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Automatic screening method for diabetic retinopathy based on naive Bayes and support vector machine

A technology of support vector machine and Bayesian classifier, which is applied in the field of medical image processing, can solve the problems of mutual interference of similar features, easily affected by lesions in optic disc segmentation, and high feature latitude, so as to reduce the influence, reduce the contrast of blood vessels, and avoid accurate split effect

Active Publication Date: 2020-06-16
CENT SOUTH UNIV
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Problems solved by technology

On the one hand, this type of method requires familiarity with the pathological changes of diabetic retinopathy in order to add prior information when extracting differential features to make the learning model more robust, and the extracted features have a high latitude; on the other hand, the detection results are heavily dependent on the structure of the fundus. Segmentation accuracy, but optic disc segmentation is easily affected by lesions, and similar features between lesions and fundus structures interfere with each other

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  • Automatic screening method for diabetic retinopathy based on naive Bayes and support vector machine
  • Automatic screening method for diabetic retinopathy based on naive Bayes and support vector machine
  • Automatic screening method for diabetic retinopathy based on naive Bayes and support vector machine

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Embodiment Construction

[0067] A kind of diabetes mellitus detection method based on naive Bayesian and support vector machine provided by the present invention, such as figure 1 shown, including the following steps:

[0068] Step 10, acquiring the original color fundus image, performing preprocessing on the original color fundus image, and extracting the M channel image from the preprocessed image.

[0069] Wherein, the preprocessing of the original color fundus image includes the following specific steps:

[0070] Step A, since the original color fundus image (such as figure 2 As shown) there may be inconsistencies in image resolution. In order to solve the problem of inconsistency in resolution and preserve image details, the original color fundus image is processed by bi-cubic interpolation technology to obtain an interpolated image:

[0071]

[0072]

[0073] Among them, R(x) represents the interpolation expression, Represents the pixel coordinates of the interpolated image, the coord...

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Abstract

The invention discloses a diabetic retinopathy automatic screening method based on naive Bayes and a support vector machine, which comprises the following steps: preprocessing an original color fundusimage, and extracting a blood vessel image from the original color fundus image; redrawing the pre-processed image according to the blood vessel image, wherein a blood vessel pixel value in the pre-processed image is determined by non-blood vessel pixels in the surrounding area to obtain a blood vessel redrawn image for reducing the blood vessel contrast; extracting a candidate microaneurysm areafrom the vascular redrawing image, and then extracting features of the candidate microaneurysm; and outputting, by a naive Bayesian classifier, a mark matrix of the microaneurysm according to the candidate microaneurysm features so as to obtain the number of the microaneurysm; and giving, by the support vector machine, a glyconet disease detection result according to the preprocessed image and the number of the microaneurysm. The method can effectively avoid accurate segmentation of the blood vessel and the microaneurysm, the extracted features are simple and easy to operate, and whether a patient suffers from the diabetic retinopathy or not can be automatically detected.

Description

technical field [0001] The invention belongs to the technical field of medical image processing, and relates to an automatic screening method for diabetes mellitus based on naive Bayesian and support vector machine. Background technique [0002] Diabetic retinopathy is one of the common complications of diabetes. It is a retinal microvascular disease, and its full name is diabetic retinopathy. It is estimated that more than 75% of people with diabetes will have some form of diabetes over 20 years. Diabetic reticulosis affects the vision of patients. In the proliferative stage of diabetic reticulum, new blood vessels continue to grow, which may lead to retinal detachment and cause blindness in patients. However, diabetic reticulosis is an eye disease that can prevent blindness. At the same time, the eyes, as an important organ for human beings to perceive the surrounding environment, obtain more than 80% of the information. [0003] In clinical practice, the easiest and mos...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06T7/00G16H50/20
CPCG06T7/0012G16H50/20G06T2207/30041G06T2207/30101G06T2207/30096G06T2207/10024
Inventor 朱承璋胡蓉邹北骥戴玉兰赵小虎程真真
Owner CENT SOUTH UNIV
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