Computer-aided mammary gland diagnosing method by means of characteristic weight adaptive selection

An adaptive selection, computer-aided technology, applied in computer-aided medical procedures, computer components, calculations, etc., can solve problems such as the inability to ensure the performance of the SVM multi-classification algorithm, and the inability to more accurately reflect the degree of importance

Inactive Publication Date: 2016-08-31
FUZHOU UNIV
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Problems solved by technology

The performance of the SVM classifier using the above method can be improved to a certain extent, but if the "hard selection" is applied to the SVM multi-classification algorithm of the binary balanced decision tree, there are two problems: first, for the binary balanced decision tree SVM For each decision-making surface of the multi-classification algorithm, the important feature dimensions are different, and the feature dimensions extracted by the "hard selection" method are not sui...

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  • Computer-aided mammary gland diagnosing method by means of characteristic weight adaptive selection
  • Computer-aided mammary gland diagnosing method by means of characteristic weight adaptive selection
  • Computer-aided mammary gland diagnosing method by means of characteristic weight adaptive selection

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Embodiment Construction

[0048] The present invention will be further described below in conjunction with the accompanying drawings and embodiments.

[0049] This embodiment provides a method for computer-aided diagnosis of mammary glands using adaptive selection of feature weights, specifically as follows:

[0050] (a) The features of mammography and B-ultrasound imaging data were extracted from known cases. According to the BI-RADS standard, the main features of mammography include mass, calcification and structural distortion. The mass is described from three aspects: margin (clear, fuzzy, small lobular, infiltrating, starburst), shape (round, oval, lobular, irregular), density (high, equal, low density) and fat-containing density); calcifications can be divided into three types in terms of morphology: typical benign calcifications, intermediate calcifications (suspicious calcifications), and highly malignant calcifications; the distribution of calcifications includes the following five ways: (1) d...

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Abstract

The invention relates to a computer-aided mammy gland diagnosing method by means of characteristic weight adaptive selection. The method comprises the steps of firstly extracting a mammary gland X-ray molybdenum target and a type-B ultrasonic image data characteristic, performing benign-malignant and clinic periodic marking on case data after characteristic extraction according to known clinical diagnosis results; performing multi-characteristic fusion on the X-ray molybdenum target image and the type-B ultrasonic image of the mammary gland of a same patient according to a cascaded manner, and obtaining the characteristic vector of a mammary gland sample; afterwards using a characteristic weight adaptive selection method on the training process of a binary balanced decision tree SVM multi-class classification algorithm based on a Gaussian kernel; and finally utilizing the characteristic weight adaptive selection method on the identification process of the binary balanced decision tree SVM multi-class classification algorithm based on the Gaussian kernel. The computer-aided mammy gland diagnosing method can improve accuracy and efficiency in breast cancer diagnosis.

Description

technical field [0001] The invention relates to the technical field of feature engineering, in particular to a method for computer-aided mammary gland diagnosis using feature weight self-adaptive selection. Background technique [0002] Breast cancer is one of the most common malignant tumors occurring in women. In recent years, my country's investigations and studies have shown that the incidence of breast cancer is increasing year by year. Therefore, it is more and more meaningful to improve the accuracy of early diagnosis of breast cancer. [0003] At present, the main method used in the diagnosis of breast cancer is through imaging examinations such as mammary X-rays and B-ultrasound images, and the diagnoser analyzes the condition through imaging features such as calcification or mass. However, because the density of soft tissue such as glands, blood vessels, and fat in breast tissue is very close to the density of the lesion area, coupled with factors such as visual ...

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Application Information

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IPC IPC(8): G06K9/62G06F19/00G06K9/46
CPCG06V10/462G06V2201/03G06F18/2411
Inventor 王秀余春艳林志杰陈壮威叶东毅
Owner FUZHOU UNIV
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