computing power and the stepwise growth of data volume, deep learning technology has developed rapidly and has been widely used in the medical field. A lot of research work has been done on the Internet, and its main technical steps include data preprocessing and detection of pulmonary nodules using convolutional networks, but these methods mainly focus on identifying lung nodule regions and non-pulmonary nodule regions. On the other hand, the type and probability of lung nodule canceration are closely related to the type, size, shape and other characteristics of lung nodules. The traditional detection convolutional network can only get the total probability of lung cancer. , it is impossible to distinguish the specific types of lung cancer, so doctors are often required to evaluate, and the integration of early lung cancer detection process has not been realized

Method used

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  • Early lung cancer detection and classification integrated equipment based on deep learning and system
  • Early lung cancer detection and classification integrated equipment based on deep learning and system

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Embodiment 1

[0027] like figure 1 As shown, an integrated system for early lung cancer detection and classification based on deep learning, including:

[0028] The detection guidance module is used to realize the calibration of the image acquisition position of the CT image acquisition module according to the patient's positioning data and body shape data, thereby guiding the CT image acquisition module to reach the target position to complete the acquisition of lung CT images;

[0029] The lung CT image acquisition module is used to acquire lung CT images through high-resolution computed tomography technology;

[0030] The CT image preprocessing module locates the target area based on the Faster R-CNN model, filters out the unobvious parts such as ribs and muscles, intercepts the area of ​​interest, and combines the contrast of the area of ​​interest to calculate and improve the lung of the area of ​​interest. The significant value of the internal tissue, and the lung image is intercepte...

Embodiment 2

[0039] like figure 2 As shown, an integrated device for early lung cancer detection and classification based on deep learning includes a detection guidance module, a lung CT image acquisition module, and a lung CT image post-processing system built in a PC. The detection guidance module uses According to the positioning data and body shape data of the patient, the calibration of the image acquisition position of the CT image acquisition module is realized, thereby guiding the CT image acquisition module to reach the target position to complete the acquisition of lung CT images; the lung CT image acquisition module is used for high-resolution High-rate computed tomography technique obtains lung CT image; Described lung CT image post-processing system comprises:

[0040] The CT image preprocessing module locates the target area based on the Faster R-CNN model, filters out the unobvious parts such as ribs and muscles, intercepts the area of ​​interest, and combines the contrast ...

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Abstract

The invention relates to the field of image analysis, and particularly relates to an early lung cancer detection and classification integrated system based on deep learning. The system comprises a lung CT image acquisition module, a CT image preprocessing module, a lung image recognition module, a lung nodule measurement module and a lung cancer screening module. The lung image recognition moduledetects and recognizes lung nodules and lung nodule holes in the lung images based on a DSSD_ Xception model, and intercepts lung nodule areas; the lung nodule measurement module is used for measuringlung nodules and lung nodule hole sizes based on the length-width ratio of the connected component bounding rectangle, and outputting a measurement result; and the lung cancer screening module is used for screening early lung cancer based on a preset screening standard according to the measurement result of the lung nodule. According to the invention, the type and probability of early lung cancercan be automatically detected, and the type, size, position and malignant degree of pulmonary nodules can be accurately identified.

Description

technical field [0001] The invention relates to the field of image analysis, in particular to an integrated device and system for early lung cancer detection and classification based on deep learning. Background technique [0002] Lung cancer is a malignant tumor with the highest morbidity and mortality. Its early symptoms are not obvious, and advanced lung cancer is extremely difficult to cure. Therefore, early detection of lung cancer is the main means to prolong the survival of patients and reduce mortality. Early lung cancer is often manifested as pulmonary nodules, which are large in number, small in size, low in contrast, and easily confused with other tissues; currently, lung CT examinations are mainly used to diagnose pulmonary nodules. size and shape to judge its malignancy, while the number of CT images of a lung cancer patient is at the level of hundreds, and the doctor’s workload is heavy. The accuracy of the evaluation will be affected by subjective factors such...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): A61B6/03A61B6/00G06K9/62G06N3/04G06T5/20G06T7/00G06T7/11G06T7/136G06T7/62G06T17/00
CPCA61B6/032A61B6/50A61B6/5229G06T7/0012G06T7/11G06T7/136G06T7/62G06T17/00G06T5/20G06T2207/10081G06T2207/30064G06N3/043G06F18/2414
Inventor 杨昊侯慧赵海平玉荣王振飞王润梅李红刘巧云郭军梅杨静雯张石磊
Owner 内蒙古医科大学附属人民医院
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